code stringlengths 87 55.2k | code_codestyle int64 0 349 | style_context stringlengths 135 49.1k | style_context_codestyle int64 0 349 | label int64 0 1 |
|---|---|---|---|---|
from typing import List, Optional, Tuple, Union
import torch
from ...schedulers import DDIMScheduler
from ...utils import randn_tensor
from ..pipeline_utils import DiffusionPipeline, ImagePipelineOutput
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
def __init__( self : int, _snake_case : str, _snake_case : Tuple ) ->Tuple:
super().__init__()
# make sure scheduler can always be converted to DDIM
snake_case__ : Optional[int] = DDIMScheduler.from_config(scheduler.config )
self.register_modules(unet=_snake_case, scheduler=_snake_case )
@torch.no_grad()
def __call__( self : str, _snake_case : int = 1, _snake_case : Optional[Union[torch.Generator, List[torch.Generator]]] = None, _snake_case : float = 0.0, _snake_case : int = 5_0, _snake_case : Optional[bool] = None, _snake_case : Optional[str] = "pil", _snake_case : bool = True, ) ->Union[ImagePipelineOutput, Tuple]:
# Sample gaussian noise to begin loop
if isinstance(self.unet.config.sample_size, _snake_case ):
snake_case__ : List[Any] = (
batch_size,
self.unet.config.in_channels,
self.unet.config.sample_size,
self.unet.config.sample_size,
)
else:
snake_case__ : Dict = (batch_size, self.unet.config.in_channels, *self.unet.config.sample_size)
if isinstance(_snake_case, _snake_case ) and len(_snake_case ) != batch_size:
raise ValueError(
F'''You have passed a list of generators of length {len(_snake_case )}, but requested an effective batch'''
F''' size of {batch_size}. Make sure the batch size matches the length of the generators.''' )
snake_case__ : Optional[Any] = randn_tensor(_snake_case, generator=_snake_case, device=self.device, dtype=self.unet.dtype )
# set step values
self.scheduler.set_timesteps(_snake_case )
for t in self.progress_bar(self.scheduler.timesteps ):
# 1. predict noise model_output
snake_case__ : Dict = self.unet(_snake_case, _snake_case ).sample
# 2. predict previous mean of image x_t-1 and add variance depending on eta
# eta corresponds to η in paper and should be between [0, 1]
# do x_t -> x_t-1
snake_case__ : Dict = self.scheduler.step(
_snake_case, _snake_case, _snake_case, eta=_snake_case, use_clipped_model_output=_snake_case, generator=_snake_case ).prev_sample
snake_case__ : str = (image / 2 + 0.5).clamp(0, 1 )
snake_case__ : int = image.cpu().permute(0, 2, 3, 1 ).numpy()
if output_type == "pil":
snake_case__ : Optional[int] = self.numpy_to_pil(_snake_case )
if not return_dict:
return (image,)
return ImagePipelineOutput(images=_snake_case )
| 277 |
def lowercase_ (A : Union[str, Any] , A : List[str] , A : int , A : Optional[int] ):
global f # a global dp table for knapsack
if f[i][j] < 0:
if j < wt[i - 1]:
snake_case__ : Union[str, Any] = mf_knapsack(i - 1 , A , A , A )
else:
snake_case__ : Any = max(
mf_knapsack(i - 1 , A , A , A ) , mf_knapsack(i - 1 , A , A , j - wt[i - 1] ) + val[i - 1] , )
snake_case__ : Optional[int] = val
return f[i][j]
def lowercase_ (A : Optional[int] , A : Union[str, Any] , A : str , A : Dict ):
snake_case__ : int = [[0] * (w + 1) for _ in range(n + 1 )]
for i in range(1 , n + 1 ):
for w_ in range(1 , w + 1 ):
if wt[i - 1] <= w_:
snake_case__ : Union[str, Any] = max(val[i - 1] + dp[i - 1][w_ - wt[i - 1]] , dp[i - 1][w_] )
else:
snake_case__ : str = dp[i - 1][w_]
return dp[n][w_], dp
def lowercase_ (A : int , A : list , A : list ):
if not (isinstance(A , (list, tuple) ) and isinstance(A , (list, tuple) )):
raise ValueError(
'Both the weights and values vectors must be either lists or tuples' )
snake_case__ : Dict = len(A )
if num_items != len(A ):
snake_case__ : str = (
'The number of weights must be the same as the number of values.\n'
F'''But got {num_items} weights and {len(A )} values'''
)
raise ValueError(A )
for i in range(A ):
if not isinstance(wt[i] , A ):
snake_case__ : Optional[int] = (
'All weights must be integers but got weight of '
F'''type {type(wt[i] )} at index {i}'''
)
raise TypeError(A )
snake_case__ , snake_case__ : Optional[int] = knapsack(A , A , A , A )
snake_case__ : set = set()
_construct_solution(A , A , A , A , A )
return optimal_val, example_optional_set
def lowercase_ (A : list , A : list , A : int , A : int , A : set ):
# for the current item i at a maximum weight j to be part of an optimal subset,
# the optimal value at (i, j) must be greater than the optimal value at (i-1, j).
# where i - 1 means considering only the previous items at the given maximum weight
if i > 0 and j > 0:
if dp[i - 1][j] == dp[i][j]:
_construct_solution(A , A , i - 1 , A , A )
else:
optimal_set.add(A )
_construct_solution(A , A , i - 1 , j - wt[i - 1] , A )
if __name__ == "__main__":
a_ :Any = [3, 2, 4, 4]
a_ :List[Any] = [4, 3, 2, 3]
a_ :Union[str, Any] = 4
a_ :List[str] = 6
a_ :Union[str, Any] = [[0] * (w + 1)] + [[0] + [-1] * (w + 1) for _ in range(n + 1)]
a_ , a_ :List[Any] = knapsack(w, wt, val, n)
print(optimal_solution)
print(mf_knapsack(n, wt, val, w)) # switched the n and w
# testing the dynamic programming problem with example
# the optimal subset for the above example are items 3 and 4
a_ , a_ :Any = knapsack_with_example_solution(w, wt, val)
assert optimal_solution == 8
assert optimal_subset == {3, 4}
print("optimal_value = ", optimal_solution)
print("An optimal subset corresponding to the optimal value", optimal_subset)
| 277 | 1 |
def lowercase_ (A : List[str] ):
snake_case__ : int = len(A )
for i in range(length - 1 ):
snake_case__ : Tuple = i
for k in range(i + 1 , A ):
if collection[k] < collection[least]:
snake_case__ : Optional[int] = k
if least != i:
snake_case__ , snake_case__ : Union[str, Any] = (collection[i], collection[least])
return collection
if __name__ == "__main__":
a_ :str = input("Enter numbers separated by a comma:\n").strip()
a_ :str = [int(item) for item in user_input.split(",")]
print(selection_sort(unsorted))
| 277 |
from typing import TYPE_CHECKING
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_flax_available, is_torch_available
a_ :int = {
"configuration_longt5": ["LONGT5_PRETRAINED_CONFIG_ARCHIVE_MAP", "LongT5Config", "LongT5OnnxConfig"],
}
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :List[str] = [
"LONGT5_PRETRAINED_MODEL_ARCHIVE_LIST",
"LongT5EncoderModel",
"LongT5ForConditionalGeneration",
"LongT5Model",
"LongT5PreTrainedModel",
]
try:
if not is_flax_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :int = [
"FlaxLongT5ForConditionalGeneration",
"FlaxLongT5Model",
"FlaxLongT5PreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_longta import LONGT5_PRETRAINED_CONFIG_ARCHIVE_MAP, LongTaConfig, LongTaOnnxConfig
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_longta import (
LONGT5_PRETRAINED_MODEL_ARCHIVE_LIST,
LongTaEncoderModel,
LongTaForConditionalGeneration,
LongTaModel,
LongTaPreTrainedModel,
)
try:
if not is_flax_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_flax_longta import (
FlaxLongTaForConditionalGeneration,
FlaxLongTaModel,
FlaxLongTaPreTrainedModel,
)
else:
import sys
a_ :Optional[int] = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 277 | 1 |
from datetime import datetime
import matplotlib.pyplot as plt
import torch
def lowercase_ (A : int ):
for param in module.parameters():
snake_case__ : str = False
def lowercase_ ():
snake_case__ : Optional[Any] = 'cuda' if torch.cuda.is_available() else 'cpu'
if torch.backends.mps.is_available() and torch.backends.mps.is_built():
snake_case__ : Optional[Any] = 'mps'
if device == "mps":
print(
'WARNING: MPS currently doesn\'t seem to work, and messes up backpropagation without any visible torch'
' errors. I recommend using CUDA on a colab notebook or CPU instead if you\'re facing inexplicable issues'
' with generations.' )
return device
def lowercase_ (A : Optional[int] ):
snake_case__ : List[Any] = plt.imshow(A )
fig.axes.get_xaxis().set_visible(A )
fig.axes.get_yaxis().set_visible(A )
plt.show()
def lowercase_ ():
snake_case__ : Union[str, Any] = datetime.now()
snake_case__ : Union[str, Any] = current_time.strftime('%H:%M:%S' )
return timestamp
| 277 |
import argparse
import json
import os
import torch
from torch import nn
from transformers import NllbMoeConfig, NllbMoeModel
from transformers.modeling_utils import dtype_byte_size
from transformers.utils import WEIGHTS_INDEX_NAME, WEIGHTS_NAME
def lowercase_ (A : List[str] ):
snake_case__ : Tuple = [
'encoder.version',
'decoder.version',
'model.encoder.version',
'model.decoder.version',
'decoder.output_projection.weight',
'_float_tensor',
'encoder.embed_positions._float_tensor',
'decoder.embed_positions._float_tensor',
]
for k in ignore_keys:
state_dict.pop(A , A )
def lowercase_ (A : str ):
snake_case__ , snake_case__ : Union[str, Any] = emb.weight.shape
snake_case__ : str = nn.Linear(A , A , bias=A )
snake_case__ : str = emb.weight.data
return lin_layer
def lowercase_ (A : Optional[int] , A : Union[str, Any]=None ):
snake_case__ : Any = {}
for old_key in state_dict.keys():
snake_case__ : Tuple = old_key
if "moe_layer.experts." in key:
if expert_idx is not None:
snake_case__ : int = key.replace('moe_layer.experts.0' , F'''ffn.experts.expert_{expert_idx}''' )
else:
snake_case__ : Any = key.replace('moe_layer.experts.' , 'ffn.experts.expert_' )
if "gate" in key:
snake_case__ : Dict = key.replace('.moe_layer.gate.wg' , '.ffn.router.classifier' )
if "fc2" and "experts" not in key:
snake_case__ : str = key.replace('.fc2.' , '.ffn.fc2.' )
if "fc1" and "experts" not in key:
snake_case__ : str = key.replace('.fc1.' , '.ffn.fc1.' )
if ".encoder_attn." in key:
snake_case__ : Tuple = key.replace('.encoder_attn.' , '.cross_attention.' )
if "encoder_attn_layer_norm" in key:
snake_case__ : Tuple = key.replace('encoder_attn_layer_norm' , 'cross_attention_layer_norm' )
if "final_layer_norm" in key:
snake_case__ : Optional[int] = key.replace('final_layer_norm' , 'ff_layer_norm' )
snake_case__ : Dict = state_dict[old_key]
return new_dict
def lowercase_ (A : List[Any] , A : Tuple , A : List[Any] , A : List[str] , A : str = WEIGHTS_NAME ):
snake_case__ : Dict = []
snake_case__ : str = 0
os.makedirs(A , exist_ok=A )
for expert in range(A ):
snake_case__ : Tuple = switch_checkpoint_path + F'''-rank-{expert}.pt'''
if os.path.isfile(A ):
snake_case__ : Optional[Any] = torch.load(A )['model']
remove_ignore_keys_(A )
snake_case__ : Optional[Any] = rename_fairseq_keys(A , A )
snake_case__ : Dict = os.path.join(
A , weights_name.replace('.bin' , F'''-{len(A )+1:05d}-of-???.bin''' ) )
torch.save(A , A )
sharded_state_dicts.append(expert_state.keys() )
total_size += sum([value.numel() for key, value in expert_state.items()] ) * dtype_byte_size(
expert_state[list(A )[0]].dtype )
# Add the last block
snake_case__ : Tuple = os.path.join(A , weights_name.replace('.bin' , F'''-{len(A )+1:05d}-of-???.bin''' ) )
snake_case__ : Union[str, Any] = torch.load(switch_checkpoint_path + '-shared.pt' )['model']
remove_ignore_keys_(A )
snake_case__ : str = rename_fairseq_keys(A , A )
snake_case__ : Any = shared_weights['decoder.embed_tokens.weight']
sharded_state_dicts.append(shared_weights.keys() )
# If we only have the shared weights (dummy model/experts saved on the same file)
if len(A ) == 1:
snake_case__ : Any = os.path.join(A , A )
torch.save(A , A )
return {weights_name: sharded_state_dicts[0]}, None
else:
torch.save(A , A )
# Otherwise, let's build the index
snake_case__ : Tuple = {}
for idx, shard in enumerate(A ):
snake_case__ : Optional[int] = weights_name.replace('.bin' , F'''-{idx+1:05d}-of-{len(A ):05d}.bin''' )
snake_case__ : List[Any] = os.path.join(A , weights_name.replace('.bin' , F'''-{idx+1:05d}-of-???.bin''' ) )
os.rename(A , os.path.join(A , A ) )
for key in shard:
snake_case__ : Any = shard_file
# Add the metadata
snake_case__ : int = {'total_size': total_size}
snake_case__ : Dict = {'metadata': metadata, 'weight_map': weight_map}
with open(os.path.join(A , A ) , 'w' , encoding='utf-8' ) as f:
snake_case__ : Any = json.dumps(A , indent=2 , sort_keys=A ) + '\n'
f.write(A )
return metadata, index
if __name__ == "__main__":
a_ :int = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--nllb_moe_checkpoint_path",
default="/home/arthur_huggingface_co/fairseq/weights/checkpoints/model_moe_54b/checkpoint_2_300000",
type=str,
required=False,
help="Path to a directory containing a folder per layer. Follows the original Google format.",
)
parser.add_argument("--dtype", default="float32", type=str, required=False, help="dtype of the saved model")
parser.add_argument(
"--pytorch_dump_folder_path",
default="/home/arthur_huggingface_co/fairseq/weights/checkpoints/hf-converted-moe-54b",
type=str,
required=False,
help="Path to the output pytorch model.",
)
a_ :Optional[Any] = parser.parse_args()
a_ , a_ :Optional[Any] = shard_on_the_fly(
args.nllb_moe_checkpoint_path,
args.pytorch_dump_folder_path,
128,
args.dtype,
)
a_ :List[str] = NllbMoeConfig.from_pretrained(
"facebook/nllb-200-3.3B", encoder_sparse_step=4, decoder_sparse_step=4, num_experts=128
)
config.save_pretrained(args.pytorch_dump_folder_path)
a_ :int = NllbMoeModel.from_pretrained(args.pytorch_dump_folder_path)
print("Done")
model.save_pretrained(args.pytorch_dump_folder_path)
| 277 | 1 |
import os
from bleurt import score # From: git+https://github.com/google-research/bleurt.git
import datasets
a_ :Union[str, Any] = datasets.logging.get_logger(__name__)
a_ :Optional[Any] = "\\n@inproceedings{bleurt,\n title={BLEURT: Learning Robust Metrics for Text Generation},\n author={Thibault Sellam and Dipanjan Das and Ankur P. Parikh},\n booktitle={ACL},\n year={2020},\n url={https://arxiv.org/abs/2004.04696}\n}\n"
a_ :Any = "\\nBLEURT a learnt evaluation metric for Natural Language Generation. It is built using multiple phases of transfer learning starting from a pretrained BERT model (Devlin et al. 2018)\nand then employing another pre-training phrase using synthetic data. Finally it is trained on WMT human annotations. You may run BLEURT out-of-the-box or fine-tune\nit for your specific application (the latter is expected to perform better).\n\nSee the project's README at https://github.com/google-research/bleurt#readme for more information.\n"
a_ :Dict = "\nBLEURT score.\n\nArgs:\n `predictions` (list of str): prediction/candidate sentences\n `references` (list of str): reference sentences\n `checkpoint` BLEURT checkpoint. Will default to BLEURT-tiny if None.\n\nReturns:\n 'scores': List of scores.\nExamples:\n\n >>> predictions = [\"hello there\", \"general kenobi\"]\n >>> references = [\"hello there\", \"general kenobi\"]\n >>> bleurt = datasets.load_metric(\"bleurt\")\n >>> results = bleurt.compute(predictions=predictions, references=references)\n >>> print([round(v, 2) for v in results[\"scores\"]])\n [1.03, 1.04]\n"
a_ :int = {
"bleurt-tiny-128": "https://storage.googleapis.com/bleurt-oss/bleurt-tiny-128.zip",
"bleurt-tiny-512": "https://storage.googleapis.com/bleurt-oss/bleurt-tiny-512.zip",
"bleurt-base-128": "https://storage.googleapis.com/bleurt-oss/bleurt-base-128.zip",
"bleurt-base-512": "https://storage.googleapis.com/bleurt-oss/bleurt-base-512.zip",
"bleurt-large-128": "https://storage.googleapis.com/bleurt-oss/bleurt-large-128.zip",
"bleurt-large-512": "https://storage.googleapis.com/bleurt-oss/bleurt-large-512.zip",
"BLEURT-20-D3": "https://storage.googleapis.com/bleurt-oss-21/BLEURT-20-D3.zip",
"BLEURT-20-D6": "https://storage.googleapis.com/bleurt-oss-21/BLEURT-20-D6.zip",
"BLEURT-20-D12": "https://storage.googleapis.com/bleurt-oss-21/BLEURT-20-D12.zip",
"BLEURT-20": "https://storage.googleapis.com/bleurt-oss-21/BLEURT-20.zip",
}
@datasets.utils.file_utils.add_start_docstrings(_DESCRIPTION , _KWARGS_DESCRIPTION )
class snake_case__ ( datasets.Metric ):
"""simple docstring"""
def lowercase_ ( self : List[str] ) ->List[Any]:
return datasets.MetricInfo(
description=_DESCRIPTION, citation=_CITATION, homepage='https://github.com/google-research/bleurt', inputs_description=_KWARGS_DESCRIPTION, features=datasets.Features(
{
'predictions': datasets.Value('string', id='sequence' ),
'references': datasets.Value('string', id='sequence' ),
} ), codebase_urls=['https://github.com/google-research/bleurt'], reference_urls=['https://github.com/google-research/bleurt', 'https://arxiv.org/abs/2004.04696'], )
def lowercase_ ( self : List[str], _snake_case : List[Any] ) ->Any:
# check that config name specifies a valid BLEURT model
if self.config_name == "default":
logger.warning(
'Using default BLEURT-Base checkpoint for sequence maximum length 128. '
'You can use a bigger model for better results with e.g.: datasets.load_metric(\'bleurt\', \'bleurt-large-512\').' )
snake_case__ : Dict = 'bleurt-base-128'
if self.config_name.lower() in CHECKPOINT_URLS:
snake_case__ : Union[str, Any] = self.config_name.lower()
elif self.config_name.upper() in CHECKPOINT_URLS:
snake_case__ : int = self.config_name.upper()
else:
raise KeyError(
F'''{self.config_name} model not found. You should supply the name of a model checkpoint for bleurt in {CHECKPOINT_URLS.keys()}''' )
# download the model checkpoint specified by self.config_name and set up the scorer
snake_case__ : Optional[int] = dl_manager.download_and_extract(CHECKPOINT_URLS[checkpoint_name] )
snake_case__ : int = score.BleurtScorer(os.path.join(_snake_case, _snake_case ) )
def lowercase_ ( self : int, _snake_case : Dict, _snake_case : Optional[Any] ) ->Tuple:
snake_case__ : List[str] = self.scorer.score(references=_snake_case, candidates=_snake_case )
return {"scores": scores}
| 277 |
from typing import TYPE_CHECKING
from ...utils import (
OptionalDependencyNotAvailable,
_LazyModule,
is_sentencepiece_available,
is_tokenizers_available,
is_torch_available,
)
a_ :Optional[Any] = {"configuration_reformer": ["REFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP", "ReformerConfig"]}
try:
if not is_sentencepiece_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :str = ["ReformerTokenizer"]
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :int = ["ReformerTokenizerFast"]
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :List[str] = [
"REFORMER_PRETRAINED_MODEL_ARCHIVE_LIST",
"ReformerAttention",
"ReformerForMaskedLM",
"ReformerForQuestionAnswering",
"ReformerForSequenceClassification",
"ReformerLayer",
"ReformerModel",
"ReformerModelWithLMHead",
"ReformerPreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_reformer import REFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP, ReformerConfig
try:
if not is_sentencepiece_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_reformer import ReformerTokenizer
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_reformer_fast import ReformerTokenizerFast
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_reformer import (
REFORMER_PRETRAINED_MODEL_ARCHIVE_LIST,
ReformerAttention,
ReformerForMaskedLM,
ReformerForQuestionAnswering,
ReformerForSequenceClassification,
ReformerLayer,
ReformerModel,
ReformerModelWithLMHead,
ReformerPreTrainedModel,
)
else:
import sys
a_ :Optional[Any] = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 277 | 1 |
import os
import pytest
import yaml
from datasets.features.features import Features, Value
from datasets.info import DatasetInfo, DatasetInfosDict
@pytest.mark.parametrize(
'files' , [
['full:README.md', 'dataset_infos.json'],
['empty:README.md', 'dataset_infos.json'],
['dataset_infos.json'],
['full:README.md'],
] , )
def lowercase_ (A : Optional[int] , A : Tuple ):
snake_case__ : List[str] = tmp_path_factory.mktemp('dset_infos_dir' )
if "full:README.md" in files:
with open(dataset_infos_dir / 'README.md' , 'w' ) as f:
f.write('---\ndataset_info:\n dataset_size: 42\n---' )
if "empty:README.md" in files:
with open(dataset_infos_dir / 'README.md' , 'w' ) as f:
f.write('' )
# we want to support dataset_infos.json for backward compatibility
if "dataset_infos.json" in files:
with open(dataset_infos_dir / 'dataset_infos.json' , 'w' ) as f:
f.write('{"default": {"dataset_size": 42}}' )
snake_case__ : Optional[Any] = DatasetInfosDict.from_directory(A )
assert dataset_infos
assert dataset_infos["default"].dataset_size == 4_2
@pytest.mark.parametrize(
'dataset_info' , [
DatasetInfo(),
DatasetInfo(
description='foo' , features=Features({'a': Value('int32' )} ) , builder_name='builder' , config_name='config' , version='1.0.0' , splits=[{'name': 'train'}] , download_size=4_2 , ),
] , )
def lowercase_ (A : List[Any] , A : DatasetInfo ):
snake_case__ : Any = str(A )
dataset_info.write_to_directory(A )
snake_case__ : List[str] = DatasetInfo.from_directory(A )
assert dataset_info == reloaded
assert os.path.exists(os.path.join(A , 'dataset_info.json' ) )
def lowercase_ ():
snake_case__ : Tuple = DatasetInfo(
description='foo' , citation='bar' , homepage='https://foo.bar' , license='CC0' , features=Features({'a': Value('int32' )} ) , post_processed={} , supervised_keys=() , task_templates=[] , builder_name='builder' , config_name='config' , version='1.0.0' , splits=[{'name': 'train', 'num_examples': 4_2}] , download_checksums={} , download_size=1_3_3_7 , post_processing_size=4_4_2 , dataset_size=1_2_3_4 , size_in_bytes=1_3_3_7 + 4_4_2 + 1_2_3_4 , )
snake_case__ : int = dataset_info._to_yaml_dict()
assert sorted(A ) == sorted(DatasetInfo._INCLUDED_INFO_IN_YAML )
for key in DatasetInfo._INCLUDED_INFO_IN_YAML:
assert key in dataset_info_yaml_dict
assert isinstance(dataset_info_yaml_dict[key] , (list, dict, int, str) )
snake_case__ : str = yaml.safe_dump(A )
snake_case__ : Dict = yaml.safe_load(A )
assert dataset_info_yaml_dict == reloaded
def lowercase_ ():
snake_case__ : Union[str, Any] = DatasetInfo()
snake_case__ : Tuple = dataset_info._to_yaml_dict()
assert dataset_info_yaml_dict == {}
@pytest.mark.parametrize(
'dataset_infos_dict' , [
DatasetInfosDict(),
DatasetInfosDict({'default': DatasetInfo()} ),
DatasetInfosDict({'my_config_name': DatasetInfo()} ),
DatasetInfosDict(
{
'default': DatasetInfo(
description='foo' , features=Features({'a': Value('int32' )} ) , builder_name='builder' , config_name='config' , version='1.0.0' , splits=[{'name': 'train'}] , download_size=4_2 , )
} ),
DatasetInfosDict(
{
'v1': DatasetInfo(dataset_size=4_2 ),
'v2': DatasetInfo(dataset_size=1_3_3_7 ),
} ),
] , )
def lowercase_ (A : str , A : DatasetInfosDict ):
snake_case__ : Optional[int] = str(A )
dataset_infos_dict.write_to_directory(A )
snake_case__ : str = DatasetInfosDict.from_directory(A )
# the config_name of the dataset_infos_dict take over the attribute
for config_name, dataset_info in dataset_infos_dict.items():
snake_case__ : List[Any] = config_name
# the yaml representation doesn't include fields like description or citation
# so we just test that we can recover what we can from the yaml
snake_case__ : List[str] = DatasetInfo._from_yaml_dict(dataset_info._to_yaml_dict() )
assert dataset_infos_dict == reloaded
if dataset_infos_dict:
assert os.path.exists(os.path.join(A , 'README.md' ) )
| 277 |
import itertools
import random
import unittest
import numpy as np
from transformers import BatchFeature, SpeechTaFeatureExtractor
from transformers.testing_utils import require_torch
from transformers.utils.import_utils import is_torch_available
from ...test_sequence_feature_extraction_common import SequenceFeatureExtractionTestMixin
if is_torch_available():
import torch
a_ :Any = random.Random()
def lowercase_ (A : int , A : Union[str, Any]=1.0 , A : List[str]=None , A : Any=None ):
if rng is None:
snake_case__ : List[str] = global_rng
snake_case__ : int = []
for batch_idx in range(shape[0] ):
values.append([] )
for _ in range(shape[1] ):
values[-1].append(rng.random() * scale )
return values
@require_torch
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
def __init__( self : Optional[Any], _snake_case : List[str], _snake_case : Tuple=7, _snake_case : Union[str, Any]=4_0_0, _snake_case : Any=2_0_0_0, _snake_case : Dict=1, _snake_case : Optional[Any]=0.0, _snake_case : List[Any]=1_6_0_0_0, _snake_case : List[Any]=True, _snake_case : List[Any]=8_0, _snake_case : Dict=1_6, _snake_case : str=6_4, _snake_case : Tuple="hann_window", _snake_case : Union[str, Any]=8_0, _snake_case : Optional[Any]=7_6_0_0, _snake_case : str=1e-10, _snake_case : Any=True, ) ->Union[str, Any]:
snake_case__ : Optional[int] = parent
snake_case__ : Optional[Any] = batch_size
snake_case__ : List[Any] = min_seq_length
snake_case__ : List[Any] = max_seq_length
snake_case__ : Any = (self.max_seq_length - self.min_seq_length) // (self.batch_size - 1)
snake_case__ : Tuple = feature_size
snake_case__ : List[Any] = padding_value
snake_case__ : Any = sampling_rate
snake_case__ : Dict = do_normalize
snake_case__ : Union[str, Any] = num_mel_bins
snake_case__ : Any = hop_length
snake_case__ : Any = win_length
snake_case__ : Any = win_function
snake_case__ : Optional[int] = fmin
snake_case__ : int = fmax
snake_case__ : Union[str, Any] = mel_floor
snake_case__ : Union[str, Any] = return_attention_mask
def lowercase_ ( self : Optional[int] ) ->List[str]:
return {
"feature_size": self.feature_size,
"padding_value": self.padding_value,
"sampling_rate": self.sampling_rate,
"do_normalize": self.do_normalize,
"num_mel_bins": self.num_mel_bins,
"hop_length": self.hop_length,
"win_length": self.win_length,
"win_function": self.win_function,
"fmin": self.fmin,
"fmax": self.fmax,
"mel_floor": self.mel_floor,
"return_attention_mask": self.return_attention_mask,
}
def lowercase_ ( self : Any, _snake_case : Optional[Any]=False, _snake_case : List[str]=False ) ->Union[str, Any]:
def _flatten(_snake_case : List[str] ):
return list(itertools.chain(*_snake_case ) )
if equal_length:
snake_case__ : Any = floats_list((self.batch_size, self.max_seq_length) )
else:
# make sure that inputs increase in size
snake_case__ : int = [
_flatten(floats_list((x, self.feature_size) ) )
for x in range(self.min_seq_length, self.max_seq_length, self.seq_length_diff )
]
if numpify:
snake_case__ : Any = [np.asarray(_snake_case ) for x in speech_inputs]
return speech_inputs
def lowercase_ ( self : Union[str, Any], _snake_case : str=False, _snake_case : Dict=False ) ->List[str]:
if equal_length:
snake_case__ : Optional[Any] = [floats_list((self.max_seq_length, self.num_mel_bins) ) for _ in range(self.batch_size )]
else:
# make sure that inputs increase in size
snake_case__ : List[str] = [
floats_list((x, self.num_mel_bins) )
for x in range(self.min_seq_length, self.max_seq_length, self.seq_length_diff )
]
if numpify:
snake_case__ : int = [np.asarray(_snake_case ) for x in speech_inputs]
return speech_inputs
@require_torch
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = SpeechTaFeatureExtractor
def lowercase_ ( self : int ) ->Union[str, Any]:
snake_case__ : List[str] = SpeechTaFeatureExtractionTester(self )
def lowercase_ ( self : Any, _snake_case : Dict ) ->Any:
self.assertTrue(np.all(np.mean(_snake_case, axis=0 ) < 1e-3 ) )
self.assertTrue(np.all(np.abs(np.var(_snake_case, axis=0 ) - 1 ) < 1e-3 ) )
def lowercase_ ( self : List[Any] ) ->Union[str, Any]:
# Tests that all call wrap to encode_plus and batch_encode_plus
snake_case__ : Optional[Any] = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
# create three inputs of length 800, 1000, and 1200
snake_case__ : int = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : Tuple = [np.asarray(_snake_case ) for speech_input in speech_inputs]
# Test not batched input
snake_case__ : str = feat_extract(speech_inputs[0], return_tensors='np' ).input_values
snake_case__ : List[str] = feat_extract(np_speech_inputs[0], return_tensors='np' ).input_values
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
# Test batched
snake_case__ : Any = feat_extract(_snake_case, return_tensors='np' ).input_values
snake_case__ : Union[str, Any] = feat_extract(_snake_case, return_tensors='np' ).input_values
for enc_seq_a, enc_seq_a in zip(_snake_case, _snake_case ):
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
def lowercase_ ( self : int ) ->Optional[int]:
snake_case__ : List[Any] = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : Tuple = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : int = ['longest', 'max_length', 'do_not_pad']
snake_case__ : List[str] = [None, 1_6_0_0, None]
for max_length, padding in zip(_snake_case, _snake_case ):
snake_case__ : Optional[int] = feat_extract(_snake_case, padding=_snake_case, max_length=_snake_case, return_tensors='np' )
snake_case__ : Optional[int] = processed.input_values
self._check_zero_mean_unit_variance(input_values[0][:8_0_0] )
self.assertTrue(input_values[0][8_0_0:].sum() < 1e-6 )
self._check_zero_mean_unit_variance(input_values[1][:1_0_0_0] )
self.assertTrue(input_values[0][1_0_0_0:].sum() < 1e-6 )
self._check_zero_mean_unit_variance(input_values[2][:1_2_0_0] )
def lowercase_ ( self : Union[str, Any] ) ->Optional[Any]:
snake_case__ : Optional[Any] = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : Tuple = range(8_0_0, 1_4_0_0, 2_0_0 )
snake_case__ : Optional[Any] = [floats_list((1, x) )[0] for x in lengths]
snake_case__ : Union[str, Any] = ['longest', 'max_length', 'do_not_pad']
snake_case__ : str = [None, 1_6_0_0, None]
for max_length, padding in zip(_snake_case, _snake_case ):
snake_case__ : List[str] = feat_extract(_snake_case, max_length=_snake_case, padding=_snake_case )
snake_case__ : Tuple = processed.input_values
self._check_zero_mean_unit_variance(input_values[0][:8_0_0] )
self._check_zero_mean_unit_variance(input_values[1][:1_0_0_0] )
self._check_zero_mean_unit_variance(input_values[2][:1_2_0_0] )
def lowercase_ ( self : List[Any] ) ->Optional[Any]:
snake_case__ : Any = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : str = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : Optional[Any] = feat_extract(
_snake_case, truncation=_snake_case, max_length=1_0_0_0, padding='max_length', return_tensors='np' )
snake_case__ : int = processed.input_values
self._check_zero_mean_unit_variance(input_values[0, :8_0_0] )
self._check_zero_mean_unit_variance(input_values[1] )
self._check_zero_mean_unit_variance(input_values[2] )
def lowercase_ ( self : int ) ->Union[str, Any]:
snake_case__ : str = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : Dict = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : str = feat_extract(
_snake_case, truncation=_snake_case, max_length=1_0_0_0, padding='longest', return_tensors='np' )
snake_case__ : Dict = processed.input_values
self._check_zero_mean_unit_variance(input_values[0, :8_0_0] )
self._check_zero_mean_unit_variance(input_values[1, :1_0_0_0] )
self._check_zero_mean_unit_variance(input_values[2] )
# make sure that if max_length < longest -> then pad to max_length
self.assertTrue(input_values.shape == (3, 1_0_0_0) )
snake_case__ : Tuple = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : List[str] = feat_extract(
_snake_case, truncation=_snake_case, max_length=2_0_0_0, padding='longest', return_tensors='np' )
snake_case__ : Optional[Any] = processed.input_values
self._check_zero_mean_unit_variance(input_values[0, :8_0_0] )
self._check_zero_mean_unit_variance(input_values[1, :1_0_0_0] )
self._check_zero_mean_unit_variance(input_values[2] )
# make sure that if max_length > longest -> then pad to longest
self.assertTrue(input_values.shape == (3, 1_2_0_0) )
def lowercase_ ( self : List[str] ) ->Dict:
snake_case__ : Dict = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : List[Any] = np.random.rand(1_0_0 ).astype(np.floataa )
snake_case__ : int = np_speech_inputs.tolist()
for inputs in [py_speech_inputs, np_speech_inputs]:
snake_case__ : int = feature_extractor.pad([{'input_values': inputs}], return_tensors='np' )
self.assertTrue(np_processed.input_values.dtype == np.floataa )
snake_case__ : Optional[int] = feature_extractor.pad([{'input_values': inputs}], return_tensors='pt' )
self.assertTrue(pt_processed.input_values.dtype == torch.floataa )
def lowercase_ ( self : Optional[int] ) ->Optional[Any]:
# Tests that all call wrap to encode_plus and batch_encode_plus
snake_case__ : str = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
# create three inputs of length 800, 1000, and 1200
snake_case__ : List[Any] = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : Dict = [np.asarray(_snake_case ) for speech_input in speech_inputs]
# Test feature size
snake_case__ : Optional[int] = feature_extractor(audio_target=_snake_case, padding=_snake_case, return_tensors='np' ).input_values
self.assertTrue(input_values.ndim == 3 )
self.assertTrue(input_values.shape[-1] == feature_extractor.num_mel_bins )
# Test not batched input
snake_case__ : Dict = feature_extractor(speech_inputs[0], return_tensors='np' ).input_values
snake_case__ : Any = feature_extractor(np_speech_inputs[0], return_tensors='np' ).input_values
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
# Test batched
snake_case__ : Dict = feature_extractor(_snake_case, return_tensors='np' ).input_values
snake_case__ : Dict = feature_extractor(_snake_case, return_tensors='np' ).input_values
for enc_seq_a, enc_seq_a in zip(_snake_case, _snake_case ):
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
# Test 2-D numpy arrays are batched.
snake_case__ : Optional[Any] = [floats_list((1, x) )[0] for x in (8_0_0, 8_0_0, 8_0_0)]
snake_case__ : int = np.asarray(_snake_case )
snake_case__ : Union[str, Any] = feature_extractor(_snake_case, return_tensors='np' ).input_values
snake_case__ : Union[str, Any] = feature_extractor(_snake_case, return_tensors='np' ).input_values
for enc_seq_a, enc_seq_a in zip(_snake_case, _snake_case ):
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
def lowercase_ ( self : Union[str, Any] ) ->str:
snake_case__ : int = self.feat_extract_tester.prepare_inputs_for_target()
snake_case__ : List[str] = self.feature_extraction_class(**self.feat_extract_dict )
snake_case__ : Optional[Any] = feat_extract.model_input_names[0]
snake_case__ : Tuple = BatchFeature({input_name: speech_inputs} )
self.assertTrue(all(len(_snake_case ) == len(_snake_case ) for x, y in zip(_snake_case, processed_features[input_name] ) ) )
snake_case__ : int = self.feat_extract_tester.prepare_inputs_for_target(equal_length=_snake_case )
snake_case__ : Union[str, Any] = BatchFeature({input_name: speech_inputs}, tensor_type='np' )
snake_case__ : Dict = processed_features[input_name]
if len(batch_features_input.shape ) < 3:
snake_case__ : List[str] = batch_features_input[:, :, None]
self.assertTrue(
batch_features_input.shape
== (self.feat_extract_tester.batch_size, len(speech_inputs[0] ), self.feat_extract_tester.num_mel_bins) )
@require_torch
def lowercase_ ( self : List[str] ) ->Any:
snake_case__ : int = self.feat_extract_tester.prepare_inputs_for_target(equal_length=_snake_case )
snake_case__ : Optional[Any] = self.feature_extraction_class(**self.feat_extract_dict )
snake_case__ : Tuple = feat_extract.model_input_names[0]
snake_case__ : List[Any] = BatchFeature({input_name: speech_inputs}, tensor_type='pt' )
snake_case__ : Tuple = processed_features[input_name]
if len(batch_features_input.shape ) < 3:
snake_case__ : Any = batch_features_input[:, :, None]
self.assertTrue(
batch_features_input.shape
== (self.feat_extract_tester.batch_size, len(speech_inputs[0] ), self.feat_extract_tester.num_mel_bins) )
@require_torch
def lowercase_ ( self : Optional[int] ) ->Tuple:
snake_case__ : Dict = self.feature_extraction_class(**self.feat_extract_dict )
snake_case__ : Union[str, Any] = self.feat_extract_tester.prepare_inputs_for_target()
snake_case__ : Optional[Any] = feat_extract.model_input_names[0]
snake_case__ : List[str] = BatchFeature({input_name: speech_inputs} )
snake_case__ : int = feat_extract.num_mel_bins # hack!
snake_case__ : Tuple = feat_extract.pad(_snake_case, padding='longest', return_tensors='np' )[input_name]
snake_case__ : Union[str, Any] = feat_extract.pad(_snake_case, padding='longest', return_tensors='pt' )[input_name]
self.assertTrue(abs(input_np.astype(np.floataa ).sum() - input_pt.numpy().astype(np.floataa ).sum() ) < 1e-2 )
def lowercase_ ( self : int ) ->Any:
snake_case__ : Any = self.feat_extract_dict
snake_case__ : List[Any] = True
snake_case__ : Union[str, Any] = self.feature_extraction_class(**_snake_case )
snake_case__ : Any = self.feat_extract_tester.prepare_inputs_for_target()
snake_case__ : List[Any] = [len(_snake_case ) for x in speech_inputs]
snake_case__ : Union[str, Any] = feat_extract.model_input_names[0]
snake_case__ : Optional[int] = BatchFeature({input_name: speech_inputs} )
snake_case__ : List[str] = feat_extract.num_mel_bins # hack!
snake_case__ : str = feat_extract.pad(_snake_case, padding='longest', return_tensors='np' )
self.assertIn('attention_mask', _snake_case )
self.assertListEqual(list(processed.attention_mask.shape ), list(processed[input_name].shape[:2] ) )
self.assertListEqual(processed.attention_mask.sum(-1 ).tolist(), _snake_case )
def lowercase_ ( self : Optional[int] ) ->str:
snake_case__ : int = self.feat_extract_dict
snake_case__ : List[str] = True
snake_case__ : Tuple = self.feature_extraction_class(**_snake_case )
snake_case__ : List[str] = self.feat_extract_tester.prepare_inputs_for_target()
snake_case__ : str = [len(_snake_case ) for x in speech_inputs]
snake_case__ : Optional[Any] = feat_extract.model_input_names[0]
snake_case__ : Optional[int] = BatchFeature({input_name: speech_inputs} )
snake_case__ : Optional[Any] = min(_snake_case )
snake_case__ : Union[str, Any] = feat_extract.num_mel_bins # hack!
snake_case__ : Tuple = feat_extract.pad(
_snake_case, padding='max_length', max_length=_snake_case, truncation=_snake_case, return_tensors='np' )
self.assertIn('attention_mask', _snake_case )
self.assertListEqual(
list(processed_pad.attention_mask.shape ), [processed_pad[input_name].shape[0], max_length] )
self.assertListEqual(
processed_pad.attention_mask[:, :max_length].sum(-1 ).tolist(), [max_length for x in speech_inputs] )
def lowercase_ ( self : List[Any], _snake_case : Optional[int] ) ->Optional[Any]:
from datasets import load_dataset
snake_case__ : str = load_dataset('hf-internal-testing/librispeech_asr_dummy', 'clean', split='validation' )
# automatic decoding with librispeech
snake_case__ : Dict = ds.sort('id' ).select(range(_snake_case ) )[:num_samples]['audio']
return [x["array"] for x in speech_samples]
def lowercase_ ( self : str ) ->str:
# fmt: off
snake_case__ : List[Any] = torch.tensor(
[2.3804e-03, 2.0752e-03, 1.9836e-03, 2.1057e-03, 1.6174e-03,
3.0518e-04, 9.1553e-05, 3.3569e-04, 9.7656e-04, 1.8311e-03,
2.0142e-03, 2.1057e-03, 1.7395e-03, 4.5776e-04, -3.9673e-04,
4.5776e-04, 1.0071e-03, 9.1553e-05, 4.8828e-04, 1.1597e-03,
7.3242e-04, 9.4604e-04, 1.8005e-03, 1.8311e-03, 8.8501e-04,
4.2725e-04, 4.8828e-04, 7.3242e-04, 1.0986e-03, 2.1057e-03] )
# fmt: on
snake_case__ : Union[str, Any] = self._load_datasamples(1 )
snake_case__ : Optional[int] = SpeechTaFeatureExtractor()
snake_case__ : List[Any] = feature_extractor(_snake_case, return_tensors='pt' ).input_values
self.assertEquals(input_values.shape, (1, 9_3_6_8_0) )
self.assertTrue(torch.allclose(input_values[0, :3_0], _snake_case, atol=1e-6 ) )
def lowercase_ ( self : Any ) ->str:
# fmt: off
snake_case__ : Optional[Any] = torch.tensor(
[-2.6_8_7_0, -3.0_1_0_4, -3.1_3_5_6, -3.5_3_5_2, -3.0_0_4_4, -3.0_3_5_3, -3.4_7_1_9, -3.6_7_7_7,
-3.1_5_2_0, -2.9_4_3_5, -2.6_5_5_3, -2.8_7_9_5, -2.9_9_4_4, -2.5_9_2_1, -3.0_2_7_9, -3.0_3_8_6,
-3.0_8_6_4, -3.1_2_9_1, -3.2_3_5_3, -2.7_4_4_4, -2.6_8_3_1, -2.7_2_8_7, -3.1_7_6_1, -3.1_5_7_1,
-3.2_7_2_6, -3.0_5_8_2, -3.1_0_0_7, -3.4_5_3_3, -3.4_6_9_5, -3.0_9_9_8] )
# fmt: on
snake_case__ : List[str] = self._load_datasamples(1 )
snake_case__ : str = SpeechTaFeatureExtractor()
snake_case__ : Optional[Any] = feature_extractor(audio_target=_snake_case, return_tensors='pt' ).input_values
self.assertEquals(input_values.shape, (1, 3_6_6, 8_0) )
self.assertTrue(torch.allclose(input_values[0, 0, :3_0], _snake_case, atol=1e-4 ) )
| 277 | 1 |
def lowercase_ (A : int ):
return sum(i for i in range(1 , number // 2 + 1 ) if number % i == 0 ) == number
if __name__ == "__main__":
print("Program to check whether a number is a Perfect number or not...")
a_ :List[str] = int(input("Enter number: ").strip())
print(F"""{number} is {"" if perfect(number) else "not "}a Perfect Number.""")
| 277 |
# Copyright 2023 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from ..models.auto import AutoModelForSeqaSeqLM, AutoTokenizer
from .base import PipelineTool
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = """philschmid/bart-large-cnn-samsum"""
_SCREAMING_SNAKE_CASE = (
"""This is a tool that summarizes an English text. It takes an input `text` containing the text to summarize, """
"""and returns a summary of the text."""
)
_SCREAMING_SNAKE_CASE = """summarizer"""
_SCREAMING_SNAKE_CASE = AutoTokenizer
_SCREAMING_SNAKE_CASE = AutoModelForSeqaSeqLM
_SCREAMING_SNAKE_CASE = ["""text"""]
_SCREAMING_SNAKE_CASE = ["""text"""]
def lowercase_ ( self : Optional[Any], _snake_case : str ) ->Any:
return self.pre_processor(_snake_case, return_tensors='pt', truncation=_snake_case )
def lowercase_ ( self : int, _snake_case : List[Any] ) ->Any:
return self.model.generate(**_snake_case )[0]
def lowercase_ ( self : int, _snake_case : int ) ->str:
return self.pre_processor.decode(_snake_case, skip_special_tokens=_snake_case, clean_up_tokenization_spaces=_snake_case )
| 277 | 1 |
from typing import Optional, Tuple, Union
import torch
from einops import rearrange, reduce
from diffusers import DDIMScheduler, DDPMScheduler, DiffusionPipeline, ImagePipelineOutput, UNetaDConditionModel
from diffusers.schedulers.scheduling_ddim import DDIMSchedulerOutput
from diffusers.schedulers.scheduling_ddpm import DDPMSchedulerOutput
a_ :Optional[int] = 8
def lowercase_ (A : Optional[int] , A : Optional[int]=BITS ):
snake_case__ : Optional[Any] = x.device
snake_case__ : List[Any] = (x * 2_5_5).int().clamp(0 , 2_5_5 )
snake_case__ : Any = 2 ** torch.arange(bits - 1 , -1 , -1 , device=A )
snake_case__ : Tuple = rearrange(A , 'd -> d 1 1' )
snake_case__ : Tuple = rearrange(A , 'b c h w -> b c 1 h w' )
snake_case__ : Dict = ((x & mask) != 0).float()
snake_case__ : Dict = rearrange(A , 'b c d h w -> b (c d) h w' )
snake_case__ : str = bits * 2 - 1
return bits
def lowercase_ (A : Optional[Any] , A : int=BITS ):
snake_case__ : str = x.device
snake_case__ : int = (x > 0).int()
snake_case__ : Tuple = 2 ** torch.arange(bits - 1 , -1 , -1 , device=A , dtype=torch.intaa )
snake_case__ : Union[str, Any] = rearrange(A , 'd -> d 1 1' )
snake_case__ : int = rearrange(A , 'b (c d) h w -> b c d h w' , d=8 )
snake_case__ : List[Any] = reduce(x * mask , 'b c d h w -> b c h w' , 'sum' )
return (dec / 2_5_5).clamp(0.0 , 1.0 )
def lowercase_ (self : List[str] , A : torch.FloatTensor , A : int , A : torch.FloatTensor , A : float = 0.0 , A : bool = True , A : Optional[Any]=None , A : bool = True , ):
if self.num_inference_steps is None:
raise ValueError(
'Number of inference steps is \'None\', you need to run \'set_timesteps\' after creating the scheduler' )
# See formulas (12) and (16) of DDIM paper https://arxiv.org/pdf/2010.02502.pdf
# Ideally, read DDIM paper in-detail understanding
# Notation (<variable name> -> <name in paper>
# - pred_noise_t -> e_theta(x_t, t)
# - pred_original_sample -> f_theta(x_t, t) or x_0
# - std_dev_t -> sigma_t
# - eta -> η
# - pred_sample_direction -> "direction pointing to x_t"
# - pred_prev_sample -> "x_t-1"
# 1. get previous step value (=t-1)
snake_case__ : List[Any] = timestep - self.config.num_train_timesteps // self.num_inference_steps
# 2. compute alphas, betas
snake_case__ : List[Any] = self.alphas_cumprod[timestep]
snake_case__ : Dict = self.alphas_cumprod[prev_timestep] if prev_timestep >= 0 else self.final_alpha_cumprod
snake_case__ : int = 1 - alpha_prod_t
# 3. compute predicted original sample from predicted noise also called
# "predicted x_0" of formula (12) from https://arxiv.org/pdf/2010.02502.pdf
snake_case__ : Dict = (sample - beta_prod_t ** 0.5 * model_output) / alpha_prod_t ** 0.5
# 4. Clip "predicted x_0"
snake_case__ : Union[str, Any] = self.bit_scale
if self.config.clip_sample:
snake_case__ : List[Any] = torch.clamp(A , -scale , A )
# 5. compute variance: "sigma_t(η)" -> see formula (16)
# σ_t = sqrt((1 − α_t−1)/(1 − α_t)) * sqrt(1 − α_t/α_t−1)
snake_case__ : int = self._get_variance(A , A )
snake_case__ : int = eta * variance ** 0.5
if use_clipped_model_output:
# the model_output is always re-derived from the clipped x_0 in Glide
snake_case__ : Optional[Any] = (sample - alpha_prod_t ** 0.5 * pred_original_sample) / beta_prod_t ** 0.5
# 6. compute "direction pointing to x_t" of formula (12) from https://arxiv.org/pdf/2010.02502.pdf
snake_case__ : Tuple = (1 - alpha_prod_t_prev - std_dev_t**2) ** 0.5 * model_output
# 7. compute x_t without "random noise" of formula (12) from https://arxiv.org/pdf/2010.02502.pdf
snake_case__ : Tuple = alpha_prod_t_prev ** 0.5 * pred_original_sample + pred_sample_direction
if eta > 0:
# randn_like does not support generator https://github.com/pytorch/pytorch/issues/27072
snake_case__ : Union[str, Any] = model_output.device if torch.is_tensor(A ) else 'cpu'
snake_case__ : Any = torch.randn(model_output.shape , dtype=model_output.dtype , generator=A ).to(A )
snake_case__ : Optional[Any] = self._get_variance(A , A ) ** 0.5 * eta * noise
snake_case__ : int = prev_sample + variance
if not return_dict:
return (prev_sample,)
return DDIMSchedulerOutput(prev_sample=A , pred_original_sample=A )
def lowercase_ (self : List[str] , A : torch.FloatTensor , A : int , A : torch.FloatTensor , A : Tuple="epsilon" , A : Union[str, Any]=None , A : bool = True , ):
snake_case__ : List[Any] = timestep
if model_output.shape[1] == sample.shape[1] * 2 and self.variance_type in ["learned", "learned_range"]:
snake_case__ , snake_case__ : Optional[Any] = torch.split(A , sample.shape[1] , dim=1 )
else:
snake_case__ : Tuple = None
# 1. compute alphas, betas
snake_case__ : Optional[int] = self.alphas_cumprod[t]
snake_case__ : int = self.alphas_cumprod[t - 1] if t > 0 else self.one
snake_case__ : List[str] = 1 - alpha_prod_t
snake_case__ : List[str] = 1 - alpha_prod_t_prev
# 2. compute predicted original sample from predicted noise also called
# "predicted x_0" of formula (15) from https://arxiv.org/pdf/2006.11239.pdf
if prediction_type == "epsilon":
snake_case__ : int = (sample - beta_prod_t ** 0.5 * model_output) / alpha_prod_t ** 0.5
elif prediction_type == "sample":
snake_case__ : Dict = model_output
else:
raise ValueError(F'''Unsupported prediction_type {prediction_type}.''' )
# 3. Clip "predicted x_0"
snake_case__ : List[str] = self.bit_scale
if self.config.clip_sample:
snake_case__ : Union[str, Any] = torch.clamp(A , -scale , A )
# 4. Compute coefficients for pred_original_sample x_0 and current sample x_t
# See formula (7) from https://arxiv.org/pdf/2006.11239.pdf
snake_case__ : Union[str, Any] = (alpha_prod_t_prev ** 0.5 * self.betas[t]) / beta_prod_t
snake_case__ : str = self.alphas[t] ** 0.5 * beta_prod_t_prev / beta_prod_t
# 5. Compute predicted previous sample µ_t
# See formula (7) from https://arxiv.org/pdf/2006.11239.pdf
snake_case__ : Optional[int] = pred_original_sample_coeff * pred_original_sample + current_sample_coeff * sample
# 6. Add noise
snake_case__ : Tuple = 0
if t > 0:
snake_case__ : Optional[Any] = torch.randn(
model_output.size() , dtype=model_output.dtype , layout=model_output.layout , generator=A ).to(model_output.device )
snake_case__ : str = (self._get_variance(A , predicted_variance=A ) ** 0.5) * noise
snake_case__ : Any = pred_prev_sample + variance
if not return_dict:
return (pred_prev_sample,)
return DDPMSchedulerOutput(prev_sample=A , pred_original_sample=A )
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
def __init__( self : Union[str, Any], _snake_case : UNetaDConditionModel, _snake_case : Union[DDIMScheduler, DDPMScheduler], _snake_case : Optional[float] = 1.0, ) ->int:
super().__init__()
snake_case__ : Optional[int] = bit_scale
snake_case__ : int = (
ddim_bit_scheduler_step if isinstance(_snake_case, _snake_case ) else ddpm_bit_scheduler_step
)
self.register_modules(unet=_snake_case, scheduler=_snake_case )
@torch.no_grad()
def __call__( self : List[str], _snake_case : Optional[int] = 2_5_6, _snake_case : Optional[int] = 2_5_6, _snake_case : Optional[int] = 5_0, _snake_case : Optional[torch.Generator] = None, _snake_case : Optional[int] = 1, _snake_case : Optional[str] = "pil", _snake_case : bool = True, **_snake_case : Tuple, ) ->Union[Tuple, ImagePipelineOutput]:
snake_case__ : int = torch.randn(
(batch_size, self.unet.config.in_channels, height, width), generator=_snake_case, )
snake_case__ : Tuple = decimal_to_bits(_snake_case ) * self.bit_scale
snake_case__ : Optional[Any] = latents.to(self.device )
self.scheduler.set_timesteps(_snake_case )
for t in self.progress_bar(self.scheduler.timesteps ):
# predict the noise residual
snake_case__ : Union[str, Any] = self.unet(_snake_case, _snake_case ).sample
# compute the previous noisy sample x_t -> x_t-1
snake_case__ : int = self.scheduler.step(_snake_case, _snake_case, _snake_case ).prev_sample
snake_case__ : Optional[int] = bits_to_decimal(_snake_case )
if output_type == "pil":
snake_case__ : Any = self.numpy_to_pil(_snake_case )
if not return_dict:
return (image,)
return ImagePipelineOutput(images=_snake_case )
| 277 |
import argparse
import torch
from transformers import LxmertConfig, LxmertForPreTraining, load_tf_weights_in_lxmert
from transformers.utils import logging
logging.set_verbosity_info()
def lowercase_ (A : str , A : List[Any] , A : Any ):
# Initialise PyTorch model
snake_case__ : List[Any] = LxmertConfig.from_json_file(A )
print(F'''Building PyTorch model from configuration: {config}''' )
snake_case__ : List[str] = LxmertForPreTraining(A )
# Load weights from tf checkpoint
load_tf_weights_in_lxmert(A , A , A )
# Save pytorch-model
print(F'''Save PyTorch model to {pytorch_dump_path}''' )
torch.save(model.state_dict() , A )
if __name__ == "__main__":
a_ :Union[str, Any] = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--tf_checkpoint_path", default=None, type=str, required=True, help="Path to the TensorFlow checkpoint path."
)
parser.add_argument(
"--config_file",
default=None,
type=str,
required=True,
help="The config json file corresponding to the pre-trained model. \nThis specifies the model architecture.",
)
parser.add_argument(
"--pytorch_dump_path", default=None, type=str, required=True, help="Path to the output PyTorch model."
)
a_ :Optional[int] = parser.parse_args()
convert_tf_checkpoint_to_pytorch(args.tf_checkpoint_path, args.config_file, args.pytorch_dump_path)
| 277 | 1 |
def lowercase_ (A : int ):
if a < 0:
raise ValueError('Input value must be a positive integer' )
elif isinstance(A , A ):
raise TypeError('Input value must be a \'int\' type' )
return bin(A ).count('1' )
if __name__ == "__main__":
import doctest
doctest.testmod()
| 277 |
import argparse
import fairseq
import torch
from torch import nn
from transformers import (
MBartaaTokenizer,
MBartConfig,
MBartForCausalLM,
SpeechEncoderDecoderConfig,
SpeechEncoderDecoderModel,
WavaVecaConfig,
WavaVecaFeatureExtractor,
WavaVecaModel,
logging,
)
logging.set_verbosity_info()
a_ :Tuple = logging.get_logger(__name__)
a_ :List[Any] = {
"post_extract_proj": "feature_projection.projection",
"encoder.pos_conv.0": "encoder.pos_conv_embed.conv",
"self_attn.k_proj": "encoder.layers.*.attention.k_proj",
"self_attn.v_proj": "encoder.layers.*.attention.v_proj",
"self_attn.q_proj": "encoder.layers.*.attention.q_proj",
"self_attn.out_proj": "encoder.layers.*.attention.out_proj",
"self_attn_layer_norm": "encoder.layers.*.layer_norm",
"fc1": "encoder.layers.*.feed_forward.intermediate_dense",
"fc2": "encoder.layers.*.feed_forward.output_dense",
"final_layer_norm": "encoder.layers.*.final_layer_norm",
"encoder.layer_norm": "encoder.layer_norm",
"w2v_model.layer_norm": "feature_projection.layer_norm",
"quantizer.weight_proj": "quantizer.weight_proj",
"quantizer.vars": "quantizer.codevectors",
"project_q": "project_q",
"final_proj": "project_hid",
"w2v_encoder.proj": "lm_head",
"mask_emb": "masked_spec_embed",
}
a_ :Optional[int] = [
"lm_head",
"quantizer.weight_proj",
"quantizer.codevectors",
"project_q",
"project_hid",
]
def lowercase_ (A : Union[str, Any] , A : str , A : Dict , A : Optional[Any] , A : Optional[Any] ):
for attribute in key.split('.' ):
snake_case__ : Any = getattr(A , A )
if weight_type is not None:
snake_case__ : Optional[Any] = getattr(A , A ).shape
else:
snake_case__ : Optional[int] = hf_pointer.shape
assert hf_shape == value.shape, (
F'''Shape of hf {key + "." + weight_type if weight_type is not None else ""} is {hf_shape}, but should be'''
F''' {value.shape} for {full_name}'''
)
if weight_type == "weight":
snake_case__ : Tuple = value
elif weight_type == "weight_g":
snake_case__ : Tuple = value
elif weight_type == "weight_v":
snake_case__ : List[Any] = value
elif weight_type == "bias":
snake_case__ : List[Any] = value
else:
snake_case__ : Optional[Any] = value
logger.info(F'''{key + "." + weight_type if weight_type is not None else ""} was initialized from {full_name}.''' )
def lowercase_ (A : str , A : Any ):
snake_case__ : Union[str, Any] = []
snake_case__ : Union[str, Any] = fairseq_model.state_dict()
snake_case__ : Union[str, Any] = hf_model.feature_extractor
snake_case__ : Any = hf_model.adapter
for name, value in fairseq_dict.items():
snake_case__ : Any = False
if "conv_layers" in name:
load_conv_layer(
A , A , A , A , hf_model.config.feat_extract_norm == 'group' , )
snake_case__ : List[Any] = True
elif any(x in name for x in ['adaptor', 'w2v_encoder.proj.', 'w2v_proj_ln.'] ):
load_adapter(A , A , A , A )
snake_case__ : Optional[Any] = True
else:
for key, mapped_key in MAPPING.items():
if key in name or key.split('w2v_model.' )[-1] == name.split('.' )[0]:
snake_case__ : Tuple = True
if "*" in mapped_key:
snake_case__ : List[Any] = name.split(A )[0].split('.' )[-2]
snake_case__ : Optional[int] = mapped_key.replace('*' , A )
if "weight_g" in name:
snake_case__ : Optional[int] = 'weight_g'
elif "weight_v" in name:
snake_case__ : Optional[Any] = 'weight_v'
elif "bias" in name:
snake_case__ : Union[str, Any] = 'bias'
elif "weight" in name:
snake_case__ : Optional[int] = 'weight'
else:
snake_case__ : Tuple = None
set_recursively(A , A , A , A , A )
continue
if not is_used:
unused_weights.append(A )
logger.warning(F'''Unused weights: {unused_weights}''' )
def lowercase_ (A : Union[str, Any] , A : Any , A : str , A : str , A : int ):
snake_case__ : str = full_name.split('conv_layers.' )[-1]
snake_case__ : Optional[int] = name.split('.' )
snake_case__ : Tuple = int(items[0] )
snake_case__ : Any = int(items[1] )
if type_id == 0:
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.bias.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.bias.data.shape} was found.'''
)
snake_case__ : Union[str, Any] = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.weight.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.weight.data.shape} was found.'''
)
snake_case__ : Union[str, Any] = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif (type_id == 2 and not use_group_norm) or (type_id == 2 and layer_id == 0 and use_group_norm):
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape, (
F'''{full_name} has size {value.shape}, but {feature_extractor[layer_id].layer_norm.bias.data.shape} was'''
" found."
)
snake_case__ : Optional[int] = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor[layer_id].layer_norm.weight.data.shape} was found.'''
)
snake_case__ : Optional[Any] = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
else:
unused_weights.append(A )
def lowercase_ (A : Optional[Any] , A : Any , A : Tuple , A : Any ):
snake_case__ : List[str] = full_name.split('adaptor.' )[-1]
snake_case__ : Tuple = name.split('.' )
if items[1].isdigit():
snake_case__ : Optional[int] = int(items[1] )
else:
snake_case__ : Any = None
if "adaptor" not in full_name:
if "proj_ln" in full_name:
# has to be layer norm
if "bias" in name:
assert (
value.shape == adapter.proj_layer_norm.bias.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj_layer_norm.bias.data.shape} was found.'''
snake_case__ : List[Any] = value
logger.info(F'''Adapter proj layer norm bias was initialized from {full_name}.''' )
if "weight" in name:
assert (
value.shape == adapter.proj_layer_norm.weight.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj_layer_norm.weight.data.shape} was found.'''
snake_case__ : int = value
else:
# has to be projection layer
if "bias" in name:
assert (
value.shape == adapter.proj.bias.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj.bias.data.shape} was found.'''
snake_case__ : str = value
logger.info(F'''Adapter proj layer bias was initialized from {full_name}.''' )
if "weight" in name:
assert (
value.shape == adapter.proj.weight.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj.weight.data.shape} was found.'''
snake_case__ : Dict = value
logger.info(F'''Adapter proj layer weight was initialized from {full_name}.''' )
elif isinstance(A , A ):
if "bias" in name:
assert (
value.shape == adapter.layers[layer_id].conv.bias.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.layers[layer_id].conv.bias.data.shape} was found.'''
snake_case__ : List[str] = value
logger.info(F'''Adapter layer {layer_id} bias was initialized from {full_name}.''' )
elif "weight" in name:
assert (
value.shape == adapter.layers[layer_id].conv.weight.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.layers[layer_id].conv.weight.data.shape} was found.'''
snake_case__ : List[str] = value
logger.info(F'''Adapter layer {layer_id} bias was initialized from {full_name}.''' )
else:
unused_weights.append(A )
def lowercase_ (A : int ):
snake_case__ , snake_case__ : Union[str, Any] = emb.weight.shape
snake_case__ : int = nn.Linear(A , A , bias=A )
snake_case__ : Optional[Any] = emb.weight.data
return lin_layer
@torch.no_grad()
def lowercase_ (A : Tuple , A : Tuple , A : Any , A : Optional[Any] , A : int , A : Optional[Any] , A : Union[str, Any] , A : Union[str, Any] , A : Optional[Any] , A : List[Any] , A : Union[str, Any] , ):
snake_case__ : Optional[Any] = WavaVecaConfig.from_pretrained(
A , add_adapter=A , adapter_stride=A , adapter_kernel_size=A , use_auth_token=A , output_hidden_size=A , )
snake_case__ : Dict = MBartConfig.from_pretrained(A )
# load model
snake_case__ , snake_case__ , snake_case__ : Any = fairseq.checkpoint_utils.load_model_ensemble_and_task(
[checkpoint_path] , arg_overrides={
'config_yaml': config_yaml_path,
'data': '/'.join(dict_path.split('/' )[:-1] ),
'w2v_path': checkpoint_path,
'load_pretrained_decoder_from': None,
} , )
snake_case__ : List[Any] = model[0].eval()
# load feature extractor
snake_case__ : str = WavaVecaFeatureExtractor.from_pretrained(A , use_auth_token=A )
# set weights for wav2vec2 encoder
snake_case__ : List[str] = WavaVecaModel(A )
recursively_load_weights_wavaveca(model.encoder , A )
# load decoder weights
snake_case__ : Any = MBartForCausalLM(A )
snake_case__ , snake_case__ : int = hf_decoder.model.decoder.load_state_dict(model.decoder.state_dict() , strict=A )
logger.warning(F'''The following keys are missing when loading the decoder weights: {missing_keys}''' )
logger.warning(F'''The following keys are unexpected when loading the decoder weights: {unexpected_keys}''' )
snake_case__ : Union[str, Any] = SpeechEncoderDecoderModel(encoder=A , decoder=A )
snake_case__ : str = False
snake_case__ : int = MBartaaTokenizer(A )
tokenizer.save_pretrained(A )
snake_case__ : Any = hf_wavavec.config.to_dict()
snake_case__ : Tuple = tokenizer.pad_token_id
snake_case__ : Union[str, Any] = tokenizer.bos_token_id
snake_case__ : Dict = tokenizer.eos_token_id
snake_case__ : Optional[int] = 'mbart50'
snake_case__ : Union[str, Any] = 'wav2vec2'
snake_case__ : List[str] = tokenizer.eos_token_id
snake_case__ : Union[str, Any] = 2_5_0_0_0_4
snake_case__ : int = tokenizer.eos_token_id
snake_case__ : Union[str, Any] = SpeechEncoderDecoderConfig.from_dict(A )
hf_wavavec.save_pretrained(A )
feature_extractor.save_pretrained(A )
if __name__ == "__main__":
a_ :str = argparse.ArgumentParser()
parser.add_argument("--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model.")
parser.add_argument("--checkpoint_path", default=None, type=str, help="Path to fairseq checkpoint")
parser.add_argument("--dict_path", default=None, type=str, help="Path to dict of fine-tuned model")
parser.add_argument("--config_yaml_path", default=None, type=str, help="Path to yaml file of fine-tuned model")
parser.add_argument(
"--encoder_config_path",
default="facebook/wav2vec2-xls-r-1b",
type=str,
help="Path to hf encoder wav2vec2 checkpoint config",
)
parser.add_argument(
"--decoder_config_path",
default="facebook/mbart-large-50-one-to-many-mmt",
type=str,
help="Path to hf decoder checkpoint config",
)
parser.add_argument("--add_adapter", default=True, type=bool, help="whethere to add model adapter layers")
parser.add_argument("--adapter_stride", default=2, type=int, help="stride of adapter layers")
parser.add_argument("--adapter_kernel_size", default=3, type=int, help="kernel size of adapter layers")
parser.add_argument("--encoder_output_dim", default=1_024, type=int, help="encoder output dim")
parser.add_argument("--start_token_id", default=250_004, type=int, help="`decoder_start_token_id` of model config")
a_ :Union[str, Any] = parser.parse_args()
convert_wavaveca_checkpoint(
args.checkpoint_path,
args.pytorch_dump_folder_path,
args.dict_path,
args.config_yaml_path,
encoder_config_path=args.encoder_config_path,
decoder_config_path=args.decoder_config_path,
add_adapter=args.add_adapter,
adapter_kernel_size=args.adapter_kernel_size,
adapter_stride=args.adapter_stride,
decoder_start_token_id=args.start_token_id,
encoder_output_dim=args.encoder_output_dim,
)
| 277 | 1 |
import argparse
import torch
from transformers import YosoConfig, YosoForMaskedLM
def lowercase_ (A : List[str] ):
if "model" in orig_key:
snake_case__ : Any = orig_key.replace('model.' , '' )
if "norm1" in orig_key:
snake_case__ : Optional[int] = orig_key.replace('norm1' , 'attention.output.LayerNorm' )
if "norm2" in orig_key:
snake_case__ : Any = orig_key.replace('norm2' , 'output.LayerNorm' )
if "norm" in orig_key:
snake_case__ : str = orig_key.replace('norm' , 'LayerNorm' )
if "transformer" in orig_key:
snake_case__ : Tuple = orig_key.split('.' )[0].split('_' )[-1]
snake_case__ : Optional[Any] = orig_key.replace(F'''transformer_{layer_num}''' , F'''encoder.layer.{layer_num}''' )
if "mha.attn" in orig_key:
snake_case__ : int = orig_key.replace('mha.attn' , 'attention.self' )
if "mha" in orig_key:
snake_case__ : Any = orig_key.replace('mha' , 'attention' )
if "W_q" in orig_key:
snake_case__ : Any = orig_key.replace('W_q' , 'self.query' )
if "W_k" in orig_key:
snake_case__ : Tuple = orig_key.replace('W_k' , 'self.key' )
if "W_v" in orig_key:
snake_case__ : Any = orig_key.replace('W_v' , 'self.value' )
if "ff1" in orig_key:
snake_case__ : int = orig_key.replace('ff1' , 'intermediate.dense' )
if "ff2" in orig_key:
snake_case__ : List[str] = orig_key.replace('ff2' , 'output.dense' )
if "ff" in orig_key:
snake_case__ : str = orig_key.replace('ff' , 'output.dense' )
if "mlm_class" in orig_key:
snake_case__ : Dict = orig_key.replace('mlm.mlm_class' , 'cls.predictions.decoder' )
if "mlm" in orig_key:
snake_case__ : Any = orig_key.replace('mlm' , 'cls.predictions.transform' )
if "cls" not in orig_key:
snake_case__ : Optional[Any] = 'yoso.' + orig_key
return orig_key
def lowercase_ (A : Any , A : str ):
for key in orig_state_dict.copy().keys():
snake_case__ : str = orig_state_dict.pop(A )
if ("pooler" in key) or ("sen_class" in key):
continue
else:
snake_case__ : Dict = val
snake_case__ : Union[str, Any] = orig_state_dict['cls.predictions.decoder.bias']
snake_case__ : str = torch.arange(A ).expand((1, -1) ) + 2
return orig_state_dict
def lowercase_ (A : str , A : List[str] , A : Union[str, Any] ):
snake_case__ : Any = torch.load(A , map_location='cpu' )['model_state_dict']
snake_case__ : str = YosoConfig.from_json_file(A )
snake_case__ : Any = YosoForMaskedLM(A )
snake_case__ : Optional[Any] = convert_checkpoint_helper(config.max_position_embeddings , A )
print(model.load_state_dict(A ) )
model.eval()
model.save_pretrained(A )
print(F'''Checkpoint successfuly converted. Model saved at {pytorch_dump_path}''' )
if __name__ == "__main__":
a_ :Tuple = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--pytorch_model_path", default=None, type=str, required=True, help="Path to YOSO pytorch checkpoint."
)
parser.add_argument(
"--config_file",
default=None,
type=str,
required=True,
help="The json file for YOSO model config.",
)
parser.add_argument(
"--pytorch_dump_path", default=None, type=str, required=True, help="Path to the output PyTorch model."
)
a_ :Union[str, Any] = parser.parse_args()
convert_yoso_checkpoint(args.pytorch_model_path, args.config_file, args.pytorch_dump_path)
| 277 |
from collections import OrderedDict
from typing import TYPE_CHECKING, Any, Mapping, Optional, Union
from ...configuration_utils import PretrainedConfig
from ...onnx import OnnxConfig
from ...utils import logging
if TYPE_CHECKING:
from ... import FeatureExtractionMixin, PreTrainedTokenizerBase, TensorType
a_ :Tuple = logging.get_logger(__name__)
a_ :Union[str, Any] = {
"microsoft/deberta-v2-xlarge": "https://huggingface.co/microsoft/deberta-v2-xlarge/resolve/main/config.json",
"microsoft/deberta-v2-xxlarge": "https://huggingface.co/microsoft/deberta-v2-xxlarge/resolve/main/config.json",
"microsoft/deberta-v2-xlarge-mnli": (
"https://huggingface.co/microsoft/deberta-v2-xlarge-mnli/resolve/main/config.json"
),
"microsoft/deberta-v2-xxlarge-mnli": (
"https://huggingface.co/microsoft/deberta-v2-xxlarge-mnli/resolve/main/config.json"
),
}
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = """deberta-v2"""
def __init__( self : Union[str, Any], _snake_case : Dict=1_2_8_1_0_0, _snake_case : Any=1_5_3_6, _snake_case : Tuple=2_4, _snake_case : int=2_4, _snake_case : Optional[int]=6_1_4_4, _snake_case : Optional[int]="gelu", _snake_case : Optional[int]=0.1, _snake_case : List[str]=0.1, _snake_case : str=5_1_2, _snake_case : Optional[int]=0, _snake_case : Optional[int]=0.0_2, _snake_case : Dict=1e-7, _snake_case : int=False, _snake_case : Any=-1, _snake_case : List[str]=0, _snake_case : Tuple=True, _snake_case : Any=None, _snake_case : Union[str, Any]=0, _snake_case : Tuple="gelu", **_snake_case : Union[str, Any], ) ->Optional[int]:
super().__init__(**_snake_case )
snake_case__ : Dict = hidden_size
snake_case__ : Optional[int] = num_hidden_layers
snake_case__ : Any = num_attention_heads
snake_case__ : List[Any] = intermediate_size
snake_case__ : List[Any] = hidden_act
snake_case__ : Union[str, Any] = hidden_dropout_prob
snake_case__ : Dict = attention_probs_dropout_prob
snake_case__ : List[str] = max_position_embeddings
snake_case__ : List[str] = type_vocab_size
snake_case__ : Optional[Any] = initializer_range
snake_case__ : Optional[int] = relative_attention
snake_case__ : Tuple = max_relative_positions
snake_case__ : Union[str, Any] = pad_token_id
snake_case__ : Optional[int] = position_biased_input
# Backwards compatibility
if type(_snake_case ) == str:
snake_case__ : int = [x.strip() for x in pos_att_type.lower().split('|' )]
snake_case__ : List[str] = pos_att_type
snake_case__ : Union[str, Any] = vocab_size
snake_case__ : Optional[int] = layer_norm_eps
snake_case__ : Optional[int] = kwargs.get('pooler_hidden_size', _snake_case )
snake_case__ : int = pooler_dropout
snake_case__ : str = pooler_hidden_act
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
@property
def lowercase_ ( self : Optional[int] ) ->Mapping[str, Mapping[int, str]]:
if self.task == "multiple-choice":
snake_case__ : List[Any] = {0: 'batch', 1: 'choice', 2: 'sequence'}
else:
snake_case__ : int = {0: 'batch', 1: 'sequence'}
if self._config.type_vocab_size > 0:
return OrderedDict(
[('input_ids', dynamic_axis), ('attention_mask', dynamic_axis), ('token_type_ids', dynamic_axis)] )
else:
return OrderedDict([('input_ids', dynamic_axis), ('attention_mask', dynamic_axis)] )
@property
def lowercase_ ( self : Dict ) ->int:
return 1_2
def lowercase_ ( self : Tuple, _snake_case : Union["PreTrainedTokenizerBase", "FeatureExtractionMixin"], _snake_case : int = -1, _snake_case : int = -1, _snake_case : int = -1, _snake_case : bool = False, _snake_case : Optional["TensorType"] = None, _snake_case : int = 3, _snake_case : int = 4_0, _snake_case : int = 4_0, _snake_case : "PreTrainedTokenizerBase" = None, ) ->Mapping[str, Any]:
snake_case__ : Union[str, Any] = super().generate_dummy_inputs(preprocessor=_snake_case, framework=_snake_case )
if self._config.type_vocab_size == 0 and "token_type_ids" in dummy_inputs:
del dummy_inputs["token_type_ids"]
return dummy_inputs
| 277 | 1 |
import argparse
import fairseq
import torch
from torch import nn
from transformers import (
MBartaaTokenizer,
MBartConfig,
MBartForCausalLM,
SpeechEncoderDecoderConfig,
SpeechEncoderDecoderModel,
WavaVecaConfig,
WavaVecaFeatureExtractor,
WavaVecaModel,
logging,
)
logging.set_verbosity_info()
a_ :Tuple = logging.get_logger(__name__)
a_ :List[Any] = {
"post_extract_proj": "feature_projection.projection",
"encoder.pos_conv.0": "encoder.pos_conv_embed.conv",
"self_attn.k_proj": "encoder.layers.*.attention.k_proj",
"self_attn.v_proj": "encoder.layers.*.attention.v_proj",
"self_attn.q_proj": "encoder.layers.*.attention.q_proj",
"self_attn.out_proj": "encoder.layers.*.attention.out_proj",
"self_attn_layer_norm": "encoder.layers.*.layer_norm",
"fc1": "encoder.layers.*.feed_forward.intermediate_dense",
"fc2": "encoder.layers.*.feed_forward.output_dense",
"final_layer_norm": "encoder.layers.*.final_layer_norm",
"encoder.layer_norm": "encoder.layer_norm",
"w2v_model.layer_norm": "feature_projection.layer_norm",
"quantizer.weight_proj": "quantizer.weight_proj",
"quantizer.vars": "quantizer.codevectors",
"project_q": "project_q",
"final_proj": "project_hid",
"w2v_encoder.proj": "lm_head",
"mask_emb": "masked_spec_embed",
}
a_ :Optional[int] = [
"lm_head",
"quantizer.weight_proj",
"quantizer.codevectors",
"project_q",
"project_hid",
]
def lowercase_ (A : Union[str, Any] , A : str , A : Dict , A : Optional[Any] , A : Optional[Any] ):
for attribute in key.split('.' ):
snake_case__ : Any = getattr(A , A )
if weight_type is not None:
snake_case__ : Optional[Any] = getattr(A , A ).shape
else:
snake_case__ : Optional[int] = hf_pointer.shape
assert hf_shape == value.shape, (
F'''Shape of hf {key + "." + weight_type if weight_type is not None else ""} is {hf_shape}, but should be'''
F''' {value.shape} for {full_name}'''
)
if weight_type == "weight":
snake_case__ : Tuple = value
elif weight_type == "weight_g":
snake_case__ : Tuple = value
elif weight_type == "weight_v":
snake_case__ : List[Any] = value
elif weight_type == "bias":
snake_case__ : List[Any] = value
else:
snake_case__ : Optional[Any] = value
logger.info(F'''{key + "." + weight_type if weight_type is not None else ""} was initialized from {full_name}.''' )
def lowercase_ (A : str , A : Any ):
snake_case__ : Union[str, Any] = []
snake_case__ : Union[str, Any] = fairseq_model.state_dict()
snake_case__ : Union[str, Any] = hf_model.feature_extractor
snake_case__ : Any = hf_model.adapter
for name, value in fairseq_dict.items():
snake_case__ : Any = False
if "conv_layers" in name:
load_conv_layer(
A , A , A , A , hf_model.config.feat_extract_norm == 'group' , )
snake_case__ : List[Any] = True
elif any(x in name for x in ['adaptor', 'w2v_encoder.proj.', 'w2v_proj_ln.'] ):
load_adapter(A , A , A , A )
snake_case__ : Optional[Any] = True
else:
for key, mapped_key in MAPPING.items():
if key in name or key.split('w2v_model.' )[-1] == name.split('.' )[0]:
snake_case__ : Tuple = True
if "*" in mapped_key:
snake_case__ : List[Any] = name.split(A )[0].split('.' )[-2]
snake_case__ : Optional[int] = mapped_key.replace('*' , A )
if "weight_g" in name:
snake_case__ : Optional[int] = 'weight_g'
elif "weight_v" in name:
snake_case__ : Optional[Any] = 'weight_v'
elif "bias" in name:
snake_case__ : Union[str, Any] = 'bias'
elif "weight" in name:
snake_case__ : Optional[int] = 'weight'
else:
snake_case__ : Tuple = None
set_recursively(A , A , A , A , A )
continue
if not is_used:
unused_weights.append(A )
logger.warning(F'''Unused weights: {unused_weights}''' )
def lowercase_ (A : Union[str, Any] , A : Any , A : str , A : str , A : int ):
snake_case__ : str = full_name.split('conv_layers.' )[-1]
snake_case__ : Optional[int] = name.split('.' )
snake_case__ : Tuple = int(items[0] )
snake_case__ : Any = int(items[1] )
if type_id == 0:
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.bias.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.bias.data.shape} was found.'''
)
snake_case__ : Union[str, Any] = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.weight.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.weight.data.shape} was found.'''
)
snake_case__ : Union[str, Any] = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif (type_id == 2 and not use_group_norm) or (type_id == 2 and layer_id == 0 and use_group_norm):
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape, (
F'''{full_name} has size {value.shape}, but {feature_extractor[layer_id].layer_norm.bias.data.shape} was'''
" found."
)
snake_case__ : Optional[int] = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor[layer_id].layer_norm.weight.data.shape} was found.'''
)
snake_case__ : Optional[Any] = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
else:
unused_weights.append(A )
def lowercase_ (A : Optional[Any] , A : Any , A : Tuple , A : Any ):
snake_case__ : List[str] = full_name.split('adaptor.' )[-1]
snake_case__ : Tuple = name.split('.' )
if items[1].isdigit():
snake_case__ : Optional[int] = int(items[1] )
else:
snake_case__ : Any = None
if "adaptor" not in full_name:
if "proj_ln" in full_name:
# has to be layer norm
if "bias" in name:
assert (
value.shape == adapter.proj_layer_norm.bias.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj_layer_norm.bias.data.shape} was found.'''
snake_case__ : List[Any] = value
logger.info(F'''Adapter proj layer norm bias was initialized from {full_name}.''' )
if "weight" in name:
assert (
value.shape == adapter.proj_layer_norm.weight.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj_layer_norm.weight.data.shape} was found.'''
snake_case__ : int = value
else:
# has to be projection layer
if "bias" in name:
assert (
value.shape == adapter.proj.bias.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj.bias.data.shape} was found.'''
snake_case__ : str = value
logger.info(F'''Adapter proj layer bias was initialized from {full_name}.''' )
if "weight" in name:
assert (
value.shape == adapter.proj.weight.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj.weight.data.shape} was found.'''
snake_case__ : Dict = value
logger.info(F'''Adapter proj layer weight was initialized from {full_name}.''' )
elif isinstance(A , A ):
if "bias" in name:
assert (
value.shape == adapter.layers[layer_id].conv.bias.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.layers[layer_id].conv.bias.data.shape} was found.'''
snake_case__ : List[str] = value
logger.info(F'''Adapter layer {layer_id} bias was initialized from {full_name}.''' )
elif "weight" in name:
assert (
value.shape == adapter.layers[layer_id].conv.weight.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.layers[layer_id].conv.weight.data.shape} was found.'''
snake_case__ : List[str] = value
logger.info(F'''Adapter layer {layer_id} bias was initialized from {full_name}.''' )
else:
unused_weights.append(A )
def lowercase_ (A : int ):
snake_case__ , snake_case__ : Union[str, Any] = emb.weight.shape
snake_case__ : int = nn.Linear(A , A , bias=A )
snake_case__ : Optional[Any] = emb.weight.data
return lin_layer
@torch.no_grad()
def lowercase_ (A : Tuple , A : Tuple , A : Any , A : Optional[Any] , A : int , A : Optional[Any] , A : Union[str, Any] , A : Union[str, Any] , A : Optional[Any] , A : List[Any] , A : Union[str, Any] , ):
snake_case__ : Optional[Any] = WavaVecaConfig.from_pretrained(
A , add_adapter=A , adapter_stride=A , adapter_kernel_size=A , use_auth_token=A , output_hidden_size=A , )
snake_case__ : Dict = MBartConfig.from_pretrained(A )
# load model
snake_case__ , snake_case__ , snake_case__ : Any = fairseq.checkpoint_utils.load_model_ensemble_and_task(
[checkpoint_path] , arg_overrides={
'config_yaml': config_yaml_path,
'data': '/'.join(dict_path.split('/' )[:-1] ),
'w2v_path': checkpoint_path,
'load_pretrained_decoder_from': None,
} , )
snake_case__ : List[Any] = model[0].eval()
# load feature extractor
snake_case__ : str = WavaVecaFeatureExtractor.from_pretrained(A , use_auth_token=A )
# set weights for wav2vec2 encoder
snake_case__ : List[str] = WavaVecaModel(A )
recursively_load_weights_wavaveca(model.encoder , A )
# load decoder weights
snake_case__ : Any = MBartForCausalLM(A )
snake_case__ , snake_case__ : int = hf_decoder.model.decoder.load_state_dict(model.decoder.state_dict() , strict=A )
logger.warning(F'''The following keys are missing when loading the decoder weights: {missing_keys}''' )
logger.warning(F'''The following keys are unexpected when loading the decoder weights: {unexpected_keys}''' )
snake_case__ : Union[str, Any] = SpeechEncoderDecoderModel(encoder=A , decoder=A )
snake_case__ : str = False
snake_case__ : int = MBartaaTokenizer(A )
tokenizer.save_pretrained(A )
snake_case__ : Any = hf_wavavec.config.to_dict()
snake_case__ : Tuple = tokenizer.pad_token_id
snake_case__ : Union[str, Any] = tokenizer.bos_token_id
snake_case__ : Dict = tokenizer.eos_token_id
snake_case__ : Optional[int] = 'mbart50'
snake_case__ : Union[str, Any] = 'wav2vec2'
snake_case__ : List[str] = tokenizer.eos_token_id
snake_case__ : Union[str, Any] = 2_5_0_0_0_4
snake_case__ : int = tokenizer.eos_token_id
snake_case__ : Union[str, Any] = SpeechEncoderDecoderConfig.from_dict(A )
hf_wavavec.save_pretrained(A )
feature_extractor.save_pretrained(A )
if __name__ == "__main__":
a_ :str = argparse.ArgumentParser()
parser.add_argument("--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model.")
parser.add_argument("--checkpoint_path", default=None, type=str, help="Path to fairseq checkpoint")
parser.add_argument("--dict_path", default=None, type=str, help="Path to dict of fine-tuned model")
parser.add_argument("--config_yaml_path", default=None, type=str, help="Path to yaml file of fine-tuned model")
parser.add_argument(
"--encoder_config_path",
default="facebook/wav2vec2-xls-r-1b",
type=str,
help="Path to hf encoder wav2vec2 checkpoint config",
)
parser.add_argument(
"--decoder_config_path",
default="facebook/mbart-large-50-one-to-many-mmt",
type=str,
help="Path to hf decoder checkpoint config",
)
parser.add_argument("--add_adapter", default=True, type=bool, help="whethere to add model adapter layers")
parser.add_argument("--adapter_stride", default=2, type=int, help="stride of adapter layers")
parser.add_argument("--adapter_kernel_size", default=3, type=int, help="kernel size of adapter layers")
parser.add_argument("--encoder_output_dim", default=1_024, type=int, help="encoder output dim")
parser.add_argument("--start_token_id", default=250_004, type=int, help="`decoder_start_token_id` of model config")
a_ :Union[str, Any] = parser.parse_args()
convert_wavaveca_checkpoint(
args.checkpoint_path,
args.pytorch_dump_folder_path,
args.dict_path,
args.config_yaml_path,
encoder_config_path=args.encoder_config_path,
decoder_config_path=args.decoder_config_path,
add_adapter=args.add_adapter,
adapter_kernel_size=args.adapter_kernel_size,
adapter_stride=args.adapter_stride,
decoder_start_token_id=args.start_token_id,
encoder_output_dim=args.encoder_output_dim,
)
| 277 |
import argparse
import json
import pickle
from pathlib import Path
import requests
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import MaskFormerConfig, MaskFormerForInstanceSegmentation, MaskFormerImageProcessor, SwinConfig
from transformers.utils import logging
logging.set_verbosity_info()
a_ :str = logging.get_logger(__name__)
def lowercase_ (A : str ):
snake_case__ : Tuple = SwinConfig.from_pretrained(
'microsoft/swin-tiny-patch4-window7-224' , out_features=['stage1', 'stage2', 'stage3', 'stage4'] )
snake_case__ : List[Any] = MaskFormerConfig(backbone_config=A )
snake_case__ : Union[str, Any] = 'huggingface/label-files'
if "ade20k-full" in model_name:
# this should be ok
snake_case__ : Dict = 8_4_7
snake_case__ : List[str] = 'maskformer-ade20k-full-id2label.json'
elif "ade" in model_name:
# this should be ok
snake_case__ : Union[str, Any] = 1_5_0
snake_case__ : Any = 'ade20k-id2label.json'
elif "coco-stuff" in model_name:
# this should be ok
snake_case__ : List[str] = 1_7_1
snake_case__ : Union[str, Any] = 'maskformer-coco-stuff-id2label.json'
elif "coco" in model_name:
# TODO
snake_case__ : Dict = 1_3_3
snake_case__ : str = 'coco-panoptic-id2label.json'
elif "cityscapes" in model_name:
# this should be ok
snake_case__ : List[str] = 1_9
snake_case__ : Union[str, Any] = 'cityscapes-id2label.json'
elif "vistas" in model_name:
# this should be ok
snake_case__ : Tuple = 6_5
snake_case__ : List[str] = 'mapillary-vistas-id2label.json'
snake_case__ : Dict = json.load(open(hf_hub_download(A , A , repo_type='dataset' ) , 'r' ) )
snake_case__ : List[str] = {int(A ): v for k, v in idalabel.items()}
return config
def lowercase_ (A : Any ):
snake_case__ : Optional[int] = []
# stem
# fmt: off
rename_keys.append(('backbone.patch_embed.proj.weight', 'model.pixel_level_module.encoder.model.embeddings.patch_embeddings.projection.weight') )
rename_keys.append(('backbone.patch_embed.proj.bias', 'model.pixel_level_module.encoder.model.embeddings.patch_embeddings.projection.bias') )
rename_keys.append(('backbone.patch_embed.norm.weight', 'model.pixel_level_module.encoder.model.embeddings.norm.weight') )
rename_keys.append(('backbone.patch_embed.norm.bias', 'model.pixel_level_module.encoder.model.embeddings.norm.bias') )
# stages
for i in range(len(config.backbone_config.depths ) ):
for j in range(config.backbone_config.depths[i] ):
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.norm1.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_before.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.norm1.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_before.bias''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.attn.relative_position_bias_table''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_bias_table''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.attn.relative_position_index''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_index''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.attn.proj.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.attn.proj.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.bias''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.norm2.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_after.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.norm2.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_after.bias''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.mlp.fc1.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.mlp.fc1.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.bias''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.mlp.fc2.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.output.dense.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.mlp.fc2.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.output.dense.bias''') )
if i < 3:
rename_keys.append((F'''backbone.layers.{i}.downsample.reduction.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.reduction.weight''') )
rename_keys.append((F'''backbone.layers.{i}.downsample.norm.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.norm.weight''') )
rename_keys.append((F'''backbone.layers.{i}.downsample.norm.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.norm.bias''') )
rename_keys.append((F'''backbone.norm{i}.weight''', F'''model.pixel_level_module.encoder.hidden_states_norms.{i}.weight''') )
rename_keys.append((F'''backbone.norm{i}.bias''', F'''model.pixel_level_module.encoder.hidden_states_norms.{i}.bias''') )
# FPN
rename_keys.append(('sem_seg_head.layer_4.weight', 'model.pixel_level_module.decoder.fpn.stem.0.weight') )
rename_keys.append(('sem_seg_head.layer_4.norm.weight', 'model.pixel_level_module.decoder.fpn.stem.1.weight') )
rename_keys.append(('sem_seg_head.layer_4.norm.bias', 'model.pixel_level_module.decoder.fpn.stem.1.bias') )
for source_index, target_index in zip(range(3 , 0 , -1 ) , range(0 , 3 ) ):
rename_keys.append((F'''sem_seg_head.adapter_{source_index}.weight''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.0.weight''') )
rename_keys.append((F'''sem_seg_head.adapter_{source_index}.norm.weight''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.1.weight''') )
rename_keys.append((F'''sem_seg_head.adapter_{source_index}.norm.bias''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.1.bias''') )
rename_keys.append((F'''sem_seg_head.layer_{source_index}.weight''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.block.0.weight''') )
rename_keys.append((F'''sem_seg_head.layer_{source_index}.norm.weight''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.block.1.weight''') )
rename_keys.append((F'''sem_seg_head.layer_{source_index}.norm.bias''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.block.1.bias''') )
rename_keys.append(('sem_seg_head.mask_features.weight', 'model.pixel_level_module.decoder.mask_projection.weight') )
rename_keys.append(('sem_seg_head.mask_features.bias', 'model.pixel_level_module.decoder.mask_projection.bias') )
# Transformer decoder
for idx in range(config.decoder_config.decoder_layers ):
# self-attention out projection
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.out_proj.weight''', F'''model.transformer_module.decoder.layers.{idx}.self_attn.out_proj.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.out_proj.bias''', F'''model.transformer_module.decoder.layers.{idx}.self_attn.out_proj.bias''') )
# cross-attention out projection
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.out_proj.weight''', F'''model.transformer_module.decoder.layers.{idx}.encoder_attn.out_proj.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.out_proj.bias''', F'''model.transformer_module.decoder.layers.{idx}.encoder_attn.out_proj.bias''') )
# MLP 1
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear1.weight''', F'''model.transformer_module.decoder.layers.{idx}.fc1.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear1.bias''', F'''model.transformer_module.decoder.layers.{idx}.fc1.bias''') )
# MLP 2
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear2.weight''', F'''model.transformer_module.decoder.layers.{idx}.fc2.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear2.bias''', F'''model.transformer_module.decoder.layers.{idx}.fc2.bias''') )
# layernorm 1 (self-attention layernorm)
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm1.weight''', F'''model.transformer_module.decoder.layers.{idx}.self_attn_layer_norm.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm1.bias''', F'''model.transformer_module.decoder.layers.{idx}.self_attn_layer_norm.bias''') )
# layernorm 2 (cross-attention layernorm)
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm2.weight''', F'''model.transformer_module.decoder.layers.{idx}.encoder_attn_layer_norm.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm2.bias''', F'''model.transformer_module.decoder.layers.{idx}.encoder_attn_layer_norm.bias''') )
# layernorm 3 (final layernorm)
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm3.weight''', F'''model.transformer_module.decoder.layers.{idx}.final_layer_norm.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm3.bias''', F'''model.transformer_module.decoder.layers.{idx}.final_layer_norm.bias''') )
rename_keys.append(('sem_seg_head.predictor.transformer.decoder.norm.weight', 'model.transformer_module.decoder.layernorm.weight') )
rename_keys.append(('sem_seg_head.predictor.transformer.decoder.norm.bias', 'model.transformer_module.decoder.layernorm.bias') )
# heads on top
rename_keys.append(('sem_seg_head.predictor.query_embed.weight', 'model.transformer_module.queries_embedder.weight') )
rename_keys.append(('sem_seg_head.predictor.input_proj.weight', 'model.transformer_module.input_projection.weight') )
rename_keys.append(('sem_seg_head.predictor.input_proj.bias', 'model.transformer_module.input_projection.bias') )
rename_keys.append(('sem_seg_head.predictor.class_embed.weight', 'class_predictor.weight') )
rename_keys.append(('sem_seg_head.predictor.class_embed.bias', 'class_predictor.bias') )
for i in range(3 ):
rename_keys.append((F'''sem_seg_head.predictor.mask_embed.layers.{i}.weight''', F'''mask_embedder.{i}.0.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.mask_embed.layers.{i}.bias''', F'''mask_embedder.{i}.0.bias''') )
# fmt: on
return rename_keys
def lowercase_ (A : Tuple , A : Tuple , A : Optional[Any] ):
snake_case__ : Optional[int] = dct.pop(A )
snake_case__ : Union[str, Any] = val
def lowercase_ (A : Optional[Any] , A : Tuple ):
snake_case__ : Optional[int] = [int(backbone_config.embed_dim * 2**i ) for i in range(len(backbone_config.depths ) )]
for i in range(len(backbone_config.depths ) ):
snake_case__ : Optional[int] = num_features[i]
for j in range(backbone_config.depths[i] ):
# fmt: off
# read in weights + bias of input projection layer (in original implementation, this is a single matrix + bias)
snake_case__ : int = state_dict.pop(F'''backbone.layers.{i}.blocks.{j}.attn.qkv.weight''' )
snake_case__ : Tuple = state_dict.pop(F'''backbone.layers.{i}.blocks.{j}.attn.qkv.bias''' )
# next, add query, keys and values (in that order) to the state dict
snake_case__ : str = in_proj_weight[:dim, :]
snake_case__ : int = in_proj_bias[: dim]
snake_case__ : List[Any] = in_proj_weight[
dim : dim * 2, :
]
snake_case__ : List[str] = in_proj_bias[
dim : dim * 2
]
snake_case__ : List[Any] = in_proj_weight[
-dim :, :
]
snake_case__ : Dict = in_proj_bias[-dim :]
# fmt: on
def lowercase_ (A : List[str] , A : List[Any] ):
# fmt: off
snake_case__ : str = config.decoder_config.hidden_size
for idx in range(config.decoder_config.decoder_layers ):
# read in weights + bias of self-attention input projection layer (in the original implementation, this is a single matrix + bias)
snake_case__ : List[Any] = state_dict.pop(F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.in_proj_weight''' )
snake_case__ : int = state_dict.pop(F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.in_proj_bias''' )
# next, add query, keys and values (in that order) to the state dict
snake_case__ : Any = in_proj_weight[: hidden_size, :]
snake_case__ : Tuple = in_proj_bias[:config.hidden_size]
snake_case__ : List[str] = in_proj_weight[hidden_size : hidden_size * 2, :]
snake_case__ : Dict = in_proj_bias[hidden_size : hidden_size * 2]
snake_case__ : Any = in_proj_weight[-hidden_size :, :]
snake_case__ : int = in_proj_bias[-hidden_size :]
# read in weights + bias of cross-attention input projection layer (in the original implementation, this is a single matrix + bias)
snake_case__ : List[Any] = state_dict.pop(F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.in_proj_weight''' )
snake_case__ : List[str] = state_dict.pop(F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.in_proj_bias''' )
# next, add query, keys and values (in that order) to the state dict
snake_case__ : Optional[int] = in_proj_weight[: hidden_size, :]
snake_case__ : Optional[Any] = in_proj_bias[:config.hidden_size]
snake_case__ : int = in_proj_weight[hidden_size : hidden_size * 2, :]
snake_case__ : List[str] = in_proj_bias[hidden_size : hidden_size * 2]
snake_case__ : List[str] = in_proj_weight[-hidden_size :, :]
snake_case__ : str = in_proj_bias[-hidden_size :]
# fmt: on
def lowercase_ ():
snake_case__ : Any = 'http://images.cocodataset.org/val2017/000000039769.jpg'
snake_case__ : int = Image.open(requests.get(A , stream=A ).raw )
return im
@torch.no_grad()
def lowercase_ (A : str , A : str , A : str , A : bool = False ):
snake_case__ : Optional[int] = get_maskformer_config(A )
# load original state_dict
with open(A , 'rb' ) as f:
snake_case__ : List[Any] = pickle.load(A )
snake_case__ : Optional[int] = data['model']
# for name, param in state_dict.items():
# print(name, param.shape)
# rename keys
snake_case__ : List[str] = create_rename_keys(A )
for src, dest in rename_keys:
rename_key(A , A , A )
read_in_swin_q_k_v(A , config.backbone_config )
read_in_decoder_q_k_v(A , A )
# update to torch tensors
for key, value in state_dict.items():
snake_case__ : int = torch.from_numpy(A )
# load 🤗 model
snake_case__ : str = MaskFormerForInstanceSegmentation(A )
model.eval()
for name, param in model.named_parameters():
print(A , param.shape )
snake_case__ , snake_case__ : Union[str, Any] = model.load_state_dict(A , strict=A )
assert missing_keys == [
"model.pixel_level_module.encoder.model.layernorm.weight",
"model.pixel_level_module.encoder.model.layernorm.bias",
]
assert len(A ) == 0, F'''Unexpected keys: {unexpected_keys}'''
# verify results
snake_case__ : Optional[Any] = prepare_img()
if "vistas" in model_name:
snake_case__ : int = 6_5
elif "cityscapes" in model_name:
snake_case__ : Dict = 6_5_5_3_5
else:
snake_case__ : Tuple = 2_5_5
snake_case__ : Optional[int] = True if 'ade' in model_name else False
snake_case__ : Dict = MaskFormerImageProcessor(ignore_index=A , reduce_labels=A )
snake_case__ : Any = image_processor(A , return_tensors='pt' )
snake_case__ : Any = model(**A )
print('Logits:' , outputs.class_queries_logits[0, :3, :3] )
if model_name == "maskformer-swin-tiny-ade":
snake_case__ : Tuple = torch.tensor(
[[3.6353, -4.4770, -2.6065], [0.5081, -4.2394, -3.5343], [2.1909, -5.0353, -1.9323]] )
assert torch.allclose(outputs.class_queries_logits[0, :3, :3] , A , atol=1e-4 )
print('Looks ok!' )
if pytorch_dump_folder_path is not None:
print(F'''Saving model and image processor to {pytorch_dump_folder_path}''' )
Path(A ).mkdir(exist_ok=A )
model.save_pretrained(A )
image_processor.save_pretrained(A )
if push_to_hub:
print('Pushing model and image processor to the hub...' )
model.push_to_hub(F'''nielsr/{model_name}''' )
image_processor.push_to_hub(F'''nielsr/{model_name}''' )
if __name__ == "__main__":
a_ :Optional[int] = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--model_name",
default="maskformer-swin-tiny-ade",
type=str,
help=("Name of the MaskFormer model you'd like to convert",),
)
parser.add_argument(
"--checkpoint_path",
default="/Users/nielsrogge/Documents/MaskFormer_checkpoints/MaskFormer-Swin-tiny-ADE20k/model.pkl",
type=str,
help="Path to the original state dict (.pth file).",
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model directory."
)
parser.add_argument(
"--push_to_hub", action="store_true", help="Whether or not to push the converted model to the 🤗 hub."
)
a_ :Dict = parser.parse_args()
convert_maskformer_checkpoint(
args.model_name, args.checkpoint_path, args.pytorch_dump_folder_path, args.push_to_hub
)
| 277 | 1 |
import os
from typing import List, Optional, Union
from ...tokenization_utils import PreTrainedTokenizer
from ...tokenization_utils_base import AddedToken
from ...utils import logging
a_ :Any = logging.get_logger(__name__)
a_ :Union[str, Any] = {"vocab_file": "vocab.txt"}
a_ :Optional[Any] = {
"vocab_file": {
"facebook/esm2_t6_8M_UR50D": "https://huggingface.co/facebook/esm2_t6_8M_UR50D/resolve/main/vocab.txt",
"facebook/esm2_t12_35M_UR50D": "https://huggingface.co/facebook/esm2_t12_35M_UR50D/resolve/main/vocab.txt",
},
}
a_ :Union[str, Any] = {
"facebook/esm2_t6_8M_UR50D": 1_024,
"facebook/esm2_t12_35M_UR50D": 1_024,
}
def lowercase_ (A : Optional[int] ):
with open(A , 'r' ) as f:
snake_case__ : Optional[int] = f.read().splitlines()
return [l.strip() for l in lines]
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = VOCAB_FILES_NAMES
_SCREAMING_SNAKE_CASE = PRETRAINED_VOCAB_FILES_MAP
_SCREAMING_SNAKE_CASE = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES
_SCREAMING_SNAKE_CASE = ["""input_ids""", """attention_mask"""]
def __init__( self : Tuple, _snake_case : Tuple, _snake_case : Dict="<unk>", _snake_case : Dict="<cls>", _snake_case : Tuple="<pad>", _snake_case : Optional[int]="<mask>", _snake_case : List[str]="<eos>", **_snake_case : Any, ) ->List[str]:
super().__init__(**_snake_case )
snake_case__ : Optional[int] = load_vocab_file(_snake_case )
snake_case__ : Union[str, Any] = dict(enumerate(self.all_tokens ) )
snake_case__ : Optional[Any] = {tok: ind for ind, tok in enumerate(self.all_tokens )}
snake_case__ : Optional[int] = unk_token
snake_case__ : Dict = cls_token
snake_case__ : Union[str, Any] = pad_token
snake_case__ : List[str] = mask_token
snake_case__ : Dict = eos_token
snake_case__ : List[Any] = self.all_tokens
self._create_trie(self.unique_no_split_tokens )
def lowercase_ ( self : Union[str, Any], _snake_case : int ) ->str:
return self._id_to_token.get(_snake_case, self.unk_token )
def lowercase_ ( self : Tuple, _snake_case : str ) ->int:
return self._token_to_id.get(_snake_case, self._token_to_id.get(self.unk_token ) )
def lowercase_ ( self : List[Any], _snake_case : Any, **_snake_case : List[str] ) ->Union[str, Any]:
return text.split()
def lowercase_ ( self : List[str], _snake_case : List[str]=False ) ->List[Any]:
return len(self._id_to_token )
def lowercase_ ( self : Union[str, Any] ) ->List[Any]:
return {token: i for i, token in enumerate(self.all_tokens )}
def lowercase_ ( self : List[str], _snake_case : str ) ->int:
return self._token_to_id.get(_snake_case, self._token_to_id.get(self.unk_token ) )
def lowercase_ ( self : Optional[int], _snake_case : int ) ->str:
return self._id_to_token.get(_snake_case, self.unk_token )
def lowercase_ ( self : Tuple, _snake_case : List[int], _snake_case : Optional[List[int]] = None ) ->List[int]:
snake_case__ : List[Any] = [self.cls_token_id]
snake_case__ : Union[str, Any] = [self.eos_token_id] # No sep token in ESM vocabulary
if token_ids_a is None:
if self.eos_token_id is None:
return cls + token_ids_a
else:
return cls + token_ids_a + sep
elif self.eos_token_id is None:
raise ValueError('Cannot tokenize multiple sequences when EOS token is not set!' )
return cls + token_ids_a + sep + token_ids_a + sep # Multiple inputs always have an EOS token
def lowercase_ ( self : int, _snake_case : List, _snake_case : Optional[List] = None, _snake_case : bool = False ) ->List[int]:
if already_has_special_tokens:
if token_ids_a is not None:
raise ValueError(
'You should not supply a second sequence if the provided sequence of '
'ids is already formatted with special tokens for the model.' )
return [1 if token in self.all_special_ids else 0 for token in token_ids_a]
snake_case__ : int = [1] + ([0] * len(_snake_case )) + [1]
if token_ids_a is not None:
mask += [0] * len(_snake_case ) + [1]
return mask
def lowercase_ ( self : List[str], _snake_case : str, _snake_case : Dict ) ->Union[str, Any]:
snake_case__ : Optional[int] = os.path.join(_snake_case, (filename_prefix + '-' if filename_prefix else '') + 'vocab.txt' )
with open(_snake_case, 'w' ) as f:
f.write('\n'.join(self.all_tokens ) )
return (vocab_file,)
@property
def lowercase_ ( self : str ) ->int:
return self.get_vocab_size(with_added_tokens=_snake_case )
def lowercase_ ( self : List[Any], _snake_case : Union[List[str], List[AddedToken]], _snake_case : bool = False ) ->int:
return super()._add_tokens(_snake_case, special_tokens=_snake_case )
| 277 |
import unittest
from transformers import is_torch_available
from transformers.testing_utils import require_torch, slow, torch_device
from ...generation.test_utils import GenerationTesterMixin
from ...test_configuration_common import ConfigTester
from ...test_modeling_common import ModelTesterMixin, ids_tensor
from ...test_pipeline_mixin import PipelineTesterMixin
if is_torch_available():
import torch
from transformers import (
OPENAI_GPT_PRETRAINED_MODEL_ARCHIVE_LIST,
OpenAIGPTConfig,
OpenAIGPTDoubleHeadsModel,
OpenAIGPTForSequenceClassification,
OpenAIGPTLMHeadModel,
OpenAIGPTModel,
)
class snake_case__ :
"""simple docstring"""
def __init__( self : List[str], _snake_case : Any, _snake_case : int=1_3, _snake_case : Optional[int]=7, _snake_case : int=True, _snake_case : Optional[Any]=True, _snake_case : Optional[Any]=True, _snake_case : Union[str, Any]=9_9, _snake_case : Optional[Any]=3_2, _snake_case : Tuple=5, _snake_case : str=4, _snake_case : Any=3_7, _snake_case : int="gelu", _snake_case : Optional[Any]=0.1, _snake_case : str=0.1, _snake_case : str=5_1_2, _snake_case : Dict=1_6, _snake_case : str=2, _snake_case : Union[str, Any]=0.0_2, _snake_case : Optional[int]=3, _snake_case : Union[str, Any]=4, _snake_case : Tuple=None, ) ->Optional[Any]:
snake_case__ : Optional[int] = parent
snake_case__ : List[Any] = batch_size
snake_case__ : Tuple = seq_length
snake_case__ : str = is_training
snake_case__ : Optional[int] = use_token_type_ids
snake_case__ : Any = use_labels
snake_case__ : Dict = vocab_size
snake_case__ : str = hidden_size
snake_case__ : Union[str, Any] = num_hidden_layers
snake_case__ : List[str] = num_attention_heads
snake_case__ : Union[str, Any] = intermediate_size
snake_case__ : List[Any] = hidden_act
snake_case__ : int = hidden_dropout_prob
snake_case__ : str = attention_probs_dropout_prob
snake_case__ : Any = max_position_embeddings
snake_case__ : Union[str, Any] = type_vocab_size
snake_case__ : Optional[Any] = type_sequence_label_size
snake_case__ : Optional[int] = initializer_range
snake_case__ : Optional[int] = num_labels
snake_case__ : str = num_choices
snake_case__ : int = scope
snake_case__ : List[str] = self.vocab_size - 1
def lowercase_ ( self : Union[str, Any] ) ->Tuple:
snake_case__ : List[str] = ids_tensor([self.batch_size, self.seq_length], self.vocab_size )
snake_case__ : List[str] = None
if self.use_token_type_ids:
snake_case__ : Optional[Any] = ids_tensor([self.batch_size, self.seq_length], self.type_vocab_size )
snake_case__ : Tuple = None
snake_case__ : str = None
snake_case__ : List[Any] = None
if self.use_labels:
snake_case__ : Dict = ids_tensor([self.batch_size], self.type_sequence_label_size )
snake_case__ : int = ids_tensor([self.batch_size, self.seq_length], self.num_labels )
snake_case__ : List[str] = ids_tensor([self.batch_size], self.num_choices )
snake_case__ : Union[str, Any] = OpenAIGPTConfig(
vocab_size=self.vocab_size, n_embd=self.hidden_size, n_layer=self.num_hidden_layers, n_head=self.num_attention_heads, n_positions=self.max_position_embeddings, pad_token_id=self.pad_token_id, )
snake_case__ : List[str] = ids_tensor([self.num_hidden_layers, self.num_attention_heads], 2 )
return (
config,
input_ids,
head_mask,
token_type_ids,
sequence_labels,
token_labels,
choice_labels,
)
def lowercase_ ( self : Any, _snake_case : List[str], _snake_case : Any, _snake_case : List[Any], _snake_case : Tuple, *_snake_case : Optional[Any] ) ->Tuple:
snake_case__ : Union[str, Any] = OpenAIGPTModel(config=_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Optional[Any] = model(_snake_case, token_type_ids=_snake_case, head_mask=_snake_case )
snake_case__ : Union[str, Any] = model(_snake_case, token_type_ids=_snake_case )
snake_case__ : Optional[Any] = model(_snake_case )
self.parent.assertEqual(result.last_hidden_state.shape, (self.batch_size, self.seq_length, self.hidden_size) )
def lowercase_ ( self : Optional[int], _snake_case : Optional[Any], _snake_case : Union[str, Any], _snake_case : Optional[int], _snake_case : List[Any], *_snake_case : Dict ) ->Optional[int]:
snake_case__ : Optional[Any] = OpenAIGPTLMHeadModel(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Tuple = model(_snake_case, token_type_ids=_snake_case, labels=_snake_case )
self.parent.assertEqual(result.loss.shape, () )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.seq_length, self.vocab_size) )
def lowercase_ ( self : int, _snake_case : Tuple, _snake_case : List[str], _snake_case : List[Any], _snake_case : List[Any], *_snake_case : List[Any] ) ->Optional[int]:
snake_case__ : List[str] = OpenAIGPTDoubleHeadsModel(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Optional[Any] = model(_snake_case, token_type_ids=_snake_case, labels=_snake_case )
self.parent.assertEqual(result.loss.shape, () )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.seq_length, self.vocab_size) )
def lowercase_ ( self : Optional[int], _snake_case : Tuple, _snake_case : Dict, _snake_case : List[str], _snake_case : Optional[Any], *_snake_case : Union[str, Any] ) ->str:
snake_case__ : List[str] = self.num_labels
snake_case__ : Dict = OpenAIGPTForSequenceClassification(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : List[str] = ids_tensor([self.batch_size], self.type_sequence_label_size )
snake_case__ : List[str] = model(_snake_case, token_type_ids=_snake_case, labels=_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.num_labels) )
def lowercase_ ( self : Dict ) ->int:
snake_case__ : List[Any] = self.prepare_config_and_inputs()
(
(
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) ,
) : Optional[Any] = config_and_inputs
snake_case__ : str = {
'input_ids': input_ids,
'token_type_ids': token_type_ids,
'head_mask': head_mask,
}
return config, inputs_dict
@require_torch
class snake_case__ ( lowerCAmelCase_ , lowerCAmelCase_ , lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = (
(OpenAIGPTModel, OpenAIGPTLMHeadModel, OpenAIGPTDoubleHeadsModel, OpenAIGPTForSequenceClassification)
if is_torch_available()
else ()
)
_SCREAMING_SNAKE_CASE = (
(OpenAIGPTLMHeadModel,) if is_torch_available() else ()
) # TODO (PVP): Add Double HeadsModel when generate() function is changed accordingly
_SCREAMING_SNAKE_CASE = (
{
"""feature-extraction""": OpenAIGPTModel,
"""text-classification""": OpenAIGPTForSequenceClassification,
"""text-generation""": OpenAIGPTLMHeadModel,
"""zero-shot""": OpenAIGPTForSequenceClassification,
}
if is_torch_available()
else {}
)
def lowercase_ ( self : Optional[int], _snake_case : Union[str, Any], _snake_case : int, _snake_case : Tuple, _snake_case : Tuple, _snake_case : List[str] ) ->Optional[Any]:
if pipeline_test_casse_name == "ZeroShotClassificationPipelineTests":
# Get `tokenizer does not have a padding token` error for both fast/slow tokenizers.
# `OpenAIGPTConfig` was never used in pipeline tests, either because of a missing checkpoint or because a
# tiny config could not be created.
return True
return False
def lowercase_ ( self : Optional[Any], _snake_case : Union[str, Any], _snake_case : List[str], _snake_case : Any=False ) ->Tuple:
snake_case__ : Optional[int] = super()._prepare_for_class(_snake_case, _snake_case, return_labels=_snake_case )
if return_labels:
if model_class.__name__ == "OpenAIGPTDoubleHeadsModel":
snake_case__ : Union[str, Any] = torch.zeros(
(self.model_tester.batch_size, self.model_tester.num_choices, self.model_tester.seq_length), dtype=torch.long, device=_snake_case, )
snake_case__ : List[Any] = inputs_dict['labels']
snake_case__ : List[Any] = inputs_dict['labels']
snake_case__ : Any = torch.zeros(
(self.model_tester.batch_size, self.model_tester.num_choices), dtype=torch.long, device=_snake_case, )
snake_case__ : Tuple = torch.zeros(
self.model_tester.batch_size, dtype=torch.long, device=_snake_case )
return inputs_dict
def lowercase_ ( self : Union[str, Any] ) ->List[str]:
snake_case__ : List[str] = OpenAIGPTModelTester(self )
snake_case__ : Any = ConfigTester(self, config_class=_snake_case, n_embd=3_7 )
def lowercase_ ( self : Optional[int] ) ->str:
self.config_tester.run_common_tests()
def lowercase_ ( self : int ) ->Tuple:
snake_case__ : str = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_openai_gpt_model(*_snake_case )
def lowercase_ ( self : Tuple ) ->List[str]:
snake_case__ : Optional[int] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_lm_head_model(*_snake_case )
def lowercase_ ( self : Dict ) ->int:
snake_case__ : Optional[Any] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_double_lm_head_model(*_snake_case )
def lowercase_ ( self : int ) ->str:
snake_case__ : List[Any] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_openai_gpt_for_sequence_classification(*_snake_case )
@slow
def lowercase_ ( self : Optional[Any] ) ->str:
for model_name in OPENAI_GPT_PRETRAINED_MODEL_ARCHIVE_LIST[:1]:
snake_case__ : Optional[int] = OpenAIGPTModel.from_pretrained(_snake_case )
self.assertIsNotNone(_snake_case )
@require_torch
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
@slow
def lowercase_ ( self : Tuple ) ->Optional[int]:
snake_case__ : Union[str, Any] = OpenAIGPTLMHeadModel.from_pretrained('openai-gpt' )
model.to(_snake_case )
snake_case__ : Tuple = torch.tensor([[4_8_1, 4_7_3_5, 5_4_4]], dtype=torch.long, device=_snake_case ) # the president is
snake_case__ : int = [
4_8_1,
4_7_3_5,
5_4_4,
2_4_6,
9_6_3,
8_7_0,
7_6_2,
2_3_9,
2_4_4,
4_0_4_7_7,
2_4_4,
2_4_9,
7_1_9,
8_8_1,
4_8_7,
5_4_4,
2_4_0,
2_4_4,
6_0_3,
4_8_1,
] # the president is a very good man. " \n " i\'m sure he is, " said the
snake_case__ : Optional[int] = model.generate(_snake_case, do_sample=_snake_case )
self.assertListEqual(output_ids[0].tolist(), _snake_case )
| 277 | 1 |
from math import factorial
def lowercase_ (A : int , A : int , A : float ):
if successes > trials:
raise ValueError('successes must be lower or equal to trials' )
if trials < 0 or successes < 0:
raise ValueError('the function is defined for non-negative integers' )
if not isinstance(A , A ) or not isinstance(A , A ):
raise ValueError('the function is defined for non-negative integers' )
if not 0 < prob < 1:
raise ValueError('prob has to be in range of 1 - 0' )
snake_case__ : List[Any] = (prob**successes) * ((1 - prob) ** (trials - successes))
# Calculate the binomial coefficient: n! / k!(n-k)!
snake_case__ : List[str] = float(factorial(A ) )
coefficient /= factorial(A ) * factorial(trials - successes )
return probability * coefficient
if __name__ == "__main__":
from doctest import testmod
testmod()
print("Probability of 2 successes out of 4 trails")
print("with probability of 0.75 is:", end=" ")
print(binomial_distribution(2, 4, 0.75))
| 277 |
import os
import unittest
from transformers.models.transfo_xl.tokenization_transfo_xl import VOCAB_FILES_NAMES, TransfoXLTokenizer
from ...test_tokenization_common import TokenizerTesterMixin
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = TransfoXLTokenizer
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
def lowercase_ ( self : Optional[int] ) ->Any:
super().setUp()
snake_case__ : Tuple = [
'<unk>',
'[CLS]',
'[SEP]',
'want',
'unwanted',
'wa',
'un',
'running',
',',
'low',
'l',
]
snake_case__ : Any = os.path.join(self.tmpdirname, VOCAB_FILES_NAMES['vocab_file'] )
with open(self.vocab_file, 'w', encoding='utf-8' ) as vocab_writer:
vocab_writer.write(''.join([x + '\n' for x in vocab_tokens] ) )
def lowercase_ ( self : Union[str, Any], **_snake_case : List[Any] ) ->Dict:
snake_case__ : str = True
return TransfoXLTokenizer.from_pretrained(self.tmpdirname, **_snake_case )
def lowercase_ ( self : Optional[Any], _snake_case : str ) ->Dict:
snake_case__ : List[Any] = '<unk> UNwanted , running'
snake_case__ : List[Any] = '<unk> unwanted, running'
return input_text, output_text
def lowercase_ ( self : List[Any] ) ->Tuple:
snake_case__ : Dict = TransfoXLTokenizer(vocab_file=self.vocab_file, lower_case=_snake_case )
snake_case__ : str = tokenizer.tokenize('<unk> UNwanted , running' )
self.assertListEqual(_snake_case, ['<unk>', 'unwanted', ',', 'running'] )
self.assertListEqual(tokenizer.convert_tokens_to_ids(_snake_case ), [0, 4, 8, 7] )
def lowercase_ ( self : List[str] ) ->List[Any]:
snake_case__ : str = TransfoXLTokenizer(lower_case=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHeLLo ! how \n Are yoU ? ' ), ['hello', '!', 'how', 'are', 'you', '?'] )
def lowercase_ ( self : Optional[int] ) ->Optional[Any]:
snake_case__ : Optional[int] = TransfoXLTokenizer(lower_case=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHeLLo ! how \n Are yoU ? ' ), ['HeLLo', '!', 'how', 'Are', 'yoU', '?'] )
def lowercase_ ( self : Optional[int] ) ->Union[str, Any]:
snake_case__ : List[Any] = TransfoXLTokenizer(lower_case=_snake_case )
snake_case__ : Dict = 'Hello (bracket) and side-scrolled [and] Henry\'s $5,000 with 3.34 m. What\'s up!?'
snake_case__ : List[Any] = [
'Hello',
'(',
'bracket',
')',
'and',
'side',
'@-@',
'scrolled',
'[',
'and',
']',
'Henry',
'\'s',
'$',
'5',
'@,@',
'000',
'with',
'3',
'@.@',
'34',
'm',
'.',
'What',
'\'s',
'up',
'!',
'?',
]
self.assertListEqual(tokenizer.tokenize(_snake_case ), _snake_case )
self.assertEqual(tokenizer.convert_tokens_to_string(_snake_case ), _snake_case )
def lowercase_ ( self : Dict ) ->Any:
snake_case__ : Dict = self.get_tokenizer()
snake_case__ : Optional[Any] = len(_snake_case )
tokenizer.add_tokens(['new1', 'new2'] )
tokenizer.move_added_token('new1', 1 )
# Check that moved token is not copied (duplicate)
self.assertEqual(len(_snake_case ), original_len + 2 )
# Check that token is moved to specified id
self.assertEqual(tokenizer.encode('new1' ), [1] )
self.assertEqual(tokenizer.decode([1] ), 'new1' )
| 277 | 1 |
import os
import pytest
from transformers.dynamic_module_utils import get_imports
a_ :Optional[Any] = "\nimport os\n"
a_ :int = "\ndef foo():\n import os\n return False\n"
a_ :Any = "\ndef foo():\n def bar():\n if True:\n import os\n return False\n return bar()\n"
a_ :Dict = "\nimport os\n\ntry:\n import bar\nexcept ImportError:\n raise ValueError()\n"
a_ :Dict = "\nimport os\n\ndef foo():\n try:\n import bar\n except ImportError:\n raise ValueError()\n"
a_ :Tuple = "\nimport os\n\ntry:\n import bar\nexcept (ImportError, AttributeError):\n raise ValueError()\n"
a_ :Optional[int] = "\nimport os\n\ntry:\n import bar\nexcept ImportError as e:\n raise ValueError()\n"
a_ :int = "\nimport os\n\ntry:\n import bar\nexcept:\n raise ValueError()\n"
a_ :Union[str, Any] = "\nimport os\n\ntry:\n import bar\n import baz\nexcept ImportError:\n raise ValueError()\n"
a_ :Optional[Any] = "\nimport os\n\ntry:\n import bar\n import baz\nexcept ImportError:\n x = 1\n raise ValueError()\n"
a_ :List[str] = [
TOP_LEVEL_IMPORT,
IMPORT_IN_FUNCTION,
DEEPLY_NESTED_IMPORT,
TOP_LEVEL_TRY_IMPORT,
GENERIC_EXCEPT_IMPORT,
MULTILINE_TRY_IMPORT,
MULTILINE_BOTH_IMPORT,
MULTIPLE_EXCEPTS_IMPORT,
EXCEPT_AS_IMPORT,
TRY_IMPORT_IN_FUNCTION,
]
@pytest.mark.parametrize('case' , A )
def lowercase_ (A : Union[str, Any] , A : Optional[Any] ):
snake_case__ : List[Any] = os.path.join(A , 'test_file.py' )
with open(A , 'w' ) as _tmp_file:
_tmp_file.write(A )
snake_case__ : Union[str, Any] = get_imports(A )
assert parsed_imports == ["os"]
| 277 |
from ...configuration_utils import PretrainedConfig
from ...utils import logging
a_ :Optional[int] = logging.get_logger(__name__)
a_ :Dict = {"openai-gpt": "https://huggingface.co/openai-gpt/resolve/main/config.json"}
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = """openai-gpt"""
_SCREAMING_SNAKE_CASE = {
"""max_position_embeddings""": """n_positions""",
"""hidden_size""": """n_embd""",
"""num_attention_heads""": """n_head""",
"""num_hidden_layers""": """n_layer""",
}
def __init__( self : Optional[int], _snake_case : Dict=4_0_4_7_8, _snake_case : str=5_1_2, _snake_case : int=7_6_8, _snake_case : Tuple=1_2, _snake_case : Any=1_2, _snake_case : str="gelu", _snake_case : List[str]=0.1, _snake_case : Any=0.1, _snake_case : Dict=0.1, _snake_case : int=1e-5, _snake_case : Optional[Any]=0.0_2, _snake_case : List[Any]="cls_index", _snake_case : Any=True, _snake_case : Any=None, _snake_case : int=True, _snake_case : Optional[Any]=0.1, **_snake_case : List[Any], ) ->Optional[int]:
snake_case__ : int = vocab_size
snake_case__ : Dict = n_positions
snake_case__ : str = n_embd
snake_case__ : str = n_layer
snake_case__ : List[Any] = n_head
snake_case__ : List[Any] = afn
snake_case__ : Optional[Any] = resid_pdrop
snake_case__ : List[str] = embd_pdrop
snake_case__ : List[Any] = attn_pdrop
snake_case__ : Optional[int] = layer_norm_epsilon
snake_case__ : str = initializer_range
snake_case__ : List[str] = summary_type
snake_case__ : Optional[int] = summary_use_proj
snake_case__ : List[str] = summary_activation
snake_case__ : Optional[Any] = summary_first_dropout
snake_case__ : int = summary_proj_to_labels
super().__init__(**_snake_case )
| 277 | 1 |
import json
import os
import tempfile
from unittest.mock import patch
import torch
from torch.utils.data import DataLoader, TensorDataset
from accelerate import DistributedType, infer_auto_device_map, init_empty_weights
from accelerate.accelerator import Accelerator
from accelerate.state import GradientState, PartialState
from accelerate.test_utils import require_bnb, require_multi_gpu, slow
from accelerate.test_utils.testing import AccelerateTestCase, require_cuda
from accelerate.utils import patch_environment
def lowercase_ ():
snake_case__ : Optional[Any] = torch.nn.Linear(2 , 4 )
snake_case__ : str = torch.optim.AdamW(model.parameters() , lr=1.0 )
snake_case__ : str = torch.optim.lr_scheduler.OneCycleLR(A , max_lr=0.01 , steps_per_epoch=2 , epochs=1 )
snake_case__ : Tuple = DataLoader(TensorDataset(torch.tensor([1, 2, 3] ) ) )
snake_case__ : List[Any] = DataLoader(TensorDataset(torch.tensor([4, 5, 6] ) ) )
return model, optimizer, scheduler, train_dl, valid_dl
def lowercase_ (A : Optional[Any] ):
return (model.weight.abs().sum() + model.bias.abs().sum()).item()
def lowercase_ (A : str ):
snake_case__ : Union[str, Any] = torch.nn.Linear(*tuple(model.weight.T.shape ) ).state_dict()
model.load_state_dict(A )
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
@require_cuda
def lowercase_ ( self : int ) ->Optional[int]:
snake_case__ : Dict = Accelerator()
assert PartialState._shared_state["_cpu"] is False
assert PartialState._shared_state["device"].type == "cuda"
with self.assertRaises(_snake_case ):
snake_case__ : Optional[Any] = Accelerator(cpu=_snake_case )
def lowercase_ ( self : List[Any] ) ->Dict:
snake_case__ : List[Any] = Accelerator()
snake_case__ : List[Any] = GradientState()
assert state.num_steps == 1
snake_case__ : Any = 4
assert state.num_steps == 4
assert state.sync_gradients is True
snake_case__ : Any = False
assert state.sync_gradients is False
GradientState._reset_state()
def lowercase_ ( self : List[str] ) ->Optional[Any]:
snake_case__ : List[str] = Accelerator()
snake_case__ , snake_case__ , snake_case__ , snake_case__ , snake_case__ : str = create_components()
(
(
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) ,
) : Any = accelerator.prepare(_snake_case, _snake_case, _snake_case, _snake_case, _snake_case )
self.assertTrue(prepared_model in accelerator._models )
self.assertTrue(prepared_optimizer in accelerator._optimizers )
self.assertTrue(prepared_scheduler in accelerator._schedulers )
self.assertTrue(prepared_train_dl in accelerator._dataloaders )
self.assertTrue(prepared_valid_dl in accelerator._dataloaders )
def lowercase_ ( self : Optional[int] ) ->int:
snake_case__ : Any = Accelerator()
snake_case__ , snake_case__ , snake_case__ , snake_case__ , snake_case__ : List[Any] = create_components()
accelerator.prepare(_snake_case, _snake_case, _snake_case, _snake_case, _snake_case )
accelerator.free_memory()
self.assertTrue(len(accelerator._models ) == 0 )
self.assertTrue(len(accelerator._optimizers ) == 0 )
self.assertTrue(len(accelerator._schedulers ) == 0 )
self.assertTrue(len(accelerator._dataloaders ) == 0 )
def lowercase_ ( self : Tuple ) ->List[Any]:
PartialState._reset_state()
# Mock torch.cuda.set_device to avoid an exception as the device doesn't exist
def noop(*_snake_case : int, **_snake_case : str ):
pass
with patch('torch.cuda.set_device', _snake_case ), patch_environment(ACCELERATE_TORCH_DEVICE='cuda:64' ):
snake_case__ : Optional[int] = Accelerator()
self.assertEqual(str(accelerator.state.device ), 'cuda:64' )
def lowercase_ ( self : List[Any] ) ->List[Any]:
snake_case__ : Optional[int] = Accelerator()
snake_case__ , snake_case__ , snake_case__ , snake_case__ , snake_case__ : Any = create_components()
accelerator.prepare(_snake_case, _snake_case, _snake_case, _snake_case, _snake_case )
snake_case__ : Dict = get_signature(_snake_case )
with tempfile.TemporaryDirectory() as tmpdirname:
accelerator.save_state(_snake_case )
# make sure random weights don't match
load_random_weights(_snake_case )
self.assertTrue(abs(model_signature - get_signature(_snake_case ) ) > 1e-3 )
# make sure loaded weights match
accelerator.load_state(_snake_case )
self.assertTrue(abs(model_signature - get_signature(_snake_case ) ) < 1e-3 )
def lowercase_ ( self : Optional[Any] ) ->int:
snake_case__ : List[Any] = Accelerator()
snake_case__ , snake_case__ , snake_case__ , snake_case__ , snake_case__ : Dict = create_components()
accelerator.prepare(_snake_case, _snake_case, _snake_case, _snake_case, _snake_case )
snake_case__ : Optional[Any] = get_signature(_snake_case )
# saving hook
def save_config(_snake_case : List[Any], _snake_case : List[Any], _snake_case : int ):
snake_case__ : int = {'class_name': models[0].__class__.__name__}
with open(os.path.join(_snake_case, 'data.json' ), 'w' ) as f:
json.dump(_snake_case, _snake_case )
# loading hook
def load_config(_snake_case : Any, _snake_case : Optional[Any] ):
with open(os.path.join(_snake_case, 'data.json' ), 'r' ) as f:
snake_case__ : Optional[int] = json.load(_snake_case )
snake_case__ : List[Any] = config['class_name']
snake_case__ : Union[str, Any] = accelerator.register_save_state_pre_hook(_snake_case )
snake_case__ : int = accelerator.register_load_state_pre_hook(_snake_case )
with tempfile.TemporaryDirectory() as tmpdirname:
accelerator.save_state(_snake_case )
# make sure random weights don't match with hooks
load_random_weights(_snake_case )
self.assertTrue(abs(model_signature - get_signature(_snake_case ) ) > 1e-3 )
# random class name to verify correct one is loaded
snake_case__ : Tuple = 'random'
# make sure loaded weights match with hooks
accelerator.load_state(_snake_case )
self.assertTrue(abs(model_signature - get_signature(_snake_case ) ) < 1e-3 )
# mode.class_name is loaded from config
self.assertTrue(model.class_name == model.__class__.__name__ )
# remove hooks
save_hook.remove()
load_hook.remove()
with tempfile.TemporaryDirectory() as tmpdirname:
accelerator.save_state(_snake_case )
# make sure random weights don't match with hooks removed
load_random_weights(_snake_case )
self.assertTrue(abs(model_signature - get_signature(_snake_case ) ) > 1e-3 )
# random class name to verify correct one is loaded
snake_case__ : Dict = 'random'
# make sure loaded weights match with hooks removed
accelerator.load_state(_snake_case )
self.assertTrue(abs(model_signature - get_signature(_snake_case ) ) < 1e-3 )
# mode.class_name is NOT loaded from config
self.assertTrue(model.class_name != model.__class__.__name__ )
def lowercase_ ( self : Any ) ->Any:
snake_case__ : Tuple = Accelerator()
snake_case__ , snake_case__ , snake_case__ , snake_case__ , snake_case__ : List[str] = create_components()
snake_case__ : Optional[int] = None
# This should work
snake_case__ , snake_case__ , snake_case__ , snake_case__ , snake_case__ , snake_case__ : str = accelerator.prepare(
_snake_case, _snake_case, _snake_case, _snake_case, _snake_case, _snake_case )
self.assertTrue(dummy_obj is None )
def lowercase_ ( self : Any ) ->Optional[int]:
snake_case__ : Union[str, Any] = Accelerator()
snake_case__ , snake_case__ , snake_case__ , snake_case__ , snake_case__ : List[Any] = create_components()
snake_case__ : Optional[Any] = [1, 2, 3]
# This should work
snake_case__ , snake_case__ , snake_case__ , snake_case__ , snake_case__ , snake_case__ : str = accelerator.prepare(
_snake_case, _snake_case, _snake_case, _snake_case, _snake_case, _snake_case )
self.assertEqual(
getattr(_snake_case, '_is_accelerate_prepared', _snake_case ), _snake_case, 'Dummy object should have `_is_accelerate_prepared` set to `True`', )
self.assertEqual(
getattr(_snake_case, '_is_accelerate_prepared', _snake_case ), _snake_case, 'Model is missing `_is_accelerator_prepared` or is set to `False`', )
self.assertEqual(
getattr(_snake_case, '_is_accelerate_prepared', _snake_case ), _snake_case, 'Optimizer is missing `_is_accelerator_prepared` or is set to `False`', )
self.assertEqual(
getattr(_snake_case, '_is_accelerate_prepared', _snake_case ), _snake_case, 'Scheduler is missing `_is_accelerator_prepared` or is set to `False`', )
self.assertEqual(
getattr(_snake_case, '_is_accelerate_prepared', _snake_case ), _snake_case, 'Train Dataloader is missing `_is_accelerator_prepared` or is set to `False`', )
self.assertEqual(
getattr(_snake_case, '_is_accelerate_prepared', _snake_case ), _snake_case, 'Valid Dataloader is missing `_is_accelerator_prepared` or is set to `False`', )
@slow
@require_bnb
def lowercase_ ( self : Dict ) ->Any:
from transformers import AutoModelForCausalLM
snake_case__ : Tuple = AutoModelForCausalLM.from_pretrained(
'EleutherAI/gpt-neo-125m', load_in_abit=_snake_case, device_map={'': 0}, )
snake_case__ : Optional[int] = Accelerator()
# This should work
snake_case__ : Union[str, Any] = accelerator.prepare(_snake_case )
@slow
@require_bnb
def lowercase_ ( self : Dict ) ->str:
from transformers import AutoModelForCausalLM
snake_case__ : Optional[int] = Accelerator()
with init_empty_weights():
snake_case__ : List[Any] = AutoModelForCausalLM.from_pretrained(
'EleutherAI/gpt-neo-125m', )
model.tie_weights()
snake_case__ : Tuple = infer_auto_device_map(_snake_case )
snake_case__ : List[str] = 'cpu'
snake_case__ : List[str] = AutoModelForCausalLM.from_pretrained(
'EleutherAI/gpt-neo-125m', device_map=_snake_case, load_in_abit=_snake_case, llm_inta_enable_fpaa_cpu_offload=_snake_case )
# This should not work and get value error
with self.assertRaises(_snake_case ):
snake_case__ : Dict = accelerator.prepare(_snake_case )
@slow
@require_bnb
@require_multi_gpu
def lowercase_ ( self : Union[str, Any] ) ->Optional[Any]:
from transformers import AutoModelForCausalLM
snake_case__ : Any = {'distributed_type': DistributedType.MULTI_GPU}
with init_empty_weights():
snake_case__ : Dict = AutoModelForCausalLM.from_pretrained(
'EleutherAI/gpt-neo-125m', )
model.tie_weights()
snake_case__ : Optional[Any] = infer_auto_device_map(_snake_case )
snake_case__ : Optional[Any] = 1
snake_case__ : str = AutoModelForCausalLM.from_pretrained(
'EleutherAI/gpt-neo-125m', load_in_abit=_snake_case, device_map=_snake_case, )
snake_case__ : List[str] = Accelerator()
# This should not work and get value error
with self.assertRaises(_snake_case ):
snake_case__ : str = accelerator.prepare(_snake_case )
PartialState._reset_state()
@slow
@require_bnb
@require_multi_gpu
def lowercase_ ( self : Union[str, Any] ) ->Tuple:
from transformers import AutoModelForCausalLM
with init_empty_weights():
snake_case__ : int = AutoModelForCausalLM.from_pretrained(
'EleutherAI/gpt-neo-125m', )
snake_case__ : List[Any] = infer_auto_device_map(_snake_case )
snake_case__ : Optional[int] = 1
snake_case__ : int = AutoModelForCausalLM.from_pretrained(
'EleutherAI/gpt-neo-125m', load_in_abit=_snake_case, device_map=_snake_case, )
snake_case__ : Dict = Accelerator()
# This should work
snake_case__ : List[str] = accelerator.prepare(_snake_case )
@require_cuda
def lowercase_ ( self : Optional[int] ) ->List[Any]:
snake_case__ : Any = torch.nn.Linear(1_0, 1_0 )
snake_case__ : Union[str, Any] = torch.optim.SGD(model.parameters(), lr=0.0_1 )
snake_case__ : Optional[Any] = Accelerator(cpu=_snake_case )
snake_case__ : Optional[Any] = accelerator.prepare(_snake_case )
| 277 |
import argparse
import logging
import os
from datetime import datetime
import numpy as np
import torch
from torch import nn
from torch.utils.data import DataLoader, RandomSampler, TensorDataset
from tqdm import tqdm
from transformers import GPTaLMHeadModel
a_ :Optional[Any] = logging.getLogger(__name__)
def lowercase_ (A : List[Any] , A : List[Any] ):
# save results
if os.path.exists(A ):
if os.path.exists(os.path.join(A , 'config.json' ) ) and os.path.isfile(
os.path.join(A , 'config.json' ) ):
os.remove(os.path.join(A , 'config.json' ) )
if os.path.exists(os.path.join(A , 'pytorch_model.bin' ) ) and os.path.isfile(
os.path.join(A , 'pytorch_model.bin' ) ):
os.remove(os.path.join(A , 'pytorch_model.bin' ) )
else:
os.makedirs(A )
model.save_pretrained(A )
def lowercase_ (A : Any , A : Optional[Any]=False ):
snake_case__ : str = 2
if unlogit:
snake_case__ : Dict = torch.pow(A , A )
snake_case__ : Any = p * torch.log(A )
snake_case__ : Tuple = 0
return -plogp.sum(dim=-1 )
def lowercase_ (A : List[str] ):
logger.info('lv, h >\t' + '\t'.join(F'''{x + 1}''' for x in range(len(A ) ) ) )
for row in range(len(A ) ):
if tensor.dtype != torch.long:
logger.info(F'''layer {row + 1}:\t''' + '\t'.join(F'''{x:.5f}''' for x in tensor[row].cpu().data ) )
else:
logger.info(F'''layer {row + 1}:\t''' + '\t'.join(F'''{x:d}''' for x in tensor[row].cpu().data ) )
def lowercase_ (A : Tuple , A : Optional[Any] , A : str , A : int=True , A : Optional[int]=True , A : Any=None , A : int=False ):
snake_case__ , snake_case__ : Optional[Any] = model.config.num_hidden_layers, model.config.num_attention_heads
snake_case__ : int = torch.zeros(A , A ).to(args.device )
snake_case__ : Any = torch.zeros(A , A ).to(args.device )
if head_mask is None:
snake_case__ : Dict = torch.ones(A , A ).to(args.device )
head_mask.requires_grad_(requires_grad=A )
# If actually pruned attention multi-head, set head mask to None to avoid shape mismatch
if actually_pruned:
snake_case__ : Optional[int] = None
snake_case__ : List[Any] = 0.0
snake_case__ : str = 0.0
for step, inputs in enumerate(tqdm(A , desc='Iteration' , disable=args.local_rank not in [-1, 0] ) ):
snake_case__ : Union[str, Any] = tuple(t.to(args.device ) for t in inputs )
((snake_case__) , ) : Optional[Any] = inputs
# Do a forward pass (not with torch.no_grad() since we need gradients for importance score - see below)
snake_case__ : Union[str, Any] = model(A , labels=A , head_mask=A )
# (loss), lm_logits, presents, (all hidden_states), (attentions)
snake_case__ , snake_case__ , snake_case__ : Dict = (
outputs[0],
outputs[1],
outputs[-1],
) # Loss and logits are the first, attention the last
loss.backward() # Backpropagate to populate the gradients in the head mask
total_loss += loss.detach().cpu().numpy()
if compute_entropy:
for layer, attn in enumerate(A ):
snake_case__ : Optional[Any] = entropy(attn.detach() , A )
attn_entropy[layer] += masked_entropy.sum(-1 ).sum(0 ).sum(0 ).detach()
if compute_importance:
head_importance += head_mask.grad.abs().detach()
tot_tokens += torch.ones_like(A ).float().detach().sum().data
# Normalize
attn_entropy /= tot_tokens
head_importance /= tot_tokens
# Layerwise importance normalization
if not args.dont_normalize_importance_by_layer:
snake_case__ : Union[str, Any] = 2
snake_case__ : List[Any] = torch.pow(torch.pow(A , A ).sum(-1 ) , 1 / exponent )
head_importance /= norm_by_layer.unsqueeze(-1 ) + 1e-20
if not args.dont_normalize_global_importance:
snake_case__ : Tuple = (head_importance - head_importance.min()) / (head_importance.max() - head_importance.min())
# Print matrices
if compute_entropy:
logger.info('Attention entropies' )
print_ad_tensor(A )
if compute_importance:
logger.info('Head importance scores' )
print_ad_tensor(A )
logger.info('Head ranked by importance scores' )
snake_case__ : Tuple = torch.zeros(head_importance.numel() , dtype=torch.long , device=args.device )
snake_case__ : Union[str, Any] = torch.arange(
head_importance.numel() , device=args.device )
snake_case__ : str = head_ranks.view_as(A )
print_ad_tensor(A )
return attn_entropy, head_importance, total_loss
def lowercase_ (A : Optional[int] , A : Dict , A : Optional[int] ):
snake_case__ , snake_case__ , snake_case__ : Any = compute_heads_importance(A , A , A , compute_entropy=A )
snake_case__ : Tuple = 1 / loss # instead of downsteam score use the LM loss
logger.info('Pruning: original score: %f, threshold: %f' , A , original_score * args.masking_threshold )
snake_case__ : Optional[Any] = torch.ones_like(A )
snake_case__ : Union[str, Any] = max(1 , int(new_head_mask.numel() * args.masking_amount ) )
snake_case__ : Dict = original_score
while current_score >= original_score * args.masking_threshold:
snake_case__ : int = new_head_mask.clone().detach() # save current head mask
# heads from least important to most - keep only not-masked heads
snake_case__ : List[Any] = float('Inf' )
snake_case__ : Union[str, Any] = head_importance.view(-1 ).sort()[1]
if len(A ) <= num_to_mask:
print('BREAK BY num_to_mask' )
break
# mask heads
snake_case__ : int = current_heads_to_mask[:num_to_mask]
logger.info('Heads to mask: %s' , str(current_heads_to_mask.tolist() ) )
snake_case__ : int = new_head_mask.view(-1 )
snake_case__ : int = 0.0
snake_case__ : Union[str, Any] = new_head_mask.view_as(A )
snake_case__ : List[str] = new_head_mask.clone().detach()
print_ad_tensor(A )
# Compute metric and head importance again
snake_case__ , snake_case__ , snake_case__ : Any = compute_heads_importance(
A , A , A , compute_entropy=A , head_mask=A )
snake_case__ : Dict = 1 / loss
logger.info(
'Masking: current score: %f, remaining heads %d (%.1f percents)' , A , new_head_mask.sum() , new_head_mask.sum() / new_head_mask.numel() * 1_0_0 , )
logger.info('Final head mask' )
print_ad_tensor(A )
np.save(os.path.join(args.output_dir , 'head_mask.npy' ) , head_mask.detach().cpu().numpy() )
return head_mask
def lowercase_ (A : List[str] , A : Tuple , A : Optional[Any] , A : int ):
snake_case__ : Any = datetime.now()
snake_case__ , snake_case__ , snake_case__ : str = compute_heads_importance(
A , A , A , compute_entropy=A , compute_importance=A , head_mask=A )
snake_case__ : Tuple = 1 / loss
snake_case__ : Dict = datetime.now() - before_time
snake_case__ : Union[str, Any] = sum(p.numel() for p in model.parameters() )
snake_case__ : Optional[Any] = {
layer: (1 - head_mask[layer].long()).nonzero().squeeze().tolist() for layer in range(len(A ) )
}
for k, v in heads_to_prune.items():
if isinstance(A , A ):
snake_case__ : Any = [
v,
]
assert sum(len(A ) for h in heads_to_prune.values() ) == (1 - head_mask.long()).sum().item()
model.prune_heads(A )
snake_case__ : Dict = sum(p.numel() for p in model.parameters() )
snake_case__ : Tuple = datetime.now()
snake_case__ , snake_case__ , snake_case__ : Dict = compute_heads_importance(
A , A , A , compute_entropy=A , compute_importance=A , head_mask=A , actually_pruned=A , )
snake_case__ : Any = 1 / loss
snake_case__ : int = datetime.now() - before_time
logger.info(
'Pruning: original num of params: %.2e, after pruning %.2e (%.1f percents)' , A , A , pruned_num_params / original_num_params * 1_0_0 , )
logger.info('Pruning: score with masking: %f score with pruning: %f' , A , A )
logger.info('Pruning: speed ratio (original timing / new timing): %f percents' , original_time / new_time * 1_0_0 )
save_model(A , args.output_dir )
def lowercase_ ():
snake_case__ : str = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
'--data_dir' , default=A , type=A , required=A , help='The input data dir. Should contain the .tsv files (or other data files) for the task.' , )
parser.add_argument(
'--model_name_or_path' , default=A , type=A , required=A , help='Path to pretrained model or model identifier from huggingface.co/models' , )
parser.add_argument(
'--output_dir' , default=A , type=A , required=A , help='The output directory where the model predictions and checkpoints will be written.' , )
# Other parameters
parser.add_argument(
'--config_name' , default='' , type=A , help='Pretrained config name or path if not the same as model_name_or_path' , )
parser.add_argument(
'--tokenizer_name' , default='' , type=A , help='Pretrained tokenizer name or path if not the same as model_name_or_path' , )
parser.add_argument(
'--cache_dir' , default=A , type=A , help='Where do you want to store the pre-trained models downloaded from s3' , )
parser.add_argument(
'--data_subset' , type=A , default=-1 , help='If > 0: limit the data to a subset of data_subset instances.' )
parser.add_argument(
'--overwrite_output_dir' , action='store_true' , help='Whether to overwrite data in output directory' )
parser.add_argument(
'--overwrite_cache' , action='store_true' , help='Overwrite the cached training and evaluation sets' )
parser.add_argument(
'--dont_normalize_importance_by_layer' , action='store_true' , help='Don\'t normalize importance score by layers' )
parser.add_argument(
'--dont_normalize_global_importance' , action='store_true' , help='Don\'t normalize all importance scores between 0 and 1' , )
parser.add_argument(
'--try_masking' , action='store_true' , help='Whether to try to mask head until a threshold of accuracy.' )
parser.add_argument(
'--masking_threshold' , default=0.9 , type=A , help='masking threshold in term of metrics (stop masking when metric < threshold * original metric value).' , )
parser.add_argument(
'--masking_amount' , default=0.1 , type=A , help='Amount to heads to masking at each masking step.' )
parser.add_argument('--metric_name' , default='acc' , type=A , help='Metric to use for head masking.' )
parser.add_argument(
'--max_seq_length' , default=1_2_8 , type=A , help=(
'The maximum total input sequence length after WordPiece tokenization. \n'
'Sequences longer than this will be truncated, sequences shorter padded.'
) , )
parser.add_argument('--batch_size' , default=1 , type=A , help='Batch size.' )
parser.add_argument('--seed' , type=A , default=4_2 )
parser.add_argument('--local_rank' , type=A , default=-1 , help='local_rank for distributed training on gpus' )
parser.add_argument('--no_cuda' , action='store_true' , help='Whether not to use CUDA when available' )
parser.add_argument('--server_ip' , type=A , default='' , help='Can be used for distant debugging.' )
parser.add_argument('--server_port' , type=A , default='' , help='Can be used for distant debugging.' )
snake_case__ : Optional[int] = parser.parse_args()
if args.server_ip and args.server_port:
# Distant debugging - see https://code.visualstudio.com/docs/python/debugging#_attach-to-a-local-script
import ptvsd
print('Waiting for debugger attach' )
ptvsd.enable_attach(address=(args.server_ip, args.server_port) , redirect_output=A )
ptvsd.wait_for_attach()
# Setup devices and distributed training
if args.local_rank == -1 or args.no_cuda:
snake_case__ : List[Any] = torch.device('cuda' if torch.cuda.is_available() and not args.no_cuda else 'cpu' )
snake_case__ : Optional[Any] = 0 if args.no_cuda else torch.cuda.device_count()
else:
torch.cuda.set_device(args.local_rank )
snake_case__ : int = torch.device('cuda' , args.local_rank )
snake_case__ : List[str] = 1
torch.distributed.init_process_group(backend='nccl' ) # Initializes the distributed backend
# Setup logging
logging.basicConfig(level=logging.INFO if args.local_rank in [-1, 0] else logging.WARN )
logger.info('device: {} n_gpu: {}, distributed: {}'.format(args.device , args.n_gpu , bool(args.local_rank != -1 ) ) )
snake_case__ : Any = GPTaLMHeadModel.from_pretrained(args.model_name_or_path )
# Distributed and parallel training
model.to(args.device )
if args.local_rank != -1:
snake_case__ : List[str] = nn.parallel.DistributedDataParallel(
A , device_ids=[args.local_rank] , output_device=args.local_rank , find_unused_parameters=A )
elif args.n_gpu > 1:
snake_case__ : Optional[int] = nn.DataParallel(A )
# Print/save training arguments
os.makedirs(args.output_dir , exist_ok=A )
torch.save(A , os.path.join(args.output_dir , 'run_args.bin' ) )
logger.info('Training/evaluation parameters %s' , A )
# Prepare dataset
snake_case__ : Optional[Any] = np.concatenate(
[
np.loadtxt(args.data_dir , dtype=np.intaa ),
] )
snake_case__ : List[str] = (torch.from_numpy(A ),)
snake_case__ : int = TensorDataset(*A )
snake_case__ : Union[str, Any] = RandomSampler(A )
snake_case__ : Any = DataLoader(A , sampler=A , batch_size=args.batch_size )
# Compute head entropy and importance score
compute_heads_importance(A , A , A )
# Try head masking (set heads to zero until the score goes under a threshole)
# and head pruning (remove masked heads and see the effect on the network)
if args.try_masking and args.masking_threshold > 0.0 and args.masking_threshold < 1.0:
snake_case__ : Dict = mask_heads(A , A , A )
prune_heads(A , A , A , A )
if __name__ == "__main__":
main()
| 277 | 1 |
from __future__ import annotations
from random import random
class snake_case__ :
"""simple docstring"""
def __init__( self : Tuple, _snake_case : int | None = None ) ->Optional[Any]:
snake_case__ : int = value
snake_case__ : List[str] = random()
snake_case__ : Node | None = None
snake_case__ : Node | None = None
def __repr__( self : Optional[int] ) ->str:
from pprint import pformat
if self.left is None and self.right is None:
return F'''\'{self.value}: {self.prior:.5}\''''
else:
return pformat(
{F'''{self.value}: {self.prior:.5}''': (self.left, self.right)}, indent=1 )
def __str__( self : int ) ->str:
snake_case__ : str = str(self.value ) + ' '
snake_case__ : Optional[Any] = str(self.left or '' )
snake_case__ : List[Any] = str(self.right or '' )
return value + left + right
def lowercase_ (A : Node | None , A : int ):
if root is None: # None tree is split into 2 Nones
return None, None
elif root.value is None:
return None, None
else:
if value < root.value:
snake_case__ , snake_case__ : Optional[Any] = split(root.left , A )
return left, root
else:
snake_case__ , snake_case__ : int = split(root.right , A )
return root, right
def lowercase_ (A : Node | None , A : Node | None ):
if (not left) or (not right): # If one node is None, return the other
return left or right
elif left.prior < right.prior:
snake_case__ : List[str] = merge(left.right , A )
return left
else:
snake_case__ : List[str] = merge(A , right.left )
return right
def lowercase_ (A : Node | None , A : int ):
snake_case__ : Any = Node(A )
snake_case__ , snake_case__ : str = split(A , A )
return merge(merge(A , A ) , A )
def lowercase_ (A : Node | None , A : int ):
snake_case__ , snake_case__ : Dict = split(A , value - 1 )
snake_case__ , snake_case__ : Union[str, Any] = split(A , A )
return merge(A , A )
def lowercase_ (A : Node | None ):
if not root: # None
return
else:
inorder(root.left )
print(root.value , end=',' )
inorder(root.right )
def lowercase_ (A : Node | None , A : str ):
for arg in args.split():
if arg[0] == "+":
snake_case__ : Optional[Any] = insert(A , int(arg[1:] ) )
elif arg[0] == "-":
snake_case__ : Dict = erase(A , int(arg[1:] ) )
else:
print('Unknown command' )
return root
def lowercase_ ():
snake_case__ : Optional[int] = None
print(
'enter numbers to create a tree, + value to add value into treap, '
'- value to erase all nodes with value. \'q\' to quit. ' )
snake_case__ : str = input()
while args != "q":
snake_case__ : Dict = interact_treap(A , A )
print(A )
snake_case__ : List[str] = input()
print('good by!' )
if __name__ == "__main__":
import doctest
doctest.testmod()
main()
| 277 |
import argparse
import json
from collections import OrderedDict
from pathlib import Path
import requests
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import (
SegformerConfig,
SegformerForImageClassification,
SegformerForSemanticSegmentation,
SegformerImageProcessor,
)
from transformers.utils import logging
logging.set_verbosity_info()
a_ :Dict = logging.get_logger(__name__)
def lowercase_ (A : Optional[Any] , A : Any=False ):
snake_case__ : List[Any] = OrderedDict()
for key, value in state_dict.items():
if encoder_only and not key.startswith('head' ):
snake_case__ : str = 'segformer.encoder.' + key
if key.startswith('backbone' ):
snake_case__ : str = key.replace('backbone' , 'segformer.encoder' )
if "patch_embed" in key:
# replace for example patch_embed1 by patch_embeddings.0
snake_case__ : Optional[int] = key[key.find('patch_embed' ) + len('patch_embed' )]
snake_case__ : int = key.replace(F'''patch_embed{idx}''' , F'''patch_embeddings.{int(A )-1}''' )
if "norm" in key:
snake_case__ : Optional[int] = key.replace('norm' , 'layer_norm' )
if "segformer.encoder.layer_norm" in key:
# replace for example layer_norm1 by layer_norm.0
snake_case__ : Tuple = key[key.find('segformer.encoder.layer_norm' ) + len('segformer.encoder.layer_norm' )]
snake_case__ : Union[str, Any] = key.replace(F'''layer_norm{idx}''' , F'''layer_norm.{int(A )-1}''' )
if "layer_norm1" in key:
snake_case__ : List[Any] = key.replace('layer_norm1' , 'layer_norm_1' )
if "layer_norm2" in key:
snake_case__ : List[Any] = key.replace('layer_norm2' , 'layer_norm_2' )
if "block" in key:
# replace for example block1 by block.0
snake_case__ : List[Any] = key[key.find('block' ) + len('block' )]
snake_case__ : List[Any] = key.replace(F'''block{idx}''' , F'''block.{int(A )-1}''' )
if "attn.q" in key:
snake_case__ : int = key.replace('attn.q' , 'attention.self.query' )
if "attn.proj" in key:
snake_case__ : str = key.replace('attn.proj' , 'attention.output.dense' )
if "attn" in key:
snake_case__ : Optional[int] = key.replace('attn' , 'attention.self' )
if "fc1" in key:
snake_case__ : str = key.replace('fc1' , 'dense1' )
if "fc2" in key:
snake_case__ : Dict = key.replace('fc2' , 'dense2' )
if "linear_pred" in key:
snake_case__ : Union[str, Any] = key.replace('linear_pred' , 'classifier' )
if "linear_fuse" in key:
snake_case__ : List[str] = key.replace('linear_fuse.conv' , 'linear_fuse' )
snake_case__ : List[Any] = key.replace('linear_fuse.bn' , 'batch_norm' )
if "linear_c" in key:
# replace for example linear_c4 by linear_c.3
snake_case__ : Optional[int] = key[key.find('linear_c' ) + len('linear_c' )]
snake_case__ : Tuple = key.replace(F'''linear_c{idx}''' , F'''linear_c.{int(A )-1}''' )
if key.startswith('head' ):
snake_case__ : Tuple = key.replace('head' , 'classifier' )
snake_case__ : Optional[int] = value
return new_state_dict
def lowercase_ (A : Tuple , A : Optional[int] ):
# for each of the encoder blocks:
for i in range(config.num_encoder_blocks ):
for j in range(config.depths[i] ):
# read in weights + bias of keys and values (which is a single matrix in the original implementation)
snake_case__ : List[str] = state_dict.pop(F'''segformer.encoder.block.{i}.{j}.attention.self.kv.weight''' )
snake_case__ : Optional[Any] = state_dict.pop(F'''segformer.encoder.block.{i}.{j}.attention.self.kv.bias''' )
# next, add keys and values (in that order) to the state dict
snake_case__ : str = kv_weight[
: config.hidden_sizes[i], :
]
snake_case__ : Dict = kv_bias[: config.hidden_sizes[i]]
snake_case__ : List[str] = kv_weight[
config.hidden_sizes[i] :, :
]
snake_case__ : List[Any] = kv_bias[
config.hidden_sizes[i] :
]
def lowercase_ ():
snake_case__ : Union[str, Any] = 'http://images.cocodataset.org/val2017/000000039769.jpg'
snake_case__ : Dict = Image.open(requests.get(A , stream=A ).raw )
return image
@torch.no_grad()
def lowercase_ (A : Any , A : Union[str, Any] , A : Optional[Any] ):
snake_case__ : List[str] = SegformerConfig()
snake_case__ : Dict = False
# set attributes based on model_name
snake_case__ : Optional[int] = 'huggingface/label-files'
if "segformer" in model_name:
snake_case__ : str = model_name[len('segformer.' ) : len('segformer.' ) + 2]
if "ade" in model_name:
snake_case__ : Optional[int] = 1_5_0
snake_case__ : int = 'ade20k-id2label.json'
snake_case__ : List[Any] = (1, 1_5_0, 1_2_8, 1_2_8)
elif "city" in model_name:
snake_case__ : str = 1_9
snake_case__ : List[str] = 'cityscapes-id2label.json'
snake_case__ : Optional[Any] = (1, 1_9, 1_2_8, 1_2_8)
else:
raise ValueError(F'''Model {model_name} not supported''' )
elif "mit" in model_name:
snake_case__ : str = True
snake_case__ : Union[str, Any] = model_name[4:6]
snake_case__ : Optional[Any] = 1_0_0_0
snake_case__ : Optional[int] = 'imagenet-1k-id2label.json'
snake_case__ : List[Any] = (1, 1_0_0_0)
else:
raise ValueError(F'''Model {model_name} not supported''' )
# set config attributes
snake_case__ : str = json.load(open(hf_hub_download(A , A , repo_type='dataset' ) , 'r' ) )
snake_case__ : List[Any] = {int(A ): v for k, v in idalabel.items()}
snake_case__ : Union[str, Any] = idalabel
snake_case__ : Tuple = {v: k for k, v in idalabel.items()}
if size == "b0":
pass
elif size == "b1":
snake_case__ : List[Any] = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : Tuple = 2_5_6
elif size == "b2":
snake_case__ : List[str] = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : int = 7_6_8
snake_case__ : List[Any] = [3, 4, 6, 3]
elif size == "b3":
snake_case__ : Optional[Any] = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : int = 7_6_8
snake_case__ : Optional[Any] = [3, 4, 1_8, 3]
elif size == "b4":
snake_case__ : str = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : Optional[Any] = 7_6_8
snake_case__ : Union[str, Any] = [3, 8, 2_7, 3]
elif size == "b5":
snake_case__ : List[str] = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : Optional[Any] = 7_6_8
snake_case__ : Any = [3, 6, 4_0, 3]
else:
raise ValueError(F'''Size {size} not supported''' )
# load image processor (only resize + normalize)
snake_case__ : Dict = SegformerImageProcessor(
image_scale=(5_1_2, 5_1_2) , keep_ratio=A , align=A , do_random_crop=A )
# prepare image
snake_case__ : List[str] = prepare_img()
snake_case__ : Dict = image_processor(images=A , return_tensors='pt' ).pixel_values
logger.info(F'''Converting model {model_name}...''' )
# load original state dict
if encoder_only:
snake_case__ : Tuple = torch.load(A , map_location=torch.device('cpu' ) )
else:
snake_case__ : int = torch.load(A , map_location=torch.device('cpu' ) )['state_dict']
# rename keys
snake_case__ : List[Any] = rename_keys(A , encoder_only=A )
if not encoder_only:
del state_dict["decode_head.conv_seg.weight"]
del state_dict["decode_head.conv_seg.bias"]
# key and value matrices need special treatment
read_in_k_v(A , A )
# create HuggingFace model and load state dict
if encoder_only:
snake_case__ : str = False
snake_case__ : List[Any] = SegformerForImageClassification(A )
else:
snake_case__ : Dict = SegformerForSemanticSegmentation(A )
model.load_state_dict(A )
model.eval()
# forward pass
snake_case__ : int = model(A )
snake_case__ : Any = outputs.logits
# set expected_slice based on model name
# ADE20k checkpoints
if model_name == "segformer.b0.512x512.ade.160k":
snake_case__ : Dict = torch.tensor(
[
[[-4.6310, -5.5232, -6.2356], [-5.1921, -6.1444, -6.5996], [-5.4424, -6.2790, -6.7574]],
[[-12.1391, -13.3122, -13.9554], [-12.8732, -13.9352, -14.3563], [-12.9438, -13.8226, -14.2513]],
[[-12.5134, -13.4686, -14.4915], [-12.8669, -14.4343, -14.7758], [-13.2523, -14.5819, -15.0694]],
] )
elif model_name == "segformer.b1.512x512.ade.160k":
snake_case__ : Optional[int] = torch.tensor(
[
[[-7.5820, -8.7231, -8.3215], [-8.0600, -10.3529, -10.0304], [-7.5208, -9.4103, -9.6239]],
[[-12.6918, -13.8994, -13.7137], [-13.3196, -15.7523, -15.4789], [-12.9343, -14.8757, -14.9689]],
[[-11.1911, -11.9421, -11.3243], [-11.3342, -13.6839, -13.3581], [-10.3909, -12.1832, -12.4858]],
] )
elif model_name == "segformer.b2.512x512.ade.160k":
snake_case__ : List[Any] = torch.tensor(
[
[[-11.8173, -14.3850, -16.3128], [-14.5648, -16.5804, -18.6568], [-14.7223, -15.7387, -18.4218]],
[[-15.7290, -17.9171, -19.4423], [-18.3105, -19.9448, -21.4661], [-17.9296, -18.6497, -20.7910]],
[[-15.0783, -17.0336, -18.2789], [-16.8771, -18.6870, -20.1612], [-16.2454, -17.1426, -19.5055]],
] )
elif model_name == "segformer.b3.512x512.ade.160k":
snake_case__ : Union[str, Any] = torch.tensor(
[
[[-9.0878, -10.2081, -10.1891], [-9.3144, -10.7941, -10.9843], [-9.2294, -10.3855, -10.5704]],
[[-12.2316, -13.9068, -13.6102], [-12.9161, -14.3702, -14.3235], [-12.5233, -13.7174, -13.7932]],
[[-14.6275, -15.2490, -14.9727], [-14.3400, -15.9687, -16.2827], [-14.1484, -15.4033, -15.8937]],
] )
elif model_name == "segformer.b4.512x512.ade.160k":
snake_case__ : Dict = torch.tensor(
[
[[-12.3144, -13.2447, -14.0802], [-13.3614, -14.5816, -15.6117], [-13.3340, -14.4433, -16.2219]],
[[-19.2781, -20.4128, -20.7506], [-20.6153, -21.6566, -22.0998], [-19.9800, -21.0430, -22.1494]],
[[-18.8739, -19.7804, -21.1834], [-20.1233, -21.6765, -23.2944], [-20.0315, -21.2641, -23.6944]],
] )
elif model_name == "segformer.b5.640x640.ade.160k":
snake_case__ : List[Any] = torch.tensor(
[
[[-9.5524, -12.0835, -11.7348], [-10.5229, -13.6446, -14.5662], [-9.5842, -12.8851, -13.9414]],
[[-15.3432, -17.5323, -17.0818], [-16.3330, -18.9255, -19.2101], [-15.1340, -17.7848, -18.3971]],
[[-12.6072, -14.9486, -14.6631], [-13.7629, -17.0907, -17.7745], [-12.7899, -16.1695, -17.1671]],
] )
# Cityscapes checkpoints
elif model_name == "segformer.b0.1024x1024.city.160k":
snake_case__ : str = torch.tensor(
[
[[-11.9295, -13.4057, -14.8106], [-13.3431, -14.8179, -15.3781], [-14.2836, -15.5942, -16.1588]],
[[-11.4906, -12.8067, -13.6564], [-13.1189, -14.0500, -14.1543], [-13.8748, -14.5136, -14.8789]],
[[0.5374, 0.1067, -0.4742], [0.1141, -0.2255, -0.7099], [-0.3000, -0.5924, -1.3105]],
] )
elif model_name == "segformer.b0.512x1024.city.160k":
snake_case__ : Tuple = torch.tensor(
[
[[-7.8217, -9.8767, -10.1717], [-9.4438, -10.9058, -11.4047], [-9.7939, -12.3495, -12.1079]],
[[-7.1514, -9.5336, -10.0860], [-9.7776, -11.6822, -11.8439], [-10.1411, -12.7655, -12.8972]],
[[0.3021, 0.0805, -0.2310], [-0.0328, -0.1605, -0.2714], [-0.1408, -0.5477, -0.6976]],
] )
elif model_name == "segformer.b0.640x1280.city.160k":
snake_case__ : Any = torch.tensor(
[
[
[-1.1_372e01, -1.2_787e01, -1.3_477e01],
[-1.2_536e01, -1.4_194e01, -1.4_409e01],
[-1.3_217e01, -1.4_888e01, -1.5_327e01],
],
[
[-1.4_791e01, -1.7_122e01, -1.8_277e01],
[-1.7_163e01, -1.9_192e01, -1.9_533e01],
[-1.7_897e01, -1.9_991e01, -2.0_315e01],
],
[
[7.6_723e-01, 4.1_921e-01, -7.7_878e-02],
[4.7_772e-01, 9.5_557e-03, -2.8_082e-01],
[3.6_032e-01, -2.4_826e-01, -5.1_168e-01],
],
] )
elif model_name == "segformer.b0.768x768.city.160k":
snake_case__ : Optional[int] = torch.tensor(
[
[[-9.4959, -11.3087, -11.7479], [-11.0025, -12.6540, -12.3319], [-11.4064, -13.0487, -12.9905]],
[[-9.8905, -11.3084, -12.0854], [-11.1726, -12.7698, -12.9583], [-11.5985, -13.3278, -14.1774]],
[[0.2213, 0.0192, -0.2466], [-0.1731, -0.4213, -0.4874], [-0.3126, -0.6541, -1.1389]],
] )
elif model_name == "segformer.b1.1024x1024.city.160k":
snake_case__ : Union[str, Any] = torch.tensor(
[
[[-13.5748, -13.9111, -12.6500], [-14.3500, -15.3683, -14.2328], [-14.7532, -16.0424, -15.6087]],
[[-17.1651, -15.8725, -12.9653], [-17.2580, -17.3718, -14.8223], [-16.6058, -16.8783, -16.7452]],
[[-3.6456, -3.0209, -1.4203], [-3.0797, -3.1959, -2.0000], [-1.8757, -1.9217, -1.6997]],
] )
elif model_name == "segformer.b2.1024x1024.city.160k":
snake_case__ : List[str] = torch.tensor(
[
[[-16.0976, -16.4856, -17.3962], [-16.6234, -19.0342, -19.7685], [-16.0900, -18.0661, -19.1180]],
[[-18.4750, -18.8488, -19.5074], [-19.4030, -22.1570, -22.5977], [-19.1191, -20.8486, -22.3783]],
[[-4.5178, -5.5037, -6.5109], [-5.0884, -7.2174, -8.0334], [-4.4156, -5.8117, -7.2970]],
] )
elif model_name == "segformer.b3.1024x1024.city.160k":
snake_case__ : List[Any] = torch.tensor(
[
[[-14.2081, -14.4732, -14.1977], [-14.5867, -16.4423, -16.6356], [-13.4441, -14.9685, -16.8696]],
[[-14.4576, -14.7073, -15.0451], [-15.0816, -17.6237, -17.9873], [-14.4213, -16.0199, -18.5992]],
[[-4.7349, -4.9588, -5.0966], [-4.3210, -6.9325, -7.2591], [-3.4312, -4.7484, -7.1917]],
] )
elif model_name == "segformer.b4.1024x1024.city.160k":
snake_case__ : str = torch.tensor(
[
[[-11.7737, -11.9526, -11.3273], [-13.6692, -14.4574, -13.8878], [-13.8937, -14.6924, -15.9345]],
[[-14.6706, -14.5330, -14.1306], [-16.1502, -16.8180, -16.4269], [-16.8338, -17.8939, -20.1746]],
[[1.0491, 0.8289, 1.0310], [1.1044, 0.5219, 0.8055], [1.0899, 0.6926, 0.5590]],
] )
elif model_name == "segformer.b5.1024x1024.city.160k":
snake_case__ : List[str] = torch.tensor(
[
[[-12.5641, -13.4777, -13.0684], [-13.9587, -15.8983, -16.6557], [-13.3109, -15.7350, -16.3141]],
[[-14.7074, -15.4352, -14.5944], [-16.6353, -18.1663, -18.6120], [-15.1702, -18.0329, -18.1547]],
[[-1.7990, -2.0951, -1.7784], [-2.6397, -3.8245, -3.9686], [-1.5264, -2.8126, -2.9316]],
] )
else:
snake_case__ : Tuple = logits.argmax(-1 ).item()
print('Predicted class:' , model.config.idalabel[predicted_class_idx] )
# verify logits
if not encoder_only:
assert logits.shape == expected_shape
assert torch.allclose(logits[0, :3, :3, :3] , A , atol=1e-2 )
# finally, save model and image processor
logger.info(F'''Saving PyTorch model and image processor to {pytorch_dump_folder_path}...''' )
Path(A ).mkdir(exist_ok=A )
model.save_pretrained(A )
image_processor.save_pretrained(A )
if __name__ == "__main__":
a_ :Optional[int] = argparse.ArgumentParser()
parser.add_argument(
"--model_name",
default="segformer.b0.512x512.ade.160k",
type=str,
help="Name of the model you'd like to convert.",
)
parser.add_argument(
"--checkpoint_path", default=None, type=str, help="Path to the original PyTorch checkpoint (.pth file)."
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to the folder to output PyTorch model."
)
a_ :Union[str, Any] = parser.parse_args()
convert_segformer_checkpoint(args.model_name, args.checkpoint_path, args.pytorch_dump_folder_path)
| 277 | 1 |
from typing import TYPE_CHECKING
from ...utils import (
OptionalDependencyNotAvailable,
_LazyModule,
is_flax_available,
is_tf_available,
is_torch_available,
)
a_ :Any = {
"configuration_resnet": ["RESNET_PRETRAINED_CONFIG_ARCHIVE_MAP", "ResNetConfig", "ResNetOnnxConfig"]
}
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :List[Any] = [
"RESNET_PRETRAINED_MODEL_ARCHIVE_LIST",
"ResNetForImageClassification",
"ResNetModel",
"ResNetPreTrainedModel",
"ResNetBackbone",
]
try:
if not is_tf_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :Any = [
"TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST",
"TFResNetForImageClassification",
"TFResNetModel",
"TFResNetPreTrainedModel",
]
try:
if not is_flax_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :List[Any] = [
"FlaxResNetForImageClassification",
"FlaxResNetModel",
"FlaxResNetPreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_resnet import RESNET_PRETRAINED_CONFIG_ARCHIVE_MAP, ResNetConfig, ResNetOnnxConfig
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_resnet import (
RESNET_PRETRAINED_MODEL_ARCHIVE_LIST,
ResNetBackbone,
ResNetForImageClassification,
ResNetModel,
ResNetPreTrainedModel,
)
try:
if not is_tf_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_tf_resnet import (
TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST,
TFResNetForImageClassification,
TFResNetModel,
TFResNetPreTrainedModel,
)
try:
if not is_flax_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_flax_resnet import FlaxResNetForImageClassification, FlaxResNetModel, FlaxResNetPreTrainedModel
else:
import sys
a_ :Optional[Any] = _LazyModule(__name__, globals()["__file__"], _import_structure)
| 277 |
import argparse
import json
import os
import fairseq
import torch
from fairseq.data import Dictionary
from transformers import (
WavaVecaConfig,
WavaVecaCTCTokenizer,
WavaVecaFeatureExtractor,
WavaVecaForCTC,
WavaVecaForPreTraining,
WavaVecaProcessor,
logging,
)
from transformers.models.wavaveca.modeling_wavaveca import WavaVecaForSequenceClassification
logging.set_verbosity_info()
a_ :List[Any] = logging.get_logger(__name__)
a_ :List[Any] = {
"post_extract_proj": "feature_projection.projection",
"encoder.pos_conv.0": "encoder.pos_conv_embed.conv",
"self_attn.k_proj": "encoder.layers.*.attention.k_proj",
"self_attn.v_proj": "encoder.layers.*.attention.v_proj",
"self_attn.q_proj": "encoder.layers.*.attention.q_proj",
"self_attn.out_proj": "encoder.layers.*.attention.out_proj",
"self_attn_layer_norm": "encoder.layers.*.layer_norm",
"fc1": "encoder.layers.*.feed_forward.intermediate_dense",
"fc2": "encoder.layers.*.feed_forward.output_dense",
"final_layer_norm": "encoder.layers.*.final_layer_norm",
"encoder.layer_norm": "encoder.layer_norm",
"adapter_layer": "encoder.layers.*.adapter_layer",
"w2v_model.layer_norm": "feature_projection.layer_norm",
"quantizer.weight_proj": "quantizer.weight_proj",
"quantizer.vars": "quantizer.codevectors",
"project_q": "project_q",
"final_proj": "project_hid",
"w2v_encoder.proj": "lm_head",
"mask_emb": "masked_spec_embed",
"pooling_layer.linear": "projector",
"pooling_layer.projection": "classifier",
}
a_ :List[Any] = [
"lm_head",
"quantizer.weight_proj",
"quantizer.codevectors",
"project_q",
"project_hid",
"projector",
"classifier",
]
def lowercase_ (A : Dict ):
snake_case__ : Optional[Any] = {}
with open(A , 'r' ) as file:
for line_number, line in enumerate(A ):
snake_case__ : Dict = line.strip()
if line:
snake_case__ : int = line.split()
snake_case__ : List[str] = line_number
snake_case__ : Dict = words[0]
snake_case__ : Optional[Any] = value
return result
def lowercase_ (A : int , A : int , A : Optional[int] , A : Optional[Any] , A : Tuple ):
for attribute in key.split('.' ):
snake_case__ : Optional[int] = getattr(A , A )
snake_case__ : Union[str, Any] = None
for param_key in PARAM_MAPPING.keys():
if full_name.endswith(A ):
snake_case__ : List[str] = PARAM_MAPPING[full_name.split('.' )[-1]]
snake_case__ : Dict = 'param'
if weight_type is not None and weight_type != "param":
snake_case__ : Union[str, Any] = getattr(A , A ).shape
elif weight_type is not None and weight_type == "param":
snake_case__ : Optional[int] = hf_pointer
for attribute in hf_param_name.split('.' ):
snake_case__ : Optional[Any] = getattr(A , A )
snake_case__ : Dict = shape_pointer.shape
# let's reduce dimension
snake_case__ : List[Any] = value[0]
else:
snake_case__ : Union[str, Any] = hf_pointer.shape
if hf_shape != value.shape:
raise ValueError(
F'''Shape of hf {key + "." + weight_type if weight_type is not None else ""} is {hf_shape}, but should be'''
F''' {value.shape} for {full_name}''' )
if weight_type == "weight":
snake_case__ : Any = value
elif weight_type == "weight_g":
snake_case__ : List[Any] = value
elif weight_type == "weight_v":
snake_case__ : Any = value
elif weight_type == "bias":
snake_case__ : List[Any] = value
elif weight_type == "param":
for attribute in hf_param_name.split('.' ):
snake_case__ : int = getattr(A , A )
snake_case__ : Optional[int] = value
else:
snake_case__ : Optional[Any] = value
logger.info(F'''{key + "." + weight_type if weight_type is not None else ""} was initialized from {full_name}.''' )
def lowercase_ (A : Tuple , A : List[Any] , A : int , A : str , A : Tuple ):
snake_case__ : Optional[int] = None
for param_key in PARAM_MAPPING.keys():
if full_name.endswith(A ):
snake_case__ : List[str] = PARAM_MAPPING[full_name.split('.' )[-1]]
snake_case__ : str = 'param'
if weight_type is not None and weight_type != "param":
snake_case__ : int = '.'.join([key, weight_type] )
elif weight_type is not None and weight_type == "param":
snake_case__ : Any = '.'.join([key, hf_param_name] )
else:
snake_case__ : Dict = key
snake_case__ : List[str] = value if 'lm_head' in full_key else value[0]
a_ :List[str] = {
"W_a": "linear_1.weight",
"W_b": "linear_2.weight",
"b_a": "linear_1.bias",
"b_b": "linear_2.bias",
"ln_W": "norm.weight",
"ln_b": "norm.bias",
}
def lowercase_ (A : str , A : Optional[Any] , A : Optional[Any]=None , A : List[str]=None ):
snake_case__ : Optional[int] = False
for key, mapped_key in MAPPING.items():
snake_case__ : Tuple = 'wav2vec2.' + mapped_key if mapped_key not in TOP_LEVEL_KEYS else mapped_key
if key in name or key.split('w2v_model.' )[-1] == name.split('.' )[0]:
snake_case__ : Optional[int] = True
if "*" in mapped_key:
snake_case__ : List[Any] = name.split(A )[0].split('.' )[-2]
snake_case__ : Union[str, Any] = mapped_key.replace('*' , A )
if "weight_g" in name:
snake_case__ : Tuple = 'weight_g'
elif "weight_v" in name:
snake_case__ : List[str] = 'weight_v'
elif "bias" in name:
snake_case__ : Dict = 'bias'
elif "weight" in name:
# TODO: don't match quantizer.weight_proj
snake_case__ : Optional[int] = 'weight'
else:
snake_case__ : str = None
if hf_dict is not None:
rename_dict(A , A , A , A , A )
else:
set_recursively(A , A , A , A , A )
return is_used
return is_used
def lowercase_ (A : Optional[Any] , A : Dict , A : Optional[int] ):
snake_case__ : Dict = []
snake_case__ : Tuple = fairseq_model.state_dict()
snake_case__ : str = hf_model.wavaveca.feature_extractor
for name, value in fairseq_dict.items():
snake_case__ : str = False
if "conv_layers" in name:
load_conv_layer(
A , A , A , A , hf_model.config.feat_extract_norm == 'group' , )
snake_case__ : Any = True
else:
snake_case__ : Dict = load_wavaveca_layer(A , A , A )
if not is_used:
unused_weights.append(A )
logger.warning(F'''Unused weights: {unused_weights}''' )
def lowercase_ (A : Dict , A : Optional[Any] , A : Tuple , A : str , A : List[str] ):
snake_case__ : List[Any] = full_name.split('conv_layers.' )[-1]
snake_case__ : List[str] = name.split('.' )
snake_case__ : List[Any] = int(items[0] )
snake_case__ : str = int(items[1] )
if type_id == 0:
if "bias" in name:
if value.shape != feature_extractor.conv_layers[layer_id].conv.bias.data.shape:
raise ValueError(
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.bias.data.shape} was found.''' )
snake_case__ : Any = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
if value.shape != feature_extractor.conv_layers[layer_id].conv.weight.data.shape:
raise ValueError(
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.weight.data.shape} was found.''' )
snake_case__ : str = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif (type_id == 2 and not use_group_norm) or (type_id == 2 and layer_id == 0 and use_group_norm):
if "bias" in name:
if value.shape != feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape:
raise ValueError(
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape} was found.''' )
snake_case__ : str = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
if value.shape != feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape:
raise ValueError(
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape} was found.''' )
snake_case__ : int = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
else:
unused_weights.append(A )
@torch.no_grad()
def lowercase_ (A : Union[str, Any] , A : str , A : Tuple=None , A : List[str]=None , A : Any=True , A : Optional[int]=False ):
if config_path is not None:
snake_case__ : List[Any] = WavaVecaConfig.from_pretrained(A )
else:
snake_case__ : List[Any] = WavaVecaConfig()
if is_seq_class:
snake_case__ : Dict = read_txt_into_dict(A )
snake_case__ : Any = idalabel
snake_case__ : Union[str, Any] = WavaVecaForSequenceClassification(A )
snake_case__ : Any = WavaVecaFeatureExtractor(
feature_size=1 , sampling_rate=1_6_0_0_0 , padding_value=0 , do_normalize=A , return_attention_mask=A , )
feature_extractor.save_pretrained(A )
elif is_finetuned:
if dict_path:
snake_case__ : str = Dictionary.load(A )
# important change bos & pad token id since CTC symbol is <pad> and
# not <s> as in fairseq
snake_case__ : List[str] = target_dict.pad_index
snake_case__ : Optional[int] = target_dict.bos_index
snake_case__ : Optional[int] = target_dict.eos_index
snake_case__ : List[Any] = len(target_dict.symbols )
snake_case__ : str = os.path.join(A , 'vocab.json' )
if not os.path.isdir(A ):
logger.error('--pytorch_dump_folder_path ({}) should be a directory'.format(A ) )
return
os.makedirs(A , exist_ok=A )
snake_case__ : Optional[Any] = target_dict.indices
# fairseq has the <pad> and <s> switched
snake_case__ : Optional[Any] = 0
snake_case__ : Union[str, Any] = 1
with open(A , 'w' , encoding='utf-8' ) as vocab_handle:
json.dump(A , A )
snake_case__ : List[Any] = WavaVecaCTCTokenizer(
A , unk_token=target_dict.unk_word , pad_token=target_dict.pad_word , bos_token=target_dict.bos_word , eos_token=target_dict.eos_word , word_delimiter_token='|' , do_lower_case=A , )
snake_case__ : str = True if config.feat_extract_norm == 'layer' else False
snake_case__ : Optional[Any] = WavaVecaFeatureExtractor(
feature_size=1 , sampling_rate=1_6_0_0_0 , padding_value=0 , do_normalize=A , return_attention_mask=A , )
snake_case__ : Union[str, Any] = WavaVecaProcessor(feature_extractor=A , tokenizer=A )
processor.save_pretrained(A )
snake_case__ : str = WavaVecaForCTC(A )
else:
snake_case__ : int = WavaVecaForPreTraining(A )
if is_finetuned or is_seq_class:
snake_case__ , snake_case__ , snake_case__ : str = fairseq.checkpoint_utils.load_model_ensemble_and_task(
[checkpoint_path] , arg_overrides={'data': '/'.join(dict_path.split('/' )[:-1] )} )
else:
snake_case__ : Tuple = argparse.Namespace(task='audio_pretraining' )
snake_case__ : str = fairseq.tasks.setup_task(A )
snake_case__ , snake_case__ , snake_case__ : Any = fairseq.checkpoint_utils.load_model_ensemble_and_task([checkpoint_path] , task=A )
snake_case__ : List[Any] = model[0].eval()
recursively_load_weights(A , A , not is_finetuned )
hf_wavavec.save_pretrained(A )
if __name__ == "__main__":
a_ :List[Any] = argparse.ArgumentParser()
parser.add_argument("--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model.")
parser.add_argument("--checkpoint_path", default=None, type=str, help="Path to fairseq checkpoint")
parser.add_argument("--dict_path", default=None, type=str, help="Path to dict of fine-tuned model")
parser.add_argument("--config_path", default=None, type=str, help="Path to hf config.json of model to convert")
parser.add_argument(
"--not_finetuned", action="store_true", help="Whether the model to convert is a fine-tuned model or not"
)
parser.add_argument(
"--is_seq_class",
action="store_true",
help="Whether the model to convert is a fine-tuned sequence classification model or not",
)
a_ :str = parser.parse_args()
a_ :Tuple = not args.not_finetuned and not args.is_seq_class
convert_wavaveca_checkpoint(
args.checkpoint_path,
args.pytorch_dump_folder_path,
args.config_path,
args.dict_path,
is_finetuned,
args.is_seq_class,
)
| 277 | 1 |
import argparse
from collections import defaultdict
def lowercase_ (A : List[str] , A : Optional[Any] , A : List[str] , A : Tuple , A : Union[str, Any] ):
snake_case__ : Dict = F'''{file}_{class_name}_{test_name}'''
done_test[_id] += 1
with open(A , 'r' ) as f:
snake_case__ : str = f.readlines()
snake_case__ : List[str] = F'''class {class_name}('''
snake_case__ : Tuple = F'''{4 * " "}def {test_name}('''
snake_case__ : Any = F'''{8 * " "}{correct_line.split()[0]}'''
snake_case__ : Optional[Any] = F'''{1_6 * " "}{correct_line.split()[0]}'''
snake_case__ : Dict = False
snake_case__ : Optional[Any] = False
snake_case__ : Dict = False
snake_case__ : Optional[Any] = False
snake_case__ : Optional[int] = 0
snake_case__ : Optional[Any] = 0
snake_case__ : Optional[Any] = []
for line in lines:
if line.startswith(A ):
snake_case__ : Dict = True
elif in_class and line.startswith(A ):
snake_case__ : int = True
elif in_class and in_func and (line.startswith(A ) or line.startswith(A )):
snake_case__ : Union[str, Any] = len(line.split(correct_line.split()[0] )[0] )
count += 1
if count == done_test[_id]:
snake_case__ : List[Any] = True
if in_class and in_func and in_line:
if ")" not in line:
continue
else:
snake_case__ : Tuple = True
if in_class and in_func and in_line and insert_line:
new_lines.append(F'''{spaces * " "}{correct_line}''' )
snake_case__ : Optional[int] = False
else:
new_lines.append(A )
with open(A , 'w' ) as f:
for line in new_lines:
f.write(A )
def lowercase_ (A : int , A : Any=None ):
if fail is not None:
with open(A , 'r' ) as f:
snake_case__ : Dict = {l.strip() for l in f.readlines()}
else:
snake_case__ : str = None
with open(A , 'r' ) as f:
snake_case__ : Union[str, Any] = f.readlines()
snake_case__ : List[Any] = defaultdict(A )
for line in correct_lines:
snake_case__ , snake_case__ , snake_case__ , snake_case__ : int = line.split(';' )
if test_failures is None or "::".join([file, class_name, test_name] ) in test_failures:
overwrite_file(A , A , A , A , A )
if __name__ == "__main__":
a_ :Optional[Any] = argparse.ArgumentParser()
parser.add_argument("--correct_filename", help="filename of tests with expected result")
parser.add_argument("--fail_filename", help="filename of test failures", type=str, default=None)
a_ :Optional[int] = parser.parse_args()
main(args.correct_filename, args.fail_filename)
| 277 |
from typing import Dict, List
from nltk.translate import gleu_score
import datasets
from datasets import MetricInfo
a_ :Any = "\\n@misc{wu2016googles,\n title={Google's Neural Machine Translation System: Bridging the Gap between Human and Machine Translation},\n author={Yonghui Wu and Mike Schuster and Zhifeng Chen and Quoc V. Le and Mohammad Norouzi and Wolfgang Macherey\n and Maxim Krikun and Yuan Cao and Qin Gao and Klaus Macherey and Jeff Klingner and Apurva Shah and Melvin\n Johnson and Xiaobing Liu and Łukasz Kaiser and Stephan Gouws and Yoshikiyo Kato and Taku Kudo and Hideto\n Kazawa and Keith Stevens and George Kurian and Nishant Patil and Wei Wang and Cliff Young and\n Jason Smith and Jason Riesa and Alex Rudnick and Oriol Vinyals and Greg Corrado and Macduff Hughes\n and Jeffrey Dean},\n year={2016},\n eprint={1609.08144},\n archivePrefix={arXiv},\n primaryClass={cs.CL}\n}\n"
a_ :List[str] = "\\nThe BLEU score has some undesirable properties when used for single\nsentences, as it was designed to be a corpus measure. We therefore\nuse a slightly different score for our RL experiments which we call\nthe 'GLEU score'. For the GLEU score, we record all sub-sequences of\n1, 2, 3 or 4 tokens in output and target sequence (n-grams). We then\ncompute a recall, which is the ratio of the number of matching n-grams\nto the number of total n-grams in the target (ground truth) sequence,\nand a precision, which is the ratio of the number of matching n-grams\nto the number of total n-grams in the generated output sequence. Then\nGLEU score is simply the minimum of recall and precision. This GLEU\nscore's range is always between 0 (no matches) and 1 (all match) and\nit is symmetrical when switching output and target. According to\nour experiments, GLEU score correlates quite well with the BLEU\nmetric on a corpus level but does not have its drawbacks for our per\nsentence reward objective.\n"
a_ :List[str] = "\\nComputes corpus-level Google BLEU (GLEU) score of translated segments against one or more references.\nInstead of averaging the sentence level GLEU scores (i.e. macro-average precision), Wu et al. (2016) sum up the matching\ntokens and the max of hypothesis and reference tokens for each sentence, then compute using the aggregate values.\n\nArgs:\n predictions (list of str): list of translations to score.\n Each translation should be tokenized into a list of tokens.\n references (list of list of str): list of lists of references for each translation.\n Each reference should be tokenized into a list of tokens.\n min_len (int): The minimum order of n-gram this function should extract. Defaults to 1.\n max_len (int): The maximum order of n-gram this function should extract. Defaults to 4.\n\nReturns:\n 'google_bleu': google_bleu score\n\nExamples:\n Example 1:\n >>> hyp1 = ['It', 'is', 'a', 'guide', 'to', 'action', 'which',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'always',\n ... 'disobeys', 'the', 'commands', 'of', 'the', 'cat']\n >>> ref1a = ['It', 'is', 'the', 'guiding', 'principle', 'which',\n ... 'guarantees', 'the', 'rubber', 'duck', 'forces', 'never',\n ... 'being', 'under', 'the', 'command', 'of', 'the', 'cat']\n\n >>> hyp2 = ['he', 'read', 'the', 'book', 'because', 'he', 'was',\n ... 'interested', 'in', 'world', 'history']\n >>> ref2a = ['he', 'was', 'interested', 'in', 'world', 'history',\n ... 'because', 'he', 'read', 'the', 'book']\n\n >>> list_of_references = [[ref1a], [ref2a]]\n >>> hypotheses = [hyp1, hyp2]\n >>> google_bleu = datasets.load_metric(\"google_bleu\")\n >>> results = google_bleu.compute(predictions=hypotheses, references=list_of_references)\n >>> print(round(results[\"google_bleu\"], 2))\n 0.44\n\n Example 2:\n >>> hyp1 = ['It', 'is', 'a', 'guide', 'to', 'action', 'which',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'always',\n ... 'disobeys', 'the', 'commands', 'of', 'the', 'cat']\n >>> ref1a = ['It', 'is', 'the', 'guiding', 'principle', 'which',\n ... 'guarantees', 'the', 'rubber', 'duck', 'forces', 'never',\n ... 'being', 'under', 'the', 'command', 'of', 'the', 'cat']\n >>> ref1b = ['It', 'is', 'a', 'guide', 'to', 'action', 'that',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'will', 'never',\n ... 'heed', 'the', 'cat', 'commands']\n >>> ref1c = ['It', 'is', 'the', 'practical', 'guide', 'for', 'the',\n ... 'rubber', 'duck', 'army', 'never', 'to', 'heed', 'the', 'directions',\n ... 'of', 'the', 'cat']\n\n >>> hyp2 = ['he', 'read', 'the', 'book', 'because', 'he', 'was',\n ... 'interested', 'in', 'world', 'history']\n >>> ref2a = ['he', 'was', 'interested', 'in', 'world', 'history',\n ... 'because', 'he', 'read', 'the', 'book']\n\n >>> list_of_references = [[ref1a, ref1b, ref1c], [ref2a]]\n >>> hypotheses = [hyp1, hyp2]\n >>> google_bleu = datasets.load_metric(\"google_bleu\")\n >>> results = google_bleu.compute(predictions=hypotheses, references=list_of_references)\n >>> print(round(results[\"google_bleu\"], 2))\n 0.61\n\n Example 3:\n >>> hyp1 = ['It', 'is', 'a', 'guide', 'to', 'action', 'which',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'always',\n ... 'disobeys', 'the', 'commands', 'of', 'the', 'cat']\n >>> ref1a = ['It', 'is', 'the', 'guiding', 'principle', 'which',\n ... 'guarantees', 'the', 'rubber', 'duck', 'forces', 'never',\n ... 'being', 'under', 'the', 'command', 'of', 'the', 'cat']\n >>> ref1b = ['It', 'is', 'a', 'guide', 'to', 'action', 'that',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'will', 'never',\n ... 'heed', 'the', 'cat', 'commands']\n >>> ref1c = ['It', 'is', 'the', 'practical', 'guide', 'for', 'the',\n ... 'rubber', 'duck', 'army', 'never', 'to', 'heed', 'the', 'directions',\n ... 'of', 'the', 'cat']\n\n >>> hyp2 = ['he', 'read', 'the', 'book', 'because', 'he', 'was',\n ... 'interested', 'in', 'world', 'history']\n >>> ref2a = ['he', 'was', 'interested', 'in', 'world', 'history',\n ... 'because', 'he', 'read', 'the', 'book']\n\n >>> list_of_references = [[ref1a, ref1b, ref1c], [ref2a]]\n >>> hypotheses = [hyp1, hyp2]\n >>> google_bleu = datasets.load_metric(\"google_bleu\")\n >>> results = google_bleu.compute(predictions=hypotheses, references=list_of_references, min_len=2)\n >>> print(round(results[\"google_bleu\"], 2))\n 0.53\n\n Example 4:\n >>> hyp1 = ['It', 'is', 'a', 'guide', 'to', 'action', 'which',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'always',\n ... 'disobeys', 'the', 'commands', 'of', 'the', 'cat']\n >>> ref1a = ['It', 'is', 'the', 'guiding', 'principle', 'which',\n ... 'guarantees', 'the', 'rubber', 'duck', 'forces', 'never',\n ... 'being', 'under', 'the', 'command', 'of', 'the', 'cat']\n >>> ref1b = ['It', 'is', 'a', 'guide', 'to', 'action', 'that',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'will', 'never',\n ... 'heed', 'the', 'cat', 'commands']\n >>> ref1c = ['It', 'is', 'the', 'practical', 'guide', 'for', 'the',\n ... 'rubber', 'duck', 'army', 'never', 'to', 'heed', 'the', 'directions',\n ... 'of', 'the', 'cat']\n\n >>> hyp2 = ['he', 'read', 'the', 'book', 'because', 'he', 'was',\n ... 'interested', 'in', 'world', 'history']\n >>> ref2a = ['he', 'was', 'interested', 'in', 'world', 'history',\n ... 'because', 'he', 'read', 'the', 'book']\n\n >>> list_of_references = [[ref1a, ref1b, ref1c], [ref2a]]\n >>> hypotheses = [hyp1, hyp2]\n >>> google_bleu = datasets.load_metric(\"google_bleu\")\n >>> results = google_bleu.compute(predictions=hypotheses,references=list_of_references, min_len=2, max_len=6)\n >>> print(round(results[\"google_bleu\"], 2))\n 0.4\n"
@datasets.utils.file_utils.add_start_docstrings(_DESCRIPTION , _KWARGS_DESCRIPTION )
class snake_case__ ( datasets.Metric ):
"""simple docstring"""
def lowercase_ ( self : str ) ->MetricInfo:
return datasets.MetricInfo(
description=_DESCRIPTION, citation=_CITATION, inputs_description=_KWARGS_DESCRIPTION, features=datasets.Features(
{
'predictions': datasets.Sequence(datasets.Value('string', id='token' ), id='sequence' ),
'references': datasets.Sequence(
datasets.Sequence(datasets.Value('string', id='token' ), id='sequence' ), id='references' ),
} ), )
def lowercase_ ( self : str, _snake_case : List[List[List[str]]], _snake_case : List[List[str]], _snake_case : int = 1, _snake_case : int = 4, ) ->Dict[str, float]:
return {
"google_bleu": gleu_score.corpus_gleu(
list_of_references=_snake_case, hypotheses=_snake_case, min_len=_snake_case, max_len=_snake_case )
}
| 277 | 1 |
import collections
import inspect
import unittest
from transformers import SwinvaConfig
from transformers.testing_utils import require_torch, require_vision, slow, torch_device
from transformers.utils import cached_property, is_torch_available, is_vision_available
from ...test_configuration_common import ConfigTester
from ...test_modeling_common import ModelTesterMixin, _config_zero_init, floats_tensor, ids_tensor
from ...test_pipeline_mixin import PipelineTesterMixin
if is_torch_available():
import torch
from torch import nn
from transformers import SwinvaForImageClassification, SwinvaForMaskedImageModeling, SwinvaModel
from transformers.models.swinva.modeling_swinva import SWINV2_PRETRAINED_MODEL_ARCHIVE_LIST
if is_vision_available():
from PIL import Image
from transformers import AutoImageProcessor
class snake_case__ :
"""simple docstring"""
def __init__( self : Tuple, _snake_case : Any, _snake_case : int=1_3, _snake_case : Optional[int]=3_2, _snake_case : Tuple=2, _snake_case : Any=3, _snake_case : Tuple=1_6, _snake_case : Tuple=[1, 2, 1], _snake_case : Dict=[2, 2, 4], _snake_case : str=2, _snake_case : Union[str, Any]=2.0, _snake_case : Dict=True, _snake_case : Dict=0.0, _snake_case : str=0.0, _snake_case : str=0.1, _snake_case : List[str]="gelu", _snake_case : int=False, _snake_case : Optional[Any]=True, _snake_case : List[Any]=0.0_2, _snake_case : Union[str, Any]=1e-5, _snake_case : Union[str, Any]=True, _snake_case : List[Any]=None, _snake_case : Any=True, _snake_case : List[Any]=1_0, _snake_case : str=8, ) ->Union[str, Any]:
snake_case__ : Any = parent
snake_case__ : Tuple = batch_size
snake_case__ : Tuple = image_size
snake_case__ : Any = patch_size
snake_case__ : Optional[int] = num_channels
snake_case__ : Tuple = embed_dim
snake_case__ : Any = depths
snake_case__ : Any = num_heads
snake_case__ : List[str] = window_size
snake_case__ : Dict = mlp_ratio
snake_case__ : Optional[int] = qkv_bias
snake_case__ : Optional[Any] = hidden_dropout_prob
snake_case__ : List[str] = attention_probs_dropout_prob
snake_case__ : Union[str, Any] = drop_path_rate
snake_case__ : str = hidden_act
snake_case__ : Union[str, Any] = use_absolute_embeddings
snake_case__ : Union[str, Any] = patch_norm
snake_case__ : Any = layer_norm_eps
snake_case__ : Tuple = initializer_range
snake_case__ : Dict = is_training
snake_case__ : Any = scope
snake_case__ : Optional[Any] = use_labels
snake_case__ : str = type_sequence_label_size
snake_case__ : List[Any] = encoder_stride
def lowercase_ ( self : Tuple ) ->str:
snake_case__ : Tuple = floats_tensor([self.batch_size, self.num_channels, self.image_size, self.image_size] )
snake_case__ : List[Any] = None
if self.use_labels:
snake_case__ : Optional[Any] = ids_tensor([self.batch_size], self.type_sequence_label_size )
snake_case__ : Any = self.get_config()
return config, pixel_values, labels
def lowercase_ ( self : Optional[int] ) ->Optional[int]:
return SwinvaConfig(
image_size=self.image_size, patch_size=self.patch_size, num_channels=self.num_channels, embed_dim=self.embed_dim, depths=self.depths, num_heads=self.num_heads, window_size=self.window_size, mlp_ratio=self.mlp_ratio, qkv_bias=self.qkv_bias, hidden_dropout_prob=self.hidden_dropout_prob, attention_probs_dropout_prob=self.attention_probs_dropout_prob, drop_path_rate=self.drop_path_rate, hidden_act=self.hidden_act, use_absolute_embeddings=self.use_absolute_embeddings, path_norm=self.patch_norm, layer_norm_eps=self.layer_norm_eps, initializer_range=self.initializer_range, encoder_stride=self.encoder_stride, )
def lowercase_ ( self : Optional[int], _snake_case : str, _snake_case : List[str], _snake_case : int ) ->Dict:
snake_case__ : List[Any] = SwinvaModel(config=_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Optional[int] = model(_snake_case )
snake_case__ : List[Any] = ((config.image_size // config.patch_size) ** 2) // (4 ** (len(config.depths ) - 1))
snake_case__ : List[Any] = int(config.embed_dim * 2 ** (len(config.depths ) - 1) )
self.parent.assertEqual(result.last_hidden_state.shape, (self.batch_size, expected_seq_len, expected_dim) )
def lowercase_ ( self : Optional[Any], _snake_case : Any, _snake_case : List[str], _snake_case : Dict ) ->List[Any]:
snake_case__ : List[str] = SwinvaForMaskedImageModeling(config=_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Union[str, Any] = model(_snake_case )
self.parent.assertEqual(
result.logits.shape, (self.batch_size, self.num_channels, self.image_size, self.image_size) )
# test greyscale images
snake_case__ : Optional[Any] = 1
snake_case__ : Optional[int] = SwinvaForMaskedImageModeling(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Tuple = floats_tensor([self.batch_size, 1, self.image_size, self.image_size] )
snake_case__ : Any = model(_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, 1, self.image_size, self.image_size) )
def lowercase_ ( self : List[str], _snake_case : int, _snake_case : List[Any], _snake_case : Optional[int] ) ->Any:
snake_case__ : Tuple = self.type_sequence_label_size
snake_case__ : int = SwinvaForImageClassification(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Tuple = model(_snake_case, labels=_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.type_sequence_label_size) )
def lowercase_ ( self : Any ) ->Dict:
snake_case__ : str = self.prepare_config_and_inputs()
snake_case__ , snake_case__ , snake_case__ : List[str] = config_and_inputs
snake_case__ : Union[str, Any] = {'pixel_values': pixel_values}
return config, inputs_dict
@require_torch
class snake_case__ ( lowerCAmelCase_ , lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = (
(SwinvaModel, SwinvaForImageClassification, SwinvaForMaskedImageModeling) if is_torch_available() else ()
)
_SCREAMING_SNAKE_CASE = (
{"""feature-extraction""": SwinvaModel, """image-classification""": SwinvaForImageClassification}
if is_torch_available()
else {}
)
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
def lowercase_ ( self : Union[str, Any] ) ->Dict:
snake_case__ : Optional[int] = SwinvaModelTester(self )
snake_case__ : int = ConfigTester(self, config_class=_snake_case, embed_dim=3_7 )
def lowercase_ ( self : Tuple ) ->int:
self.config_tester.create_and_test_config_to_json_string()
self.config_tester.create_and_test_config_to_json_file()
self.config_tester.create_and_test_config_from_and_save_pretrained()
self.config_tester.create_and_test_config_with_num_labels()
self.config_tester.check_config_can_be_init_without_params()
self.config_tester.check_config_arguments_init()
def lowercase_ ( self : Any ) ->str:
snake_case__ : int = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_model(*_snake_case )
@unittest.skip(reason='Got `CUDA error: misaligned address` with PyTorch 2.0.0.' )
def lowercase_ ( self : Any ) ->Union[str, Any]:
pass
@unittest.skip(reason='Swinv2 does not use inputs_embeds' )
def lowercase_ ( self : str ) ->Union[str, Any]:
pass
def lowercase_ ( self : Optional[Any] ) ->Union[str, Any]:
snake_case__ , snake_case__ : Optional[int] = self.model_tester.prepare_config_and_inputs_for_common()
for model_class in self.all_model_classes:
snake_case__ : Union[str, Any] = model_class(_snake_case )
self.assertIsInstance(model.get_input_embeddings(), (nn.Module) )
snake_case__ : Union[str, Any] = model.get_output_embeddings()
self.assertTrue(x is None or isinstance(_snake_case, nn.Linear ) )
def lowercase_ ( self : List[str] ) ->Optional[int]:
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
for model_class in self.all_model_classes:
snake_case__ : Any = model_class(_snake_case )
snake_case__ : Dict = inspect.signature(model.forward )
# signature.parameters is an OrderedDict => so arg_names order is deterministic
snake_case__ : Optional[Any] = [*signature.parameters.keys()]
snake_case__ : List[Any] = ['pixel_values']
self.assertListEqual(arg_names[:1], _snake_case )
def lowercase_ ( self : str ) ->Union[str, Any]:
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : int = True
for model_class in self.all_model_classes:
snake_case__ : str = True
snake_case__ : Union[str, Any] = False
snake_case__ : Tuple = True
snake_case__ : int = model_class(_snake_case )
model.to(_snake_case )
model.eval()
with torch.no_grad():
snake_case__ : Optional[int] = model(**self._prepare_for_class(_snake_case, _snake_case ) )
snake_case__ : List[str] = outputs.attentions
snake_case__ : List[Any] = len(self.model_tester.depths )
self.assertEqual(len(_snake_case ), _snake_case )
# check that output_attentions also work using config
del inputs_dict["output_attentions"]
snake_case__ : str = True
snake_case__ : Tuple = config.window_size**2
snake_case__ : Optional[int] = model_class(_snake_case )
model.to(_snake_case )
model.eval()
with torch.no_grad():
snake_case__ : str = model(**self._prepare_for_class(_snake_case, _snake_case ) )
snake_case__ : Tuple = outputs.attentions
self.assertEqual(len(_snake_case ), _snake_case )
self.assertListEqual(
list(attentions[0].shape[-3:] ), [self.model_tester.num_heads[0], window_size_squared, window_size_squared], )
snake_case__ : Optional[Any] = len(_snake_case )
# Check attention is always last and order is fine
snake_case__ : Optional[int] = True
snake_case__ : Dict = True
snake_case__ : List[Any] = model_class(_snake_case )
model.to(_snake_case )
model.eval()
with torch.no_grad():
snake_case__ : Optional[int] = model(**self._prepare_for_class(_snake_case, _snake_case ) )
if hasattr(self.model_tester, 'num_hidden_states_types' ):
snake_case__ : str = self.model_tester.num_hidden_states_types
else:
# also another +1 for reshaped_hidden_states
snake_case__ : Dict = 2
self.assertEqual(out_len + added_hidden_states, len(_snake_case ) )
snake_case__ : Any = outputs.attentions
self.assertEqual(len(_snake_case ), _snake_case )
self.assertListEqual(
list(self_attentions[0].shape[-3:] ), [self.model_tester.num_heads[0], window_size_squared, window_size_squared], )
def lowercase_ ( self : Dict, _snake_case : Tuple, _snake_case : Any, _snake_case : int, _snake_case : Optional[int] ) ->str:
snake_case__ : Dict = model_class(_snake_case )
model.to(_snake_case )
model.eval()
with torch.no_grad():
snake_case__ : List[Any] = model(**self._prepare_for_class(_snake_case, _snake_case ) )
snake_case__ : Dict = outputs.hidden_states
snake_case__ : int = getattr(
self.model_tester, 'expected_num_hidden_layers', len(self.model_tester.depths ) + 1 )
self.assertEqual(len(_snake_case ), _snake_case )
# Swinv2 has a different seq_length
snake_case__ : int = (
config.patch_size
if isinstance(config.patch_size, collections.abc.Iterable )
else (config.patch_size, config.patch_size)
)
snake_case__ : Optional[Any] = (image_size[1] // patch_size[1]) * (image_size[0] // patch_size[0])
self.assertListEqual(
list(hidden_states[0].shape[-2:] ), [num_patches, self.model_tester.embed_dim], )
snake_case__ : Union[str, Any] = outputs.reshaped_hidden_states
self.assertEqual(len(_snake_case ), _snake_case )
snake_case__ , snake_case__ , snake_case__ , snake_case__ : str = reshaped_hidden_states[0].shape
snake_case__ : Any = (
reshaped_hidden_states[0].view(_snake_case, _snake_case, height * width ).permute(0, 2, 1 )
)
self.assertListEqual(
list(reshaped_hidden_states.shape[-2:] ), [num_patches, self.model_tester.embed_dim], )
def lowercase_ ( self : str ) ->List[Any]:
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : List[Any] = (
self.model_tester.image_size
if isinstance(self.model_tester.image_size, collections.abc.Iterable )
else (self.model_tester.image_size, self.model_tester.image_size)
)
for model_class in self.all_model_classes:
snake_case__ : Optional[int] = True
self.check_hidden_states_output(_snake_case, _snake_case, _snake_case, _snake_case )
# check that output_hidden_states also work using config
del inputs_dict["output_hidden_states"]
snake_case__ : Dict = True
self.check_hidden_states_output(_snake_case, _snake_case, _snake_case, _snake_case )
def lowercase_ ( self : List[str] ) ->str:
snake_case__ , snake_case__ : Optional[Any] = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : List[str] = 3
snake_case__ : Union[str, Any] = (
self.model_tester.image_size
if isinstance(self.model_tester.image_size, collections.abc.Iterable )
else (self.model_tester.image_size, self.model_tester.image_size)
)
snake_case__ : str = (
config.patch_size
if isinstance(config.patch_size, collections.abc.Iterable )
else (config.patch_size, config.patch_size)
)
snake_case__ : Tuple = image_size[0] + patch_size[0] - (image_size[0] % patch_size[0])
snake_case__ : Optional[Any] = image_size[1] + patch_size[1] - (image_size[1] % patch_size[1])
for model_class in self.all_model_classes:
snake_case__ : int = True
self.check_hidden_states_output(_snake_case, _snake_case, _snake_case, (padded_height, padded_width) )
# check that output_hidden_states also work using config
del inputs_dict["output_hidden_states"]
snake_case__ : List[str] = True
self.check_hidden_states_output(_snake_case, _snake_case, _snake_case, (padded_height, padded_width) )
def lowercase_ ( self : List[str] ) ->Optional[int]:
snake_case__ : Any = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_masked_image_modeling(*_snake_case )
def lowercase_ ( self : List[Any] ) ->str:
snake_case__ : Any = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_image_classification(*_snake_case )
@slow
def lowercase_ ( self : str ) ->Union[str, Any]:
for model_name in SWINV2_PRETRAINED_MODEL_ARCHIVE_LIST[:1]:
snake_case__ : Dict = SwinvaModel.from_pretrained(_snake_case )
self.assertIsNotNone(_snake_case )
def lowercase_ ( self : Optional[int] ) ->List[str]:
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : List[Any] = _config_zero_init(_snake_case )
for model_class in self.all_model_classes:
snake_case__ : List[str] = model_class(config=_snake_case )
for name, param in model.named_parameters():
if "embeddings" not in name and "logit_scale" not in name and param.requires_grad:
self.assertIn(
((param.data.mean() * 1e9).round() / 1e9).item(), [0.0, 1.0], msg=F'''Parameter {name} of model {model_class} seems not properly initialized''', )
@require_vision
@require_torch
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
@cached_property
def lowercase_ ( self : Union[str, Any] ) ->List[str]:
return (
AutoImageProcessor.from_pretrained('microsoft/swinv2-tiny-patch4-window8-256' )
if is_vision_available()
else None
)
@slow
def lowercase_ ( self : int ) ->List[Any]:
snake_case__ : Any = SwinvaForImageClassification.from_pretrained('microsoft/swinv2-tiny-patch4-window8-256' ).to(
_snake_case )
snake_case__ : int = self.default_image_processor
snake_case__ : Union[str, Any] = Image.open('./tests/fixtures/tests_samples/COCO/000000039769.png' )
snake_case__ : Optional[Any] = image_processor(images=_snake_case, return_tensors='pt' ).to(_snake_case )
# forward pass
with torch.no_grad():
snake_case__ : List[str] = model(**_snake_case )
# verify the logits
snake_case__ : int = torch.Size((1, 1_0_0_0) )
self.assertEqual(outputs.logits.shape, _snake_case )
snake_case__ : Optional[int] = torch.tensor([-0.3_9_4_7, -0.4_3_0_6, 0.0_0_2_6] ).to(_snake_case )
self.assertTrue(torch.allclose(outputs.logits[0, :3], _snake_case, atol=1e-4 ) )
| 277 |
from math import factorial
def lowercase_ (A : int , A : int , A : float ):
if successes > trials:
raise ValueError('successes must be lower or equal to trials' )
if trials < 0 or successes < 0:
raise ValueError('the function is defined for non-negative integers' )
if not isinstance(A , A ) or not isinstance(A , A ):
raise ValueError('the function is defined for non-negative integers' )
if not 0 < prob < 1:
raise ValueError('prob has to be in range of 1 - 0' )
snake_case__ : List[Any] = (prob**successes) * ((1 - prob) ** (trials - successes))
# Calculate the binomial coefficient: n! / k!(n-k)!
snake_case__ : List[str] = float(factorial(A ) )
coefficient /= factorial(A ) * factorial(trials - successes )
return probability * coefficient
if __name__ == "__main__":
from doctest import testmod
testmod()
print("Probability of 2 successes out of 4 trails")
print("with probability of 0.75 is:", end=" ")
print(binomial_distribution(2, 4, 0.75))
| 277 | 1 |
from typing import TYPE_CHECKING
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_tokenizers_available, is_torch_available
a_ :Union[str, Any] = {
"configuration_squeezebert": [
"SQUEEZEBERT_PRETRAINED_CONFIG_ARCHIVE_MAP",
"SqueezeBertConfig",
"SqueezeBertOnnxConfig",
],
"tokenization_squeezebert": ["SqueezeBertTokenizer"],
}
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :Union[str, Any] = ["SqueezeBertTokenizerFast"]
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :List[str] = [
"SQUEEZEBERT_PRETRAINED_MODEL_ARCHIVE_LIST",
"SqueezeBertForMaskedLM",
"SqueezeBertForMultipleChoice",
"SqueezeBertForQuestionAnswering",
"SqueezeBertForSequenceClassification",
"SqueezeBertForTokenClassification",
"SqueezeBertModel",
"SqueezeBertModule",
"SqueezeBertPreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_squeezebert import (
SQUEEZEBERT_PRETRAINED_CONFIG_ARCHIVE_MAP,
SqueezeBertConfig,
SqueezeBertOnnxConfig,
)
from .tokenization_squeezebert import SqueezeBertTokenizer
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_squeezebert_fast import SqueezeBertTokenizerFast
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_squeezebert import (
SQUEEZEBERT_PRETRAINED_MODEL_ARCHIVE_LIST,
SqueezeBertForMaskedLM,
SqueezeBertForMultipleChoice,
SqueezeBertForQuestionAnswering,
SqueezeBertForSequenceClassification,
SqueezeBertForTokenClassification,
SqueezeBertModel,
SqueezeBertModule,
SqueezeBertPreTrainedModel,
)
else:
import sys
a_ :Dict = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 277 |
from collections import UserDict
from typing import Union
import numpy as np
import requests
from ..utils import (
add_end_docstrings,
logging,
)
from .audio_classification import ffmpeg_read
from .base import PIPELINE_INIT_ARGS, Pipeline
a_ :List[Any] = logging.get_logger(__name__)
@add_end_docstrings(lowerCAmelCase_ )
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
def __init__( self : Optional[Any], **_snake_case : str ) ->Dict:
super().__init__(**_snake_case )
if self.framework != "pt":
raise ValueError(F'''The {self.__class__} is only available in PyTorch.''' )
# No specific FOR_XXX available yet
def __call__( self : Union[str, Any], _snake_case : Union[np.ndarray, bytes, str], **_snake_case : Tuple ) ->Dict:
return super().__call__(_snake_case, **_snake_case )
def lowercase_ ( self : Tuple, **_snake_case : Any ) ->Union[str, Any]:
snake_case__ : str = {}
if "candidate_labels" in kwargs:
snake_case__ : str = kwargs['candidate_labels']
if "hypothesis_template" in kwargs:
snake_case__ : str = kwargs['hypothesis_template']
return preprocess_params, {}, {}
def lowercase_ ( self : Dict, _snake_case : str, _snake_case : Optional[int]=None, _snake_case : List[str]="This is a sound of {}." ) ->int:
if isinstance(_snake_case, _snake_case ):
if audio.startswith('http://' ) or audio.startswith('https://' ):
# We need to actually check for a real protocol, otherwise it's impossible to use a local file
# like http_huggingface_co.png
snake_case__ : List[Any] = requests.get(_snake_case ).content
else:
with open(_snake_case, 'rb' ) as f:
snake_case__ : Union[str, Any] = f.read()
if isinstance(_snake_case, _snake_case ):
snake_case__ : List[Any] = ffmpeg_read(_snake_case, self.feature_extractor.sampling_rate )
if not isinstance(_snake_case, np.ndarray ):
raise ValueError('We expect a numpy ndarray as input' )
if len(audio.shape ) != 1:
raise ValueError('We expect a single channel audio input for ZeroShotAudioClassificationPipeline' )
snake_case__ : Tuple = self.feature_extractor(
[audio], sampling_rate=self.feature_extractor.sampling_rate, return_tensors='pt' )
snake_case__ : int = candidate_labels
snake_case__ : int = [hypothesis_template.format(_snake_case ) for x in candidate_labels]
snake_case__ : Optional[int] = self.tokenizer(_snake_case, return_tensors=self.framework, padding=_snake_case )
snake_case__ : List[Any] = [text_inputs]
return inputs
def lowercase_ ( self : Optional[int], _snake_case : Optional[Any] ) ->int:
snake_case__ : Optional[int] = model_inputs.pop('candidate_labels' )
snake_case__ : str = model_inputs.pop('text_inputs' )
if isinstance(text_inputs[0], _snake_case ):
snake_case__ : Optional[Any] = text_inputs[0]
else:
# Batching case.
snake_case__ : int = text_inputs[0][0]
snake_case__ : Any = self.model(**_snake_case, **_snake_case )
snake_case__ : List[Any] = {
'candidate_labels': candidate_labels,
'logits': outputs.logits_per_audio,
}
return model_outputs
def lowercase_ ( self : Union[str, Any], _snake_case : str ) ->List[str]:
snake_case__ : int = model_outputs.pop('candidate_labels' )
snake_case__ : List[Any] = model_outputs['logits'][0]
if self.framework == "pt":
snake_case__ : Tuple = logits.softmax(dim=0 )
snake_case__ : Union[str, Any] = probs.tolist()
else:
raise ValueError('`tf` framework not supported.' )
snake_case__ : Union[str, Any] = [
{'score': score, 'label': candidate_label}
for score, candidate_label in sorted(zip(_snake_case, _snake_case ), key=lambda _snake_case : -x[0] )
]
return result
| 277 | 1 |
from typing import Optional
import pyspark
from .. import Features, NamedSplit
from ..download import DownloadMode
from ..packaged_modules.spark.spark import Spark
from .abc import AbstractDatasetReader
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
def __init__( self : Optional[int], _snake_case : pyspark.sql.DataFrame, _snake_case : Optional[NamedSplit] = None, _snake_case : Optional[Features] = None, _snake_case : bool = True, _snake_case : str = None, _snake_case : bool = False, _snake_case : str = None, _snake_case : bool = True, _snake_case : str = "arrow", **_snake_case : Optional[Any], ) ->Tuple:
super().__init__(
split=_snake_case, features=_snake_case, cache_dir=_snake_case, keep_in_memory=_snake_case, streaming=_snake_case, **_snake_case, )
snake_case__ : int = load_from_cache_file
snake_case__ : Tuple = file_format
snake_case__ : Dict = Spark(
df=_snake_case, features=_snake_case, cache_dir=_snake_case, working_dir=_snake_case, **_snake_case, )
def lowercase_ ( self : Tuple ) ->List[Any]:
if self.streaming:
return self.builder.as_streaming_dataset(split=self.split )
snake_case__ : Dict = None if self._load_from_cache_file else DownloadMode.FORCE_REDOWNLOAD
self.builder.download_and_prepare(
download_mode=_snake_case, file_format=self._file_format, )
return self.builder.as_dataset(split=self.split )
| 277 |
import collections
import inspect
import unittest
from transformers import SwinvaConfig
from transformers.testing_utils import require_torch, require_vision, slow, torch_device
from transformers.utils import cached_property, is_torch_available, is_vision_available
from ...test_configuration_common import ConfigTester
from ...test_modeling_common import ModelTesterMixin, _config_zero_init, floats_tensor, ids_tensor
from ...test_pipeline_mixin import PipelineTesterMixin
if is_torch_available():
import torch
from torch import nn
from transformers import SwinvaForImageClassification, SwinvaForMaskedImageModeling, SwinvaModel
from transformers.models.swinva.modeling_swinva import SWINV2_PRETRAINED_MODEL_ARCHIVE_LIST
if is_vision_available():
from PIL import Image
from transformers import AutoImageProcessor
class snake_case__ :
"""simple docstring"""
def __init__( self : Tuple, _snake_case : Any, _snake_case : int=1_3, _snake_case : Optional[int]=3_2, _snake_case : Tuple=2, _snake_case : Any=3, _snake_case : Tuple=1_6, _snake_case : Tuple=[1, 2, 1], _snake_case : Dict=[2, 2, 4], _snake_case : str=2, _snake_case : Union[str, Any]=2.0, _snake_case : Dict=True, _snake_case : Dict=0.0, _snake_case : str=0.0, _snake_case : str=0.1, _snake_case : List[str]="gelu", _snake_case : int=False, _snake_case : Optional[Any]=True, _snake_case : List[Any]=0.0_2, _snake_case : Union[str, Any]=1e-5, _snake_case : Union[str, Any]=True, _snake_case : List[Any]=None, _snake_case : Any=True, _snake_case : List[Any]=1_0, _snake_case : str=8, ) ->Union[str, Any]:
snake_case__ : Any = parent
snake_case__ : Tuple = batch_size
snake_case__ : Tuple = image_size
snake_case__ : Any = patch_size
snake_case__ : Optional[int] = num_channels
snake_case__ : Tuple = embed_dim
snake_case__ : Any = depths
snake_case__ : Any = num_heads
snake_case__ : List[str] = window_size
snake_case__ : Dict = mlp_ratio
snake_case__ : Optional[int] = qkv_bias
snake_case__ : Optional[Any] = hidden_dropout_prob
snake_case__ : List[str] = attention_probs_dropout_prob
snake_case__ : Union[str, Any] = drop_path_rate
snake_case__ : str = hidden_act
snake_case__ : Union[str, Any] = use_absolute_embeddings
snake_case__ : Union[str, Any] = patch_norm
snake_case__ : Any = layer_norm_eps
snake_case__ : Tuple = initializer_range
snake_case__ : Dict = is_training
snake_case__ : Any = scope
snake_case__ : Optional[Any] = use_labels
snake_case__ : str = type_sequence_label_size
snake_case__ : List[Any] = encoder_stride
def lowercase_ ( self : Tuple ) ->str:
snake_case__ : Tuple = floats_tensor([self.batch_size, self.num_channels, self.image_size, self.image_size] )
snake_case__ : List[Any] = None
if self.use_labels:
snake_case__ : Optional[Any] = ids_tensor([self.batch_size], self.type_sequence_label_size )
snake_case__ : Any = self.get_config()
return config, pixel_values, labels
def lowercase_ ( self : Optional[int] ) ->Optional[int]:
return SwinvaConfig(
image_size=self.image_size, patch_size=self.patch_size, num_channels=self.num_channels, embed_dim=self.embed_dim, depths=self.depths, num_heads=self.num_heads, window_size=self.window_size, mlp_ratio=self.mlp_ratio, qkv_bias=self.qkv_bias, hidden_dropout_prob=self.hidden_dropout_prob, attention_probs_dropout_prob=self.attention_probs_dropout_prob, drop_path_rate=self.drop_path_rate, hidden_act=self.hidden_act, use_absolute_embeddings=self.use_absolute_embeddings, path_norm=self.patch_norm, layer_norm_eps=self.layer_norm_eps, initializer_range=self.initializer_range, encoder_stride=self.encoder_stride, )
def lowercase_ ( self : Optional[int], _snake_case : str, _snake_case : List[str], _snake_case : int ) ->Dict:
snake_case__ : List[Any] = SwinvaModel(config=_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Optional[int] = model(_snake_case )
snake_case__ : List[Any] = ((config.image_size // config.patch_size) ** 2) // (4 ** (len(config.depths ) - 1))
snake_case__ : List[Any] = int(config.embed_dim * 2 ** (len(config.depths ) - 1) )
self.parent.assertEqual(result.last_hidden_state.shape, (self.batch_size, expected_seq_len, expected_dim) )
def lowercase_ ( self : Optional[Any], _snake_case : Any, _snake_case : List[str], _snake_case : Dict ) ->List[Any]:
snake_case__ : List[str] = SwinvaForMaskedImageModeling(config=_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Union[str, Any] = model(_snake_case )
self.parent.assertEqual(
result.logits.shape, (self.batch_size, self.num_channels, self.image_size, self.image_size) )
# test greyscale images
snake_case__ : Optional[Any] = 1
snake_case__ : Optional[int] = SwinvaForMaskedImageModeling(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Tuple = floats_tensor([self.batch_size, 1, self.image_size, self.image_size] )
snake_case__ : Any = model(_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, 1, self.image_size, self.image_size) )
def lowercase_ ( self : List[str], _snake_case : int, _snake_case : List[Any], _snake_case : Optional[int] ) ->Any:
snake_case__ : Tuple = self.type_sequence_label_size
snake_case__ : int = SwinvaForImageClassification(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Tuple = model(_snake_case, labels=_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.type_sequence_label_size) )
def lowercase_ ( self : Any ) ->Dict:
snake_case__ : str = self.prepare_config_and_inputs()
snake_case__ , snake_case__ , snake_case__ : List[str] = config_and_inputs
snake_case__ : Union[str, Any] = {'pixel_values': pixel_values}
return config, inputs_dict
@require_torch
class snake_case__ ( lowerCAmelCase_ , lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = (
(SwinvaModel, SwinvaForImageClassification, SwinvaForMaskedImageModeling) if is_torch_available() else ()
)
_SCREAMING_SNAKE_CASE = (
{"""feature-extraction""": SwinvaModel, """image-classification""": SwinvaForImageClassification}
if is_torch_available()
else {}
)
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
def lowercase_ ( self : Union[str, Any] ) ->Dict:
snake_case__ : Optional[int] = SwinvaModelTester(self )
snake_case__ : int = ConfigTester(self, config_class=_snake_case, embed_dim=3_7 )
def lowercase_ ( self : Tuple ) ->int:
self.config_tester.create_and_test_config_to_json_string()
self.config_tester.create_and_test_config_to_json_file()
self.config_tester.create_and_test_config_from_and_save_pretrained()
self.config_tester.create_and_test_config_with_num_labels()
self.config_tester.check_config_can_be_init_without_params()
self.config_tester.check_config_arguments_init()
def lowercase_ ( self : Any ) ->str:
snake_case__ : int = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_model(*_snake_case )
@unittest.skip(reason='Got `CUDA error: misaligned address` with PyTorch 2.0.0.' )
def lowercase_ ( self : Any ) ->Union[str, Any]:
pass
@unittest.skip(reason='Swinv2 does not use inputs_embeds' )
def lowercase_ ( self : str ) ->Union[str, Any]:
pass
def lowercase_ ( self : Optional[Any] ) ->Union[str, Any]:
snake_case__ , snake_case__ : Optional[int] = self.model_tester.prepare_config_and_inputs_for_common()
for model_class in self.all_model_classes:
snake_case__ : Union[str, Any] = model_class(_snake_case )
self.assertIsInstance(model.get_input_embeddings(), (nn.Module) )
snake_case__ : Union[str, Any] = model.get_output_embeddings()
self.assertTrue(x is None or isinstance(_snake_case, nn.Linear ) )
def lowercase_ ( self : List[str] ) ->Optional[int]:
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
for model_class in self.all_model_classes:
snake_case__ : Any = model_class(_snake_case )
snake_case__ : Dict = inspect.signature(model.forward )
# signature.parameters is an OrderedDict => so arg_names order is deterministic
snake_case__ : Optional[Any] = [*signature.parameters.keys()]
snake_case__ : List[Any] = ['pixel_values']
self.assertListEqual(arg_names[:1], _snake_case )
def lowercase_ ( self : str ) ->Union[str, Any]:
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : int = True
for model_class in self.all_model_classes:
snake_case__ : str = True
snake_case__ : Union[str, Any] = False
snake_case__ : Tuple = True
snake_case__ : int = model_class(_snake_case )
model.to(_snake_case )
model.eval()
with torch.no_grad():
snake_case__ : Optional[int] = model(**self._prepare_for_class(_snake_case, _snake_case ) )
snake_case__ : List[str] = outputs.attentions
snake_case__ : List[Any] = len(self.model_tester.depths )
self.assertEqual(len(_snake_case ), _snake_case )
# check that output_attentions also work using config
del inputs_dict["output_attentions"]
snake_case__ : str = True
snake_case__ : Tuple = config.window_size**2
snake_case__ : Optional[int] = model_class(_snake_case )
model.to(_snake_case )
model.eval()
with torch.no_grad():
snake_case__ : str = model(**self._prepare_for_class(_snake_case, _snake_case ) )
snake_case__ : Tuple = outputs.attentions
self.assertEqual(len(_snake_case ), _snake_case )
self.assertListEqual(
list(attentions[0].shape[-3:] ), [self.model_tester.num_heads[0], window_size_squared, window_size_squared], )
snake_case__ : Optional[Any] = len(_snake_case )
# Check attention is always last and order is fine
snake_case__ : Optional[int] = True
snake_case__ : Dict = True
snake_case__ : List[Any] = model_class(_snake_case )
model.to(_snake_case )
model.eval()
with torch.no_grad():
snake_case__ : Optional[int] = model(**self._prepare_for_class(_snake_case, _snake_case ) )
if hasattr(self.model_tester, 'num_hidden_states_types' ):
snake_case__ : str = self.model_tester.num_hidden_states_types
else:
# also another +1 for reshaped_hidden_states
snake_case__ : Dict = 2
self.assertEqual(out_len + added_hidden_states, len(_snake_case ) )
snake_case__ : Any = outputs.attentions
self.assertEqual(len(_snake_case ), _snake_case )
self.assertListEqual(
list(self_attentions[0].shape[-3:] ), [self.model_tester.num_heads[0], window_size_squared, window_size_squared], )
def lowercase_ ( self : Dict, _snake_case : Tuple, _snake_case : Any, _snake_case : int, _snake_case : Optional[int] ) ->str:
snake_case__ : Dict = model_class(_snake_case )
model.to(_snake_case )
model.eval()
with torch.no_grad():
snake_case__ : List[Any] = model(**self._prepare_for_class(_snake_case, _snake_case ) )
snake_case__ : Dict = outputs.hidden_states
snake_case__ : int = getattr(
self.model_tester, 'expected_num_hidden_layers', len(self.model_tester.depths ) + 1 )
self.assertEqual(len(_snake_case ), _snake_case )
# Swinv2 has a different seq_length
snake_case__ : int = (
config.patch_size
if isinstance(config.patch_size, collections.abc.Iterable )
else (config.patch_size, config.patch_size)
)
snake_case__ : Optional[Any] = (image_size[1] // patch_size[1]) * (image_size[0] // patch_size[0])
self.assertListEqual(
list(hidden_states[0].shape[-2:] ), [num_patches, self.model_tester.embed_dim], )
snake_case__ : Union[str, Any] = outputs.reshaped_hidden_states
self.assertEqual(len(_snake_case ), _snake_case )
snake_case__ , snake_case__ , snake_case__ , snake_case__ : str = reshaped_hidden_states[0].shape
snake_case__ : Any = (
reshaped_hidden_states[0].view(_snake_case, _snake_case, height * width ).permute(0, 2, 1 )
)
self.assertListEqual(
list(reshaped_hidden_states.shape[-2:] ), [num_patches, self.model_tester.embed_dim], )
def lowercase_ ( self : str ) ->List[Any]:
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : List[Any] = (
self.model_tester.image_size
if isinstance(self.model_tester.image_size, collections.abc.Iterable )
else (self.model_tester.image_size, self.model_tester.image_size)
)
for model_class in self.all_model_classes:
snake_case__ : Optional[int] = True
self.check_hidden_states_output(_snake_case, _snake_case, _snake_case, _snake_case )
# check that output_hidden_states also work using config
del inputs_dict["output_hidden_states"]
snake_case__ : Dict = True
self.check_hidden_states_output(_snake_case, _snake_case, _snake_case, _snake_case )
def lowercase_ ( self : List[str] ) ->str:
snake_case__ , snake_case__ : Optional[Any] = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : List[str] = 3
snake_case__ : Union[str, Any] = (
self.model_tester.image_size
if isinstance(self.model_tester.image_size, collections.abc.Iterable )
else (self.model_tester.image_size, self.model_tester.image_size)
)
snake_case__ : str = (
config.patch_size
if isinstance(config.patch_size, collections.abc.Iterable )
else (config.patch_size, config.patch_size)
)
snake_case__ : Tuple = image_size[0] + patch_size[0] - (image_size[0] % patch_size[0])
snake_case__ : Optional[Any] = image_size[1] + patch_size[1] - (image_size[1] % patch_size[1])
for model_class in self.all_model_classes:
snake_case__ : int = True
self.check_hidden_states_output(_snake_case, _snake_case, _snake_case, (padded_height, padded_width) )
# check that output_hidden_states also work using config
del inputs_dict["output_hidden_states"]
snake_case__ : List[str] = True
self.check_hidden_states_output(_snake_case, _snake_case, _snake_case, (padded_height, padded_width) )
def lowercase_ ( self : List[str] ) ->Optional[int]:
snake_case__ : Any = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_masked_image_modeling(*_snake_case )
def lowercase_ ( self : List[Any] ) ->str:
snake_case__ : Any = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_image_classification(*_snake_case )
@slow
def lowercase_ ( self : str ) ->Union[str, Any]:
for model_name in SWINV2_PRETRAINED_MODEL_ARCHIVE_LIST[:1]:
snake_case__ : Dict = SwinvaModel.from_pretrained(_snake_case )
self.assertIsNotNone(_snake_case )
def lowercase_ ( self : Optional[int] ) ->List[str]:
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : List[Any] = _config_zero_init(_snake_case )
for model_class in self.all_model_classes:
snake_case__ : List[str] = model_class(config=_snake_case )
for name, param in model.named_parameters():
if "embeddings" not in name and "logit_scale" not in name and param.requires_grad:
self.assertIn(
((param.data.mean() * 1e9).round() / 1e9).item(), [0.0, 1.0], msg=F'''Parameter {name} of model {model_class} seems not properly initialized''', )
@require_vision
@require_torch
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
@cached_property
def lowercase_ ( self : Union[str, Any] ) ->List[str]:
return (
AutoImageProcessor.from_pretrained('microsoft/swinv2-tiny-patch4-window8-256' )
if is_vision_available()
else None
)
@slow
def lowercase_ ( self : int ) ->List[Any]:
snake_case__ : Any = SwinvaForImageClassification.from_pretrained('microsoft/swinv2-tiny-patch4-window8-256' ).to(
_snake_case )
snake_case__ : int = self.default_image_processor
snake_case__ : Union[str, Any] = Image.open('./tests/fixtures/tests_samples/COCO/000000039769.png' )
snake_case__ : Optional[Any] = image_processor(images=_snake_case, return_tensors='pt' ).to(_snake_case )
# forward pass
with torch.no_grad():
snake_case__ : List[str] = model(**_snake_case )
# verify the logits
snake_case__ : int = torch.Size((1, 1_0_0_0) )
self.assertEqual(outputs.logits.shape, _snake_case )
snake_case__ : Optional[int] = torch.tensor([-0.3_9_4_7, -0.4_3_0_6, 0.0_0_2_6] ).to(_snake_case )
self.assertTrue(torch.allclose(outputs.logits[0, :3], _snake_case, atol=1e-4 ) )
| 277 | 1 |
from __future__ import annotations
from collections import namedtuple
from dataclasses import dataclass
@dataclass
class snake_case__ :
"""simple docstring"""
_SCREAMING_SNAKE_CASE = 42
_SCREAMING_SNAKE_CASE = None
_SCREAMING_SNAKE_CASE = None
a_ :Tuple = namedtuple("CoinsDistribResult", "moves excess")
def lowercase_ (A : TreeNode | None ):
if root is None:
return 0
# Validation
def count_nodes(A : TreeNode | None ) -> int:
if node is None:
return 0
return count_nodes(node.left ) + count_nodes(node.right ) + 1
def count_coins(A : TreeNode | None ) -> int:
if node is None:
return 0
return count_coins(node.left ) + count_coins(node.right ) + node.data
if count_nodes(A ) != count_coins(A ):
raise ValueError('The nodes number should be same as the number of coins' )
# Main calculation
def get_distrib(A : TreeNode | None ) -> CoinsDistribResult:
if node is None:
return CoinsDistribResult(0 , 1 )
snake_case__ , snake_case__ : Tuple = get_distrib(node.left )
snake_case__ , snake_case__ : Any = get_distrib(node.right )
snake_case__ : Union[str, Any] = 1 - left_distrib_excess
snake_case__ : Dict = 1 - right_distrib_excess
snake_case__ : Tuple = (
left_distrib_moves
+ right_distrib_moves
+ abs(A )
+ abs(A )
)
snake_case__ : Dict = node.data - coins_to_left - coins_to_right
return CoinsDistribResult(A , A )
return get_distrib(A )[0]
if __name__ == "__main__":
import doctest
doctest.testmod()
| 277 |
import unittest
import numpy as np
from transformers.testing_utils import require_torch, require_vision
from transformers.utils import is_torch_available, is_vision_available
from ...test_image_processing_common import ImageProcessingSavingTestMixin, prepare_image_inputs
if is_torch_available():
import torch
if is_vision_available():
from PIL import Image
from transformers import PoolFormerImageProcessor
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
def __init__( self : Optional[int], _snake_case : List[Any], _snake_case : str=7, _snake_case : Tuple=3, _snake_case : List[str]=3_0, _snake_case : Tuple=4_0_0, _snake_case : Any=True, _snake_case : List[Any]=None, _snake_case : int=0.9, _snake_case : Optional[Any]=None, _snake_case : str=True, _snake_case : Union[str, Any]=[0.5, 0.5, 0.5], _snake_case : Union[str, Any]=[0.5, 0.5, 0.5], ) ->List[Any]:
snake_case__ : int = size if size is not None else {'shortest_edge': 3_0}
snake_case__ : Tuple = crop_size if crop_size is not None else {'height': 3_0, 'width': 3_0}
snake_case__ : Union[str, Any] = parent
snake_case__ : Dict = batch_size
snake_case__ : int = num_channels
snake_case__ : Tuple = min_resolution
snake_case__ : Any = max_resolution
snake_case__ : List[Any] = do_resize_and_center_crop
snake_case__ : str = size
snake_case__ : str = crop_pct
snake_case__ : List[str] = crop_size
snake_case__ : Optional[int] = do_normalize
snake_case__ : Tuple = image_mean
snake_case__ : Tuple = image_std
def lowercase_ ( self : Optional[int] ) ->int:
return {
"size": self.size,
"do_resize_and_center_crop": self.do_resize_and_center_crop,
"crop_pct": self.crop_pct,
"crop_size": self.crop_size,
"do_normalize": self.do_normalize,
"image_mean": self.image_mean,
"image_std": self.image_std,
}
@require_torch
@require_vision
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = PoolFormerImageProcessor if is_vision_available() else None
def lowercase_ ( self : Union[str, Any] ) ->Dict:
snake_case__ : Union[str, Any] = PoolFormerImageProcessingTester(self )
@property
def lowercase_ ( self : int ) ->Dict:
return self.image_processor_tester.prepare_image_processor_dict()
def lowercase_ ( self : Union[str, Any] ) ->Optional[int]:
snake_case__ : List[str] = self.image_processing_class(**self.image_processor_dict )
self.assertTrue(hasattr(_snake_case, 'do_resize_and_center_crop' ) )
self.assertTrue(hasattr(_snake_case, 'size' ) )
self.assertTrue(hasattr(_snake_case, 'crop_pct' ) )
self.assertTrue(hasattr(_snake_case, 'do_normalize' ) )
self.assertTrue(hasattr(_snake_case, 'image_mean' ) )
self.assertTrue(hasattr(_snake_case, 'image_std' ) )
def lowercase_ ( self : List[str] ) ->List[str]:
snake_case__ : Union[str, Any] = self.image_processing_class.from_dict(self.image_processor_dict )
self.assertEqual(image_processor.size, {'shortest_edge': 3_0} )
self.assertEqual(image_processor.crop_size, {'height': 3_0, 'width': 3_0} )
snake_case__ : int = self.image_processing_class.from_dict(self.image_processor_dict, size=4_2, crop_size=8_4 )
self.assertEqual(image_processor.size, {'shortest_edge': 4_2} )
self.assertEqual(image_processor.crop_size, {'height': 8_4, 'width': 8_4} )
def lowercase_ ( self : List[Any] ) ->List[Any]:
pass
def lowercase_ ( self : List[str] ) ->str:
# Initialize image_processing
snake_case__ : Union[str, Any] = self.image_processing_class(**self.image_processor_dict )
# create random PIL images
snake_case__ : List[str] = prepare_image_inputs(self.image_processor_tester, equal_resolution=_snake_case )
for image in image_inputs:
self.assertIsInstance(_snake_case, Image.Image )
# Test not batched input
snake_case__ : Optional[int] = image_processing(image_inputs[0], return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
# Test batched
snake_case__ : str = image_processing(_snake_case, return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
def lowercase_ ( self : int ) ->List[Any]:
# Initialize image_processing
snake_case__ : Optional[int] = self.image_processing_class(**self.image_processor_dict )
# create random numpy tensors
snake_case__ : Dict = prepare_image_inputs(self.image_processor_tester, equal_resolution=_snake_case, numpify=_snake_case )
for image in image_inputs:
self.assertIsInstance(_snake_case, np.ndarray )
# Test not batched input
snake_case__ : Dict = image_processing(image_inputs[0], return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
# Test batched
snake_case__ : List[Any] = image_processing(_snake_case, return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
def lowercase_ ( self : List[str] ) ->List[str]:
# Initialize image_processing
snake_case__ : Tuple = self.image_processing_class(**self.image_processor_dict )
# create random PyTorch tensors
snake_case__ : List[str] = prepare_image_inputs(self.image_processor_tester, equal_resolution=_snake_case, torchify=_snake_case )
for image in image_inputs:
self.assertIsInstance(_snake_case, torch.Tensor )
# Test not batched input
snake_case__ : Tuple = image_processing(image_inputs[0], return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
# Test batched
snake_case__ : Optional[Any] = image_processing(_snake_case, return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
| 277 | 1 |
import socket
def lowercase_ ():
snake_case__ : Optional[Any] = socket.socket(socket.AF_INET , socket.SOCK_STREAM )
snake_case__ : Dict = socket.gethostname()
snake_case__ : List[str] = 1_2_3_1_2
sock.connect((host, port) )
sock.send(b'Hello server!' )
with open('Received_file' , 'wb' ) as out_file:
print('File opened' )
print('Receiving data...' )
while True:
snake_case__ : Tuple = sock.recv(1_0_2_4 )
if not data:
break
out_file.write(A )
print('Successfully received the file' )
sock.close()
print('Connection closed' )
if __name__ == "__main__":
main()
| 277 |
from collections import deque
from .hash_table import HashTable
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
def __init__( self : Optional[Any], *_snake_case : Optional[Any], **_snake_case : List[Any] ) ->Optional[int]:
super().__init__(*_snake_case, **_snake_case )
def lowercase_ ( self : Optional[Any], _snake_case : Tuple, _snake_case : Dict ) ->Dict:
snake_case__ : int = deque([] ) if self.values[key] is None else self.values[key]
self.values[key].appendleft(_snake_case )
snake_case__ : Dict = self.values[key]
def lowercase_ ( self : Any ) ->Optional[Any]:
return (
sum(self.charge_factor - len(_snake_case ) for slot in self.values )
/ self.size_table
* self.charge_factor
)
def lowercase_ ( self : Union[str, Any], _snake_case : str, _snake_case : Optional[int]=None ) ->Optional[Any]:
if not (
len(self.values[key] ) == self.charge_factor and self.values.count(_snake_case ) == 0
):
return key
return super()._collision_resolution(_snake_case, _snake_case )
| 277 | 1 |
import numpy as np
# Importing the Keras libraries and packages
import tensorflow as tf
from tensorflow.keras import layers, models
if __name__ == "__main__":
# Initialising the CNN
# (Sequential- Building the model layer by layer)
a_ :Optional[Any] = models.Sequential()
# Step 1 - Convolution
# Here 64,64 is the length & breadth of dataset images and 3 is for the RGB channel
# (3,3) is the kernel size (filter matrix)
classifier.add(
layers.ConvaD(32, (3, 3), input_shape=(64, 64, 3), activation="relu")
)
# Step 2 - Pooling
classifier.add(layers.MaxPoolingaD(pool_size=(2, 2)))
# Adding a second convolutional layer
classifier.add(layers.ConvaD(32, (3, 3), activation="relu"))
classifier.add(layers.MaxPoolingaD(pool_size=(2, 2)))
# Step 3 - Flattening
classifier.add(layers.Flatten())
# Step 4 - Full connection
classifier.add(layers.Dense(units=128, activation="relu"))
classifier.add(layers.Dense(units=1, activation="sigmoid"))
# Compiling the CNN
classifier.compile(
optimizer="adam", loss="binary_crossentropy", metrics=["accuracy"]
)
# Part 2 - Fitting the CNN to the images
# Load Trained model weights
# from keras.models import load_model
# regressor=load_model('cnn.h5')
a_ :List[str] = tf.keras.preprocessing.image.ImageDataGenerator(
rescale=1.0 / 255, shear_range=0.2, zoom_range=0.2, horizontal_flip=True
)
a_ :Union[str, Any] = tf.keras.preprocessing.image.ImageDataGenerator(rescale=1.0 / 255)
a_ :Optional[int] = train_datagen.flow_from_directory(
"dataset/training_set", target_size=(64, 64), batch_size=32, class_mode="binary"
)
a_ :str = test_datagen.flow_from_directory(
"dataset/test_set", target_size=(64, 64), batch_size=32, class_mode="binary"
)
classifier.fit_generator(
training_set, steps_per_epoch=5, epochs=30, validation_data=test_set
)
classifier.save("cnn.h5")
# Part 3 - Making new predictions
a_ :List[Any] = tf.keras.preprocessing.image.load_img(
"dataset/single_prediction/image.png", target_size=(64, 64)
)
a_ :List[str] = tf.keras.preprocessing.image.img_to_array(test_image)
a_ :str = np.expand_dims(test_image, axis=0)
a_ :Union[str, Any] = classifier.predict(test_image)
# training_set.class_indices
if result[0][0] == 0:
a_ :Optional[int] = "Normal"
if result[0][0] == 1:
a_ :List[Any] = "Abnormality detected"
| 277 |
def lowercase_ (A : Union[str, Any] , A : List[str] , A : int , A : Optional[int] ):
global f # a global dp table for knapsack
if f[i][j] < 0:
if j < wt[i - 1]:
snake_case__ : Union[str, Any] = mf_knapsack(i - 1 , A , A , A )
else:
snake_case__ : Any = max(
mf_knapsack(i - 1 , A , A , A ) , mf_knapsack(i - 1 , A , A , j - wt[i - 1] ) + val[i - 1] , )
snake_case__ : Optional[int] = val
return f[i][j]
def lowercase_ (A : Optional[int] , A : Union[str, Any] , A : str , A : Dict ):
snake_case__ : int = [[0] * (w + 1) for _ in range(n + 1 )]
for i in range(1 , n + 1 ):
for w_ in range(1 , w + 1 ):
if wt[i - 1] <= w_:
snake_case__ : Union[str, Any] = max(val[i - 1] + dp[i - 1][w_ - wt[i - 1]] , dp[i - 1][w_] )
else:
snake_case__ : str = dp[i - 1][w_]
return dp[n][w_], dp
def lowercase_ (A : int , A : list , A : list ):
if not (isinstance(A , (list, tuple) ) and isinstance(A , (list, tuple) )):
raise ValueError(
'Both the weights and values vectors must be either lists or tuples' )
snake_case__ : Dict = len(A )
if num_items != len(A ):
snake_case__ : str = (
'The number of weights must be the same as the number of values.\n'
F'''But got {num_items} weights and {len(A )} values'''
)
raise ValueError(A )
for i in range(A ):
if not isinstance(wt[i] , A ):
snake_case__ : Optional[int] = (
'All weights must be integers but got weight of '
F'''type {type(wt[i] )} at index {i}'''
)
raise TypeError(A )
snake_case__ , snake_case__ : Optional[int] = knapsack(A , A , A , A )
snake_case__ : set = set()
_construct_solution(A , A , A , A , A )
return optimal_val, example_optional_set
def lowercase_ (A : list , A : list , A : int , A : int , A : set ):
# for the current item i at a maximum weight j to be part of an optimal subset,
# the optimal value at (i, j) must be greater than the optimal value at (i-1, j).
# where i - 1 means considering only the previous items at the given maximum weight
if i > 0 and j > 0:
if dp[i - 1][j] == dp[i][j]:
_construct_solution(A , A , i - 1 , A , A )
else:
optimal_set.add(A )
_construct_solution(A , A , i - 1 , j - wt[i - 1] , A )
if __name__ == "__main__":
a_ :Any = [3, 2, 4, 4]
a_ :List[Any] = [4, 3, 2, 3]
a_ :Union[str, Any] = 4
a_ :List[str] = 6
a_ :Union[str, Any] = [[0] * (w + 1)] + [[0] + [-1] * (w + 1) for _ in range(n + 1)]
a_ , a_ :List[Any] = knapsack(w, wt, val, n)
print(optimal_solution)
print(mf_knapsack(n, wt, val, w)) # switched the n and w
# testing the dynamic programming problem with example
# the optimal subset for the above example are items 3 and 4
a_ , a_ :Any = knapsack_with_example_solution(w, wt, val)
assert optimal_solution == 8
assert optimal_subset == {3, 4}
print("optimal_value = ", optimal_solution)
print("An optimal subset corresponding to the optimal value", optimal_subset)
| 277 | 1 |
from collections import OrderedDict
from typing import Mapping
from ...configuration_utils import PretrainedConfig
from ...onnx import OnnxConfig
from ...utils import logging
a_ :str = logging.get_logger(__name__)
a_ :Dict = {
"facebook/data2vec-text-base": "https://huggingface.co/data2vec/resolve/main/config.json",
}
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = """data2vec-text"""
def __init__( self : str, _snake_case : Optional[int]=3_0_5_2_2, _snake_case : Optional[Any]=7_6_8, _snake_case : Any=1_2, _snake_case : str=1_2, _snake_case : str=3_0_7_2, _snake_case : List[Any]="gelu", _snake_case : Optional[int]=0.1, _snake_case : Tuple=0.1, _snake_case : Dict=5_1_2, _snake_case : Union[str, Any]=2, _snake_case : Optional[Any]=0.0_2, _snake_case : List[str]=1e-12, _snake_case : Dict=1, _snake_case : str=0, _snake_case : Optional[int]=2, _snake_case : int="absolute", _snake_case : Any=True, _snake_case : Any=None, **_snake_case : Union[str, Any], ) ->int:
super().__init__(pad_token_id=_snake_case, bos_token_id=_snake_case, eos_token_id=_snake_case, **_snake_case )
snake_case__ : Tuple = vocab_size
snake_case__ : int = hidden_size
snake_case__ : str = num_hidden_layers
snake_case__ : Optional[Any] = num_attention_heads
snake_case__ : Tuple = hidden_act
snake_case__ : Any = intermediate_size
snake_case__ : Optional[int] = hidden_dropout_prob
snake_case__ : int = attention_probs_dropout_prob
snake_case__ : List[str] = max_position_embeddings
snake_case__ : Optional[int] = type_vocab_size
snake_case__ : List[Any] = initializer_range
snake_case__ : Dict = layer_norm_eps
snake_case__ : Union[str, Any] = position_embedding_type
snake_case__ : Union[str, Any] = use_cache
snake_case__ : Optional[int] = classifier_dropout
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
@property
def lowercase_ ( self : Optional[int] ) ->Mapping[str, Mapping[int, str]]:
if self.task == "multiple-choice":
snake_case__ : Optional[Any] = {0: 'batch', 1: 'choice', 2: 'sequence'}
else:
snake_case__ : Any = {0: 'batch', 1: 'sequence'}
return OrderedDict(
[
('input_ids', dynamic_axis),
('attention_mask', dynamic_axis),
] )
| 277 |
from typing import TYPE_CHECKING
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_flax_available, is_torch_available
a_ :int = {
"configuration_longt5": ["LONGT5_PRETRAINED_CONFIG_ARCHIVE_MAP", "LongT5Config", "LongT5OnnxConfig"],
}
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :List[str] = [
"LONGT5_PRETRAINED_MODEL_ARCHIVE_LIST",
"LongT5EncoderModel",
"LongT5ForConditionalGeneration",
"LongT5Model",
"LongT5PreTrainedModel",
]
try:
if not is_flax_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :int = [
"FlaxLongT5ForConditionalGeneration",
"FlaxLongT5Model",
"FlaxLongT5PreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_longta import LONGT5_PRETRAINED_CONFIG_ARCHIVE_MAP, LongTaConfig, LongTaOnnxConfig
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_longta import (
LONGT5_PRETRAINED_MODEL_ARCHIVE_LIST,
LongTaEncoderModel,
LongTaForConditionalGeneration,
LongTaModel,
LongTaPreTrainedModel,
)
try:
if not is_flax_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_flax_longta import (
FlaxLongTaForConditionalGeneration,
FlaxLongTaModel,
FlaxLongTaPreTrainedModel,
)
else:
import sys
a_ :Optional[int] = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 277 | 1 |
from typing import TYPE_CHECKING
from ...utils import (
OptionalDependencyNotAvailable,
_LazyModule,
is_flax_available,
is_sentencepiece_available,
is_tf_available,
is_tokenizers_available,
is_torch_available,
)
a_ :List[str] = {
"configuration_xlm_roberta": [
"XLM_ROBERTA_PRETRAINED_CONFIG_ARCHIVE_MAP",
"XLMRobertaConfig",
"XLMRobertaOnnxConfig",
],
}
try:
if not is_sentencepiece_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :Optional[int] = ["XLMRobertaTokenizer"]
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :int = ["XLMRobertaTokenizerFast"]
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :Tuple = [
"XLM_ROBERTA_PRETRAINED_MODEL_ARCHIVE_LIST",
"XLMRobertaForCausalLM",
"XLMRobertaForMaskedLM",
"XLMRobertaForMultipleChoice",
"XLMRobertaForQuestionAnswering",
"XLMRobertaForSequenceClassification",
"XLMRobertaForTokenClassification",
"XLMRobertaModel",
"XLMRobertaPreTrainedModel",
]
try:
if not is_tf_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :Optional[int] = [
"TF_XLM_ROBERTA_PRETRAINED_MODEL_ARCHIVE_LIST",
"TFXLMRobertaForCausalLM",
"TFXLMRobertaForMaskedLM",
"TFXLMRobertaForMultipleChoice",
"TFXLMRobertaForQuestionAnswering",
"TFXLMRobertaForSequenceClassification",
"TFXLMRobertaForTokenClassification",
"TFXLMRobertaModel",
"TFXLMRobertaPreTrainedModel",
]
try:
if not is_flax_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :Optional[int] = [
"FLAX_XLM_ROBERTA_PRETRAINED_MODEL_ARCHIVE_LIST",
"FlaxXLMRobertaForMaskedLM",
"FlaxXLMRobertaForCausalLM",
"FlaxXLMRobertaForMultipleChoice",
"FlaxXLMRobertaForQuestionAnswering",
"FlaxXLMRobertaForSequenceClassification",
"FlaxXLMRobertaForTokenClassification",
"FlaxXLMRobertaModel",
"FlaxXLMRobertaPreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_xlm_roberta import (
XLM_ROBERTA_PRETRAINED_CONFIG_ARCHIVE_MAP,
XLMRobertaConfig,
XLMRobertaOnnxConfig,
)
try:
if not is_sentencepiece_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_xlm_roberta import XLMRobertaTokenizer
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_xlm_roberta_fast import XLMRobertaTokenizerFast
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_xlm_roberta import (
XLM_ROBERTA_PRETRAINED_MODEL_ARCHIVE_LIST,
XLMRobertaForCausalLM,
XLMRobertaForMaskedLM,
XLMRobertaForMultipleChoice,
XLMRobertaForQuestionAnswering,
XLMRobertaForSequenceClassification,
XLMRobertaForTokenClassification,
XLMRobertaModel,
XLMRobertaPreTrainedModel,
)
try:
if not is_tf_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_tf_xlm_roberta import (
TF_XLM_ROBERTA_PRETRAINED_MODEL_ARCHIVE_LIST,
TFXLMRobertaForCausalLM,
TFXLMRobertaForMaskedLM,
TFXLMRobertaForMultipleChoice,
TFXLMRobertaForQuestionAnswering,
TFXLMRobertaForSequenceClassification,
TFXLMRobertaForTokenClassification,
TFXLMRobertaModel,
TFXLMRobertaPreTrainedModel,
)
try:
if not is_flax_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_flax_xlm_roberta import (
FLAX_XLM_ROBERTA_PRETRAINED_MODEL_ARCHIVE_LIST,
FlaxXLMRobertaForCausalLM,
FlaxXLMRobertaForMaskedLM,
FlaxXLMRobertaForMultipleChoice,
FlaxXLMRobertaForQuestionAnswering,
FlaxXLMRobertaForSequenceClassification,
FlaxXLMRobertaForTokenClassification,
FlaxXLMRobertaModel,
FlaxXLMRobertaPreTrainedModel,
)
else:
import sys
a_ :int = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 277 |
import argparse
import json
import os
import torch
from torch import nn
from transformers import NllbMoeConfig, NllbMoeModel
from transformers.modeling_utils import dtype_byte_size
from transformers.utils import WEIGHTS_INDEX_NAME, WEIGHTS_NAME
def lowercase_ (A : List[str] ):
snake_case__ : Tuple = [
'encoder.version',
'decoder.version',
'model.encoder.version',
'model.decoder.version',
'decoder.output_projection.weight',
'_float_tensor',
'encoder.embed_positions._float_tensor',
'decoder.embed_positions._float_tensor',
]
for k in ignore_keys:
state_dict.pop(A , A )
def lowercase_ (A : str ):
snake_case__ , snake_case__ : Union[str, Any] = emb.weight.shape
snake_case__ : str = nn.Linear(A , A , bias=A )
snake_case__ : str = emb.weight.data
return lin_layer
def lowercase_ (A : Optional[int] , A : Union[str, Any]=None ):
snake_case__ : Any = {}
for old_key in state_dict.keys():
snake_case__ : Tuple = old_key
if "moe_layer.experts." in key:
if expert_idx is not None:
snake_case__ : int = key.replace('moe_layer.experts.0' , F'''ffn.experts.expert_{expert_idx}''' )
else:
snake_case__ : Any = key.replace('moe_layer.experts.' , 'ffn.experts.expert_' )
if "gate" in key:
snake_case__ : Dict = key.replace('.moe_layer.gate.wg' , '.ffn.router.classifier' )
if "fc2" and "experts" not in key:
snake_case__ : str = key.replace('.fc2.' , '.ffn.fc2.' )
if "fc1" and "experts" not in key:
snake_case__ : str = key.replace('.fc1.' , '.ffn.fc1.' )
if ".encoder_attn." in key:
snake_case__ : Tuple = key.replace('.encoder_attn.' , '.cross_attention.' )
if "encoder_attn_layer_norm" in key:
snake_case__ : Tuple = key.replace('encoder_attn_layer_norm' , 'cross_attention_layer_norm' )
if "final_layer_norm" in key:
snake_case__ : Optional[int] = key.replace('final_layer_norm' , 'ff_layer_norm' )
snake_case__ : Dict = state_dict[old_key]
return new_dict
def lowercase_ (A : List[Any] , A : Tuple , A : List[Any] , A : List[str] , A : str = WEIGHTS_NAME ):
snake_case__ : Dict = []
snake_case__ : str = 0
os.makedirs(A , exist_ok=A )
for expert in range(A ):
snake_case__ : Tuple = switch_checkpoint_path + F'''-rank-{expert}.pt'''
if os.path.isfile(A ):
snake_case__ : Optional[Any] = torch.load(A )['model']
remove_ignore_keys_(A )
snake_case__ : Optional[Any] = rename_fairseq_keys(A , A )
snake_case__ : Dict = os.path.join(
A , weights_name.replace('.bin' , F'''-{len(A )+1:05d}-of-???.bin''' ) )
torch.save(A , A )
sharded_state_dicts.append(expert_state.keys() )
total_size += sum([value.numel() for key, value in expert_state.items()] ) * dtype_byte_size(
expert_state[list(A )[0]].dtype )
# Add the last block
snake_case__ : Tuple = os.path.join(A , weights_name.replace('.bin' , F'''-{len(A )+1:05d}-of-???.bin''' ) )
snake_case__ : Union[str, Any] = torch.load(switch_checkpoint_path + '-shared.pt' )['model']
remove_ignore_keys_(A )
snake_case__ : str = rename_fairseq_keys(A , A )
snake_case__ : Any = shared_weights['decoder.embed_tokens.weight']
sharded_state_dicts.append(shared_weights.keys() )
# If we only have the shared weights (dummy model/experts saved on the same file)
if len(A ) == 1:
snake_case__ : Any = os.path.join(A , A )
torch.save(A , A )
return {weights_name: sharded_state_dicts[0]}, None
else:
torch.save(A , A )
# Otherwise, let's build the index
snake_case__ : Tuple = {}
for idx, shard in enumerate(A ):
snake_case__ : Optional[int] = weights_name.replace('.bin' , F'''-{idx+1:05d}-of-{len(A ):05d}.bin''' )
snake_case__ : List[Any] = os.path.join(A , weights_name.replace('.bin' , F'''-{idx+1:05d}-of-???.bin''' ) )
os.rename(A , os.path.join(A , A ) )
for key in shard:
snake_case__ : Any = shard_file
# Add the metadata
snake_case__ : int = {'total_size': total_size}
snake_case__ : Dict = {'metadata': metadata, 'weight_map': weight_map}
with open(os.path.join(A , A ) , 'w' , encoding='utf-8' ) as f:
snake_case__ : Any = json.dumps(A , indent=2 , sort_keys=A ) + '\n'
f.write(A )
return metadata, index
if __name__ == "__main__":
a_ :int = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--nllb_moe_checkpoint_path",
default="/home/arthur_huggingface_co/fairseq/weights/checkpoints/model_moe_54b/checkpoint_2_300000",
type=str,
required=False,
help="Path to a directory containing a folder per layer. Follows the original Google format.",
)
parser.add_argument("--dtype", default="float32", type=str, required=False, help="dtype of the saved model")
parser.add_argument(
"--pytorch_dump_folder_path",
default="/home/arthur_huggingface_co/fairseq/weights/checkpoints/hf-converted-moe-54b",
type=str,
required=False,
help="Path to the output pytorch model.",
)
a_ :Optional[Any] = parser.parse_args()
a_ , a_ :Optional[Any] = shard_on_the_fly(
args.nllb_moe_checkpoint_path,
args.pytorch_dump_folder_path,
128,
args.dtype,
)
a_ :List[str] = NllbMoeConfig.from_pretrained(
"facebook/nllb-200-3.3B", encoder_sparse_step=4, decoder_sparse_step=4, num_experts=128
)
config.save_pretrained(args.pytorch_dump_folder_path)
a_ :int = NllbMoeModel.from_pretrained(args.pytorch_dump_folder_path)
print("Done")
model.save_pretrained(args.pytorch_dump_folder_path)
| 277 | 1 |
from __future__ import annotations
import math
def lowercase_ (A : int , A : int , A : bool , A : list[int] , A : float ):
if depth < 0:
raise ValueError('Depth cannot be less than 0' )
if not scores:
raise ValueError('Scores cannot be empty' )
if depth == height:
return scores[node_index]
return (
max(
minimax(depth + 1 , node_index * 2 , A , A , A ) , minimax(depth + 1 , node_index * 2 + 1 , A , A , A ) , )
if is_max
else min(
minimax(depth + 1 , node_index * 2 , A , A , A ) , minimax(depth + 1 , node_index * 2 + 1 , A , A , A ) , )
)
def lowercase_ ():
snake_case__ : str = [9_0, 2_3, 6, 3_3, 2_1, 6_5, 1_2_3, 3_4_4_2_3]
snake_case__ : Union[str, Any] = math.log(len(A ) , 2 )
print(F'''Optimal value : {minimax(0 , 0 , A , A , A )}''' )
if __name__ == "__main__":
import doctest
doctest.testmod()
main()
| 277 |
from typing import TYPE_CHECKING
from ...utils import (
OptionalDependencyNotAvailable,
_LazyModule,
is_sentencepiece_available,
is_tokenizers_available,
is_torch_available,
)
a_ :Optional[Any] = {"configuration_reformer": ["REFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP", "ReformerConfig"]}
try:
if not is_sentencepiece_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :str = ["ReformerTokenizer"]
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :int = ["ReformerTokenizerFast"]
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :List[str] = [
"REFORMER_PRETRAINED_MODEL_ARCHIVE_LIST",
"ReformerAttention",
"ReformerForMaskedLM",
"ReformerForQuestionAnswering",
"ReformerForSequenceClassification",
"ReformerLayer",
"ReformerModel",
"ReformerModelWithLMHead",
"ReformerPreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_reformer import REFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP, ReformerConfig
try:
if not is_sentencepiece_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_reformer import ReformerTokenizer
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_reformer_fast import ReformerTokenizerFast
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_reformer import (
REFORMER_PRETRAINED_MODEL_ARCHIVE_LIST,
ReformerAttention,
ReformerForMaskedLM,
ReformerForQuestionAnswering,
ReformerForSequenceClassification,
ReformerLayer,
ReformerModel,
ReformerModelWithLMHead,
ReformerPreTrainedModel,
)
else:
import sys
a_ :Optional[Any] = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 277 | 1 |
import unittest
import numpy as np
from transformers.testing_utils import require_torch, require_vision
from transformers.utils import is_torch_available, is_vision_available
from ...test_image_processing_common import ImageProcessingSavingTestMixin, prepare_image_inputs
if is_torch_available():
import torch
if is_vision_available():
from PIL import Image
from transformers import MobileNetVaImageProcessor
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
def __init__( self : Tuple, _snake_case : Tuple, _snake_case : str=7, _snake_case : int=3, _snake_case : List[Any]=1_8, _snake_case : int=3_0, _snake_case : List[Any]=4_0_0, _snake_case : List[Any]=True, _snake_case : int=None, _snake_case : str=True, _snake_case : Optional[int]=None, ) ->str:
snake_case__ : List[str] = size if size is not None else {'shortest_edge': 2_0}
snake_case__ : Any = crop_size if crop_size is not None else {'height': 1_8, 'width': 1_8}
snake_case__ : Optional[int] = parent
snake_case__ : List[Any] = batch_size
snake_case__ : Optional[Any] = num_channels
snake_case__ : Union[str, Any] = image_size
snake_case__ : Dict = min_resolution
snake_case__ : List[str] = max_resolution
snake_case__ : List[Any] = do_resize
snake_case__ : Optional[Any] = size
snake_case__ : List[str] = do_center_crop
snake_case__ : str = crop_size
def lowercase_ ( self : Union[str, Any] ) ->List[str]:
return {
"do_resize": self.do_resize,
"size": self.size,
"do_center_crop": self.do_center_crop,
"crop_size": self.crop_size,
}
@require_torch
@require_vision
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = MobileNetVaImageProcessor if is_vision_available() else None
def lowercase_ ( self : int ) ->Optional[int]:
snake_case__ : int = MobileNetVaImageProcessingTester(self )
@property
def lowercase_ ( self : str ) ->str:
return self.image_processor_tester.prepare_image_processor_dict()
def lowercase_ ( self : Tuple ) ->Optional[Any]:
snake_case__ : List[Any] = self.image_processing_class(**self.image_processor_dict )
self.assertTrue(hasattr(_snake_case, 'do_resize' ) )
self.assertTrue(hasattr(_snake_case, 'size' ) )
self.assertTrue(hasattr(_snake_case, 'do_center_crop' ) )
self.assertTrue(hasattr(_snake_case, 'crop_size' ) )
def lowercase_ ( self : Optional[int] ) ->List[Any]:
snake_case__ : List[str] = self.image_processing_class.from_dict(self.image_processor_dict )
self.assertEqual(image_processor.size, {'shortest_edge': 2_0} )
self.assertEqual(image_processor.crop_size, {'height': 1_8, 'width': 1_8} )
snake_case__ : Dict = self.image_processing_class.from_dict(self.image_processor_dict, size=4_2, crop_size=8_4 )
self.assertEqual(image_processor.size, {'shortest_edge': 4_2} )
self.assertEqual(image_processor.crop_size, {'height': 8_4, 'width': 8_4} )
def lowercase_ ( self : Optional[Any] ) ->Optional[Any]:
pass
def lowercase_ ( self : Optional[int] ) ->Optional[Any]:
# Initialize image_processing
snake_case__ : List[str] = self.image_processing_class(**self.image_processor_dict )
# create random PIL images
snake_case__ : Optional[Any] = prepare_image_inputs(self.image_processor_tester, equal_resolution=_snake_case )
for image in image_inputs:
self.assertIsInstance(_snake_case, Image.Image )
# Test not batched input
snake_case__ : Optional[Any] = image_processing(image_inputs[0], return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
# Test batched
snake_case__ : List[Any] = image_processing(_snake_case, return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
def lowercase_ ( self : str ) ->Optional[int]:
# Initialize image_processing
snake_case__ : Tuple = self.image_processing_class(**self.image_processor_dict )
# create random numpy tensors
snake_case__ : Optional[Any] = prepare_image_inputs(self.image_processor_tester, equal_resolution=_snake_case, numpify=_snake_case )
for image in image_inputs:
self.assertIsInstance(_snake_case, np.ndarray )
# Test not batched input
snake_case__ : Tuple = image_processing(image_inputs[0], return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
# Test batched
snake_case__ : Optional[int] = image_processing(_snake_case, return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
def lowercase_ ( self : int ) ->Any:
# Initialize image_processing
snake_case__ : Optional[int] = self.image_processing_class(**self.image_processor_dict )
# create random PyTorch tensors
snake_case__ : Union[str, Any] = prepare_image_inputs(self.image_processor_tester, equal_resolution=_snake_case, torchify=_snake_case )
for image in image_inputs:
self.assertIsInstance(_snake_case, torch.Tensor )
# Test not batched input
snake_case__ : Dict = image_processing(image_inputs[0], return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
# Test batched
snake_case__ : Optional[Any] = image_processing(_snake_case, return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
| 277 |
import itertools
import random
import unittest
import numpy as np
from transformers import BatchFeature, SpeechTaFeatureExtractor
from transformers.testing_utils import require_torch
from transformers.utils.import_utils import is_torch_available
from ...test_sequence_feature_extraction_common import SequenceFeatureExtractionTestMixin
if is_torch_available():
import torch
a_ :Any = random.Random()
def lowercase_ (A : int , A : Union[str, Any]=1.0 , A : List[str]=None , A : Any=None ):
if rng is None:
snake_case__ : List[str] = global_rng
snake_case__ : int = []
for batch_idx in range(shape[0] ):
values.append([] )
for _ in range(shape[1] ):
values[-1].append(rng.random() * scale )
return values
@require_torch
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
def __init__( self : Optional[Any], _snake_case : List[str], _snake_case : Tuple=7, _snake_case : Union[str, Any]=4_0_0, _snake_case : Any=2_0_0_0, _snake_case : Dict=1, _snake_case : Optional[Any]=0.0, _snake_case : List[Any]=1_6_0_0_0, _snake_case : List[Any]=True, _snake_case : List[Any]=8_0, _snake_case : Dict=1_6, _snake_case : str=6_4, _snake_case : Tuple="hann_window", _snake_case : Union[str, Any]=8_0, _snake_case : Optional[Any]=7_6_0_0, _snake_case : str=1e-10, _snake_case : Any=True, ) ->Union[str, Any]:
snake_case__ : Optional[int] = parent
snake_case__ : Optional[Any] = batch_size
snake_case__ : List[Any] = min_seq_length
snake_case__ : List[Any] = max_seq_length
snake_case__ : Any = (self.max_seq_length - self.min_seq_length) // (self.batch_size - 1)
snake_case__ : Tuple = feature_size
snake_case__ : List[Any] = padding_value
snake_case__ : Any = sampling_rate
snake_case__ : Dict = do_normalize
snake_case__ : Union[str, Any] = num_mel_bins
snake_case__ : Any = hop_length
snake_case__ : Any = win_length
snake_case__ : Any = win_function
snake_case__ : Optional[int] = fmin
snake_case__ : int = fmax
snake_case__ : Union[str, Any] = mel_floor
snake_case__ : Union[str, Any] = return_attention_mask
def lowercase_ ( self : Optional[int] ) ->List[str]:
return {
"feature_size": self.feature_size,
"padding_value": self.padding_value,
"sampling_rate": self.sampling_rate,
"do_normalize": self.do_normalize,
"num_mel_bins": self.num_mel_bins,
"hop_length": self.hop_length,
"win_length": self.win_length,
"win_function": self.win_function,
"fmin": self.fmin,
"fmax": self.fmax,
"mel_floor": self.mel_floor,
"return_attention_mask": self.return_attention_mask,
}
def lowercase_ ( self : Any, _snake_case : Optional[Any]=False, _snake_case : List[str]=False ) ->Union[str, Any]:
def _flatten(_snake_case : List[str] ):
return list(itertools.chain(*_snake_case ) )
if equal_length:
snake_case__ : Any = floats_list((self.batch_size, self.max_seq_length) )
else:
# make sure that inputs increase in size
snake_case__ : int = [
_flatten(floats_list((x, self.feature_size) ) )
for x in range(self.min_seq_length, self.max_seq_length, self.seq_length_diff )
]
if numpify:
snake_case__ : Any = [np.asarray(_snake_case ) for x in speech_inputs]
return speech_inputs
def lowercase_ ( self : Union[str, Any], _snake_case : str=False, _snake_case : Dict=False ) ->List[str]:
if equal_length:
snake_case__ : Optional[Any] = [floats_list((self.max_seq_length, self.num_mel_bins) ) for _ in range(self.batch_size )]
else:
# make sure that inputs increase in size
snake_case__ : List[str] = [
floats_list((x, self.num_mel_bins) )
for x in range(self.min_seq_length, self.max_seq_length, self.seq_length_diff )
]
if numpify:
snake_case__ : int = [np.asarray(_snake_case ) for x in speech_inputs]
return speech_inputs
@require_torch
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = SpeechTaFeatureExtractor
def lowercase_ ( self : int ) ->Union[str, Any]:
snake_case__ : List[str] = SpeechTaFeatureExtractionTester(self )
def lowercase_ ( self : Any, _snake_case : Dict ) ->Any:
self.assertTrue(np.all(np.mean(_snake_case, axis=0 ) < 1e-3 ) )
self.assertTrue(np.all(np.abs(np.var(_snake_case, axis=0 ) - 1 ) < 1e-3 ) )
def lowercase_ ( self : List[Any] ) ->Union[str, Any]:
# Tests that all call wrap to encode_plus and batch_encode_plus
snake_case__ : Optional[Any] = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
# create three inputs of length 800, 1000, and 1200
snake_case__ : int = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : Tuple = [np.asarray(_snake_case ) for speech_input in speech_inputs]
# Test not batched input
snake_case__ : str = feat_extract(speech_inputs[0], return_tensors='np' ).input_values
snake_case__ : List[str] = feat_extract(np_speech_inputs[0], return_tensors='np' ).input_values
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
# Test batched
snake_case__ : Any = feat_extract(_snake_case, return_tensors='np' ).input_values
snake_case__ : Union[str, Any] = feat_extract(_snake_case, return_tensors='np' ).input_values
for enc_seq_a, enc_seq_a in zip(_snake_case, _snake_case ):
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
def lowercase_ ( self : int ) ->Optional[int]:
snake_case__ : List[Any] = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : Tuple = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : int = ['longest', 'max_length', 'do_not_pad']
snake_case__ : List[str] = [None, 1_6_0_0, None]
for max_length, padding in zip(_snake_case, _snake_case ):
snake_case__ : Optional[int] = feat_extract(_snake_case, padding=_snake_case, max_length=_snake_case, return_tensors='np' )
snake_case__ : Optional[int] = processed.input_values
self._check_zero_mean_unit_variance(input_values[0][:8_0_0] )
self.assertTrue(input_values[0][8_0_0:].sum() < 1e-6 )
self._check_zero_mean_unit_variance(input_values[1][:1_0_0_0] )
self.assertTrue(input_values[0][1_0_0_0:].sum() < 1e-6 )
self._check_zero_mean_unit_variance(input_values[2][:1_2_0_0] )
def lowercase_ ( self : Union[str, Any] ) ->Optional[Any]:
snake_case__ : Optional[Any] = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : Tuple = range(8_0_0, 1_4_0_0, 2_0_0 )
snake_case__ : Optional[Any] = [floats_list((1, x) )[0] for x in lengths]
snake_case__ : Union[str, Any] = ['longest', 'max_length', 'do_not_pad']
snake_case__ : str = [None, 1_6_0_0, None]
for max_length, padding in zip(_snake_case, _snake_case ):
snake_case__ : List[str] = feat_extract(_snake_case, max_length=_snake_case, padding=_snake_case )
snake_case__ : Tuple = processed.input_values
self._check_zero_mean_unit_variance(input_values[0][:8_0_0] )
self._check_zero_mean_unit_variance(input_values[1][:1_0_0_0] )
self._check_zero_mean_unit_variance(input_values[2][:1_2_0_0] )
def lowercase_ ( self : List[Any] ) ->Optional[Any]:
snake_case__ : Any = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : str = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : Optional[Any] = feat_extract(
_snake_case, truncation=_snake_case, max_length=1_0_0_0, padding='max_length', return_tensors='np' )
snake_case__ : int = processed.input_values
self._check_zero_mean_unit_variance(input_values[0, :8_0_0] )
self._check_zero_mean_unit_variance(input_values[1] )
self._check_zero_mean_unit_variance(input_values[2] )
def lowercase_ ( self : int ) ->Union[str, Any]:
snake_case__ : str = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : Dict = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : str = feat_extract(
_snake_case, truncation=_snake_case, max_length=1_0_0_0, padding='longest', return_tensors='np' )
snake_case__ : Dict = processed.input_values
self._check_zero_mean_unit_variance(input_values[0, :8_0_0] )
self._check_zero_mean_unit_variance(input_values[1, :1_0_0_0] )
self._check_zero_mean_unit_variance(input_values[2] )
# make sure that if max_length < longest -> then pad to max_length
self.assertTrue(input_values.shape == (3, 1_0_0_0) )
snake_case__ : Tuple = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : List[str] = feat_extract(
_snake_case, truncation=_snake_case, max_length=2_0_0_0, padding='longest', return_tensors='np' )
snake_case__ : Optional[Any] = processed.input_values
self._check_zero_mean_unit_variance(input_values[0, :8_0_0] )
self._check_zero_mean_unit_variance(input_values[1, :1_0_0_0] )
self._check_zero_mean_unit_variance(input_values[2] )
# make sure that if max_length > longest -> then pad to longest
self.assertTrue(input_values.shape == (3, 1_2_0_0) )
def lowercase_ ( self : List[str] ) ->Dict:
snake_case__ : Dict = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : List[Any] = np.random.rand(1_0_0 ).astype(np.floataa )
snake_case__ : int = np_speech_inputs.tolist()
for inputs in [py_speech_inputs, np_speech_inputs]:
snake_case__ : int = feature_extractor.pad([{'input_values': inputs}], return_tensors='np' )
self.assertTrue(np_processed.input_values.dtype == np.floataa )
snake_case__ : Optional[int] = feature_extractor.pad([{'input_values': inputs}], return_tensors='pt' )
self.assertTrue(pt_processed.input_values.dtype == torch.floataa )
def lowercase_ ( self : Optional[int] ) ->Optional[Any]:
# Tests that all call wrap to encode_plus and batch_encode_plus
snake_case__ : str = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
# create three inputs of length 800, 1000, and 1200
snake_case__ : List[Any] = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : Dict = [np.asarray(_snake_case ) for speech_input in speech_inputs]
# Test feature size
snake_case__ : Optional[int] = feature_extractor(audio_target=_snake_case, padding=_snake_case, return_tensors='np' ).input_values
self.assertTrue(input_values.ndim == 3 )
self.assertTrue(input_values.shape[-1] == feature_extractor.num_mel_bins )
# Test not batched input
snake_case__ : Dict = feature_extractor(speech_inputs[0], return_tensors='np' ).input_values
snake_case__ : Any = feature_extractor(np_speech_inputs[0], return_tensors='np' ).input_values
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
# Test batched
snake_case__ : Dict = feature_extractor(_snake_case, return_tensors='np' ).input_values
snake_case__ : Dict = feature_extractor(_snake_case, return_tensors='np' ).input_values
for enc_seq_a, enc_seq_a in zip(_snake_case, _snake_case ):
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
# Test 2-D numpy arrays are batched.
snake_case__ : Optional[Any] = [floats_list((1, x) )[0] for x in (8_0_0, 8_0_0, 8_0_0)]
snake_case__ : int = np.asarray(_snake_case )
snake_case__ : Union[str, Any] = feature_extractor(_snake_case, return_tensors='np' ).input_values
snake_case__ : Union[str, Any] = feature_extractor(_snake_case, return_tensors='np' ).input_values
for enc_seq_a, enc_seq_a in zip(_snake_case, _snake_case ):
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
def lowercase_ ( self : Union[str, Any] ) ->str:
snake_case__ : int = self.feat_extract_tester.prepare_inputs_for_target()
snake_case__ : List[str] = self.feature_extraction_class(**self.feat_extract_dict )
snake_case__ : Optional[Any] = feat_extract.model_input_names[0]
snake_case__ : Tuple = BatchFeature({input_name: speech_inputs} )
self.assertTrue(all(len(_snake_case ) == len(_snake_case ) for x, y in zip(_snake_case, processed_features[input_name] ) ) )
snake_case__ : int = self.feat_extract_tester.prepare_inputs_for_target(equal_length=_snake_case )
snake_case__ : Union[str, Any] = BatchFeature({input_name: speech_inputs}, tensor_type='np' )
snake_case__ : Dict = processed_features[input_name]
if len(batch_features_input.shape ) < 3:
snake_case__ : List[str] = batch_features_input[:, :, None]
self.assertTrue(
batch_features_input.shape
== (self.feat_extract_tester.batch_size, len(speech_inputs[0] ), self.feat_extract_tester.num_mel_bins) )
@require_torch
def lowercase_ ( self : List[str] ) ->Any:
snake_case__ : int = self.feat_extract_tester.prepare_inputs_for_target(equal_length=_snake_case )
snake_case__ : Optional[Any] = self.feature_extraction_class(**self.feat_extract_dict )
snake_case__ : Tuple = feat_extract.model_input_names[0]
snake_case__ : List[Any] = BatchFeature({input_name: speech_inputs}, tensor_type='pt' )
snake_case__ : Tuple = processed_features[input_name]
if len(batch_features_input.shape ) < 3:
snake_case__ : Any = batch_features_input[:, :, None]
self.assertTrue(
batch_features_input.shape
== (self.feat_extract_tester.batch_size, len(speech_inputs[0] ), self.feat_extract_tester.num_mel_bins) )
@require_torch
def lowercase_ ( self : Optional[int] ) ->Tuple:
snake_case__ : Dict = self.feature_extraction_class(**self.feat_extract_dict )
snake_case__ : Union[str, Any] = self.feat_extract_tester.prepare_inputs_for_target()
snake_case__ : Optional[Any] = feat_extract.model_input_names[0]
snake_case__ : List[str] = BatchFeature({input_name: speech_inputs} )
snake_case__ : int = feat_extract.num_mel_bins # hack!
snake_case__ : Tuple = feat_extract.pad(_snake_case, padding='longest', return_tensors='np' )[input_name]
snake_case__ : Union[str, Any] = feat_extract.pad(_snake_case, padding='longest', return_tensors='pt' )[input_name]
self.assertTrue(abs(input_np.astype(np.floataa ).sum() - input_pt.numpy().astype(np.floataa ).sum() ) < 1e-2 )
def lowercase_ ( self : int ) ->Any:
snake_case__ : Any = self.feat_extract_dict
snake_case__ : List[Any] = True
snake_case__ : Union[str, Any] = self.feature_extraction_class(**_snake_case )
snake_case__ : Any = self.feat_extract_tester.prepare_inputs_for_target()
snake_case__ : List[Any] = [len(_snake_case ) for x in speech_inputs]
snake_case__ : Union[str, Any] = feat_extract.model_input_names[0]
snake_case__ : Optional[int] = BatchFeature({input_name: speech_inputs} )
snake_case__ : List[str] = feat_extract.num_mel_bins # hack!
snake_case__ : str = feat_extract.pad(_snake_case, padding='longest', return_tensors='np' )
self.assertIn('attention_mask', _snake_case )
self.assertListEqual(list(processed.attention_mask.shape ), list(processed[input_name].shape[:2] ) )
self.assertListEqual(processed.attention_mask.sum(-1 ).tolist(), _snake_case )
def lowercase_ ( self : Optional[int] ) ->str:
snake_case__ : int = self.feat_extract_dict
snake_case__ : List[str] = True
snake_case__ : Tuple = self.feature_extraction_class(**_snake_case )
snake_case__ : List[str] = self.feat_extract_tester.prepare_inputs_for_target()
snake_case__ : str = [len(_snake_case ) for x in speech_inputs]
snake_case__ : Optional[Any] = feat_extract.model_input_names[0]
snake_case__ : Optional[int] = BatchFeature({input_name: speech_inputs} )
snake_case__ : Optional[Any] = min(_snake_case )
snake_case__ : Union[str, Any] = feat_extract.num_mel_bins # hack!
snake_case__ : Tuple = feat_extract.pad(
_snake_case, padding='max_length', max_length=_snake_case, truncation=_snake_case, return_tensors='np' )
self.assertIn('attention_mask', _snake_case )
self.assertListEqual(
list(processed_pad.attention_mask.shape ), [processed_pad[input_name].shape[0], max_length] )
self.assertListEqual(
processed_pad.attention_mask[:, :max_length].sum(-1 ).tolist(), [max_length for x in speech_inputs] )
def lowercase_ ( self : List[Any], _snake_case : Optional[int] ) ->Optional[Any]:
from datasets import load_dataset
snake_case__ : str = load_dataset('hf-internal-testing/librispeech_asr_dummy', 'clean', split='validation' )
# automatic decoding with librispeech
snake_case__ : Dict = ds.sort('id' ).select(range(_snake_case ) )[:num_samples]['audio']
return [x["array"] for x in speech_samples]
def lowercase_ ( self : str ) ->str:
# fmt: off
snake_case__ : List[Any] = torch.tensor(
[2.3804e-03, 2.0752e-03, 1.9836e-03, 2.1057e-03, 1.6174e-03,
3.0518e-04, 9.1553e-05, 3.3569e-04, 9.7656e-04, 1.8311e-03,
2.0142e-03, 2.1057e-03, 1.7395e-03, 4.5776e-04, -3.9673e-04,
4.5776e-04, 1.0071e-03, 9.1553e-05, 4.8828e-04, 1.1597e-03,
7.3242e-04, 9.4604e-04, 1.8005e-03, 1.8311e-03, 8.8501e-04,
4.2725e-04, 4.8828e-04, 7.3242e-04, 1.0986e-03, 2.1057e-03] )
# fmt: on
snake_case__ : Union[str, Any] = self._load_datasamples(1 )
snake_case__ : Optional[int] = SpeechTaFeatureExtractor()
snake_case__ : List[Any] = feature_extractor(_snake_case, return_tensors='pt' ).input_values
self.assertEquals(input_values.shape, (1, 9_3_6_8_0) )
self.assertTrue(torch.allclose(input_values[0, :3_0], _snake_case, atol=1e-6 ) )
def lowercase_ ( self : Any ) ->str:
# fmt: off
snake_case__ : Optional[Any] = torch.tensor(
[-2.6_8_7_0, -3.0_1_0_4, -3.1_3_5_6, -3.5_3_5_2, -3.0_0_4_4, -3.0_3_5_3, -3.4_7_1_9, -3.6_7_7_7,
-3.1_5_2_0, -2.9_4_3_5, -2.6_5_5_3, -2.8_7_9_5, -2.9_9_4_4, -2.5_9_2_1, -3.0_2_7_9, -3.0_3_8_6,
-3.0_8_6_4, -3.1_2_9_1, -3.2_3_5_3, -2.7_4_4_4, -2.6_8_3_1, -2.7_2_8_7, -3.1_7_6_1, -3.1_5_7_1,
-3.2_7_2_6, -3.0_5_8_2, -3.1_0_0_7, -3.4_5_3_3, -3.4_6_9_5, -3.0_9_9_8] )
# fmt: on
snake_case__ : List[str] = self._load_datasamples(1 )
snake_case__ : str = SpeechTaFeatureExtractor()
snake_case__ : Optional[Any] = feature_extractor(audio_target=_snake_case, return_tensors='pt' ).input_values
self.assertEquals(input_values.shape, (1, 3_6_6, 8_0) )
self.assertTrue(torch.allclose(input_values[0, 0, :3_0], _snake_case, atol=1e-4 ) )
| 277 | 1 |
from __future__ import annotations
def lowercase_ (A : int , A : int ):
snake_case__ : list[list[int]] = []
create_all_state(1 , A , A , [] , A )
return result
def lowercase_ (A : int , A : int , A : int , A : list[int] , A : list[list[int]] , ):
if level == 0:
total_list.append(current_list[:] )
return
for i in range(A , total_number - level + 2 ):
current_list.append(A )
create_all_state(i + 1 , A , level - 1 , A , A )
current_list.pop()
def lowercase_ (A : list[list[int]] ):
for i in total_list:
print(*A )
if __name__ == "__main__":
a_ :Optional[Any] = 4
a_ :str = 2
a_ :int = generate_all_combinations(n, k)
print_all_state(total_list)
| 277 |
# Copyright 2023 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from ..models.auto import AutoModelForSeqaSeqLM, AutoTokenizer
from .base import PipelineTool
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = """philschmid/bart-large-cnn-samsum"""
_SCREAMING_SNAKE_CASE = (
"""This is a tool that summarizes an English text. It takes an input `text` containing the text to summarize, """
"""and returns a summary of the text."""
)
_SCREAMING_SNAKE_CASE = """summarizer"""
_SCREAMING_SNAKE_CASE = AutoTokenizer
_SCREAMING_SNAKE_CASE = AutoModelForSeqaSeqLM
_SCREAMING_SNAKE_CASE = ["""text"""]
_SCREAMING_SNAKE_CASE = ["""text"""]
def lowercase_ ( self : Optional[Any], _snake_case : str ) ->Any:
return self.pre_processor(_snake_case, return_tensors='pt', truncation=_snake_case )
def lowercase_ ( self : int, _snake_case : List[Any] ) ->Any:
return self.model.generate(**_snake_case )[0]
def lowercase_ ( self : int, _snake_case : int ) ->str:
return self.pre_processor.decode(_snake_case, skip_special_tokens=_snake_case, clean_up_tokenization_spaces=_snake_case )
| 277 | 1 |
import unittest
from transformers import MODEL_FOR_ZERO_SHOT_OBJECT_DETECTION_MAPPING, is_vision_available, pipeline
from transformers.testing_utils import (
is_pipeline_test,
nested_simplify,
require_tf,
require_torch,
require_vision,
slow,
)
from .test_pipelines_common import ANY
if is_vision_available():
from PIL import Image
else:
class snake_case__ :
"""simple docstring"""
@staticmethod
def lowercase_ ( *_snake_case : Optional[Any], **_snake_case : int ) ->Optional[int]:
pass
@is_pipeline_test
@require_vision
@require_torch
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = MODEL_FOR_ZERO_SHOT_OBJECT_DETECTION_MAPPING
def lowercase_ ( self : Optional[int], _snake_case : Dict, _snake_case : Dict, _snake_case : Any ) ->Dict:
snake_case__ : List[Any] = pipeline(
'zero-shot-object-detection', model='hf-internal-testing/tiny-random-owlvit-object-detection' )
snake_case__ : str = [
{
'image': './tests/fixtures/tests_samples/COCO/000000039769.png',
'candidate_labels': ['cat', 'remote', 'couch'],
}
]
return object_detector, examples
def lowercase_ ( self : Union[str, Any], _snake_case : Optional[int], _snake_case : Optional[int] ) ->Any:
snake_case__ : str = object_detector(examples[0], threshold=0.0 )
snake_case__ : Any = len(_snake_case )
self.assertGreater(_snake_case, 0 )
self.assertEqual(
_snake_case, [
{
'score': ANY(_snake_case ),
'label': ANY(_snake_case ),
'box': {'xmin': ANY(_snake_case ), 'ymin': ANY(_snake_case ), 'xmax': ANY(_snake_case ), 'ymax': ANY(_snake_case )},
}
for i in range(_snake_case )
], )
@require_tf
@unittest.skip('Zero Shot Object Detection not implemented in TF' )
def lowercase_ ( self : int ) ->Optional[int]:
pass
@require_torch
def lowercase_ ( self : Any ) ->Tuple:
snake_case__ : Dict = pipeline(
'zero-shot-object-detection', model='hf-internal-testing/tiny-random-owlvit-object-detection' )
snake_case__ : Tuple = object_detector(
'./tests/fixtures/tests_samples/COCO/000000039769.png', candidate_labels=['cat', 'remote', 'couch'], threshold=0.6_4, )
self.assertEqual(
nested_simplify(_snake_case, decimals=4 ), [
{'score': 0.7_2_3_5, 'label': 'cat', 'box': {'xmin': 2_0_4, 'ymin': 1_6_7, 'xmax': 2_3_2, 'ymax': 1_9_0}},
{'score': 0.7_2_1_8, 'label': 'remote', 'box': {'xmin': 2_0_4, 'ymin': 1_6_7, 'xmax': 2_3_2, 'ymax': 1_9_0}},
{'score': 0.7_1_8_4, 'label': 'couch', 'box': {'xmin': 2_0_4, 'ymin': 1_6_7, 'xmax': 2_3_2, 'ymax': 1_9_0}},
{'score': 0.6_7_4_8, 'label': 'remote', 'box': {'xmin': 5_7_1, 'ymin': 8_3, 'xmax': 5_9_8, 'ymax': 1_0_3}},
{'score': 0.6_6_5_6, 'label': 'cat', 'box': {'xmin': 5_7_1, 'ymin': 8_3, 'xmax': 5_9_8, 'ymax': 1_0_3}},
{'score': 0.6_6_1_4, 'label': 'couch', 'box': {'xmin': 5_7_1, 'ymin': 8_3, 'xmax': 5_9_8, 'ymax': 1_0_3}},
{'score': 0.6_4_5_6, 'label': 'remote', 'box': {'xmin': 4_9_4, 'ymin': 1_0_5, 'xmax': 5_2_1, 'ymax': 1_2_7}},
{'score': 0.6_4_2, 'label': 'remote', 'box': {'xmin': 6_7, 'ymin': 2_7_4, 'xmax': 9_3, 'ymax': 2_9_7}},
{'score': 0.6_4_1_9, 'label': 'cat', 'box': {'xmin': 4_9_4, 'ymin': 1_0_5, 'xmax': 5_2_1, 'ymax': 1_2_7}},
], )
snake_case__ : Optional[int] = object_detector(
[
{
'image': './tests/fixtures/tests_samples/COCO/000000039769.png',
'candidate_labels': ['cat', 'remote', 'couch'],
}
], threshold=0.6_4, )
self.assertEqual(
nested_simplify(_snake_case, decimals=4 ), [
[
{'score': 0.7_2_3_5, 'label': 'cat', 'box': {'xmin': 2_0_4, 'ymin': 1_6_7, 'xmax': 2_3_2, 'ymax': 1_9_0}},
{'score': 0.7_2_1_8, 'label': 'remote', 'box': {'xmin': 2_0_4, 'ymin': 1_6_7, 'xmax': 2_3_2, 'ymax': 1_9_0}},
{'score': 0.7_1_8_4, 'label': 'couch', 'box': {'xmin': 2_0_4, 'ymin': 1_6_7, 'xmax': 2_3_2, 'ymax': 1_9_0}},
{'score': 0.6_7_4_8, 'label': 'remote', 'box': {'xmin': 5_7_1, 'ymin': 8_3, 'xmax': 5_9_8, 'ymax': 1_0_3}},
{'score': 0.6_6_5_6, 'label': 'cat', 'box': {'xmin': 5_7_1, 'ymin': 8_3, 'xmax': 5_9_8, 'ymax': 1_0_3}},
{'score': 0.6_6_1_4, 'label': 'couch', 'box': {'xmin': 5_7_1, 'ymin': 8_3, 'xmax': 5_9_8, 'ymax': 1_0_3}},
{'score': 0.6_4_5_6, 'label': 'remote', 'box': {'xmin': 4_9_4, 'ymin': 1_0_5, 'xmax': 5_2_1, 'ymax': 1_2_7}},
{'score': 0.6_4_2, 'label': 'remote', 'box': {'xmin': 6_7, 'ymin': 2_7_4, 'xmax': 9_3, 'ymax': 2_9_7}},
{'score': 0.6_4_1_9, 'label': 'cat', 'box': {'xmin': 4_9_4, 'ymin': 1_0_5, 'xmax': 5_2_1, 'ymax': 1_2_7}},
]
], )
@require_torch
@slow
def lowercase_ ( self : List[Any] ) ->Dict:
snake_case__ : str = pipeline('zero-shot-object-detection' )
snake_case__ : str = object_detector(
'http://images.cocodataset.org/val2017/000000039769.jpg', candidate_labels=['cat', 'remote', 'couch'], )
self.assertEqual(
nested_simplify(_snake_case, decimals=4 ), [
{'score': 0.2_8_6_8, 'label': 'cat', 'box': {'xmin': 3_2_4, 'ymin': 2_0, 'xmax': 6_4_0, 'ymax': 3_7_3}},
{'score': 0.2_7_7, 'label': 'remote', 'box': {'xmin': 4_0, 'ymin': 7_2, 'xmax': 1_7_7, 'ymax': 1_1_5}},
{'score': 0.2_5_3_7, 'label': 'cat', 'box': {'xmin': 1, 'ymin': 5_5, 'xmax': 3_1_5, 'ymax': 4_7_2}},
{'score': 0.1_4_7_4, 'label': 'remote', 'box': {'xmin': 3_3_5, 'ymin': 7_4, 'xmax': 3_7_1, 'ymax': 1_8_7}},
{'score': 0.1_2_0_8, 'label': 'couch', 'box': {'xmin': 4, 'ymin': 0, 'xmax': 6_4_2, 'ymax': 4_7_6}},
], )
snake_case__ : List[str] = object_detector(
[
{
'image': 'http://images.cocodataset.org/val2017/000000039769.jpg',
'candidate_labels': ['cat', 'remote', 'couch'],
},
{
'image': 'http://images.cocodataset.org/val2017/000000039769.jpg',
'candidate_labels': ['cat', 'remote', 'couch'],
},
], )
self.assertEqual(
nested_simplify(_snake_case, decimals=4 ), [
[
{'score': 0.2_8_6_8, 'label': 'cat', 'box': {'xmin': 3_2_4, 'ymin': 2_0, 'xmax': 6_4_0, 'ymax': 3_7_3}},
{'score': 0.2_7_7, 'label': 'remote', 'box': {'xmin': 4_0, 'ymin': 7_2, 'xmax': 1_7_7, 'ymax': 1_1_5}},
{'score': 0.2_5_3_7, 'label': 'cat', 'box': {'xmin': 1, 'ymin': 5_5, 'xmax': 3_1_5, 'ymax': 4_7_2}},
{'score': 0.1_4_7_4, 'label': 'remote', 'box': {'xmin': 3_3_5, 'ymin': 7_4, 'xmax': 3_7_1, 'ymax': 1_8_7}},
{'score': 0.1_2_0_8, 'label': 'couch', 'box': {'xmin': 4, 'ymin': 0, 'xmax': 6_4_2, 'ymax': 4_7_6}},
],
[
{'score': 0.2_8_6_8, 'label': 'cat', 'box': {'xmin': 3_2_4, 'ymin': 2_0, 'xmax': 6_4_0, 'ymax': 3_7_3}},
{'score': 0.2_7_7, 'label': 'remote', 'box': {'xmin': 4_0, 'ymin': 7_2, 'xmax': 1_7_7, 'ymax': 1_1_5}},
{'score': 0.2_5_3_7, 'label': 'cat', 'box': {'xmin': 1, 'ymin': 5_5, 'xmax': 3_1_5, 'ymax': 4_7_2}},
{'score': 0.1_4_7_4, 'label': 'remote', 'box': {'xmin': 3_3_5, 'ymin': 7_4, 'xmax': 3_7_1, 'ymax': 1_8_7}},
{'score': 0.1_2_0_8, 'label': 'couch', 'box': {'xmin': 4, 'ymin': 0, 'xmax': 6_4_2, 'ymax': 4_7_6}},
],
], )
@require_tf
@unittest.skip('Zero Shot Object Detection not implemented in TF' )
def lowercase_ ( self : List[str] ) ->Any:
pass
@require_torch
@slow
def lowercase_ ( self : Optional[int] ) ->Tuple:
snake_case__ : Tuple = 0.2
snake_case__ : Union[str, Any] = pipeline('zero-shot-object-detection' )
snake_case__ : Optional[Any] = object_detector(
'http://images.cocodataset.org/val2017/000000039769.jpg', candidate_labels=['cat', 'remote', 'couch'], threshold=_snake_case, )
self.assertEqual(
nested_simplify(_snake_case, decimals=4 ), [
{'score': 0.2_8_6_8, 'label': 'cat', 'box': {'xmin': 3_2_4, 'ymin': 2_0, 'xmax': 6_4_0, 'ymax': 3_7_3}},
{'score': 0.2_7_7, 'label': 'remote', 'box': {'xmin': 4_0, 'ymin': 7_2, 'xmax': 1_7_7, 'ymax': 1_1_5}},
{'score': 0.2_5_3_7, 'label': 'cat', 'box': {'xmin': 1, 'ymin': 5_5, 'xmax': 3_1_5, 'ymax': 4_7_2}},
], )
@require_torch
@slow
def lowercase_ ( self : List[Any] ) ->str:
snake_case__ : List[Any] = 2
snake_case__ : Optional[int] = pipeline('zero-shot-object-detection' )
snake_case__ : List[str] = object_detector(
'http://images.cocodataset.org/val2017/000000039769.jpg', candidate_labels=['cat', 'remote', 'couch'], top_k=_snake_case, )
self.assertEqual(
nested_simplify(_snake_case, decimals=4 ), [
{'score': 0.2_8_6_8, 'label': 'cat', 'box': {'xmin': 3_2_4, 'ymin': 2_0, 'xmax': 6_4_0, 'ymax': 3_7_3}},
{'score': 0.2_7_7, 'label': 'remote', 'box': {'xmin': 4_0, 'ymin': 7_2, 'xmax': 1_7_7, 'ymax': 1_1_5}},
], )
| 277 |
import argparse
import torch
from transformers import LxmertConfig, LxmertForPreTraining, load_tf_weights_in_lxmert
from transformers.utils import logging
logging.set_verbosity_info()
def lowercase_ (A : str , A : List[Any] , A : Any ):
# Initialise PyTorch model
snake_case__ : List[Any] = LxmertConfig.from_json_file(A )
print(F'''Building PyTorch model from configuration: {config}''' )
snake_case__ : List[str] = LxmertForPreTraining(A )
# Load weights from tf checkpoint
load_tf_weights_in_lxmert(A , A , A )
# Save pytorch-model
print(F'''Save PyTorch model to {pytorch_dump_path}''' )
torch.save(model.state_dict() , A )
if __name__ == "__main__":
a_ :Union[str, Any] = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--tf_checkpoint_path", default=None, type=str, required=True, help="Path to the TensorFlow checkpoint path."
)
parser.add_argument(
"--config_file",
default=None,
type=str,
required=True,
help="The config json file corresponding to the pre-trained model. \nThis specifies the model architecture.",
)
parser.add_argument(
"--pytorch_dump_path", default=None, type=str, required=True, help="Path to the output PyTorch model."
)
a_ :Optional[int] = parser.parse_args()
convert_tf_checkpoint_to_pytorch(args.tf_checkpoint_path, args.config_file, args.pytorch_dump_path)
| 277 | 1 |
import argparse
import json
from pathlib import Path
import requests
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import (
SwiftFormerConfig,
SwiftFormerForImageClassification,
ViTImageProcessor,
)
from transformers.utils import logging
logging.set_verbosity_info()
a_ :Union[str, Any] = logging.get_logger(__name__)
a_ :int = torch.device("cpu")
def lowercase_ ():
snake_case__ : int = 'http://images.cocodataset.org/val2017/000000039769.jpg'
snake_case__ : Tuple = Image.open(requests.get(A , stream=A ).raw )
return im
def lowercase_ (A : Optional[Any] ):
if swiftformer_name == "swiftformer_xs":
return torch.tensor([-2.1_703e00, 2.1_107e00, -2.0_811e00, 8.8_685e-01, 2.4_360e-01] )
elif swiftformer_name == "swiftformer_s":
return torch.tensor([3.9_636e-01, 2.3_478e-01, -1.6_963e00, -1.7_381e00, -8.6_337e-01] )
elif swiftformer_name == "swiftformer_l1":
return torch.tensor([-4.2_768e-01, -4.7_429e-01, -1.0_897e00, -1.0_248e00, 3.5_523e-02] )
elif swiftformer_name == "swiftformer_l3":
return torch.tensor([-2.5_330e-01, 2.4_211e-01, -6.0_185e-01, -8.2_789e-01, -6.0_446e-02] )
def lowercase_ (A : List[Any] , A : Optional[Any] , A : Tuple ):
snake_case__ : str = dct.pop(A )
snake_case__ : Optional[Any] = val
def lowercase_ (A : Optional[int] ):
snake_case__ : List[str] = []
for k in state_dict.keys():
snake_case__ : List[str] = k
if ".pwconv" in k:
snake_case__ : Union[str, Any] = k_new.replace('.pwconv' , '.point_wise_conv' )
if ".dwconv" in k:
snake_case__ : Dict = k_new.replace('.dwconv' , '.depth_wise_conv' )
if ".Proj." in k:
snake_case__ : List[str] = k_new.replace('.Proj.' , '.proj.' )
if "patch_embed" in k_new:
snake_case__ : List[str] = k_new.replace('patch_embed' , 'swiftformer.patch_embed.patch_embedding' )
if "network" in k_new:
snake_case__ : Dict = k_new.split('.' )
if ls[2].isdigit():
snake_case__ : List[str] = 'swiftformer.encoder.network.' + ls[1] + '.blocks.' + ls[2] + '.' + '.'.join(ls[3:] )
else:
snake_case__ : Dict = k_new.replace('network' , 'swiftformer.encoder.network' )
rename_keys.append((k, k_new) )
return rename_keys
@torch.no_grad()
def lowercase_ (A : str , A : Optional[int] , A : Optional[int] ):
snake_case__ : Union[str, Any] = SwiftFormerConfig()
# dataset (ImageNet-21k only or also fine-tuned on ImageNet 2012), patch_size and image_size
snake_case__ : Any = 1_0_0_0
snake_case__ : Any = 'huggingface/label-files'
snake_case__ : Union[str, Any] = 'imagenet-1k-id2label.json'
snake_case__ : List[Any] = json.load(open(hf_hub_download(A , A , repo_type='dataset' ) , 'r' ) )
snake_case__ : Union[str, Any] = {int(A ): v for k, v in idalabel.items()}
snake_case__ : List[Any] = idalabel
snake_case__ : Union[str, Any] = {v: k for k, v in idalabel.items()}
# size of the architecture
if swiftformer_name == "swiftformer_xs":
snake_case__ : Optional[Any] = [3, 3, 6, 4]
snake_case__ : Union[str, Any] = [4_8, 5_6, 1_1_2, 2_2_0]
elif swiftformer_name == "swiftformer_s":
snake_case__ : Optional[int] = [3, 3, 9, 6]
snake_case__ : List[Any] = [4_8, 6_4, 1_6_8, 2_2_4]
elif swiftformer_name == "swiftformer_l1":
snake_case__ : Any = [4, 3, 1_0, 5]
snake_case__ : Dict = [4_8, 9_6, 1_9_2, 3_8_4]
elif swiftformer_name == "swiftformer_l3":
snake_case__ : Tuple = [4, 4, 1_2, 6]
snake_case__ : List[str] = [6_4, 1_2_8, 3_2_0, 5_1_2]
# load state_dict of original model, remove and rename some keys
if original_ckpt:
if original_ckpt.startswith('https' ):
snake_case__ : Tuple = torch.hub.load_state_dict_from_url(A , map_location='cpu' , check_hash=A )
else:
snake_case__ : Optional[int] = torch.load(A , map_location='cpu' )
snake_case__ : Optional[Any] = checkpoint
snake_case__ : int = create_rename_keys(A )
for rename_key_src, rename_key_dest in rename_keys:
rename_key(A , A , A )
# load HuggingFace model
snake_case__ : Union[str, Any] = SwiftFormerForImageClassification(A ).eval()
hf_model.load_state_dict(A )
# prepare test inputs
snake_case__ : Dict = prepare_img()
snake_case__ : Union[str, Any] = ViTImageProcessor.from_pretrained('preprocessor_config' )
snake_case__ : List[str] = processor(images=A , return_tensors='pt' )
# compare outputs from both models
snake_case__ : str = get_expected_output(A )
snake_case__ : Union[str, Any] = hf_model(inputs['pixel_values'] ).logits
assert hf_logits.shape == torch.Size([1, 1_0_0_0] )
assert torch.allclose(hf_logits[0, 0:5] , A , atol=1e-3 )
Path(A ).mkdir(exist_ok=A )
print(F'''Saving model {swiftformer_name} to {pytorch_dump_folder_path}''' )
hf_model.save_pretrained(A )
if __name__ == "__main__":
a_ :List[Any] = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--swiftformer_name",
default="swiftformer_xs",
choices=["swiftformer_xs", "swiftformer_s", "swiftformer_l1", "swiftformer_l3"],
type=str,
help="Name of the SwiftFormer model you'd like to convert.",
)
parser.add_argument(
"--pytorch_dump_folder_path",
default="./converted_outputs/",
type=str,
help="Path to the output PyTorch model directory.",
)
parser.add_argument("--original_ckpt", default=None, type=str, help="Path to the original model checkpoint.")
a_ :str = parser.parse_args()
convert_swiftformer_checkpoint(args.swiftformer_name, args.pytorch_dump_folder_path, args.original_ckpt)
| 277 |
import argparse
import fairseq
import torch
from torch import nn
from transformers import (
MBartaaTokenizer,
MBartConfig,
MBartForCausalLM,
SpeechEncoderDecoderConfig,
SpeechEncoderDecoderModel,
WavaVecaConfig,
WavaVecaFeatureExtractor,
WavaVecaModel,
logging,
)
logging.set_verbosity_info()
a_ :Tuple = logging.get_logger(__name__)
a_ :List[Any] = {
"post_extract_proj": "feature_projection.projection",
"encoder.pos_conv.0": "encoder.pos_conv_embed.conv",
"self_attn.k_proj": "encoder.layers.*.attention.k_proj",
"self_attn.v_proj": "encoder.layers.*.attention.v_proj",
"self_attn.q_proj": "encoder.layers.*.attention.q_proj",
"self_attn.out_proj": "encoder.layers.*.attention.out_proj",
"self_attn_layer_norm": "encoder.layers.*.layer_norm",
"fc1": "encoder.layers.*.feed_forward.intermediate_dense",
"fc2": "encoder.layers.*.feed_forward.output_dense",
"final_layer_norm": "encoder.layers.*.final_layer_norm",
"encoder.layer_norm": "encoder.layer_norm",
"w2v_model.layer_norm": "feature_projection.layer_norm",
"quantizer.weight_proj": "quantizer.weight_proj",
"quantizer.vars": "quantizer.codevectors",
"project_q": "project_q",
"final_proj": "project_hid",
"w2v_encoder.proj": "lm_head",
"mask_emb": "masked_spec_embed",
}
a_ :Optional[int] = [
"lm_head",
"quantizer.weight_proj",
"quantizer.codevectors",
"project_q",
"project_hid",
]
def lowercase_ (A : Union[str, Any] , A : str , A : Dict , A : Optional[Any] , A : Optional[Any] ):
for attribute in key.split('.' ):
snake_case__ : Any = getattr(A , A )
if weight_type is not None:
snake_case__ : Optional[Any] = getattr(A , A ).shape
else:
snake_case__ : Optional[int] = hf_pointer.shape
assert hf_shape == value.shape, (
F'''Shape of hf {key + "." + weight_type if weight_type is not None else ""} is {hf_shape}, but should be'''
F''' {value.shape} for {full_name}'''
)
if weight_type == "weight":
snake_case__ : Tuple = value
elif weight_type == "weight_g":
snake_case__ : Tuple = value
elif weight_type == "weight_v":
snake_case__ : List[Any] = value
elif weight_type == "bias":
snake_case__ : List[Any] = value
else:
snake_case__ : Optional[Any] = value
logger.info(F'''{key + "." + weight_type if weight_type is not None else ""} was initialized from {full_name}.''' )
def lowercase_ (A : str , A : Any ):
snake_case__ : Union[str, Any] = []
snake_case__ : Union[str, Any] = fairseq_model.state_dict()
snake_case__ : Union[str, Any] = hf_model.feature_extractor
snake_case__ : Any = hf_model.adapter
for name, value in fairseq_dict.items():
snake_case__ : Any = False
if "conv_layers" in name:
load_conv_layer(
A , A , A , A , hf_model.config.feat_extract_norm == 'group' , )
snake_case__ : List[Any] = True
elif any(x in name for x in ['adaptor', 'w2v_encoder.proj.', 'w2v_proj_ln.'] ):
load_adapter(A , A , A , A )
snake_case__ : Optional[Any] = True
else:
for key, mapped_key in MAPPING.items():
if key in name or key.split('w2v_model.' )[-1] == name.split('.' )[0]:
snake_case__ : Tuple = True
if "*" in mapped_key:
snake_case__ : List[Any] = name.split(A )[0].split('.' )[-2]
snake_case__ : Optional[int] = mapped_key.replace('*' , A )
if "weight_g" in name:
snake_case__ : Optional[int] = 'weight_g'
elif "weight_v" in name:
snake_case__ : Optional[Any] = 'weight_v'
elif "bias" in name:
snake_case__ : Union[str, Any] = 'bias'
elif "weight" in name:
snake_case__ : Optional[int] = 'weight'
else:
snake_case__ : Tuple = None
set_recursively(A , A , A , A , A )
continue
if not is_used:
unused_weights.append(A )
logger.warning(F'''Unused weights: {unused_weights}''' )
def lowercase_ (A : Union[str, Any] , A : Any , A : str , A : str , A : int ):
snake_case__ : str = full_name.split('conv_layers.' )[-1]
snake_case__ : Optional[int] = name.split('.' )
snake_case__ : Tuple = int(items[0] )
snake_case__ : Any = int(items[1] )
if type_id == 0:
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.bias.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.bias.data.shape} was found.'''
)
snake_case__ : Union[str, Any] = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.weight.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.weight.data.shape} was found.'''
)
snake_case__ : Union[str, Any] = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif (type_id == 2 and not use_group_norm) or (type_id == 2 and layer_id == 0 and use_group_norm):
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape, (
F'''{full_name} has size {value.shape}, but {feature_extractor[layer_id].layer_norm.bias.data.shape} was'''
" found."
)
snake_case__ : Optional[int] = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor[layer_id].layer_norm.weight.data.shape} was found.'''
)
snake_case__ : Optional[Any] = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
else:
unused_weights.append(A )
def lowercase_ (A : Optional[Any] , A : Any , A : Tuple , A : Any ):
snake_case__ : List[str] = full_name.split('adaptor.' )[-1]
snake_case__ : Tuple = name.split('.' )
if items[1].isdigit():
snake_case__ : Optional[int] = int(items[1] )
else:
snake_case__ : Any = None
if "adaptor" not in full_name:
if "proj_ln" in full_name:
# has to be layer norm
if "bias" in name:
assert (
value.shape == adapter.proj_layer_norm.bias.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj_layer_norm.bias.data.shape} was found.'''
snake_case__ : List[Any] = value
logger.info(F'''Adapter proj layer norm bias was initialized from {full_name}.''' )
if "weight" in name:
assert (
value.shape == adapter.proj_layer_norm.weight.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj_layer_norm.weight.data.shape} was found.'''
snake_case__ : int = value
else:
# has to be projection layer
if "bias" in name:
assert (
value.shape == adapter.proj.bias.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj.bias.data.shape} was found.'''
snake_case__ : str = value
logger.info(F'''Adapter proj layer bias was initialized from {full_name}.''' )
if "weight" in name:
assert (
value.shape == adapter.proj.weight.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj.weight.data.shape} was found.'''
snake_case__ : Dict = value
logger.info(F'''Adapter proj layer weight was initialized from {full_name}.''' )
elif isinstance(A , A ):
if "bias" in name:
assert (
value.shape == adapter.layers[layer_id].conv.bias.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.layers[layer_id].conv.bias.data.shape} was found.'''
snake_case__ : List[str] = value
logger.info(F'''Adapter layer {layer_id} bias was initialized from {full_name}.''' )
elif "weight" in name:
assert (
value.shape == adapter.layers[layer_id].conv.weight.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.layers[layer_id].conv.weight.data.shape} was found.'''
snake_case__ : List[str] = value
logger.info(F'''Adapter layer {layer_id} bias was initialized from {full_name}.''' )
else:
unused_weights.append(A )
def lowercase_ (A : int ):
snake_case__ , snake_case__ : Union[str, Any] = emb.weight.shape
snake_case__ : int = nn.Linear(A , A , bias=A )
snake_case__ : Optional[Any] = emb.weight.data
return lin_layer
@torch.no_grad()
def lowercase_ (A : Tuple , A : Tuple , A : Any , A : Optional[Any] , A : int , A : Optional[Any] , A : Union[str, Any] , A : Union[str, Any] , A : Optional[Any] , A : List[Any] , A : Union[str, Any] , ):
snake_case__ : Optional[Any] = WavaVecaConfig.from_pretrained(
A , add_adapter=A , adapter_stride=A , adapter_kernel_size=A , use_auth_token=A , output_hidden_size=A , )
snake_case__ : Dict = MBartConfig.from_pretrained(A )
# load model
snake_case__ , snake_case__ , snake_case__ : Any = fairseq.checkpoint_utils.load_model_ensemble_and_task(
[checkpoint_path] , arg_overrides={
'config_yaml': config_yaml_path,
'data': '/'.join(dict_path.split('/' )[:-1] ),
'w2v_path': checkpoint_path,
'load_pretrained_decoder_from': None,
} , )
snake_case__ : List[Any] = model[0].eval()
# load feature extractor
snake_case__ : str = WavaVecaFeatureExtractor.from_pretrained(A , use_auth_token=A )
# set weights for wav2vec2 encoder
snake_case__ : List[str] = WavaVecaModel(A )
recursively_load_weights_wavaveca(model.encoder , A )
# load decoder weights
snake_case__ : Any = MBartForCausalLM(A )
snake_case__ , snake_case__ : int = hf_decoder.model.decoder.load_state_dict(model.decoder.state_dict() , strict=A )
logger.warning(F'''The following keys are missing when loading the decoder weights: {missing_keys}''' )
logger.warning(F'''The following keys are unexpected when loading the decoder weights: {unexpected_keys}''' )
snake_case__ : Union[str, Any] = SpeechEncoderDecoderModel(encoder=A , decoder=A )
snake_case__ : str = False
snake_case__ : int = MBartaaTokenizer(A )
tokenizer.save_pretrained(A )
snake_case__ : Any = hf_wavavec.config.to_dict()
snake_case__ : Tuple = tokenizer.pad_token_id
snake_case__ : Union[str, Any] = tokenizer.bos_token_id
snake_case__ : Dict = tokenizer.eos_token_id
snake_case__ : Optional[int] = 'mbart50'
snake_case__ : Union[str, Any] = 'wav2vec2'
snake_case__ : List[str] = tokenizer.eos_token_id
snake_case__ : Union[str, Any] = 2_5_0_0_0_4
snake_case__ : int = tokenizer.eos_token_id
snake_case__ : Union[str, Any] = SpeechEncoderDecoderConfig.from_dict(A )
hf_wavavec.save_pretrained(A )
feature_extractor.save_pretrained(A )
if __name__ == "__main__":
a_ :str = argparse.ArgumentParser()
parser.add_argument("--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model.")
parser.add_argument("--checkpoint_path", default=None, type=str, help="Path to fairseq checkpoint")
parser.add_argument("--dict_path", default=None, type=str, help="Path to dict of fine-tuned model")
parser.add_argument("--config_yaml_path", default=None, type=str, help="Path to yaml file of fine-tuned model")
parser.add_argument(
"--encoder_config_path",
default="facebook/wav2vec2-xls-r-1b",
type=str,
help="Path to hf encoder wav2vec2 checkpoint config",
)
parser.add_argument(
"--decoder_config_path",
default="facebook/mbart-large-50-one-to-many-mmt",
type=str,
help="Path to hf decoder checkpoint config",
)
parser.add_argument("--add_adapter", default=True, type=bool, help="whethere to add model adapter layers")
parser.add_argument("--adapter_stride", default=2, type=int, help="stride of adapter layers")
parser.add_argument("--adapter_kernel_size", default=3, type=int, help="kernel size of adapter layers")
parser.add_argument("--encoder_output_dim", default=1_024, type=int, help="encoder output dim")
parser.add_argument("--start_token_id", default=250_004, type=int, help="`decoder_start_token_id` of model config")
a_ :Union[str, Any] = parser.parse_args()
convert_wavaveca_checkpoint(
args.checkpoint_path,
args.pytorch_dump_folder_path,
args.dict_path,
args.config_yaml_path,
encoder_config_path=args.encoder_config_path,
decoder_config_path=args.decoder_config_path,
add_adapter=args.add_adapter,
adapter_kernel_size=args.adapter_kernel_size,
adapter_stride=args.adapter_stride,
decoder_start_token_id=args.start_token_id,
encoder_output_dim=args.encoder_output_dim,
)
| 277 | 1 |
import os
import unittest
from transformers.models.transfo_xl.tokenization_transfo_xl import VOCAB_FILES_NAMES, TransfoXLTokenizer
from ...test_tokenization_common import TokenizerTesterMixin
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = TransfoXLTokenizer
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
def lowercase_ ( self : Optional[int] ) ->Any:
super().setUp()
snake_case__ : Tuple = [
'<unk>',
'[CLS]',
'[SEP]',
'want',
'unwanted',
'wa',
'un',
'running',
',',
'low',
'l',
]
snake_case__ : Any = os.path.join(self.tmpdirname, VOCAB_FILES_NAMES['vocab_file'] )
with open(self.vocab_file, 'w', encoding='utf-8' ) as vocab_writer:
vocab_writer.write(''.join([x + '\n' for x in vocab_tokens] ) )
def lowercase_ ( self : Union[str, Any], **_snake_case : List[Any] ) ->Dict:
snake_case__ : str = True
return TransfoXLTokenizer.from_pretrained(self.tmpdirname, **_snake_case )
def lowercase_ ( self : Optional[Any], _snake_case : str ) ->Dict:
snake_case__ : List[Any] = '<unk> UNwanted , running'
snake_case__ : List[Any] = '<unk> unwanted, running'
return input_text, output_text
def lowercase_ ( self : List[Any] ) ->Tuple:
snake_case__ : Dict = TransfoXLTokenizer(vocab_file=self.vocab_file, lower_case=_snake_case )
snake_case__ : str = tokenizer.tokenize('<unk> UNwanted , running' )
self.assertListEqual(_snake_case, ['<unk>', 'unwanted', ',', 'running'] )
self.assertListEqual(tokenizer.convert_tokens_to_ids(_snake_case ), [0, 4, 8, 7] )
def lowercase_ ( self : List[str] ) ->List[Any]:
snake_case__ : str = TransfoXLTokenizer(lower_case=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHeLLo ! how \n Are yoU ? ' ), ['hello', '!', 'how', 'are', 'you', '?'] )
def lowercase_ ( self : Optional[int] ) ->Optional[Any]:
snake_case__ : Optional[int] = TransfoXLTokenizer(lower_case=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHeLLo ! how \n Are yoU ? ' ), ['HeLLo', '!', 'how', 'Are', 'yoU', '?'] )
def lowercase_ ( self : Optional[int] ) ->Union[str, Any]:
snake_case__ : List[Any] = TransfoXLTokenizer(lower_case=_snake_case )
snake_case__ : Dict = 'Hello (bracket) and side-scrolled [and] Henry\'s $5,000 with 3.34 m. What\'s up!?'
snake_case__ : List[Any] = [
'Hello',
'(',
'bracket',
')',
'and',
'side',
'@-@',
'scrolled',
'[',
'and',
']',
'Henry',
'\'s',
'$',
'5',
'@,@',
'000',
'with',
'3',
'@.@',
'34',
'm',
'.',
'What',
'\'s',
'up',
'!',
'?',
]
self.assertListEqual(tokenizer.tokenize(_snake_case ), _snake_case )
self.assertEqual(tokenizer.convert_tokens_to_string(_snake_case ), _snake_case )
def lowercase_ ( self : Dict ) ->Any:
snake_case__ : Dict = self.get_tokenizer()
snake_case__ : Optional[Any] = len(_snake_case )
tokenizer.add_tokens(['new1', 'new2'] )
tokenizer.move_added_token('new1', 1 )
# Check that moved token is not copied (duplicate)
self.assertEqual(len(_snake_case ), original_len + 2 )
# Check that token is moved to specified id
self.assertEqual(tokenizer.encode('new1' ), [1] )
self.assertEqual(tokenizer.decode([1] ), 'new1' )
| 277 |
from collections import OrderedDict
from typing import TYPE_CHECKING, Any, Mapping, Optional, Union
from ...configuration_utils import PretrainedConfig
from ...onnx import OnnxConfig
from ...utils import logging
if TYPE_CHECKING:
from ... import FeatureExtractionMixin, PreTrainedTokenizerBase, TensorType
a_ :Tuple = logging.get_logger(__name__)
a_ :Union[str, Any] = {
"microsoft/deberta-v2-xlarge": "https://huggingface.co/microsoft/deberta-v2-xlarge/resolve/main/config.json",
"microsoft/deberta-v2-xxlarge": "https://huggingface.co/microsoft/deberta-v2-xxlarge/resolve/main/config.json",
"microsoft/deberta-v2-xlarge-mnli": (
"https://huggingface.co/microsoft/deberta-v2-xlarge-mnli/resolve/main/config.json"
),
"microsoft/deberta-v2-xxlarge-mnli": (
"https://huggingface.co/microsoft/deberta-v2-xxlarge-mnli/resolve/main/config.json"
),
}
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = """deberta-v2"""
def __init__( self : Union[str, Any], _snake_case : Dict=1_2_8_1_0_0, _snake_case : Any=1_5_3_6, _snake_case : Tuple=2_4, _snake_case : int=2_4, _snake_case : Optional[int]=6_1_4_4, _snake_case : Optional[int]="gelu", _snake_case : Optional[int]=0.1, _snake_case : List[str]=0.1, _snake_case : str=5_1_2, _snake_case : Optional[int]=0, _snake_case : Optional[int]=0.0_2, _snake_case : Dict=1e-7, _snake_case : int=False, _snake_case : Any=-1, _snake_case : List[str]=0, _snake_case : Tuple=True, _snake_case : Any=None, _snake_case : Union[str, Any]=0, _snake_case : Tuple="gelu", **_snake_case : Union[str, Any], ) ->Optional[int]:
super().__init__(**_snake_case )
snake_case__ : Dict = hidden_size
snake_case__ : Optional[int] = num_hidden_layers
snake_case__ : Any = num_attention_heads
snake_case__ : List[Any] = intermediate_size
snake_case__ : List[Any] = hidden_act
snake_case__ : Union[str, Any] = hidden_dropout_prob
snake_case__ : Dict = attention_probs_dropout_prob
snake_case__ : List[str] = max_position_embeddings
snake_case__ : List[str] = type_vocab_size
snake_case__ : Optional[Any] = initializer_range
snake_case__ : Optional[int] = relative_attention
snake_case__ : Tuple = max_relative_positions
snake_case__ : Union[str, Any] = pad_token_id
snake_case__ : Optional[int] = position_biased_input
# Backwards compatibility
if type(_snake_case ) == str:
snake_case__ : int = [x.strip() for x in pos_att_type.lower().split('|' )]
snake_case__ : List[str] = pos_att_type
snake_case__ : Union[str, Any] = vocab_size
snake_case__ : Optional[int] = layer_norm_eps
snake_case__ : Optional[int] = kwargs.get('pooler_hidden_size', _snake_case )
snake_case__ : int = pooler_dropout
snake_case__ : str = pooler_hidden_act
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
@property
def lowercase_ ( self : Optional[int] ) ->Mapping[str, Mapping[int, str]]:
if self.task == "multiple-choice":
snake_case__ : List[Any] = {0: 'batch', 1: 'choice', 2: 'sequence'}
else:
snake_case__ : int = {0: 'batch', 1: 'sequence'}
if self._config.type_vocab_size > 0:
return OrderedDict(
[('input_ids', dynamic_axis), ('attention_mask', dynamic_axis), ('token_type_ids', dynamic_axis)] )
else:
return OrderedDict([('input_ids', dynamic_axis), ('attention_mask', dynamic_axis)] )
@property
def lowercase_ ( self : Dict ) ->int:
return 1_2
def lowercase_ ( self : Tuple, _snake_case : Union["PreTrainedTokenizerBase", "FeatureExtractionMixin"], _snake_case : int = -1, _snake_case : int = -1, _snake_case : int = -1, _snake_case : bool = False, _snake_case : Optional["TensorType"] = None, _snake_case : int = 3, _snake_case : int = 4_0, _snake_case : int = 4_0, _snake_case : "PreTrainedTokenizerBase" = None, ) ->Mapping[str, Any]:
snake_case__ : Union[str, Any] = super().generate_dummy_inputs(preprocessor=_snake_case, framework=_snake_case )
if self._config.type_vocab_size == 0 and "token_type_ids" in dummy_inputs:
del dummy_inputs["token_type_ids"]
return dummy_inputs
| 277 | 1 |
from typing import TYPE_CHECKING
from ...utils import (
OptionalDependencyNotAvailable,
_LazyModule,
is_sentencepiece_available,
is_tokenizers_available,
is_torch_available,
)
a_ :Optional[Any] = {"configuration_reformer": ["REFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP", "ReformerConfig"]}
try:
if not is_sentencepiece_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :str = ["ReformerTokenizer"]
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :int = ["ReformerTokenizerFast"]
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :List[str] = [
"REFORMER_PRETRAINED_MODEL_ARCHIVE_LIST",
"ReformerAttention",
"ReformerForMaskedLM",
"ReformerForQuestionAnswering",
"ReformerForSequenceClassification",
"ReformerLayer",
"ReformerModel",
"ReformerModelWithLMHead",
"ReformerPreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_reformer import REFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP, ReformerConfig
try:
if not is_sentencepiece_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_reformer import ReformerTokenizer
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_reformer_fast import ReformerTokenizerFast
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_reformer import (
REFORMER_PRETRAINED_MODEL_ARCHIVE_LIST,
ReformerAttention,
ReformerForMaskedLM,
ReformerForQuestionAnswering,
ReformerForSequenceClassification,
ReformerLayer,
ReformerModel,
ReformerModelWithLMHead,
ReformerPreTrainedModel,
)
else:
import sys
a_ :Optional[Any] = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 277 |
import argparse
import json
import pickle
from pathlib import Path
import requests
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import MaskFormerConfig, MaskFormerForInstanceSegmentation, MaskFormerImageProcessor, SwinConfig
from transformers.utils import logging
logging.set_verbosity_info()
a_ :str = logging.get_logger(__name__)
def lowercase_ (A : str ):
snake_case__ : Tuple = SwinConfig.from_pretrained(
'microsoft/swin-tiny-patch4-window7-224' , out_features=['stage1', 'stage2', 'stage3', 'stage4'] )
snake_case__ : List[Any] = MaskFormerConfig(backbone_config=A )
snake_case__ : Union[str, Any] = 'huggingface/label-files'
if "ade20k-full" in model_name:
# this should be ok
snake_case__ : Dict = 8_4_7
snake_case__ : List[str] = 'maskformer-ade20k-full-id2label.json'
elif "ade" in model_name:
# this should be ok
snake_case__ : Union[str, Any] = 1_5_0
snake_case__ : Any = 'ade20k-id2label.json'
elif "coco-stuff" in model_name:
# this should be ok
snake_case__ : List[str] = 1_7_1
snake_case__ : Union[str, Any] = 'maskformer-coco-stuff-id2label.json'
elif "coco" in model_name:
# TODO
snake_case__ : Dict = 1_3_3
snake_case__ : str = 'coco-panoptic-id2label.json'
elif "cityscapes" in model_name:
# this should be ok
snake_case__ : List[str] = 1_9
snake_case__ : Union[str, Any] = 'cityscapes-id2label.json'
elif "vistas" in model_name:
# this should be ok
snake_case__ : Tuple = 6_5
snake_case__ : List[str] = 'mapillary-vistas-id2label.json'
snake_case__ : Dict = json.load(open(hf_hub_download(A , A , repo_type='dataset' ) , 'r' ) )
snake_case__ : List[str] = {int(A ): v for k, v in idalabel.items()}
return config
def lowercase_ (A : Any ):
snake_case__ : Optional[int] = []
# stem
# fmt: off
rename_keys.append(('backbone.patch_embed.proj.weight', 'model.pixel_level_module.encoder.model.embeddings.patch_embeddings.projection.weight') )
rename_keys.append(('backbone.patch_embed.proj.bias', 'model.pixel_level_module.encoder.model.embeddings.patch_embeddings.projection.bias') )
rename_keys.append(('backbone.patch_embed.norm.weight', 'model.pixel_level_module.encoder.model.embeddings.norm.weight') )
rename_keys.append(('backbone.patch_embed.norm.bias', 'model.pixel_level_module.encoder.model.embeddings.norm.bias') )
# stages
for i in range(len(config.backbone_config.depths ) ):
for j in range(config.backbone_config.depths[i] ):
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.norm1.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_before.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.norm1.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_before.bias''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.attn.relative_position_bias_table''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_bias_table''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.attn.relative_position_index''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_index''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.attn.proj.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.attn.proj.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.bias''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.norm2.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_after.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.norm2.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_after.bias''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.mlp.fc1.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.mlp.fc1.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.bias''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.mlp.fc2.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.output.dense.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.mlp.fc2.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.output.dense.bias''') )
if i < 3:
rename_keys.append((F'''backbone.layers.{i}.downsample.reduction.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.reduction.weight''') )
rename_keys.append((F'''backbone.layers.{i}.downsample.norm.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.norm.weight''') )
rename_keys.append((F'''backbone.layers.{i}.downsample.norm.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.norm.bias''') )
rename_keys.append((F'''backbone.norm{i}.weight''', F'''model.pixel_level_module.encoder.hidden_states_norms.{i}.weight''') )
rename_keys.append((F'''backbone.norm{i}.bias''', F'''model.pixel_level_module.encoder.hidden_states_norms.{i}.bias''') )
# FPN
rename_keys.append(('sem_seg_head.layer_4.weight', 'model.pixel_level_module.decoder.fpn.stem.0.weight') )
rename_keys.append(('sem_seg_head.layer_4.norm.weight', 'model.pixel_level_module.decoder.fpn.stem.1.weight') )
rename_keys.append(('sem_seg_head.layer_4.norm.bias', 'model.pixel_level_module.decoder.fpn.stem.1.bias') )
for source_index, target_index in zip(range(3 , 0 , -1 ) , range(0 , 3 ) ):
rename_keys.append((F'''sem_seg_head.adapter_{source_index}.weight''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.0.weight''') )
rename_keys.append((F'''sem_seg_head.adapter_{source_index}.norm.weight''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.1.weight''') )
rename_keys.append((F'''sem_seg_head.adapter_{source_index}.norm.bias''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.1.bias''') )
rename_keys.append((F'''sem_seg_head.layer_{source_index}.weight''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.block.0.weight''') )
rename_keys.append((F'''sem_seg_head.layer_{source_index}.norm.weight''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.block.1.weight''') )
rename_keys.append((F'''sem_seg_head.layer_{source_index}.norm.bias''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.block.1.bias''') )
rename_keys.append(('sem_seg_head.mask_features.weight', 'model.pixel_level_module.decoder.mask_projection.weight') )
rename_keys.append(('sem_seg_head.mask_features.bias', 'model.pixel_level_module.decoder.mask_projection.bias') )
# Transformer decoder
for idx in range(config.decoder_config.decoder_layers ):
# self-attention out projection
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.out_proj.weight''', F'''model.transformer_module.decoder.layers.{idx}.self_attn.out_proj.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.out_proj.bias''', F'''model.transformer_module.decoder.layers.{idx}.self_attn.out_proj.bias''') )
# cross-attention out projection
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.out_proj.weight''', F'''model.transformer_module.decoder.layers.{idx}.encoder_attn.out_proj.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.out_proj.bias''', F'''model.transformer_module.decoder.layers.{idx}.encoder_attn.out_proj.bias''') )
# MLP 1
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear1.weight''', F'''model.transformer_module.decoder.layers.{idx}.fc1.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear1.bias''', F'''model.transformer_module.decoder.layers.{idx}.fc1.bias''') )
# MLP 2
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear2.weight''', F'''model.transformer_module.decoder.layers.{idx}.fc2.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear2.bias''', F'''model.transformer_module.decoder.layers.{idx}.fc2.bias''') )
# layernorm 1 (self-attention layernorm)
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm1.weight''', F'''model.transformer_module.decoder.layers.{idx}.self_attn_layer_norm.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm1.bias''', F'''model.transformer_module.decoder.layers.{idx}.self_attn_layer_norm.bias''') )
# layernorm 2 (cross-attention layernorm)
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm2.weight''', F'''model.transformer_module.decoder.layers.{idx}.encoder_attn_layer_norm.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm2.bias''', F'''model.transformer_module.decoder.layers.{idx}.encoder_attn_layer_norm.bias''') )
# layernorm 3 (final layernorm)
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm3.weight''', F'''model.transformer_module.decoder.layers.{idx}.final_layer_norm.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm3.bias''', F'''model.transformer_module.decoder.layers.{idx}.final_layer_norm.bias''') )
rename_keys.append(('sem_seg_head.predictor.transformer.decoder.norm.weight', 'model.transformer_module.decoder.layernorm.weight') )
rename_keys.append(('sem_seg_head.predictor.transformer.decoder.norm.bias', 'model.transformer_module.decoder.layernorm.bias') )
# heads on top
rename_keys.append(('sem_seg_head.predictor.query_embed.weight', 'model.transformer_module.queries_embedder.weight') )
rename_keys.append(('sem_seg_head.predictor.input_proj.weight', 'model.transformer_module.input_projection.weight') )
rename_keys.append(('sem_seg_head.predictor.input_proj.bias', 'model.transformer_module.input_projection.bias') )
rename_keys.append(('sem_seg_head.predictor.class_embed.weight', 'class_predictor.weight') )
rename_keys.append(('sem_seg_head.predictor.class_embed.bias', 'class_predictor.bias') )
for i in range(3 ):
rename_keys.append((F'''sem_seg_head.predictor.mask_embed.layers.{i}.weight''', F'''mask_embedder.{i}.0.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.mask_embed.layers.{i}.bias''', F'''mask_embedder.{i}.0.bias''') )
# fmt: on
return rename_keys
def lowercase_ (A : Tuple , A : Tuple , A : Optional[Any] ):
snake_case__ : Optional[int] = dct.pop(A )
snake_case__ : Union[str, Any] = val
def lowercase_ (A : Optional[Any] , A : Tuple ):
snake_case__ : Optional[int] = [int(backbone_config.embed_dim * 2**i ) for i in range(len(backbone_config.depths ) )]
for i in range(len(backbone_config.depths ) ):
snake_case__ : Optional[int] = num_features[i]
for j in range(backbone_config.depths[i] ):
# fmt: off
# read in weights + bias of input projection layer (in original implementation, this is a single matrix + bias)
snake_case__ : int = state_dict.pop(F'''backbone.layers.{i}.blocks.{j}.attn.qkv.weight''' )
snake_case__ : Tuple = state_dict.pop(F'''backbone.layers.{i}.blocks.{j}.attn.qkv.bias''' )
# next, add query, keys and values (in that order) to the state dict
snake_case__ : str = in_proj_weight[:dim, :]
snake_case__ : int = in_proj_bias[: dim]
snake_case__ : List[Any] = in_proj_weight[
dim : dim * 2, :
]
snake_case__ : List[str] = in_proj_bias[
dim : dim * 2
]
snake_case__ : List[Any] = in_proj_weight[
-dim :, :
]
snake_case__ : Dict = in_proj_bias[-dim :]
# fmt: on
def lowercase_ (A : List[str] , A : List[Any] ):
# fmt: off
snake_case__ : str = config.decoder_config.hidden_size
for idx in range(config.decoder_config.decoder_layers ):
# read in weights + bias of self-attention input projection layer (in the original implementation, this is a single matrix + bias)
snake_case__ : List[Any] = state_dict.pop(F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.in_proj_weight''' )
snake_case__ : int = state_dict.pop(F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.in_proj_bias''' )
# next, add query, keys and values (in that order) to the state dict
snake_case__ : Any = in_proj_weight[: hidden_size, :]
snake_case__ : Tuple = in_proj_bias[:config.hidden_size]
snake_case__ : List[str] = in_proj_weight[hidden_size : hidden_size * 2, :]
snake_case__ : Dict = in_proj_bias[hidden_size : hidden_size * 2]
snake_case__ : Any = in_proj_weight[-hidden_size :, :]
snake_case__ : int = in_proj_bias[-hidden_size :]
# read in weights + bias of cross-attention input projection layer (in the original implementation, this is a single matrix + bias)
snake_case__ : List[Any] = state_dict.pop(F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.in_proj_weight''' )
snake_case__ : List[str] = state_dict.pop(F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.in_proj_bias''' )
# next, add query, keys and values (in that order) to the state dict
snake_case__ : Optional[int] = in_proj_weight[: hidden_size, :]
snake_case__ : Optional[Any] = in_proj_bias[:config.hidden_size]
snake_case__ : int = in_proj_weight[hidden_size : hidden_size * 2, :]
snake_case__ : List[str] = in_proj_bias[hidden_size : hidden_size * 2]
snake_case__ : List[str] = in_proj_weight[-hidden_size :, :]
snake_case__ : str = in_proj_bias[-hidden_size :]
# fmt: on
def lowercase_ ():
snake_case__ : Any = 'http://images.cocodataset.org/val2017/000000039769.jpg'
snake_case__ : int = Image.open(requests.get(A , stream=A ).raw )
return im
@torch.no_grad()
def lowercase_ (A : str , A : str , A : str , A : bool = False ):
snake_case__ : Optional[int] = get_maskformer_config(A )
# load original state_dict
with open(A , 'rb' ) as f:
snake_case__ : List[Any] = pickle.load(A )
snake_case__ : Optional[int] = data['model']
# for name, param in state_dict.items():
# print(name, param.shape)
# rename keys
snake_case__ : List[str] = create_rename_keys(A )
for src, dest in rename_keys:
rename_key(A , A , A )
read_in_swin_q_k_v(A , config.backbone_config )
read_in_decoder_q_k_v(A , A )
# update to torch tensors
for key, value in state_dict.items():
snake_case__ : int = torch.from_numpy(A )
# load 🤗 model
snake_case__ : str = MaskFormerForInstanceSegmentation(A )
model.eval()
for name, param in model.named_parameters():
print(A , param.shape )
snake_case__ , snake_case__ : Union[str, Any] = model.load_state_dict(A , strict=A )
assert missing_keys == [
"model.pixel_level_module.encoder.model.layernorm.weight",
"model.pixel_level_module.encoder.model.layernorm.bias",
]
assert len(A ) == 0, F'''Unexpected keys: {unexpected_keys}'''
# verify results
snake_case__ : Optional[Any] = prepare_img()
if "vistas" in model_name:
snake_case__ : int = 6_5
elif "cityscapes" in model_name:
snake_case__ : Dict = 6_5_5_3_5
else:
snake_case__ : Tuple = 2_5_5
snake_case__ : Optional[int] = True if 'ade' in model_name else False
snake_case__ : Dict = MaskFormerImageProcessor(ignore_index=A , reduce_labels=A )
snake_case__ : Any = image_processor(A , return_tensors='pt' )
snake_case__ : Any = model(**A )
print('Logits:' , outputs.class_queries_logits[0, :3, :3] )
if model_name == "maskformer-swin-tiny-ade":
snake_case__ : Tuple = torch.tensor(
[[3.6353, -4.4770, -2.6065], [0.5081, -4.2394, -3.5343], [2.1909, -5.0353, -1.9323]] )
assert torch.allclose(outputs.class_queries_logits[0, :3, :3] , A , atol=1e-4 )
print('Looks ok!' )
if pytorch_dump_folder_path is not None:
print(F'''Saving model and image processor to {pytorch_dump_folder_path}''' )
Path(A ).mkdir(exist_ok=A )
model.save_pretrained(A )
image_processor.save_pretrained(A )
if push_to_hub:
print('Pushing model and image processor to the hub...' )
model.push_to_hub(F'''nielsr/{model_name}''' )
image_processor.push_to_hub(F'''nielsr/{model_name}''' )
if __name__ == "__main__":
a_ :Optional[int] = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--model_name",
default="maskformer-swin-tiny-ade",
type=str,
help=("Name of the MaskFormer model you'd like to convert",),
)
parser.add_argument(
"--checkpoint_path",
default="/Users/nielsrogge/Documents/MaskFormer_checkpoints/MaskFormer-Swin-tiny-ADE20k/model.pkl",
type=str,
help="Path to the original state dict (.pth file).",
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model directory."
)
parser.add_argument(
"--push_to_hub", action="store_true", help="Whether or not to push the converted model to the 🤗 hub."
)
a_ :Dict = parser.parse_args()
convert_maskformer_checkpoint(
args.model_name, args.checkpoint_path, args.pytorch_dump_folder_path, args.push_to_hub
)
| 277 | 1 |
import requests
a_ :Tuple = "YOUR API KEY"
def lowercase_ (A : str , A : str = giphy_api_key ):
snake_case__ : Optional[int] = '+'.join(query.split() )
snake_case__ : List[str] = F'''https://api.giphy.com/v1/gifs/search?q={formatted_query}&api_key={api_key}'''
snake_case__ : Any = requests.get(A ).json()['data']
return [gif["url"] for gif in gifs]
if __name__ == "__main__":
print("\n".join(get_gifs("space ship")))
| 277 |
import unittest
from transformers import is_torch_available
from transformers.testing_utils import require_torch, slow, torch_device
from ...generation.test_utils import GenerationTesterMixin
from ...test_configuration_common import ConfigTester
from ...test_modeling_common import ModelTesterMixin, ids_tensor
from ...test_pipeline_mixin import PipelineTesterMixin
if is_torch_available():
import torch
from transformers import (
OPENAI_GPT_PRETRAINED_MODEL_ARCHIVE_LIST,
OpenAIGPTConfig,
OpenAIGPTDoubleHeadsModel,
OpenAIGPTForSequenceClassification,
OpenAIGPTLMHeadModel,
OpenAIGPTModel,
)
class snake_case__ :
"""simple docstring"""
def __init__( self : List[str], _snake_case : Any, _snake_case : int=1_3, _snake_case : Optional[int]=7, _snake_case : int=True, _snake_case : Optional[Any]=True, _snake_case : Optional[Any]=True, _snake_case : Union[str, Any]=9_9, _snake_case : Optional[Any]=3_2, _snake_case : Tuple=5, _snake_case : str=4, _snake_case : Any=3_7, _snake_case : int="gelu", _snake_case : Optional[Any]=0.1, _snake_case : str=0.1, _snake_case : str=5_1_2, _snake_case : Dict=1_6, _snake_case : str=2, _snake_case : Union[str, Any]=0.0_2, _snake_case : Optional[int]=3, _snake_case : Union[str, Any]=4, _snake_case : Tuple=None, ) ->Optional[Any]:
snake_case__ : Optional[int] = parent
snake_case__ : List[Any] = batch_size
snake_case__ : Tuple = seq_length
snake_case__ : str = is_training
snake_case__ : Optional[int] = use_token_type_ids
snake_case__ : Any = use_labels
snake_case__ : Dict = vocab_size
snake_case__ : str = hidden_size
snake_case__ : Union[str, Any] = num_hidden_layers
snake_case__ : List[str] = num_attention_heads
snake_case__ : Union[str, Any] = intermediate_size
snake_case__ : List[Any] = hidden_act
snake_case__ : int = hidden_dropout_prob
snake_case__ : str = attention_probs_dropout_prob
snake_case__ : Any = max_position_embeddings
snake_case__ : Union[str, Any] = type_vocab_size
snake_case__ : Optional[Any] = type_sequence_label_size
snake_case__ : Optional[int] = initializer_range
snake_case__ : Optional[int] = num_labels
snake_case__ : str = num_choices
snake_case__ : int = scope
snake_case__ : List[str] = self.vocab_size - 1
def lowercase_ ( self : Union[str, Any] ) ->Tuple:
snake_case__ : List[str] = ids_tensor([self.batch_size, self.seq_length], self.vocab_size )
snake_case__ : List[str] = None
if self.use_token_type_ids:
snake_case__ : Optional[Any] = ids_tensor([self.batch_size, self.seq_length], self.type_vocab_size )
snake_case__ : Tuple = None
snake_case__ : str = None
snake_case__ : List[Any] = None
if self.use_labels:
snake_case__ : Dict = ids_tensor([self.batch_size], self.type_sequence_label_size )
snake_case__ : int = ids_tensor([self.batch_size, self.seq_length], self.num_labels )
snake_case__ : List[str] = ids_tensor([self.batch_size], self.num_choices )
snake_case__ : Union[str, Any] = OpenAIGPTConfig(
vocab_size=self.vocab_size, n_embd=self.hidden_size, n_layer=self.num_hidden_layers, n_head=self.num_attention_heads, n_positions=self.max_position_embeddings, pad_token_id=self.pad_token_id, )
snake_case__ : List[str] = ids_tensor([self.num_hidden_layers, self.num_attention_heads], 2 )
return (
config,
input_ids,
head_mask,
token_type_ids,
sequence_labels,
token_labels,
choice_labels,
)
def lowercase_ ( self : Any, _snake_case : List[str], _snake_case : Any, _snake_case : List[Any], _snake_case : Tuple, *_snake_case : Optional[Any] ) ->Tuple:
snake_case__ : Union[str, Any] = OpenAIGPTModel(config=_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Optional[Any] = model(_snake_case, token_type_ids=_snake_case, head_mask=_snake_case )
snake_case__ : Union[str, Any] = model(_snake_case, token_type_ids=_snake_case )
snake_case__ : Optional[Any] = model(_snake_case )
self.parent.assertEqual(result.last_hidden_state.shape, (self.batch_size, self.seq_length, self.hidden_size) )
def lowercase_ ( self : Optional[int], _snake_case : Optional[Any], _snake_case : Union[str, Any], _snake_case : Optional[int], _snake_case : List[Any], *_snake_case : Dict ) ->Optional[int]:
snake_case__ : Optional[Any] = OpenAIGPTLMHeadModel(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Tuple = model(_snake_case, token_type_ids=_snake_case, labels=_snake_case )
self.parent.assertEqual(result.loss.shape, () )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.seq_length, self.vocab_size) )
def lowercase_ ( self : int, _snake_case : Tuple, _snake_case : List[str], _snake_case : List[Any], _snake_case : List[Any], *_snake_case : List[Any] ) ->Optional[int]:
snake_case__ : List[str] = OpenAIGPTDoubleHeadsModel(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Optional[Any] = model(_snake_case, token_type_ids=_snake_case, labels=_snake_case )
self.parent.assertEqual(result.loss.shape, () )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.seq_length, self.vocab_size) )
def lowercase_ ( self : Optional[int], _snake_case : Tuple, _snake_case : Dict, _snake_case : List[str], _snake_case : Optional[Any], *_snake_case : Union[str, Any] ) ->str:
snake_case__ : List[str] = self.num_labels
snake_case__ : Dict = OpenAIGPTForSequenceClassification(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : List[str] = ids_tensor([self.batch_size], self.type_sequence_label_size )
snake_case__ : List[str] = model(_snake_case, token_type_ids=_snake_case, labels=_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.num_labels) )
def lowercase_ ( self : Dict ) ->int:
snake_case__ : List[Any] = self.prepare_config_and_inputs()
(
(
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) ,
) : Optional[Any] = config_and_inputs
snake_case__ : str = {
'input_ids': input_ids,
'token_type_ids': token_type_ids,
'head_mask': head_mask,
}
return config, inputs_dict
@require_torch
class snake_case__ ( lowerCAmelCase_ , lowerCAmelCase_ , lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = (
(OpenAIGPTModel, OpenAIGPTLMHeadModel, OpenAIGPTDoubleHeadsModel, OpenAIGPTForSequenceClassification)
if is_torch_available()
else ()
)
_SCREAMING_SNAKE_CASE = (
(OpenAIGPTLMHeadModel,) if is_torch_available() else ()
) # TODO (PVP): Add Double HeadsModel when generate() function is changed accordingly
_SCREAMING_SNAKE_CASE = (
{
"""feature-extraction""": OpenAIGPTModel,
"""text-classification""": OpenAIGPTForSequenceClassification,
"""text-generation""": OpenAIGPTLMHeadModel,
"""zero-shot""": OpenAIGPTForSequenceClassification,
}
if is_torch_available()
else {}
)
def lowercase_ ( self : Optional[int], _snake_case : Union[str, Any], _snake_case : int, _snake_case : Tuple, _snake_case : Tuple, _snake_case : List[str] ) ->Optional[Any]:
if pipeline_test_casse_name == "ZeroShotClassificationPipelineTests":
# Get `tokenizer does not have a padding token` error for both fast/slow tokenizers.
# `OpenAIGPTConfig` was never used in pipeline tests, either because of a missing checkpoint or because a
# tiny config could not be created.
return True
return False
def lowercase_ ( self : Optional[Any], _snake_case : Union[str, Any], _snake_case : List[str], _snake_case : Any=False ) ->Tuple:
snake_case__ : Optional[int] = super()._prepare_for_class(_snake_case, _snake_case, return_labels=_snake_case )
if return_labels:
if model_class.__name__ == "OpenAIGPTDoubleHeadsModel":
snake_case__ : Union[str, Any] = torch.zeros(
(self.model_tester.batch_size, self.model_tester.num_choices, self.model_tester.seq_length), dtype=torch.long, device=_snake_case, )
snake_case__ : List[Any] = inputs_dict['labels']
snake_case__ : List[Any] = inputs_dict['labels']
snake_case__ : Any = torch.zeros(
(self.model_tester.batch_size, self.model_tester.num_choices), dtype=torch.long, device=_snake_case, )
snake_case__ : Tuple = torch.zeros(
self.model_tester.batch_size, dtype=torch.long, device=_snake_case )
return inputs_dict
def lowercase_ ( self : Union[str, Any] ) ->List[str]:
snake_case__ : List[str] = OpenAIGPTModelTester(self )
snake_case__ : Any = ConfigTester(self, config_class=_snake_case, n_embd=3_7 )
def lowercase_ ( self : Optional[int] ) ->str:
self.config_tester.run_common_tests()
def lowercase_ ( self : int ) ->Tuple:
snake_case__ : str = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_openai_gpt_model(*_snake_case )
def lowercase_ ( self : Tuple ) ->List[str]:
snake_case__ : Optional[int] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_lm_head_model(*_snake_case )
def lowercase_ ( self : Dict ) ->int:
snake_case__ : Optional[Any] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_double_lm_head_model(*_snake_case )
def lowercase_ ( self : int ) ->str:
snake_case__ : List[Any] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_openai_gpt_for_sequence_classification(*_snake_case )
@slow
def lowercase_ ( self : Optional[Any] ) ->str:
for model_name in OPENAI_GPT_PRETRAINED_MODEL_ARCHIVE_LIST[:1]:
snake_case__ : Optional[int] = OpenAIGPTModel.from_pretrained(_snake_case )
self.assertIsNotNone(_snake_case )
@require_torch
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
@slow
def lowercase_ ( self : Tuple ) ->Optional[int]:
snake_case__ : Union[str, Any] = OpenAIGPTLMHeadModel.from_pretrained('openai-gpt' )
model.to(_snake_case )
snake_case__ : Tuple = torch.tensor([[4_8_1, 4_7_3_5, 5_4_4]], dtype=torch.long, device=_snake_case ) # the president is
snake_case__ : int = [
4_8_1,
4_7_3_5,
5_4_4,
2_4_6,
9_6_3,
8_7_0,
7_6_2,
2_3_9,
2_4_4,
4_0_4_7_7,
2_4_4,
2_4_9,
7_1_9,
8_8_1,
4_8_7,
5_4_4,
2_4_0,
2_4_4,
6_0_3,
4_8_1,
] # the president is a very good man. " \n " i\'m sure he is, " said the
snake_case__ : Optional[int] = model.generate(_snake_case, do_sample=_snake_case )
self.assertListEqual(output_ids[0].tolist(), _snake_case )
| 277 | 1 |
# Copyright 2023 The HuggingFace Team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from typing import TYPE_CHECKING
# rely on isort to merge the imports
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_tokenizers_available, is_torch_available
a_ :Optional[Any] = {"configuration_mra": ["MRA_PRETRAINED_CONFIG_ARCHIVE_MAP", "MraConfig"]}
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :str = [
"MRA_PRETRAINED_MODEL_ARCHIVE_LIST",
"MraForMaskedLM",
"MraForMultipleChoice",
"MraForQuestionAnswering",
"MraForSequenceClassification",
"MraForTokenClassification",
"MraLayer",
"MraModel",
"MraPreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_mra import MRA_PRETRAINED_CONFIG_ARCHIVE_MAP, MraConfig
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_mra import (
MRA_PRETRAINED_MODEL_ARCHIVE_LIST,
MraForMaskedLM,
MraForMultipleChoice,
MraForQuestionAnswering,
MraForSequenceClassification,
MraForTokenClassification,
MraLayer,
MraModel,
MraPreTrainedModel,
)
else:
import sys
a_ :Optional[Any] = _LazyModule(__name__, globals()["__file__"], _import_structure)
| 277 |
import os
import unittest
from transformers.models.transfo_xl.tokenization_transfo_xl import VOCAB_FILES_NAMES, TransfoXLTokenizer
from ...test_tokenization_common import TokenizerTesterMixin
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = TransfoXLTokenizer
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
def lowercase_ ( self : Optional[int] ) ->Any:
super().setUp()
snake_case__ : Tuple = [
'<unk>',
'[CLS]',
'[SEP]',
'want',
'unwanted',
'wa',
'un',
'running',
',',
'low',
'l',
]
snake_case__ : Any = os.path.join(self.tmpdirname, VOCAB_FILES_NAMES['vocab_file'] )
with open(self.vocab_file, 'w', encoding='utf-8' ) as vocab_writer:
vocab_writer.write(''.join([x + '\n' for x in vocab_tokens] ) )
def lowercase_ ( self : Union[str, Any], **_snake_case : List[Any] ) ->Dict:
snake_case__ : str = True
return TransfoXLTokenizer.from_pretrained(self.tmpdirname, **_snake_case )
def lowercase_ ( self : Optional[Any], _snake_case : str ) ->Dict:
snake_case__ : List[Any] = '<unk> UNwanted , running'
snake_case__ : List[Any] = '<unk> unwanted, running'
return input_text, output_text
def lowercase_ ( self : List[Any] ) ->Tuple:
snake_case__ : Dict = TransfoXLTokenizer(vocab_file=self.vocab_file, lower_case=_snake_case )
snake_case__ : str = tokenizer.tokenize('<unk> UNwanted , running' )
self.assertListEqual(_snake_case, ['<unk>', 'unwanted', ',', 'running'] )
self.assertListEqual(tokenizer.convert_tokens_to_ids(_snake_case ), [0, 4, 8, 7] )
def lowercase_ ( self : List[str] ) ->List[Any]:
snake_case__ : str = TransfoXLTokenizer(lower_case=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHeLLo ! how \n Are yoU ? ' ), ['hello', '!', 'how', 'are', 'you', '?'] )
def lowercase_ ( self : Optional[int] ) ->Optional[Any]:
snake_case__ : Optional[int] = TransfoXLTokenizer(lower_case=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHeLLo ! how \n Are yoU ? ' ), ['HeLLo', '!', 'how', 'Are', 'yoU', '?'] )
def lowercase_ ( self : Optional[int] ) ->Union[str, Any]:
snake_case__ : List[Any] = TransfoXLTokenizer(lower_case=_snake_case )
snake_case__ : Dict = 'Hello (bracket) and side-scrolled [and] Henry\'s $5,000 with 3.34 m. What\'s up!?'
snake_case__ : List[Any] = [
'Hello',
'(',
'bracket',
')',
'and',
'side',
'@-@',
'scrolled',
'[',
'and',
']',
'Henry',
'\'s',
'$',
'5',
'@,@',
'000',
'with',
'3',
'@.@',
'34',
'm',
'.',
'What',
'\'s',
'up',
'!',
'?',
]
self.assertListEqual(tokenizer.tokenize(_snake_case ), _snake_case )
self.assertEqual(tokenizer.convert_tokens_to_string(_snake_case ), _snake_case )
def lowercase_ ( self : Dict ) ->Any:
snake_case__ : Dict = self.get_tokenizer()
snake_case__ : Optional[Any] = len(_snake_case )
tokenizer.add_tokens(['new1', 'new2'] )
tokenizer.move_added_token('new1', 1 )
# Check that moved token is not copied (duplicate)
self.assertEqual(len(_snake_case ), original_len + 2 )
# Check that token is moved to specified id
self.assertEqual(tokenizer.encode('new1' ), [1] )
self.assertEqual(tokenizer.decode([1] ), 'new1' )
| 277 | 1 |
import copy
from dataclasses import dataclass, field
from typing import ClassVar, Dict
from ..features import ClassLabel, Features, Value
from .base import TaskTemplate
@dataclass(frozen=lowerCAmelCase_ )
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = field(default="""text-classification""" , metadata={"""include_in_asdict_even_if_is_default""": True} )
_SCREAMING_SNAKE_CASE = Features({"""text""": Value("""string""" )} )
_SCREAMING_SNAKE_CASE = Features({"""labels""": ClassLabel} )
_SCREAMING_SNAKE_CASE = "text"
_SCREAMING_SNAKE_CASE = "labels"
def lowercase_ ( self : List[str], _snake_case : Optional[Any] ) ->Any:
if self.label_column not in features:
raise ValueError(F'''Column {self.label_column} is not present in features.''' )
if not isinstance(features[self.label_column], _snake_case ):
raise ValueError(F'''Column {self.label_column} is not a ClassLabel.''' )
snake_case__ : List[str] = copy.deepcopy(self )
snake_case__ : Tuple = self.label_schema.copy()
snake_case__ : Union[str, Any] = features[self.label_column]
snake_case__ : Any = label_schema
return task_template
@property
def lowercase_ ( self : Optional[int] ) ->Dict[str, str]:
return {
self.text_column: "text",
self.label_column: "labels",
}
| 277 |
from ...configuration_utils import PretrainedConfig
from ...utils import logging
a_ :Optional[int] = logging.get_logger(__name__)
a_ :Dict = {"openai-gpt": "https://huggingface.co/openai-gpt/resolve/main/config.json"}
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = """openai-gpt"""
_SCREAMING_SNAKE_CASE = {
"""max_position_embeddings""": """n_positions""",
"""hidden_size""": """n_embd""",
"""num_attention_heads""": """n_head""",
"""num_hidden_layers""": """n_layer""",
}
def __init__( self : Optional[int], _snake_case : Dict=4_0_4_7_8, _snake_case : str=5_1_2, _snake_case : int=7_6_8, _snake_case : Tuple=1_2, _snake_case : Any=1_2, _snake_case : str="gelu", _snake_case : List[str]=0.1, _snake_case : Any=0.1, _snake_case : Dict=0.1, _snake_case : int=1e-5, _snake_case : Optional[Any]=0.0_2, _snake_case : List[Any]="cls_index", _snake_case : Any=True, _snake_case : Any=None, _snake_case : int=True, _snake_case : Optional[Any]=0.1, **_snake_case : List[Any], ) ->Optional[int]:
snake_case__ : int = vocab_size
snake_case__ : Dict = n_positions
snake_case__ : str = n_embd
snake_case__ : str = n_layer
snake_case__ : List[Any] = n_head
snake_case__ : List[Any] = afn
snake_case__ : Optional[Any] = resid_pdrop
snake_case__ : List[str] = embd_pdrop
snake_case__ : List[Any] = attn_pdrop
snake_case__ : Optional[int] = layer_norm_epsilon
snake_case__ : str = initializer_range
snake_case__ : List[str] = summary_type
snake_case__ : Optional[int] = summary_use_proj
snake_case__ : List[str] = summary_activation
snake_case__ : Optional[Any] = summary_first_dropout
snake_case__ : int = summary_proj_to_labels
super().__init__(**_snake_case )
| 277 | 1 |
from ..utils import DummyObject, requires_backends
class snake_case__ ( metaclass=lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = ["""torch""", """torchsde"""]
def __init__( self : str, *_snake_case : int, **_snake_case : int ) ->Optional[Any]:
requires_backends(self, ['torch', 'torchsde'] )
@classmethod
def lowercase_ ( cls : Tuple, *_snake_case : Union[str, Any], **_snake_case : Tuple ) ->Union[str, Any]:
requires_backends(cls, ['torch', 'torchsde'] )
@classmethod
def lowercase_ ( cls : Union[str, Any], *_snake_case : List[str], **_snake_case : int ) ->Optional[Any]:
requires_backends(cls, ['torch', 'torchsde'] )
| 277 |
import argparse
import logging
import os
from datetime import datetime
import numpy as np
import torch
from torch import nn
from torch.utils.data import DataLoader, RandomSampler, TensorDataset
from tqdm import tqdm
from transformers import GPTaLMHeadModel
a_ :Optional[Any] = logging.getLogger(__name__)
def lowercase_ (A : List[Any] , A : List[Any] ):
# save results
if os.path.exists(A ):
if os.path.exists(os.path.join(A , 'config.json' ) ) and os.path.isfile(
os.path.join(A , 'config.json' ) ):
os.remove(os.path.join(A , 'config.json' ) )
if os.path.exists(os.path.join(A , 'pytorch_model.bin' ) ) and os.path.isfile(
os.path.join(A , 'pytorch_model.bin' ) ):
os.remove(os.path.join(A , 'pytorch_model.bin' ) )
else:
os.makedirs(A )
model.save_pretrained(A )
def lowercase_ (A : Any , A : Optional[Any]=False ):
snake_case__ : str = 2
if unlogit:
snake_case__ : Dict = torch.pow(A , A )
snake_case__ : Any = p * torch.log(A )
snake_case__ : Tuple = 0
return -plogp.sum(dim=-1 )
def lowercase_ (A : List[str] ):
logger.info('lv, h >\t' + '\t'.join(F'''{x + 1}''' for x in range(len(A ) ) ) )
for row in range(len(A ) ):
if tensor.dtype != torch.long:
logger.info(F'''layer {row + 1}:\t''' + '\t'.join(F'''{x:.5f}''' for x in tensor[row].cpu().data ) )
else:
logger.info(F'''layer {row + 1}:\t''' + '\t'.join(F'''{x:d}''' for x in tensor[row].cpu().data ) )
def lowercase_ (A : Tuple , A : Optional[Any] , A : str , A : int=True , A : Optional[int]=True , A : Any=None , A : int=False ):
snake_case__ , snake_case__ : Optional[Any] = model.config.num_hidden_layers, model.config.num_attention_heads
snake_case__ : int = torch.zeros(A , A ).to(args.device )
snake_case__ : Any = torch.zeros(A , A ).to(args.device )
if head_mask is None:
snake_case__ : Dict = torch.ones(A , A ).to(args.device )
head_mask.requires_grad_(requires_grad=A )
# If actually pruned attention multi-head, set head mask to None to avoid shape mismatch
if actually_pruned:
snake_case__ : Optional[int] = None
snake_case__ : List[Any] = 0.0
snake_case__ : str = 0.0
for step, inputs in enumerate(tqdm(A , desc='Iteration' , disable=args.local_rank not in [-1, 0] ) ):
snake_case__ : Union[str, Any] = tuple(t.to(args.device ) for t in inputs )
((snake_case__) , ) : Optional[Any] = inputs
# Do a forward pass (not with torch.no_grad() since we need gradients for importance score - see below)
snake_case__ : Union[str, Any] = model(A , labels=A , head_mask=A )
# (loss), lm_logits, presents, (all hidden_states), (attentions)
snake_case__ , snake_case__ , snake_case__ : Dict = (
outputs[0],
outputs[1],
outputs[-1],
) # Loss and logits are the first, attention the last
loss.backward() # Backpropagate to populate the gradients in the head mask
total_loss += loss.detach().cpu().numpy()
if compute_entropy:
for layer, attn in enumerate(A ):
snake_case__ : Optional[Any] = entropy(attn.detach() , A )
attn_entropy[layer] += masked_entropy.sum(-1 ).sum(0 ).sum(0 ).detach()
if compute_importance:
head_importance += head_mask.grad.abs().detach()
tot_tokens += torch.ones_like(A ).float().detach().sum().data
# Normalize
attn_entropy /= tot_tokens
head_importance /= tot_tokens
# Layerwise importance normalization
if not args.dont_normalize_importance_by_layer:
snake_case__ : Union[str, Any] = 2
snake_case__ : List[Any] = torch.pow(torch.pow(A , A ).sum(-1 ) , 1 / exponent )
head_importance /= norm_by_layer.unsqueeze(-1 ) + 1e-20
if not args.dont_normalize_global_importance:
snake_case__ : Tuple = (head_importance - head_importance.min()) / (head_importance.max() - head_importance.min())
# Print matrices
if compute_entropy:
logger.info('Attention entropies' )
print_ad_tensor(A )
if compute_importance:
logger.info('Head importance scores' )
print_ad_tensor(A )
logger.info('Head ranked by importance scores' )
snake_case__ : Tuple = torch.zeros(head_importance.numel() , dtype=torch.long , device=args.device )
snake_case__ : Union[str, Any] = torch.arange(
head_importance.numel() , device=args.device )
snake_case__ : str = head_ranks.view_as(A )
print_ad_tensor(A )
return attn_entropy, head_importance, total_loss
def lowercase_ (A : Optional[int] , A : Dict , A : Optional[int] ):
snake_case__ , snake_case__ , snake_case__ : Any = compute_heads_importance(A , A , A , compute_entropy=A )
snake_case__ : Tuple = 1 / loss # instead of downsteam score use the LM loss
logger.info('Pruning: original score: %f, threshold: %f' , A , original_score * args.masking_threshold )
snake_case__ : Optional[Any] = torch.ones_like(A )
snake_case__ : Union[str, Any] = max(1 , int(new_head_mask.numel() * args.masking_amount ) )
snake_case__ : Dict = original_score
while current_score >= original_score * args.masking_threshold:
snake_case__ : int = new_head_mask.clone().detach() # save current head mask
# heads from least important to most - keep only not-masked heads
snake_case__ : List[Any] = float('Inf' )
snake_case__ : Union[str, Any] = head_importance.view(-1 ).sort()[1]
if len(A ) <= num_to_mask:
print('BREAK BY num_to_mask' )
break
# mask heads
snake_case__ : int = current_heads_to_mask[:num_to_mask]
logger.info('Heads to mask: %s' , str(current_heads_to_mask.tolist() ) )
snake_case__ : int = new_head_mask.view(-1 )
snake_case__ : int = 0.0
snake_case__ : Union[str, Any] = new_head_mask.view_as(A )
snake_case__ : List[str] = new_head_mask.clone().detach()
print_ad_tensor(A )
# Compute metric and head importance again
snake_case__ , snake_case__ , snake_case__ : Any = compute_heads_importance(
A , A , A , compute_entropy=A , head_mask=A )
snake_case__ : Dict = 1 / loss
logger.info(
'Masking: current score: %f, remaining heads %d (%.1f percents)' , A , new_head_mask.sum() , new_head_mask.sum() / new_head_mask.numel() * 1_0_0 , )
logger.info('Final head mask' )
print_ad_tensor(A )
np.save(os.path.join(args.output_dir , 'head_mask.npy' ) , head_mask.detach().cpu().numpy() )
return head_mask
def lowercase_ (A : List[str] , A : Tuple , A : Optional[Any] , A : int ):
snake_case__ : Any = datetime.now()
snake_case__ , snake_case__ , snake_case__ : str = compute_heads_importance(
A , A , A , compute_entropy=A , compute_importance=A , head_mask=A )
snake_case__ : Tuple = 1 / loss
snake_case__ : Dict = datetime.now() - before_time
snake_case__ : Union[str, Any] = sum(p.numel() for p in model.parameters() )
snake_case__ : Optional[Any] = {
layer: (1 - head_mask[layer].long()).nonzero().squeeze().tolist() for layer in range(len(A ) )
}
for k, v in heads_to_prune.items():
if isinstance(A , A ):
snake_case__ : Any = [
v,
]
assert sum(len(A ) for h in heads_to_prune.values() ) == (1 - head_mask.long()).sum().item()
model.prune_heads(A )
snake_case__ : Dict = sum(p.numel() for p in model.parameters() )
snake_case__ : Tuple = datetime.now()
snake_case__ , snake_case__ , snake_case__ : Dict = compute_heads_importance(
A , A , A , compute_entropy=A , compute_importance=A , head_mask=A , actually_pruned=A , )
snake_case__ : Any = 1 / loss
snake_case__ : int = datetime.now() - before_time
logger.info(
'Pruning: original num of params: %.2e, after pruning %.2e (%.1f percents)' , A , A , pruned_num_params / original_num_params * 1_0_0 , )
logger.info('Pruning: score with masking: %f score with pruning: %f' , A , A )
logger.info('Pruning: speed ratio (original timing / new timing): %f percents' , original_time / new_time * 1_0_0 )
save_model(A , args.output_dir )
def lowercase_ ():
snake_case__ : str = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
'--data_dir' , default=A , type=A , required=A , help='The input data dir. Should contain the .tsv files (or other data files) for the task.' , )
parser.add_argument(
'--model_name_or_path' , default=A , type=A , required=A , help='Path to pretrained model or model identifier from huggingface.co/models' , )
parser.add_argument(
'--output_dir' , default=A , type=A , required=A , help='The output directory where the model predictions and checkpoints will be written.' , )
# Other parameters
parser.add_argument(
'--config_name' , default='' , type=A , help='Pretrained config name or path if not the same as model_name_or_path' , )
parser.add_argument(
'--tokenizer_name' , default='' , type=A , help='Pretrained tokenizer name or path if not the same as model_name_or_path' , )
parser.add_argument(
'--cache_dir' , default=A , type=A , help='Where do you want to store the pre-trained models downloaded from s3' , )
parser.add_argument(
'--data_subset' , type=A , default=-1 , help='If > 0: limit the data to a subset of data_subset instances.' )
parser.add_argument(
'--overwrite_output_dir' , action='store_true' , help='Whether to overwrite data in output directory' )
parser.add_argument(
'--overwrite_cache' , action='store_true' , help='Overwrite the cached training and evaluation sets' )
parser.add_argument(
'--dont_normalize_importance_by_layer' , action='store_true' , help='Don\'t normalize importance score by layers' )
parser.add_argument(
'--dont_normalize_global_importance' , action='store_true' , help='Don\'t normalize all importance scores between 0 and 1' , )
parser.add_argument(
'--try_masking' , action='store_true' , help='Whether to try to mask head until a threshold of accuracy.' )
parser.add_argument(
'--masking_threshold' , default=0.9 , type=A , help='masking threshold in term of metrics (stop masking when metric < threshold * original metric value).' , )
parser.add_argument(
'--masking_amount' , default=0.1 , type=A , help='Amount to heads to masking at each masking step.' )
parser.add_argument('--metric_name' , default='acc' , type=A , help='Metric to use for head masking.' )
parser.add_argument(
'--max_seq_length' , default=1_2_8 , type=A , help=(
'The maximum total input sequence length after WordPiece tokenization. \n'
'Sequences longer than this will be truncated, sequences shorter padded.'
) , )
parser.add_argument('--batch_size' , default=1 , type=A , help='Batch size.' )
parser.add_argument('--seed' , type=A , default=4_2 )
parser.add_argument('--local_rank' , type=A , default=-1 , help='local_rank for distributed training on gpus' )
parser.add_argument('--no_cuda' , action='store_true' , help='Whether not to use CUDA when available' )
parser.add_argument('--server_ip' , type=A , default='' , help='Can be used for distant debugging.' )
parser.add_argument('--server_port' , type=A , default='' , help='Can be used for distant debugging.' )
snake_case__ : Optional[int] = parser.parse_args()
if args.server_ip and args.server_port:
# Distant debugging - see https://code.visualstudio.com/docs/python/debugging#_attach-to-a-local-script
import ptvsd
print('Waiting for debugger attach' )
ptvsd.enable_attach(address=(args.server_ip, args.server_port) , redirect_output=A )
ptvsd.wait_for_attach()
# Setup devices and distributed training
if args.local_rank == -1 or args.no_cuda:
snake_case__ : List[Any] = torch.device('cuda' if torch.cuda.is_available() and not args.no_cuda else 'cpu' )
snake_case__ : Optional[Any] = 0 if args.no_cuda else torch.cuda.device_count()
else:
torch.cuda.set_device(args.local_rank )
snake_case__ : int = torch.device('cuda' , args.local_rank )
snake_case__ : List[str] = 1
torch.distributed.init_process_group(backend='nccl' ) # Initializes the distributed backend
# Setup logging
logging.basicConfig(level=logging.INFO if args.local_rank in [-1, 0] else logging.WARN )
logger.info('device: {} n_gpu: {}, distributed: {}'.format(args.device , args.n_gpu , bool(args.local_rank != -1 ) ) )
snake_case__ : Any = GPTaLMHeadModel.from_pretrained(args.model_name_or_path )
# Distributed and parallel training
model.to(args.device )
if args.local_rank != -1:
snake_case__ : List[str] = nn.parallel.DistributedDataParallel(
A , device_ids=[args.local_rank] , output_device=args.local_rank , find_unused_parameters=A )
elif args.n_gpu > 1:
snake_case__ : Optional[int] = nn.DataParallel(A )
# Print/save training arguments
os.makedirs(args.output_dir , exist_ok=A )
torch.save(A , os.path.join(args.output_dir , 'run_args.bin' ) )
logger.info('Training/evaluation parameters %s' , A )
# Prepare dataset
snake_case__ : Optional[Any] = np.concatenate(
[
np.loadtxt(args.data_dir , dtype=np.intaa ),
] )
snake_case__ : List[str] = (torch.from_numpy(A ),)
snake_case__ : int = TensorDataset(*A )
snake_case__ : Union[str, Any] = RandomSampler(A )
snake_case__ : Any = DataLoader(A , sampler=A , batch_size=args.batch_size )
# Compute head entropy and importance score
compute_heads_importance(A , A , A )
# Try head masking (set heads to zero until the score goes under a threshole)
# and head pruning (remove masked heads and see the effect on the network)
if args.try_masking and args.masking_threshold > 0.0 and args.masking_threshold < 1.0:
snake_case__ : Dict = mask_heads(A , A , A )
prune_heads(A , A , A , A )
if __name__ == "__main__":
main()
| 277 | 1 |
from __future__ import annotations
class snake_case__ :
"""simple docstring"""
def __init__( self : Optional[int], _snake_case : Union[str, Any]=None ) ->Optional[Any]:
snake_case__ : List[Any] = data
snake_case__ : Union[str, Any] = None
def __repr__( self : str ) ->Dict:
snake_case__ : int = []
snake_case__ : Optional[int] = self
while temp:
string_rep.append(F'''{temp.data}''' )
snake_case__ : str = temp.next
return "->".join(_snake_case )
def lowercase_ (A : list ):
if not elements_list:
raise Exception('The Elements List is empty' )
snake_case__ : List[str] = Node(elements_list[0] )
for i in range(1 , len(A ) ):
snake_case__ : Optional[Any] = Node(elements_list[i] )
snake_case__ : Tuple = current.next
return head
def lowercase_ (A : Node ):
if head_node is not None and isinstance(A , A ):
print_reverse(head_node.next )
print(head_node.data )
def lowercase_ ():
from doctest import testmod
testmod()
snake_case__ : str = make_linked_list([1_4, 5_2, 1_4, 1_2, 4_3] )
print('Linked List:' )
print(A )
print('Elements in Reverse:' )
print_reverse(A )
if __name__ == "__main__":
main()
| 277 |
import argparse
import json
from collections import OrderedDict
from pathlib import Path
import requests
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import (
SegformerConfig,
SegformerForImageClassification,
SegformerForSemanticSegmentation,
SegformerImageProcessor,
)
from transformers.utils import logging
logging.set_verbosity_info()
a_ :Dict = logging.get_logger(__name__)
def lowercase_ (A : Optional[Any] , A : Any=False ):
snake_case__ : List[Any] = OrderedDict()
for key, value in state_dict.items():
if encoder_only and not key.startswith('head' ):
snake_case__ : str = 'segformer.encoder.' + key
if key.startswith('backbone' ):
snake_case__ : str = key.replace('backbone' , 'segformer.encoder' )
if "patch_embed" in key:
# replace for example patch_embed1 by patch_embeddings.0
snake_case__ : Optional[int] = key[key.find('patch_embed' ) + len('patch_embed' )]
snake_case__ : int = key.replace(F'''patch_embed{idx}''' , F'''patch_embeddings.{int(A )-1}''' )
if "norm" in key:
snake_case__ : Optional[int] = key.replace('norm' , 'layer_norm' )
if "segformer.encoder.layer_norm" in key:
# replace for example layer_norm1 by layer_norm.0
snake_case__ : Tuple = key[key.find('segformer.encoder.layer_norm' ) + len('segformer.encoder.layer_norm' )]
snake_case__ : Union[str, Any] = key.replace(F'''layer_norm{idx}''' , F'''layer_norm.{int(A )-1}''' )
if "layer_norm1" in key:
snake_case__ : List[Any] = key.replace('layer_norm1' , 'layer_norm_1' )
if "layer_norm2" in key:
snake_case__ : List[Any] = key.replace('layer_norm2' , 'layer_norm_2' )
if "block" in key:
# replace for example block1 by block.0
snake_case__ : List[Any] = key[key.find('block' ) + len('block' )]
snake_case__ : List[Any] = key.replace(F'''block{idx}''' , F'''block.{int(A )-1}''' )
if "attn.q" in key:
snake_case__ : int = key.replace('attn.q' , 'attention.self.query' )
if "attn.proj" in key:
snake_case__ : str = key.replace('attn.proj' , 'attention.output.dense' )
if "attn" in key:
snake_case__ : Optional[int] = key.replace('attn' , 'attention.self' )
if "fc1" in key:
snake_case__ : str = key.replace('fc1' , 'dense1' )
if "fc2" in key:
snake_case__ : Dict = key.replace('fc2' , 'dense2' )
if "linear_pred" in key:
snake_case__ : Union[str, Any] = key.replace('linear_pred' , 'classifier' )
if "linear_fuse" in key:
snake_case__ : List[str] = key.replace('linear_fuse.conv' , 'linear_fuse' )
snake_case__ : List[Any] = key.replace('linear_fuse.bn' , 'batch_norm' )
if "linear_c" in key:
# replace for example linear_c4 by linear_c.3
snake_case__ : Optional[int] = key[key.find('linear_c' ) + len('linear_c' )]
snake_case__ : Tuple = key.replace(F'''linear_c{idx}''' , F'''linear_c.{int(A )-1}''' )
if key.startswith('head' ):
snake_case__ : Tuple = key.replace('head' , 'classifier' )
snake_case__ : Optional[int] = value
return new_state_dict
def lowercase_ (A : Tuple , A : Optional[int] ):
# for each of the encoder blocks:
for i in range(config.num_encoder_blocks ):
for j in range(config.depths[i] ):
# read in weights + bias of keys and values (which is a single matrix in the original implementation)
snake_case__ : List[str] = state_dict.pop(F'''segformer.encoder.block.{i}.{j}.attention.self.kv.weight''' )
snake_case__ : Optional[Any] = state_dict.pop(F'''segformer.encoder.block.{i}.{j}.attention.self.kv.bias''' )
# next, add keys and values (in that order) to the state dict
snake_case__ : str = kv_weight[
: config.hidden_sizes[i], :
]
snake_case__ : Dict = kv_bias[: config.hidden_sizes[i]]
snake_case__ : List[str] = kv_weight[
config.hidden_sizes[i] :, :
]
snake_case__ : List[Any] = kv_bias[
config.hidden_sizes[i] :
]
def lowercase_ ():
snake_case__ : Union[str, Any] = 'http://images.cocodataset.org/val2017/000000039769.jpg'
snake_case__ : Dict = Image.open(requests.get(A , stream=A ).raw )
return image
@torch.no_grad()
def lowercase_ (A : Any , A : Union[str, Any] , A : Optional[Any] ):
snake_case__ : List[str] = SegformerConfig()
snake_case__ : Dict = False
# set attributes based on model_name
snake_case__ : Optional[int] = 'huggingface/label-files'
if "segformer" in model_name:
snake_case__ : str = model_name[len('segformer.' ) : len('segformer.' ) + 2]
if "ade" in model_name:
snake_case__ : Optional[int] = 1_5_0
snake_case__ : int = 'ade20k-id2label.json'
snake_case__ : List[Any] = (1, 1_5_0, 1_2_8, 1_2_8)
elif "city" in model_name:
snake_case__ : str = 1_9
snake_case__ : List[str] = 'cityscapes-id2label.json'
snake_case__ : Optional[Any] = (1, 1_9, 1_2_8, 1_2_8)
else:
raise ValueError(F'''Model {model_name} not supported''' )
elif "mit" in model_name:
snake_case__ : str = True
snake_case__ : Union[str, Any] = model_name[4:6]
snake_case__ : Optional[Any] = 1_0_0_0
snake_case__ : Optional[int] = 'imagenet-1k-id2label.json'
snake_case__ : List[Any] = (1, 1_0_0_0)
else:
raise ValueError(F'''Model {model_name} not supported''' )
# set config attributes
snake_case__ : str = json.load(open(hf_hub_download(A , A , repo_type='dataset' ) , 'r' ) )
snake_case__ : List[Any] = {int(A ): v for k, v in idalabel.items()}
snake_case__ : Union[str, Any] = idalabel
snake_case__ : Tuple = {v: k for k, v in idalabel.items()}
if size == "b0":
pass
elif size == "b1":
snake_case__ : List[Any] = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : Tuple = 2_5_6
elif size == "b2":
snake_case__ : List[str] = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : int = 7_6_8
snake_case__ : List[Any] = [3, 4, 6, 3]
elif size == "b3":
snake_case__ : Optional[Any] = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : int = 7_6_8
snake_case__ : Optional[Any] = [3, 4, 1_8, 3]
elif size == "b4":
snake_case__ : str = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : Optional[Any] = 7_6_8
snake_case__ : Union[str, Any] = [3, 8, 2_7, 3]
elif size == "b5":
snake_case__ : List[str] = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : Optional[Any] = 7_6_8
snake_case__ : Any = [3, 6, 4_0, 3]
else:
raise ValueError(F'''Size {size} not supported''' )
# load image processor (only resize + normalize)
snake_case__ : Dict = SegformerImageProcessor(
image_scale=(5_1_2, 5_1_2) , keep_ratio=A , align=A , do_random_crop=A )
# prepare image
snake_case__ : List[str] = prepare_img()
snake_case__ : Dict = image_processor(images=A , return_tensors='pt' ).pixel_values
logger.info(F'''Converting model {model_name}...''' )
# load original state dict
if encoder_only:
snake_case__ : Tuple = torch.load(A , map_location=torch.device('cpu' ) )
else:
snake_case__ : int = torch.load(A , map_location=torch.device('cpu' ) )['state_dict']
# rename keys
snake_case__ : List[Any] = rename_keys(A , encoder_only=A )
if not encoder_only:
del state_dict["decode_head.conv_seg.weight"]
del state_dict["decode_head.conv_seg.bias"]
# key and value matrices need special treatment
read_in_k_v(A , A )
# create HuggingFace model and load state dict
if encoder_only:
snake_case__ : str = False
snake_case__ : List[Any] = SegformerForImageClassification(A )
else:
snake_case__ : Dict = SegformerForSemanticSegmentation(A )
model.load_state_dict(A )
model.eval()
# forward pass
snake_case__ : int = model(A )
snake_case__ : Any = outputs.logits
# set expected_slice based on model name
# ADE20k checkpoints
if model_name == "segformer.b0.512x512.ade.160k":
snake_case__ : Dict = torch.tensor(
[
[[-4.6310, -5.5232, -6.2356], [-5.1921, -6.1444, -6.5996], [-5.4424, -6.2790, -6.7574]],
[[-12.1391, -13.3122, -13.9554], [-12.8732, -13.9352, -14.3563], [-12.9438, -13.8226, -14.2513]],
[[-12.5134, -13.4686, -14.4915], [-12.8669, -14.4343, -14.7758], [-13.2523, -14.5819, -15.0694]],
] )
elif model_name == "segformer.b1.512x512.ade.160k":
snake_case__ : Optional[int] = torch.tensor(
[
[[-7.5820, -8.7231, -8.3215], [-8.0600, -10.3529, -10.0304], [-7.5208, -9.4103, -9.6239]],
[[-12.6918, -13.8994, -13.7137], [-13.3196, -15.7523, -15.4789], [-12.9343, -14.8757, -14.9689]],
[[-11.1911, -11.9421, -11.3243], [-11.3342, -13.6839, -13.3581], [-10.3909, -12.1832, -12.4858]],
] )
elif model_name == "segformer.b2.512x512.ade.160k":
snake_case__ : List[Any] = torch.tensor(
[
[[-11.8173, -14.3850, -16.3128], [-14.5648, -16.5804, -18.6568], [-14.7223, -15.7387, -18.4218]],
[[-15.7290, -17.9171, -19.4423], [-18.3105, -19.9448, -21.4661], [-17.9296, -18.6497, -20.7910]],
[[-15.0783, -17.0336, -18.2789], [-16.8771, -18.6870, -20.1612], [-16.2454, -17.1426, -19.5055]],
] )
elif model_name == "segformer.b3.512x512.ade.160k":
snake_case__ : Union[str, Any] = torch.tensor(
[
[[-9.0878, -10.2081, -10.1891], [-9.3144, -10.7941, -10.9843], [-9.2294, -10.3855, -10.5704]],
[[-12.2316, -13.9068, -13.6102], [-12.9161, -14.3702, -14.3235], [-12.5233, -13.7174, -13.7932]],
[[-14.6275, -15.2490, -14.9727], [-14.3400, -15.9687, -16.2827], [-14.1484, -15.4033, -15.8937]],
] )
elif model_name == "segformer.b4.512x512.ade.160k":
snake_case__ : Dict = torch.tensor(
[
[[-12.3144, -13.2447, -14.0802], [-13.3614, -14.5816, -15.6117], [-13.3340, -14.4433, -16.2219]],
[[-19.2781, -20.4128, -20.7506], [-20.6153, -21.6566, -22.0998], [-19.9800, -21.0430, -22.1494]],
[[-18.8739, -19.7804, -21.1834], [-20.1233, -21.6765, -23.2944], [-20.0315, -21.2641, -23.6944]],
] )
elif model_name == "segformer.b5.640x640.ade.160k":
snake_case__ : List[Any] = torch.tensor(
[
[[-9.5524, -12.0835, -11.7348], [-10.5229, -13.6446, -14.5662], [-9.5842, -12.8851, -13.9414]],
[[-15.3432, -17.5323, -17.0818], [-16.3330, -18.9255, -19.2101], [-15.1340, -17.7848, -18.3971]],
[[-12.6072, -14.9486, -14.6631], [-13.7629, -17.0907, -17.7745], [-12.7899, -16.1695, -17.1671]],
] )
# Cityscapes checkpoints
elif model_name == "segformer.b0.1024x1024.city.160k":
snake_case__ : str = torch.tensor(
[
[[-11.9295, -13.4057, -14.8106], [-13.3431, -14.8179, -15.3781], [-14.2836, -15.5942, -16.1588]],
[[-11.4906, -12.8067, -13.6564], [-13.1189, -14.0500, -14.1543], [-13.8748, -14.5136, -14.8789]],
[[0.5374, 0.1067, -0.4742], [0.1141, -0.2255, -0.7099], [-0.3000, -0.5924, -1.3105]],
] )
elif model_name == "segformer.b0.512x1024.city.160k":
snake_case__ : Tuple = torch.tensor(
[
[[-7.8217, -9.8767, -10.1717], [-9.4438, -10.9058, -11.4047], [-9.7939, -12.3495, -12.1079]],
[[-7.1514, -9.5336, -10.0860], [-9.7776, -11.6822, -11.8439], [-10.1411, -12.7655, -12.8972]],
[[0.3021, 0.0805, -0.2310], [-0.0328, -0.1605, -0.2714], [-0.1408, -0.5477, -0.6976]],
] )
elif model_name == "segformer.b0.640x1280.city.160k":
snake_case__ : Any = torch.tensor(
[
[
[-1.1_372e01, -1.2_787e01, -1.3_477e01],
[-1.2_536e01, -1.4_194e01, -1.4_409e01],
[-1.3_217e01, -1.4_888e01, -1.5_327e01],
],
[
[-1.4_791e01, -1.7_122e01, -1.8_277e01],
[-1.7_163e01, -1.9_192e01, -1.9_533e01],
[-1.7_897e01, -1.9_991e01, -2.0_315e01],
],
[
[7.6_723e-01, 4.1_921e-01, -7.7_878e-02],
[4.7_772e-01, 9.5_557e-03, -2.8_082e-01],
[3.6_032e-01, -2.4_826e-01, -5.1_168e-01],
],
] )
elif model_name == "segformer.b0.768x768.city.160k":
snake_case__ : Optional[int] = torch.tensor(
[
[[-9.4959, -11.3087, -11.7479], [-11.0025, -12.6540, -12.3319], [-11.4064, -13.0487, -12.9905]],
[[-9.8905, -11.3084, -12.0854], [-11.1726, -12.7698, -12.9583], [-11.5985, -13.3278, -14.1774]],
[[0.2213, 0.0192, -0.2466], [-0.1731, -0.4213, -0.4874], [-0.3126, -0.6541, -1.1389]],
] )
elif model_name == "segformer.b1.1024x1024.city.160k":
snake_case__ : Union[str, Any] = torch.tensor(
[
[[-13.5748, -13.9111, -12.6500], [-14.3500, -15.3683, -14.2328], [-14.7532, -16.0424, -15.6087]],
[[-17.1651, -15.8725, -12.9653], [-17.2580, -17.3718, -14.8223], [-16.6058, -16.8783, -16.7452]],
[[-3.6456, -3.0209, -1.4203], [-3.0797, -3.1959, -2.0000], [-1.8757, -1.9217, -1.6997]],
] )
elif model_name == "segformer.b2.1024x1024.city.160k":
snake_case__ : List[str] = torch.tensor(
[
[[-16.0976, -16.4856, -17.3962], [-16.6234, -19.0342, -19.7685], [-16.0900, -18.0661, -19.1180]],
[[-18.4750, -18.8488, -19.5074], [-19.4030, -22.1570, -22.5977], [-19.1191, -20.8486, -22.3783]],
[[-4.5178, -5.5037, -6.5109], [-5.0884, -7.2174, -8.0334], [-4.4156, -5.8117, -7.2970]],
] )
elif model_name == "segformer.b3.1024x1024.city.160k":
snake_case__ : List[Any] = torch.tensor(
[
[[-14.2081, -14.4732, -14.1977], [-14.5867, -16.4423, -16.6356], [-13.4441, -14.9685, -16.8696]],
[[-14.4576, -14.7073, -15.0451], [-15.0816, -17.6237, -17.9873], [-14.4213, -16.0199, -18.5992]],
[[-4.7349, -4.9588, -5.0966], [-4.3210, -6.9325, -7.2591], [-3.4312, -4.7484, -7.1917]],
] )
elif model_name == "segformer.b4.1024x1024.city.160k":
snake_case__ : str = torch.tensor(
[
[[-11.7737, -11.9526, -11.3273], [-13.6692, -14.4574, -13.8878], [-13.8937, -14.6924, -15.9345]],
[[-14.6706, -14.5330, -14.1306], [-16.1502, -16.8180, -16.4269], [-16.8338, -17.8939, -20.1746]],
[[1.0491, 0.8289, 1.0310], [1.1044, 0.5219, 0.8055], [1.0899, 0.6926, 0.5590]],
] )
elif model_name == "segformer.b5.1024x1024.city.160k":
snake_case__ : List[str] = torch.tensor(
[
[[-12.5641, -13.4777, -13.0684], [-13.9587, -15.8983, -16.6557], [-13.3109, -15.7350, -16.3141]],
[[-14.7074, -15.4352, -14.5944], [-16.6353, -18.1663, -18.6120], [-15.1702, -18.0329, -18.1547]],
[[-1.7990, -2.0951, -1.7784], [-2.6397, -3.8245, -3.9686], [-1.5264, -2.8126, -2.9316]],
] )
else:
snake_case__ : Tuple = logits.argmax(-1 ).item()
print('Predicted class:' , model.config.idalabel[predicted_class_idx] )
# verify logits
if not encoder_only:
assert logits.shape == expected_shape
assert torch.allclose(logits[0, :3, :3, :3] , A , atol=1e-2 )
# finally, save model and image processor
logger.info(F'''Saving PyTorch model and image processor to {pytorch_dump_folder_path}...''' )
Path(A ).mkdir(exist_ok=A )
model.save_pretrained(A )
image_processor.save_pretrained(A )
if __name__ == "__main__":
a_ :Optional[int] = argparse.ArgumentParser()
parser.add_argument(
"--model_name",
default="segformer.b0.512x512.ade.160k",
type=str,
help="Name of the model you'd like to convert.",
)
parser.add_argument(
"--checkpoint_path", default=None, type=str, help="Path to the original PyTorch checkpoint (.pth file)."
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to the folder to output PyTorch model."
)
a_ :Union[str, Any] = parser.parse_args()
convert_segformer_checkpoint(args.model_name, args.checkpoint_path, args.pytorch_dump_folder_path)
| 277 | 1 |
from __future__ import annotations
import unittest
from transformers import FunnelConfig, is_tf_available
from transformers.testing_utils import require_tf
from ...test_configuration_common import ConfigTester
from ...test_modeling_tf_common import TFModelTesterMixin, ids_tensor, random_attention_mask
from ...test_pipeline_mixin import PipelineTesterMixin
if is_tf_available():
import tensorflow as tf
from transformers import (
TFFunnelBaseModel,
TFFunnelForMaskedLM,
TFFunnelForMultipleChoice,
TFFunnelForPreTraining,
TFFunnelForQuestionAnswering,
TFFunnelForSequenceClassification,
TFFunnelForTokenClassification,
TFFunnelModel,
)
class snake_case__ :
"""simple docstring"""
def __init__( self : Optional[int], _snake_case : Any, _snake_case : Optional[int]=1_3, _snake_case : List[Any]=7, _snake_case : List[Any]=True, _snake_case : List[str]=True, _snake_case : List[str]=True, _snake_case : List[str]=True, _snake_case : Any=9_9, _snake_case : Optional[int]=[1, 1, 2], _snake_case : Any=1, _snake_case : List[Any]=3_2, _snake_case : int=4, _snake_case : Any=8, _snake_case : List[Any]=3_7, _snake_case : Optional[int]="gelu_new", _snake_case : str=0.1, _snake_case : Optional[Any]=0.1, _snake_case : Optional[Any]=0.0, _snake_case : int=5_1_2, _snake_case : Union[str, Any]=3, _snake_case : Any=0.0_2, _snake_case : str=3, _snake_case : str=4, _snake_case : Tuple=None, _snake_case : List[str]=False, ) ->Optional[Any]:
snake_case__ : str = parent
snake_case__ : Optional[Any] = batch_size
snake_case__ : Any = seq_length
snake_case__ : Optional[Any] = is_training
snake_case__ : Tuple = use_input_mask
snake_case__ : Tuple = use_token_type_ids
snake_case__ : Dict = use_labels
snake_case__ : Tuple = vocab_size
snake_case__ : str = block_sizes
snake_case__ : Tuple = num_decoder_layers
snake_case__ : List[Any] = d_model
snake_case__ : Union[str, Any] = n_head
snake_case__ : Optional[Any] = d_head
snake_case__ : Dict = d_inner
snake_case__ : List[Any] = hidden_act
snake_case__ : List[Any] = hidden_dropout
snake_case__ : Optional[int] = attention_dropout
snake_case__ : Optional[Any] = activation_dropout
snake_case__ : str = max_position_embeddings
snake_case__ : List[Any] = type_vocab_size
snake_case__ : Any = 2
snake_case__ : Optional[Any] = num_labels
snake_case__ : List[Any] = num_choices
snake_case__ : Union[str, Any] = scope
snake_case__ : Union[str, Any] = initializer_std
# Used in the tests to check the size of the first attention layer
snake_case__ : int = n_head
# Used in the tests to check the size of the first hidden state
snake_case__ : Union[str, Any] = self.d_model
# Used in the tests to check the number of output hidden states/attentions
snake_case__ : Optional[int] = sum(self.block_sizes ) + (0 if base else self.num_decoder_layers)
# FunnelModel adds two hidden layers: input embeddings and the sum of the upsampled encoder hidden state with
# the last hidden state of the first block (which is the first hidden state of the decoder).
if not base:
snake_case__ : List[str] = self.num_hidden_layers + 2
def lowercase_ ( self : Any ) ->Optional[int]:
snake_case__ : List[Any] = ids_tensor([self.batch_size, self.seq_length], self.vocab_size )
snake_case__ : Dict = None
if self.use_input_mask:
snake_case__ : Tuple = random_attention_mask([self.batch_size, self.seq_length] )
snake_case__ : List[str] = None
if self.use_token_type_ids:
snake_case__ : Dict = ids_tensor([self.batch_size, self.seq_length], self.type_vocab_size )
snake_case__ : str = None
snake_case__ : Optional[int] = None
snake_case__ : List[Any] = None
if self.use_labels:
snake_case__ : Any = ids_tensor([self.batch_size], self.type_sequence_label_size )
snake_case__ : Any = ids_tensor([self.batch_size, self.seq_length], self.num_labels )
snake_case__ : Dict = ids_tensor([self.batch_size], self.num_choices )
snake_case__ : str = FunnelConfig(
vocab_size=self.vocab_size, block_sizes=self.block_sizes, num_decoder_layers=self.num_decoder_layers, d_model=self.d_model, n_head=self.n_head, d_head=self.d_head, d_inner=self.d_inner, hidden_act=self.hidden_act, hidden_dropout=self.hidden_dropout, attention_dropout=self.attention_dropout, activation_dropout=self.activation_dropout, max_position_embeddings=self.max_position_embeddings, type_vocab_size=self.type_vocab_size, initializer_std=self.initializer_std, )
return (
config,
input_ids,
token_type_ids,
input_mask,
sequence_labels,
token_labels,
choice_labels,
)
def lowercase_ ( self : Tuple, _snake_case : int, _snake_case : Optional[Any], _snake_case : Tuple, _snake_case : List[str], _snake_case : str, _snake_case : Tuple, _snake_case : Union[str, Any], ) ->Optional[int]:
snake_case__ : Any = TFFunnelModel(config=_snake_case )
snake_case__ : List[Any] = {'input_ids': input_ids, 'attention_mask': input_mask, 'token_type_ids': token_type_ids}
snake_case__ : str = model(_snake_case )
snake_case__ : Union[str, Any] = [input_ids, input_mask]
snake_case__ : Tuple = model(_snake_case )
snake_case__ : Optional[Any] = model(_snake_case )
self.parent.assertEqual(result.last_hidden_state.shape, (self.batch_size, self.seq_length, self.d_model) )
snake_case__ : Union[str, Any] = False
snake_case__ : Any = TFFunnelModel(config=_snake_case )
snake_case__ : Dict = model(_snake_case )
self.parent.assertEqual(result.last_hidden_state.shape, (self.batch_size, self.seq_length, self.d_model) )
snake_case__ : Dict = False
snake_case__ : str = TFFunnelModel(config=_snake_case )
snake_case__ : List[str] = model(_snake_case )
self.parent.assertEqual(result.last_hidden_state.shape, (self.batch_size, self.seq_length, self.d_model) )
def lowercase_ ( self : Any, _snake_case : Dict, _snake_case : Any, _snake_case : Any, _snake_case : int, _snake_case : Dict, _snake_case : List[Any], _snake_case : str, ) ->str:
snake_case__ : Any = TFFunnelBaseModel(config=_snake_case )
snake_case__ : List[str] = {'input_ids': input_ids, 'attention_mask': input_mask, 'token_type_ids': token_type_ids}
snake_case__ : Any = model(_snake_case )
snake_case__ : str = [input_ids, input_mask]
snake_case__ : Any = model(_snake_case )
snake_case__ : Union[str, Any] = model(_snake_case )
self.parent.assertEqual(result.last_hidden_state.shape, (self.batch_size, 2, self.d_model) )
snake_case__ : List[Any] = False
snake_case__ : List[Any] = TFFunnelBaseModel(config=_snake_case )
snake_case__ : Optional[int] = model(_snake_case )
self.parent.assertEqual(result.last_hidden_state.shape, (self.batch_size, 3, self.d_model) )
snake_case__ : Dict = False
snake_case__ : List[str] = TFFunnelBaseModel(config=_snake_case )
snake_case__ : Any = model(_snake_case )
self.parent.assertEqual(result.last_hidden_state.shape, (self.batch_size, 2, self.d_model) )
def lowercase_ ( self : Optional[int], _snake_case : List[str], _snake_case : int, _snake_case : Union[str, Any], _snake_case : int, _snake_case : Union[str, Any], _snake_case : Tuple, _snake_case : Optional[int], ) ->Dict:
snake_case__ : int = TFFunnelForPreTraining(config=_snake_case )
snake_case__ : Optional[int] = {'input_ids': input_ids, 'attention_mask': input_mask, 'token_type_ids': token_type_ids}
snake_case__ : List[Any] = model(_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.seq_length) )
def lowercase_ ( self : str, _snake_case : Any, _snake_case : Optional[int], _snake_case : List[str], _snake_case : int, _snake_case : Any, _snake_case : Any, _snake_case : int, ) ->int:
snake_case__ : Optional[Any] = TFFunnelForMaskedLM(config=_snake_case )
snake_case__ : Dict = {'input_ids': input_ids, 'attention_mask': input_mask, 'token_type_ids': token_type_ids}
snake_case__ : str = model(_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.seq_length, self.vocab_size) )
def lowercase_ ( self : Optional[int], _snake_case : List[str], _snake_case : Tuple, _snake_case : Union[str, Any], _snake_case : Union[str, Any], _snake_case : Dict, _snake_case : List[str], _snake_case : Union[str, Any], ) ->int:
snake_case__ : List[str] = self.num_labels
snake_case__ : int = TFFunnelForSequenceClassification(config=_snake_case )
snake_case__ : Optional[Any] = {'input_ids': input_ids, 'attention_mask': input_mask, 'token_type_ids': token_type_ids}
snake_case__ : int = model(_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.num_labels) )
def lowercase_ ( self : int, _snake_case : int, _snake_case : List[str], _snake_case : str, _snake_case : Any, _snake_case : Optional[int], _snake_case : Dict, _snake_case : Any, ) ->List[str]:
snake_case__ : Optional[int] = self.num_choices
snake_case__ : List[Any] = TFFunnelForMultipleChoice(config=_snake_case )
snake_case__ : List[Any] = tf.tile(tf.expand_dims(_snake_case, 1 ), (1, self.num_choices, 1) )
snake_case__ : Dict = tf.tile(tf.expand_dims(_snake_case, 1 ), (1, self.num_choices, 1) )
snake_case__ : str = tf.tile(tf.expand_dims(_snake_case, 1 ), (1, self.num_choices, 1) )
snake_case__ : List[Any] = {
'input_ids': multiple_choice_inputs_ids,
'attention_mask': multiple_choice_input_mask,
'token_type_ids': multiple_choice_token_type_ids,
}
snake_case__ : int = model(_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.num_choices) )
def lowercase_ ( self : Union[str, Any], _snake_case : List[Any], _snake_case : List[str], _snake_case : Any, _snake_case : Optional[Any], _snake_case : Optional[Any], _snake_case : Any, _snake_case : List[str], ) ->str:
snake_case__ : List[str] = self.num_labels
snake_case__ : List[Any] = TFFunnelForTokenClassification(config=_snake_case )
snake_case__ : Optional[int] = {'input_ids': input_ids, 'attention_mask': input_mask, 'token_type_ids': token_type_ids}
snake_case__ : Optional[int] = model(_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.seq_length, self.num_labels) )
def lowercase_ ( self : Optional[int], _snake_case : int, _snake_case : List[str], _snake_case : Tuple, _snake_case : Optional[int], _snake_case : int, _snake_case : List[Any], _snake_case : str, ) ->Optional[int]:
snake_case__ : Union[str, Any] = TFFunnelForQuestionAnswering(config=_snake_case )
snake_case__ : Optional[int] = {'input_ids': input_ids, 'attention_mask': input_mask, 'token_type_ids': token_type_ids}
snake_case__ : Optional[int] = model(_snake_case )
self.parent.assertEqual(result.start_logits.shape, (self.batch_size, self.seq_length) )
self.parent.assertEqual(result.end_logits.shape, (self.batch_size, self.seq_length) )
def lowercase_ ( self : Any ) ->Any:
snake_case__ : Tuple = self.prepare_config_and_inputs()
(
(
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) ,
) : Any = config_and_inputs
snake_case__ : Optional[int] = {'input_ids': input_ids, 'token_type_ids': token_type_ids, 'attention_mask': input_mask}
return config, inputs_dict
@require_tf
class snake_case__ ( lowerCAmelCase_ , lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = (
(
TFFunnelModel,
TFFunnelForMaskedLM,
TFFunnelForPreTraining,
TFFunnelForQuestionAnswering,
TFFunnelForTokenClassification,
)
if is_tf_available()
else ()
)
_SCREAMING_SNAKE_CASE = (
{
"""feature-extraction""": (TFFunnelBaseModel, TFFunnelModel),
"""fill-mask""": TFFunnelForMaskedLM,
"""question-answering""": TFFunnelForQuestionAnswering,
"""text-classification""": TFFunnelForSequenceClassification,
"""token-classification""": TFFunnelForTokenClassification,
"""zero-shot""": TFFunnelForSequenceClassification,
}
if is_tf_available()
else {}
)
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
def lowercase_ ( self : str ) ->List[Any]:
snake_case__ : Union[str, Any] = TFFunnelModelTester(self )
snake_case__ : List[str] = ConfigTester(self, config_class=_snake_case )
def lowercase_ ( self : List[Any] ) ->List[Any]:
self.config_tester.run_common_tests()
def lowercase_ ( self : Tuple ) ->int:
snake_case__ : str = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_model(*_snake_case )
def lowercase_ ( self : Union[str, Any] ) ->Dict:
snake_case__ : Optional[int] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_pretraining(*_snake_case )
def lowercase_ ( self : List[str] ) ->Dict:
snake_case__ : Tuple = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_masked_lm(*_snake_case )
def lowercase_ ( self : int ) ->Optional[int]:
snake_case__ : Tuple = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_token_classification(*_snake_case )
def lowercase_ ( self : Any ) ->Any:
snake_case__ : List[Any] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_question_answering(*_snake_case )
@require_tf
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = (
(TFFunnelBaseModel, TFFunnelForMultipleChoice, TFFunnelForSequenceClassification) if is_tf_available() else ()
)
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
def lowercase_ ( self : Optional[int] ) ->Any:
snake_case__ : int = TFFunnelModelTester(self, base=_snake_case )
snake_case__ : List[str] = ConfigTester(self, config_class=_snake_case )
def lowercase_ ( self : Dict ) ->Optional[Any]:
self.config_tester.run_common_tests()
def lowercase_ ( self : str ) ->Union[str, Any]:
snake_case__ : List[Any] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_base_model(*_snake_case )
def lowercase_ ( self : Any ) ->Optional[Any]:
snake_case__ : Optional[Any] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_sequence_classification(*_snake_case )
def lowercase_ ( self : int ) ->Optional[Any]:
snake_case__ : Any = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_multiple_choice(*_snake_case )
| 277 |
import argparse
import json
import os
import fairseq
import torch
from fairseq.data import Dictionary
from transformers import (
WavaVecaConfig,
WavaVecaCTCTokenizer,
WavaVecaFeatureExtractor,
WavaVecaForCTC,
WavaVecaForPreTraining,
WavaVecaProcessor,
logging,
)
from transformers.models.wavaveca.modeling_wavaveca import WavaVecaForSequenceClassification
logging.set_verbosity_info()
a_ :List[Any] = logging.get_logger(__name__)
a_ :List[Any] = {
"post_extract_proj": "feature_projection.projection",
"encoder.pos_conv.0": "encoder.pos_conv_embed.conv",
"self_attn.k_proj": "encoder.layers.*.attention.k_proj",
"self_attn.v_proj": "encoder.layers.*.attention.v_proj",
"self_attn.q_proj": "encoder.layers.*.attention.q_proj",
"self_attn.out_proj": "encoder.layers.*.attention.out_proj",
"self_attn_layer_norm": "encoder.layers.*.layer_norm",
"fc1": "encoder.layers.*.feed_forward.intermediate_dense",
"fc2": "encoder.layers.*.feed_forward.output_dense",
"final_layer_norm": "encoder.layers.*.final_layer_norm",
"encoder.layer_norm": "encoder.layer_norm",
"adapter_layer": "encoder.layers.*.adapter_layer",
"w2v_model.layer_norm": "feature_projection.layer_norm",
"quantizer.weight_proj": "quantizer.weight_proj",
"quantizer.vars": "quantizer.codevectors",
"project_q": "project_q",
"final_proj": "project_hid",
"w2v_encoder.proj": "lm_head",
"mask_emb": "masked_spec_embed",
"pooling_layer.linear": "projector",
"pooling_layer.projection": "classifier",
}
a_ :List[Any] = [
"lm_head",
"quantizer.weight_proj",
"quantizer.codevectors",
"project_q",
"project_hid",
"projector",
"classifier",
]
def lowercase_ (A : Dict ):
snake_case__ : Optional[Any] = {}
with open(A , 'r' ) as file:
for line_number, line in enumerate(A ):
snake_case__ : Dict = line.strip()
if line:
snake_case__ : int = line.split()
snake_case__ : List[str] = line_number
snake_case__ : Dict = words[0]
snake_case__ : Optional[Any] = value
return result
def lowercase_ (A : int , A : int , A : Optional[int] , A : Optional[Any] , A : Tuple ):
for attribute in key.split('.' ):
snake_case__ : Optional[int] = getattr(A , A )
snake_case__ : Union[str, Any] = None
for param_key in PARAM_MAPPING.keys():
if full_name.endswith(A ):
snake_case__ : List[str] = PARAM_MAPPING[full_name.split('.' )[-1]]
snake_case__ : Dict = 'param'
if weight_type is not None and weight_type != "param":
snake_case__ : Union[str, Any] = getattr(A , A ).shape
elif weight_type is not None and weight_type == "param":
snake_case__ : Optional[int] = hf_pointer
for attribute in hf_param_name.split('.' ):
snake_case__ : Optional[Any] = getattr(A , A )
snake_case__ : Dict = shape_pointer.shape
# let's reduce dimension
snake_case__ : List[Any] = value[0]
else:
snake_case__ : Union[str, Any] = hf_pointer.shape
if hf_shape != value.shape:
raise ValueError(
F'''Shape of hf {key + "." + weight_type if weight_type is not None else ""} is {hf_shape}, but should be'''
F''' {value.shape} for {full_name}''' )
if weight_type == "weight":
snake_case__ : Any = value
elif weight_type == "weight_g":
snake_case__ : List[Any] = value
elif weight_type == "weight_v":
snake_case__ : Any = value
elif weight_type == "bias":
snake_case__ : List[Any] = value
elif weight_type == "param":
for attribute in hf_param_name.split('.' ):
snake_case__ : int = getattr(A , A )
snake_case__ : Optional[int] = value
else:
snake_case__ : Optional[Any] = value
logger.info(F'''{key + "." + weight_type if weight_type is not None else ""} was initialized from {full_name}.''' )
def lowercase_ (A : Tuple , A : List[Any] , A : int , A : str , A : Tuple ):
snake_case__ : Optional[int] = None
for param_key in PARAM_MAPPING.keys():
if full_name.endswith(A ):
snake_case__ : List[str] = PARAM_MAPPING[full_name.split('.' )[-1]]
snake_case__ : str = 'param'
if weight_type is not None and weight_type != "param":
snake_case__ : int = '.'.join([key, weight_type] )
elif weight_type is not None and weight_type == "param":
snake_case__ : Any = '.'.join([key, hf_param_name] )
else:
snake_case__ : Dict = key
snake_case__ : List[str] = value if 'lm_head' in full_key else value[0]
a_ :List[str] = {
"W_a": "linear_1.weight",
"W_b": "linear_2.weight",
"b_a": "linear_1.bias",
"b_b": "linear_2.bias",
"ln_W": "norm.weight",
"ln_b": "norm.bias",
}
def lowercase_ (A : str , A : Optional[Any] , A : Optional[Any]=None , A : List[str]=None ):
snake_case__ : Optional[int] = False
for key, mapped_key in MAPPING.items():
snake_case__ : Tuple = 'wav2vec2.' + mapped_key if mapped_key not in TOP_LEVEL_KEYS else mapped_key
if key in name or key.split('w2v_model.' )[-1] == name.split('.' )[0]:
snake_case__ : Optional[int] = True
if "*" in mapped_key:
snake_case__ : List[Any] = name.split(A )[0].split('.' )[-2]
snake_case__ : Union[str, Any] = mapped_key.replace('*' , A )
if "weight_g" in name:
snake_case__ : Tuple = 'weight_g'
elif "weight_v" in name:
snake_case__ : List[str] = 'weight_v'
elif "bias" in name:
snake_case__ : Dict = 'bias'
elif "weight" in name:
# TODO: don't match quantizer.weight_proj
snake_case__ : Optional[int] = 'weight'
else:
snake_case__ : str = None
if hf_dict is not None:
rename_dict(A , A , A , A , A )
else:
set_recursively(A , A , A , A , A )
return is_used
return is_used
def lowercase_ (A : Optional[Any] , A : Dict , A : Optional[int] ):
snake_case__ : Dict = []
snake_case__ : Tuple = fairseq_model.state_dict()
snake_case__ : str = hf_model.wavaveca.feature_extractor
for name, value in fairseq_dict.items():
snake_case__ : str = False
if "conv_layers" in name:
load_conv_layer(
A , A , A , A , hf_model.config.feat_extract_norm == 'group' , )
snake_case__ : Any = True
else:
snake_case__ : Dict = load_wavaveca_layer(A , A , A )
if not is_used:
unused_weights.append(A )
logger.warning(F'''Unused weights: {unused_weights}''' )
def lowercase_ (A : Dict , A : Optional[Any] , A : Tuple , A : str , A : List[str] ):
snake_case__ : List[Any] = full_name.split('conv_layers.' )[-1]
snake_case__ : List[str] = name.split('.' )
snake_case__ : List[Any] = int(items[0] )
snake_case__ : str = int(items[1] )
if type_id == 0:
if "bias" in name:
if value.shape != feature_extractor.conv_layers[layer_id].conv.bias.data.shape:
raise ValueError(
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.bias.data.shape} was found.''' )
snake_case__ : Any = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
if value.shape != feature_extractor.conv_layers[layer_id].conv.weight.data.shape:
raise ValueError(
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.weight.data.shape} was found.''' )
snake_case__ : str = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif (type_id == 2 and not use_group_norm) or (type_id == 2 and layer_id == 0 and use_group_norm):
if "bias" in name:
if value.shape != feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape:
raise ValueError(
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape} was found.''' )
snake_case__ : str = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
if value.shape != feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape:
raise ValueError(
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape} was found.''' )
snake_case__ : int = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
else:
unused_weights.append(A )
@torch.no_grad()
def lowercase_ (A : Union[str, Any] , A : str , A : Tuple=None , A : List[str]=None , A : Any=True , A : Optional[int]=False ):
if config_path is not None:
snake_case__ : List[Any] = WavaVecaConfig.from_pretrained(A )
else:
snake_case__ : List[Any] = WavaVecaConfig()
if is_seq_class:
snake_case__ : Dict = read_txt_into_dict(A )
snake_case__ : Any = idalabel
snake_case__ : Union[str, Any] = WavaVecaForSequenceClassification(A )
snake_case__ : Any = WavaVecaFeatureExtractor(
feature_size=1 , sampling_rate=1_6_0_0_0 , padding_value=0 , do_normalize=A , return_attention_mask=A , )
feature_extractor.save_pretrained(A )
elif is_finetuned:
if dict_path:
snake_case__ : str = Dictionary.load(A )
# important change bos & pad token id since CTC symbol is <pad> and
# not <s> as in fairseq
snake_case__ : List[str] = target_dict.pad_index
snake_case__ : Optional[int] = target_dict.bos_index
snake_case__ : Optional[int] = target_dict.eos_index
snake_case__ : List[Any] = len(target_dict.symbols )
snake_case__ : str = os.path.join(A , 'vocab.json' )
if not os.path.isdir(A ):
logger.error('--pytorch_dump_folder_path ({}) should be a directory'.format(A ) )
return
os.makedirs(A , exist_ok=A )
snake_case__ : Optional[Any] = target_dict.indices
# fairseq has the <pad> and <s> switched
snake_case__ : Optional[Any] = 0
snake_case__ : Union[str, Any] = 1
with open(A , 'w' , encoding='utf-8' ) as vocab_handle:
json.dump(A , A )
snake_case__ : List[Any] = WavaVecaCTCTokenizer(
A , unk_token=target_dict.unk_word , pad_token=target_dict.pad_word , bos_token=target_dict.bos_word , eos_token=target_dict.eos_word , word_delimiter_token='|' , do_lower_case=A , )
snake_case__ : str = True if config.feat_extract_norm == 'layer' else False
snake_case__ : Optional[Any] = WavaVecaFeatureExtractor(
feature_size=1 , sampling_rate=1_6_0_0_0 , padding_value=0 , do_normalize=A , return_attention_mask=A , )
snake_case__ : Union[str, Any] = WavaVecaProcessor(feature_extractor=A , tokenizer=A )
processor.save_pretrained(A )
snake_case__ : str = WavaVecaForCTC(A )
else:
snake_case__ : int = WavaVecaForPreTraining(A )
if is_finetuned or is_seq_class:
snake_case__ , snake_case__ , snake_case__ : str = fairseq.checkpoint_utils.load_model_ensemble_and_task(
[checkpoint_path] , arg_overrides={'data': '/'.join(dict_path.split('/' )[:-1] )} )
else:
snake_case__ : Tuple = argparse.Namespace(task='audio_pretraining' )
snake_case__ : str = fairseq.tasks.setup_task(A )
snake_case__ , snake_case__ , snake_case__ : Any = fairseq.checkpoint_utils.load_model_ensemble_and_task([checkpoint_path] , task=A )
snake_case__ : List[Any] = model[0].eval()
recursively_load_weights(A , A , not is_finetuned )
hf_wavavec.save_pretrained(A )
if __name__ == "__main__":
a_ :List[Any] = argparse.ArgumentParser()
parser.add_argument("--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model.")
parser.add_argument("--checkpoint_path", default=None, type=str, help="Path to fairseq checkpoint")
parser.add_argument("--dict_path", default=None, type=str, help="Path to dict of fine-tuned model")
parser.add_argument("--config_path", default=None, type=str, help="Path to hf config.json of model to convert")
parser.add_argument(
"--not_finetuned", action="store_true", help="Whether the model to convert is a fine-tuned model or not"
)
parser.add_argument(
"--is_seq_class",
action="store_true",
help="Whether the model to convert is a fine-tuned sequence classification model or not",
)
a_ :str = parser.parse_args()
a_ :Tuple = not args.not_finetuned and not args.is_seq_class
convert_wavaveca_checkpoint(
args.checkpoint_path,
args.pytorch_dump_folder_path,
args.config_path,
args.dict_path,
is_finetuned,
args.is_seq_class,
)
| 277 | 1 |
import cva
import numpy as np
class snake_case__ :
"""simple docstring"""
def __init__( self : Tuple, _snake_case : float, _snake_case : int ) ->List[Any]:
if k in (0.0_4, 0.0_6):
snake_case__ : Dict = k
snake_case__ : Optional[int] = window_size
else:
raise ValueError('invalid k value' )
def __str__( self : Optional[int] ) ->str:
return str(self.k )
def lowercase_ ( self : Optional[int], _snake_case : str ) ->tuple[cva.Mat, list[list[int]]]:
snake_case__ : int = cva.imread(_snake_case, 0 )
snake_case__ , snake_case__ : Optional[Any] = img.shape
snake_case__ : list[list[int]] = []
snake_case__ : Optional[Any] = img.copy()
snake_case__ : Optional[Any] = cva.cvtColor(_snake_case, cva.COLOR_GRAY2RGB )
snake_case__ , snake_case__ : List[Any] = np.gradient(_snake_case )
snake_case__ : Tuple = dx**2
snake_case__ : int = dy**2
snake_case__ : Dict = dx * dy
snake_case__ : int = 0.0_4
snake_case__ : Optional[int] = self.window_size // 2
for y in range(_snake_case, h - offset ):
for x in range(_snake_case, w - offset ):
snake_case__ : Tuple = ixx[
y - offset : y + offset + 1, x - offset : x + offset + 1
].sum()
snake_case__ : Union[str, Any] = iyy[
y - offset : y + offset + 1, x - offset : x + offset + 1
].sum()
snake_case__ : int = ixy[
y - offset : y + offset + 1, x - offset : x + offset + 1
].sum()
snake_case__ : Optional[Any] = (wxx * wyy) - (wxy**2)
snake_case__ : Any = wxx + wyy
snake_case__ : Tuple = det - k * (trace**2)
# Can change the value
if r > 0.5:
corner_list.append([x, y, r] )
color_img.itemset((y, x, 0), 0 )
color_img.itemset((y, x, 1), 0 )
color_img.itemset((y, x, 2), 2_5_5 )
return color_img, corner_list
if __name__ == "__main__":
a_ :Dict = HarrisCorner(0.04, 3)
a_ , a_ :List[Any] = edge_detect.detect("path_to_image")
cva.imwrite("detect.png", color_img)
| 277 |
from typing import Dict, List
from nltk.translate import gleu_score
import datasets
from datasets import MetricInfo
a_ :Any = "\\n@misc{wu2016googles,\n title={Google's Neural Machine Translation System: Bridging the Gap between Human and Machine Translation},\n author={Yonghui Wu and Mike Schuster and Zhifeng Chen and Quoc V. Le and Mohammad Norouzi and Wolfgang Macherey\n and Maxim Krikun and Yuan Cao and Qin Gao and Klaus Macherey and Jeff Klingner and Apurva Shah and Melvin\n Johnson and Xiaobing Liu and Łukasz Kaiser and Stephan Gouws and Yoshikiyo Kato and Taku Kudo and Hideto\n Kazawa and Keith Stevens and George Kurian and Nishant Patil and Wei Wang and Cliff Young and\n Jason Smith and Jason Riesa and Alex Rudnick and Oriol Vinyals and Greg Corrado and Macduff Hughes\n and Jeffrey Dean},\n year={2016},\n eprint={1609.08144},\n archivePrefix={arXiv},\n primaryClass={cs.CL}\n}\n"
a_ :List[str] = "\\nThe BLEU score has some undesirable properties when used for single\nsentences, as it was designed to be a corpus measure. We therefore\nuse a slightly different score for our RL experiments which we call\nthe 'GLEU score'. For the GLEU score, we record all sub-sequences of\n1, 2, 3 or 4 tokens in output and target sequence (n-grams). We then\ncompute a recall, which is the ratio of the number of matching n-grams\nto the number of total n-grams in the target (ground truth) sequence,\nand a precision, which is the ratio of the number of matching n-grams\nto the number of total n-grams in the generated output sequence. Then\nGLEU score is simply the minimum of recall and precision. This GLEU\nscore's range is always between 0 (no matches) and 1 (all match) and\nit is symmetrical when switching output and target. According to\nour experiments, GLEU score correlates quite well with the BLEU\nmetric on a corpus level but does not have its drawbacks for our per\nsentence reward objective.\n"
a_ :List[str] = "\\nComputes corpus-level Google BLEU (GLEU) score of translated segments against one or more references.\nInstead of averaging the sentence level GLEU scores (i.e. macro-average precision), Wu et al. (2016) sum up the matching\ntokens and the max of hypothesis and reference tokens for each sentence, then compute using the aggregate values.\n\nArgs:\n predictions (list of str): list of translations to score.\n Each translation should be tokenized into a list of tokens.\n references (list of list of str): list of lists of references for each translation.\n Each reference should be tokenized into a list of tokens.\n min_len (int): The minimum order of n-gram this function should extract. Defaults to 1.\n max_len (int): The maximum order of n-gram this function should extract. Defaults to 4.\n\nReturns:\n 'google_bleu': google_bleu score\n\nExamples:\n Example 1:\n >>> hyp1 = ['It', 'is', 'a', 'guide', 'to', 'action', 'which',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'always',\n ... 'disobeys', 'the', 'commands', 'of', 'the', 'cat']\n >>> ref1a = ['It', 'is', 'the', 'guiding', 'principle', 'which',\n ... 'guarantees', 'the', 'rubber', 'duck', 'forces', 'never',\n ... 'being', 'under', 'the', 'command', 'of', 'the', 'cat']\n\n >>> hyp2 = ['he', 'read', 'the', 'book', 'because', 'he', 'was',\n ... 'interested', 'in', 'world', 'history']\n >>> ref2a = ['he', 'was', 'interested', 'in', 'world', 'history',\n ... 'because', 'he', 'read', 'the', 'book']\n\n >>> list_of_references = [[ref1a], [ref2a]]\n >>> hypotheses = [hyp1, hyp2]\n >>> google_bleu = datasets.load_metric(\"google_bleu\")\n >>> results = google_bleu.compute(predictions=hypotheses, references=list_of_references)\n >>> print(round(results[\"google_bleu\"], 2))\n 0.44\n\n Example 2:\n >>> hyp1 = ['It', 'is', 'a', 'guide', 'to', 'action', 'which',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'always',\n ... 'disobeys', 'the', 'commands', 'of', 'the', 'cat']\n >>> ref1a = ['It', 'is', 'the', 'guiding', 'principle', 'which',\n ... 'guarantees', 'the', 'rubber', 'duck', 'forces', 'never',\n ... 'being', 'under', 'the', 'command', 'of', 'the', 'cat']\n >>> ref1b = ['It', 'is', 'a', 'guide', 'to', 'action', 'that',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'will', 'never',\n ... 'heed', 'the', 'cat', 'commands']\n >>> ref1c = ['It', 'is', 'the', 'practical', 'guide', 'for', 'the',\n ... 'rubber', 'duck', 'army', 'never', 'to', 'heed', 'the', 'directions',\n ... 'of', 'the', 'cat']\n\n >>> hyp2 = ['he', 'read', 'the', 'book', 'because', 'he', 'was',\n ... 'interested', 'in', 'world', 'history']\n >>> ref2a = ['he', 'was', 'interested', 'in', 'world', 'history',\n ... 'because', 'he', 'read', 'the', 'book']\n\n >>> list_of_references = [[ref1a, ref1b, ref1c], [ref2a]]\n >>> hypotheses = [hyp1, hyp2]\n >>> google_bleu = datasets.load_metric(\"google_bleu\")\n >>> results = google_bleu.compute(predictions=hypotheses, references=list_of_references)\n >>> print(round(results[\"google_bleu\"], 2))\n 0.61\n\n Example 3:\n >>> hyp1 = ['It', 'is', 'a', 'guide', 'to', 'action', 'which',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'always',\n ... 'disobeys', 'the', 'commands', 'of', 'the', 'cat']\n >>> ref1a = ['It', 'is', 'the', 'guiding', 'principle', 'which',\n ... 'guarantees', 'the', 'rubber', 'duck', 'forces', 'never',\n ... 'being', 'under', 'the', 'command', 'of', 'the', 'cat']\n >>> ref1b = ['It', 'is', 'a', 'guide', 'to', 'action', 'that',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'will', 'never',\n ... 'heed', 'the', 'cat', 'commands']\n >>> ref1c = ['It', 'is', 'the', 'practical', 'guide', 'for', 'the',\n ... 'rubber', 'duck', 'army', 'never', 'to', 'heed', 'the', 'directions',\n ... 'of', 'the', 'cat']\n\n >>> hyp2 = ['he', 'read', 'the', 'book', 'because', 'he', 'was',\n ... 'interested', 'in', 'world', 'history']\n >>> ref2a = ['he', 'was', 'interested', 'in', 'world', 'history',\n ... 'because', 'he', 'read', 'the', 'book']\n\n >>> list_of_references = [[ref1a, ref1b, ref1c], [ref2a]]\n >>> hypotheses = [hyp1, hyp2]\n >>> google_bleu = datasets.load_metric(\"google_bleu\")\n >>> results = google_bleu.compute(predictions=hypotheses, references=list_of_references, min_len=2)\n >>> print(round(results[\"google_bleu\"], 2))\n 0.53\n\n Example 4:\n >>> hyp1 = ['It', 'is', 'a', 'guide', 'to', 'action', 'which',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'always',\n ... 'disobeys', 'the', 'commands', 'of', 'the', 'cat']\n >>> ref1a = ['It', 'is', 'the', 'guiding', 'principle', 'which',\n ... 'guarantees', 'the', 'rubber', 'duck', 'forces', 'never',\n ... 'being', 'under', 'the', 'command', 'of', 'the', 'cat']\n >>> ref1b = ['It', 'is', 'a', 'guide', 'to', 'action', 'that',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'will', 'never',\n ... 'heed', 'the', 'cat', 'commands']\n >>> ref1c = ['It', 'is', 'the', 'practical', 'guide', 'for', 'the',\n ... 'rubber', 'duck', 'army', 'never', 'to', 'heed', 'the', 'directions',\n ... 'of', 'the', 'cat']\n\n >>> hyp2 = ['he', 'read', 'the', 'book', 'because', 'he', 'was',\n ... 'interested', 'in', 'world', 'history']\n >>> ref2a = ['he', 'was', 'interested', 'in', 'world', 'history',\n ... 'because', 'he', 'read', 'the', 'book']\n\n >>> list_of_references = [[ref1a, ref1b, ref1c], [ref2a]]\n >>> hypotheses = [hyp1, hyp2]\n >>> google_bleu = datasets.load_metric(\"google_bleu\")\n >>> results = google_bleu.compute(predictions=hypotheses,references=list_of_references, min_len=2, max_len=6)\n >>> print(round(results[\"google_bleu\"], 2))\n 0.4\n"
@datasets.utils.file_utils.add_start_docstrings(_DESCRIPTION , _KWARGS_DESCRIPTION )
class snake_case__ ( datasets.Metric ):
"""simple docstring"""
def lowercase_ ( self : str ) ->MetricInfo:
return datasets.MetricInfo(
description=_DESCRIPTION, citation=_CITATION, inputs_description=_KWARGS_DESCRIPTION, features=datasets.Features(
{
'predictions': datasets.Sequence(datasets.Value('string', id='token' ), id='sequence' ),
'references': datasets.Sequence(
datasets.Sequence(datasets.Value('string', id='token' ), id='sequence' ), id='references' ),
} ), )
def lowercase_ ( self : str, _snake_case : List[List[List[str]]], _snake_case : List[List[str]], _snake_case : int = 1, _snake_case : int = 4, ) ->Dict[str, float]:
return {
"google_bleu": gleu_score.corpus_gleu(
list_of_references=_snake_case, hypotheses=_snake_case, min_len=_snake_case, max_len=_snake_case )
}
| 277 | 1 |
import unittest
from transformers import EsmConfig, is_torch_available
from transformers.testing_utils import TestCasePlus, require_torch, slow, torch_device
from ...test_configuration_common import ConfigTester
from ...test_modeling_common import ModelTesterMixin, ids_tensor, random_attention_mask
from ...test_pipeline_mixin import PipelineTesterMixin
if is_torch_available():
import torch
from transformers.models.esm.modeling_esmfold import EsmForProteinFolding
class snake_case__ :
"""simple docstring"""
def __init__( self : List[Any], _snake_case : Union[str, Any], _snake_case : Tuple=1_3, _snake_case : Any=7, _snake_case : Any=False, _snake_case : Tuple=True, _snake_case : int=False, _snake_case : int=False, _snake_case : List[str]=1_9, _snake_case : Dict=3_2, _snake_case : List[Any]=5, _snake_case : Optional[int]=4, _snake_case : Dict=3_7, _snake_case : Any="gelu", _snake_case : int=0.1, _snake_case : Optional[int]=0.1, _snake_case : Optional[int]=5_1_2, _snake_case : Dict=1_6, _snake_case : Any=2, _snake_case : Optional[int]=0.0_2, _snake_case : List[str]=3, _snake_case : Optional[int]=4, _snake_case : List[Any]=None, ) ->Optional[int]:
snake_case__ : Optional[Any] = parent
snake_case__ : Optional[int] = batch_size
snake_case__ : List[Any] = seq_length
snake_case__ : Dict = is_training
snake_case__ : str = use_input_mask
snake_case__ : Optional[int] = use_token_type_ids
snake_case__ : Tuple = use_labels
snake_case__ : List[Any] = vocab_size
snake_case__ : Dict = hidden_size
snake_case__ : Tuple = num_hidden_layers
snake_case__ : Optional[Any] = num_attention_heads
snake_case__ : Dict = intermediate_size
snake_case__ : Tuple = hidden_act
snake_case__ : Optional[Any] = hidden_dropout_prob
snake_case__ : str = attention_probs_dropout_prob
snake_case__ : str = max_position_embeddings
snake_case__ : Union[str, Any] = type_vocab_size
snake_case__ : int = type_sequence_label_size
snake_case__ : Optional[int] = initializer_range
snake_case__ : Dict = num_labels
snake_case__ : Optional[int] = num_choices
snake_case__ : Optional[Any] = scope
def lowercase_ ( self : Dict ) ->int:
snake_case__ : List[Any] = ids_tensor([self.batch_size, self.seq_length], self.vocab_size )
snake_case__ : int = None
if self.use_input_mask:
snake_case__ : Any = random_attention_mask([self.batch_size, self.seq_length] )
snake_case__ : Optional[Any] = None
snake_case__ : Optional[int] = None
snake_case__ : str = None
if self.use_labels:
snake_case__ : Optional[Any] = ids_tensor([self.batch_size], self.type_sequence_label_size )
snake_case__ : List[Any] = ids_tensor([self.batch_size, self.seq_length], self.num_labels )
snake_case__ : int = ids_tensor([self.batch_size], self.num_choices )
snake_case__ : Optional[int] = self.get_config()
return config, input_ids, input_mask, sequence_labels, token_labels, choice_labels
def lowercase_ ( self : Union[str, Any] ) ->Optional[Any]:
snake_case__ : Tuple = EsmConfig(
vocab_size=3_3, hidden_size=self.hidden_size, pad_token_id=1, num_hidden_layers=self.num_hidden_layers, num_attention_heads=self.num_attention_heads, intermediate_size=self.intermediate_size, hidden_act=self.hidden_act, hidden_dropout_prob=self.hidden_dropout_prob, attention_probs_dropout_prob=self.attention_probs_dropout_prob, max_position_embeddings=self.max_position_embeddings, type_vocab_size=self.type_vocab_size, initializer_range=self.initializer_range, is_folding_model=_snake_case, esmfold_config={'trunk': {'num_blocks': 2}, 'fp16_esm': False}, )
return config
def lowercase_ ( self : List[str], _snake_case : Optional[Any], _snake_case : Tuple, _snake_case : Optional[int], _snake_case : int, _snake_case : Any, _snake_case : Optional[int] ) ->str:
snake_case__ : Optional[int] = EsmForProteinFolding(config=_snake_case ).float()
model.to(_snake_case )
model.eval()
snake_case__ : int = model(_snake_case, attention_mask=_snake_case )
snake_case__ : Tuple = model(_snake_case )
snake_case__ : Dict = model(_snake_case )
self.parent.assertEqual(result.positions.shape, (8, self.batch_size, self.seq_length, 1_4, 3) )
self.parent.assertEqual(result.angles.shape, (8, self.batch_size, self.seq_length, 7, 2) )
def lowercase_ ( self : Optional[int] ) ->Any:
snake_case__ : Tuple = self.prepare_config_and_inputs()
(
(
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) ,
) : str = config_and_inputs
snake_case__ : int = {'input_ids': input_ids, 'attention_mask': input_mask}
return config, inputs_dict
@require_torch
class snake_case__ ( lowerCAmelCase_ , lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = (EsmForProteinFolding,) if is_torch_available() else ()
_SCREAMING_SNAKE_CASE = ()
_SCREAMING_SNAKE_CASE = {} if is_torch_available() else {}
_SCREAMING_SNAKE_CASE = False
def lowercase_ ( self : Dict ) ->Optional[Any]:
snake_case__ : Tuple = EsmFoldModelTester(self )
snake_case__ : int = ConfigTester(self, config_class=_snake_case, hidden_size=3_7 )
def lowercase_ ( self : str ) ->List[Any]:
self.config_tester.run_common_tests()
def lowercase_ ( self : int ) ->Tuple:
snake_case__ : Dict = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_model(*_snake_case )
@unittest.skip('Does not support attention outputs' )
def lowercase_ ( self : int ) ->Dict:
pass
@unittest.skip
def lowercase_ ( self : Optional[Any] ) ->int:
pass
@unittest.skip('Esm does not support embedding resizing' )
def lowercase_ ( self : str ) ->Dict:
pass
@unittest.skip('Esm does not support embedding resizing' )
def lowercase_ ( self : Optional[int] ) ->List[Any]:
pass
@unittest.skip('ESMFold does not support passing input embeds!' )
def lowercase_ ( self : str ) ->List[str]:
pass
@unittest.skip('ESMFold does not support head pruning.' )
def lowercase_ ( self : Union[str, Any] ) ->Union[str, Any]:
pass
@unittest.skip('ESMFold does not support head pruning.' )
def lowercase_ ( self : Union[str, Any] ) ->Union[str, Any]:
pass
@unittest.skip('ESMFold does not support head pruning.' )
def lowercase_ ( self : int ) ->Optional[Any]:
pass
@unittest.skip('ESMFold does not support head pruning.' )
def lowercase_ ( self : Optional[Any] ) ->Union[str, Any]:
pass
@unittest.skip('ESMFold does not support head pruning.' )
def lowercase_ ( self : Union[str, Any] ) ->Optional[int]:
pass
@unittest.skip('ESMFold does not output hidden states in the normal way.' )
def lowercase_ ( self : List[str] ) ->Optional[Any]:
pass
@unittest.skip('ESMfold does not output hidden states in the normal way.' )
def lowercase_ ( self : Any ) ->Union[str, Any]:
pass
@unittest.skip('ESMFold only has one output format.' )
def lowercase_ ( self : Tuple ) ->Tuple:
pass
@unittest.skip('This test doesn\'t work for ESMFold and doesn\'t test core functionality' )
def lowercase_ ( self : Optional[int] ) ->Dict:
pass
@unittest.skip('ESMFold does not support input chunking.' )
def lowercase_ ( self : Union[str, Any] ) ->List[str]:
pass
@unittest.skip('ESMFold doesn\'t respect you and it certainly doesn\'t respect your initialization arguments.' )
def lowercase_ ( self : Dict ) ->Optional[Any]:
pass
@unittest.skip('ESMFold doesn\'t support torchscript compilation.' )
def lowercase_ ( self : List[str] ) ->List[Any]:
pass
@unittest.skip('ESMFold doesn\'t support torchscript compilation.' )
def lowercase_ ( self : Union[str, Any] ) ->List[Any]:
pass
@unittest.skip('ESMFold doesn\'t support torchscript compilation.' )
def lowercase_ ( self : Any ) ->Dict:
pass
@unittest.skip('ESMFold doesn\'t support data parallel.' )
def lowercase_ ( self : Dict ) ->List[str]:
pass
@unittest.skip('Will be fixed soon by reducing the size of the model used for common tests.' )
def lowercase_ ( self : List[Any] ) ->Union[str, Any]:
pass
@require_torch
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
@slow
def lowercase_ ( self : str ) ->Optional[Any]:
snake_case__ : Optional[int] = EsmForProteinFolding.from_pretrained('facebook/esmfold_v1' ).float()
model.eval()
snake_case__ : int = torch.tensor([[0, 6, 4, 1_3, 5, 4, 1_6, 1_2, 1_1, 7, 2]] )
snake_case__ : Union[str, Any] = model(_snake_case )['positions']
snake_case__ : Optional[Any] = torch.tensor([2.5_8_2_8, 0.7_9_9_3, -1_0.9_3_3_4], dtype=torch.floataa )
self.assertTrue(torch.allclose(position_outputs[0, 0, 0, 0], _snake_case, atol=1e-4 ) )
| 277 |
from math import factorial
def lowercase_ (A : int , A : int , A : float ):
if successes > trials:
raise ValueError('successes must be lower or equal to trials' )
if trials < 0 or successes < 0:
raise ValueError('the function is defined for non-negative integers' )
if not isinstance(A , A ) or not isinstance(A , A ):
raise ValueError('the function is defined for non-negative integers' )
if not 0 < prob < 1:
raise ValueError('prob has to be in range of 1 - 0' )
snake_case__ : List[Any] = (prob**successes) * ((1 - prob) ** (trials - successes))
# Calculate the binomial coefficient: n! / k!(n-k)!
snake_case__ : List[str] = float(factorial(A ) )
coefficient /= factorial(A ) * factorial(trials - successes )
return probability * coefficient
if __name__ == "__main__":
from doctest import testmod
testmod()
print("Probability of 2 successes out of 4 trails")
print("with probability of 0.75 is:", end=" ")
print(binomial_distribution(2, 4, 0.75))
| 277 | 1 |
from typing import TYPE_CHECKING
from ...utils import (
OptionalDependencyNotAvailable,
_LazyModule,
is_tf_available,
is_tokenizers_available,
is_torch_available,
)
a_ :List[Any] = {
"configuration_funnel": ["FUNNEL_PRETRAINED_CONFIG_ARCHIVE_MAP", "FunnelConfig"],
"convert_funnel_original_tf_checkpoint_to_pytorch": [],
"tokenization_funnel": ["FunnelTokenizer"],
}
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :Dict = ["FunnelTokenizerFast"]
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :Optional[Any] = [
"FUNNEL_PRETRAINED_MODEL_ARCHIVE_LIST",
"FunnelBaseModel",
"FunnelForMaskedLM",
"FunnelForMultipleChoice",
"FunnelForPreTraining",
"FunnelForQuestionAnswering",
"FunnelForSequenceClassification",
"FunnelForTokenClassification",
"FunnelModel",
"FunnelPreTrainedModel",
"load_tf_weights_in_funnel",
]
try:
if not is_tf_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :Optional[int] = [
"TF_FUNNEL_PRETRAINED_MODEL_ARCHIVE_LIST",
"TFFunnelBaseModel",
"TFFunnelForMaskedLM",
"TFFunnelForMultipleChoice",
"TFFunnelForPreTraining",
"TFFunnelForQuestionAnswering",
"TFFunnelForSequenceClassification",
"TFFunnelForTokenClassification",
"TFFunnelModel",
"TFFunnelPreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_funnel import FUNNEL_PRETRAINED_CONFIG_ARCHIVE_MAP, FunnelConfig
from .tokenization_funnel import FunnelTokenizer
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_funnel_fast import FunnelTokenizerFast
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_funnel import (
FUNNEL_PRETRAINED_MODEL_ARCHIVE_LIST,
FunnelBaseModel,
FunnelForMaskedLM,
FunnelForMultipleChoice,
FunnelForPreTraining,
FunnelForQuestionAnswering,
FunnelForSequenceClassification,
FunnelForTokenClassification,
FunnelModel,
FunnelPreTrainedModel,
load_tf_weights_in_funnel,
)
try:
if not is_tf_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_tf_funnel import (
TF_FUNNEL_PRETRAINED_MODEL_ARCHIVE_LIST,
TFFunnelBaseModel,
TFFunnelForMaskedLM,
TFFunnelForMultipleChoice,
TFFunnelForPreTraining,
TFFunnelForQuestionAnswering,
TFFunnelForSequenceClassification,
TFFunnelForTokenClassification,
TFFunnelModel,
TFFunnelPreTrainedModel,
)
else:
import sys
a_ :Any = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 277 |
from collections import UserDict
from typing import Union
import numpy as np
import requests
from ..utils import (
add_end_docstrings,
logging,
)
from .audio_classification import ffmpeg_read
from .base import PIPELINE_INIT_ARGS, Pipeline
a_ :List[Any] = logging.get_logger(__name__)
@add_end_docstrings(lowerCAmelCase_ )
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
def __init__( self : Optional[Any], **_snake_case : str ) ->Dict:
super().__init__(**_snake_case )
if self.framework != "pt":
raise ValueError(F'''The {self.__class__} is only available in PyTorch.''' )
# No specific FOR_XXX available yet
def __call__( self : Union[str, Any], _snake_case : Union[np.ndarray, bytes, str], **_snake_case : Tuple ) ->Dict:
return super().__call__(_snake_case, **_snake_case )
def lowercase_ ( self : Tuple, **_snake_case : Any ) ->Union[str, Any]:
snake_case__ : str = {}
if "candidate_labels" in kwargs:
snake_case__ : str = kwargs['candidate_labels']
if "hypothesis_template" in kwargs:
snake_case__ : str = kwargs['hypothesis_template']
return preprocess_params, {}, {}
def lowercase_ ( self : Dict, _snake_case : str, _snake_case : Optional[int]=None, _snake_case : List[str]="This is a sound of {}." ) ->int:
if isinstance(_snake_case, _snake_case ):
if audio.startswith('http://' ) or audio.startswith('https://' ):
# We need to actually check for a real protocol, otherwise it's impossible to use a local file
# like http_huggingface_co.png
snake_case__ : List[Any] = requests.get(_snake_case ).content
else:
with open(_snake_case, 'rb' ) as f:
snake_case__ : Union[str, Any] = f.read()
if isinstance(_snake_case, _snake_case ):
snake_case__ : List[Any] = ffmpeg_read(_snake_case, self.feature_extractor.sampling_rate )
if not isinstance(_snake_case, np.ndarray ):
raise ValueError('We expect a numpy ndarray as input' )
if len(audio.shape ) != 1:
raise ValueError('We expect a single channel audio input for ZeroShotAudioClassificationPipeline' )
snake_case__ : Tuple = self.feature_extractor(
[audio], sampling_rate=self.feature_extractor.sampling_rate, return_tensors='pt' )
snake_case__ : int = candidate_labels
snake_case__ : int = [hypothesis_template.format(_snake_case ) for x in candidate_labels]
snake_case__ : Optional[int] = self.tokenizer(_snake_case, return_tensors=self.framework, padding=_snake_case )
snake_case__ : List[Any] = [text_inputs]
return inputs
def lowercase_ ( self : Optional[int], _snake_case : Optional[Any] ) ->int:
snake_case__ : Optional[int] = model_inputs.pop('candidate_labels' )
snake_case__ : str = model_inputs.pop('text_inputs' )
if isinstance(text_inputs[0], _snake_case ):
snake_case__ : Optional[Any] = text_inputs[0]
else:
# Batching case.
snake_case__ : int = text_inputs[0][0]
snake_case__ : Any = self.model(**_snake_case, **_snake_case )
snake_case__ : List[Any] = {
'candidate_labels': candidate_labels,
'logits': outputs.logits_per_audio,
}
return model_outputs
def lowercase_ ( self : Union[str, Any], _snake_case : str ) ->List[str]:
snake_case__ : int = model_outputs.pop('candidate_labels' )
snake_case__ : List[Any] = model_outputs['logits'][0]
if self.framework == "pt":
snake_case__ : Tuple = logits.softmax(dim=0 )
snake_case__ : Union[str, Any] = probs.tolist()
else:
raise ValueError('`tf` framework not supported.' )
snake_case__ : Union[str, Any] = [
{'score': score, 'label': candidate_label}
for score, candidate_label in sorted(zip(_snake_case, _snake_case ), key=lambda _snake_case : -x[0] )
]
return result
| 277 | 1 |
import gc
import random
import unittest
import numpy as np
import torch
from PIL import Image
from transformers import CLIPTextConfig, CLIPTextModel, CLIPTokenizer
from diffusers import (
AutoencoderKL,
DDIMScheduler,
EulerAncestralDiscreteScheduler,
LMSDiscreteScheduler,
PNDMScheduler,
StableDiffusionInstructPixaPixPipeline,
UNetaDConditionModel,
)
from diffusers.image_processor import VaeImageProcessor
from diffusers.utils import floats_tensor, load_image, slow, torch_device
from diffusers.utils.testing_utils import enable_full_determinism, require_torch_gpu
from ..pipeline_params import (
IMAGE_TO_IMAGE_IMAGE_PARAMS,
TEXT_GUIDED_IMAGE_INPAINTING_BATCH_PARAMS,
TEXT_GUIDED_IMAGE_VARIATION_PARAMS,
)
from ..test_pipelines_common import PipelineKarrasSchedulerTesterMixin, PipelineLatentTesterMixin, PipelineTesterMixin
enable_full_determinism()
class snake_case__ ( lowerCAmelCase_ , lowerCAmelCase_ , lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = StableDiffusionInstructPixaPixPipeline
_SCREAMING_SNAKE_CASE = TEXT_GUIDED_IMAGE_VARIATION_PARAMS - {"""height""", """width""", """cross_attention_kwargs"""}
_SCREAMING_SNAKE_CASE = TEXT_GUIDED_IMAGE_INPAINTING_BATCH_PARAMS
_SCREAMING_SNAKE_CASE = IMAGE_TO_IMAGE_IMAGE_PARAMS
_SCREAMING_SNAKE_CASE = IMAGE_TO_IMAGE_IMAGE_PARAMS
def lowercase_ ( self : List[Any] ) ->Dict:
torch.manual_seed(0 )
snake_case__ : str = UNetaDConditionModel(
block_out_channels=(3_2, 6_4), layers_per_block=2, sample_size=3_2, in_channels=8, out_channels=4, down_block_types=('DownBlock2D', 'CrossAttnDownBlock2D'), up_block_types=('CrossAttnUpBlock2D', 'UpBlock2D'), cross_attention_dim=3_2, )
snake_case__ : List[Any] = PNDMScheduler(skip_prk_steps=_snake_case )
torch.manual_seed(0 )
snake_case__ : List[Any] = AutoencoderKL(
block_out_channels=[3_2, 6_4], in_channels=3, out_channels=3, down_block_types=['DownEncoderBlock2D', 'DownEncoderBlock2D'], up_block_types=['UpDecoderBlock2D', 'UpDecoderBlock2D'], latent_channels=4, )
torch.manual_seed(0 )
snake_case__ : List[str] = CLIPTextConfig(
bos_token_id=0, eos_token_id=2, hidden_size=3_2, intermediate_size=3_7, layer_norm_eps=1e-05, num_attention_heads=4, num_hidden_layers=5, pad_token_id=1, vocab_size=1_0_0_0, )
snake_case__ : Union[str, Any] = CLIPTextModel(_snake_case )
snake_case__ : List[Any] = CLIPTokenizer.from_pretrained('hf-internal-testing/tiny-random-clip' )
snake_case__ : Dict = {
'unet': unet,
'scheduler': scheduler,
'vae': vae,
'text_encoder': text_encoder,
'tokenizer': tokenizer,
'safety_checker': None,
'feature_extractor': None,
}
return components
def lowercase_ ( self : Tuple, _snake_case : Union[str, Any], _snake_case : Union[str, Any]=0 ) ->Tuple:
snake_case__ : Dict = floats_tensor((1, 3, 3_2, 3_2), rng=random.Random(_snake_case ) ).to(_snake_case )
snake_case__ : Union[str, Any] = image.cpu().permute(0, 2, 3, 1 )[0]
snake_case__ : str = Image.fromarray(np.uinta(_snake_case ) ).convert('RGB' )
if str(_snake_case ).startswith('mps' ):
snake_case__ : Optional[int] = torch.manual_seed(_snake_case )
else:
snake_case__ : Any = torch.Generator(device=_snake_case ).manual_seed(_snake_case )
snake_case__ : Union[str, Any] = {
'prompt': 'A painting of a squirrel eating a burger',
'image': image,
'generator': generator,
'num_inference_steps': 2,
'guidance_scale': 6.0,
'image_guidance_scale': 1,
'output_type': 'numpy',
}
return inputs
def lowercase_ ( self : Optional[Any] ) ->int:
snake_case__ : Optional[int] = 'cpu' # ensure determinism for the device-dependent torch.Generator
snake_case__ : Any = self.get_dummy_components()
snake_case__ : Any = StableDiffusionInstructPixaPixPipeline(**_snake_case )
snake_case__ : Tuple = sd_pipe.to(_snake_case )
sd_pipe.set_progress_bar_config(disable=_snake_case )
snake_case__ : Union[str, Any] = self.get_dummy_inputs(_snake_case )
snake_case__ : Tuple = sd_pipe(**_snake_case ).images
snake_case__ : List[Any] = image[0, -3:, -3:, -1]
assert image.shape == (1, 3_2, 3_2, 3)
snake_case__ : List[str] = np.array([0.7_5_2_6, 0.3_7_5_0, 0.4_5_4_7, 0.6_1_1_7, 0.5_8_6_6, 0.5_0_1_6, 0.4_3_2_7, 0.5_6_4_2, 0.4_8_1_5] )
assert np.abs(image_slice.flatten() - expected_slice ).max() < 1e-3
def lowercase_ ( self : List[Any] ) ->List[str]:
snake_case__ : List[Any] = 'cpu' # ensure determinism for the device-dependent torch.Generator
snake_case__ : List[str] = self.get_dummy_components()
snake_case__ : List[str] = StableDiffusionInstructPixaPixPipeline(**_snake_case )
snake_case__ : List[str] = sd_pipe.to(_snake_case )
sd_pipe.set_progress_bar_config(disable=_snake_case )
snake_case__ : Any = self.get_dummy_inputs(_snake_case )
snake_case__ : Any = 'french fries'
snake_case__ : List[str] = sd_pipe(**_snake_case, negative_prompt=_snake_case )
snake_case__ : int = output.images
snake_case__ : Tuple = image[0, -3:, -3:, -1]
assert image.shape == (1, 3_2, 3_2, 3)
snake_case__ : Optional[int] = np.array([0.7_5_1_1, 0.3_6_4_2, 0.4_5_5_3, 0.6_2_3_6, 0.5_7_9_7, 0.5_0_1_3, 0.4_3_4_3, 0.5_6_1_1, 0.4_8_3_1] )
assert np.abs(image_slice.flatten() - expected_slice ).max() < 1e-3
def lowercase_ ( self : Tuple ) ->List[str]:
snake_case__ : List[str] = 'cpu' # ensure determinism for the device-dependent torch.Generator
snake_case__ : Optional[Any] = self.get_dummy_components()
snake_case__ : List[str] = StableDiffusionInstructPixaPixPipeline(**_snake_case )
snake_case__ : str = sd_pipe.to(_snake_case )
sd_pipe.set_progress_bar_config(disable=_snake_case )
snake_case__ : Any = self.get_dummy_inputs(_snake_case )
snake_case__ : Optional[Any] = [inputs['prompt']] * 2
snake_case__ : Optional[Any] = np.array(inputs['image'] ).astype(np.floataa ) / 2_5_5.0
snake_case__ : Optional[Any] = torch.from_numpy(_snake_case ).unsqueeze(0 ).to(_snake_case )
snake_case__ : str = image / 2 + 0.5
snake_case__ : str = image.permute(0, 3, 1, 2 )
snake_case__ : List[str] = image.repeat(2, 1, 1, 1 )
snake_case__ : Dict = sd_pipe(**_snake_case ).images
snake_case__ : Optional[Any] = image[-1, -3:, -3:, -1]
assert image.shape == (2, 3_2, 3_2, 3)
snake_case__ : Tuple = np.array([0.5_8_1_2, 0.5_7_4_8, 0.5_2_2_2, 0.5_9_0_8, 0.5_6_9_5, 0.7_1_7_4, 0.6_8_0_4, 0.5_5_2_3, 0.5_5_7_9] )
assert np.abs(image_slice.flatten() - expected_slice ).max() < 1e-3
def lowercase_ ( self : Union[str, Any] ) ->List[Any]:
snake_case__ : Optional[int] = 'cpu' # ensure determinism for the device-dependent torch.Generator
snake_case__ : str = self.get_dummy_components()
snake_case__ : Dict = EulerAncestralDiscreteScheduler(
beta_start=0.0_0_0_8_5, beta_end=0.0_1_2, beta_schedule='scaled_linear' )
snake_case__ : List[str] = StableDiffusionInstructPixaPixPipeline(**_snake_case )
snake_case__ : Optional[int] = sd_pipe.to(_snake_case )
sd_pipe.set_progress_bar_config(disable=_snake_case )
snake_case__ : List[Any] = self.get_dummy_inputs(_snake_case )
snake_case__ : Tuple = sd_pipe(**_snake_case ).images
snake_case__ : Optional[Any] = image[0, -3:, -3:, -1]
snake_case__ : Optional[Any] = [round(_snake_case, 4 ) for x in image_slice.flatten().tolist()]
print(','.join([str(_snake_case ) for x in slice] ) )
assert image.shape == (1, 3_2, 3_2, 3)
snake_case__ : Optional[Any] = np.array([0.7_4_1_7, 0.3_8_4_2, 0.4_7_3_2, 0.5_7_7_6, 0.5_8_9_1, 0.5_1_3_9, 0.4_0_5_2, 0.5_6_7_3, 0.4_9_8_6] )
assert np.abs(image_slice.flatten() - expected_slice ).max() < 1e-3
def lowercase_ ( self : Optional[Any] ) ->Optional[Any]:
super().test_inference_batch_single_identical(expected_max_diff=3e-3 )
def lowercase_ ( self : Any ) ->str:
snake_case__ : str = self.get_dummy_components()
snake_case__ : Dict = StableDiffusionInstructPixaPixPipeline(**_snake_case )
snake_case__ : Optional[int] = VaeImageProcessor(do_resize=_snake_case, do_normalize=_snake_case )
snake_case__ : Union[str, Any] = pipe.to(_snake_case )
pipe.set_progress_bar_config(disable=_snake_case )
snake_case__ : Optional[Any] = pipe(**self.get_dummy_inputs_by_type(_snake_case, input_image_type='pt' ) )[0]
snake_case__ : Any = components['vae']
snake_case__ : Optional[int] = self.get_dummy_inputs_by_type(_snake_case, input_image_type='pt' )
for image_param in self.image_latents_params:
if image_param in inputs.keys():
snake_case__ : List[Any] = vae.encode(inputs[image_param] ).latent_dist.mode()
snake_case__ : int = pipe(**_snake_case )[0]
snake_case__ : Optional[Any] = np.abs(out - out_latents_inputs ).max()
self.assertLess(_snake_case, 1e-4, 'passing latents as image input generate different result from passing image' )
@slow
@require_torch_gpu
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
def lowercase_ ( self : str ) ->List[str]:
super().tearDown()
gc.collect()
torch.cuda.empty_cache()
def lowercase_ ( self : Tuple, _snake_case : Tuple=0 ) ->List[Any]:
snake_case__ : Any = torch.manual_seed(_snake_case )
snake_case__ : List[str] = load_image(
'https://huggingface.co/datasets/diffusers/test-arrays/resolve/main/stable_diffusion_pix2pix/example.jpg' )
snake_case__ : Tuple = {
'prompt': 'turn him into a cyborg',
'image': image,
'generator': generator,
'num_inference_steps': 3,
'guidance_scale': 7.5,
'image_guidance_scale': 1.0,
'output_type': 'numpy',
}
return inputs
def lowercase_ ( self : Optional[Any] ) ->List[Any]:
snake_case__ : Tuple = StableDiffusionInstructPixaPixPipeline.from_pretrained(
'timbrooks/instruct-pix2pix', safety_checker=_snake_case )
pipe.to(_snake_case )
pipe.set_progress_bar_config(disable=_snake_case )
pipe.enable_attention_slicing()
snake_case__ : List[Any] = self.get_inputs()
snake_case__ : Tuple = pipe(**_snake_case ).images
snake_case__ : List[str] = image[0, -3:, -3:, -1].flatten()
assert image.shape == (1, 5_1_2, 5_1_2, 3)
snake_case__ : Any = np.array([0.5_9_0_2, 0.6_0_1_5, 0.6_0_2_7, 0.5_9_8_3, 0.6_0_9_2, 0.6_0_6_1, 0.5_7_6_5, 0.5_7_8_5, 0.5_5_5_5] )
assert np.abs(expected_slice - image_slice ).max() < 1e-3
def lowercase_ ( self : Tuple ) ->Tuple:
snake_case__ : Union[str, Any] = StableDiffusionInstructPixaPixPipeline.from_pretrained(
'timbrooks/instruct-pix2pix', safety_checker=_snake_case )
snake_case__ : Dict = LMSDiscreteScheduler.from_config(pipe.scheduler.config )
pipe.to(_snake_case )
pipe.set_progress_bar_config(disable=_snake_case )
pipe.enable_attention_slicing()
snake_case__ : Dict = self.get_inputs()
snake_case__ : Dict = pipe(**_snake_case ).images
snake_case__ : List[str] = image[0, -3:, -3:, -1].flatten()
assert image.shape == (1, 5_1_2, 5_1_2, 3)
snake_case__ : Any = np.array([0.6_5_7_8, 0.6_8_1_7, 0.6_9_7_2, 0.6_7_6_1, 0.6_8_5_6, 0.6_9_1_6, 0.6_4_2_8, 0.6_5_1_6, 0.6_3_0_1] )
assert np.abs(expected_slice - image_slice ).max() < 1e-3
def lowercase_ ( self : str ) ->Optional[int]:
snake_case__ : Any = StableDiffusionInstructPixaPixPipeline.from_pretrained(
'timbrooks/instruct-pix2pix', safety_checker=_snake_case )
snake_case__ : Union[str, Any] = DDIMScheduler.from_config(pipe.scheduler.config )
pipe.to(_snake_case )
pipe.set_progress_bar_config(disable=_snake_case )
pipe.enable_attention_slicing()
snake_case__ : str = self.get_inputs()
snake_case__ : int = pipe(**_snake_case ).images
snake_case__ : str = image[0, -3:, -3:, -1].flatten()
assert image.shape == (1, 5_1_2, 5_1_2, 3)
snake_case__ : int = np.array([0.3_8_2_8, 0.3_8_3_4, 0.3_8_1_8, 0.3_7_9_2, 0.3_8_6_5, 0.3_7_5_2, 0.3_7_9_2, 0.3_8_4_7, 0.3_7_5_3] )
assert np.abs(expected_slice - image_slice ).max() < 1e-3
def lowercase_ ( self : Any ) ->Optional[Any]:
snake_case__ : Union[str, Any] = 0
def callback_fn(_snake_case : int, _snake_case : int, _snake_case : torch.FloatTensor ) -> None:
snake_case__ : Tuple = True
nonlocal number_of_steps
number_of_steps += 1
if step == 1:
snake_case__ : int = latents.detach().cpu().numpy()
assert latents.shape == (1, 4, 6_4, 6_4)
snake_case__ : Union[str, Any] = latents[0, -3:, -3:, -1]
snake_case__ : int = np.array([-0.2_4_6_3, -0.4_6_4_4, -0.9_7_5_6, 1.5_1_7_6, 1.4_4_1_4, 0.7_8_6_6, 0.9_8_9_7, 0.8_5_2_1, 0.7_9_8_3] )
assert np.abs(latents_slice.flatten() - expected_slice ).max() < 5e-2
elif step == 2:
snake_case__ : int = latents.detach().cpu().numpy()
assert latents.shape == (1, 4, 6_4, 6_4)
snake_case__ : List[Any] = latents[0, -3:, -3:, -1]
snake_case__ : List[str] = np.array([-0.2_6_4_4, -0.4_6_2_6, -0.9_6_5_3, 1.5_1_7_6, 1.4_5_5_1, 0.7_6_8_6, 0.9_8_0_5, 0.8_4_5_2, 0.8_1_1_5] )
assert np.abs(latents_slice.flatten() - expected_slice ).max() < 5e-2
snake_case__ : Optional[int] = False
snake_case__ : Tuple = StableDiffusionInstructPixaPixPipeline.from_pretrained(
'timbrooks/instruct-pix2pix', safety_checker=_snake_case, torch_dtype=torch.floataa )
snake_case__ : Dict = pipe.to(_snake_case )
pipe.set_progress_bar_config(disable=_snake_case )
pipe.enable_attention_slicing()
snake_case__ : Tuple = self.get_inputs()
pipe(**_snake_case, callback=_snake_case, callback_steps=1 )
assert callback_fn.has_been_called
assert number_of_steps == 3
def lowercase_ ( self : Optional[int] ) ->int:
torch.cuda.empty_cache()
torch.cuda.reset_max_memory_allocated()
torch.cuda.reset_peak_memory_stats()
snake_case__ : Optional[Any] = StableDiffusionInstructPixaPixPipeline.from_pretrained(
'timbrooks/instruct-pix2pix', safety_checker=_snake_case, torch_dtype=torch.floataa )
snake_case__ : List[Any] = pipe.to(_snake_case )
pipe.set_progress_bar_config(disable=_snake_case )
pipe.enable_attention_slicing(1 )
pipe.enable_sequential_cpu_offload()
snake_case__ : str = self.get_inputs()
snake_case__ : Union[str, Any] = pipe(**_snake_case )
snake_case__ : str = torch.cuda.max_memory_allocated()
# make sure that less than 2.2 GB is allocated
assert mem_bytes < 2.2 * 1_0**9
def lowercase_ ( self : Optional[Any] ) ->Optional[Any]:
snake_case__ : Optional[Any] = self.get_inputs()
# resize to resolution that is divisible by 8 but not 16 or 32
snake_case__ : Dict = inputs['image'].resize((5_0_4, 5_0_4) )
snake_case__ : List[Any] = 'timbrooks/instruct-pix2pix'
snake_case__ : Optional[Any] = StableDiffusionInstructPixaPixPipeline.from_pretrained(
_snake_case, safety_checker=_snake_case, )
pipe.to(_snake_case )
pipe.set_progress_bar_config(disable=_snake_case )
pipe.enable_attention_slicing()
snake_case__ : List[Any] = pipe(**_snake_case )
snake_case__ : List[str] = output.images[0]
snake_case__ : Union[str, Any] = image[2_5_5:2_5_8, 3_8_3:3_8_6, -1]
assert image.shape == (5_0_4, 5_0_4, 3)
snake_case__ : List[str] = np.array([0.2_7_2_6, 0.2_5_2_9, 0.2_6_6_4, 0.2_6_5_5, 0.2_6_4_1, 0.2_6_4_2, 0.2_5_9_1, 0.2_6_4_9, 0.2_5_9_0] )
assert np.abs(image_slice.flatten() - expected_slice ).max() < 5e-3
| 277 |
import collections
import inspect
import unittest
from transformers import SwinvaConfig
from transformers.testing_utils import require_torch, require_vision, slow, torch_device
from transformers.utils import cached_property, is_torch_available, is_vision_available
from ...test_configuration_common import ConfigTester
from ...test_modeling_common import ModelTesterMixin, _config_zero_init, floats_tensor, ids_tensor
from ...test_pipeline_mixin import PipelineTesterMixin
if is_torch_available():
import torch
from torch import nn
from transformers import SwinvaForImageClassification, SwinvaForMaskedImageModeling, SwinvaModel
from transformers.models.swinva.modeling_swinva import SWINV2_PRETRAINED_MODEL_ARCHIVE_LIST
if is_vision_available():
from PIL import Image
from transformers import AutoImageProcessor
class snake_case__ :
"""simple docstring"""
def __init__( self : Tuple, _snake_case : Any, _snake_case : int=1_3, _snake_case : Optional[int]=3_2, _snake_case : Tuple=2, _snake_case : Any=3, _snake_case : Tuple=1_6, _snake_case : Tuple=[1, 2, 1], _snake_case : Dict=[2, 2, 4], _snake_case : str=2, _snake_case : Union[str, Any]=2.0, _snake_case : Dict=True, _snake_case : Dict=0.0, _snake_case : str=0.0, _snake_case : str=0.1, _snake_case : List[str]="gelu", _snake_case : int=False, _snake_case : Optional[Any]=True, _snake_case : List[Any]=0.0_2, _snake_case : Union[str, Any]=1e-5, _snake_case : Union[str, Any]=True, _snake_case : List[Any]=None, _snake_case : Any=True, _snake_case : List[Any]=1_0, _snake_case : str=8, ) ->Union[str, Any]:
snake_case__ : Any = parent
snake_case__ : Tuple = batch_size
snake_case__ : Tuple = image_size
snake_case__ : Any = patch_size
snake_case__ : Optional[int] = num_channels
snake_case__ : Tuple = embed_dim
snake_case__ : Any = depths
snake_case__ : Any = num_heads
snake_case__ : List[str] = window_size
snake_case__ : Dict = mlp_ratio
snake_case__ : Optional[int] = qkv_bias
snake_case__ : Optional[Any] = hidden_dropout_prob
snake_case__ : List[str] = attention_probs_dropout_prob
snake_case__ : Union[str, Any] = drop_path_rate
snake_case__ : str = hidden_act
snake_case__ : Union[str, Any] = use_absolute_embeddings
snake_case__ : Union[str, Any] = patch_norm
snake_case__ : Any = layer_norm_eps
snake_case__ : Tuple = initializer_range
snake_case__ : Dict = is_training
snake_case__ : Any = scope
snake_case__ : Optional[Any] = use_labels
snake_case__ : str = type_sequence_label_size
snake_case__ : List[Any] = encoder_stride
def lowercase_ ( self : Tuple ) ->str:
snake_case__ : Tuple = floats_tensor([self.batch_size, self.num_channels, self.image_size, self.image_size] )
snake_case__ : List[Any] = None
if self.use_labels:
snake_case__ : Optional[Any] = ids_tensor([self.batch_size], self.type_sequence_label_size )
snake_case__ : Any = self.get_config()
return config, pixel_values, labels
def lowercase_ ( self : Optional[int] ) ->Optional[int]:
return SwinvaConfig(
image_size=self.image_size, patch_size=self.patch_size, num_channels=self.num_channels, embed_dim=self.embed_dim, depths=self.depths, num_heads=self.num_heads, window_size=self.window_size, mlp_ratio=self.mlp_ratio, qkv_bias=self.qkv_bias, hidden_dropout_prob=self.hidden_dropout_prob, attention_probs_dropout_prob=self.attention_probs_dropout_prob, drop_path_rate=self.drop_path_rate, hidden_act=self.hidden_act, use_absolute_embeddings=self.use_absolute_embeddings, path_norm=self.patch_norm, layer_norm_eps=self.layer_norm_eps, initializer_range=self.initializer_range, encoder_stride=self.encoder_stride, )
def lowercase_ ( self : Optional[int], _snake_case : str, _snake_case : List[str], _snake_case : int ) ->Dict:
snake_case__ : List[Any] = SwinvaModel(config=_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Optional[int] = model(_snake_case )
snake_case__ : List[Any] = ((config.image_size // config.patch_size) ** 2) // (4 ** (len(config.depths ) - 1))
snake_case__ : List[Any] = int(config.embed_dim * 2 ** (len(config.depths ) - 1) )
self.parent.assertEqual(result.last_hidden_state.shape, (self.batch_size, expected_seq_len, expected_dim) )
def lowercase_ ( self : Optional[Any], _snake_case : Any, _snake_case : List[str], _snake_case : Dict ) ->List[Any]:
snake_case__ : List[str] = SwinvaForMaskedImageModeling(config=_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Union[str, Any] = model(_snake_case )
self.parent.assertEqual(
result.logits.shape, (self.batch_size, self.num_channels, self.image_size, self.image_size) )
# test greyscale images
snake_case__ : Optional[Any] = 1
snake_case__ : Optional[int] = SwinvaForMaskedImageModeling(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Tuple = floats_tensor([self.batch_size, 1, self.image_size, self.image_size] )
snake_case__ : Any = model(_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, 1, self.image_size, self.image_size) )
def lowercase_ ( self : List[str], _snake_case : int, _snake_case : List[Any], _snake_case : Optional[int] ) ->Any:
snake_case__ : Tuple = self.type_sequence_label_size
snake_case__ : int = SwinvaForImageClassification(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Tuple = model(_snake_case, labels=_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.type_sequence_label_size) )
def lowercase_ ( self : Any ) ->Dict:
snake_case__ : str = self.prepare_config_and_inputs()
snake_case__ , snake_case__ , snake_case__ : List[str] = config_and_inputs
snake_case__ : Union[str, Any] = {'pixel_values': pixel_values}
return config, inputs_dict
@require_torch
class snake_case__ ( lowerCAmelCase_ , lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = (
(SwinvaModel, SwinvaForImageClassification, SwinvaForMaskedImageModeling) if is_torch_available() else ()
)
_SCREAMING_SNAKE_CASE = (
{"""feature-extraction""": SwinvaModel, """image-classification""": SwinvaForImageClassification}
if is_torch_available()
else {}
)
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
def lowercase_ ( self : Union[str, Any] ) ->Dict:
snake_case__ : Optional[int] = SwinvaModelTester(self )
snake_case__ : int = ConfigTester(self, config_class=_snake_case, embed_dim=3_7 )
def lowercase_ ( self : Tuple ) ->int:
self.config_tester.create_and_test_config_to_json_string()
self.config_tester.create_and_test_config_to_json_file()
self.config_tester.create_and_test_config_from_and_save_pretrained()
self.config_tester.create_and_test_config_with_num_labels()
self.config_tester.check_config_can_be_init_without_params()
self.config_tester.check_config_arguments_init()
def lowercase_ ( self : Any ) ->str:
snake_case__ : int = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_model(*_snake_case )
@unittest.skip(reason='Got `CUDA error: misaligned address` with PyTorch 2.0.0.' )
def lowercase_ ( self : Any ) ->Union[str, Any]:
pass
@unittest.skip(reason='Swinv2 does not use inputs_embeds' )
def lowercase_ ( self : str ) ->Union[str, Any]:
pass
def lowercase_ ( self : Optional[Any] ) ->Union[str, Any]:
snake_case__ , snake_case__ : Optional[int] = self.model_tester.prepare_config_and_inputs_for_common()
for model_class in self.all_model_classes:
snake_case__ : Union[str, Any] = model_class(_snake_case )
self.assertIsInstance(model.get_input_embeddings(), (nn.Module) )
snake_case__ : Union[str, Any] = model.get_output_embeddings()
self.assertTrue(x is None or isinstance(_snake_case, nn.Linear ) )
def lowercase_ ( self : List[str] ) ->Optional[int]:
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
for model_class in self.all_model_classes:
snake_case__ : Any = model_class(_snake_case )
snake_case__ : Dict = inspect.signature(model.forward )
# signature.parameters is an OrderedDict => so arg_names order is deterministic
snake_case__ : Optional[Any] = [*signature.parameters.keys()]
snake_case__ : List[Any] = ['pixel_values']
self.assertListEqual(arg_names[:1], _snake_case )
def lowercase_ ( self : str ) ->Union[str, Any]:
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : int = True
for model_class in self.all_model_classes:
snake_case__ : str = True
snake_case__ : Union[str, Any] = False
snake_case__ : Tuple = True
snake_case__ : int = model_class(_snake_case )
model.to(_snake_case )
model.eval()
with torch.no_grad():
snake_case__ : Optional[int] = model(**self._prepare_for_class(_snake_case, _snake_case ) )
snake_case__ : List[str] = outputs.attentions
snake_case__ : List[Any] = len(self.model_tester.depths )
self.assertEqual(len(_snake_case ), _snake_case )
# check that output_attentions also work using config
del inputs_dict["output_attentions"]
snake_case__ : str = True
snake_case__ : Tuple = config.window_size**2
snake_case__ : Optional[int] = model_class(_snake_case )
model.to(_snake_case )
model.eval()
with torch.no_grad():
snake_case__ : str = model(**self._prepare_for_class(_snake_case, _snake_case ) )
snake_case__ : Tuple = outputs.attentions
self.assertEqual(len(_snake_case ), _snake_case )
self.assertListEqual(
list(attentions[0].shape[-3:] ), [self.model_tester.num_heads[0], window_size_squared, window_size_squared], )
snake_case__ : Optional[Any] = len(_snake_case )
# Check attention is always last and order is fine
snake_case__ : Optional[int] = True
snake_case__ : Dict = True
snake_case__ : List[Any] = model_class(_snake_case )
model.to(_snake_case )
model.eval()
with torch.no_grad():
snake_case__ : Optional[int] = model(**self._prepare_for_class(_snake_case, _snake_case ) )
if hasattr(self.model_tester, 'num_hidden_states_types' ):
snake_case__ : str = self.model_tester.num_hidden_states_types
else:
# also another +1 for reshaped_hidden_states
snake_case__ : Dict = 2
self.assertEqual(out_len + added_hidden_states, len(_snake_case ) )
snake_case__ : Any = outputs.attentions
self.assertEqual(len(_snake_case ), _snake_case )
self.assertListEqual(
list(self_attentions[0].shape[-3:] ), [self.model_tester.num_heads[0], window_size_squared, window_size_squared], )
def lowercase_ ( self : Dict, _snake_case : Tuple, _snake_case : Any, _snake_case : int, _snake_case : Optional[int] ) ->str:
snake_case__ : Dict = model_class(_snake_case )
model.to(_snake_case )
model.eval()
with torch.no_grad():
snake_case__ : List[Any] = model(**self._prepare_for_class(_snake_case, _snake_case ) )
snake_case__ : Dict = outputs.hidden_states
snake_case__ : int = getattr(
self.model_tester, 'expected_num_hidden_layers', len(self.model_tester.depths ) + 1 )
self.assertEqual(len(_snake_case ), _snake_case )
# Swinv2 has a different seq_length
snake_case__ : int = (
config.patch_size
if isinstance(config.patch_size, collections.abc.Iterable )
else (config.patch_size, config.patch_size)
)
snake_case__ : Optional[Any] = (image_size[1] // patch_size[1]) * (image_size[0] // patch_size[0])
self.assertListEqual(
list(hidden_states[0].shape[-2:] ), [num_patches, self.model_tester.embed_dim], )
snake_case__ : Union[str, Any] = outputs.reshaped_hidden_states
self.assertEqual(len(_snake_case ), _snake_case )
snake_case__ , snake_case__ , snake_case__ , snake_case__ : str = reshaped_hidden_states[0].shape
snake_case__ : Any = (
reshaped_hidden_states[0].view(_snake_case, _snake_case, height * width ).permute(0, 2, 1 )
)
self.assertListEqual(
list(reshaped_hidden_states.shape[-2:] ), [num_patches, self.model_tester.embed_dim], )
def lowercase_ ( self : str ) ->List[Any]:
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : List[Any] = (
self.model_tester.image_size
if isinstance(self.model_tester.image_size, collections.abc.Iterable )
else (self.model_tester.image_size, self.model_tester.image_size)
)
for model_class in self.all_model_classes:
snake_case__ : Optional[int] = True
self.check_hidden_states_output(_snake_case, _snake_case, _snake_case, _snake_case )
# check that output_hidden_states also work using config
del inputs_dict["output_hidden_states"]
snake_case__ : Dict = True
self.check_hidden_states_output(_snake_case, _snake_case, _snake_case, _snake_case )
def lowercase_ ( self : List[str] ) ->str:
snake_case__ , snake_case__ : Optional[Any] = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : List[str] = 3
snake_case__ : Union[str, Any] = (
self.model_tester.image_size
if isinstance(self.model_tester.image_size, collections.abc.Iterable )
else (self.model_tester.image_size, self.model_tester.image_size)
)
snake_case__ : str = (
config.patch_size
if isinstance(config.patch_size, collections.abc.Iterable )
else (config.patch_size, config.patch_size)
)
snake_case__ : Tuple = image_size[0] + patch_size[0] - (image_size[0] % patch_size[0])
snake_case__ : Optional[Any] = image_size[1] + patch_size[1] - (image_size[1] % patch_size[1])
for model_class in self.all_model_classes:
snake_case__ : int = True
self.check_hidden_states_output(_snake_case, _snake_case, _snake_case, (padded_height, padded_width) )
# check that output_hidden_states also work using config
del inputs_dict["output_hidden_states"]
snake_case__ : List[str] = True
self.check_hidden_states_output(_snake_case, _snake_case, _snake_case, (padded_height, padded_width) )
def lowercase_ ( self : List[str] ) ->Optional[int]:
snake_case__ : Any = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_masked_image_modeling(*_snake_case )
def lowercase_ ( self : List[Any] ) ->str:
snake_case__ : Any = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_image_classification(*_snake_case )
@slow
def lowercase_ ( self : str ) ->Union[str, Any]:
for model_name in SWINV2_PRETRAINED_MODEL_ARCHIVE_LIST[:1]:
snake_case__ : Dict = SwinvaModel.from_pretrained(_snake_case )
self.assertIsNotNone(_snake_case )
def lowercase_ ( self : Optional[int] ) ->List[str]:
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : List[Any] = _config_zero_init(_snake_case )
for model_class in self.all_model_classes:
snake_case__ : List[str] = model_class(config=_snake_case )
for name, param in model.named_parameters():
if "embeddings" not in name and "logit_scale" not in name and param.requires_grad:
self.assertIn(
((param.data.mean() * 1e9).round() / 1e9).item(), [0.0, 1.0], msg=F'''Parameter {name} of model {model_class} seems not properly initialized''', )
@require_vision
@require_torch
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
@cached_property
def lowercase_ ( self : Union[str, Any] ) ->List[str]:
return (
AutoImageProcessor.from_pretrained('microsoft/swinv2-tiny-patch4-window8-256' )
if is_vision_available()
else None
)
@slow
def lowercase_ ( self : int ) ->List[Any]:
snake_case__ : Any = SwinvaForImageClassification.from_pretrained('microsoft/swinv2-tiny-patch4-window8-256' ).to(
_snake_case )
snake_case__ : int = self.default_image_processor
snake_case__ : Union[str, Any] = Image.open('./tests/fixtures/tests_samples/COCO/000000039769.png' )
snake_case__ : Optional[Any] = image_processor(images=_snake_case, return_tensors='pt' ).to(_snake_case )
# forward pass
with torch.no_grad():
snake_case__ : List[str] = model(**_snake_case )
# verify the logits
snake_case__ : int = torch.Size((1, 1_0_0_0) )
self.assertEqual(outputs.logits.shape, _snake_case )
snake_case__ : Optional[int] = torch.tensor([-0.3_9_4_7, -0.4_3_0_6, 0.0_0_2_6] ).to(_snake_case )
self.assertTrue(torch.allclose(outputs.logits[0, :3], _snake_case, atol=1e-4 ) )
| 277 | 1 |
import functools
from typing import Any
def lowercase_ (A : str , A : list[str] ):
# Validation
if not isinstance(A , A ) or len(A ) == 0:
raise ValueError('the string should be not empty string' )
if not isinstance(A , A ) or not all(
isinstance(A , A ) and len(A ) > 0 for item in words ):
raise ValueError('the words should be a list of non-empty strings' )
# Build trie
snake_case__ : dict[str, Any] = {}
snake_case__ : Optional[Any] = 'WORD_KEEPER'
for word in words:
snake_case__ : Dict = trie
for c in word:
if c not in trie_node:
snake_case__ : List[Any] = {}
snake_case__ : List[str] = trie_node[c]
snake_case__ : Dict = True
snake_case__ : List[Any] = len(A )
# Dynamic programming method
@functools.cache
def is_breakable(A : int ) -> bool:
if index == len_string:
return True
snake_case__ : Tuple = trie
for i in range(A , A ):
snake_case__ : Optional[Any] = trie_node.get(string[i] , A )
if trie_node is None:
return False
if trie_node.get(A , A ) and is_breakable(i + 1 ):
return True
return False
return is_breakable(0 )
if __name__ == "__main__":
import doctest
doctest.testmod()
| 277 |
import unittest
import numpy as np
from transformers.testing_utils import require_torch, require_vision
from transformers.utils import is_torch_available, is_vision_available
from ...test_image_processing_common import ImageProcessingSavingTestMixin, prepare_image_inputs
if is_torch_available():
import torch
if is_vision_available():
from PIL import Image
from transformers import PoolFormerImageProcessor
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
def __init__( self : Optional[int], _snake_case : List[Any], _snake_case : str=7, _snake_case : Tuple=3, _snake_case : List[str]=3_0, _snake_case : Tuple=4_0_0, _snake_case : Any=True, _snake_case : List[Any]=None, _snake_case : int=0.9, _snake_case : Optional[Any]=None, _snake_case : str=True, _snake_case : Union[str, Any]=[0.5, 0.5, 0.5], _snake_case : Union[str, Any]=[0.5, 0.5, 0.5], ) ->List[Any]:
snake_case__ : int = size if size is not None else {'shortest_edge': 3_0}
snake_case__ : Tuple = crop_size if crop_size is not None else {'height': 3_0, 'width': 3_0}
snake_case__ : Union[str, Any] = parent
snake_case__ : Dict = batch_size
snake_case__ : int = num_channels
snake_case__ : Tuple = min_resolution
snake_case__ : Any = max_resolution
snake_case__ : List[Any] = do_resize_and_center_crop
snake_case__ : str = size
snake_case__ : str = crop_pct
snake_case__ : List[str] = crop_size
snake_case__ : Optional[int] = do_normalize
snake_case__ : Tuple = image_mean
snake_case__ : Tuple = image_std
def lowercase_ ( self : Optional[int] ) ->int:
return {
"size": self.size,
"do_resize_and_center_crop": self.do_resize_and_center_crop,
"crop_pct": self.crop_pct,
"crop_size": self.crop_size,
"do_normalize": self.do_normalize,
"image_mean": self.image_mean,
"image_std": self.image_std,
}
@require_torch
@require_vision
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = PoolFormerImageProcessor if is_vision_available() else None
def lowercase_ ( self : Union[str, Any] ) ->Dict:
snake_case__ : Union[str, Any] = PoolFormerImageProcessingTester(self )
@property
def lowercase_ ( self : int ) ->Dict:
return self.image_processor_tester.prepare_image_processor_dict()
def lowercase_ ( self : Union[str, Any] ) ->Optional[int]:
snake_case__ : List[str] = self.image_processing_class(**self.image_processor_dict )
self.assertTrue(hasattr(_snake_case, 'do_resize_and_center_crop' ) )
self.assertTrue(hasattr(_snake_case, 'size' ) )
self.assertTrue(hasattr(_snake_case, 'crop_pct' ) )
self.assertTrue(hasattr(_snake_case, 'do_normalize' ) )
self.assertTrue(hasattr(_snake_case, 'image_mean' ) )
self.assertTrue(hasattr(_snake_case, 'image_std' ) )
def lowercase_ ( self : List[str] ) ->List[str]:
snake_case__ : Union[str, Any] = self.image_processing_class.from_dict(self.image_processor_dict )
self.assertEqual(image_processor.size, {'shortest_edge': 3_0} )
self.assertEqual(image_processor.crop_size, {'height': 3_0, 'width': 3_0} )
snake_case__ : int = self.image_processing_class.from_dict(self.image_processor_dict, size=4_2, crop_size=8_4 )
self.assertEqual(image_processor.size, {'shortest_edge': 4_2} )
self.assertEqual(image_processor.crop_size, {'height': 8_4, 'width': 8_4} )
def lowercase_ ( self : List[Any] ) ->List[Any]:
pass
def lowercase_ ( self : List[str] ) ->str:
# Initialize image_processing
snake_case__ : Union[str, Any] = self.image_processing_class(**self.image_processor_dict )
# create random PIL images
snake_case__ : List[str] = prepare_image_inputs(self.image_processor_tester, equal_resolution=_snake_case )
for image in image_inputs:
self.assertIsInstance(_snake_case, Image.Image )
# Test not batched input
snake_case__ : Optional[int] = image_processing(image_inputs[0], return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
# Test batched
snake_case__ : str = image_processing(_snake_case, return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
def lowercase_ ( self : int ) ->List[Any]:
# Initialize image_processing
snake_case__ : Optional[int] = self.image_processing_class(**self.image_processor_dict )
# create random numpy tensors
snake_case__ : Dict = prepare_image_inputs(self.image_processor_tester, equal_resolution=_snake_case, numpify=_snake_case )
for image in image_inputs:
self.assertIsInstance(_snake_case, np.ndarray )
# Test not batched input
snake_case__ : Dict = image_processing(image_inputs[0], return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
# Test batched
snake_case__ : List[Any] = image_processing(_snake_case, return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
def lowercase_ ( self : List[str] ) ->List[str]:
# Initialize image_processing
snake_case__ : Tuple = self.image_processing_class(**self.image_processor_dict )
# create random PyTorch tensors
snake_case__ : List[str] = prepare_image_inputs(self.image_processor_tester, equal_resolution=_snake_case, torchify=_snake_case )
for image in image_inputs:
self.assertIsInstance(_snake_case, torch.Tensor )
# Test not batched input
snake_case__ : Tuple = image_processing(image_inputs[0], return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
# Test batched
snake_case__ : Optional[Any] = image_processing(_snake_case, return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
| 277 | 1 |
import json
import os
import unittest
from transformers.models.roc_bert.tokenization_roc_bert import (
VOCAB_FILES_NAMES,
RoCBertBasicTokenizer,
RoCBertTokenizer,
RoCBertWordpieceTokenizer,
_is_control,
_is_punctuation,
_is_whitespace,
)
from transformers.testing_utils import require_tokenizers, slow
from ...test_tokenization_common import TokenizerTesterMixin, filter_non_english
@require_tokenizers
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = RoCBertTokenizer
_SCREAMING_SNAKE_CASE = None
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = True
_SCREAMING_SNAKE_CASE = filter_non_english
def lowercase_ ( self : Tuple ) ->int:
super().setUp()
snake_case__ : Any = ['[UNK]', '[CLS]', '[SEP]', '[PAD]', '[MASK]', '你', '好', '是', '谁', 'a', 'b', 'c', 'd']
snake_case__ : Union[str, Any] = {}
snake_case__ : Tuple = {}
for i, value in enumerate(_snake_case ):
snake_case__ : Optional[Any] = i
snake_case__ : int = i
snake_case__ : int = os.path.join(self.tmpdirname, VOCAB_FILES_NAMES['vocab_file'] )
snake_case__ : Optional[int] = os.path.join(self.tmpdirname, VOCAB_FILES_NAMES['word_shape_file'] )
snake_case__ : int = os.path.join(self.tmpdirname, VOCAB_FILES_NAMES['word_pronunciation_file'] )
with open(self.vocab_file, 'w', encoding='utf-8' ) as vocab_writer:
vocab_writer.write(''.join([x + '\n' for x in vocab_tokens] ) )
with open(self.word_shape_file, 'w', encoding='utf-8' ) as word_shape_writer:
json.dump(_snake_case, _snake_case, ensure_ascii=_snake_case )
with open(self.word_pronunciation_file, 'w', encoding='utf-8' ) as word_pronunciation_writer:
json.dump(_snake_case, _snake_case, ensure_ascii=_snake_case )
def lowercase_ ( self : int ) ->Union[str, Any]:
snake_case__ : Union[str, Any] = self.tokenizer_class(self.vocab_file, self.word_shape_file, self.word_pronunciation_file )
snake_case__ : int = tokenizer.tokenize('你好[SEP]你是谁' )
self.assertListEqual(_snake_case, ['你', '好', '[SEP]', '你', '是', '谁'] )
self.assertListEqual(tokenizer.convert_tokens_to_ids(_snake_case ), [5, 6, 2, 5, 7, 8] )
self.assertListEqual(tokenizer.convert_tokens_to_shape_ids(_snake_case ), [5, 6, 2, 5, 7, 8] )
self.assertListEqual(tokenizer.convert_tokens_to_pronunciation_ids(_snake_case ), [5, 6, 2, 5, 7, 8] )
def lowercase_ ( self : int ) ->int:
snake_case__ : Any = RoCBertBasicTokenizer()
self.assertListEqual(tokenizer.tokenize('ah\u535A\u63A8zz' ), ['ah', '\u535A', '\u63A8', 'zz'] )
def lowercase_ ( self : Optional[Any] ) ->Any:
snake_case__ : int = RoCBertBasicTokenizer(do_lower_case=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHeLLo!how \n Are yoU? ' ), ['hello', '!', 'how', 'are', 'you', '?'] )
self.assertListEqual(tokenizer.tokenize('H\u00E9llo' ), ['hello'] )
def lowercase_ ( self : Any ) ->Union[str, Any]:
snake_case__ : Tuple = RoCBertBasicTokenizer(do_lower_case=_snake_case, strip_accents=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHäLLo!how \n Are yoU? ' ), ['hällo', '!', 'how', 'are', 'you', '?'] )
self.assertListEqual(tokenizer.tokenize('H\u00E9llo' ), ['h\u00E9llo'] )
def lowercase_ ( self : Optional[int] ) ->str:
snake_case__ : str = RoCBertBasicTokenizer(do_lower_case=_snake_case, strip_accents=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHäLLo!how \n Are yoU? ' ), ['hallo', '!', 'how', 'are', 'you', '?'] )
self.assertListEqual(tokenizer.tokenize('H\u00E9llo' ), ['hello'] )
def lowercase_ ( self : Union[str, Any] ) ->Tuple:
snake_case__ : Union[str, Any] = RoCBertBasicTokenizer(do_lower_case=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHäLLo!how \n Are yoU? ' ), ['hallo', '!', 'how', 'are', 'you', '?'] )
self.assertListEqual(tokenizer.tokenize('H\u00E9llo' ), ['hello'] )
def lowercase_ ( self : Tuple ) ->Optional[int]:
snake_case__ : Union[str, Any] = RoCBertBasicTokenizer(do_lower_case=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHeLLo!how \n Are yoU? ' ), ['HeLLo', '!', 'how', 'Are', 'yoU', '?'] )
def lowercase_ ( self : Optional[int] ) ->Union[str, Any]:
snake_case__ : Optional[int] = RoCBertBasicTokenizer(do_lower_case=_snake_case, strip_accents=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHäLLo!how \n Are yoU? ' ), ['HäLLo', '!', 'how', 'Are', 'yoU', '?'] )
def lowercase_ ( self : List[str] ) ->int:
snake_case__ : str = RoCBertBasicTokenizer(do_lower_case=_snake_case, strip_accents=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHäLLo!how \n Are yoU? ' ), ['HaLLo', '!', 'how', 'Are', 'yoU', '?'] )
def lowercase_ ( self : Any ) ->Tuple:
snake_case__ : Tuple = RoCBertBasicTokenizer(do_lower_case=_snake_case, never_split=['[UNK]'] )
self.assertListEqual(
tokenizer.tokenize(' \tHeLLo!how \n Are yoU? [UNK]' ), ['HeLLo', '!', 'how', 'Are', 'yoU', '?', '[UNK]'] )
def lowercase_ ( self : Any ) ->Tuple:
snake_case__ : Any = ['[UNK]', '[CLS]', '[SEP]', 'want', '##want', '##ed', 'wa', 'un', 'runn', '##ing']
snake_case__ : List[Any] = {}
for i, token in enumerate(_snake_case ):
snake_case__ : List[str] = i
snake_case__ : List[Any] = RoCBertWordpieceTokenizer(vocab=_snake_case, unk_token='[UNK]' )
self.assertListEqual(tokenizer.tokenize('' ), [] )
self.assertListEqual(tokenizer.tokenize('unwanted running' ), ['un', '##want', '##ed', 'runn', '##ing'] )
self.assertListEqual(tokenizer.tokenize('unwantedX running' ), ['[UNK]', 'runn', '##ing'] )
def lowercase_ ( self : str ) ->Tuple:
self.assertTrue(_is_whitespace(' ' ) )
self.assertTrue(_is_whitespace('\t' ) )
self.assertTrue(_is_whitespace('\r' ) )
self.assertTrue(_is_whitespace('\n' ) )
self.assertTrue(_is_whitespace('\u00A0' ) )
self.assertFalse(_is_whitespace('A' ) )
self.assertFalse(_is_whitespace('-' ) )
def lowercase_ ( self : Tuple ) ->Any:
self.assertTrue(_is_control('\u0005' ) )
self.assertFalse(_is_control('A' ) )
self.assertFalse(_is_control(' ' ) )
self.assertFalse(_is_control('\t' ) )
self.assertFalse(_is_control('\r' ) )
def lowercase_ ( self : Union[str, Any] ) ->Dict:
self.assertTrue(_is_punctuation('-' ) )
self.assertTrue(_is_punctuation('$' ) )
self.assertTrue(_is_punctuation('`' ) )
self.assertTrue(_is_punctuation('.' ) )
self.assertFalse(_is_punctuation('A' ) )
self.assertFalse(_is_punctuation(' ' ) )
def lowercase_ ( self : Union[str, Any] ) ->List[Any]:
snake_case__ : Tuple = self.get_tokenizer()
# Example taken from the issue https://github.com/huggingface/tokenizers/issues/340
self.assertListEqual([tokenizer.tokenize(_snake_case ) for t in ['Test', '\xad', 'test']], [['[UNK]'], [], ['[UNK]']] )
if self.test_rust_tokenizer:
snake_case__ : Any = self.get_rust_tokenizer()
self.assertListEqual(
[rust_tokenizer.tokenize(_snake_case ) for t in ['Test', '\xad', 'test']], [['[UNK]'], [], ['[UNK]']] )
def lowercase_ ( self : Any ) ->int:
for tokenizer, pretrained_name, kwargs in self.tokenizers_list:
with self.subTest(F'''{tokenizer.__class__.__name__} ({pretrained_name})''' ):
snake_case__ : Union[str, Any] = self.rust_tokenizer_class.from_pretrained(_snake_case, **_snake_case )
snake_case__ : int = F'''A, naïve {tokenizer_r.mask_token} AllenNLP sentence.'''
snake_case__ : str = tokenizer_r.encode_plus(
_snake_case, return_attention_mask=_snake_case, return_token_type_ids=_snake_case, return_offsets_mapping=_snake_case, add_special_tokens=_snake_case, )
snake_case__ : Any = tokenizer_r.do_lower_case if hasattr(_snake_case, 'do_lower_case' ) else False
snake_case__ : Optional[Any] = (
[
((0, 0), tokenizer_r.cls_token),
((0, 1), 'A'),
((1, 2), ','),
((3, 5), 'na'),
((5, 6), '##ï'),
((6, 8), '##ve'),
((9, 1_5), tokenizer_r.mask_token),
((1_6, 2_1), 'Allen'),
((2_1, 2_3), '##NL'),
((2_3, 2_4), '##P'),
((2_5, 3_3), 'sentence'),
((3_3, 3_4), '.'),
((0, 0), tokenizer_r.sep_token),
]
if not do_lower_case
else [
((0, 0), tokenizer_r.cls_token),
((0, 1), 'a'),
((1, 2), ','),
((3, 8), 'naive'),
((9, 1_5), tokenizer_r.mask_token),
((1_6, 2_1), 'allen'),
((2_1, 2_3), '##nl'),
((2_3, 2_4), '##p'),
((2_5, 3_3), 'sentence'),
((3_3, 3_4), '.'),
((0, 0), tokenizer_r.sep_token),
]
)
self.assertEqual(
[e[1] for e in expected_results], tokenizer_r.convert_ids_to_tokens(tokens['input_ids'] ) )
self.assertEqual([e[0] for e in expected_results], tokens['offset_mapping'] )
def lowercase_ ( self : str ) ->List[Any]:
snake_case__ : Union[str, Any] = ['的', '人', '有']
snake_case__ : Dict = ''.join(_snake_case )
for tokenizer, pretrained_name, kwargs in self.tokenizers_list:
with self.subTest(F'''{tokenizer.__class__.__name__} ({pretrained_name})''' ):
snake_case__ : Dict = True
snake_case__ : Optional[int] = self.tokenizer_class.from_pretrained(_snake_case, **_snake_case )
snake_case__ : Dict = self.rust_tokenizer_class.from_pretrained(_snake_case, **_snake_case )
snake_case__ : int = tokenizer_p.encode(_snake_case, add_special_tokens=_snake_case )
snake_case__ : Tuple = tokenizer_r.encode(_snake_case, add_special_tokens=_snake_case )
snake_case__ : List[str] = tokenizer_r.convert_ids_to_tokens(_snake_case )
snake_case__ : str = tokenizer_p.convert_ids_to_tokens(_snake_case )
# it is expected that each Chinese character is not preceded by "##"
self.assertListEqual(_snake_case, _snake_case )
self.assertListEqual(_snake_case, _snake_case )
snake_case__ : int = False
snake_case__ : Dict = self.rust_tokenizer_class.from_pretrained(_snake_case, **_snake_case )
snake_case__ : Optional[Any] = self.tokenizer_class.from_pretrained(_snake_case, **_snake_case )
snake_case__ : Dict = tokenizer_r.encode(_snake_case, add_special_tokens=_snake_case )
snake_case__ : List[Any] = tokenizer_p.encode(_snake_case, add_special_tokens=_snake_case )
snake_case__ : Tuple = tokenizer_r.convert_ids_to_tokens(_snake_case )
snake_case__ : List[Any] = tokenizer_p.convert_ids_to_tokens(_snake_case )
# it is expected that only the first Chinese character is not preceded by "##".
snake_case__ : Any = [
F'''##{token}''' if idx != 0 else token for idx, token in enumerate(_snake_case )
]
self.assertListEqual(_snake_case, _snake_case )
self.assertListEqual(_snake_case, _snake_case )
@slow
def lowercase_ ( self : Dict ) ->str:
snake_case__ : Dict = self.tokenizer_class(self.vocab_file, self.word_shape_file, self.word_pronunciation_file )
snake_case__ : Union[str, Any] = tokenizer.encode('你好', add_special_tokens=_snake_case )
snake_case__ : List[str] = tokenizer.encode('你是谁', add_special_tokens=_snake_case )
snake_case__ : Union[str, Any] = tokenizer.build_inputs_with_special_tokens(_snake_case )
snake_case__ : Optional[Any] = tokenizer.build_inputs_with_special_tokens(_snake_case, _snake_case )
assert encoded_sentence == [1] + text + [2]
assert encoded_pair == [1] + text + [2] + text_a + [2]
def lowercase_ ( self : Optional[int] ) ->Optional[Any]:
snake_case__ : List[Any] = self.get_tokenizers(do_lower_case=_snake_case )
for tokenizer in tokenizers:
with self.subTest(F'''{tokenizer.__class__.__name__}''' ):
snake_case__ : Any = '你好,你是谁'
snake_case__ : Dict = tokenizer.tokenize(_snake_case )
snake_case__ : Any = tokenizer.convert_tokens_to_ids(_snake_case )
snake_case__ : List[Any] = tokenizer.convert_tokens_to_shape_ids(_snake_case )
snake_case__ : Union[str, Any] = tokenizer.convert_tokens_to_pronunciation_ids(_snake_case )
snake_case__ : Tuple = tokenizer.prepare_for_model(
_snake_case, _snake_case, _snake_case, add_special_tokens=_snake_case )
snake_case__ : List[str] = tokenizer.encode_plus(_snake_case, add_special_tokens=_snake_case )
self.assertEqual(_snake_case, _snake_case )
| 277 |
from collections import deque
from .hash_table import HashTable
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
def __init__( self : Optional[Any], *_snake_case : Optional[Any], **_snake_case : List[Any] ) ->Optional[int]:
super().__init__(*_snake_case, **_snake_case )
def lowercase_ ( self : Optional[Any], _snake_case : Tuple, _snake_case : Dict ) ->Dict:
snake_case__ : int = deque([] ) if self.values[key] is None else self.values[key]
self.values[key].appendleft(_snake_case )
snake_case__ : Dict = self.values[key]
def lowercase_ ( self : Any ) ->Optional[Any]:
return (
sum(self.charge_factor - len(_snake_case ) for slot in self.values )
/ self.size_table
* self.charge_factor
)
def lowercase_ ( self : Union[str, Any], _snake_case : str, _snake_case : Optional[int]=None ) ->Optional[Any]:
if not (
len(self.values[key] ) == self.charge_factor and self.values.count(_snake_case ) == 0
):
return key
return super()._collision_resolution(_snake_case, _snake_case )
| 277 | 1 |
def lowercase_ (A : Optional[int] ): # noqa: E741
snake_case__ : Dict = len(A )
snake_case__ : str = 0
snake_case__ : Any = [0] * n
snake_case__ : Optional[Any] = [False] * n
snake_case__ : List[Any] = [False] * n
def dfs(A : Dict , A : Optional[Any] , A : List[Any] , A : Union[str, Any] ):
if parent == root:
out_edge_count += 1
snake_case__ : Any = True
snake_case__ : List[str] = at
for to in l[at]:
if to == parent:
pass
elif not visited[to]:
snake_case__ : Union[str, Any] = dfs(A , A , A , A )
snake_case__ : Optional[Any] = min(low[at] , low[to] )
# AP found via bridge
if at < low[to]:
snake_case__ : Any = True
# AP found via cycle
if at == low[to]:
snake_case__ : List[Any] = True
else:
snake_case__ : Tuple = min(low[at] , A )
return out_edge_count
for i in range(A ):
if not visited[i]:
snake_case__ : Dict = 0
snake_case__ : List[str] = dfs(A , A , -1 , A )
snake_case__ : Dict = out_edge_count > 1
for x in range(len(A ) ):
if is_art[x] is True:
print(A )
# Adjacency list of graph
a_ :Any = {
0: [1, 2],
1: [0, 2],
2: [0, 1, 3, 5],
3: [2, 4],
4: [3],
5: [2, 6, 8],
6: [5, 7],
7: [6, 8],
8: [5, 7],
}
compute_ap(data)
| 277 |
def lowercase_ (A : Union[str, Any] , A : List[str] , A : int , A : Optional[int] ):
global f # a global dp table for knapsack
if f[i][j] < 0:
if j < wt[i - 1]:
snake_case__ : Union[str, Any] = mf_knapsack(i - 1 , A , A , A )
else:
snake_case__ : Any = max(
mf_knapsack(i - 1 , A , A , A ) , mf_knapsack(i - 1 , A , A , j - wt[i - 1] ) + val[i - 1] , )
snake_case__ : Optional[int] = val
return f[i][j]
def lowercase_ (A : Optional[int] , A : Union[str, Any] , A : str , A : Dict ):
snake_case__ : int = [[0] * (w + 1) for _ in range(n + 1 )]
for i in range(1 , n + 1 ):
for w_ in range(1 , w + 1 ):
if wt[i - 1] <= w_:
snake_case__ : Union[str, Any] = max(val[i - 1] + dp[i - 1][w_ - wt[i - 1]] , dp[i - 1][w_] )
else:
snake_case__ : str = dp[i - 1][w_]
return dp[n][w_], dp
def lowercase_ (A : int , A : list , A : list ):
if not (isinstance(A , (list, tuple) ) and isinstance(A , (list, tuple) )):
raise ValueError(
'Both the weights and values vectors must be either lists or tuples' )
snake_case__ : Dict = len(A )
if num_items != len(A ):
snake_case__ : str = (
'The number of weights must be the same as the number of values.\n'
F'''But got {num_items} weights and {len(A )} values'''
)
raise ValueError(A )
for i in range(A ):
if not isinstance(wt[i] , A ):
snake_case__ : Optional[int] = (
'All weights must be integers but got weight of '
F'''type {type(wt[i] )} at index {i}'''
)
raise TypeError(A )
snake_case__ , snake_case__ : Optional[int] = knapsack(A , A , A , A )
snake_case__ : set = set()
_construct_solution(A , A , A , A , A )
return optimal_val, example_optional_set
def lowercase_ (A : list , A : list , A : int , A : int , A : set ):
# for the current item i at a maximum weight j to be part of an optimal subset,
# the optimal value at (i, j) must be greater than the optimal value at (i-1, j).
# where i - 1 means considering only the previous items at the given maximum weight
if i > 0 and j > 0:
if dp[i - 1][j] == dp[i][j]:
_construct_solution(A , A , i - 1 , A , A )
else:
optimal_set.add(A )
_construct_solution(A , A , i - 1 , j - wt[i - 1] , A )
if __name__ == "__main__":
a_ :Any = [3, 2, 4, 4]
a_ :List[Any] = [4, 3, 2, 3]
a_ :Union[str, Any] = 4
a_ :List[str] = 6
a_ :Union[str, Any] = [[0] * (w + 1)] + [[0] + [-1] * (w + 1) for _ in range(n + 1)]
a_ , a_ :List[Any] = knapsack(w, wt, val, n)
print(optimal_solution)
print(mf_knapsack(n, wt, val, w)) # switched the n and w
# testing the dynamic programming problem with example
# the optimal subset for the above example are items 3 and 4
a_ , a_ :Any = knapsack_with_example_solution(w, wt, val)
assert optimal_solution == 8
assert optimal_subset == {3, 4}
print("optimal_value = ", optimal_solution)
print("An optimal subset corresponding to the optimal value", optimal_subset)
| 277 | 1 |
import json
from typing import List, Optional, Tuple
from tokenizers import pre_tokenizers, processors
from ...tokenization_utils_base import AddedToken, BatchEncoding
from ...tokenization_utils_fast import PreTrainedTokenizerFast
from ...utils import logging
from .tokenization_bart import BartTokenizer
a_ :List[Any] = logging.get_logger(__name__)
a_ :Optional[int] = {"vocab_file": "vocab.json", "merges_file": "merges.txt", "tokenizer_file": "tokenizer.json"}
# See all BART models at https://huggingface.co/models?filter=bart
a_ :List[str] = {
"vocab_file": {
"facebook/bart-base": "https://huggingface.co/facebook/bart-base/resolve/main/vocab.json",
"facebook/bart-large": "https://huggingface.co/facebook/bart-large/resolve/main/vocab.json",
"facebook/bart-large-mnli": "https://huggingface.co/facebook/bart-large-mnli/resolve/main/vocab.json",
"facebook/bart-large-cnn": "https://huggingface.co/facebook/bart-large-cnn/resolve/main/vocab.json",
"facebook/bart-large-xsum": "https://huggingface.co/facebook/bart-large-xsum/resolve/main/vocab.json",
"yjernite/bart_eli5": "https://huggingface.co/yjernite/bart_eli5/resolve/main/vocab.json",
},
"merges_file": {
"facebook/bart-base": "https://huggingface.co/facebook/bart-base/resolve/main/merges.txt",
"facebook/bart-large": "https://huggingface.co/facebook/bart-large/resolve/main/merges.txt",
"facebook/bart-large-mnli": "https://huggingface.co/facebook/bart-large-mnli/resolve/main/merges.txt",
"facebook/bart-large-cnn": "https://huggingface.co/facebook/bart-large-cnn/resolve/main/merges.txt",
"facebook/bart-large-xsum": "https://huggingface.co/facebook/bart-large-xsum/resolve/main/merges.txt",
"yjernite/bart_eli5": "https://huggingface.co/yjernite/bart_eli5/resolve/main/merges.txt",
},
"tokenizer_file": {
"facebook/bart-base": "https://huggingface.co/facebook/bart-base/resolve/main/tokenizer.json",
"facebook/bart-large": "https://huggingface.co/facebook/bart-large/resolve/main/tokenizer.json",
"facebook/bart-large-mnli": "https://huggingface.co/facebook/bart-large-mnli/resolve/main/tokenizer.json",
"facebook/bart-large-cnn": "https://huggingface.co/facebook/bart-large-cnn/resolve/main/tokenizer.json",
"facebook/bart-large-xsum": "https://huggingface.co/facebook/bart-large-xsum/resolve/main/tokenizer.json",
"yjernite/bart_eli5": "https://huggingface.co/yjernite/bart_eli5/resolve/main/tokenizer.json",
},
}
a_ :Tuple = {
"facebook/bart-base": 1_024,
"facebook/bart-large": 1_024,
"facebook/bart-large-mnli": 1_024,
"facebook/bart-large-cnn": 1_024,
"facebook/bart-large-xsum": 1_024,
"yjernite/bart_eli5": 1_024,
}
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = VOCAB_FILES_NAMES
_SCREAMING_SNAKE_CASE = PRETRAINED_VOCAB_FILES_MAP
_SCREAMING_SNAKE_CASE = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES
_SCREAMING_SNAKE_CASE = ["""input_ids""", """attention_mask"""]
_SCREAMING_SNAKE_CASE = BartTokenizer
def __init__( self : Optional[int], _snake_case : Optional[Any]=None, _snake_case : Dict=None, _snake_case : Dict=None, _snake_case : List[str]="replace", _snake_case : int="<s>", _snake_case : Optional[Any]="</s>", _snake_case : List[Any]="</s>", _snake_case : int="<s>", _snake_case : Optional[Any]="<unk>", _snake_case : str="<pad>", _snake_case : Union[str, Any]="<mask>", _snake_case : int=False, _snake_case : Optional[int]=True, **_snake_case : Any, ) ->int:
super().__init__(
_snake_case, _snake_case, tokenizer_file=_snake_case, errors=_snake_case, bos_token=_snake_case, eos_token=_snake_case, sep_token=_snake_case, cls_token=_snake_case, unk_token=_snake_case, pad_token=_snake_case, mask_token=_snake_case, add_prefix_space=_snake_case, trim_offsets=_snake_case, **_snake_case, )
snake_case__ : str = json.loads(self.backend_tokenizer.pre_tokenizer.__getstate__() )
if pre_tok_state.get('add_prefix_space', _snake_case ) != add_prefix_space:
snake_case__ : Tuple = getattr(_snake_case, pre_tok_state.pop('type' ) )
snake_case__ : List[Any] = add_prefix_space
snake_case__ : str = pre_tok_class(**_snake_case )
snake_case__ : int = add_prefix_space
# the pre_tokenizer is already updated in the GPT2TokenizerFast `__init__`
snake_case__ : Any = 'post_processor'
snake_case__ : List[Any] = getattr(self.backend_tokenizer, _snake_case, _snake_case )
if tokenizer_component_instance:
snake_case__ : Union[str, Any] = json.loads(tokenizer_component_instance.__getstate__() )
# The lists 'sep' and 'cls' must be cased in tuples for the object `post_processor_class`
if "sep" in state:
snake_case__ : Tuple = tuple(state['sep'] )
if "cls" in state:
snake_case__ : Optional[Any] = tuple(state['cls'] )
snake_case__ : int = False
if state.get('add_prefix_space', _snake_case ) != add_prefix_space:
snake_case__ : int = add_prefix_space
snake_case__ : Tuple = True
if state.get('trim_offsets', _snake_case ) != trim_offsets:
snake_case__ : Optional[Any] = trim_offsets
snake_case__ : Tuple = True
if changes_to_apply:
snake_case__ : Union[str, Any] = getattr(_snake_case, state.pop('type' ) )
snake_case__ : List[str] = component_class(**_snake_case )
setattr(self.backend_tokenizer, _snake_case, _snake_case )
@property
def lowercase_ ( self : List[str] ) ->str:
if self._mask_token is None:
if self.verbose:
logger.error('Using mask_token, but it is not set yet.' )
return None
return str(self._mask_token )
@mask_token.setter
def lowercase_ ( self : Union[str, Any], _snake_case : Optional[int] ) ->Dict:
snake_case__ : List[str] = AddedToken(_snake_case, lstrip=_snake_case, rstrip=_snake_case ) if isinstance(_snake_case, _snake_case ) else value
snake_case__ : Union[str, Any] = value
def lowercase_ ( self : str, *_snake_case : str, **_snake_case : Optional[Any] ) ->BatchEncoding:
snake_case__ : str = kwargs.get('is_split_into_words', _snake_case )
if is_split_into_words and not self.add_prefix_space:
raise ValueError(
F'''You need to instantiate {self.__class__.__name__} with add_prefix_space=True '''
'to use it with pretokenized inputs.' )
return super()._batch_encode_plus(*_snake_case, **_snake_case )
def lowercase_ ( self : Tuple, *_snake_case : List[str], **_snake_case : int ) ->BatchEncoding:
snake_case__ : List[str] = kwargs.get('is_split_into_words', _snake_case )
if is_split_into_words and not self.add_prefix_space:
raise ValueError(
F'''You need to instantiate {self.__class__.__name__} with add_prefix_space=True '''
'to use it with pretokenized inputs.' )
return super()._encode_plus(*_snake_case, **_snake_case )
def lowercase_ ( self : List[str], _snake_case : str, _snake_case : Optional[str] = None ) ->Tuple[str]:
snake_case__ : Dict = self._tokenizer.model.save(_snake_case, name=_snake_case )
return tuple(_snake_case )
def lowercase_ ( self : str, _snake_case : int, _snake_case : str=None ) ->Dict:
snake_case__ : Tuple = [self.bos_token_id] + token_ids_a + [self.eos_token_id]
if token_ids_a is None:
return output
return output + [self.eos_token_id] + token_ids_a + [self.eos_token_id]
def lowercase_ ( self : List[Any], _snake_case : List[int], _snake_case : Optional[List[int]] = None ) ->List[int]:
snake_case__ : Any = [self.sep_token_id]
snake_case__ : Optional[Any] = [self.cls_token_id]
if token_ids_a is None:
return len(cls + token_ids_a + sep ) * [0]
return len(cls + token_ids_a + sep + sep + token_ids_a + sep ) * [0]
| 277 |
from typing import TYPE_CHECKING
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_flax_available, is_torch_available
a_ :int = {
"configuration_longt5": ["LONGT5_PRETRAINED_CONFIG_ARCHIVE_MAP", "LongT5Config", "LongT5OnnxConfig"],
}
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :List[str] = [
"LONGT5_PRETRAINED_MODEL_ARCHIVE_LIST",
"LongT5EncoderModel",
"LongT5ForConditionalGeneration",
"LongT5Model",
"LongT5PreTrainedModel",
]
try:
if not is_flax_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :int = [
"FlaxLongT5ForConditionalGeneration",
"FlaxLongT5Model",
"FlaxLongT5PreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_longta import LONGT5_PRETRAINED_CONFIG_ARCHIVE_MAP, LongTaConfig, LongTaOnnxConfig
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_longta import (
LONGT5_PRETRAINED_MODEL_ARCHIVE_LIST,
LongTaEncoderModel,
LongTaForConditionalGeneration,
LongTaModel,
LongTaPreTrainedModel,
)
try:
if not is_flax_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_flax_longta import (
FlaxLongTaForConditionalGeneration,
FlaxLongTaModel,
FlaxLongTaPreTrainedModel,
)
else:
import sys
a_ :Optional[int] = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 277 | 1 |
import unittest
from transformers import is_torch_available
from transformers.testing_utils import require_torch, slow, torch_device
from ...generation.test_utils import GenerationTesterMixin
from ...test_configuration_common import ConfigTester
from ...test_modeling_common import ModelTesterMixin, ids_tensor
from ...test_pipeline_mixin import PipelineTesterMixin
if is_torch_available():
import torch
from transformers import (
OPENAI_GPT_PRETRAINED_MODEL_ARCHIVE_LIST,
OpenAIGPTConfig,
OpenAIGPTDoubleHeadsModel,
OpenAIGPTForSequenceClassification,
OpenAIGPTLMHeadModel,
OpenAIGPTModel,
)
class snake_case__ :
"""simple docstring"""
def __init__( self : List[str], _snake_case : Any, _snake_case : int=1_3, _snake_case : Optional[int]=7, _snake_case : int=True, _snake_case : Optional[Any]=True, _snake_case : Optional[Any]=True, _snake_case : Union[str, Any]=9_9, _snake_case : Optional[Any]=3_2, _snake_case : Tuple=5, _snake_case : str=4, _snake_case : Any=3_7, _snake_case : int="gelu", _snake_case : Optional[Any]=0.1, _snake_case : str=0.1, _snake_case : str=5_1_2, _snake_case : Dict=1_6, _snake_case : str=2, _snake_case : Union[str, Any]=0.0_2, _snake_case : Optional[int]=3, _snake_case : Union[str, Any]=4, _snake_case : Tuple=None, ) ->Optional[Any]:
snake_case__ : Optional[int] = parent
snake_case__ : List[Any] = batch_size
snake_case__ : Tuple = seq_length
snake_case__ : str = is_training
snake_case__ : Optional[int] = use_token_type_ids
snake_case__ : Any = use_labels
snake_case__ : Dict = vocab_size
snake_case__ : str = hidden_size
snake_case__ : Union[str, Any] = num_hidden_layers
snake_case__ : List[str] = num_attention_heads
snake_case__ : Union[str, Any] = intermediate_size
snake_case__ : List[Any] = hidden_act
snake_case__ : int = hidden_dropout_prob
snake_case__ : str = attention_probs_dropout_prob
snake_case__ : Any = max_position_embeddings
snake_case__ : Union[str, Any] = type_vocab_size
snake_case__ : Optional[Any] = type_sequence_label_size
snake_case__ : Optional[int] = initializer_range
snake_case__ : Optional[int] = num_labels
snake_case__ : str = num_choices
snake_case__ : int = scope
snake_case__ : List[str] = self.vocab_size - 1
def lowercase_ ( self : Union[str, Any] ) ->Tuple:
snake_case__ : List[str] = ids_tensor([self.batch_size, self.seq_length], self.vocab_size )
snake_case__ : List[str] = None
if self.use_token_type_ids:
snake_case__ : Optional[Any] = ids_tensor([self.batch_size, self.seq_length], self.type_vocab_size )
snake_case__ : Tuple = None
snake_case__ : str = None
snake_case__ : List[Any] = None
if self.use_labels:
snake_case__ : Dict = ids_tensor([self.batch_size], self.type_sequence_label_size )
snake_case__ : int = ids_tensor([self.batch_size, self.seq_length], self.num_labels )
snake_case__ : List[str] = ids_tensor([self.batch_size], self.num_choices )
snake_case__ : Union[str, Any] = OpenAIGPTConfig(
vocab_size=self.vocab_size, n_embd=self.hidden_size, n_layer=self.num_hidden_layers, n_head=self.num_attention_heads, n_positions=self.max_position_embeddings, pad_token_id=self.pad_token_id, )
snake_case__ : List[str] = ids_tensor([self.num_hidden_layers, self.num_attention_heads], 2 )
return (
config,
input_ids,
head_mask,
token_type_ids,
sequence_labels,
token_labels,
choice_labels,
)
def lowercase_ ( self : Any, _snake_case : List[str], _snake_case : Any, _snake_case : List[Any], _snake_case : Tuple, *_snake_case : Optional[Any] ) ->Tuple:
snake_case__ : Union[str, Any] = OpenAIGPTModel(config=_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Optional[Any] = model(_snake_case, token_type_ids=_snake_case, head_mask=_snake_case )
snake_case__ : Union[str, Any] = model(_snake_case, token_type_ids=_snake_case )
snake_case__ : Optional[Any] = model(_snake_case )
self.parent.assertEqual(result.last_hidden_state.shape, (self.batch_size, self.seq_length, self.hidden_size) )
def lowercase_ ( self : Optional[int], _snake_case : Optional[Any], _snake_case : Union[str, Any], _snake_case : Optional[int], _snake_case : List[Any], *_snake_case : Dict ) ->Optional[int]:
snake_case__ : Optional[Any] = OpenAIGPTLMHeadModel(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Tuple = model(_snake_case, token_type_ids=_snake_case, labels=_snake_case )
self.parent.assertEqual(result.loss.shape, () )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.seq_length, self.vocab_size) )
def lowercase_ ( self : int, _snake_case : Tuple, _snake_case : List[str], _snake_case : List[Any], _snake_case : List[Any], *_snake_case : List[Any] ) ->Optional[int]:
snake_case__ : List[str] = OpenAIGPTDoubleHeadsModel(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Optional[Any] = model(_snake_case, token_type_ids=_snake_case, labels=_snake_case )
self.parent.assertEqual(result.loss.shape, () )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.seq_length, self.vocab_size) )
def lowercase_ ( self : Optional[int], _snake_case : Tuple, _snake_case : Dict, _snake_case : List[str], _snake_case : Optional[Any], *_snake_case : Union[str, Any] ) ->str:
snake_case__ : List[str] = self.num_labels
snake_case__ : Dict = OpenAIGPTForSequenceClassification(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : List[str] = ids_tensor([self.batch_size], self.type_sequence_label_size )
snake_case__ : List[str] = model(_snake_case, token_type_ids=_snake_case, labels=_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.num_labels) )
def lowercase_ ( self : Dict ) ->int:
snake_case__ : List[Any] = self.prepare_config_and_inputs()
(
(
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) ,
) : Optional[Any] = config_and_inputs
snake_case__ : str = {
'input_ids': input_ids,
'token_type_ids': token_type_ids,
'head_mask': head_mask,
}
return config, inputs_dict
@require_torch
class snake_case__ ( lowerCAmelCase_ , lowerCAmelCase_ , lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = (
(OpenAIGPTModel, OpenAIGPTLMHeadModel, OpenAIGPTDoubleHeadsModel, OpenAIGPTForSequenceClassification)
if is_torch_available()
else ()
)
_SCREAMING_SNAKE_CASE = (
(OpenAIGPTLMHeadModel,) if is_torch_available() else ()
) # TODO (PVP): Add Double HeadsModel when generate() function is changed accordingly
_SCREAMING_SNAKE_CASE = (
{
"""feature-extraction""": OpenAIGPTModel,
"""text-classification""": OpenAIGPTForSequenceClassification,
"""text-generation""": OpenAIGPTLMHeadModel,
"""zero-shot""": OpenAIGPTForSequenceClassification,
}
if is_torch_available()
else {}
)
def lowercase_ ( self : Optional[int], _snake_case : Union[str, Any], _snake_case : int, _snake_case : Tuple, _snake_case : Tuple, _snake_case : List[str] ) ->Optional[Any]:
if pipeline_test_casse_name == "ZeroShotClassificationPipelineTests":
# Get `tokenizer does not have a padding token` error for both fast/slow tokenizers.
# `OpenAIGPTConfig` was never used in pipeline tests, either because of a missing checkpoint or because a
# tiny config could not be created.
return True
return False
def lowercase_ ( self : Optional[Any], _snake_case : Union[str, Any], _snake_case : List[str], _snake_case : Any=False ) ->Tuple:
snake_case__ : Optional[int] = super()._prepare_for_class(_snake_case, _snake_case, return_labels=_snake_case )
if return_labels:
if model_class.__name__ == "OpenAIGPTDoubleHeadsModel":
snake_case__ : Union[str, Any] = torch.zeros(
(self.model_tester.batch_size, self.model_tester.num_choices, self.model_tester.seq_length), dtype=torch.long, device=_snake_case, )
snake_case__ : List[Any] = inputs_dict['labels']
snake_case__ : List[Any] = inputs_dict['labels']
snake_case__ : Any = torch.zeros(
(self.model_tester.batch_size, self.model_tester.num_choices), dtype=torch.long, device=_snake_case, )
snake_case__ : Tuple = torch.zeros(
self.model_tester.batch_size, dtype=torch.long, device=_snake_case )
return inputs_dict
def lowercase_ ( self : Union[str, Any] ) ->List[str]:
snake_case__ : List[str] = OpenAIGPTModelTester(self )
snake_case__ : Any = ConfigTester(self, config_class=_snake_case, n_embd=3_7 )
def lowercase_ ( self : Optional[int] ) ->str:
self.config_tester.run_common_tests()
def lowercase_ ( self : int ) ->Tuple:
snake_case__ : str = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_openai_gpt_model(*_snake_case )
def lowercase_ ( self : Tuple ) ->List[str]:
snake_case__ : Optional[int] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_lm_head_model(*_snake_case )
def lowercase_ ( self : Dict ) ->int:
snake_case__ : Optional[Any] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_double_lm_head_model(*_snake_case )
def lowercase_ ( self : int ) ->str:
snake_case__ : List[Any] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_openai_gpt_for_sequence_classification(*_snake_case )
@slow
def lowercase_ ( self : Optional[Any] ) ->str:
for model_name in OPENAI_GPT_PRETRAINED_MODEL_ARCHIVE_LIST[:1]:
snake_case__ : Optional[int] = OpenAIGPTModel.from_pretrained(_snake_case )
self.assertIsNotNone(_snake_case )
@require_torch
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
@slow
def lowercase_ ( self : Tuple ) ->Optional[int]:
snake_case__ : Union[str, Any] = OpenAIGPTLMHeadModel.from_pretrained('openai-gpt' )
model.to(_snake_case )
snake_case__ : Tuple = torch.tensor([[4_8_1, 4_7_3_5, 5_4_4]], dtype=torch.long, device=_snake_case ) # the president is
snake_case__ : int = [
4_8_1,
4_7_3_5,
5_4_4,
2_4_6,
9_6_3,
8_7_0,
7_6_2,
2_3_9,
2_4_4,
4_0_4_7_7,
2_4_4,
2_4_9,
7_1_9,
8_8_1,
4_8_7,
5_4_4,
2_4_0,
2_4_4,
6_0_3,
4_8_1,
] # the president is a very good man. " \n " i\'m sure he is, " said the
snake_case__ : Optional[int] = model.generate(_snake_case, do_sample=_snake_case )
self.assertListEqual(output_ids[0].tolist(), _snake_case )
| 277 |
import argparse
import json
import os
import torch
from torch import nn
from transformers import NllbMoeConfig, NllbMoeModel
from transformers.modeling_utils import dtype_byte_size
from transformers.utils import WEIGHTS_INDEX_NAME, WEIGHTS_NAME
def lowercase_ (A : List[str] ):
snake_case__ : Tuple = [
'encoder.version',
'decoder.version',
'model.encoder.version',
'model.decoder.version',
'decoder.output_projection.weight',
'_float_tensor',
'encoder.embed_positions._float_tensor',
'decoder.embed_positions._float_tensor',
]
for k in ignore_keys:
state_dict.pop(A , A )
def lowercase_ (A : str ):
snake_case__ , snake_case__ : Union[str, Any] = emb.weight.shape
snake_case__ : str = nn.Linear(A , A , bias=A )
snake_case__ : str = emb.weight.data
return lin_layer
def lowercase_ (A : Optional[int] , A : Union[str, Any]=None ):
snake_case__ : Any = {}
for old_key in state_dict.keys():
snake_case__ : Tuple = old_key
if "moe_layer.experts." in key:
if expert_idx is not None:
snake_case__ : int = key.replace('moe_layer.experts.0' , F'''ffn.experts.expert_{expert_idx}''' )
else:
snake_case__ : Any = key.replace('moe_layer.experts.' , 'ffn.experts.expert_' )
if "gate" in key:
snake_case__ : Dict = key.replace('.moe_layer.gate.wg' , '.ffn.router.classifier' )
if "fc2" and "experts" not in key:
snake_case__ : str = key.replace('.fc2.' , '.ffn.fc2.' )
if "fc1" and "experts" not in key:
snake_case__ : str = key.replace('.fc1.' , '.ffn.fc1.' )
if ".encoder_attn." in key:
snake_case__ : Tuple = key.replace('.encoder_attn.' , '.cross_attention.' )
if "encoder_attn_layer_norm" in key:
snake_case__ : Tuple = key.replace('encoder_attn_layer_norm' , 'cross_attention_layer_norm' )
if "final_layer_norm" in key:
snake_case__ : Optional[int] = key.replace('final_layer_norm' , 'ff_layer_norm' )
snake_case__ : Dict = state_dict[old_key]
return new_dict
def lowercase_ (A : List[Any] , A : Tuple , A : List[Any] , A : List[str] , A : str = WEIGHTS_NAME ):
snake_case__ : Dict = []
snake_case__ : str = 0
os.makedirs(A , exist_ok=A )
for expert in range(A ):
snake_case__ : Tuple = switch_checkpoint_path + F'''-rank-{expert}.pt'''
if os.path.isfile(A ):
snake_case__ : Optional[Any] = torch.load(A )['model']
remove_ignore_keys_(A )
snake_case__ : Optional[Any] = rename_fairseq_keys(A , A )
snake_case__ : Dict = os.path.join(
A , weights_name.replace('.bin' , F'''-{len(A )+1:05d}-of-???.bin''' ) )
torch.save(A , A )
sharded_state_dicts.append(expert_state.keys() )
total_size += sum([value.numel() for key, value in expert_state.items()] ) * dtype_byte_size(
expert_state[list(A )[0]].dtype )
# Add the last block
snake_case__ : Tuple = os.path.join(A , weights_name.replace('.bin' , F'''-{len(A )+1:05d}-of-???.bin''' ) )
snake_case__ : Union[str, Any] = torch.load(switch_checkpoint_path + '-shared.pt' )['model']
remove_ignore_keys_(A )
snake_case__ : str = rename_fairseq_keys(A , A )
snake_case__ : Any = shared_weights['decoder.embed_tokens.weight']
sharded_state_dicts.append(shared_weights.keys() )
# If we only have the shared weights (dummy model/experts saved on the same file)
if len(A ) == 1:
snake_case__ : Any = os.path.join(A , A )
torch.save(A , A )
return {weights_name: sharded_state_dicts[0]}, None
else:
torch.save(A , A )
# Otherwise, let's build the index
snake_case__ : Tuple = {}
for idx, shard in enumerate(A ):
snake_case__ : Optional[int] = weights_name.replace('.bin' , F'''-{idx+1:05d}-of-{len(A ):05d}.bin''' )
snake_case__ : List[Any] = os.path.join(A , weights_name.replace('.bin' , F'''-{idx+1:05d}-of-???.bin''' ) )
os.rename(A , os.path.join(A , A ) )
for key in shard:
snake_case__ : Any = shard_file
# Add the metadata
snake_case__ : int = {'total_size': total_size}
snake_case__ : Dict = {'metadata': metadata, 'weight_map': weight_map}
with open(os.path.join(A , A ) , 'w' , encoding='utf-8' ) as f:
snake_case__ : Any = json.dumps(A , indent=2 , sort_keys=A ) + '\n'
f.write(A )
return metadata, index
if __name__ == "__main__":
a_ :int = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--nllb_moe_checkpoint_path",
default="/home/arthur_huggingface_co/fairseq/weights/checkpoints/model_moe_54b/checkpoint_2_300000",
type=str,
required=False,
help="Path to a directory containing a folder per layer. Follows the original Google format.",
)
parser.add_argument("--dtype", default="float32", type=str, required=False, help="dtype of the saved model")
parser.add_argument(
"--pytorch_dump_folder_path",
default="/home/arthur_huggingface_co/fairseq/weights/checkpoints/hf-converted-moe-54b",
type=str,
required=False,
help="Path to the output pytorch model.",
)
a_ :Optional[Any] = parser.parse_args()
a_ , a_ :Optional[Any] = shard_on_the_fly(
args.nllb_moe_checkpoint_path,
args.pytorch_dump_folder_path,
128,
args.dtype,
)
a_ :List[str] = NllbMoeConfig.from_pretrained(
"facebook/nllb-200-3.3B", encoder_sparse_step=4, decoder_sparse_step=4, num_experts=128
)
config.save_pretrained(args.pytorch_dump_folder_path)
a_ :int = NllbMoeModel.from_pretrained(args.pytorch_dump_folder_path)
print("Done")
model.save_pretrained(args.pytorch_dump_folder_path)
| 277 | 1 |
import os
from shutil import copyfile
from typing import List, Optional, Tuple
from ...tokenization_utils import AddedToken
from ...tokenization_utils_fast import PreTrainedTokenizerFast
from ...utils import is_sentencepiece_available, logging
if is_sentencepiece_available():
from .tokenization_fnet import FNetTokenizer
else:
a_ :List[Any] = None
a_ :List[str] = logging.get_logger(__name__)
a_ :Optional[Any] = {"vocab_file": "spiece.model", "tokenizer_file": "tokenizer.json"}
a_ :Dict = {
"vocab_file": {
"google/fnet-base": "https://huggingface.co/google/fnet-base/resolve/main/spiece.model",
"google/fnet-large": "https://huggingface.co/google/fnet-large/resolve/main/spiece.model",
},
"tokenizer_file": {
"google/fnet-base": "https://huggingface.co/google/fnet-base/resolve/main/tokenizer.json",
"google/fnet-large": "https://huggingface.co/google/fnet-large/resolve/main/tokenizer.json",
},
}
a_ :Optional[Any] = {
"google/fnet-base": 512,
"google/fnet-large": 512,
}
a_ :Optional[Any] = "▁"
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = VOCAB_FILES_NAMES
_SCREAMING_SNAKE_CASE = PRETRAINED_VOCAB_FILES_MAP
_SCREAMING_SNAKE_CASE = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES
_SCREAMING_SNAKE_CASE = ["""input_ids""", """token_type_ids"""]
_SCREAMING_SNAKE_CASE = FNetTokenizer
def __init__( self : Tuple, _snake_case : Dict=None, _snake_case : str=None, _snake_case : int=False, _snake_case : Optional[int]=True, _snake_case : Tuple=True, _snake_case : Dict="<unk>", _snake_case : Any="[SEP]", _snake_case : List[str]="<pad>", _snake_case : Union[str, Any]="[CLS]", _snake_case : List[str]="[MASK]", **_snake_case : Any, ) ->Tuple:
# Mask token behave like a normal word, i.e. include the space before it and
# is included in the raw text, there should be a match in a non-normalized sentence.
snake_case__ : Optional[Any] = (
AddedToken(_snake_case, lstrip=_snake_case, rstrip=_snake_case, normalized=_snake_case )
if isinstance(_snake_case, _snake_case )
else mask_token
)
super().__init__(
_snake_case, tokenizer_file=_snake_case, do_lower_case=_snake_case, remove_space=_snake_case, keep_accents=_snake_case, unk_token=_snake_case, sep_token=_snake_case, pad_token=_snake_case, cls_token=_snake_case, mask_token=_snake_case, **_snake_case, )
snake_case__ : List[str] = do_lower_case
snake_case__ : str = remove_space
snake_case__ : Dict = keep_accents
snake_case__ : Union[str, Any] = vocab_file
snake_case__ : str = False if not self.vocab_file else True
def lowercase_ ( self : Any, _snake_case : List[int], _snake_case : Optional[List[int]] = None ) ->List[int]:
snake_case__ : Optional[Any] = [self.sep_token_id]
snake_case__ : List[Any] = [self.cls_token_id]
if token_ids_a is None:
return cls + token_ids_a + sep
return cls + token_ids_a + sep + token_ids_a + sep
def lowercase_ ( self : Optional[Any], _snake_case : List[int], _snake_case : Optional[List[int]] = None ) ->List[int]:
snake_case__ : Union[str, Any] = [self.sep_token_id]
snake_case__ : Optional[int] = [self.cls_token_id]
if token_ids_a is None:
return len(cls + token_ids_a + sep ) * [0]
return len(cls + token_ids_a + sep ) * [0] + len(token_ids_a + sep ) * [1]
def lowercase_ ( self : Optional[int], _snake_case : str, _snake_case : Optional[str] = None ) ->Tuple[str]:
if not os.path.isdir(_snake_case ):
logger.error(F'''Vocabulary path ({save_directory}) should be a directory''' )
return
snake_case__ : Optional[int] = os.path.join(
_snake_case, (filename_prefix + '-' if filename_prefix else '') + VOCAB_FILES_NAMES['vocab_file'] )
if os.path.abspath(self.vocab_file ) != os.path.abspath(_snake_case ):
copyfile(self.vocab_file, _snake_case )
return (out_vocab_file,)
| 277 |
from typing import TYPE_CHECKING
from ...utils import (
OptionalDependencyNotAvailable,
_LazyModule,
is_sentencepiece_available,
is_tokenizers_available,
is_torch_available,
)
a_ :Optional[Any] = {"configuration_reformer": ["REFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP", "ReformerConfig"]}
try:
if not is_sentencepiece_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :str = ["ReformerTokenizer"]
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :int = ["ReformerTokenizerFast"]
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :List[str] = [
"REFORMER_PRETRAINED_MODEL_ARCHIVE_LIST",
"ReformerAttention",
"ReformerForMaskedLM",
"ReformerForQuestionAnswering",
"ReformerForSequenceClassification",
"ReformerLayer",
"ReformerModel",
"ReformerModelWithLMHead",
"ReformerPreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_reformer import REFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP, ReformerConfig
try:
if not is_sentencepiece_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_reformer import ReformerTokenizer
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_reformer_fast import ReformerTokenizerFast
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_reformer import (
REFORMER_PRETRAINED_MODEL_ARCHIVE_LIST,
ReformerAttention,
ReformerForMaskedLM,
ReformerForQuestionAnswering,
ReformerForSequenceClassification,
ReformerLayer,
ReformerModel,
ReformerModelWithLMHead,
ReformerPreTrainedModel,
)
else:
import sys
a_ :Optional[Any] = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 277 | 1 |
from .configuration_bert_masked import MaskedBertConfig
from .modeling_bert_masked import (
MaskedBertForMultipleChoice,
MaskedBertForQuestionAnswering,
MaskedBertForSequenceClassification,
MaskedBertForTokenClassification,
MaskedBertModel,
)
from .modules import *
| 277 |
import itertools
import random
import unittest
import numpy as np
from transformers import BatchFeature, SpeechTaFeatureExtractor
from transformers.testing_utils import require_torch
from transformers.utils.import_utils import is_torch_available
from ...test_sequence_feature_extraction_common import SequenceFeatureExtractionTestMixin
if is_torch_available():
import torch
a_ :Any = random.Random()
def lowercase_ (A : int , A : Union[str, Any]=1.0 , A : List[str]=None , A : Any=None ):
if rng is None:
snake_case__ : List[str] = global_rng
snake_case__ : int = []
for batch_idx in range(shape[0] ):
values.append([] )
for _ in range(shape[1] ):
values[-1].append(rng.random() * scale )
return values
@require_torch
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
def __init__( self : Optional[Any], _snake_case : List[str], _snake_case : Tuple=7, _snake_case : Union[str, Any]=4_0_0, _snake_case : Any=2_0_0_0, _snake_case : Dict=1, _snake_case : Optional[Any]=0.0, _snake_case : List[Any]=1_6_0_0_0, _snake_case : List[Any]=True, _snake_case : List[Any]=8_0, _snake_case : Dict=1_6, _snake_case : str=6_4, _snake_case : Tuple="hann_window", _snake_case : Union[str, Any]=8_0, _snake_case : Optional[Any]=7_6_0_0, _snake_case : str=1e-10, _snake_case : Any=True, ) ->Union[str, Any]:
snake_case__ : Optional[int] = parent
snake_case__ : Optional[Any] = batch_size
snake_case__ : List[Any] = min_seq_length
snake_case__ : List[Any] = max_seq_length
snake_case__ : Any = (self.max_seq_length - self.min_seq_length) // (self.batch_size - 1)
snake_case__ : Tuple = feature_size
snake_case__ : List[Any] = padding_value
snake_case__ : Any = sampling_rate
snake_case__ : Dict = do_normalize
snake_case__ : Union[str, Any] = num_mel_bins
snake_case__ : Any = hop_length
snake_case__ : Any = win_length
snake_case__ : Any = win_function
snake_case__ : Optional[int] = fmin
snake_case__ : int = fmax
snake_case__ : Union[str, Any] = mel_floor
snake_case__ : Union[str, Any] = return_attention_mask
def lowercase_ ( self : Optional[int] ) ->List[str]:
return {
"feature_size": self.feature_size,
"padding_value": self.padding_value,
"sampling_rate": self.sampling_rate,
"do_normalize": self.do_normalize,
"num_mel_bins": self.num_mel_bins,
"hop_length": self.hop_length,
"win_length": self.win_length,
"win_function": self.win_function,
"fmin": self.fmin,
"fmax": self.fmax,
"mel_floor": self.mel_floor,
"return_attention_mask": self.return_attention_mask,
}
def lowercase_ ( self : Any, _snake_case : Optional[Any]=False, _snake_case : List[str]=False ) ->Union[str, Any]:
def _flatten(_snake_case : List[str] ):
return list(itertools.chain(*_snake_case ) )
if equal_length:
snake_case__ : Any = floats_list((self.batch_size, self.max_seq_length) )
else:
# make sure that inputs increase in size
snake_case__ : int = [
_flatten(floats_list((x, self.feature_size) ) )
for x in range(self.min_seq_length, self.max_seq_length, self.seq_length_diff )
]
if numpify:
snake_case__ : Any = [np.asarray(_snake_case ) for x in speech_inputs]
return speech_inputs
def lowercase_ ( self : Union[str, Any], _snake_case : str=False, _snake_case : Dict=False ) ->List[str]:
if equal_length:
snake_case__ : Optional[Any] = [floats_list((self.max_seq_length, self.num_mel_bins) ) for _ in range(self.batch_size )]
else:
# make sure that inputs increase in size
snake_case__ : List[str] = [
floats_list((x, self.num_mel_bins) )
for x in range(self.min_seq_length, self.max_seq_length, self.seq_length_diff )
]
if numpify:
snake_case__ : int = [np.asarray(_snake_case ) for x in speech_inputs]
return speech_inputs
@require_torch
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = SpeechTaFeatureExtractor
def lowercase_ ( self : int ) ->Union[str, Any]:
snake_case__ : List[str] = SpeechTaFeatureExtractionTester(self )
def lowercase_ ( self : Any, _snake_case : Dict ) ->Any:
self.assertTrue(np.all(np.mean(_snake_case, axis=0 ) < 1e-3 ) )
self.assertTrue(np.all(np.abs(np.var(_snake_case, axis=0 ) - 1 ) < 1e-3 ) )
def lowercase_ ( self : List[Any] ) ->Union[str, Any]:
# Tests that all call wrap to encode_plus and batch_encode_plus
snake_case__ : Optional[Any] = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
# create three inputs of length 800, 1000, and 1200
snake_case__ : int = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : Tuple = [np.asarray(_snake_case ) for speech_input in speech_inputs]
# Test not batched input
snake_case__ : str = feat_extract(speech_inputs[0], return_tensors='np' ).input_values
snake_case__ : List[str] = feat_extract(np_speech_inputs[0], return_tensors='np' ).input_values
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
# Test batched
snake_case__ : Any = feat_extract(_snake_case, return_tensors='np' ).input_values
snake_case__ : Union[str, Any] = feat_extract(_snake_case, return_tensors='np' ).input_values
for enc_seq_a, enc_seq_a in zip(_snake_case, _snake_case ):
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
def lowercase_ ( self : int ) ->Optional[int]:
snake_case__ : List[Any] = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : Tuple = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : int = ['longest', 'max_length', 'do_not_pad']
snake_case__ : List[str] = [None, 1_6_0_0, None]
for max_length, padding in zip(_snake_case, _snake_case ):
snake_case__ : Optional[int] = feat_extract(_snake_case, padding=_snake_case, max_length=_snake_case, return_tensors='np' )
snake_case__ : Optional[int] = processed.input_values
self._check_zero_mean_unit_variance(input_values[0][:8_0_0] )
self.assertTrue(input_values[0][8_0_0:].sum() < 1e-6 )
self._check_zero_mean_unit_variance(input_values[1][:1_0_0_0] )
self.assertTrue(input_values[0][1_0_0_0:].sum() < 1e-6 )
self._check_zero_mean_unit_variance(input_values[2][:1_2_0_0] )
def lowercase_ ( self : Union[str, Any] ) ->Optional[Any]:
snake_case__ : Optional[Any] = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : Tuple = range(8_0_0, 1_4_0_0, 2_0_0 )
snake_case__ : Optional[Any] = [floats_list((1, x) )[0] for x in lengths]
snake_case__ : Union[str, Any] = ['longest', 'max_length', 'do_not_pad']
snake_case__ : str = [None, 1_6_0_0, None]
for max_length, padding in zip(_snake_case, _snake_case ):
snake_case__ : List[str] = feat_extract(_snake_case, max_length=_snake_case, padding=_snake_case )
snake_case__ : Tuple = processed.input_values
self._check_zero_mean_unit_variance(input_values[0][:8_0_0] )
self._check_zero_mean_unit_variance(input_values[1][:1_0_0_0] )
self._check_zero_mean_unit_variance(input_values[2][:1_2_0_0] )
def lowercase_ ( self : List[Any] ) ->Optional[Any]:
snake_case__ : Any = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : str = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : Optional[Any] = feat_extract(
_snake_case, truncation=_snake_case, max_length=1_0_0_0, padding='max_length', return_tensors='np' )
snake_case__ : int = processed.input_values
self._check_zero_mean_unit_variance(input_values[0, :8_0_0] )
self._check_zero_mean_unit_variance(input_values[1] )
self._check_zero_mean_unit_variance(input_values[2] )
def lowercase_ ( self : int ) ->Union[str, Any]:
snake_case__ : str = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : Dict = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : str = feat_extract(
_snake_case, truncation=_snake_case, max_length=1_0_0_0, padding='longest', return_tensors='np' )
snake_case__ : Dict = processed.input_values
self._check_zero_mean_unit_variance(input_values[0, :8_0_0] )
self._check_zero_mean_unit_variance(input_values[1, :1_0_0_0] )
self._check_zero_mean_unit_variance(input_values[2] )
# make sure that if max_length < longest -> then pad to max_length
self.assertTrue(input_values.shape == (3, 1_0_0_0) )
snake_case__ : Tuple = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : List[str] = feat_extract(
_snake_case, truncation=_snake_case, max_length=2_0_0_0, padding='longest', return_tensors='np' )
snake_case__ : Optional[Any] = processed.input_values
self._check_zero_mean_unit_variance(input_values[0, :8_0_0] )
self._check_zero_mean_unit_variance(input_values[1, :1_0_0_0] )
self._check_zero_mean_unit_variance(input_values[2] )
# make sure that if max_length > longest -> then pad to longest
self.assertTrue(input_values.shape == (3, 1_2_0_0) )
def lowercase_ ( self : List[str] ) ->Dict:
snake_case__ : Dict = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : List[Any] = np.random.rand(1_0_0 ).astype(np.floataa )
snake_case__ : int = np_speech_inputs.tolist()
for inputs in [py_speech_inputs, np_speech_inputs]:
snake_case__ : int = feature_extractor.pad([{'input_values': inputs}], return_tensors='np' )
self.assertTrue(np_processed.input_values.dtype == np.floataa )
snake_case__ : Optional[int] = feature_extractor.pad([{'input_values': inputs}], return_tensors='pt' )
self.assertTrue(pt_processed.input_values.dtype == torch.floataa )
def lowercase_ ( self : Optional[int] ) ->Optional[Any]:
# Tests that all call wrap to encode_plus and batch_encode_plus
snake_case__ : str = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
# create three inputs of length 800, 1000, and 1200
snake_case__ : List[Any] = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : Dict = [np.asarray(_snake_case ) for speech_input in speech_inputs]
# Test feature size
snake_case__ : Optional[int] = feature_extractor(audio_target=_snake_case, padding=_snake_case, return_tensors='np' ).input_values
self.assertTrue(input_values.ndim == 3 )
self.assertTrue(input_values.shape[-1] == feature_extractor.num_mel_bins )
# Test not batched input
snake_case__ : Dict = feature_extractor(speech_inputs[0], return_tensors='np' ).input_values
snake_case__ : Any = feature_extractor(np_speech_inputs[0], return_tensors='np' ).input_values
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
# Test batched
snake_case__ : Dict = feature_extractor(_snake_case, return_tensors='np' ).input_values
snake_case__ : Dict = feature_extractor(_snake_case, return_tensors='np' ).input_values
for enc_seq_a, enc_seq_a in zip(_snake_case, _snake_case ):
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
# Test 2-D numpy arrays are batched.
snake_case__ : Optional[Any] = [floats_list((1, x) )[0] for x in (8_0_0, 8_0_0, 8_0_0)]
snake_case__ : int = np.asarray(_snake_case )
snake_case__ : Union[str, Any] = feature_extractor(_snake_case, return_tensors='np' ).input_values
snake_case__ : Union[str, Any] = feature_extractor(_snake_case, return_tensors='np' ).input_values
for enc_seq_a, enc_seq_a in zip(_snake_case, _snake_case ):
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
def lowercase_ ( self : Union[str, Any] ) ->str:
snake_case__ : int = self.feat_extract_tester.prepare_inputs_for_target()
snake_case__ : List[str] = self.feature_extraction_class(**self.feat_extract_dict )
snake_case__ : Optional[Any] = feat_extract.model_input_names[0]
snake_case__ : Tuple = BatchFeature({input_name: speech_inputs} )
self.assertTrue(all(len(_snake_case ) == len(_snake_case ) for x, y in zip(_snake_case, processed_features[input_name] ) ) )
snake_case__ : int = self.feat_extract_tester.prepare_inputs_for_target(equal_length=_snake_case )
snake_case__ : Union[str, Any] = BatchFeature({input_name: speech_inputs}, tensor_type='np' )
snake_case__ : Dict = processed_features[input_name]
if len(batch_features_input.shape ) < 3:
snake_case__ : List[str] = batch_features_input[:, :, None]
self.assertTrue(
batch_features_input.shape
== (self.feat_extract_tester.batch_size, len(speech_inputs[0] ), self.feat_extract_tester.num_mel_bins) )
@require_torch
def lowercase_ ( self : List[str] ) ->Any:
snake_case__ : int = self.feat_extract_tester.prepare_inputs_for_target(equal_length=_snake_case )
snake_case__ : Optional[Any] = self.feature_extraction_class(**self.feat_extract_dict )
snake_case__ : Tuple = feat_extract.model_input_names[0]
snake_case__ : List[Any] = BatchFeature({input_name: speech_inputs}, tensor_type='pt' )
snake_case__ : Tuple = processed_features[input_name]
if len(batch_features_input.shape ) < 3:
snake_case__ : Any = batch_features_input[:, :, None]
self.assertTrue(
batch_features_input.shape
== (self.feat_extract_tester.batch_size, len(speech_inputs[0] ), self.feat_extract_tester.num_mel_bins) )
@require_torch
def lowercase_ ( self : Optional[int] ) ->Tuple:
snake_case__ : Dict = self.feature_extraction_class(**self.feat_extract_dict )
snake_case__ : Union[str, Any] = self.feat_extract_tester.prepare_inputs_for_target()
snake_case__ : Optional[Any] = feat_extract.model_input_names[0]
snake_case__ : List[str] = BatchFeature({input_name: speech_inputs} )
snake_case__ : int = feat_extract.num_mel_bins # hack!
snake_case__ : Tuple = feat_extract.pad(_snake_case, padding='longest', return_tensors='np' )[input_name]
snake_case__ : Union[str, Any] = feat_extract.pad(_snake_case, padding='longest', return_tensors='pt' )[input_name]
self.assertTrue(abs(input_np.astype(np.floataa ).sum() - input_pt.numpy().astype(np.floataa ).sum() ) < 1e-2 )
def lowercase_ ( self : int ) ->Any:
snake_case__ : Any = self.feat_extract_dict
snake_case__ : List[Any] = True
snake_case__ : Union[str, Any] = self.feature_extraction_class(**_snake_case )
snake_case__ : Any = self.feat_extract_tester.prepare_inputs_for_target()
snake_case__ : List[Any] = [len(_snake_case ) for x in speech_inputs]
snake_case__ : Union[str, Any] = feat_extract.model_input_names[0]
snake_case__ : Optional[int] = BatchFeature({input_name: speech_inputs} )
snake_case__ : List[str] = feat_extract.num_mel_bins # hack!
snake_case__ : str = feat_extract.pad(_snake_case, padding='longest', return_tensors='np' )
self.assertIn('attention_mask', _snake_case )
self.assertListEqual(list(processed.attention_mask.shape ), list(processed[input_name].shape[:2] ) )
self.assertListEqual(processed.attention_mask.sum(-1 ).tolist(), _snake_case )
def lowercase_ ( self : Optional[int] ) ->str:
snake_case__ : int = self.feat_extract_dict
snake_case__ : List[str] = True
snake_case__ : Tuple = self.feature_extraction_class(**_snake_case )
snake_case__ : List[str] = self.feat_extract_tester.prepare_inputs_for_target()
snake_case__ : str = [len(_snake_case ) for x in speech_inputs]
snake_case__ : Optional[Any] = feat_extract.model_input_names[0]
snake_case__ : Optional[int] = BatchFeature({input_name: speech_inputs} )
snake_case__ : Optional[Any] = min(_snake_case )
snake_case__ : Union[str, Any] = feat_extract.num_mel_bins # hack!
snake_case__ : Tuple = feat_extract.pad(
_snake_case, padding='max_length', max_length=_snake_case, truncation=_snake_case, return_tensors='np' )
self.assertIn('attention_mask', _snake_case )
self.assertListEqual(
list(processed_pad.attention_mask.shape ), [processed_pad[input_name].shape[0], max_length] )
self.assertListEqual(
processed_pad.attention_mask[:, :max_length].sum(-1 ).tolist(), [max_length for x in speech_inputs] )
def lowercase_ ( self : List[Any], _snake_case : Optional[int] ) ->Optional[Any]:
from datasets import load_dataset
snake_case__ : str = load_dataset('hf-internal-testing/librispeech_asr_dummy', 'clean', split='validation' )
# automatic decoding with librispeech
snake_case__ : Dict = ds.sort('id' ).select(range(_snake_case ) )[:num_samples]['audio']
return [x["array"] for x in speech_samples]
def lowercase_ ( self : str ) ->str:
# fmt: off
snake_case__ : List[Any] = torch.tensor(
[2.3804e-03, 2.0752e-03, 1.9836e-03, 2.1057e-03, 1.6174e-03,
3.0518e-04, 9.1553e-05, 3.3569e-04, 9.7656e-04, 1.8311e-03,
2.0142e-03, 2.1057e-03, 1.7395e-03, 4.5776e-04, -3.9673e-04,
4.5776e-04, 1.0071e-03, 9.1553e-05, 4.8828e-04, 1.1597e-03,
7.3242e-04, 9.4604e-04, 1.8005e-03, 1.8311e-03, 8.8501e-04,
4.2725e-04, 4.8828e-04, 7.3242e-04, 1.0986e-03, 2.1057e-03] )
# fmt: on
snake_case__ : Union[str, Any] = self._load_datasamples(1 )
snake_case__ : Optional[int] = SpeechTaFeatureExtractor()
snake_case__ : List[Any] = feature_extractor(_snake_case, return_tensors='pt' ).input_values
self.assertEquals(input_values.shape, (1, 9_3_6_8_0) )
self.assertTrue(torch.allclose(input_values[0, :3_0], _snake_case, atol=1e-6 ) )
def lowercase_ ( self : Any ) ->str:
# fmt: off
snake_case__ : Optional[Any] = torch.tensor(
[-2.6_8_7_0, -3.0_1_0_4, -3.1_3_5_6, -3.5_3_5_2, -3.0_0_4_4, -3.0_3_5_3, -3.4_7_1_9, -3.6_7_7_7,
-3.1_5_2_0, -2.9_4_3_5, -2.6_5_5_3, -2.8_7_9_5, -2.9_9_4_4, -2.5_9_2_1, -3.0_2_7_9, -3.0_3_8_6,
-3.0_8_6_4, -3.1_2_9_1, -3.2_3_5_3, -2.7_4_4_4, -2.6_8_3_1, -2.7_2_8_7, -3.1_7_6_1, -3.1_5_7_1,
-3.2_7_2_6, -3.0_5_8_2, -3.1_0_0_7, -3.4_5_3_3, -3.4_6_9_5, -3.0_9_9_8] )
# fmt: on
snake_case__ : List[str] = self._load_datasamples(1 )
snake_case__ : str = SpeechTaFeatureExtractor()
snake_case__ : Optional[Any] = feature_extractor(audio_target=_snake_case, return_tensors='pt' ).input_values
self.assertEquals(input_values.shape, (1, 3_6_6, 8_0) )
self.assertTrue(torch.allclose(input_values[0, 0, :3_0], _snake_case, atol=1e-4 ) )
| 277 | 1 |
from collections.abc import Generator
def lowercase_ ():
snake_case__ , snake_case__ : Union[str, Any] = 0, 1
while True:
snake_case__ , snake_case__ : int = b, a + b
yield b
def lowercase_ (A : int = 1_0_0_0 ):
snake_case__ : Any = 1
snake_case__ : Optional[int] = fibonacci_generator()
while len(str(next(A ) ) ) < n:
answer += 1
return answer + 1
if __name__ == "__main__":
print(solution(int(str(input()).strip())))
| 277 |
# Copyright 2023 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from ..models.auto import AutoModelForSeqaSeqLM, AutoTokenizer
from .base import PipelineTool
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = """philschmid/bart-large-cnn-samsum"""
_SCREAMING_SNAKE_CASE = (
"""This is a tool that summarizes an English text. It takes an input `text` containing the text to summarize, """
"""and returns a summary of the text."""
)
_SCREAMING_SNAKE_CASE = """summarizer"""
_SCREAMING_SNAKE_CASE = AutoTokenizer
_SCREAMING_SNAKE_CASE = AutoModelForSeqaSeqLM
_SCREAMING_SNAKE_CASE = ["""text"""]
_SCREAMING_SNAKE_CASE = ["""text"""]
def lowercase_ ( self : Optional[Any], _snake_case : str ) ->Any:
return self.pre_processor(_snake_case, return_tensors='pt', truncation=_snake_case )
def lowercase_ ( self : int, _snake_case : List[Any] ) ->Any:
return self.model.generate(**_snake_case )[0]
def lowercase_ ( self : int, _snake_case : int ) ->str:
return self.pre_processor.decode(_snake_case, skip_special_tokens=_snake_case, clean_up_tokenization_spaces=_snake_case )
| 277 | 1 |
import argparse
import os
import re
a_ :str = "src/transformers"
# Pattern that looks at the indentation in a line.
a_ :int = re.compile(R"^(\s*)\S")
# Pattern that matches `"key":" and puts `key` in group 0.
a_ :List[Any] = re.compile(R"^\s*\"([^\"]+)\":")
# Pattern that matches `_import_structure["key"]` and puts `key` in group 0.
a_ :Tuple = re.compile(R"^\s*_import_structure\[\"([^\"]+)\"\]")
# Pattern that matches `"key",` and puts `key` in group 0.
a_ :List[Any] = re.compile(R"^\s*\"([^\"]+)\",\s*$")
# Pattern that matches any `[stuff]` and puts `stuff` in group 0.
a_ :List[Any] = re.compile(R"\[([^\]]+)\]")
def lowercase_ (A : Optional[Any] ):
snake_case__ : Dict = _re_indent.search(A )
return "" if search is None else search.groups()[0]
def lowercase_ (A : Optional[Any] , A : Any="" , A : List[str]=None , A : List[str]=None ):
snake_case__ : List[str] = 0
snake_case__ : Tuple = code.split('\n' )
if start_prompt is not None:
while not lines[index].startswith(A ):
index += 1
snake_case__ : Dict = ['\n'.join(lines[:index] )]
else:
snake_case__ : Union[str, Any] = []
# We split into blocks until we get to the `end_prompt` (or the end of the block).
snake_case__ : List[str] = [lines[index]]
index += 1
while index < len(A ) and (end_prompt is None or not lines[index].startswith(A )):
if len(lines[index] ) > 0 and get_indent(lines[index] ) == indent_level:
if len(A ) > 0 and get_indent(current_block[-1] ).startswith(indent_level + ' ' ):
current_block.append(lines[index] )
blocks.append('\n'.join(A ) )
if index < len(A ) - 1:
snake_case__ : List[str] = [lines[index + 1]]
index += 1
else:
snake_case__ : List[str] = []
else:
blocks.append('\n'.join(A ) )
snake_case__ : Dict = [lines[index]]
else:
current_block.append(lines[index] )
index += 1
# Adds current block if it's nonempty.
if len(A ) > 0:
blocks.append('\n'.join(A ) )
# Add final block after end_prompt if provided.
if end_prompt is not None and index < len(A ):
blocks.append('\n'.join(lines[index:] ) )
return blocks
def lowercase_ (A : List[Any] ):
def _inner(A : Dict ):
return key(A ).lower().replace('_' , '' )
return _inner
def lowercase_ (A : str , A : str=None ):
# If no key is provided, we use a noop.
def noop(A : Any ):
return x
if key is None:
snake_case__ : Optional[int] = noop
# Constants are all uppercase, they go first.
snake_case__ : List[str] = [obj for obj in objects if key(A ).isupper()]
# Classes are not all uppercase but start with a capital, they go second.
snake_case__ : str = [obj for obj in objects if key(A )[0].isupper() and not key(A ).isupper()]
# Functions begin with a lowercase, they go last.
snake_case__ : Union[str, Any] = [obj for obj in objects if not key(A )[0].isupper()]
snake_case__ : Optional[Any] = ignore_underscore(A )
return sorted(A , key=A ) + sorted(A , key=A ) + sorted(A , key=A )
def lowercase_ (A : int ):
# This inner function sort imports between [ ].
def _replace(A : int ):
snake_case__ : Dict = match.groups()[0]
if "," not in imports:
return F'''[{imports}]'''
snake_case__ : List[Any] = [part.strip().replace('"' , '' ) for part in imports.split(',' )]
# We will have a final empty element if the line finished with a comma.
if len(keys[-1] ) == 0:
snake_case__ : List[Any] = keys[:-1]
return "[" + ", ".join([F'''"{k}"''' for k in sort_objects(A )] ) + "]"
snake_case__ : Tuple = import_statement.split('\n' )
if len(A ) > 3:
# Here we have to sort internal imports that are on several lines (one per name):
# key: [
# "object1",
# "object2",
# ...
# ]
# We may have to ignore one or two lines on each side.
snake_case__ : Optional[int] = 2 if lines[1].strip() == '[' else 1
snake_case__ : Dict = [(i, _re_strip_line.search(A ).groups()[0]) for i, line in enumerate(lines[idx:-idx] )]
snake_case__ : Any = sort_objects(A , key=lambda A : x[1] )
snake_case__ : List[Any] = [lines[x[0] + idx] for x in sorted_indices]
return "\n".join(lines[:idx] + sorted_lines + lines[-idx:] )
elif len(A ) == 3:
# Here we have to sort internal imports that are on one separate line:
# key: [
# "object1", "object2", ...
# ]
if _re_bracket_content.search(lines[1] ) is not None:
snake_case__ : List[str] = _re_bracket_content.sub(_replace , lines[1] )
else:
snake_case__ : List[str] = [part.strip().replace('"' , '' ) for part in lines[1].split(',' )]
# We will have a final empty element if the line finished with a comma.
if len(keys[-1] ) == 0:
snake_case__ : Any = keys[:-1]
snake_case__ : Optional[Any] = get_indent(lines[1] ) + ', '.join([F'''"{k}"''' for k in sort_objects(A )] )
return "\n".join(A )
else:
# Finally we have to deal with imports fitting on one line
snake_case__ : Optional[Any] = _re_bracket_content.sub(_replace , A )
return import_statement
def lowercase_ (A : int , A : Tuple=True ):
with open(A , encoding='utf-8' ) as f:
snake_case__ : Optional[Any] = f.read()
if "_import_structure" not in code:
return
# Blocks of indent level 0
snake_case__ : List[Any] = split_code_in_indented_blocks(
A , start_prompt='_import_structure = {' , end_prompt='if TYPE_CHECKING:' )
# We ignore block 0 (everything untils start_prompt) and the last block (everything after end_prompt).
for block_idx in range(1 , len(A ) - 1 ):
# Check if the block contains some `_import_structure`s thingy to sort.
snake_case__ : Dict = main_blocks[block_idx]
snake_case__ : str = block.split('\n' )
# Get to the start of the imports.
snake_case__ : List[str] = 0
while line_idx < len(A ) and "_import_structure" not in block_lines[line_idx]:
# Skip dummy import blocks
if "import dummy" in block_lines[line_idx]:
snake_case__ : str = len(A )
else:
line_idx += 1
if line_idx >= len(A ):
continue
# Ignore beginning and last line: they don't contain anything.
snake_case__ : str = '\n'.join(block_lines[line_idx:-1] )
snake_case__ : Tuple = get_indent(block_lines[1] )
# Slit the internal block into blocks of indent level 1.
snake_case__ : str = split_code_in_indented_blocks(A , indent_level=A )
# We have two categories of import key: list or _import_structure[key].append/extend
snake_case__ : List[Any] = _re_direct_key if '_import_structure = {' in block_lines[0] else _re_indirect_key
# Grab the keys, but there is a trap: some lines are empty or just comments.
snake_case__ : int = [(pattern.search(A ).groups()[0] if pattern.search(A ) is not None else None) for b in internal_blocks]
# We only sort the lines with a key.
snake_case__ : Optional[Any] = [(i, key) for i, key in enumerate(A ) if key is not None]
snake_case__ : Union[str, Any] = [x[0] for x in sorted(A , key=lambda A : x[1] )]
# We reorder the blocks by leaving empty lines/comments as they were and reorder the rest.
snake_case__ : Optional[Any] = 0
snake_case__ : List[Any] = []
for i in range(len(A ) ):
if keys[i] is None:
reorderded_blocks.append(internal_blocks[i] )
else:
snake_case__ : Any = sort_objects_in_import(internal_blocks[sorted_indices[count]] )
reorderded_blocks.append(A )
count += 1
# And we put our main block back together with its first and last line.
snake_case__ : Union[str, Any] = '\n'.join(block_lines[:line_idx] + reorderded_blocks + [block_lines[-1]] )
if code != "\n".join(A ):
if check_only:
return True
else:
print(F'''Overwriting {file}.''' )
with open(A , 'w' , encoding='utf-8' ) as f:
f.write('\n'.join(A ) )
def lowercase_ (A : Union[str, Any]=True ):
snake_case__ : Optional[Any] = []
for root, _, files in os.walk(A ):
if "__init__.py" in files:
snake_case__ : Optional[int] = sort_imports(os.path.join(A , '__init__.py' ) , check_only=A )
if result:
snake_case__ : str = [os.path.join(A , '__init__.py' )]
if len(A ) > 0:
raise ValueError(F'''Would overwrite {len(A )} files, run `make style`.''' )
if __name__ == "__main__":
a_ :Union[str, Any] = argparse.ArgumentParser()
parser.add_argument("--check_only", action="store_true", help="Whether to only check or fix style.")
a_ :Tuple = parser.parse_args()
sort_imports_in_all_inits(check_only=args.check_only)
| 277 |
import argparse
import torch
from transformers import LxmertConfig, LxmertForPreTraining, load_tf_weights_in_lxmert
from transformers.utils import logging
logging.set_verbosity_info()
def lowercase_ (A : str , A : List[Any] , A : Any ):
# Initialise PyTorch model
snake_case__ : List[Any] = LxmertConfig.from_json_file(A )
print(F'''Building PyTorch model from configuration: {config}''' )
snake_case__ : List[str] = LxmertForPreTraining(A )
# Load weights from tf checkpoint
load_tf_weights_in_lxmert(A , A , A )
# Save pytorch-model
print(F'''Save PyTorch model to {pytorch_dump_path}''' )
torch.save(model.state_dict() , A )
if __name__ == "__main__":
a_ :Union[str, Any] = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--tf_checkpoint_path", default=None, type=str, required=True, help="Path to the TensorFlow checkpoint path."
)
parser.add_argument(
"--config_file",
default=None,
type=str,
required=True,
help="The config json file corresponding to the pre-trained model. \nThis specifies the model architecture.",
)
parser.add_argument(
"--pytorch_dump_path", default=None, type=str, required=True, help="Path to the output PyTorch model."
)
a_ :Optional[int] = parser.parse_args()
convert_tf_checkpoint_to_pytorch(args.tf_checkpoint_path, args.config_file, args.pytorch_dump_path)
| 277 | 1 |
import baseaa
import io
import json
import os
from copy import deepcopy
from ..optimizer import AcceleratedOptimizer
from ..scheduler import AcceleratedScheduler
class snake_case__ :
"""simple docstring"""
def __init__( self : str, _snake_case : Union[str, Any] ) ->Optional[int]:
if isinstance(_snake_case, _snake_case ):
# Don't modify user's data should they want to reuse it (e.g. in tests), because once we
# modified it, it will not be accepted here again, since `auto` values would have been overridden
snake_case__ : Optional[Any] = deepcopy(_snake_case )
elif os.path.exists(_snake_case ):
with io.open(_snake_case, 'r', encoding='utf-8' ) as f:
snake_case__ : Optional[int] = json.load(_snake_case )
else:
try:
snake_case__ : Dict = baseaa.urlsafe_baadecode(_snake_case ).decode('utf-8' )
snake_case__ : Optional[Any] = json.loads(_snake_case )
except (UnicodeDecodeError, AttributeError, ValueError):
raise ValueError(
F'''Expected a string path to an existing deepspeed config, or a dictionary, or a base64 encoded string. Received: {config_file_or_dict}''' )
snake_case__ : List[Any] = config
self.set_stage_and_offload()
def lowercase_ ( self : str ) ->Optional[int]:
# zero stage - this is done as early as possible, before model is created, to allow
# ``is_deepspeed_zero3_enabled`` query and getting to the early deepspeed config object
# during ``zero.Init()`` which needs to know the dtype, and some other hparams.
snake_case__ : Dict = self.get_value('zero_optimization.stage', -1 )
# offload
snake_case__ : Optional[int] = False
if self.is_zeroa() or self.is_zeroa():
snake_case__ : int = set(['cpu', 'nvme'] )
snake_case__ : Any = set(
[
self.get_value('zero_optimization.offload_optimizer.device' ),
self.get_value('zero_optimization.offload_param.device' ),
] )
if len(offload_devices & offload_devices_valid ) > 0:
snake_case__ : Tuple = True
def lowercase_ ( self : Dict, _snake_case : int ) ->Optional[int]:
snake_case__ : int = self.config
# find the config node of interest if it exists
snake_case__ : Optional[Any] = ds_key_long.split('.' )
snake_case__ : Any = nodes.pop()
for node in nodes:
snake_case__ : Optional[Any] = config.get(_snake_case )
if config is None:
return None, ds_key
return config, ds_key
def lowercase_ ( self : str, _snake_case : Union[str, Any], _snake_case : str=None ) ->Any:
snake_case__ , snake_case__ : Dict = self.find_config_node(_snake_case )
if config is None:
return default
return config.get(_snake_case, _snake_case )
def lowercase_ ( self : Optional[int], _snake_case : int, _snake_case : Any=False ) ->Tuple:
snake_case__ : Any = self.config
# find the config node of interest if it exists
snake_case__ : List[str] = ds_key_long.split('.' )
for node in nodes:
snake_case__ : Any = config
snake_case__ : Optional[Any] = config.get(_snake_case )
if config is None:
if must_exist:
raise ValueError(F'''Can\'t find {ds_key_long} entry in the config: {self.config}''' )
else:
return
# if found remove it
if parent_config is not None:
parent_config.pop(_snake_case )
def lowercase_ ( self : List[Any], _snake_case : Union[str, Any] ) ->Tuple:
snake_case__ : Any = self.get_value(_snake_case )
return False if value is None else bool(_snake_case )
def lowercase_ ( self : Union[str, Any], _snake_case : int ) ->Union[str, Any]:
snake_case__ : Any = self.get_value(_snake_case )
return False if value is None else not bool(_snake_case )
def lowercase_ ( self : int ) ->int:
return self._stage == 2
def lowercase_ ( self : Optional[Any] ) ->List[Any]:
return self._stage == 3
def lowercase_ ( self : Union[str, Any] ) ->List[str]:
return self._offload
class snake_case__ :
"""simple docstring"""
def __init__( self : Any, _snake_case : List[str] ) ->Union[str, Any]:
snake_case__ : Tuple = engine
def lowercase_ ( self : int, _snake_case : int, **_snake_case : Optional[int] ) ->Union[str, Any]:
# runs backpropagation and handles mixed precision
self.engine.backward(_snake_case, **_snake_case )
# Deepspeed's `engine.step` performs the following operations:
# - gradient accumulation check
# - gradient clipping
# - optimizer step
# - zero grad
# - checking overflow
# - lr_scheduler step (only if engine.lr_scheduler is not None)
self.engine.step()
# and this plugin overrides the above calls with no-ops when Accelerate runs under
# Deepspeed, but allows normal functionality for non-Deepspeed cases thus enabling a simple
# training loop that works transparently under many training regimes.
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
def __init__( self : Any, _snake_case : int ) ->Union[str, Any]:
super().__init__(_snake_case, device_placement=_snake_case, scaler=_snake_case )
snake_case__ : Optional[Any] = hasattr(self.optimizer, 'overflow' )
def lowercase_ ( self : Any, _snake_case : Dict=None ) ->Optional[int]:
pass # `accelerator.backward(loss)` is doing that automatically. Therefore, its implementation is not needed
def lowercase_ ( self : Union[str, Any] ) ->Dict:
pass # `accelerator.backward(loss)` is doing that automatically. Therefore, its implementation is not needed
@property
def lowercase_ ( self : str ) ->Any:
if self.__has_overflow__:
return self.optimizer.overflow
return False
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
def __init__( self : Dict, _snake_case : int, _snake_case : Any ) ->List[Any]:
super().__init__(_snake_case, _snake_case )
def lowercase_ ( self : str ) ->Optional[int]:
pass # `accelerator.backward(loss)` is doing that automatically. Therefore, its implementation is not needed
class snake_case__ :
"""simple docstring"""
def __init__( self : List[str], _snake_case : int, _snake_case : List[str]=0.0_0_1, _snake_case : Any=0, **_snake_case : str ) ->Union[str, Any]:
snake_case__ : Optional[int] = params
snake_case__ : Optional[Any] = lr
snake_case__ : Optional[int] = weight_decay
snake_case__ : int = kwargs
class snake_case__ :
"""simple docstring"""
def __init__( self : Any, _snake_case : int, _snake_case : Union[str, Any]=None, _snake_case : Dict=0, **_snake_case : Any ) ->List[Any]:
snake_case__ : Union[str, Any] = optimizer
snake_case__ : Union[str, Any] = total_num_steps
snake_case__ : Union[str, Any] = warmup_num_steps
snake_case__ : Optional[int] = kwargs
| 277 |
import argparse
import fairseq
import torch
from torch import nn
from transformers import (
MBartaaTokenizer,
MBartConfig,
MBartForCausalLM,
SpeechEncoderDecoderConfig,
SpeechEncoderDecoderModel,
WavaVecaConfig,
WavaVecaFeatureExtractor,
WavaVecaModel,
logging,
)
logging.set_verbosity_info()
a_ :Tuple = logging.get_logger(__name__)
a_ :List[Any] = {
"post_extract_proj": "feature_projection.projection",
"encoder.pos_conv.0": "encoder.pos_conv_embed.conv",
"self_attn.k_proj": "encoder.layers.*.attention.k_proj",
"self_attn.v_proj": "encoder.layers.*.attention.v_proj",
"self_attn.q_proj": "encoder.layers.*.attention.q_proj",
"self_attn.out_proj": "encoder.layers.*.attention.out_proj",
"self_attn_layer_norm": "encoder.layers.*.layer_norm",
"fc1": "encoder.layers.*.feed_forward.intermediate_dense",
"fc2": "encoder.layers.*.feed_forward.output_dense",
"final_layer_norm": "encoder.layers.*.final_layer_norm",
"encoder.layer_norm": "encoder.layer_norm",
"w2v_model.layer_norm": "feature_projection.layer_norm",
"quantizer.weight_proj": "quantizer.weight_proj",
"quantizer.vars": "quantizer.codevectors",
"project_q": "project_q",
"final_proj": "project_hid",
"w2v_encoder.proj": "lm_head",
"mask_emb": "masked_spec_embed",
}
a_ :Optional[int] = [
"lm_head",
"quantizer.weight_proj",
"quantizer.codevectors",
"project_q",
"project_hid",
]
def lowercase_ (A : Union[str, Any] , A : str , A : Dict , A : Optional[Any] , A : Optional[Any] ):
for attribute in key.split('.' ):
snake_case__ : Any = getattr(A , A )
if weight_type is not None:
snake_case__ : Optional[Any] = getattr(A , A ).shape
else:
snake_case__ : Optional[int] = hf_pointer.shape
assert hf_shape == value.shape, (
F'''Shape of hf {key + "." + weight_type if weight_type is not None else ""} is {hf_shape}, but should be'''
F''' {value.shape} for {full_name}'''
)
if weight_type == "weight":
snake_case__ : Tuple = value
elif weight_type == "weight_g":
snake_case__ : Tuple = value
elif weight_type == "weight_v":
snake_case__ : List[Any] = value
elif weight_type == "bias":
snake_case__ : List[Any] = value
else:
snake_case__ : Optional[Any] = value
logger.info(F'''{key + "." + weight_type if weight_type is not None else ""} was initialized from {full_name}.''' )
def lowercase_ (A : str , A : Any ):
snake_case__ : Union[str, Any] = []
snake_case__ : Union[str, Any] = fairseq_model.state_dict()
snake_case__ : Union[str, Any] = hf_model.feature_extractor
snake_case__ : Any = hf_model.adapter
for name, value in fairseq_dict.items():
snake_case__ : Any = False
if "conv_layers" in name:
load_conv_layer(
A , A , A , A , hf_model.config.feat_extract_norm == 'group' , )
snake_case__ : List[Any] = True
elif any(x in name for x in ['adaptor', 'w2v_encoder.proj.', 'w2v_proj_ln.'] ):
load_adapter(A , A , A , A )
snake_case__ : Optional[Any] = True
else:
for key, mapped_key in MAPPING.items():
if key in name or key.split('w2v_model.' )[-1] == name.split('.' )[0]:
snake_case__ : Tuple = True
if "*" in mapped_key:
snake_case__ : List[Any] = name.split(A )[0].split('.' )[-2]
snake_case__ : Optional[int] = mapped_key.replace('*' , A )
if "weight_g" in name:
snake_case__ : Optional[int] = 'weight_g'
elif "weight_v" in name:
snake_case__ : Optional[Any] = 'weight_v'
elif "bias" in name:
snake_case__ : Union[str, Any] = 'bias'
elif "weight" in name:
snake_case__ : Optional[int] = 'weight'
else:
snake_case__ : Tuple = None
set_recursively(A , A , A , A , A )
continue
if not is_used:
unused_weights.append(A )
logger.warning(F'''Unused weights: {unused_weights}''' )
def lowercase_ (A : Union[str, Any] , A : Any , A : str , A : str , A : int ):
snake_case__ : str = full_name.split('conv_layers.' )[-1]
snake_case__ : Optional[int] = name.split('.' )
snake_case__ : Tuple = int(items[0] )
snake_case__ : Any = int(items[1] )
if type_id == 0:
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.bias.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.bias.data.shape} was found.'''
)
snake_case__ : Union[str, Any] = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.weight.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.weight.data.shape} was found.'''
)
snake_case__ : Union[str, Any] = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif (type_id == 2 and not use_group_norm) or (type_id == 2 and layer_id == 0 and use_group_norm):
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape, (
F'''{full_name} has size {value.shape}, but {feature_extractor[layer_id].layer_norm.bias.data.shape} was'''
" found."
)
snake_case__ : Optional[int] = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor[layer_id].layer_norm.weight.data.shape} was found.'''
)
snake_case__ : Optional[Any] = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
else:
unused_weights.append(A )
def lowercase_ (A : Optional[Any] , A : Any , A : Tuple , A : Any ):
snake_case__ : List[str] = full_name.split('adaptor.' )[-1]
snake_case__ : Tuple = name.split('.' )
if items[1].isdigit():
snake_case__ : Optional[int] = int(items[1] )
else:
snake_case__ : Any = None
if "adaptor" not in full_name:
if "proj_ln" in full_name:
# has to be layer norm
if "bias" in name:
assert (
value.shape == adapter.proj_layer_norm.bias.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj_layer_norm.bias.data.shape} was found.'''
snake_case__ : List[Any] = value
logger.info(F'''Adapter proj layer norm bias was initialized from {full_name}.''' )
if "weight" in name:
assert (
value.shape == adapter.proj_layer_norm.weight.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj_layer_norm.weight.data.shape} was found.'''
snake_case__ : int = value
else:
# has to be projection layer
if "bias" in name:
assert (
value.shape == adapter.proj.bias.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj.bias.data.shape} was found.'''
snake_case__ : str = value
logger.info(F'''Adapter proj layer bias was initialized from {full_name}.''' )
if "weight" in name:
assert (
value.shape == adapter.proj.weight.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj.weight.data.shape} was found.'''
snake_case__ : Dict = value
logger.info(F'''Adapter proj layer weight was initialized from {full_name}.''' )
elif isinstance(A , A ):
if "bias" in name:
assert (
value.shape == adapter.layers[layer_id].conv.bias.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.layers[layer_id].conv.bias.data.shape} was found.'''
snake_case__ : List[str] = value
logger.info(F'''Adapter layer {layer_id} bias was initialized from {full_name}.''' )
elif "weight" in name:
assert (
value.shape == adapter.layers[layer_id].conv.weight.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.layers[layer_id].conv.weight.data.shape} was found.'''
snake_case__ : List[str] = value
logger.info(F'''Adapter layer {layer_id} bias was initialized from {full_name}.''' )
else:
unused_weights.append(A )
def lowercase_ (A : int ):
snake_case__ , snake_case__ : Union[str, Any] = emb.weight.shape
snake_case__ : int = nn.Linear(A , A , bias=A )
snake_case__ : Optional[Any] = emb.weight.data
return lin_layer
@torch.no_grad()
def lowercase_ (A : Tuple , A : Tuple , A : Any , A : Optional[Any] , A : int , A : Optional[Any] , A : Union[str, Any] , A : Union[str, Any] , A : Optional[Any] , A : List[Any] , A : Union[str, Any] , ):
snake_case__ : Optional[Any] = WavaVecaConfig.from_pretrained(
A , add_adapter=A , adapter_stride=A , adapter_kernel_size=A , use_auth_token=A , output_hidden_size=A , )
snake_case__ : Dict = MBartConfig.from_pretrained(A )
# load model
snake_case__ , snake_case__ , snake_case__ : Any = fairseq.checkpoint_utils.load_model_ensemble_and_task(
[checkpoint_path] , arg_overrides={
'config_yaml': config_yaml_path,
'data': '/'.join(dict_path.split('/' )[:-1] ),
'w2v_path': checkpoint_path,
'load_pretrained_decoder_from': None,
} , )
snake_case__ : List[Any] = model[0].eval()
# load feature extractor
snake_case__ : str = WavaVecaFeatureExtractor.from_pretrained(A , use_auth_token=A )
# set weights for wav2vec2 encoder
snake_case__ : List[str] = WavaVecaModel(A )
recursively_load_weights_wavaveca(model.encoder , A )
# load decoder weights
snake_case__ : Any = MBartForCausalLM(A )
snake_case__ , snake_case__ : int = hf_decoder.model.decoder.load_state_dict(model.decoder.state_dict() , strict=A )
logger.warning(F'''The following keys are missing when loading the decoder weights: {missing_keys}''' )
logger.warning(F'''The following keys are unexpected when loading the decoder weights: {unexpected_keys}''' )
snake_case__ : Union[str, Any] = SpeechEncoderDecoderModel(encoder=A , decoder=A )
snake_case__ : str = False
snake_case__ : int = MBartaaTokenizer(A )
tokenizer.save_pretrained(A )
snake_case__ : Any = hf_wavavec.config.to_dict()
snake_case__ : Tuple = tokenizer.pad_token_id
snake_case__ : Union[str, Any] = tokenizer.bos_token_id
snake_case__ : Dict = tokenizer.eos_token_id
snake_case__ : Optional[int] = 'mbart50'
snake_case__ : Union[str, Any] = 'wav2vec2'
snake_case__ : List[str] = tokenizer.eos_token_id
snake_case__ : Union[str, Any] = 2_5_0_0_0_4
snake_case__ : int = tokenizer.eos_token_id
snake_case__ : Union[str, Any] = SpeechEncoderDecoderConfig.from_dict(A )
hf_wavavec.save_pretrained(A )
feature_extractor.save_pretrained(A )
if __name__ == "__main__":
a_ :str = argparse.ArgumentParser()
parser.add_argument("--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model.")
parser.add_argument("--checkpoint_path", default=None, type=str, help="Path to fairseq checkpoint")
parser.add_argument("--dict_path", default=None, type=str, help="Path to dict of fine-tuned model")
parser.add_argument("--config_yaml_path", default=None, type=str, help="Path to yaml file of fine-tuned model")
parser.add_argument(
"--encoder_config_path",
default="facebook/wav2vec2-xls-r-1b",
type=str,
help="Path to hf encoder wav2vec2 checkpoint config",
)
parser.add_argument(
"--decoder_config_path",
default="facebook/mbart-large-50-one-to-many-mmt",
type=str,
help="Path to hf decoder checkpoint config",
)
parser.add_argument("--add_adapter", default=True, type=bool, help="whethere to add model adapter layers")
parser.add_argument("--adapter_stride", default=2, type=int, help="stride of adapter layers")
parser.add_argument("--adapter_kernel_size", default=3, type=int, help="kernel size of adapter layers")
parser.add_argument("--encoder_output_dim", default=1_024, type=int, help="encoder output dim")
parser.add_argument("--start_token_id", default=250_004, type=int, help="`decoder_start_token_id` of model config")
a_ :Union[str, Any] = parser.parse_args()
convert_wavaveca_checkpoint(
args.checkpoint_path,
args.pytorch_dump_folder_path,
args.dict_path,
args.config_yaml_path,
encoder_config_path=args.encoder_config_path,
decoder_config_path=args.decoder_config_path,
add_adapter=args.add_adapter,
adapter_kernel_size=args.adapter_kernel_size,
adapter_stride=args.adapter_stride,
decoder_start_token_id=args.start_token_id,
encoder_output_dim=args.encoder_output_dim,
)
| 277 | 1 |
from typing import List, Optional, Union
from ...image_utils import ImageInput
from ...processing_utils import ProcessorMixin
from ...tokenization_utils_base import BatchEncoding, PaddingStrategy, PreTokenizedInput, TextInput, TruncationStrategy
from ...utils import TensorType
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = ["""image_processor""", """tokenizer"""]
_SCREAMING_SNAKE_CASE = """BlipImageProcessor"""
_SCREAMING_SNAKE_CASE = """AutoTokenizer"""
def __init__( self : List[str], _snake_case : Union[str, Any], _snake_case : Any ) ->Optional[int]:
snake_case__ : List[str] = False
super().__init__(_snake_case, _snake_case )
snake_case__ : int = self.image_processor
def __call__( self : List[str], _snake_case : ImageInput = None, _snake_case : Union[TextInput, PreTokenizedInput, List[TextInput], List[PreTokenizedInput]] = None, _snake_case : bool = True, _snake_case : Union[bool, str, PaddingStrategy] = False, _snake_case : Union[bool, str, TruncationStrategy] = None, _snake_case : Optional[int] = None, _snake_case : int = 0, _snake_case : Optional[int] = None, _snake_case : Optional[bool] = None, _snake_case : bool = False, _snake_case : bool = False, _snake_case : bool = False, _snake_case : bool = False, _snake_case : bool = False, _snake_case : bool = True, _snake_case : Optional[Union[str, TensorType]] = None, **_snake_case : Optional[int], ) ->BatchEncoding:
if images is None and text is None:
raise ValueError('You have to specify either images or text.' )
# Get only text
if images is None:
snake_case__ : List[Any] = self.tokenizer
snake_case__ : Dict = self.tokenizer(
text=_snake_case, add_special_tokens=_snake_case, padding=_snake_case, truncation=_snake_case, max_length=_snake_case, stride=_snake_case, pad_to_multiple_of=_snake_case, return_attention_mask=_snake_case, return_overflowing_tokens=_snake_case, return_special_tokens_mask=_snake_case, return_offsets_mapping=_snake_case, return_token_type_ids=_snake_case, return_length=_snake_case, verbose=_snake_case, return_tensors=_snake_case, **_snake_case, )
return text_encoding
# add pixel_values
snake_case__ : List[str] = self.image_processor(_snake_case, return_tensors=_snake_case )
if text is not None:
snake_case__ : Dict = self.tokenizer(
text=_snake_case, add_special_tokens=_snake_case, padding=_snake_case, truncation=_snake_case, max_length=_snake_case, stride=_snake_case, pad_to_multiple_of=_snake_case, return_attention_mask=_snake_case, return_overflowing_tokens=_snake_case, return_special_tokens_mask=_snake_case, return_offsets_mapping=_snake_case, return_token_type_ids=_snake_case, return_length=_snake_case, verbose=_snake_case, return_tensors=_snake_case, **_snake_case, )
else:
snake_case__ : Dict = None
if text_encoding is not None:
encoding_image_processor.update(_snake_case )
return encoding_image_processor
def lowercase_ ( self : str, *_snake_case : int, **_snake_case : Optional[int] ) ->int:
return self.tokenizer.batch_decode(*_snake_case, **_snake_case )
def lowercase_ ( self : str, *_snake_case : Optional[int], **_snake_case : List[str] ) ->Dict:
return self.tokenizer.decode(*_snake_case, **_snake_case )
@property
# Copied from transformers.models.blip.processing_blip.BlipProcessor.model_input_names
def lowercase_ ( self : Tuple ) ->List[str]:
snake_case__ : Tuple = self.tokenizer.model_input_names
snake_case__ : Any = self.image_processor.model_input_names
return list(dict.fromkeys(tokenizer_input_names + image_processor_input_names ) )
| 277 |
from collections import OrderedDict
from typing import TYPE_CHECKING, Any, Mapping, Optional, Union
from ...configuration_utils import PretrainedConfig
from ...onnx import OnnxConfig
from ...utils import logging
if TYPE_CHECKING:
from ... import FeatureExtractionMixin, PreTrainedTokenizerBase, TensorType
a_ :Tuple = logging.get_logger(__name__)
a_ :Union[str, Any] = {
"microsoft/deberta-v2-xlarge": "https://huggingface.co/microsoft/deberta-v2-xlarge/resolve/main/config.json",
"microsoft/deberta-v2-xxlarge": "https://huggingface.co/microsoft/deberta-v2-xxlarge/resolve/main/config.json",
"microsoft/deberta-v2-xlarge-mnli": (
"https://huggingface.co/microsoft/deberta-v2-xlarge-mnli/resolve/main/config.json"
),
"microsoft/deberta-v2-xxlarge-mnli": (
"https://huggingface.co/microsoft/deberta-v2-xxlarge-mnli/resolve/main/config.json"
),
}
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = """deberta-v2"""
def __init__( self : Union[str, Any], _snake_case : Dict=1_2_8_1_0_0, _snake_case : Any=1_5_3_6, _snake_case : Tuple=2_4, _snake_case : int=2_4, _snake_case : Optional[int]=6_1_4_4, _snake_case : Optional[int]="gelu", _snake_case : Optional[int]=0.1, _snake_case : List[str]=0.1, _snake_case : str=5_1_2, _snake_case : Optional[int]=0, _snake_case : Optional[int]=0.0_2, _snake_case : Dict=1e-7, _snake_case : int=False, _snake_case : Any=-1, _snake_case : List[str]=0, _snake_case : Tuple=True, _snake_case : Any=None, _snake_case : Union[str, Any]=0, _snake_case : Tuple="gelu", **_snake_case : Union[str, Any], ) ->Optional[int]:
super().__init__(**_snake_case )
snake_case__ : Dict = hidden_size
snake_case__ : Optional[int] = num_hidden_layers
snake_case__ : Any = num_attention_heads
snake_case__ : List[Any] = intermediate_size
snake_case__ : List[Any] = hidden_act
snake_case__ : Union[str, Any] = hidden_dropout_prob
snake_case__ : Dict = attention_probs_dropout_prob
snake_case__ : List[str] = max_position_embeddings
snake_case__ : List[str] = type_vocab_size
snake_case__ : Optional[Any] = initializer_range
snake_case__ : Optional[int] = relative_attention
snake_case__ : Tuple = max_relative_positions
snake_case__ : Union[str, Any] = pad_token_id
snake_case__ : Optional[int] = position_biased_input
# Backwards compatibility
if type(_snake_case ) == str:
snake_case__ : int = [x.strip() for x in pos_att_type.lower().split('|' )]
snake_case__ : List[str] = pos_att_type
snake_case__ : Union[str, Any] = vocab_size
snake_case__ : Optional[int] = layer_norm_eps
snake_case__ : Optional[int] = kwargs.get('pooler_hidden_size', _snake_case )
snake_case__ : int = pooler_dropout
snake_case__ : str = pooler_hidden_act
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
@property
def lowercase_ ( self : Optional[int] ) ->Mapping[str, Mapping[int, str]]:
if self.task == "multiple-choice":
snake_case__ : List[Any] = {0: 'batch', 1: 'choice', 2: 'sequence'}
else:
snake_case__ : int = {0: 'batch', 1: 'sequence'}
if self._config.type_vocab_size > 0:
return OrderedDict(
[('input_ids', dynamic_axis), ('attention_mask', dynamic_axis), ('token_type_ids', dynamic_axis)] )
else:
return OrderedDict([('input_ids', dynamic_axis), ('attention_mask', dynamic_axis)] )
@property
def lowercase_ ( self : Dict ) ->int:
return 1_2
def lowercase_ ( self : Tuple, _snake_case : Union["PreTrainedTokenizerBase", "FeatureExtractionMixin"], _snake_case : int = -1, _snake_case : int = -1, _snake_case : int = -1, _snake_case : bool = False, _snake_case : Optional["TensorType"] = None, _snake_case : int = 3, _snake_case : int = 4_0, _snake_case : int = 4_0, _snake_case : "PreTrainedTokenizerBase" = None, ) ->Mapping[str, Any]:
snake_case__ : Union[str, Any] = super().generate_dummy_inputs(preprocessor=_snake_case, framework=_snake_case )
if self._config.type_vocab_size == 0 and "token_type_ids" in dummy_inputs:
del dummy_inputs["token_type_ids"]
return dummy_inputs
| 277 | 1 |
import json
from typing import List, Optional, Tuple
from tokenizers import normalizers
from ...tokenization_utils_base import BatchEncoding
from ...tokenization_utils_fast import PreTrainedTokenizerFast
from ...utils import PaddingStrategy, logging
from .tokenization_realm import RealmTokenizer
a_ :List[str] = logging.get_logger(__name__)
a_ :List[str] = {"vocab_file": "vocab.txt", "tokenizer_file": "tokenizer.json"}
a_ :List[Any] = {
"vocab_file": {
"google/realm-cc-news-pretrained-embedder": (
"https://huggingface.co/google/realm-cc-news-pretrained-embedder/resolve/main/vocab.txt"
),
"google/realm-cc-news-pretrained-encoder": (
"https://huggingface.co/google/realm-cc-news-pretrained-encoder/resolve/main/vocab.txt"
),
"google/realm-cc-news-pretrained-scorer": (
"https://huggingface.co/google/realm-cc-news-pretrained-scorer/resolve/main/vocab.txt"
),
"google/realm-cc-news-pretrained-openqa": (
"https://huggingface.co/google/realm-cc-news-pretrained-openqa/aresolve/main/vocab.txt"
),
"google/realm-orqa-nq-openqa": "https://huggingface.co/google/realm-orqa-nq-openqa/resolve/main/vocab.txt",
"google/realm-orqa-nq-reader": "https://huggingface.co/google/realm-orqa-nq-reader/resolve/main/vocab.txt",
"google/realm-orqa-wq-openqa": "https://huggingface.co/google/realm-orqa-wq-openqa/resolve/main/vocab.txt",
"google/realm-orqa-wq-reader": "https://huggingface.co/google/realm-orqa-wq-reader/resolve/main/vocab.txt",
},
"tokenizer_file": {
"google/realm-cc-news-pretrained-embedder": (
"https://huggingface.co/google/realm-cc-news-pretrained-embedder/resolve/main/tokenizer.jsont"
),
"google/realm-cc-news-pretrained-encoder": (
"https://huggingface.co/google/realm-cc-news-pretrained-encoder/resolve/main/tokenizer.json"
),
"google/realm-cc-news-pretrained-scorer": (
"https://huggingface.co/google/realm-cc-news-pretrained-scorer/resolve/main/tokenizer.json"
),
"google/realm-cc-news-pretrained-openqa": (
"https://huggingface.co/google/realm-cc-news-pretrained-openqa/aresolve/main/tokenizer.json"
),
"google/realm-orqa-nq-openqa": (
"https://huggingface.co/google/realm-orqa-nq-openqa/resolve/main/tokenizer.json"
),
"google/realm-orqa-nq-reader": (
"https://huggingface.co/google/realm-orqa-nq-reader/resolve/main/tokenizer.json"
),
"google/realm-orqa-wq-openqa": (
"https://huggingface.co/google/realm-orqa-wq-openqa/resolve/main/tokenizer.json"
),
"google/realm-orqa-wq-reader": (
"https://huggingface.co/google/realm-orqa-wq-reader/resolve/main/tokenizer.json"
),
},
}
a_ :List[str] = {
"google/realm-cc-news-pretrained-embedder": 512,
"google/realm-cc-news-pretrained-encoder": 512,
"google/realm-cc-news-pretrained-scorer": 512,
"google/realm-cc-news-pretrained-openqa": 512,
"google/realm-orqa-nq-openqa": 512,
"google/realm-orqa-nq-reader": 512,
"google/realm-orqa-wq-openqa": 512,
"google/realm-orqa-wq-reader": 512,
}
a_ :int = {
"google/realm-cc-news-pretrained-embedder": {"do_lower_case": True},
"google/realm-cc-news-pretrained-encoder": {"do_lower_case": True},
"google/realm-cc-news-pretrained-scorer": {"do_lower_case": True},
"google/realm-cc-news-pretrained-openqa": {"do_lower_case": True},
"google/realm-orqa-nq-openqa": {"do_lower_case": True},
"google/realm-orqa-nq-reader": {"do_lower_case": True},
"google/realm-orqa-wq-openqa": {"do_lower_case": True},
"google/realm-orqa-wq-reader": {"do_lower_case": True},
}
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = VOCAB_FILES_NAMES
_SCREAMING_SNAKE_CASE = PRETRAINED_VOCAB_FILES_MAP
_SCREAMING_SNAKE_CASE = PRETRAINED_INIT_CONFIGURATION
_SCREAMING_SNAKE_CASE = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES
_SCREAMING_SNAKE_CASE = RealmTokenizer
def __init__( self : Union[str, Any], _snake_case : Optional[Any]=None, _snake_case : Dict=None, _snake_case : Dict=True, _snake_case : Union[str, Any]="[UNK]", _snake_case : Optional[int]="[SEP]", _snake_case : Optional[Any]="[PAD]", _snake_case : Union[str, Any]="[CLS]", _snake_case : List[Any]="[MASK]", _snake_case : List[str]=True, _snake_case : int=None, **_snake_case : Optional[int], ) ->Union[str, Any]:
super().__init__(
_snake_case, tokenizer_file=_snake_case, do_lower_case=_snake_case, unk_token=_snake_case, sep_token=_snake_case, pad_token=_snake_case, cls_token=_snake_case, mask_token=_snake_case, tokenize_chinese_chars=_snake_case, strip_accents=_snake_case, **_snake_case, )
snake_case__ : Union[str, Any] = json.loads(self.backend_tokenizer.normalizer.__getstate__() )
if (
normalizer_state.get('lowercase', _snake_case ) != do_lower_case
or normalizer_state.get('strip_accents', _snake_case ) != strip_accents
or normalizer_state.get('handle_chinese_chars', _snake_case ) != tokenize_chinese_chars
):
snake_case__ : int = getattr(_snake_case, normalizer_state.pop('type' ) )
snake_case__ : Optional[int] = do_lower_case
snake_case__ : Optional[int] = strip_accents
snake_case__ : Union[str, Any] = tokenize_chinese_chars
snake_case__ : int = normalizer_class(**_snake_case )
snake_case__ : str = do_lower_case
def lowercase_ ( self : Any, _snake_case : Optional[int], **_snake_case : Any ) ->Optional[int]:
snake_case__ : Any = PaddingStrategy.MAX_LENGTH
snake_case__ : Optional[int] = text
snake_case__ : int = kwargs.pop('text_pair', _snake_case )
snake_case__ : Optional[int] = kwargs.pop('return_tensors', _snake_case )
snake_case__ : Optional[int] = {
'input_ids': [],
'attention_mask': [],
'token_type_ids': [],
}
for idx, candidate_text in enumerate(_snake_case ):
if batch_text_pair is not None:
snake_case__ : Any = batch_text_pair[idx]
else:
snake_case__ : Union[str, Any] = None
snake_case__ : List[Any] = super().__call__(_snake_case, _snake_case, return_tensors=_snake_case, **_snake_case )
snake_case__ : Dict = encoded_candidates.get('input_ids' )
snake_case__ : List[str] = encoded_candidates.get('attention_mask' )
snake_case__ : str = encoded_candidates.get('token_type_ids' )
if encoded_input_ids is not None:
output_data["input_ids"].append(_snake_case )
if encoded_attention_mask is not None:
output_data["attention_mask"].append(_snake_case )
if encoded_token_type_ids is not None:
output_data["token_type_ids"].append(_snake_case )
snake_case__ : Tuple = {key: item for key, item in output_data.items() if len(_snake_case ) != 0}
return BatchEncoding(_snake_case, tensor_type=_snake_case )
def lowercase_ ( self : int, _snake_case : List[Any], _snake_case : Optional[int]=None ) ->int:
snake_case__ : Tuple = [self.cls_token_id] + token_ids_a + [self.sep_token_id]
if token_ids_a:
output += token_ids_a + [self.sep_token_id]
return output
def lowercase_ ( self : Any, _snake_case : List[int], _snake_case : Optional[List[int]] = None ) ->List[int]:
snake_case__ : str = [self.sep_token_id]
snake_case__ : str = [self.cls_token_id]
if token_ids_a is None:
return len(cls + token_ids_a + sep ) * [0]
return len(cls + token_ids_a + sep ) * [0] + len(token_ids_a + sep ) * [1]
def lowercase_ ( self : Union[str, Any], _snake_case : str, _snake_case : Optional[str] = None ) ->Tuple[str]:
snake_case__ : Optional[Any] = self._tokenizer.model.save(_snake_case, name=_snake_case )
return tuple(_snake_case )
| 277 |
import argparse
import json
import pickle
from pathlib import Path
import requests
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import MaskFormerConfig, MaskFormerForInstanceSegmentation, MaskFormerImageProcessor, SwinConfig
from transformers.utils import logging
logging.set_verbosity_info()
a_ :str = logging.get_logger(__name__)
def lowercase_ (A : str ):
snake_case__ : Tuple = SwinConfig.from_pretrained(
'microsoft/swin-tiny-patch4-window7-224' , out_features=['stage1', 'stage2', 'stage3', 'stage4'] )
snake_case__ : List[Any] = MaskFormerConfig(backbone_config=A )
snake_case__ : Union[str, Any] = 'huggingface/label-files'
if "ade20k-full" in model_name:
# this should be ok
snake_case__ : Dict = 8_4_7
snake_case__ : List[str] = 'maskformer-ade20k-full-id2label.json'
elif "ade" in model_name:
# this should be ok
snake_case__ : Union[str, Any] = 1_5_0
snake_case__ : Any = 'ade20k-id2label.json'
elif "coco-stuff" in model_name:
# this should be ok
snake_case__ : List[str] = 1_7_1
snake_case__ : Union[str, Any] = 'maskformer-coco-stuff-id2label.json'
elif "coco" in model_name:
# TODO
snake_case__ : Dict = 1_3_3
snake_case__ : str = 'coco-panoptic-id2label.json'
elif "cityscapes" in model_name:
# this should be ok
snake_case__ : List[str] = 1_9
snake_case__ : Union[str, Any] = 'cityscapes-id2label.json'
elif "vistas" in model_name:
# this should be ok
snake_case__ : Tuple = 6_5
snake_case__ : List[str] = 'mapillary-vistas-id2label.json'
snake_case__ : Dict = json.load(open(hf_hub_download(A , A , repo_type='dataset' ) , 'r' ) )
snake_case__ : List[str] = {int(A ): v for k, v in idalabel.items()}
return config
def lowercase_ (A : Any ):
snake_case__ : Optional[int] = []
# stem
# fmt: off
rename_keys.append(('backbone.patch_embed.proj.weight', 'model.pixel_level_module.encoder.model.embeddings.patch_embeddings.projection.weight') )
rename_keys.append(('backbone.patch_embed.proj.bias', 'model.pixel_level_module.encoder.model.embeddings.patch_embeddings.projection.bias') )
rename_keys.append(('backbone.patch_embed.norm.weight', 'model.pixel_level_module.encoder.model.embeddings.norm.weight') )
rename_keys.append(('backbone.patch_embed.norm.bias', 'model.pixel_level_module.encoder.model.embeddings.norm.bias') )
# stages
for i in range(len(config.backbone_config.depths ) ):
for j in range(config.backbone_config.depths[i] ):
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.norm1.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_before.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.norm1.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_before.bias''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.attn.relative_position_bias_table''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_bias_table''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.attn.relative_position_index''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_index''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.attn.proj.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.attn.proj.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.bias''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.norm2.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_after.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.norm2.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_after.bias''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.mlp.fc1.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.mlp.fc1.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.bias''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.mlp.fc2.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.output.dense.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.mlp.fc2.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.output.dense.bias''') )
if i < 3:
rename_keys.append((F'''backbone.layers.{i}.downsample.reduction.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.reduction.weight''') )
rename_keys.append((F'''backbone.layers.{i}.downsample.norm.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.norm.weight''') )
rename_keys.append((F'''backbone.layers.{i}.downsample.norm.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.norm.bias''') )
rename_keys.append((F'''backbone.norm{i}.weight''', F'''model.pixel_level_module.encoder.hidden_states_norms.{i}.weight''') )
rename_keys.append((F'''backbone.norm{i}.bias''', F'''model.pixel_level_module.encoder.hidden_states_norms.{i}.bias''') )
# FPN
rename_keys.append(('sem_seg_head.layer_4.weight', 'model.pixel_level_module.decoder.fpn.stem.0.weight') )
rename_keys.append(('sem_seg_head.layer_4.norm.weight', 'model.pixel_level_module.decoder.fpn.stem.1.weight') )
rename_keys.append(('sem_seg_head.layer_4.norm.bias', 'model.pixel_level_module.decoder.fpn.stem.1.bias') )
for source_index, target_index in zip(range(3 , 0 , -1 ) , range(0 , 3 ) ):
rename_keys.append((F'''sem_seg_head.adapter_{source_index}.weight''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.0.weight''') )
rename_keys.append((F'''sem_seg_head.adapter_{source_index}.norm.weight''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.1.weight''') )
rename_keys.append((F'''sem_seg_head.adapter_{source_index}.norm.bias''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.1.bias''') )
rename_keys.append((F'''sem_seg_head.layer_{source_index}.weight''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.block.0.weight''') )
rename_keys.append((F'''sem_seg_head.layer_{source_index}.norm.weight''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.block.1.weight''') )
rename_keys.append((F'''sem_seg_head.layer_{source_index}.norm.bias''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.block.1.bias''') )
rename_keys.append(('sem_seg_head.mask_features.weight', 'model.pixel_level_module.decoder.mask_projection.weight') )
rename_keys.append(('sem_seg_head.mask_features.bias', 'model.pixel_level_module.decoder.mask_projection.bias') )
# Transformer decoder
for idx in range(config.decoder_config.decoder_layers ):
# self-attention out projection
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.out_proj.weight''', F'''model.transformer_module.decoder.layers.{idx}.self_attn.out_proj.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.out_proj.bias''', F'''model.transformer_module.decoder.layers.{idx}.self_attn.out_proj.bias''') )
# cross-attention out projection
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.out_proj.weight''', F'''model.transformer_module.decoder.layers.{idx}.encoder_attn.out_proj.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.out_proj.bias''', F'''model.transformer_module.decoder.layers.{idx}.encoder_attn.out_proj.bias''') )
# MLP 1
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear1.weight''', F'''model.transformer_module.decoder.layers.{idx}.fc1.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear1.bias''', F'''model.transformer_module.decoder.layers.{idx}.fc1.bias''') )
# MLP 2
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear2.weight''', F'''model.transformer_module.decoder.layers.{idx}.fc2.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear2.bias''', F'''model.transformer_module.decoder.layers.{idx}.fc2.bias''') )
# layernorm 1 (self-attention layernorm)
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm1.weight''', F'''model.transformer_module.decoder.layers.{idx}.self_attn_layer_norm.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm1.bias''', F'''model.transformer_module.decoder.layers.{idx}.self_attn_layer_norm.bias''') )
# layernorm 2 (cross-attention layernorm)
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm2.weight''', F'''model.transformer_module.decoder.layers.{idx}.encoder_attn_layer_norm.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm2.bias''', F'''model.transformer_module.decoder.layers.{idx}.encoder_attn_layer_norm.bias''') )
# layernorm 3 (final layernorm)
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm3.weight''', F'''model.transformer_module.decoder.layers.{idx}.final_layer_norm.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm3.bias''', F'''model.transformer_module.decoder.layers.{idx}.final_layer_norm.bias''') )
rename_keys.append(('sem_seg_head.predictor.transformer.decoder.norm.weight', 'model.transformer_module.decoder.layernorm.weight') )
rename_keys.append(('sem_seg_head.predictor.transformer.decoder.norm.bias', 'model.transformer_module.decoder.layernorm.bias') )
# heads on top
rename_keys.append(('sem_seg_head.predictor.query_embed.weight', 'model.transformer_module.queries_embedder.weight') )
rename_keys.append(('sem_seg_head.predictor.input_proj.weight', 'model.transformer_module.input_projection.weight') )
rename_keys.append(('sem_seg_head.predictor.input_proj.bias', 'model.transformer_module.input_projection.bias') )
rename_keys.append(('sem_seg_head.predictor.class_embed.weight', 'class_predictor.weight') )
rename_keys.append(('sem_seg_head.predictor.class_embed.bias', 'class_predictor.bias') )
for i in range(3 ):
rename_keys.append((F'''sem_seg_head.predictor.mask_embed.layers.{i}.weight''', F'''mask_embedder.{i}.0.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.mask_embed.layers.{i}.bias''', F'''mask_embedder.{i}.0.bias''') )
# fmt: on
return rename_keys
def lowercase_ (A : Tuple , A : Tuple , A : Optional[Any] ):
snake_case__ : Optional[int] = dct.pop(A )
snake_case__ : Union[str, Any] = val
def lowercase_ (A : Optional[Any] , A : Tuple ):
snake_case__ : Optional[int] = [int(backbone_config.embed_dim * 2**i ) for i in range(len(backbone_config.depths ) )]
for i in range(len(backbone_config.depths ) ):
snake_case__ : Optional[int] = num_features[i]
for j in range(backbone_config.depths[i] ):
# fmt: off
# read in weights + bias of input projection layer (in original implementation, this is a single matrix + bias)
snake_case__ : int = state_dict.pop(F'''backbone.layers.{i}.blocks.{j}.attn.qkv.weight''' )
snake_case__ : Tuple = state_dict.pop(F'''backbone.layers.{i}.blocks.{j}.attn.qkv.bias''' )
# next, add query, keys and values (in that order) to the state dict
snake_case__ : str = in_proj_weight[:dim, :]
snake_case__ : int = in_proj_bias[: dim]
snake_case__ : List[Any] = in_proj_weight[
dim : dim * 2, :
]
snake_case__ : List[str] = in_proj_bias[
dim : dim * 2
]
snake_case__ : List[Any] = in_proj_weight[
-dim :, :
]
snake_case__ : Dict = in_proj_bias[-dim :]
# fmt: on
def lowercase_ (A : List[str] , A : List[Any] ):
# fmt: off
snake_case__ : str = config.decoder_config.hidden_size
for idx in range(config.decoder_config.decoder_layers ):
# read in weights + bias of self-attention input projection layer (in the original implementation, this is a single matrix + bias)
snake_case__ : List[Any] = state_dict.pop(F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.in_proj_weight''' )
snake_case__ : int = state_dict.pop(F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.in_proj_bias''' )
# next, add query, keys and values (in that order) to the state dict
snake_case__ : Any = in_proj_weight[: hidden_size, :]
snake_case__ : Tuple = in_proj_bias[:config.hidden_size]
snake_case__ : List[str] = in_proj_weight[hidden_size : hidden_size * 2, :]
snake_case__ : Dict = in_proj_bias[hidden_size : hidden_size * 2]
snake_case__ : Any = in_proj_weight[-hidden_size :, :]
snake_case__ : int = in_proj_bias[-hidden_size :]
# read in weights + bias of cross-attention input projection layer (in the original implementation, this is a single matrix + bias)
snake_case__ : List[Any] = state_dict.pop(F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.in_proj_weight''' )
snake_case__ : List[str] = state_dict.pop(F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.in_proj_bias''' )
# next, add query, keys and values (in that order) to the state dict
snake_case__ : Optional[int] = in_proj_weight[: hidden_size, :]
snake_case__ : Optional[Any] = in_proj_bias[:config.hidden_size]
snake_case__ : int = in_proj_weight[hidden_size : hidden_size * 2, :]
snake_case__ : List[str] = in_proj_bias[hidden_size : hidden_size * 2]
snake_case__ : List[str] = in_proj_weight[-hidden_size :, :]
snake_case__ : str = in_proj_bias[-hidden_size :]
# fmt: on
def lowercase_ ():
snake_case__ : Any = 'http://images.cocodataset.org/val2017/000000039769.jpg'
snake_case__ : int = Image.open(requests.get(A , stream=A ).raw )
return im
@torch.no_grad()
def lowercase_ (A : str , A : str , A : str , A : bool = False ):
snake_case__ : Optional[int] = get_maskformer_config(A )
# load original state_dict
with open(A , 'rb' ) as f:
snake_case__ : List[Any] = pickle.load(A )
snake_case__ : Optional[int] = data['model']
# for name, param in state_dict.items():
# print(name, param.shape)
# rename keys
snake_case__ : List[str] = create_rename_keys(A )
for src, dest in rename_keys:
rename_key(A , A , A )
read_in_swin_q_k_v(A , config.backbone_config )
read_in_decoder_q_k_v(A , A )
# update to torch tensors
for key, value in state_dict.items():
snake_case__ : int = torch.from_numpy(A )
# load 🤗 model
snake_case__ : str = MaskFormerForInstanceSegmentation(A )
model.eval()
for name, param in model.named_parameters():
print(A , param.shape )
snake_case__ , snake_case__ : Union[str, Any] = model.load_state_dict(A , strict=A )
assert missing_keys == [
"model.pixel_level_module.encoder.model.layernorm.weight",
"model.pixel_level_module.encoder.model.layernorm.bias",
]
assert len(A ) == 0, F'''Unexpected keys: {unexpected_keys}'''
# verify results
snake_case__ : Optional[Any] = prepare_img()
if "vistas" in model_name:
snake_case__ : int = 6_5
elif "cityscapes" in model_name:
snake_case__ : Dict = 6_5_5_3_5
else:
snake_case__ : Tuple = 2_5_5
snake_case__ : Optional[int] = True if 'ade' in model_name else False
snake_case__ : Dict = MaskFormerImageProcessor(ignore_index=A , reduce_labels=A )
snake_case__ : Any = image_processor(A , return_tensors='pt' )
snake_case__ : Any = model(**A )
print('Logits:' , outputs.class_queries_logits[0, :3, :3] )
if model_name == "maskformer-swin-tiny-ade":
snake_case__ : Tuple = torch.tensor(
[[3.6353, -4.4770, -2.6065], [0.5081, -4.2394, -3.5343], [2.1909, -5.0353, -1.9323]] )
assert torch.allclose(outputs.class_queries_logits[0, :3, :3] , A , atol=1e-4 )
print('Looks ok!' )
if pytorch_dump_folder_path is not None:
print(F'''Saving model and image processor to {pytorch_dump_folder_path}''' )
Path(A ).mkdir(exist_ok=A )
model.save_pretrained(A )
image_processor.save_pretrained(A )
if push_to_hub:
print('Pushing model and image processor to the hub...' )
model.push_to_hub(F'''nielsr/{model_name}''' )
image_processor.push_to_hub(F'''nielsr/{model_name}''' )
if __name__ == "__main__":
a_ :Optional[int] = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--model_name",
default="maskformer-swin-tiny-ade",
type=str,
help=("Name of the MaskFormer model you'd like to convert",),
)
parser.add_argument(
"--checkpoint_path",
default="/Users/nielsrogge/Documents/MaskFormer_checkpoints/MaskFormer-Swin-tiny-ADE20k/model.pkl",
type=str,
help="Path to the original state dict (.pth file).",
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model directory."
)
parser.add_argument(
"--push_to_hub", action="store_true", help="Whether or not to push the converted model to the 🤗 hub."
)
a_ :Dict = parser.parse_args()
convert_maskformer_checkpoint(
args.model_name, args.checkpoint_path, args.pytorch_dump_folder_path, args.push_to_hub
)
| 277 | 1 |
from __future__ import annotations
import typing
from collections import Counter
def lowercase_ (A : int ):
snake_case__ : typing.Counter[int] = Counter()
for base in range(1 , max_perimeter + 1 ):
for perpendicular in range(A , max_perimeter + 1 ):
snake_case__ : List[Any] = (base * base + perpendicular * perpendicular) ** 0.5
if hypotenuse == int(A ):
snake_case__ : List[str] = int(base + perpendicular + hypotenuse )
if perimeter > max_perimeter:
continue
triplets[perimeter] += 1
return triplets
def lowercase_ (A : int = 1_0_0_0 ):
snake_case__ : List[str] = pythagorean_triple(A )
return triplets.most_common(1 )[0][0]
if __name__ == "__main__":
print(F"""Perimeter {solution()} has maximum solutions""")
| 277 |
import unittest
from transformers import is_torch_available
from transformers.testing_utils import require_torch, slow, torch_device
from ...generation.test_utils import GenerationTesterMixin
from ...test_configuration_common import ConfigTester
from ...test_modeling_common import ModelTesterMixin, ids_tensor
from ...test_pipeline_mixin import PipelineTesterMixin
if is_torch_available():
import torch
from transformers import (
OPENAI_GPT_PRETRAINED_MODEL_ARCHIVE_LIST,
OpenAIGPTConfig,
OpenAIGPTDoubleHeadsModel,
OpenAIGPTForSequenceClassification,
OpenAIGPTLMHeadModel,
OpenAIGPTModel,
)
class snake_case__ :
"""simple docstring"""
def __init__( self : List[str], _snake_case : Any, _snake_case : int=1_3, _snake_case : Optional[int]=7, _snake_case : int=True, _snake_case : Optional[Any]=True, _snake_case : Optional[Any]=True, _snake_case : Union[str, Any]=9_9, _snake_case : Optional[Any]=3_2, _snake_case : Tuple=5, _snake_case : str=4, _snake_case : Any=3_7, _snake_case : int="gelu", _snake_case : Optional[Any]=0.1, _snake_case : str=0.1, _snake_case : str=5_1_2, _snake_case : Dict=1_6, _snake_case : str=2, _snake_case : Union[str, Any]=0.0_2, _snake_case : Optional[int]=3, _snake_case : Union[str, Any]=4, _snake_case : Tuple=None, ) ->Optional[Any]:
snake_case__ : Optional[int] = parent
snake_case__ : List[Any] = batch_size
snake_case__ : Tuple = seq_length
snake_case__ : str = is_training
snake_case__ : Optional[int] = use_token_type_ids
snake_case__ : Any = use_labels
snake_case__ : Dict = vocab_size
snake_case__ : str = hidden_size
snake_case__ : Union[str, Any] = num_hidden_layers
snake_case__ : List[str] = num_attention_heads
snake_case__ : Union[str, Any] = intermediate_size
snake_case__ : List[Any] = hidden_act
snake_case__ : int = hidden_dropout_prob
snake_case__ : str = attention_probs_dropout_prob
snake_case__ : Any = max_position_embeddings
snake_case__ : Union[str, Any] = type_vocab_size
snake_case__ : Optional[Any] = type_sequence_label_size
snake_case__ : Optional[int] = initializer_range
snake_case__ : Optional[int] = num_labels
snake_case__ : str = num_choices
snake_case__ : int = scope
snake_case__ : List[str] = self.vocab_size - 1
def lowercase_ ( self : Union[str, Any] ) ->Tuple:
snake_case__ : List[str] = ids_tensor([self.batch_size, self.seq_length], self.vocab_size )
snake_case__ : List[str] = None
if self.use_token_type_ids:
snake_case__ : Optional[Any] = ids_tensor([self.batch_size, self.seq_length], self.type_vocab_size )
snake_case__ : Tuple = None
snake_case__ : str = None
snake_case__ : List[Any] = None
if self.use_labels:
snake_case__ : Dict = ids_tensor([self.batch_size], self.type_sequence_label_size )
snake_case__ : int = ids_tensor([self.batch_size, self.seq_length], self.num_labels )
snake_case__ : List[str] = ids_tensor([self.batch_size], self.num_choices )
snake_case__ : Union[str, Any] = OpenAIGPTConfig(
vocab_size=self.vocab_size, n_embd=self.hidden_size, n_layer=self.num_hidden_layers, n_head=self.num_attention_heads, n_positions=self.max_position_embeddings, pad_token_id=self.pad_token_id, )
snake_case__ : List[str] = ids_tensor([self.num_hidden_layers, self.num_attention_heads], 2 )
return (
config,
input_ids,
head_mask,
token_type_ids,
sequence_labels,
token_labels,
choice_labels,
)
def lowercase_ ( self : Any, _snake_case : List[str], _snake_case : Any, _snake_case : List[Any], _snake_case : Tuple, *_snake_case : Optional[Any] ) ->Tuple:
snake_case__ : Union[str, Any] = OpenAIGPTModel(config=_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Optional[Any] = model(_snake_case, token_type_ids=_snake_case, head_mask=_snake_case )
snake_case__ : Union[str, Any] = model(_snake_case, token_type_ids=_snake_case )
snake_case__ : Optional[Any] = model(_snake_case )
self.parent.assertEqual(result.last_hidden_state.shape, (self.batch_size, self.seq_length, self.hidden_size) )
def lowercase_ ( self : Optional[int], _snake_case : Optional[Any], _snake_case : Union[str, Any], _snake_case : Optional[int], _snake_case : List[Any], *_snake_case : Dict ) ->Optional[int]:
snake_case__ : Optional[Any] = OpenAIGPTLMHeadModel(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Tuple = model(_snake_case, token_type_ids=_snake_case, labels=_snake_case )
self.parent.assertEqual(result.loss.shape, () )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.seq_length, self.vocab_size) )
def lowercase_ ( self : int, _snake_case : Tuple, _snake_case : List[str], _snake_case : List[Any], _snake_case : List[Any], *_snake_case : List[Any] ) ->Optional[int]:
snake_case__ : List[str] = OpenAIGPTDoubleHeadsModel(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Optional[Any] = model(_snake_case, token_type_ids=_snake_case, labels=_snake_case )
self.parent.assertEqual(result.loss.shape, () )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.seq_length, self.vocab_size) )
def lowercase_ ( self : Optional[int], _snake_case : Tuple, _snake_case : Dict, _snake_case : List[str], _snake_case : Optional[Any], *_snake_case : Union[str, Any] ) ->str:
snake_case__ : List[str] = self.num_labels
snake_case__ : Dict = OpenAIGPTForSequenceClassification(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : List[str] = ids_tensor([self.batch_size], self.type_sequence_label_size )
snake_case__ : List[str] = model(_snake_case, token_type_ids=_snake_case, labels=_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.num_labels) )
def lowercase_ ( self : Dict ) ->int:
snake_case__ : List[Any] = self.prepare_config_and_inputs()
(
(
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) ,
) : Optional[Any] = config_and_inputs
snake_case__ : str = {
'input_ids': input_ids,
'token_type_ids': token_type_ids,
'head_mask': head_mask,
}
return config, inputs_dict
@require_torch
class snake_case__ ( lowerCAmelCase_ , lowerCAmelCase_ , lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = (
(OpenAIGPTModel, OpenAIGPTLMHeadModel, OpenAIGPTDoubleHeadsModel, OpenAIGPTForSequenceClassification)
if is_torch_available()
else ()
)
_SCREAMING_SNAKE_CASE = (
(OpenAIGPTLMHeadModel,) if is_torch_available() else ()
) # TODO (PVP): Add Double HeadsModel when generate() function is changed accordingly
_SCREAMING_SNAKE_CASE = (
{
"""feature-extraction""": OpenAIGPTModel,
"""text-classification""": OpenAIGPTForSequenceClassification,
"""text-generation""": OpenAIGPTLMHeadModel,
"""zero-shot""": OpenAIGPTForSequenceClassification,
}
if is_torch_available()
else {}
)
def lowercase_ ( self : Optional[int], _snake_case : Union[str, Any], _snake_case : int, _snake_case : Tuple, _snake_case : Tuple, _snake_case : List[str] ) ->Optional[Any]:
if pipeline_test_casse_name == "ZeroShotClassificationPipelineTests":
# Get `tokenizer does not have a padding token` error for both fast/slow tokenizers.
# `OpenAIGPTConfig` was never used in pipeline tests, either because of a missing checkpoint or because a
# tiny config could not be created.
return True
return False
def lowercase_ ( self : Optional[Any], _snake_case : Union[str, Any], _snake_case : List[str], _snake_case : Any=False ) ->Tuple:
snake_case__ : Optional[int] = super()._prepare_for_class(_snake_case, _snake_case, return_labels=_snake_case )
if return_labels:
if model_class.__name__ == "OpenAIGPTDoubleHeadsModel":
snake_case__ : Union[str, Any] = torch.zeros(
(self.model_tester.batch_size, self.model_tester.num_choices, self.model_tester.seq_length), dtype=torch.long, device=_snake_case, )
snake_case__ : List[Any] = inputs_dict['labels']
snake_case__ : List[Any] = inputs_dict['labels']
snake_case__ : Any = torch.zeros(
(self.model_tester.batch_size, self.model_tester.num_choices), dtype=torch.long, device=_snake_case, )
snake_case__ : Tuple = torch.zeros(
self.model_tester.batch_size, dtype=torch.long, device=_snake_case )
return inputs_dict
def lowercase_ ( self : Union[str, Any] ) ->List[str]:
snake_case__ : List[str] = OpenAIGPTModelTester(self )
snake_case__ : Any = ConfigTester(self, config_class=_snake_case, n_embd=3_7 )
def lowercase_ ( self : Optional[int] ) ->str:
self.config_tester.run_common_tests()
def lowercase_ ( self : int ) ->Tuple:
snake_case__ : str = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_openai_gpt_model(*_snake_case )
def lowercase_ ( self : Tuple ) ->List[str]:
snake_case__ : Optional[int] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_lm_head_model(*_snake_case )
def lowercase_ ( self : Dict ) ->int:
snake_case__ : Optional[Any] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_double_lm_head_model(*_snake_case )
def lowercase_ ( self : int ) ->str:
snake_case__ : List[Any] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_openai_gpt_for_sequence_classification(*_snake_case )
@slow
def lowercase_ ( self : Optional[Any] ) ->str:
for model_name in OPENAI_GPT_PRETRAINED_MODEL_ARCHIVE_LIST[:1]:
snake_case__ : Optional[int] = OpenAIGPTModel.from_pretrained(_snake_case )
self.assertIsNotNone(_snake_case )
@require_torch
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
@slow
def lowercase_ ( self : Tuple ) ->Optional[int]:
snake_case__ : Union[str, Any] = OpenAIGPTLMHeadModel.from_pretrained('openai-gpt' )
model.to(_snake_case )
snake_case__ : Tuple = torch.tensor([[4_8_1, 4_7_3_5, 5_4_4]], dtype=torch.long, device=_snake_case ) # the president is
snake_case__ : int = [
4_8_1,
4_7_3_5,
5_4_4,
2_4_6,
9_6_3,
8_7_0,
7_6_2,
2_3_9,
2_4_4,
4_0_4_7_7,
2_4_4,
2_4_9,
7_1_9,
8_8_1,
4_8_7,
5_4_4,
2_4_0,
2_4_4,
6_0_3,
4_8_1,
] # the president is a very good man. " \n " i\'m sure he is, " said the
snake_case__ : Optional[int] = model.generate(_snake_case, do_sample=_snake_case )
self.assertListEqual(output_ids[0].tolist(), _snake_case )
| 277 | 1 |
from typing import TYPE_CHECKING
from ...utils import (
OptionalDependencyNotAvailable,
_LazyModule,
is_tf_available,
is_torch_available,
is_vision_available,
)
a_ :Dict = {
"configuration_blip": [
"BLIP_PRETRAINED_CONFIG_ARCHIVE_MAP",
"BlipConfig",
"BlipTextConfig",
"BlipVisionConfig",
],
"processing_blip": ["BlipProcessor"],
}
try:
if not is_vision_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :Any = ["BlipImageProcessor"]
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :Dict = [
"BLIP_PRETRAINED_MODEL_ARCHIVE_LIST",
"BlipModel",
"BlipPreTrainedModel",
"BlipForConditionalGeneration",
"BlipForQuestionAnswering",
"BlipVisionModel",
"BlipTextModel",
"BlipForImageTextRetrieval",
]
try:
if not is_tf_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :Union[str, Any] = [
"TF_BLIP_PRETRAINED_MODEL_ARCHIVE_LIST",
"TFBlipModel",
"TFBlipPreTrainedModel",
"TFBlipForConditionalGeneration",
"TFBlipForQuestionAnswering",
"TFBlipVisionModel",
"TFBlipTextModel",
"TFBlipForImageTextRetrieval",
]
if TYPE_CHECKING:
from .configuration_blip import BLIP_PRETRAINED_CONFIG_ARCHIVE_MAP, BlipConfig, BlipTextConfig, BlipVisionConfig
from .processing_blip import BlipProcessor
try:
if not is_vision_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .image_processing_blip import BlipImageProcessor
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_blip import (
BLIP_PRETRAINED_MODEL_ARCHIVE_LIST,
BlipForConditionalGeneration,
BlipForImageTextRetrieval,
BlipForQuestionAnswering,
BlipModel,
BlipPreTrainedModel,
BlipTextModel,
BlipVisionModel,
)
try:
if not is_tf_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_tf_blip import (
TF_BLIP_PRETRAINED_MODEL_ARCHIVE_LIST,
TFBlipForConditionalGeneration,
TFBlipForImageTextRetrieval,
TFBlipForQuestionAnswering,
TFBlipModel,
TFBlipPreTrainedModel,
TFBlipTextModel,
TFBlipVisionModel,
)
else:
import sys
a_ :Union[str, Any] = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 277 |
import os
import unittest
from transformers.models.transfo_xl.tokenization_transfo_xl import VOCAB_FILES_NAMES, TransfoXLTokenizer
from ...test_tokenization_common import TokenizerTesterMixin
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = TransfoXLTokenizer
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
def lowercase_ ( self : Optional[int] ) ->Any:
super().setUp()
snake_case__ : Tuple = [
'<unk>',
'[CLS]',
'[SEP]',
'want',
'unwanted',
'wa',
'un',
'running',
',',
'low',
'l',
]
snake_case__ : Any = os.path.join(self.tmpdirname, VOCAB_FILES_NAMES['vocab_file'] )
with open(self.vocab_file, 'w', encoding='utf-8' ) as vocab_writer:
vocab_writer.write(''.join([x + '\n' for x in vocab_tokens] ) )
def lowercase_ ( self : Union[str, Any], **_snake_case : List[Any] ) ->Dict:
snake_case__ : str = True
return TransfoXLTokenizer.from_pretrained(self.tmpdirname, **_snake_case )
def lowercase_ ( self : Optional[Any], _snake_case : str ) ->Dict:
snake_case__ : List[Any] = '<unk> UNwanted , running'
snake_case__ : List[Any] = '<unk> unwanted, running'
return input_text, output_text
def lowercase_ ( self : List[Any] ) ->Tuple:
snake_case__ : Dict = TransfoXLTokenizer(vocab_file=self.vocab_file, lower_case=_snake_case )
snake_case__ : str = tokenizer.tokenize('<unk> UNwanted , running' )
self.assertListEqual(_snake_case, ['<unk>', 'unwanted', ',', 'running'] )
self.assertListEqual(tokenizer.convert_tokens_to_ids(_snake_case ), [0, 4, 8, 7] )
def lowercase_ ( self : List[str] ) ->List[Any]:
snake_case__ : str = TransfoXLTokenizer(lower_case=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHeLLo ! how \n Are yoU ? ' ), ['hello', '!', 'how', 'are', 'you', '?'] )
def lowercase_ ( self : Optional[int] ) ->Optional[Any]:
snake_case__ : Optional[int] = TransfoXLTokenizer(lower_case=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHeLLo ! how \n Are yoU ? ' ), ['HeLLo', '!', 'how', 'Are', 'yoU', '?'] )
def lowercase_ ( self : Optional[int] ) ->Union[str, Any]:
snake_case__ : List[Any] = TransfoXLTokenizer(lower_case=_snake_case )
snake_case__ : Dict = 'Hello (bracket) and side-scrolled [and] Henry\'s $5,000 with 3.34 m. What\'s up!?'
snake_case__ : List[Any] = [
'Hello',
'(',
'bracket',
')',
'and',
'side',
'@-@',
'scrolled',
'[',
'and',
']',
'Henry',
'\'s',
'$',
'5',
'@,@',
'000',
'with',
'3',
'@.@',
'34',
'm',
'.',
'What',
'\'s',
'up',
'!',
'?',
]
self.assertListEqual(tokenizer.tokenize(_snake_case ), _snake_case )
self.assertEqual(tokenizer.convert_tokens_to_string(_snake_case ), _snake_case )
def lowercase_ ( self : Dict ) ->Any:
snake_case__ : Dict = self.get_tokenizer()
snake_case__ : Optional[Any] = len(_snake_case )
tokenizer.add_tokens(['new1', 'new2'] )
tokenizer.move_added_token('new1', 1 )
# Check that moved token is not copied (duplicate)
self.assertEqual(len(_snake_case ), original_len + 2 )
# Check that token is moved to specified id
self.assertEqual(tokenizer.encode('new1' ), [1] )
self.assertEqual(tokenizer.decode([1] ), 'new1' )
| 277 | 1 |
def lowercase_ (A : float , A : float , A : float , A : float , A : float , ):
snake_case__ : Dict = [redshift, radiation_density, matter_density, dark_energy]
if any(p < 0 for p in parameters ):
raise ValueError('All input parameters must be positive' )
if any(p > 1 for p in parameters[1:4] ):
raise ValueError('Relative densities cannot be greater than one' )
else:
snake_case__ : Any = 1 - (matter_density + radiation_density + dark_energy)
snake_case__ : List[str] = (
radiation_density * (redshift + 1) ** 4
+ matter_density * (redshift + 1) ** 3
+ curvature * (redshift + 1) ** 2
+ dark_energy
)
snake_case__ : Dict = hubble_constant * e_a ** (1 / 2)
return hubble
if __name__ == "__main__":
import doctest
# run doctest
doctest.testmod()
# demo LCDM approximation
a_ :Union[str, Any] = 0.3
print(
hubble_parameter(
hubble_constant=68.3,
radiation_density=1e-4,
matter_density=matter_density,
dark_energy=1 - matter_density,
redshift=0,
)
)
| 277 |
from ...configuration_utils import PretrainedConfig
from ...utils import logging
a_ :Optional[int] = logging.get_logger(__name__)
a_ :Dict = {"openai-gpt": "https://huggingface.co/openai-gpt/resolve/main/config.json"}
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = """openai-gpt"""
_SCREAMING_SNAKE_CASE = {
"""max_position_embeddings""": """n_positions""",
"""hidden_size""": """n_embd""",
"""num_attention_heads""": """n_head""",
"""num_hidden_layers""": """n_layer""",
}
def __init__( self : Optional[int], _snake_case : Dict=4_0_4_7_8, _snake_case : str=5_1_2, _snake_case : int=7_6_8, _snake_case : Tuple=1_2, _snake_case : Any=1_2, _snake_case : str="gelu", _snake_case : List[str]=0.1, _snake_case : Any=0.1, _snake_case : Dict=0.1, _snake_case : int=1e-5, _snake_case : Optional[Any]=0.0_2, _snake_case : List[Any]="cls_index", _snake_case : Any=True, _snake_case : Any=None, _snake_case : int=True, _snake_case : Optional[Any]=0.1, **_snake_case : List[Any], ) ->Optional[int]:
snake_case__ : int = vocab_size
snake_case__ : Dict = n_positions
snake_case__ : str = n_embd
snake_case__ : str = n_layer
snake_case__ : List[Any] = n_head
snake_case__ : List[Any] = afn
snake_case__ : Optional[Any] = resid_pdrop
snake_case__ : List[str] = embd_pdrop
snake_case__ : List[Any] = attn_pdrop
snake_case__ : Optional[int] = layer_norm_epsilon
snake_case__ : str = initializer_range
snake_case__ : List[str] = summary_type
snake_case__ : Optional[int] = summary_use_proj
snake_case__ : List[str] = summary_activation
snake_case__ : Optional[Any] = summary_first_dropout
snake_case__ : int = summary_proj_to_labels
super().__init__(**_snake_case )
| 277 | 1 |
import os
import re
import warnings
from shutil import copyfile
from typing import TYPE_CHECKING, Any, Dict, List, Optional, Tuple
import sentencepiece as spm
from ...tokenization_utils import PreTrainedTokenizer
if TYPE_CHECKING:
from ...tokenization_utils_base import TextInput
from ...utils import logging
a_ :int = logging.get_logger(__name__)
a_ :str = {"vocab_file": "spiece.model"}
a_ :str = {
"vocab_file": {
"t5-small": "https://huggingface.co/t5-small/resolve/main/spiece.model",
"t5-base": "https://huggingface.co/t5-base/resolve/main/spiece.model",
"t5-large": "https://huggingface.co/t5-large/resolve/main/spiece.model",
"t5-3b": "https://huggingface.co/t5-3b/resolve/main/spiece.model",
"t5-11b": "https://huggingface.co/t5-11b/resolve/main/spiece.model",
}
}
# TODO(PVP) - this should be removed in Transformers v5
a_ :Dict = {
"t5-small": 512,
"t5-base": 512,
"t5-large": 512,
"t5-3b": 512,
"t5-11b": 512,
}
a_ :Optional[int] = "▁"
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = VOCAB_FILES_NAMES
_SCREAMING_SNAKE_CASE = PRETRAINED_VOCAB_FILES_MAP
_SCREAMING_SNAKE_CASE = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES
_SCREAMING_SNAKE_CASE = ["""input_ids""", """attention_mask"""]
def __init__( self : Dict, _snake_case : List[Any], _snake_case : str="</s>", _snake_case : List[Any]="<unk>", _snake_case : Union[str, Any]="<pad>", _snake_case : List[Any]=1_0_0, _snake_case : str=None, _snake_case : Optional[Dict[str, Any]] = None, _snake_case : Optional[Any]=True, **_snake_case : List[str], ) ->None:
# Add extra_ids to the special token list
if extra_ids > 0 and additional_special_tokens is None:
snake_case__ : Any = [F'''<extra_id_{i}>''' for i in range(_snake_case )]
elif extra_ids > 0 and additional_special_tokens is not None:
# Check that we have the right number of extra_id special tokens
snake_case__ : Any = len(set(filter(lambda _snake_case : bool('extra_id' in str(_snake_case ) ), _snake_case ) ) )
if extra_tokens != extra_ids:
raise ValueError(
F'''Both extra_ids ({extra_ids}) and additional_special_tokens ({additional_special_tokens}) are'''
' provided to T5Tokenizer. In this case the additional_special_tokens must include the extra_ids'
' tokens' )
if legacy:
logger.warning_once(
F'''You are using the legacy behaviour of the {self.__class__}. This means that tokens that come after special tokens will not be properly handled. We recommend you to'''
' read the related pull request available at https://github.com/huggingface/transformers/pull/24565' )
snake_case__ : List[str] = legacy
snake_case__ : str = {} if sp_model_kwargs is None else sp_model_kwargs
super().__init__(
eos_token=_snake_case, unk_token=_snake_case, pad_token=_snake_case, extra_ids=_snake_case, additional_special_tokens=_snake_case, sp_model_kwargs=self.sp_model_kwargs, legacy=_snake_case, **_snake_case, )
snake_case__ : Dict = vocab_file
snake_case__ : List[str] = extra_ids
snake_case__ : Union[str, Any] = spm.SentencePieceProcessor(**self.sp_model_kwargs )
self.sp_model.Load(_snake_case )
@staticmethod
def lowercase_ ( _snake_case : Optional[int], _snake_case : Optional[int], _snake_case : List[Any] ) ->Tuple:
if pretrained_model_name_or_path in TaTokenizer.max_model_input_sizes:
snake_case__ : List[str] = TaTokenizer.max_model_input_sizes[pretrained_model_name_or_path]
if init_max_model_length is not None and init_max_model_length != max_model_length:
return init_max_model_length
elif init_max_model_length is None:
warnings.warn(
'This tokenizer was incorrectly instantiated with a model max length of'
F''' {deprecated_max_model_length} which will be corrected in Transformers v5.\nFor now, this'''
' behavior is kept to avoid breaking backwards compatibility when padding/encoding with'
' `truncation is True`.\n- Be aware that you SHOULD NOT rely on'
F''' {pretrained_model_name_or_path} automatically truncating your input to'''
F''' {deprecated_max_model_length} when padding/encoding.\n- If you want to encode/pad to sequences'''
F''' longer than {deprecated_max_model_length} you can either instantiate this tokenizer with'''
' `model_max_length` or pass `max_length` when encoding/padding.\n- To avoid this warning, please'
' instantiate this tokenizer with `model_max_length` set to your preferred value.', _snake_case, )
return max_model_length
@property
def lowercase_ ( self : Optional[Any] ) ->Tuple:
return self.sp_model.get_piece_size() + self._extra_ids
def lowercase_ ( self : Optional[Any] ) ->List[Any]:
snake_case__ : List[str] = {self.convert_ids_to_tokens(_snake_case ): i for i in range(self.vocab_size )}
vocab.update(self.added_tokens_encoder )
return vocab
def lowercase_ ( self : List[Any], _snake_case : List[int], _snake_case : Optional[List[int]] = None, _snake_case : bool = False ) ->List[int]:
if already_has_special_tokens:
return super().get_special_tokens_mask(
token_ids_a=_snake_case, token_ids_a=_snake_case, already_has_special_tokens=_snake_case )
# normal case: some special tokens
if token_ids_a is None:
return ([0] * len(_snake_case )) + [1]
return ([0] * len(_snake_case )) + [1] + ([0] * len(_snake_case )) + [1]
def lowercase_ ( self : Tuple ) ->Union[str, Any]:
return list(
set(filter(lambda _snake_case : bool(re.search(R'<extra_id_\d+>', _snake_case ) ) is not None, self.additional_special_tokens ) ) )
def lowercase_ ( self : Any ) ->str:
return [self._convert_token_to_id(_snake_case ) for token in self.get_sentinel_tokens()]
def lowercase_ ( self : Dict, _snake_case : List[int] ) ->List[int]:
if len(_snake_case ) > 0 and token_ids[-1] == self.eos_token_id:
warnings.warn(
F'''This sequence already has {self.eos_token}. In future versions this behavior may lead to duplicated'''
' eos tokens being added.' )
return token_ids
else:
return token_ids + [self.eos_token_id]
def lowercase_ ( self : Optional[Any], _snake_case : List[int], _snake_case : Optional[List[int]] = None ) ->List[int]:
snake_case__ : List[Any] = [self.eos_token_id]
if token_ids_a is None:
return len(token_ids_a + eos ) * [0]
return len(token_ids_a + eos + token_ids_a + eos ) * [0]
def lowercase_ ( self : int, _snake_case : List[int], _snake_case : Optional[List[int]] = None ) ->List[int]:
snake_case__ : Optional[Any] = self._add_eos_if_not_present(_snake_case )
if token_ids_a is None:
return token_ids_a
else:
snake_case__ : Optional[int] = self._add_eos_if_not_present(_snake_case )
return token_ids_a + token_ids_a
def __getstate__( self : Optional[Any] ) ->Union[str, Any]:
snake_case__ : List[Any] = self.__dict__.copy()
snake_case__ : Union[str, Any] = None
return state
def __setstate__( self : Optional[int], _snake_case : Optional[int] ) ->Dict:
snake_case__ : List[Any] = d
# for backward compatibility
if not hasattr(self, 'sp_model_kwargs' ):
snake_case__ : List[Any] = {}
snake_case__ : List[str] = spm.SentencePieceProcessor(**self.sp_model_kwargs )
self.sp_model.Load(self.vocab_file )
def lowercase_ ( self : Tuple, _snake_case : "TextInput", **_snake_case : Union[str, Any] ) ->List[str]:
# Replace the SPIECE_UNDERLINE with a space to make sure SPIECE_UNDERLINE is only used at
# the beginning of the text
if not self.legacy:
snake_case__ : Optional[int] = SPIECE_UNDERLINE + text.replace(_snake_case, ' ' )
return super().tokenize(_snake_case, **_snake_case )
def lowercase_ ( self : int, _snake_case : Optional[Any], **_snake_case : Optional[Any] ) ->int:
if not self.legacy:
snake_case__ : str = text.startswith(_snake_case )
if is_first:
snake_case__ : Any = text[1:]
snake_case__ : str = self.sp_model.encode(_snake_case, out_type=_snake_case )
if not self.legacy and not is_first and not text.startswith(' ' ) and tokens[0].startswith(_snake_case ):
snake_case__ : Dict = ([tokens[0][1:]] if len(tokens[0] ) > 1 else []) + tokens[1:]
return tokens
def lowercase_ ( self : Union[str, Any], _snake_case : List[Any] ) ->int:
if token.startswith('<extra_id_' ):
snake_case__ : str = re.match(R'<extra_id_(\d+)>', _snake_case )
snake_case__ : Tuple = int(match.group(1 ) )
return self.vocab_size - num - 1
return self.sp_model.piece_to_id(_snake_case )
def lowercase_ ( self : int, _snake_case : int ) ->int:
if index < self.sp_model.get_piece_size():
snake_case__ : List[Any] = self.sp_model.IdToPiece(_snake_case )
else:
snake_case__ : Tuple = F'''<extra_id_{self.vocab_size - 1 - index}>'''
return token
def lowercase_ ( self : Optional[Any], _snake_case : Union[str, Any] ) ->Optional[int]:
snake_case__ : Optional[Any] = []
snake_case__ : Tuple = ''
snake_case__ : Dict = False
for token in tokens:
# make sure that special tokens are not decoded using sentencepiece model
if token in self.all_special_tokens:
if not prev_is_special:
out_string += " "
out_string += self.sp_model.decode(_snake_case ) + token
snake_case__ : Any = True
snake_case__ : Dict = []
else:
current_sub_tokens.append(_snake_case )
snake_case__ : Union[str, Any] = False
out_string += self.sp_model.decode(_snake_case )
return out_string.strip()
def lowercase_ ( self : int, _snake_case : str, _snake_case : Optional[str] = None ) ->Tuple[str]:
if not os.path.isdir(_snake_case ):
logger.error(F'''Vocabulary path ({save_directory}) should be a directory''' )
return
snake_case__ : List[Any] = os.path.join(
_snake_case, (filename_prefix + '-' if filename_prefix else '') + VOCAB_FILES_NAMES['vocab_file'] )
if os.path.abspath(self.vocab_file ) != os.path.abspath(_snake_case ) and os.path.isfile(self.vocab_file ):
copyfile(self.vocab_file, _snake_case )
elif not os.path.isfile(self.vocab_file ):
with open(_snake_case, 'wb' ) as fi:
snake_case__ : Optional[Any] = self.sp_model.serialized_model_proto()
fi.write(_snake_case )
return (out_vocab_file,)
| 277 |
import argparse
import logging
import os
from datetime import datetime
import numpy as np
import torch
from torch import nn
from torch.utils.data import DataLoader, RandomSampler, TensorDataset
from tqdm import tqdm
from transformers import GPTaLMHeadModel
a_ :Optional[Any] = logging.getLogger(__name__)
def lowercase_ (A : List[Any] , A : List[Any] ):
# save results
if os.path.exists(A ):
if os.path.exists(os.path.join(A , 'config.json' ) ) and os.path.isfile(
os.path.join(A , 'config.json' ) ):
os.remove(os.path.join(A , 'config.json' ) )
if os.path.exists(os.path.join(A , 'pytorch_model.bin' ) ) and os.path.isfile(
os.path.join(A , 'pytorch_model.bin' ) ):
os.remove(os.path.join(A , 'pytorch_model.bin' ) )
else:
os.makedirs(A )
model.save_pretrained(A )
def lowercase_ (A : Any , A : Optional[Any]=False ):
snake_case__ : str = 2
if unlogit:
snake_case__ : Dict = torch.pow(A , A )
snake_case__ : Any = p * torch.log(A )
snake_case__ : Tuple = 0
return -plogp.sum(dim=-1 )
def lowercase_ (A : List[str] ):
logger.info('lv, h >\t' + '\t'.join(F'''{x + 1}''' for x in range(len(A ) ) ) )
for row in range(len(A ) ):
if tensor.dtype != torch.long:
logger.info(F'''layer {row + 1}:\t''' + '\t'.join(F'''{x:.5f}''' for x in tensor[row].cpu().data ) )
else:
logger.info(F'''layer {row + 1}:\t''' + '\t'.join(F'''{x:d}''' for x in tensor[row].cpu().data ) )
def lowercase_ (A : Tuple , A : Optional[Any] , A : str , A : int=True , A : Optional[int]=True , A : Any=None , A : int=False ):
snake_case__ , snake_case__ : Optional[Any] = model.config.num_hidden_layers, model.config.num_attention_heads
snake_case__ : int = torch.zeros(A , A ).to(args.device )
snake_case__ : Any = torch.zeros(A , A ).to(args.device )
if head_mask is None:
snake_case__ : Dict = torch.ones(A , A ).to(args.device )
head_mask.requires_grad_(requires_grad=A )
# If actually pruned attention multi-head, set head mask to None to avoid shape mismatch
if actually_pruned:
snake_case__ : Optional[int] = None
snake_case__ : List[Any] = 0.0
snake_case__ : str = 0.0
for step, inputs in enumerate(tqdm(A , desc='Iteration' , disable=args.local_rank not in [-1, 0] ) ):
snake_case__ : Union[str, Any] = tuple(t.to(args.device ) for t in inputs )
((snake_case__) , ) : Optional[Any] = inputs
# Do a forward pass (not with torch.no_grad() since we need gradients for importance score - see below)
snake_case__ : Union[str, Any] = model(A , labels=A , head_mask=A )
# (loss), lm_logits, presents, (all hidden_states), (attentions)
snake_case__ , snake_case__ , snake_case__ : Dict = (
outputs[0],
outputs[1],
outputs[-1],
) # Loss and logits are the first, attention the last
loss.backward() # Backpropagate to populate the gradients in the head mask
total_loss += loss.detach().cpu().numpy()
if compute_entropy:
for layer, attn in enumerate(A ):
snake_case__ : Optional[Any] = entropy(attn.detach() , A )
attn_entropy[layer] += masked_entropy.sum(-1 ).sum(0 ).sum(0 ).detach()
if compute_importance:
head_importance += head_mask.grad.abs().detach()
tot_tokens += torch.ones_like(A ).float().detach().sum().data
# Normalize
attn_entropy /= tot_tokens
head_importance /= tot_tokens
# Layerwise importance normalization
if not args.dont_normalize_importance_by_layer:
snake_case__ : Union[str, Any] = 2
snake_case__ : List[Any] = torch.pow(torch.pow(A , A ).sum(-1 ) , 1 / exponent )
head_importance /= norm_by_layer.unsqueeze(-1 ) + 1e-20
if not args.dont_normalize_global_importance:
snake_case__ : Tuple = (head_importance - head_importance.min()) / (head_importance.max() - head_importance.min())
# Print matrices
if compute_entropy:
logger.info('Attention entropies' )
print_ad_tensor(A )
if compute_importance:
logger.info('Head importance scores' )
print_ad_tensor(A )
logger.info('Head ranked by importance scores' )
snake_case__ : Tuple = torch.zeros(head_importance.numel() , dtype=torch.long , device=args.device )
snake_case__ : Union[str, Any] = torch.arange(
head_importance.numel() , device=args.device )
snake_case__ : str = head_ranks.view_as(A )
print_ad_tensor(A )
return attn_entropy, head_importance, total_loss
def lowercase_ (A : Optional[int] , A : Dict , A : Optional[int] ):
snake_case__ , snake_case__ , snake_case__ : Any = compute_heads_importance(A , A , A , compute_entropy=A )
snake_case__ : Tuple = 1 / loss # instead of downsteam score use the LM loss
logger.info('Pruning: original score: %f, threshold: %f' , A , original_score * args.masking_threshold )
snake_case__ : Optional[Any] = torch.ones_like(A )
snake_case__ : Union[str, Any] = max(1 , int(new_head_mask.numel() * args.masking_amount ) )
snake_case__ : Dict = original_score
while current_score >= original_score * args.masking_threshold:
snake_case__ : int = new_head_mask.clone().detach() # save current head mask
# heads from least important to most - keep only not-masked heads
snake_case__ : List[Any] = float('Inf' )
snake_case__ : Union[str, Any] = head_importance.view(-1 ).sort()[1]
if len(A ) <= num_to_mask:
print('BREAK BY num_to_mask' )
break
# mask heads
snake_case__ : int = current_heads_to_mask[:num_to_mask]
logger.info('Heads to mask: %s' , str(current_heads_to_mask.tolist() ) )
snake_case__ : int = new_head_mask.view(-1 )
snake_case__ : int = 0.0
snake_case__ : Union[str, Any] = new_head_mask.view_as(A )
snake_case__ : List[str] = new_head_mask.clone().detach()
print_ad_tensor(A )
# Compute metric and head importance again
snake_case__ , snake_case__ , snake_case__ : Any = compute_heads_importance(
A , A , A , compute_entropy=A , head_mask=A )
snake_case__ : Dict = 1 / loss
logger.info(
'Masking: current score: %f, remaining heads %d (%.1f percents)' , A , new_head_mask.sum() , new_head_mask.sum() / new_head_mask.numel() * 1_0_0 , )
logger.info('Final head mask' )
print_ad_tensor(A )
np.save(os.path.join(args.output_dir , 'head_mask.npy' ) , head_mask.detach().cpu().numpy() )
return head_mask
def lowercase_ (A : List[str] , A : Tuple , A : Optional[Any] , A : int ):
snake_case__ : Any = datetime.now()
snake_case__ , snake_case__ , snake_case__ : str = compute_heads_importance(
A , A , A , compute_entropy=A , compute_importance=A , head_mask=A )
snake_case__ : Tuple = 1 / loss
snake_case__ : Dict = datetime.now() - before_time
snake_case__ : Union[str, Any] = sum(p.numel() for p in model.parameters() )
snake_case__ : Optional[Any] = {
layer: (1 - head_mask[layer].long()).nonzero().squeeze().tolist() for layer in range(len(A ) )
}
for k, v in heads_to_prune.items():
if isinstance(A , A ):
snake_case__ : Any = [
v,
]
assert sum(len(A ) for h in heads_to_prune.values() ) == (1 - head_mask.long()).sum().item()
model.prune_heads(A )
snake_case__ : Dict = sum(p.numel() for p in model.parameters() )
snake_case__ : Tuple = datetime.now()
snake_case__ , snake_case__ , snake_case__ : Dict = compute_heads_importance(
A , A , A , compute_entropy=A , compute_importance=A , head_mask=A , actually_pruned=A , )
snake_case__ : Any = 1 / loss
snake_case__ : int = datetime.now() - before_time
logger.info(
'Pruning: original num of params: %.2e, after pruning %.2e (%.1f percents)' , A , A , pruned_num_params / original_num_params * 1_0_0 , )
logger.info('Pruning: score with masking: %f score with pruning: %f' , A , A )
logger.info('Pruning: speed ratio (original timing / new timing): %f percents' , original_time / new_time * 1_0_0 )
save_model(A , args.output_dir )
def lowercase_ ():
snake_case__ : str = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
'--data_dir' , default=A , type=A , required=A , help='The input data dir. Should contain the .tsv files (or other data files) for the task.' , )
parser.add_argument(
'--model_name_or_path' , default=A , type=A , required=A , help='Path to pretrained model or model identifier from huggingface.co/models' , )
parser.add_argument(
'--output_dir' , default=A , type=A , required=A , help='The output directory where the model predictions and checkpoints will be written.' , )
# Other parameters
parser.add_argument(
'--config_name' , default='' , type=A , help='Pretrained config name or path if not the same as model_name_or_path' , )
parser.add_argument(
'--tokenizer_name' , default='' , type=A , help='Pretrained tokenizer name or path if not the same as model_name_or_path' , )
parser.add_argument(
'--cache_dir' , default=A , type=A , help='Where do you want to store the pre-trained models downloaded from s3' , )
parser.add_argument(
'--data_subset' , type=A , default=-1 , help='If > 0: limit the data to a subset of data_subset instances.' )
parser.add_argument(
'--overwrite_output_dir' , action='store_true' , help='Whether to overwrite data in output directory' )
parser.add_argument(
'--overwrite_cache' , action='store_true' , help='Overwrite the cached training and evaluation sets' )
parser.add_argument(
'--dont_normalize_importance_by_layer' , action='store_true' , help='Don\'t normalize importance score by layers' )
parser.add_argument(
'--dont_normalize_global_importance' , action='store_true' , help='Don\'t normalize all importance scores between 0 and 1' , )
parser.add_argument(
'--try_masking' , action='store_true' , help='Whether to try to mask head until a threshold of accuracy.' )
parser.add_argument(
'--masking_threshold' , default=0.9 , type=A , help='masking threshold in term of metrics (stop masking when metric < threshold * original metric value).' , )
parser.add_argument(
'--masking_amount' , default=0.1 , type=A , help='Amount to heads to masking at each masking step.' )
parser.add_argument('--metric_name' , default='acc' , type=A , help='Metric to use for head masking.' )
parser.add_argument(
'--max_seq_length' , default=1_2_8 , type=A , help=(
'The maximum total input sequence length after WordPiece tokenization. \n'
'Sequences longer than this will be truncated, sequences shorter padded.'
) , )
parser.add_argument('--batch_size' , default=1 , type=A , help='Batch size.' )
parser.add_argument('--seed' , type=A , default=4_2 )
parser.add_argument('--local_rank' , type=A , default=-1 , help='local_rank for distributed training on gpus' )
parser.add_argument('--no_cuda' , action='store_true' , help='Whether not to use CUDA when available' )
parser.add_argument('--server_ip' , type=A , default='' , help='Can be used for distant debugging.' )
parser.add_argument('--server_port' , type=A , default='' , help='Can be used for distant debugging.' )
snake_case__ : Optional[int] = parser.parse_args()
if args.server_ip and args.server_port:
# Distant debugging - see https://code.visualstudio.com/docs/python/debugging#_attach-to-a-local-script
import ptvsd
print('Waiting for debugger attach' )
ptvsd.enable_attach(address=(args.server_ip, args.server_port) , redirect_output=A )
ptvsd.wait_for_attach()
# Setup devices and distributed training
if args.local_rank == -1 or args.no_cuda:
snake_case__ : List[Any] = torch.device('cuda' if torch.cuda.is_available() and not args.no_cuda else 'cpu' )
snake_case__ : Optional[Any] = 0 if args.no_cuda else torch.cuda.device_count()
else:
torch.cuda.set_device(args.local_rank )
snake_case__ : int = torch.device('cuda' , args.local_rank )
snake_case__ : List[str] = 1
torch.distributed.init_process_group(backend='nccl' ) # Initializes the distributed backend
# Setup logging
logging.basicConfig(level=logging.INFO if args.local_rank in [-1, 0] else logging.WARN )
logger.info('device: {} n_gpu: {}, distributed: {}'.format(args.device , args.n_gpu , bool(args.local_rank != -1 ) ) )
snake_case__ : Any = GPTaLMHeadModel.from_pretrained(args.model_name_or_path )
# Distributed and parallel training
model.to(args.device )
if args.local_rank != -1:
snake_case__ : List[str] = nn.parallel.DistributedDataParallel(
A , device_ids=[args.local_rank] , output_device=args.local_rank , find_unused_parameters=A )
elif args.n_gpu > 1:
snake_case__ : Optional[int] = nn.DataParallel(A )
# Print/save training arguments
os.makedirs(args.output_dir , exist_ok=A )
torch.save(A , os.path.join(args.output_dir , 'run_args.bin' ) )
logger.info('Training/evaluation parameters %s' , A )
# Prepare dataset
snake_case__ : Optional[Any] = np.concatenate(
[
np.loadtxt(args.data_dir , dtype=np.intaa ),
] )
snake_case__ : List[str] = (torch.from_numpy(A ),)
snake_case__ : int = TensorDataset(*A )
snake_case__ : Union[str, Any] = RandomSampler(A )
snake_case__ : Any = DataLoader(A , sampler=A , batch_size=args.batch_size )
# Compute head entropy and importance score
compute_heads_importance(A , A , A )
# Try head masking (set heads to zero until the score goes under a threshole)
# and head pruning (remove masked heads and see the effect on the network)
if args.try_masking and args.masking_threshold > 0.0 and args.masking_threshold < 1.0:
snake_case__ : Dict = mask_heads(A , A , A )
prune_heads(A , A , A , A )
if __name__ == "__main__":
main()
| 277 | 1 |
import argparse
import json
import os
from collections import OrderedDict
import torch
from transformers import LukeConfig, LukeForMaskedLM, MLukeTokenizer, XLMRobertaTokenizer
from transformers.tokenization_utils_base import AddedToken
@torch.no_grad()
def lowercase_ (A : Optional[Any] , A : List[Any] , A : Optional[int] , A : List[str] , A : Optional[Any] ):
# Load configuration defined in the metadata file
with open(A ) as metadata_file:
snake_case__ : Optional[int] = json.load(A )
snake_case__ : Optional[int] = LukeConfig(use_entity_aware_attention=A , **metadata['model_config'] )
# Load in the weights from the checkpoint_path
snake_case__ : Union[str, Any] = torch.load(A , map_location='cpu' )['module']
# Load the entity vocab file
snake_case__ : Union[str, Any] = load_original_entity_vocab(A )
# add an entry for [MASK2]
snake_case__ : Union[str, Any] = max(entity_vocab.values() ) + 1
config.entity_vocab_size += 1
snake_case__ : Any = XLMRobertaTokenizer.from_pretrained(metadata['model_config']['bert_model_name'] )
# Add special tokens to the token vocabulary for downstream tasks
snake_case__ : Tuple = AddedToken('<ent>' , lstrip=A , rstrip=A )
snake_case__ : Union[str, Any] = AddedToken('<ent2>' , lstrip=A , rstrip=A )
tokenizer.add_special_tokens({'additional_special_tokens': [entity_token_a, entity_token_a]} )
config.vocab_size += 2
print(F'''Saving tokenizer to {pytorch_dump_folder_path}''' )
tokenizer.save_pretrained(A )
with open(os.path.join(A , 'tokenizer_config.json' ) , 'r' ) as f:
snake_case__ : Optional[Any] = json.load(A )
snake_case__ : int = 'MLukeTokenizer'
with open(os.path.join(A , 'tokenizer_config.json' ) , 'w' ) as f:
json.dump(A , A )
with open(os.path.join(A , MLukeTokenizer.vocab_files_names['entity_vocab_file'] ) , 'w' ) as f:
json.dump(A , A )
snake_case__ : List[str] = MLukeTokenizer.from_pretrained(A )
# Initialize the embeddings of the special tokens
snake_case__ : List[str] = tokenizer.convert_tokens_to_ids(['@'] )[0]
snake_case__ : Any = tokenizer.convert_tokens_to_ids(['#'] )[0]
snake_case__ : str = state_dict['embeddings.word_embeddings.weight']
snake_case__ : Optional[int] = word_emb[ent_init_index].unsqueeze(0 )
snake_case__ : Optional[Any] = word_emb[enta_init_index].unsqueeze(0 )
snake_case__ : Dict = torch.cat([word_emb, ent_emb, enta_emb] )
# add special tokens for 'entity_predictions.bias'
for bias_name in ["lm_head.decoder.bias", "lm_head.bias"]:
snake_case__ : int = state_dict[bias_name]
snake_case__ : List[str] = decoder_bias[ent_init_index].unsqueeze(0 )
snake_case__ : Any = decoder_bias[enta_init_index].unsqueeze(0 )
snake_case__ : int = torch.cat([decoder_bias, ent_decoder_bias, enta_decoder_bias] )
# Initialize the query layers of the entity-aware self-attention mechanism
for layer_index in range(config.num_hidden_layers ):
for matrix_name in ["query.weight", "query.bias"]:
snake_case__ : Tuple = F'''encoder.layer.{layer_index}.attention.self.'''
snake_case__ : List[Any] = state_dict[prefix + matrix_name]
snake_case__ : Any = state_dict[prefix + matrix_name]
snake_case__ : Optional[Any] = state_dict[prefix + matrix_name]
# Initialize the embedding of the [MASK2] entity using that of the [MASK] entity for downstream tasks
snake_case__ : List[str] = state_dict['entity_embeddings.entity_embeddings.weight']
snake_case__ : Union[str, Any] = entity_emb[entity_vocab['[MASK]']].unsqueeze(0 )
snake_case__ : Optional[int] = torch.cat([entity_emb, entity_mask_emb] )
# add [MASK2] for 'entity_predictions.bias'
snake_case__ : Any = state_dict['entity_predictions.bias']
snake_case__ : Optional[int] = entity_prediction_bias[entity_vocab['[MASK]']].unsqueeze(0 )
snake_case__ : Any = torch.cat([entity_prediction_bias, entity_mask_bias] )
snake_case__ : Tuple = LukeForMaskedLM(config=A ).eval()
state_dict.pop('entity_predictions.decoder.weight' )
state_dict.pop('lm_head.decoder.weight' )
state_dict.pop('lm_head.decoder.bias' )
snake_case__ : Dict = OrderedDict()
for key, value in state_dict.items():
if not (key.startswith('lm_head' ) or key.startswith('entity_predictions' )):
snake_case__ : Any = state_dict[key]
else:
snake_case__ : Tuple = state_dict[key]
snake_case__ , snake_case__ : Dict = model.load_state_dict(A , strict=A )
if set(A ) != {"luke.embeddings.position_ids"}:
raise ValueError(F'''Unexpected unexpected_keys: {unexpected_keys}''' )
if set(A ) != {
"lm_head.decoder.weight",
"lm_head.decoder.bias",
"entity_predictions.decoder.weight",
}:
raise ValueError(F'''Unexpected missing_keys: {missing_keys}''' )
model.tie_weights()
assert (model.luke.embeddings.word_embeddings.weight == model.lm_head.decoder.weight).all()
assert (model.luke.entity_embeddings.entity_embeddings.weight == model.entity_predictions.decoder.weight).all()
# Check outputs
snake_case__ : Optional[Any] = MLukeTokenizer.from_pretrained(A , task='entity_classification' )
snake_case__ : Optional[int] = 'ISO 639-3 uses the code fas for the dialects spoken across Iran and アフガニスタン (Afghanistan).'
snake_case__ : str = (0, 9)
snake_case__ : Optional[int] = tokenizer(A , entity_spans=[span] , return_tensors='pt' )
snake_case__ : List[Any] = model(**A )
# Verify word hidden states
if model_size == "large":
raise NotImplementedError
else: # base
snake_case__ : Optional[int] = torch.Size((1, 3_3, 7_6_8) )
snake_case__ : Tuple = torch.tensor([[0.0892, 0.0596, -0.2819], [0.0134, 0.1199, 0.0573], [-0.0169, 0.0927, 0.0644]] )
if not (outputs.last_hidden_state.shape == expected_shape):
raise ValueError(
F'''Outputs.last_hidden_state.shape is {outputs.last_hidden_state.shape}, Expected shape is {expected_shape}''' )
if not torch.allclose(outputs.last_hidden_state[0, :3, :3] , A , atol=1e-4 ):
raise ValueError
# Verify entity hidden states
if model_size == "large":
raise NotImplementedError
else: # base
snake_case__ : Any = torch.Size((1, 1, 7_6_8) )
snake_case__ : Optional[int] = torch.tensor([[-0.1482, 0.0609, 0.0322]] )
if not (outputs.entity_last_hidden_state.shape == expected_shape):
raise ValueError(
F'''Outputs.entity_last_hidden_state.shape is {outputs.entity_last_hidden_state.shape}, Expected shape is'''
F''' {expected_shape}''' )
if not torch.allclose(outputs.entity_last_hidden_state[0, :3, :3] , A , atol=1e-4 ):
raise ValueError
# Verify masked word/entity prediction
snake_case__ : Union[str, Any] = MLukeTokenizer.from_pretrained(A )
snake_case__ : str = 'Tokyo is the capital of <mask>.'
snake_case__ : Any = (2_4, 3_0)
snake_case__ : Dict = tokenizer(A , entity_spans=[span] , return_tensors='pt' )
snake_case__ : Tuple = model(**A )
snake_case__ : int = encoding['input_ids'][0].tolist()
snake_case__ : List[str] = input_ids.index(tokenizer.convert_tokens_to_ids('<mask>' ) )
snake_case__ : Any = outputs.logits[0][mask_position_id].argmax(dim=-1 )
assert "Japan" == tokenizer.decode(A )
snake_case__ : Optional[int] = outputs.entity_logits[0][0].argmax().item()
snake_case__ : Any = [
entity for entity, entity_id in tokenizer.entity_vocab.items() if entity_id == predicted_entity_id
]
assert [e for e in multilingual_predicted_entities if e.startswith('en:' )][0] == "en:Japan"
# Finally, save our PyTorch model and tokenizer
print('Saving PyTorch model to {}'.format(A ) )
model.save_pretrained(A )
def lowercase_ (A : List[str] ):
snake_case__ : Any = ['[MASK]', '[PAD]', '[UNK]']
snake_case__ : List[str] = [json.loads(A ) for line in open(A )]
snake_case__ : Optional[int] = {}
for entry in data:
snake_case__ : Any = entry['id']
for entity_name, language in entry["entities"]:
if entity_name in SPECIAL_TOKENS:
snake_case__ : int = entity_id
break
snake_case__ : Union[str, Any] = F'''{language}:{entity_name}'''
snake_case__ : Optional[int] = entity_id
return new_mapping
if __name__ == "__main__":
a_ :int = argparse.ArgumentParser()
# Required parameters
parser.add_argument("--checkpoint_path", type=str, help="Path to a pytorch_model.bin file.")
parser.add_argument(
"--metadata_path", default=None, type=str, help="Path to a metadata.json file, defining the configuration."
)
parser.add_argument(
"--entity_vocab_path",
default=None,
type=str,
help="Path to an entity_vocab.tsv file, containing the entity vocabulary.",
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to where to dump the output PyTorch model."
)
parser.add_argument(
"--model_size", default="base", type=str, choices=["base", "large"], help="Size of the model to be converted."
)
a_ :Tuple = parser.parse_args()
convert_luke_checkpoint(
args.checkpoint_path,
args.metadata_path,
args.entity_vocab_path,
args.pytorch_dump_folder_path,
args.model_size,
)
| 277 |
import argparse
import json
from collections import OrderedDict
from pathlib import Path
import requests
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import (
SegformerConfig,
SegformerForImageClassification,
SegformerForSemanticSegmentation,
SegformerImageProcessor,
)
from transformers.utils import logging
logging.set_verbosity_info()
a_ :Dict = logging.get_logger(__name__)
def lowercase_ (A : Optional[Any] , A : Any=False ):
snake_case__ : List[Any] = OrderedDict()
for key, value in state_dict.items():
if encoder_only and not key.startswith('head' ):
snake_case__ : str = 'segformer.encoder.' + key
if key.startswith('backbone' ):
snake_case__ : str = key.replace('backbone' , 'segformer.encoder' )
if "patch_embed" in key:
# replace for example patch_embed1 by patch_embeddings.0
snake_case__ : Optional[int] = key[key.find('patch_embed' ) + len('patch_embed' )]
snake_case__ : int = key.replace(F'''patch_embed{idx}''' , F'''patch_embeddings.{int(A )-1}''' )
if "norm" in key:
snake_case__ : Optional[int] = key.replace('norm' , 'layer_norm' )
if "segformer.encoder.layer_norm" in key:
# replace for example layer_norm1 by layer_norm.0
snake_case__ : Tuple = key[key.find('segformer.encoder.layer_norm' ) + len('segformer.encoder.layer_norm' )]
snake_case__ : Union[str, Any] = key.replace(F'''layer_norm{idx}''' , F'''layer_norm.{int(A )-1}''' )
if "layer_norm1" in key:
snake_case__ : List[Any] = key.replace('layer_norm1' , 'layer_norm_1' )
if "layer_norm2" in key:
snake_case__ : List[Any] = key.replace('layer_norm2' , 'layer_norm_2' )
if "block" in key:
# replace for example block1 by block.0
snake_case__ : List[Any] = key[key.find('block' ) + len('block' )]
snake_case__ : List[Any] = key.replace(F'''block{idx}''' , F'''block.{int(A )-1}''' )
if "attn.q" in key:
snake_case__ : int = key.replace('attn.q' , 'attention.self.query' )
if "attn.proj" in key:
snake_case__ : str = key.replace('attn.proj' , 'attention.output.dense' )
if "attn" in key:
snake_case__ : Optional[int] = key.replace('attn' , 'attention.self' )
if "fc1" in key:
snake_case__ : str = key.replace('fc1' , 'dense1' )
if "fc2" in key:
snake_case__ : Dict = key.replace('fc2' , 'dense2' )
if "linear_pred" in key:
snake_case__ : Union[str, Any] = key.replace('linear_pred' , 'classifier' )
if "linear_fuse" in key:
snake_case__ : List[str] = key.replace('linear_fuse.conv' , 'linear_fuse' )
snake_case__ : List[Any] = key.replace('linear_fuse.bn' , 'batch_norm' )
if "linear_c" in key:
# replace for example linear_c4 by linear_c.3
snake_case__ : Optional[int] = key[key.find('linear_c' ) + len('linear_c' )]
snake_case__ : Tuple = key.replace(F'''linear_c{idx}''' , F'''linear_c.{int(A )-1}''' )
if key.startswith('head' ):
snake_case__ : Tuple = key.replace('head' , 'classifier' )
snake_case__ : Optional[int] = value
return new_state_dict
def lowercase_ (A : Tuple , A : Optional[int] ):
# for each of the encoder blocks:
for i in range(config.num_encoder_blocks ):
for j in range(config.depths[i] ):
# read in weights + bias of keys and values (which is a single matrix in the original implementation)
snake_case__ : List[str] = state_dict.pop(F'''segformer.encoder.block.{i}.{j}.attention.self.kv.weight''' )
snake_case__ : Optional[Any] = state_dict.pop(F'''segformer.encoder.block.{i}.{j}.attention.self.kv.bias''' )
# next, add keys and values (in that order) to the state dict
snake_case__ : str = kv_weight[
: config.hidden_sizes[i], :
]
snake_case__ : Dict = kv_bias[: config.hidden_sizes[i]]
snake_case__ : List[str] = kv_weight[
config.hidden_sizes[i] :, :
]
snake_case__ : List[Any] = kv_bias[
config.hidden_sizes[i] :
]
def lowercase_ ():
snake_case__ : Union[str, Any] = 'http://images.cocodataset.org/val2017/000000039769.jpg'
snake_case__ : Dict = Image.open(requests.get(A , stream=A ).raw )
return image
@torch.no_grad()
def lowercase_ (A : Any , A : Union[str, Any] , A : Optional[Any] ):
snake_case__ : List[str] = SegformerConfig()
snake_case__ : Dict = False
# set attributes based on model_name
snake_case__ : Optional[int] = 'huggingface/label-files'
if "segformer" in model_name:
snake_case__ : str = model_name[len('segformer.' ) : len('segformer.' ) + 2]
if "ade" in model_name:
snake_case__ : Optional[int] = 1_5_0
snake_case__ : int = 'ade20k-id2label.json'
snake_case__ : List[Any] = (1, 1_5_0, 1_2_8, 1_2_8)
elif "city" in model_name:
snake_case__ : str = 1_9
snake_case__ : List[str] = 'cityscapes-id2label.json'
snake_case__ : Optional[Any] = (1, 1_9, 1_2_8, 1_2_8)
else:
raise ValueError(F'''Model {model_name} not supported''' )
elif "mit" in model_name:
snake_case__ : str = True
snake_case__ : Union[str, Any] = model_name[4:6]
snake_case__ : Optional[Any] = 1_0_0_0
snake_case__ : Optional[int] = 'imagenet-1k-id2label.json'
snake_case__ : List[Any] = (1, 1_0_0_0)
else:
raise ValueError(F'''Model {model_name} not supported''' )
# set config attributes
snake_case__ : str = json.load(open(hf_hub_download(A , A , repo_type='dataset' ) , 'r' ) )
snake_case__ : List[Any] = {int(A ): v for k, v in idalabel.items()}
snake_case__ : Union[str, Any] = idalabel
snake_case__ : Tuple = {v: k for k, v in idalabel.items()}
if size == "b0":
pass
elif size == "b1":
snake_case__ : List[Any] = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : Tuple = 2_5_6
elif size == "b2":
snake_case__ : List[str] = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : int = 7_6_8
snake_case__ : List[Any] = [3, 4, 6, 3]
elif size == "b3":
snake_case__ : Optional[Any] = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : int = 7_6_8
snake_case__ : Optional[Any] = [3, 4, 1_8, 3]
elif size == "b4":
snake_case__ : str = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : Optional[Any] = 7_6_8
snake_case__ : Union[str, Any] = [3, 8, 2_7, 3]
elif size == "b5":
snake_case__ : List[str] = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : Optional[Any] = 7_6_8
snake_case__ : Any = [3, 6, 4_0, 3]
else:
raise ValueError(F'''Size {size} not supported''' )
# load image processor (only resize + normalize)
snake_case__ : Dict = SegformerImageProcessor(
image_scale=(5_1_2, 5_1_2) , keep_ratio=A , align=A , do_random_crop=A )
# prepare image
snake_case__ : List[str] = prepare_img()
snake_case__ : Dict = image_processor(images=A , return_tensors='pt' ).pixel_values
logger.info(F'''Converting model {model_name}...''' )
# load original state dict
if encoder_only:
snake_case__ : Tuple = torch.load(A , map_location=torch.device('cpu' ) )
else:
snake_case__ : int = torch.load(A , map_location=torch.device('cpu' ) )['state_dict']
# rename keys
snake_case__ : List[Any] = rename_keys(A , encoder_only=A )
if not encoder_only:
del state_dict["decode_head.conv_seg.weight"]
del state_dict["decode_head.conv_seg.bias"]
# key and value matrices need special treatment
read_in_k_v(A , A )
# create HuggingFace model and load state dict
if encoder_only:
snake_case__ : str = False
snake_case__ : List[Any] = SegformerForImageClassification(A )
else:
snake_case__ : Dict = SegformerForSemanticSegmentation(A )
model.load_state_dict(A )
model.eval()
# forward pass
snake_case__ : int = model(A )
snake_case__ : Any = outputs.logits
# set expected_slice based on model name
# ADE20k checkpoints
if model_name == "segformer.b0.512x512.ade.160k":
snake_case__ : Dict = torch.tensor(
[
[[-4.6310, -5.5232, -6.2356], [-5.1921, -6.1444, -6.5996], [-5.4424, -6.2790, -6.7574]],
[[-12.1391, -13.3122, -13.9554], [-12.8732, -13.9352, -14.3563], [-12.9438, -13.8226, -14.2513]],
[[-12.5134, -13.4686, -14.4915], [-12.8669, -14.4343, -14.7758], [-13.2523, -14.5819, -15.0694]],
] )
elif model_name == "segformer.b1.512x512.ade.160k":
snake_case__ : Optional[int] = torch.tensor(
[
[[-7.5820, -8.7231, -8.3215], [-8.0600, -10.3529, -10.0304], [-7.5208, -9.4103, -9.6239]],
[[-12.6918, -13.8994, -13.7137], [-13.3196, -15.7523, -15.4789], [-12.9343, -14.8757, -14.9689]],
[[-11.1911, -11.9421, -11.3243], [-11.3342, -13.6839, -13.3581], [-10.3909, -12.1832, -12.4858]],
] )
elif model_name == "segformer.b2.512x512.ade.160k":
snake_case__ : List[Any] = torch.tensor(
[
[[-11.8173, -14.3850, -16.3128], [-14.5648, -16.5804, -18.6568], [-14.7223, -15.7387, -18.4218]],
[[-15.7290, -17.9171, -19.4423], [-18.3105, -19.9448, -21.4661], [-17.9296, -18.6497, -20.7910]],
[[-15.0783, -17.0336, -18.2789], [-16.8771, -18.6870, -20.1612], [-16.2454, -17.1426, -19.5055]],
] )
elif model_name == "segformer.b3.512x512.ade.160k":
snake_case__ : Union[str, Any] = torch.tensor(
[
[[-9.0878, -10.2081, -10.1891], [-9.3144, -10.7941, -10.9843], [-9.2294, -10.3855, -10.5704]],
[[-12.2316, -13.9068, -13.6102], [-12.9161, -14.3702, -14.3235], [-12.5233, -13.7174, -13.7932]],
[[-14.6275, -15.2490, -14.9727], [-14.3400, -15.9687, -16.2827], [-14.1484, -15.4033, -15.8937]],
] )
elif model_name == "segformer.b4.512x512.ade.160k":
snake_case__ : Dict = torch.tensor(
[
[[-12.3144, -13.2447, -14.0802], [-13.3614, -14.5816, -15.6117], [-13.3340, -14.4433, -16.2219]],
[[-19.2781, -20.4128, -20.7506], [-20.6153, -21.6566, -22.0998], [-19.9800, -21.0430, -22.1494]],
[[-18.8739, -19.7804, -21.1834], [-20.1233, -21.6765, -23.2944], [-20.0315, -21.2641, -23.6944]],
] )
elif model_name == "segformer.b5.640x640.ade.160k":
snake_case__ : List[Any] = torch.tensor(
[
[[-9.5524, -12.0835, -11.7348], [-10.5229, -13.6446, -14.5662], [-9.5842, -12.8851, -13.9414]],
[[-15.3432, -17.5323, -17.0818], [-16.3330, -18.9255, -19.2101], [-15.1340, -17.7848, -18.3971]],
[[-12.6072, -14.9486, -14.6631], [-13.7629, -17.0907, -17.7745], [-12.7899, -16.1695, -17.1671]],
] )
# Cityscapes checkpoints
elif model_name == "segformer.b0.1024x1024.city.160k":
snake_case__ : str = torch.tensor(
[
[[-11.9295, -13.4057, -14.8106], [-13.3431, -14.8179, -15.3781], [-14.2836, -15.5942, -16.1588]],
[[-11.4906, -12.8067, -13.6564], [-13.1189, -14.0500, -14.1543], [-13.8748, -14.5136, -14.8789]],
[[0.5374, 0.1067, -0.4742], [0.1141, -0.2255, -0.7099], [-0.3000, -0.5924, -1.3105]],
] )
elif model_name == "segformer.b0.512x1024.city.160k":
snake_case__ : Tuple = torch.tensor(
[
[[-7.8217, -9.8767, -10.1717], [-9.4438, -10.9058, -11.4047], [-9.7939, -12.3495, -12.1079]],
[[-7.1514, -9.5336, -10.0860], [-9.7776, -11.6822, -11.8439], [-10.1411, -12.7655, -12.8972]],
[[0.3021, 0.0805, -0.2310], [-0.0328, -0.1605, -0.2714], [-0.1408, -0.5477, -0.6976]],
] )
elif model_name == "segformer.b0.640x1280.city.160k":
snake_case__ : Any = torch.tensor(
[
[
[-1.1_372e01, -1.2_787e01, -1.3_477e01],
[-1.2_536e01, -1.4_194e01, -1.4_409e01],
[-1.3_217e01, -1.4_888e01, -1.5_327e01],
],
[
[-1.4_791e01, -1.7_122e01, -1.8_277e01],
[-1.7_163e01, -1.9_192e01, -1.9_533e01],
[-1.7_897e01, -1.9_991e01, -2.0_315e01],
],
[
[7.6_723e-01, 4.1_921e-01, -7.7_878e-02],
[4.7_772e-01, 9.5_557e-03, -2.8_082e-01],
[3.6_032e-01, -2.4_826e-01, -5.1_168e-01],
],
] )
elif model_name == "segformer.b0.768x768.city.160k":
snake_case__ : Optional[int] = torch.tensor(
[
[[-9.4959, -11.3087, -11.7479], [-11.0025, -12.6540, -12.3319], [-11.4064, -13.0487, -12.9905]],
[[-9.8905, -11.3084, -12.0854], [-11.1726, -12.7698, -12.9583], [-11.5985, -13.3278, -14.1774]],
[[0.2213, 0.0192, -0.2466], [-0.1731, -0.4213, -0.4874], [-0.3126, -0.6541, -1.1389]],
] )
elif model_name == "segformer.b1.1024x1024.city.160k":
snake_case__ : Union[str, Any] = torch.tensor(
[
[[-13.5748, -13.9111, -12.6500], [-14.3500, -15.3683, -14.2328], [-14.7532, -16.0424, -15.6087]],
[[-17.1651, -15.8725, -12.9653], [-17.2580, -17.3718, -14.8223], [-16.6058, -16.8783, -16.7452]],
[[-3.6456, -3.0209, -1.4203], [-3.0797, -3.1959, -2.0000], [-1.8757, -1.9217, -1.6997]],
] )
elif model_name == "segformer.b2.1024x1024.city.160k":
snake_case__ : List[str] = torch.tensor(
[
[[-16.0976, -16.4856, -17.3962], [-16.6234, -19.0342, -19.7685], [-16.0900, -18.0661, -19.1180]],
[[-18.4750, -18.8488, -19.5074], [-19.4030, -22.1570, -22.5977], [-19.1191, -20.8486, -22.3783]],
[[-4.5178, -5.5037, -6.5109], [-5.0884, -7.2174, -8.0334], [-4.4156, -5.8117, -7.2970]],
] )
elif model_name == "segformer.b3.1024x1024.city.160k":
snake_case__ : List[Any] = torch.tensor(
[
[[-14.2081, -14.4732, -14.1977], [-14.5867, -16.4423, -16.6356], [-13.4441, -14.9685, -16.8696]],
[[-14.4576, -14.7073, -15.0451], [-15.0816, -17.6237, -17.9873], [-14.4213, -16.0199, -18.5992]],
[[-4.7349, -4.9588, -5.0966], [-4.3210, -6.9325, -7.2591], [-3.4312, -4.7484, -7.1917]],
] )
elif model_name == "segformer.b4.1024x1024.city.160k":
snake_case__ : str = torch.tensor(
[
[[-11.7737, -11.9526, -11.3273], [-13.6692, -14.4574, -13.8878], [-13.8937, -14.6924, -15.9345]],
[[-14.6706, -14.5330, -14.1306], [-16.1502, -16.8180, -16.4269], [-16.8338, -17.8939, -20.1746]],
[[1.0491, 0.8289, 1.0310], [1.1044, 0.5219, 0.8055], [1.0899, 0.6926, 0.5590]],
] )
elif model_name == "segformer.b5.1024x1024.city.160k":
snake_case__ : List[str] = torch.tensor(
[
[[-12.5641, -13.4777, -13.0684], [-13.9587, -15.8983, -16.6557], [-13.3109, -15.7350, -16.3141]],
[[-14.7074, -15.4352, -14.5944], [-16.6353, -18.1663, -18.6120], [-15.1702, -18.0329, -18.1547]],
[[-1.7990, -2.0951, -1.7784], [-2.6397, -3.8245, -3.9686], [-1.5264, -2.8126, -2.9316]],
] )
else:
snake_case__ : Tuple = logits.argmax(-1 ).item()
print('Predicted class:' , model.config.idalabel[predicted_class_idx] )
# verify logits
if not encoder_only:
assert logits.shape == expected_shape
assert torch.allclose(logits[0, :3, :3, :3] , A , atol=1e-2 )
# finally, save model and image processor
logger.info(F'''Saving PyTorch model and image processor to {pytorch_dump_folder_path}...''' )
Path(A ).mkdir(exist_ok=A )
model.save_pretrained(A )
image_processor.save_pretrained(A )
if __name__ == "__main__":
a_ :Optional[int] = argparse.ArgumentParser()
parser.add_argument(
"--model_name",
default="segformer.b0.512x512.ade.160k",
type=str,
help="Name of the model you'd like to convert.",
)
parser.add_argument(
"--checkpoint_path", default=None, type=str, help="Path to the original PyTorch checkpoint (.pth file)."
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to the folder to output PyTorch model."
)
a_ :Union[str, Any] = parser.parse_args()
convert_segformer_checkpoint(args.model_name, args.checkpoint_path, args.pytorch_dump_folder_path)
| 277 | 1 |
import gc
import random
import unittest
import numpy as np
import torch
from PIL import Image
from transformers import XLMRobertaTokenizerFast
from diffusers import DDIMScheduler, KandinskyImgaImgPipeline, KandinskyPriorPipeline, UNetaDConditionModel, VQModel
from diffusers.pipelines.kandinsky.text_encoder import MCLIPConfig, MultilingualCLIP
from diffusers.utils import floats_tensor, load_image, load_numpy, slow, torch_device
from diffusers.utils.testing_utils import enable_full_determinism, require_torch_gpu
from ..test_pipelines_common import PipelineTesterMixin, assert_mean_pixel_difference
enable_full_determinism()
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = KandinskyImgaImgPipeline
_SCREAMING_SNAKE_CASE = ["""prompt""", """image_embeds""", """negative_image_embeds""", """image"""]
_SCREAMING_SNAKE_CASE = [
"""prompt""",
"""negative_prompt""",
"""image_embeds""",
"""negative_image_embeds""",
"""image""",
]
_SCREAMING_SNAKE_CASE = [
"""generator""",
"""height""",
"""width""",
"""strength""",
"""guidance_scale""",
"""negative_prompt""",
"""num_inference_steps""",
"""return_dict""",
"""guidance_scale""",
"""num_images_per_prompt""",
"""output_type""",
"""return_dict""",
]
_SCREAMING_SNAKE_CASE = False
@property
def lowercase_ ( self : Dict ) ->Optional[Any]:
return 3_2
@property
def lowercase_ ( self : Dict ) ->int:
return 3_2
@property
def lowercase_ ( self : List[str] ) ->Tuple:
return self.time_input_dim
@property
def lowercase_ ( self : str ) ->Optional[Any]:
return self.time_input_dim * 4
@property
def lowercase_ ( self : str ) ->Optional[Any]:
return 1_0_0
@property
def lowercase_ ( self : Optional[Any] ) ->List[Any]:
snake_case__ : List[Any] = XLMRobertaTokenizerFast.from_pretrained('YiYiXu/tiny-random-mclip-base' )
return tokenizer
@property
def lowercase_ ( self : Optional[int] ) ->Tuple:
torch.manual_seed(0 )
snake_case__ : Union[str, Any] = MCLIPConfig(
numDims=self.cross_attention_dim, transformerDimensions=self.text_embedder_hidden_size, hidden_size=self.text_embedder_hidden_size, intermediate_size=3_7, num_attention_heads=4, num_hidden_layers=5, vocab_size=1_0_0_5, )
snake_case__ : str = MultilingualCLIP(_snake_case )
snake_case__ : Tuple = text_encoder.eval()
return text_encoder
@property
def lowercase_ ( self : Optional[int] ) ->Dict:
torch.manual_seed(0 )
snake_case__ : Tuple = {
'in_channels': 4,
# Out channels is double in channels because predicts mean and variance
'out_channels': 8,
'addition_embed_type': 'text_image',
'down_block_types': ('ResnetDownsampleBlock2D', 'SimpleCrossAttnDownBlock2D'),
'up_block_types': ('SimpleCrossAttnUpBlock2D', 'ResnetUpsampleBlock2D'),
'mid_block_type': 'UNetMidBlock2DSimpleCrossAttn',
'block_out_channels': (self.block_out_channels_a, self.block_out_channels_a * 2),
'layers_per_block': 1,
'encoder_hid_dim': self.text_embedder_hidden_size,
'encoder_hid_dim_type': 'text_image_proj',
'cross_attention_dim': self.cross_attention_dim,
'attention_head_dim': 4,
'resnet_time_scale_shift': 'scale_shift',
'class_embed_type': None,
}
snake_case__ : Tuple = UNetaDConditionModel(**_snake_case )
return model
@property
def lowercase_ ( self : Optional[Any] ) ->int:
return {
"block_out_channels": [3_2, 6_4],
"down_block_types": ["DownEncoderBlock2D", "AttnDownEncoderBlock2D"],
"in_channels": 3,
"latent_channels": 4,
"layers_per_block": 1,
"norm_num_groups": 8,
"norm_type": "spatial",
"num_vq_embeddings": 1_2,
"out_channels": 3,
"up_block_types": [
"AttnUpDecoderBlock2D",
"UpDecoderBlock2D",
],
"vq_embed_dim": 4,
}
@property
def lowercase_ ( self : Tuple ) ->List[str]:
torch.manual_seed(0 )
snake_case__ : Optional[int] = VQModel(**self.dummy_movq_kwargs )
return model
def lowercase_ ( self : Union[str, Any] ) ->Optional[int]:
snake_case__ : List[Any] = self.dummy_text_encoder
snake_case__ : Tuple = self.dummy_tokenizer
snake_case__ : Dict = self.dummy_unet
snake_case__ : List[Any] = self.dummy_movq
snake_case__ : Tuple = {
'num_train_timesteps': 1_0_0_0,
'beta_schedule': 'linear',
'beta_start': 0.0_0_0_8_5,
'beta_end': 0.0_1_2,
'clip_sample': False,
'set_alpha_to_one': False,
'steps_offset': 0,
'prediction_type': 'epsilon',
'thresholding': False,
}
snake_case__ : Any = DDIMScheduler(**_snake_case )
snake_case__ : Any = {
'text_encoder': text_encoder,
'tokenizer': tokenizer,
'unet': unet,
'scheduler': scheduler,
'movq': movq,
}
return components
def lowercase_ ( self : int, _snake_case : Any, _snake_case : Dict=0 ) ->Dict:
snake_case__ : Dict = floats_tensor((1, self.cross_attention_dim), rng=random.Random(_snake_case ) ).to(_snake_case )
snake_case__ : str = floats_tensor((1, self.cross_attention_dim), rng=random.Random(seed + 1 ) ).to(_snake_case )
# create init_image
snake_case__ : Optional[Any] = floats_tensor((1, 3, 6_4, 6_4), rng=random.Random(_snake_case ) ).to(_snake_case )
snake_case__ : Dict = image.cpu().permute(0, 2, 3, 1 )[0]
snake_case__ : Optional[Any] = Image.fromarray(np.uinta(_snake_case ) ).convert('RGB' ).resize((2_5_6, 2_5_6) )
if str(_snake_case ).startswith('mps' ):
snake_case__ : List[str] = torch.manual_seed(_snake_case )
else:
snake_case__ : Optional[int] = torch.Generator(device=_snake_case ).manual_seed(_snake_case )
snake_case__ : List[str] = {
'prompt': 'horse',
'image': init_image,
'image_embeds': image_embeds,
'negative_image_embeds': negative_image_embeds,
'generator': generator,
'height': 6_4,
'width': 6_4,
'num_inference_steps': 1_0,
'guidance_scale': 7.0,
'strength': 0.2,
'output_type': 'np',
}
return inputs
def lowercase_ ( self : Optional[int] ) ->Dict:
snake_case__ : int = 'cpu'
snake_case__ : Union[str, Any] = self.get_dummy_components()
snake_case__ : Tuple = self.pipeline_class(**_snake_case )
snake_case__ : Tuple = pipe.to(_snake_case )
pipe.set_progress_bar_config(disable=_snake_case )
snake_case__ : Any = pipe(**self.get_dummy_inputs(_snake_case ) )
snake_case__ : Optional[int] = output.images
snake_case__ : Union[str, Any] = pipe(
**self.get_dummy_inputs(_snake_case ), return_dict=_snake_case, )[0]
snake_case__ : List[str] = image[0, -3:, -3:, -1]
snake_case__ : List[Any] = image_from_tuple[0, -3:, -3:, -1]
assert image.shape == (1, 6_4, 6_4, 3)
snake_case__ : Any = np.array(
[0.6_1_4_7_4_9_4_3, 0.6_0_7_3_5_3_9, 0.4_3_3_0_8_5_4_4, 0.5_9_2_8_2_6_9, 0.4_7_4_9_3_5_9_5, 0.4_6_7_5_5_9_7_3, 0.4_6_1_3_8_3_8, 0.4_5_3_6_8_7_9_7, 0.5_0_1_1_9_2_3_3] )
assert (
np.abs(image_slice.flatten() - expected_slice ).max() < 1e-2
), F''' expected_slice {expected_slice}, but got {image_slice.flatten()}'''
assert (
np.abs(image_from_tuple_slice.flatten() - expected_slice ).max() < 1e-2
), F''' expected_slice {expected_slice}, but got {image_from_tuple_slice.flatten()}'''
@slow
@require_torch_gpu
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
def lowercase_ ( self : List[Any] ) ->Any:
# clean up the VRAM after each test
super().tearDown()
gc.collect()
torch.cuda.empty_cache()
def lowercase_ ( self : Dict ) ->List[str]:
snake_case__ : Dict = load_numpy(
'https://huggingface.co/datasets/hf-internal-testing/diffusers-images/resolve/main'
'/kandinsky/kandinsky_img2img_frog.npy' )
snake_case__ : Optional[Any] = load_image(
'https://huggingface.co/datasets/hf-internal-testing/diffusers-images/resolve/main' '/kandinsky/cat.png' )
snake_case__ : Tuple = 'A red cartoon frog, 4k'
snake_case__ : Optional[Any] = KandinskyPriorPipeline.from_pretrained(
'kandinsky-community/kandinsky-2-1-prior', torch_dtype=torch.floataa )
pipe_prior.to(_snake_case )
snake_case__ : List[Any] = KandinskyImgaImgPipeline.from_pretrained(
'kandinsky-community/kandinsky-2-1', torch_dtype=torch.floataa )
snake_case__ : str = pipeline.to(_snake_case )
pipeline.set_progress_bar_config(disable=_snake_case )
snake_case__ : Any = torch.Generator(device='cpu' ).manual_seed(0 )
snake_case__ , snake_case__ : Optional[int] = pipe_prior(
_snake_case, generator=_snake_case, num_inference_steps=5, negative_prompt='', ).to_tuple()
snake_case__ : Optional[Any] = pipeline(
_snake_case, image=_snake_case, image_embeds=_snake_case, negative_image_embeds=_snake_case, generator=_snake_case, num_inference_steps=1_0_0, height=7_6_8, width=7_6_8, strength=0.2, output_type='np', )
snake_case__ : Tuple = output.images[0]
assert image.shape == (7_6_8, 7_6_8, 3)
assert_mean_pixel_difference(_snake_case, _snake_case )
| 277 |
import argparse
import json
import os
import fairseq
import torch
from fairseq.data import Dictionary
from transformers import (
WavaVecaConfig,
WavaVecaCTCTokenizer,
WavaVecaFeatureExtractor,
WavaVecaForCTC,
WavaVecaForPreTraining,
WavaVecaProcessor,
logging,
)
from transformers.models.wavaveca.modeling_wavaveca import WavaVecaForSequenceClassification
logging.set_verbosity_info()
a_ :List[Any] = logging.get_logger(__name__)
a_ :List[Any] = {
"post_extract_proj": "feature_projection.projection",
"encoder.pos_conv.0": "encoder.pos_conv_embed.conv",
"self_attn.k_proj": "encoder.layers.*.attention.k_proj",
"self_attn.v_proj": "encoder.layers.*.attention.v_proj",
"self_attn.q_proj": "encoder.layers.*.attention.q_proj",
"self_attn.out_proj": "encoder.layers.*.attention.out_proj",
"self_attn_layer_norm": "encoder.layers.*.layer_norm",
"fc1": "encoder.layers.*.feed_forward.intermediate_dense",
"fc2": "encoder.layers.*.feed_forward.output_dense",
"final_layer_norm": "encoder.layers.*.final_layer_norm",
"encoder.layer_norm": "encoder.layer_norm",
"adapter_layer": "encoder.layers.*.adapter_layer",
"w2v_model.layer_norm": "feature_projection.layer_norm",
"quantizer.weight_proj": "quantizer.weight_proj",
"quantizer.vars": "quantizer.codevectors",
"project_q": "project_q",
"final_proj": "project_hid",
"w2v_encoder.proj": "lm_head",
"mask_emb": "masked_spec_embed",
"pooling_layer.linear": "projector",
"pooling_layer.projection": "classifier",
}
a_ :List[Any] = [
"lm_head",
"quantizer.weight_proj",
"quantizer.codevectors",
"project_q",
"project_hid",
"projector",
"classifier",
]
def lowercase_ (A : Dict ):
snake_case__ : Optional[Any] = {}
with open(A , 'r' ) as file:
for line_number, line in enumerate(A ):
snake_case__ : Dict = line.strip()
if line:
snake_case__ : int = line.split()
snake_case__ : List[str] = line_number
snake_case__ : Dict = words[0]
snake_case__ : Optional[Any] = value
return result
def lowercase_ (A : int , A : int , A : Optional[int] , A : Optional[Any] , A : Tuple ):
for attribute in key.split('.' ):
snake_case__ : Optional[int] = getattr(A , A )
snake_case__ : Union[str, Any] = None
for param_key in PARAM_MAPPING.keys():
if full_name.endswith(A ):
snake_case__ : List[str] = PARAM_MAPPING[full_name.split('.' )[-1]]
snake_case__ : Dict = 'param'
if weight_type is not None and weight_type != "param":
snake_case__ : Union[str, Any] = getattr(A , A ).shape
elif weight_type is not None and weight_type == "param":
snake_case__ : Optional[int] = hf_pointer
for attribute in hf_param_name.split('.' ):
snake_case__ : Optional[Any] = getattr(A , A )
snake_case__ : Dict = shape_pointer.shape
# let's reduce dimension
snake_case__ : List[Any] = value[0]
else:
snake_case__ : Union[str, Any] = hf_pointer.shape
if hf_shape != value.shape:
raise ValueError(
F'''Shape of hf {key + "." + weight_type if weight_type is not None else ""} is {hf_shape}, but should be'''
F''' {value.shape} for {full_name}''' )
if weight_type == "weight":
snake_case__ : Any = value
elif weight_type == "weight_g":
snake_case__ : List[Any] = value
elif weight_type == "weight_v":
snake_case__ : Any = value
elif weight_type == "bias":
snake_case__ : List[Any] = value
elif weight_type == "param":
for attribute in hf_param_name.split('.' ):
snake_case__ : int = getattr(A , A )
snake_case__ : Optional[int] = value
else:
snake_case__ : Optional[Any] = value
logger.info(F'''{key + "." + weight_type if weight_type is not None else ""} was initialized from {full_name}.''' )
def lowercase_ (A : Tuple , A : List[Any] , A : int , A : str , A : Tuple ):
snake_case__ : Optional[int] = None
for param_key in PARAM_MAPPING.keys():
if full_name.endswith(A ):
snake_case__ : List[str] = PARAM_MAPPING[full_name.split('.' )[-1]]
snake_case__ : str = 'param'
if weight_type is not None and weight_type != "param":
snake_case__ : int = '.'.join([key, weight_type] )
elif weight_type is not None and weight_type == "param":
snake_case__ : Any = '.'.join([key, hf_param_name] )
else:
snake_case__ : Dict = key
snake_case__ : List[str] = value if 'lm_head' in full_key else value[0]
a_ :List[str] = {
"W_a": "linear_1.weight",
"W_b": "linear_2.weight",
"b_a": "linear_1.bias",
"b_b": "linear_2.bias",
"ln_W": "norm.weight",
"ln_b": "norm.bias",
}
def lowercase_ (A : str , A : Optional[Any] , A : Optional[Any]=None , A : List[str]=None ):
snake_case__ : Optional[int] = False
for key, mapped_key in MAPPING.items():
snake_case__ : Tuple = 'wav2vec2.' + mapped_key if mapped_key not in TOP_LEVEL_KEYS else mapped_key
if key in name or key.split('w2v_model.' )[-1] == name.split('.' )[0]:
snake_case__ : Optional[int] = True
if "*" in mapped_key:
snake_case__ : List[Any] = name.split(A )[0].split('.' )[-2]
snake_case__ : Union[str, Any] = mapped_key.replace('*' , A )
if "weight_g" in name:
snake_case__ : Tuple = 'weight_g'
elif "weight_v" in name:
snake_case__ : List[str] = 'weight_v'
elif "bias" in name:
snake_case__ : Dict = 'bias'
elif "weight" in name:
# TODO: don't match quantizer.weight_proj
snake_case__ : Optional[int] = 'weight'
else:
snake_case__ : str = None
if hf_dict is not None:
rename_dict(A , A , A , A , A )
else:
set_recursively(A , A , A , A , A )
return is_used
return is_used
def lowercase_ (A : Optional[Any] , A : Dict , A : Optional[int] ):
snake_case__ : Dict = []
snake_case__ : Tuple = fairseq_model.state_dict()
snake_case__ : str = hf_model.wavaveca.feature_extractor
for name, value in fairseq_dict.items():
snake_case__ : str = False
if "conv_layers" in name:
load_conv_layer(
A , A , A , A , hf_model.config.feat_extract_norm == 'group' , )
snake_case__ : Any = True
else:
snake_case__ : Dict = load_wavaveca_layer(A , A , A )
if not is_used:
unused_weights.append(A )
logger.warning(F'''Unused weights: {unused_weights}''' )
def lowercase_ (A : Dict , A : Optional[Any] , A : Tuple , A : str , A : List[str] ):
snake_case__ : List[Any] = full_name.split('conv_layers.' )[-1]
snake_case__ : List[str] = name.split('.' )
snake_case__ : List[Any] = int(items[0] )
snake_case__ : str = int(items[1] )
if type_id == 0:
if "bias" in name:
if value.shape != feature_extractor.conv_layers[layer_id].conv.bias.data.shape:
raise ValueError(
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.bias.data.shape} was found.''' )
snake_case__ : Any = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
if value.shape != feature_extractor.conv_layers[layer_id].conv.weight.data.shape:
raise ValueError(
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.weight.data.shape} was found.''' )
snake_case__ : str = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif (type_id == 2 and not use_group_norm) or (type_id == 2 and layer_id == 0 and use_group_norm):
if "bias" in name:
if value.shape != feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape:
raise ValueError(
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape} was found.''' )
snake_case__ : str = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
if value.shape != feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape:
raise ValueError(
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape} was found.''' )
snake_case__ : int = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
else:
unused_weights.append(A )
@torch.no_grad()
def lowercase_ (A : Union[str, Any] , A : str , A : Tuple=None , A : List[str]=None , A : Any=True , A : Optional[int]=False ):
if config_path is not None:
snake_case__ : List[Any] = WavaVecaConfig.from_pretrained(A )
else:
snake_case__ : List[Any] = WavaVecaConfig()
if is_seq_class:
snake_case__ : Dict = read_txt_into_dict(A )
snake_case__ : Any = idalabel
snake_case__ : Union[str, Any] = WavaVecaForSequenceClassification(A )
snake_case__ : Any = WavaVecaFeatureExtractor(
feature_size=1 , sampling_rate=1_6_0_0_0 , padding_value=0 , do_normalize=A , return_attention_mask=A , )
feature_extractor.save_pretrained(A )
elif is_finetuned:
if dict_path:
snake_case__ : str = Dictionary.load(A )
# important change bos & pad token id since CTC symbol is <pad> and
# not <s> as in fairseq
snake_case__ : List[str] = target_dict.pad_index
snake_case__ : Optional[int] = target_dict.bos_index
snake_case__ : Optional[int] = target_dict.eos_index
snake_case__ : List[Any] = len(target_dict.symbols )
snake_case__ : str = os.path.join(A , 'vocab.json' )
if not os.path.isdir(A ):
logger.error('--pytorch_dump_folder_path ({}) should be a directory'.format(A ) )
return
os.makedirs(A , exist_ok=A )
snake_case__ : Optional[Any] = target_dict.indices
# fairseq has the <pad> and <s> switched
snake_case__ : Optional[Any] = 0
snake_case__ : Union[str, Any] = 1
with open(A , 'w' , encoding='utf-8' ) as vocab_handle:
json.dump(A , A )
snake_case__ : List[Any] = WavaVecaCTCTokenizer(
A , unk_token=target_dict.unk_word , pad_token=target_dict.pad_word , bos_token=target_dict.bos_word , eos_token=target_dict.eos_word , word_delimiter_token='|' , do_lower_case=A , )
snake_case__ : str = True if config.feat_extract_norm == 'layer' else False
snake_case__ : Optional[Any] = WavaVecaFeatureExtractor(
feature_size=1 , sampling_rate=1_6_0_0_0 , padding_value=0 , do_normalize=A , return_attention_mask=A , )
snake_case__ : Union[str, Any] = WavaVecaProcessor(feature_extractor=A , tokenizer=A )
processor.save_pretrained(A )
snake_case__ : str = WavaVecaForCTC(A )
else:
snake_case__ : int = WavaVecaForPreTraining(A )
if is_finetuned or is_seq_class:
snake_case__ , snake_case__ , snake_case__ : str = fairseq.checkpoint_utils.load_model_ensemble_and_task(
[checkpoint_path] , arg_overrides={'data': '/'.join(dict_path.split('/' )[:-1] )} )
else:
snake_case__ : Tuple = argparse.Namespace(task='audio_pretraining' )
snake_case__ : str = fairseq.tasks.setup_task(A )
snake_case__ , snake_case__ , snake_case__ : Any = fairseq.checkpoint_utils.load_model_ensemble_and_task([checkpoint_path] , task=A )
snake_case__ : List[Any] = model[0].eval()
recursively_load_weights(A , A , not is_finetuned )
hf_wavavec.save_pretrained(A )
if __name__ == "__main__":
a_ :List[Any] = argparse.ArgumentParser()
parser.add_argument("--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model.")
parser.add_argument("--checkpoint_path", default=None, type=str, help="Path to fairseq checkpoint")
parser.add_argument("--dict_path", default=None, type=str, help="Path to dict of fine-tuned model")
parser.add_argument("--config_path", default=None, type=str, help="Path to hf config.json of model to convert")
parser.add_argument(
"--not_finetuned", action="store_true", help="Whether the model to convert is a fine-tuned model or not"
)
parser.add_argument(
"--is_seq_class",
action="store_true",
help="Whether the model to convert is a fine-tuned sequence classification model or not",
)
a_ :str = parser.parse_args()
a_ :Tuple = not args.not_finetuned and not args.is_seq_class
convert_wavaveca_checkpoint(
args.checkpoint_path,
args.pytorch_dump_folder_path,
args.config_path,
args.dict_path,
is_finetuned,
args.is_seq_class,
)
| 277 | 1 |
import inspect
from typing import Callable, List, Optional, Union
import torch
from transformers import (
CLIPImageProcessor,
CLIPTextModel,
CLIPTokenizer,
WhisperForConditionalGeneration,
WhisperProcessor,
)
from diffusers import (
AutoencoderKL,
DDIMScheduler,
DiffusionPipeline,
LMSDiscreteScheduler,
PNDMScheduler,
UNetaDConditionModel,
)
from diffusers.pipelines.stable_diffusion.pipeline_stable_diffusion import StableDiffusionPipelineOutput
from diffusers.pipelines.stable_diffusion.safety_checker import StableDiffusionSafetyChecker
from diffusers.utils import logging
a_ :Tuple = logging.get_logger(__name__) # pylint: disable=invalid-name
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
def __init__( self : Tuple, _snake_case : WhisperForConditionalGeneration, _snake_case : WhisperProcessor, _snake_case : AutoencoderKL, _snake_case : CLIPTextModel, _snake_case : CLIPTokenizer, _snake_case : UNetaDConditionModel, _snake_case : Union[DDIMScheduler, PNDMScheduler, LMSDiscreteScheduler], _snake_case : StableDiffusionSafetyChecker, _snake_case : CLIPImageProcessor, ) ->Optional[int]:
super().__init__()
if safety_checker is None:
logger.warning(
F'''You have disabled the safety checker for {self.__class__} by passing `safety_checker=None`. Ensure'''
' that you abide to the conditions of the Stable Diffusion license and do not expose unfiltered'
' results in services or applications open to the public. Both the diffusers team and Hugging Face'
' strongly recommend to keep the safety filter enabled in all public facing circumstances, disabling'
' it only for use-cases that involve analyzing network behavior or auditing its results. For more'
' information, please have a look at https://github.com/huggingface/diffusers/pull/254 .' )
self.register_modules(
speech_model=_snake_case, speech_processor=_snake_case, vae=_snake_case, text_encoder=_snake_case, tokenizer=_snake_case, unet=_snake_case, scheduler=_snake_case, feature_extractor=_snake_case, )
def lowercase_ ( self : List[str], _snake_case : Optional[Union[str, int]] = "auto" ) ->Union[str, Any]:
if slice_size == "auto":
snake_case__ : Any = self.unet.config.attention_head_dim // 2
self.unet.set_attention_slice(_snake_case )
def lowercase_ ( self : Any ) ->Any:
self.enable_attention_slicing(_snake_case )
@torch.no_grad()
def __call__( self : List[Any], _snake_case : str, _snake_case : Dict=1_6_0_0_0, _snake_case : int = 5_1_2, _snake_case : int = 5_1_2, _snake_case : int = 5_0, _snake_case : float = 7.5, _snake_case : Optional[Union[str, List[str]]] = None, _snake_case : Optional[int] = 1, _snake_case : float = 0.0, _snake_case : Optional[torch.Generator] = None, _snake_case : Optional[torch.FloatTensor] = None, _snake_case : Optional[str] = "pil", _snake_case : bool = True, _snake_case : Optional[Callable[[int, int, torch.FloatTensor], None]] = None, _snake_case : int = 1, **_snake_case : Any, ) ->int:
snake_case__ : Optional[int] = self.speech_processor.feature_extractor(
_snake_case, return_tensors='pt', sampling_rate=_snake_case ).input_features.to(self.device )
snake_case__ : Dict = self.speech_model.generate(_snake_case, max_length=4_8_0_0_0_0 )
snake_case__ : Optional[int] = self.speech_processor.tokenizer.batch_decode(_snake_case, skip_special_tokens=_snake_case, normalize=_snake_case )[
0
]
if isinstance(_snake_case, _snake_case ):
snake_case__ : Union[str, Any] = 1
elif isinstance(_snake_case, _snake_case ):
snake_case__ : int = len(_snake_case )
else:
raise ValueError(F'''`prompt` has to be of type `str` or `list` but is {type(_snake_case )}''' )
if height % 8 != 0 or width % 8 != 0:
raise ValueError(F'''`height` and `width` have to be divisible by 8 but are {height} and {width}.''' )
if (callback_steps is None) or (
callback_steps is not None and (not isinstance(_snake_case, _snake_case ) or callback_steps <= 0)
):
raise ValueError(
F'''`callback_steps` has to be a positive integer but is {callback_steps} of type'''
F''' {type(_snake_case )}.''' )
# get prompt text embeddings
snake_case__ : Dict = self.tokenizer(
_snake_case, padding='max_length', max_length=self.tokenizer.model_max_length, return_tensors='pt', )
snake_case__ : Dict = text_inputs.input_ids
if text_input_ids.shape[-1] > self.tokenizer.model_max_length:
snake_case__ : List[Any] = self.tokenizer.batch_decode(text_input_ids[:, self.tokenizer.model_max_length :] )
logger.warning(
'The following part of your input was truncated because CLIP can only handle sequences up to'
F''' {self.tokenizer.model_max_length} tokens: {removed_text}''' )
snake_case__ : Union[str, Any] = text_input_ids[:, : self.tokenizer.model_max_length]
snake_case__ : Optional[Any] = self.text_encoder(text_input_ids.to(self.device ) )[0]
# duplicate text embeddings for each generation per prompt, using mps friendly method
snake_case__ , snake_case__ , snake_case__ : Optional[int] = text_embeddings.shape
snake_case__ : Optional[int] = text_embeddings.repeat(1, _snake_case, 1 )
snake_case__ : str = text_embeddings.view(bs_embed * num_images_per_prompt, _snake_case, -1 )
# here `guidance_scale` is defined analog to the guidance weight `w` of equation (2)
# of the Imagen paper: https://arxiv.org/pdf/2205.11487.pdf . `guidance_scale = 1`
# corresponds to doing no classifier free guidance.
snake_case__ : Optional[Any] = guidance_scale > 1.0
# get unconditional embeddings for classifier free guidance
if do_classifier_free_guidance:
snake_case__ : List[str]
if negative_prompt is None:
snake_case__ : Optional[Any] = [''] * batch_size
elif type(_snake_case ) is not type(_snake_case ):
raise TypeError(
F'''`negative_prompt` should be the same type to `prompt`, but got {type(_snake_case )} !='''
F''' {type(_snake_case )}.''' )
elif isinstance(_snake_case, _snake_case ):
snake_case__ : int = [negative_prompt]
elif batch_size != len(_snake_case ):
raise ValueError(
F'''`negative_prompt`: {negative_prompt} has batch size {len(_snake_case )}, but `prompt`:'''
F''' {prompt} has batch size {batch_size}. Please make sure that passed `negative_prompt` matches'''
' the batch size of `prompt`.' )
else:
snake_case__ : Tuple = negative_prompt
snake_case__ : Dict = text_input_ids.shape[-1]
snake_case__ : int = self.tokenizer(
_snake_case, padding='max_length', max_length=_snake_case, truncation=_snake_case, return_tensors='pt', )
snake_case__ : Optional[int] = self.text_encoder(uncond_input.input_ids.to(self.device ) )[0]
# duplicate unconditional embeddings for each generation per prompt, using mps friendly method
snake_case__ : List[Any] = uncond_embeddings.shape[1]
snake_case__ : str = uncond_embeddings.repeat(1, _snake_case, 1 )
snake_case__ : Union[str, Any] = uncond_embeddings.view(batch_size * num_images_per_prompt, _snake_case, -1 )
# For classifier free guidance, we need to do two forward passes.
# Here we concatenate the unconditional and text embeddings into a single batch
# to avoid doing two forward passes
snake_case__ : Tuple = torch.cat([uncond_embeddings, text_embeddings] )
# get the initial random noise unless the user supplied it
# Unlike in other pipelines, latents need to be generated in the target device
# for 1-to-1 results reproducibility with the CompVis implementation.
# However this currently doesn't work in `mps`.
snake_case__ : str = (batch_size * num_images_per_prompt, self.unet.config.in_channels, height // 8, width // 8)
snake_case__ : str = text_embeddings.dtype
if latents is None:
if self.device.type == "mps":
# randn does not exist on mps
snake_case__ : Dict = torch.randn(_snake_case, generator=_snake_case, device='cpu', dtype=_snake_case ).to(
self.device )
else:
snake_case__ : str = torch.randn(_snake_case, generator=_snake_case, device=self.device, dtype=_snake_case )
else:
if latents.shape != latents_shape:
raise ValueError(F'''Unexpected latents shape, got {latents.shape}, expected {latents_shape}''' )
snake_case__ : int = latents.to(self.device )
# set timesteps
self.scheduler.set_timesteps(_snake_case )
# Some schedulers like PNDM have timesteps as arrays
# It's more optimized to move all timesteps to correct device beforehand
snake_case__ : Any = self.scheduler.timesteps.to(self.device )
# scale the initial noise by the standard deviation required by the scheduler
snake_case__ : Any = latents * self.scheduler.init_noise_sigma
# prepare extra kwargs for the scheduler step, since not all schedulers have the same signature
# eta (η) is only used with the DDIMScheduler, it will be ignored for other schedulers.
# eta corresponds to η in DDIM paper: https://arxiv.org/abs/2010.02502
# and should be between [0, 1]
snake_case__ : List[str] = 'eta' in set(inspect.signature(self.scheduler.step ).parameters.keys() )
snake_case__ : Any = {}
if accepts_eta:
snake_case__ : Optional[int] = eta
for i, t in enumerate(self.progress_bar(_snake_case ) ):
# expand the latents if we are doing classifier free guidance
snake_case__ : List[Any] = torch.cat([latents] * 2 ) if do_classifier_free_guidance else latents
snake_case__ : Tuple = self.scheduler.scale_model_input(_snake_case, _snake_case )
# predict the noise residual
snake_case__ : str = self.unet(_snake_case, _snake_case, encoder_hidden_states=_snake_case ).sample
# perform guidance
if do_classifier_free_guidance:
snake_case__ , snake_case__ : List[str] = noise_pred.chunk(2 )
snake_case__ : Optional[int] = noise_pred_uncond + guidance_scale * (noise_pred_text - noise_pred_uncond)
# compute the previous noisy sample x_t -> x_t-1
snake_case__ : Union[str, Any] = self.scheduler.step(_snake_case, _snake_case, _snake_case, **_snake_case ).prev_sample
# call the callback, if provided
if callback is not None and i % callback_steps == 0:
callback(_snake_case, _snake_case, _snake_case )
snake_case__ : Optional[int] = 1 / 0.1_8_2_1_5 * latents
snake_case__ : Tuple = self.vae.decode(_snake_case ).sample
snake_case__ : Tuple = (image / 2 + 0.5).clamp(0, 1 )
# we always cast to float32 as this does not cause significant overhead and is compatible with bfloat16
snake_case__ : int = image.cpu().permute(0, 2, 3, 1 ).float().numpy()
if output_type == "pil":
snake_case__ : str = self.numpy_to_pil(_snake_case )
if not return_dict:
return image
return StableDiffusionPipelineOutput(images=_snake_case, nsfw_content_detected=_snake_case )
| 277 |
from typing import Dict, List
from nltk.translate import gleu_score
import datasets
from datasets import MetricInfo
a_ :Any = "\\n@misc{wu2016googles,\n title={Google's Neural Machine Translation System: Bridging the Gap between Human and Machine Translation},\n author={Yonghui Wu and Mike Schuster and Zhifeng Chen and Quoc V. Le and Mohammad Norouzi and Wolfgang Macherey\n and Maxim Krikun and Yuan Cao and Qin Gao and Klaus Macherey and Jeff Klingner and Apurva Shah and Melvin\n Johnson and Xiaobing Liu and Łukasz Kaiser and Stephan Gouws and Yoshikiyo Kato and Taku Kudo and Hideto\n Kazawa and Keith Stevens and George Kurian and Nishant Patil and Wei Wang and Cliff Young and\n Jason Smith and Jason Riesa and Alex Rudnick and Oriol Vinyals and Greg Corrado and Macduff Hughes\n and Jeffrey Dean},\n year={2016},\n eprint={1609.08144},\n archivePrefix={arXiv},\n primaryClass={cs.CL}\n}\n"
a_ :List[str] = "\\nThe BLEU score has some undesirable properties when used for single\nsentences, as it was designed to be a corpus measure. We therefore\nuse a slightly different score for our RL experiments which we call\nthe 'GLEU score'. For the GLEU score, we record all sub-sequences of\n1, 2, 3 or 4 tokens in output and target sequence (n-grams). We then\ncompute a recall, which is the ratio of the number of matching n-grams\nto the number of total n-grams in the target (ground truth) sequence,\nand a precision, which is the ratio of the number of matching n-grams\nto the number of total n-grams in the generated output sequence. Then\nGLEU score is simply the minimum of recall and precision. This GLEU\nscore's range is always between 0 (no matches) and 1 (all match) and\nit is symmetrical when switching output and target. According to\nour experiments, GLEU score correlates quite well with the BLEU\nmetric on a corpus level but does not have its drawbacks for our per\nsentence reward objective.\n"
a_ :List[str] = "\\nComputes corpus-level Google BLEU (GLEU) score of translated segments against one or more references.\nInstead of averaging the sentence level GLEU scores (i.e. macro-average precision), Wu et al. (2016) sum up the matching\ntokens and the max of hypothesis and reference tokens for each sentence, then compute using the aggregate values.\n\nArgs:\n predictions (list of str): list of translations to score.\n Each translation should be tokenized into a list of tokens.\n references (list of list of str): list of lists of references for each translation.\n Each reference should be tokenized into a list of tokens.\n min_len (int): The minimum order of n-gram this function should extract. Defaults to 1.\n max_len (int): The maximum order of n-gram this function should extract. Defaults to 4.\n\nReturns:\n 'google_bleu': google_bleu score\n\nExamples:\n Example 1:\n >>> hyp1 = ['It', 'is', 'a', 'guide', 'to', 'action', 'which',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'always',\n ... 'disobeys', 'the', 'commands', 'of', 'the', 'cat']\n >>> ref1a = ['It', 'is', 'the', 'guiding', 'principle', 'which',\n ... 'guarantees', 'the', 'rubber', 'duck', 'forces', 'never',\n ... 'being', 'under', 'the', 'command', 'of', 'the', 'cat']\n\n >>> hyp2 = ['he', 'read', 'the', 'book', 'because', 'he', 'was',\n ... 'interested', 'in', 'world', 'history']\n >>> ref2a = ['he', 'was', 'interested', 'in', 'world', 'history',\n ... 'because', 'he', 'read', 'the', 'book']\n\n >>> list_of_references = [[ref1a], [ref2a]]\n >>> hypotheses = [hyp1, hyp2]\n >>> google_bleu = datasets.load_metric(\"google_bleu\")\n >>> results = google_bleu.compute(predictions=hypotheses, references=list_of_references)\n >>> print(round(results[\"google_bleu\"], 2))\n 0.44\n\n Example 2:\n >>> hyp1 = ['It', 'is', 'a', 'guide', 'to', 'action', 'which',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'always',\n ... 'disobeys', 'the', 'commands', 'of', 'the', 'cat']\n >>> ref1a = ['It', 'is', 'the', 'guiding', 'principle', 'which',\n ... 'guarantees', 'the', 'rubber', 'duck', 'forces', 'never',\n ... 'being', 'under', 'the', 'command', 'of', 'the', 'cat']\n >>> ref1b = ['It', 'is', 'a', 'guide', 'to', 'action', 'that',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'will', 'never',\n ... 'heed', 'the', 'cat', 'commands']\n >>> ref1c = ['It', 'is', 'the', 'practical', 'guide', 'for', 'the',\n ... 'rubber', 'duck', 'army', 'never', 'to', 'heed', 'the', 'directions',\n ... 'of', 'the', 'cat']\n\n >>> hyp2 = ['he', 'read', 'the', 'book', 'because', 'he', 'was',\n ... 'interested', 'in', 'world', 'history']\n >>> ref2a = ['he', 'was', 'interested', 'in', 'world', 'history',\n ... 'because', 'he', 'read', 'the', 'book']\n\n >>> list_of_references = [[ref1a, ref1b, ref1c], [ref2a]]\n >>> hypotheses = [hyp1, hyp2]\n >>> google_bleu = datasets.load_metric(\"google_bleu\")\n >>> results = google_bleu.compute(predictions=hypotheses, references=list_of_references)\n >>> print(round(results[\"google_bleu\"], 2))\n 0.61\n\n Example 3:\n >>> hyp1 = ['It', 'is', 'a', 'guide', 'to', 'action', 'which',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'always',\n ... 'disobeys', 'the', 'commands', 'of', 'the', 'cat']\n >>> ref1a = ['It', 'is', 'the', 'guiding', 'principle', 'which',\n ... 'guarantees', 'the', 'rubber', 'duck', 'forces', 'never',\n ... 'being', 'under', 'the', 'command', 'of', 'the', 'cat']\n >>> ref1b = ['It', 'is', 'a', 'guide', 'to', 'action', 'that',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'will', 'never',\n ... 'heed', 'the', 'cat', 'commands']\n >>> ref1c = ['It', 'is', 'the', 'practical', 'guide', 'for', 'the',\n ... 'rubber', 'duck', 'army', 'never', 'to', 'heed', 'the', 'directions',\n ... 'of', 'the', 'cat']\n\n >>> hyp2 = ['he', 'read', 'the', 'book', 'because', 'he', 'was',\n ... 'interested', 'in', 'world', 'history']\n >>> ref2a = ['he', 'was', 'interested', 'in', 'world', 'history',\n ... 'because', 'he', 'read', 'the', 'book']\n\n >>> list_of_references = [[ref1a, ref1b, ref1c], [ref2a]]\n >>> hypotheses = [hyp1, hyp2]\n >>> google_bleu = datasets.load_metric(\"google_bleu\")\n >>> results = google_bleu.compute(predictions=hypotheses, references=list_of_references, min_len=2)\n >>> print(round(results[\"google_bleu\"], 2))\n 0.53\n\n Example 4:\n >>> hyp1 = ['It', 'is', 'a', 'guide', 'to', 'action', 'which',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'always',\n ... 'disobeys', 'the', 'commands', 'of', 'the', 'cat']\n >>> ref1a = ['It', 'is', 'the', 'guiding', 'principle', 'which',\n ... 'guarantees', 'the', 'rubber', 'duck', 'forces', 'never',\n ... 'being', 'under', 'the', 'command', 'of', 'the', 'cat']\n >>> ref1b = ['It', 'is', 'a', 'guide', 'to', 'action', 'that',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'will', 'never',\n ... 'heed', 'the', 'cat', 'commands']\n >>> ref1c = ['It', 'is', 'the', 'practical', 'guide', 'for', 'the',\n ... 'rubber', 'duck', 'army', 'never', 'to', 'heed', 'the', 'directions',\n ... 'of', 'the', 'cat']\n\n >>> hyp2 = ['he', 'read', 'the', 'book', 'because', 'he', 'was',\n ... 'interested', 'in', 'world', 'history']\n >>> ref2a = ['he', 'was', 'interested', 'in', 'world', 'history',\n ... 'because', 'he', 'read', 'the', 'book']\n\n >>> list_of_references = [[ref1a, ref1b, ref1c], [ref2a]]\n >>> hypotheses = [hyp1, hyp2]\n >>> google_bleu = datasets.load_metric(\"google_bleu\")\n >>> results = google_bleu.compute(predictions=hypotheses,references=list_of_references, min_len=2, max_len=6)\n >>> print(round(results[\"google_bleu\"], 2))\n 0.4\n"
@datasets.utils.file_utils.add_start_docstrings(_DESCRIPTION , _KWARGS_DESCRIPTION )
class snake_case__ ( datasets.Metric ):
"""simple docstring"""
def lowercase_ ( self : str ) ->MetricInfo:
return datasets.MetricInfo(
description=_DESCRIPTION, citation=_CITATION, inputs_description=_KWARGS_DESCRIPTION, features=datasets.Features(
{
'predictions': datasets.Sequence(datasets.Value('string', id='token' ), id='sequence' ),
'references': datasets.Sequence(
datasets.Sequence(datasets.Value('string', id='token' ), id='sequence' ), id='references' ),
} ), )
def lowercase_ ( self : str, _snake_case : List[List[List[str]]], _snake_case : List[List[str]], _snake_case : int = 1, _snake_case : int = 4, ) ->Dict[str, float]:
return {
"google_bleu": gleu_score.corpus_gleu(
list_of_references=_snake_case, hypotheses=_snake_case, min_len=_snake_case, max_len=_snake_case )
}
| 277 | 1 |
def lowercase_ (A : list[int] , A : list[int] , A : int ):
return not any(
neighbour == 1 and colored_vertices[i] == color
for i, neighbour in enumerate(A ) )
def lowercase_ (A : list[list[int]] , A : int , A : list[int] , A : int ):
# Base Case
if index == len(A ):
return True
# Recursive Step
for i in range(A ):
if valid_coloring(graph[index] , A , A ):
# Color current vertex
snake_case__ : Tuple = i
# Validate coloring
if util_color(A , A , A , index + 1 ):
return True
# Backtrack
snake_case__ : int = -1
return False
def lowercase_ (A : list[list[int]] , A : int ):
snake_case__ : Union[str, Any] = [-1] * len(A )
if util_color(A , A , A , 0 ):
return colored_vertices
return []
| 277 |
from math import factorial
def lowercase_ (A : int , A : int , A : float ):
if successes > trials:
raise ValueError('successes must be lower or equal to trials' )
if trials < 0 or successes < 0:
raise ValueError('the function is defined for non-negative integers' )
if not isinstance(A , A ) or not isinstance(A , A ):
raise ValueError('the function is defined for non-negative integers' )
if not 0 < prob < 1:
raise ValueError('prob has to be in range of 1 - 0' )
snake_case__ : List[Any] = (prob**successes) * ((1 - prob) ** (trials - successes))
# Calculate the binomial coefficient: n! / k!(n-k)!
snake_case__ : List[str] = float(factorial(A ) )
coefficient /= factorial(A ) * factorial(trials - successes )
return probability * coefficient
if __name__ == "__main__":
from doctest import testmod
testmod()
print("Probability of 2 successes out of 4 trails")
print("with probability of 0.75 is:", end=" ")
print(binomial_distribution(2, 4, 0.75))
| 277 | 1 |
import unittest
import numpy as np
from transformers.testing_utils import require_torch, require_vision
from transformers.utils import is_torch_available, is_vision_available
from ...test_image_processing_common import ImageProcessingSavingTestMixin, prepare_image_inputs
if is_torch_available():
import torch
if is_vision_available():
from PIL import Image
from transformers import PoolFormerImageProcessor
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
def __init__( self : Optional[int], _snake_case : List[Any], _snake_case : str=7, _snake_case : Tuple=3, _snake_case : List[str]=3_0, _snake_case : Tuple=4_0_0, _snake_case : Any=True, _snake_case : List[Any]=None, _snake_case : int=0.9, _snake_case : Optional[Any]=None, _snake_case : str=True, _snake_case : Union[str, Any]=[0.5, 0.5, 0.5], _snake_case : Union[str, Any]=[0.5, 0.5, 0.5], ) ->List[Any]:
snake_case__ : int = size if size is not None else {'shortest_edge': 3_0}
snake_case__ : Tuple = crop_size if crop_size is not None else {'height': 3_0, 'width': 3_0}
snake_case__ : Union[str, Any] = parent
snake_case__ : Dict = batch_size
snake_case__ : int = num_channels
snake_case__ : Tuple = min_resolution
snake_case__ : Any = max_resolution
snake_case__ : List[Any] = do_resize_and_center_crop
snake_case__ : str = size
snake_case__ : str = crop_pct
snake_case__ : List[str] = crop_size
snake_case__ : Optional[int] = do_normalize
snake_case__ : Tuple = image_mean
snake_case__ : Tuple = image_std
def lowercase_ ( self : Optional[int] ) ->int:
return {
"size": self.size,
"do_resize_and_center_crop": self.do_resize_and_center_crop,
"crop_pct": self.crop_pct,
"crop_size": self.crop_size,
"do_normalize": self.do_normalize,
"image_mean": self.image_mean,
"image_std": self.image_std,
}
@require_torch
@require_vision
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = PoolFormerImageProcessor if is_vision_available() else None
def lowercase_ ( self : Union[str, Any] ) ->Dict:
snake_case__ : Union[str, Any] = PoolFormerImageProcessingTester(self )
@property
def lowercase_ ( self : int ) ->Dict:
return self.image_processor_tester.prepare_image_processor_dict()
def lowercase_ ( self : Union[str, Any] ) ->Optional[int]:
snake_case__ : List[str] = self.image_processing_class(**self.image_processor_dict )
self.assertTrue(hasattr(_snake_case, 'do_resize_and_center_crop' ) )
self.assertTrue(hasattr(_snake_case, 'size' ) )
self.assertTrue(hasattr(_snake_case, 'crop_pct' ) )
self.assertTrue(hasattr(_snake_case, 'do_normalize' ) )
self.assertTrue(hasattr(_snake_case, 'image_mean' ) )
self.assertTrue(hasattr(_snake_case, 'image_std' ) )
def lowercase_ ( self : List[str] ) ->List[str]:
snake_case__ : Union[str, Any] = self.image_processing_class.from_dict(self.image_processor_dict )
self.assertEqual(image_processor.size, {'shortest_edge': 3_0} )
self.assertEqual(image_processor.crop_size, {'height': 3_0, 'width': 3_0} )
snake_case__ : int = self.image_processing_class.from_dict(self.image_processor_dict, size=4_2, crop_size=8_4 )
self.assertEqual(image_processor.size, {'shortest_edge': 4_2} )
self.assertEqual(image_processor.crop_size, {'height': 8_4, 'width': 8_4} )
def lowercase_ ( self : List[Any] ) ->List[Any]:
pass
def lowercase_ ( self : List[str] ) ->str:
# Initialize image_processing
snake_case__ : Union[str, Any] = self.image_processing_class(**self.image_processor_dict )
# create random PIL images
snake_case__ : List[str] = prepare_image_inputs(self.image_processor_tester, equal_resolution=_snake_case )
for image in image_inputs:
self.assertIsInstance(_snake_case, Image.Image )
# Test not batched input
snake_case__ : Optional[int] = image_processing(image_inputs[0], return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
# Test batched
snake_case__ : str = image_processing(_snake_case, return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
def lowercase_ ( self : int ) ->List[Any]:
# Initialize image_processing
snake_case__ : Optional[int] = self.image_processing_class(**self.image_processor_dict )
# create random numpy tensors
snake_case__ : Dict = prepare_image_inputs(self.image_processor_tester, equal_resolution=_snake_case, numpify=_snake_case )
for image in image_inputs:
self.assertIsInstance(_snake_case, np.ndarray )
# Test not batched input
snake_case__ : Dict = image_processing(image_inputs[0], return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
# Test batched
snake_case__ : List[Any] = image_processing(_snake_case, return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
def lowercase_ ( self : List[str] ) ->List[str]:
# Initialize image_processing
snake_case__ : Tuple = self.image_processing_class(**self.image_processor_dict )
# create random PyTorch tensors
snake_case__ : List[str] = prepare_image_inputs(self.image_processor_tester, equal_resolution=_snake_case, torchify=_snake_case )
for image in image_inputs:
self.assertIsInstance(_snake_case, torch.Tensor )
# Test not batched input
snake_case__ : Tuple = image_processing(image_inputs[0], return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
# Test batched
snake_case__ : Optional[Any] = image_processing(_snake_case, return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
| 277 |
from collections import UserDict
from typing import Union
import numpy as np
import requests
from ..utils import (
add_end_docstrings,
logging,
)
from .audio_classification import ffmpeg_read
from .base import PIPELINE_INIT_ARGS, Pipeline
a_ :List[Any] = logging.get_logger(__name__)
@add_end_docstrings(lowerCAmelCase_ )
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
def __init__( self : Optional[Any], **_snake_case : str ) ->Dict:
super().__init__(**_snake_case )
if self.framework != "pt":
raise ValueError(F'''The {self.__class__} is only available in PyTorch.''' )
# No specific FOR_XXX available yet
def __call__( self : Union[str, Any], _snake_case : Union[np.ndarray, bytes, str], **_snake_case : Tuple ) ->Dict:
return super().__call__(_snake_case, **_snake_case )
def lowercase_ ( self : Tuple, **_snake_case : Any ) ->Union[str, Any]:
snake_case__ : str = {}
if "candidate_labels" in kwargs:
snake_case__ : str = kwargs['candidate_labels']
if "hypothesis_template" in kwargs:
snake_case__ : str = kwargs['hypothesis_template']
return preprocess_params, {}, {}
def lowercase_ ( self : Dict, _snake_case : str, _snake_case : Optional[int]=None, _snake_case : List[str]="This is a sound of {}." ) ->int:
if isinstance(_snake_case, _snake_case ):
if audio.startswith('http://' ) or audio.startswith('https://' ):
# We need to actually check for a real protocol, otherwise it's impossible to use a local file
# like http_huggingface_co.png
snake_case__ : List[Any] = requests.get(_snake_case ).content
else:
with open(_snake_case, 'rb' ) as f:
snake_case__ : Union[str, Any] = f.read()
if isinstance(_snake_case, _snake_case ):
snake_case__ : List[Any] = ffmpeg_read(_snake_case, self.feature_extractor.sampling_rate )
if not isinstance(_snake_case, np.ndarray ):
raise ValueError('We expect a numpy ndarray as input' )
if len(audio.shape ) != 1:
raise ValueError('We expect a single channel audio input for ZeroShotAudioClassificationPipeline' )
snake_case__ : Tuple = self.feature_extractor(
[audio], sampling_rate=self.feature_extractor.sampling_rate, return_tensors='pt' )
snake_case__ : int = candidate_labels
snake_case__ : int = [hypothesis_template.format(_snake_case ) for x in candidate_labels]
snake_case__ : Optional[int] = self.tokenizer(_snake_case, return_tensors=self.framework, padding=_snake_case )
snake_case__ : List[Any] = [text_inputs]
return inputs
def lowercase_ ( self : Optional[int], _snake_case : Optional[Any] ) ->int:
snake_case__ : Optional[int] = model_inputs.pop('candidate_labels' )
snake_case__ : str = model_inputs.pop('text_inputs' )
if isinstance(text_inputs[0], _snake_case ):
snake_case__ : Optional[Any] = text_inputs[0]
else:
# Batching case.
snake_case__ : int = text_inputs[0][0]
snake_case__ : Any = self.model(**_snake_case, **_snake_case )
snake_case__ : List[Any] = {
'candidate_labels': candidate_labels,
'logits': outputs.logits_per_audio,
}
return model_outputs
def lowercase_ ( self : Union[str, Any], _snake_case : str ) ->List[str]:
snake_case__ : int = model_outputs.pop('candidate_labels' )
snake_case__ : List[Any] = model_outputs['logits'][0]
if self.framework == "pt":
snake_case__ : Tuple = logits.softmax(dim=0 )
snake_case__ : Union[str, Any] = probs.tolist()
else:
raise ValueError('`tf` framework not supported.' )
snake_case__ : Union[str, Any] = [
{'score': score, 'label': candidate_label}
for score, candidate_label in sorted(zip(_snake_case, _snake_case ), key=lambda _snake_case : -x[0] )
]
return result
| 277 | 1 |
from ...configuration_utils import PretrainedConfig
from ...utils import logging
a_ :Optional[int] = logging.get_logger(__name__)
a_ :Dict = {"openai-gpt": "https://huggingface.co/openai-gpt/resolve/main/config.json"}
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = """openai-gpt"""
_SCREAMING_SNAKE_CASE = {
"""max_position_embeddings""": """n_positions""",
"""hidden_size""": """n_embd""",
"""num_attention_heads""": """n_head""",
"""num_hidden_layers""": """n_layer""",
}
def __init__( self : Optional[int], _snake_case : Dict=4_0_4_7_8, _snake_case : str=5_1_2, _snake_case : int=7_6_8, _snake_case : Tuple=1_2, _snake_case : Any=1_2, _snake_case : str="gelu", _snake_case : List[str]=0.1, _snake_case : Any=0.1, _snake_case : Dict=0.1, _snake_case : int=1e-5, _snake_case : Optional[Any]=0.0_2, _snake_case : List[Any]="cls_index", _snake_case : Any=True, _snake_case : Any=None, _snake_case : int=True, _snake_case : Optional[Any]=0.1, **_snake_case : List[Any], ) ->Optional[int]:
snake_case__ : int = vocab_size
snake_case__ : Dict = n_positions
snake_case__ : str = n_embd
snake_case__ : str = n_layer
snake_case__ : List[Any] = n_head
snake_case__ : List[Any] = afn
snake_case__ : Optional[Any] = resid_pdrop
snake_case__ : List[str] = embd_pdrop
snake_case__ : List[Any] = attn_pdrop
snake_case__ : Optional[int] = layer_norm_epsilon
snake_case__ : str = initializer_range
snake_case__ : List[str] = summary_type
snake_case__ : Optional[int] = summary_use_proj
snake_case__ : List[str] = summary_activation
snake_case__ : Optional[Any] = summary_first_dropout
snake_case__ : int = summary_proj_to_labels
super().__init__(**_snake_case )
| 277 |
import collections
import inspect
import unittest
from transformers import SwinvaConfig
from transformers.testing_utils import require_torch, require_vision, slow, torch_device
from transformers.utils import cached_property, is_torch_available, is_vision_available
from ...test_configuration_common import ConfigTester
from ...test_modeling_common import ModelTesterMixin, _config_zero_init, floats_tensor, ids_tensor
from ...test_pipeline_mixin import PipelineTesterMixin
if is_torch_available():
import torch
from torch import nn
from transformers import SwinvaForImageClassification, SwinvaForMaskedImageModeling, SwinvaModel
from transformers.models.swinva.modeling_swinva import SWINV2_PRETRAINED_MODEL_ARCHIVE_LIST
if is_vision_available():
from PIL import Image
from transformers import AutoImageProcessor
class snake_case__ :
"""simple docstring"""
def __init__( self : Tuple, _snake_case : Any, _snake_case : int=1_3, _snake_case : Optional[int]=3_2, _snake_case : Tuple=2, _snake_case : Any=3, _snake_case : Tuple=1_6, _snake_case : Tuple=[1, 2, 1], _snake_case : Dict=[2, 2, 4], _snake_case : str=2, _snake_case : Union[str, Any]=2.0, _snake_case : Dict=True, _snake_case : Dict=0.0, _snake_case : str=0.0, _snake_case : str=0.1, _snake_case : List[str]="gelu", _snake_case : int=False, _snake_case : Optional[Any]=True, _snake_case : List[Any]=0.0_2, _snake_case : Union[str, Any]=1e-5, _snake_case : Union[str, Any]=True, _snake_case : List[Any]=None, _snake_case : Any=True, _snake_case : List[Any]=1_0, _snake_case : str=8, ) ->Union[str, Any]:
snake_case__ : Any = parent
snake_case__ : Tuple = batch_size
snake_case__ : Tuple = image_size
snake_case__ : Any = patch_size
snake_case__ : Optional[int] = num_channels
snake_case__ : Tuple = embed_dim
snake_case__ : Any = depths
snake_case__ : Any = num_heads
snake_case__ : List[str] = window_size
snake_case__ : Dict = mlp_ratio
snake_case__ : Optional[int] = qkv_bias
snake_case__ : Optional[Any] = hidden_dropout_prob
snake_case__ : List[str] = attention_probs_dropout_prob
snake_case__ : Union[str, Any] = drop_path_rate
snake_case__ : str = hidden_act
snake_case__ : Union[str, Any] = use_absolute_embeddings
snake_case__ : Union[str, Any] = patch_norm
snake_case__ : Any = layer_norm_eps
snake_case__ : Tuple = initializer_range
snake_case__ : Dict = is_training
snake_case__ : Any = scope
snake_case__ : Optional[Any] = use_labels
snake_case__ : str = type_sequence_label_size
snake_case__ : List[Any] = encoder_stride
def lowercase_ ( self : Tuple ) ->str:
snake_case__ : Tuple = floats_tensor([self.batch_size, self.num_channels, self.image_size, self.image_size] )
snake_case__ : List[Any] = None
if self.use_labels:
snake_case__ : Optional[Any] = ids_tensor([self.batch_size], self.type_sequence_label_size )
snake_case__ : Any = self.get_config()
return config, pixel_values, labels
def lowercase_ ( self : Optional[int] ) ->Optional[int]:
return SwinvaConfig(
image_size=self.image_size, patch_size=self.patch_size, num_channels=self.num_channels, embed_dim=self.embed_dim, depths=self.depths, num_heads=self.num_heads, window_size=self.window_size, mlp_ratio=self.mlp_ratio, qkv_bias=self.qkv_bias, hidden_dropout_prob=self.hidden_dropout_prob, attention_probs_dropout_prob=self.attention_probs_dropout_prob, drop_path_rate=self.drop_path_rate, hidden_act=self.hidden_act, use_absolute_embeddings=self.use_absolute_embeddings, path_norm=self.patch_norm, layer_norm_eps=self.layer_norm_eps, initializer_range=self.initializer_range, encoder_stride=self.encoder_stride, )
def lowercase_ ( self : Optional[int], _snake_case : str, _snake_case : List[str], _snake_case : int ) ->Dict:
snake_case__ : List[Any] = SwinvaModel(config=_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Optional[int] = model(_snake_case )
snake_case__ : List[Any] = ((config.image_size // config.patch_size) ** 2) // (4 ** (len(config.depths ) - 1))
snake_case__ : List[Any] = int(config.embed_dim * 2 ** (len(config.depths ) - 1) )
self.parent.assertEqual(result.last_hidden_state.shape, (self.batch_size, expected_seq_len, expected_dim) )
def lowercase_ ( self : Optional[Any], _snake_case : Any, _snake_case : List[str], _snake_case : Dict ) ->List[Any]:
snake_case__ : List[str] = SwinvaForMaskedImageModeling(config=_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Union[str, Any] = model(_snake_case )
self.parent.assertEqual(
result.logits.shape, (self.batch_size, self.num_channels, self.image_size, self.image_size) )
# test greyscale images
snake_case__ : Optional[Any] = 1
snake_case__ : Optional[int] = SwinvaForMaskedImageModeling(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Tuple = floats_tensor([self.batch_size, 1, self.image_size, self.image_size] )
snake_case__ : Any = model(_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, 1, self.image_size, self.image_size) )
def lowercase_ ( self : List[str], _snake_case : int, _snake_case : List[Any], _snake_case : Optional[int] ) ->Any:
snake_case__ : Tuple = self.type_sequence_label_size
snake_case__ : int = SwinvaForImageClassification(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Tuple = model(_snake_case, labels=_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.type_sequence_label_size) )
def lowercase_ ( self : Any ) ->Dict:
snake_case__ : str = self.prepare_config_and_inputs()
snake_case__ , snake_case__ , snake_case__ : List[str] = config_and_inputs
snake_case__ : Union[str, Any] = {'pixel_values': pixel_values}
return config, inputs_dict
@require_torch
class snake_case__ ( lowerCAmelCase_ , lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = (
(SwinvaModel, SwinvaForImageClassification, SwinvaForMaskedImageModeling) if is_torch_available() else ()
)
_SCREAMING_SNAKE_CASE = (
{"""feature-extraction""": SwinvaModel, """image-classification""": SwinvaForImageClassification}
if is_torch_available()
else {}
)
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
def lowercase_ ( self : Union[str, Any] ) ->Dict:
snake_case__ : Optional[int] = SwinvaModelTester(self )
snake_case__ : int = ConfigTester(self, config_class=_snake_case, embed_dim=3_7 )
def lowercase_ ( self : Tuple ) ->int:
self.config_tester.create_and_test_config_to_json_string()
self.config_tester.create_and_test_config_to_json_file()
self.config_tester.create_and_test_config_from_and_save_pretrained()
self.config_tester.create_and_test_config_with_num_labels()
self.config_tester.check_config_can_be_init_without_params()
self.config_tester.check_config_arguments_init()
def lowercase_ ( self : Any ) ->str:
snake_case__ : int = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_model(*_snake_case )
@unittest.skip(reason='Got `CUDA error: misaligned address` with PyTorch 2.0.0.' )
def lowercase_ ( self : Any ) ->Union[str, Any]:
pass
@unittest.skip(reason='Swinv2 does not use inputs_embeds' )
def lowercase_ ( self : str ) ->Union[str, Any]:
pass
def lowercase_ ( self : Optional[Any] ) ->Union[str, Any]:
snake_case__ , snake_case__ : Optional[int] = self.model_tester.prepare_config_and_inputs_for_common()
for model_class in self.all_model_classes:
snake_case__ : Union[str, Any] = model_class(_snake_case )
self.assertIsInstance(model.get_input_embeddings(), (nn.Module) )
snake_case__ : Union[str, Any] = model.get_output_embeddings()
self.assertTrue(x is None or isinstance(_snake_case, nn.Linear ) )
def lowercase_ ( self : List[str] ) ->Optional[int]:
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
for model_class in self.all_model_classes:
snake_case__ : Any = model_class(_snake_case )
snake_case__ : Dict = inspect.signature(model.forward )
# signature.parameters is an OrderedDict => so arg_names order is deterministic
snake_case__ : Optional[Any] = [*signature.parameters.keys()]
snake_case__ : List[Any] = ['pixel_values']
self.assertListEqual(arg_names[:1], _snake_case )
def lowercase_ ( self : str ) ->Union[str, Any]:
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : int = True
for model_class in self.all_model_classes:
snake_case__ : str = True
snake_case__ : Union[str, Any] = False
snake_case__ : Tuple = True
snake_case__ : int = model_class(_snake_case )
model.to(_snake_case )
model.eval()
with torch.no_grad():
snake_case__ : Optional[int] = model(**self._prepare_for_class(_snake_case, _snake_case ) )
snake_case__ : List[str] = outputs.attentions
snake_case__ : List[Any] = len(self.model_tester.depths )
self.assertEqual(len(_snake_case ), _snake_case )
# check that output_attentions also work using config
del inputs_dict["output_attentions"]
snake_case__ : str = True
snake_case__ : Tuple = config.window_size**2
snake_case__ : Optional[int] = model_class(_snake_case )
model.to(_snake_case )
model.eval()
with torch.no_grad():
snake_case__ : str = model(**self._prepare_for_class(_snake_case, _snake_case ) )
snake_case__ : Tuple = outputs.attentions
self.assertEqual(len(_snake_case ), _snake_case )
self.assertListEqual(
list(attentions[0].shape[-3:] ), [self.model_tester.num_heads[0], window_size_squared, window_size_squared], )
snake_case__ : Optional[Any] = len(_snake_case )
# Check attention is always last and order is fine
snake_case__ : Optional[int] = True
snake_case__ : Dict = True
snake_case__ : List[Any] = model_class(_snake_case )
model.to(_snake_case )
model.eval()
with torch.no_grad():
snake_case__ : Optional[int] = model(**self._prepare_for_class(_snake_case, _snake_case ) )
if hasattr(self.model_tester, 'num_hidden_states_types' ):
snake_case__ : str = self.model_tester.num_hidden_states_types
else:
# also another +1 for reshaped_hidden_states
snake_case__ : Dict = 2
self.assertEqual(out_len + added_hidden_states, len(_snake_case ) )
snake_case__ : Any = outputs.attentions
self.assertEqual(len(_snake_case ), _snake_case )
self.assertListEqual(
list(self_attentions[0].shape[-3:] ), [self.model_tester.num_heads[0], window_size_squared, window_size_squared], )
def lowercase_ ( self : Dict, _snake_case : Tuple, _snake_case : Any, _snake_case : int, _snake_case : Optional[int] ) ->str:
snake_case__ : Dict = model_class(_snake_case )
model.to(_snake_case )
model.eval()
with torch.no_grad():
snake_case__ : List[Any] = model(**self._prepare_for_class(_snake_case, _snake_case ) )
snake_case__ : Dict = outputs.hidden_states
snake_case__ : int = getattr(
self.model_tester, 'expected_num_hidden_layers', len(self.model_tester.depths ) + 1 )
self.assertEqual(len(_snake_case ), _snake_case )
# Swinv2 has a different seq_length
snake_case__ : int = (
config.patch_size
if isinstance(config.patch_size, collections.abc.Iterable )
else (config.patch_size, config.patch_size)
)
snake_case__ : Optional[Any] = (image_size[1] // patch_size[1]) * (image_size[0] // patch_size[0])
self.assertListEqual(
list(hidden_states[0].shape[-2:] ), [num_patches, self.model_tester.embed_dim], )
snake_case__ : Union[str, Any] = outputs.reshaped_hidden_states
self.assertEqual(len(_snake_case ), _snake_case )
snake_case__ , snake_case__ , snake_case__ , snake_case__ : str = reshaped_hidden_states[0].shape
snake_case__ : Any = (
reshaped_hidden_states[0].view(_snake_case, _snake_case, height * width ).permute(0, 2, 1 )
)
self.assertListEqual(
list(reshaped_hidden_states.shape[-2:] ), [num_patches, self.model_tester.embed_dim], )
def lowercase_ ( self : str ) ->List[Any]:
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : List[Any] = (
self.model_tester.image_size
if isinstance(self.model_tester.image_size, collections.abc.Iterable )
else (self.model_tester.image_size, self.model_tester.image_size)
)
for model_class in self.all_model_classes:
snake_case__ : Optional[int] = True
self.check_hidden_states_output(_snake_case, _snake_case, _snake_case, _snake_case )
# check that output_hidden_states also work using config
del inputs_dict["output_hidden_states"]
snake_case__ : Dict = True
self.check_hidden_states_output(_snake_case, _snake_case, _snake_case, _snake_case )
def lowercase_ ( self : List[str] ) ->str:
snake_case__ , snake_case__ : Optional[Any] = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : List[str] = 3
snake_case__ : Union[str, Any] = (
self.model_tester.image_size
if isinstance(self.model_tester.image_size, collections.abc.Iterable )
else (self.model_tester.image_size, self.model_tester.image_size)
)
snake_case__ : str = (
config.patch_size
if isinstance(config.patch_size, collections.abc.Iterable )
else (config.patch_size, config.patch_size)
)
snake_case__ : Tuple = image_size[0] + patch_size[0] - (image_size[0] % patch_size[0])
snake_case__ : Optional[Any] = image_size[1] + patch_size[1] - (image_size[1] % patch_size[1])
for model_class in self.all_model_classes:
snake_case__ : int = True
self.check_hidden_states_output(_snake_case, _snake_case, _snake_case, (padded_height, padded_width) )
# check that output_hidden_states also work using config
del inputs_dict["output_hidden_states"]
snake_case__ : List[str] = True
self.check_hidden_states_output(_snake_case, _snake_case, _snake_case, (padded_height, padded_width) )
def lowercase_ ( self : List[str] ) ->Optional[int]:
snake_case__ : Any = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_masked_image_modeling(*_snake_case )
def lowercase_ ( self : List[Any] ) ->str:
snake_case__ : Any = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_image_classification(*_snake_case )
@slow
def lowercase_ ( self : str ) ->Union[str, Any]:
for model_name in SWINV2_PRETRAINED_MODEL_ARCHIVE_LIST[:1]:
snake_case__ : Dict = SwinvaModel.from_pretrained(_snake_case )
self.assertIsNotNone(_snake_case )
def lowercase_ ( self : Optional[int] ) ->List[str]:
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : List[Any] = _config_zero_init(_snake_case )
for model_class in self.all_model_classes:
snake_case__ : List[str] = model_class(config=_snake_case )
for name, param in model.named_parameters():
if "embeddings" not in name and "logit_scale" not in name and param.requires_grad:
self.assertIn(
((param.data.mean() * 1e9).round() / 1e9).item(), [0.0, 1.0], msg=F'''Parameter {name} of model {model_class} seems not properly initialized''', )
@require_vision
@require_torch
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
@cached_property
def lowercase_ ( self : Union[str, Any] ) ->List[str]:
return (
AutoImageProcessor.from_pretrained('microsoft/swinv2-tiny-patch4-window8-256' )
if is_vision_available()
else None
)
@slow
def lowercase_ ( self : int ) ->List[Any]:
snake_case__ : Any = SwinvaForImageClassification.from_pretrained('microsoft/swinv2-tiny-patch4-window8-256' ).to(
_snake_case )
snake_case__ : int = self.default_image_processor
snake_case__ : Union[str, Any] = Image.open('./tests/fixtures/tests_samples/COCO/000000039769.png' )
snake_case__ : Optional[Any] = image_processor(images=_snake_case, return_tensors='pt' ).to(_snake_case )
# forward pass
with torch.no_grad():
snake_case__ : List[str] = model(**_snake_case )
# verify the logits
snake_case__ : int = torch.Size((1, 1_0_0_0) )
self.assertEqual(outputs.logits.shape, _snake_case )
snake_case__ : Optional[int] = torch.tensor([-0.3_9_4_7, -0.4_3_0_6, 0.0_0_2_6] ).to(_snake_case )
self.assertTrue(torch.allclose(outputs.logits[0, :3], _snake_case, atol=1e-4 ) )
| 277 | 1 |
import argparse
import json
import os
import fairseq
import torch
from fairseq.data import Dictionary
from transformers import (
WavaVecaConfig,
WavaVecaCTCTokenizer,
WavaVecaFeatureExtractor,
WavaVecaForCTC,
WavaVecaForPreTraining,
WavaVecaProcessor,
logging,
)
from transformers.models.wavaveca.modeling_wavaveca import WavaVecaForSequenceClassification
logging.set_verbosity_info()
a_ :List[Any] = logging.get_logger(__name__)
a_ :List[Any] = {
"post_extract_proj": "feature_projection.projection",
"encoder.pos_conv.0": "encoder.pos_conv_embed.conv",
"self_attn.k_proj": "encoder.layers.*.attention.k_proj",
"self_attn.v_proj": "encoder.layers.*.attention.v_proj",
"self_attn.q_proj": "encoder.layers.*.attention.q_proj",
"self_attn.out_proj": "encoder.layers.*.attention.out_proj",
"self_attn_layer_norm": "encoder.layers.*.layer_norm",
"fc1": "encoder.layers.*.feed_forward.intermediate_dense",
"fc2": "encoder.layers.*.feed_forward.output_dense",
"final_layer_norm": "encoder.layers.*.final_layer_norm",
"encoder.layer_norm": "encoder.layer_norm",
"adapter_layer": "encoder.layers.*.adapter_layer",
"w2v_model.layer_norm": "feature_projection.layer_norm",
"quantizer.weight_proj": "quantizer.weight_proj",
"quantizer.vars": "quantizer.codevectors",
"project_q": "project_q",
"final_proj": "project_hid",
"w2v_encoder.proj": "lm_head",
"mask_emb": "masked_spec_embed",
"pooling_layer.linear": "projector",
"pooling_layer.projection": "classifier",
}
a_ :List[Any] = [
"lm_head",
"quantizer.weight_proj",
"quantizer.codevectors",
"project_q",
"project_hid",
"projector",
"classifier",
]
def lowercase_ (A : Dict ):
snake_case__ : Optional[Any] = {}
with open(A , 'r' ) as file:
for line_number, line in enumerate(A ):
snake_case__ : Dict = line.strip()
if line:
snake_case__ : int = line.split()
snake_case__ : List[str] = line_number
snake_case__ : Dict = words[0]
snake_case__ : Optional[Any] = value
return result
def lowercase_ (A : int , A : int , A : Optional[int] , A : Optional[Any] , A : Tuple ):
for attribute in key.split('.' ):
snake_case__ : Optional[int] = getattr(A , A )
snake_case__ : Union[str, Any] = None
for param_key in PARAM_MAPPING.keys():
if full_name.endswith(A ):
snake_case__ : List[str] = PARAM_MAPPING[full_name.split('.' )[-1]]
snake_case__ : Dict = 'param'
if weight_type is not None and weight_type != "param":
snake_case__ : Union[str, Any] = getattr(A , A ).shape
elif weight_type is not None and weight_type == "param":
snake_case__ : Optional[int] = hf_pointer
for attribute in hf_param_name.split('.' ):
snake_case__ : Optional[Any] = getattr(A , A )
snake_case__ : Dict = shape_pointer.shape
# let's reduce dimension
snake_case__ : List[Any] = value[0]
else:
snake_case__ : Union[str, Any] = hf_pointer.shape
if hf_shape != value.shape:
raise ValueError(
F'''Shape of hf {key + "." + weight_type if weight_type is not None else ""} is {hf_shape}, but should be'''
F''' {value.shape} for {full_name}''' )
if weight_type == "weight":
snake_case__ : Any = value
elif weight_type == "weight_g":
snake_case__ : List[Any] = value
elif weight_type == "weight_v":
snake_case__ : Any = value
elif weight_type == "bias":
snake_case__ : List[Any] = value
elif weight_type == "param":
for attribute in hf_param_name.split('.' ):
snake_case__ : int = getattr(A , A )
snake_case__ : Optional[int] = value
else:
snake_case__ : Optional[Any] = value
logger.info(F'''{key + "." + weight_type if weight_type is not None else ""} was initialized from {full_name}.''' )
def lowercase_ (A : Tuple , A : List[Any] , A : int , A : str , A : Tuple ):
snake_case__ : Optional[int] = None
for param_key in PARAM_MAPPING.keys():
if full_name.endswith(A ):
snake_case__ : List[str] = PARAM_MAPPING[full_name.split('.' )[-1]]
snake_case__ : str = 'param'
if weight_type is not None and weight_type != "param":
snake_case__ : int = '.'.join([key, weight_type] )
elif weight_type is not None and weight_type == "param":
snake_case__ : Any = '.'.join([key, hf_param_name] )
else:
snake_case__ : Dict = key
snake_case__ : List[str] = value if 'lm_head' in full_key else value[0]
a_ :List[str] = {
"W_a": "linear_1.weight",
"W_b": "linear_2.weight",
"b_a": "linear_1.bias",
"b_b": "linear_2.bias",
"ln_W": "norm.weight",
"ln_b": "norm.bias",
}
def lowercase_ (A : str , A : Optional[Any] , A : Optional[Any]=None , A : List[str]=None ):
snake_case__ : Optional[int] = False
for key, mapped_key in MAPPING.items():
snake_case__ : Tuple = 'wav2vec2.' + mapped_key if mapped_key not in TOP_LEVEL_KEYS else mapped_key
if key in name or key.split('w2v_model.' )[-1] == name.split('.' )[0]:
snake_case__ : Optional[int] = True
if "*" in mapped_key:
snake_case__ : List[Any] = name.split(A )[0].split('.' )[-2]
snake_case__ : Union[str, Any] = mapped_key.replace('*' , A )
if "weight_g" in name:
snake_case__ : Tuple = 'weight_g'
elif "weight_v" in name:
snake_case__ : List[str] = 'weight_v'
elif "bias" in name:
snake_case__ : Dict = 'bias'
elif "weight" in name:
# TODO: don't match quantizer.weight_proj
snake_case__ : Optional[int] = 'weight'
else:
snake_case__ : str = None
if hf_dict is not None:
rename_dict(A , A , A , A , A )
else:
set_recursively(A , A , A , A , A )
return is_used
return is_used
def lowercase_ (A : Optional[Any] , A : Dict , A : Optional[int] ):
snake_case__ : Dict = []
snake_case__ : Tuple = fairseq_model.state_dict()
snake_case__ : str = hf_model.wavaveca.feature_extractor
for name, value in fairseq_dict.items():
snake_case__ : str = False
if "conv_layers" in name:
load_conv_layer(
A , A , A , A , hf_model.config.feat_extract_norm == 'group' , )
snake_case__ : Any = True
else:
snake_case__ : Dict = load_wavaveca_layer(A , A , A )
if not is_used:
unused_weights.append(A )
logger.warning(F'''Unused weights: {unused_weights}''' )
def lowercase_ (A : Dict , A : Optional[Any] , A : Tuple , A : str , A : List[str] ):
snake_case__ : List[Any] = full_name.split('conv_layers.' )[-1]
snake_case__ : List[str] = name.split('.' )
snake_case__ : List[Any] = int(items[0] )
snake_case__ : str = int(items[1] )
if type_id == 0:
if "bias" in name:
if value.shape != feature_extractor.conv_layers[layer_id].conv.bias.data.shape:
raise ValueError(
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.bias.data.shape} was found.''' )
snake_case__ : Any = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
if value.shape != feature_extractor.conv_layers[layer_id].conv.weight.data.shape:
raise ValueError(
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.weight.data.shape} was found.''' )
snake_case__ : str = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif (type_id == 2 and not use_group_norm) or (type_id == 2 and layer_id == 0 and use_group_norm):
if "bias" in name:
if value.shape != feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape:
raise ValueError(
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape} was found.''' )
snake_case__ : str = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
if value.shape != feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape:
raise ValueError(
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape} was found.''' )
snake_case__ : int = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
else:
unused_weights.append(A )
@torch.no_grad()
def lowercase_ (A : Union[str, Any] , A : str , A : Tuple=None , A : List[str]=None , A : Any=True , A : Optional[int]=False ):
if config_path is not None:
snake_case__ : List[Any] = WavaVecaConfig.from_pretrained(A )
else:
snake_case__ : List[Any] = WavaVecaConfig()
if is_seq_class:
snake_case__ : Dict = read_txt_into_dict(A )
snake_case__ : Any = idalabel
snake_case__ : Union[str, Any] = WavaVecaForSequenceClassification(A )
snake_case__ : Any = WavaVecaFeatureExtractor(
feature_size=1 , sampling_rate=1_6_0_0_0 , padding_value=0 , do_normalize=A , return_attention_mask=A , )
feature_extractor.save_pretrained(A )
elif is_finetuned:
if dict_path:
snake_case__ : str = Dictionary.load(A )
# important change bos & pad token id since CTC symbol is <pad> and
# not <s> as in fairseq
snake_case__ : List[str] = target_dict.pad_index
snake_case__ : Optional[int] = target_dict.bos_index
snake_case__ : Optional[int] = target_dict.eos_index
snake_case__ : List[Any] = len(target_dict.symbols )
snake_case__ : str = os.path.join(A , 'vocab.json' )
if not os.path.isdir(A ):
logger.error('--pytorch_dump_folder_path ({}) should be a directory'.format(A ) )
return
os.makedirs(A , exist_ok=A )
snake_case__ : Optional[Any] = target_dict.indices
# fairseq has the <pad> and <s> switched
snake_case__ : Optional[Any] = 0
snake_case__ : Union[str, Any] = 1
with open(A , 'w' , encoding='utf-8' ) as vocab_handle:
json.dump(A , A )
snake_case__ : List[Any] = WavaVecaCTCTokenizer(
A , unk_token=target_dict.unk_word , pad_token=target_dict.pad_word , bos_token=target_dict.bos_word , eos_token=target_dict.eos_word , word_delimiter_token='|' , do_lower_case=A , )
snake_case__ : str = True if config.feat_extract_norm == 'layer' else False
snake_case__ : Optional[Any] = WavaVecaFeatureExtractor(
feature_size=1 , sampling_rate=1_6_0_0_0 , padding_value=0 , do_normalize=A , return_attention_mask=A , )
snake_case__ : Union[str, Any] = WavaVecaProcessor(feature_extractor=A , tokenizer=A )
processor.save_pretrained(A )
snake_case__ : str = WavaVecaForCTC(A )
else:
snake_case__ : int = WavaVecaForPreTraining(A )
if is_finetuned or is_seq_class:
snake_case__ , snake_case__ , snake_case__ : str = fairseq.checkpoint_utils.load_model_ensemble_and_task(
[checkpoint_path] , arg_overrides={'data': '/'.join(dict_path.split('/' )[:-1] )} )
else:
snake_case__ : Tuple = argparse.Namespace(task='audio_pretraining' )
snake_case__ : str = fairseq.tasks.setup_task(A )
snake_case__ , snake_case__ , snake_case__ : Any = fairseq.checkpoint_utils.load_model_ensemble_and_task([checkpoint_path] , task=A )
snake_case__ : List[Any] = model[0].eval()
recursively_load_weights(A , A , not is_finetuned )
hf_wavavec.save_pretrained(A )
if __name__ == "__main__":
a_ :List[Any] = argparse.ArgumentParser()
parser.add_argument("--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model.")
parser.add_argument("--checkpoint_path", default=None, type=str, help="Path to fairseq checkpoint")
parser.add_argument("--dict_path", default=None, type=str, help="Path to dict of fine-tuned model")
parser.add_argument("--config_path", default=None, type=str, help="Path to hf config.json of model to convert")
parser.add_argument(
"--not_finetuned", action="store_true", help="Whether the model to convert is a fine-tuned model or not"
)
parser.add_argument(
"--is_seq_class",
action="store_true",
help="Whether the model to convert is a fine-tuned sequence classification model or not",
)
a_ :str = parser.parse_args()
a_ :Tuple = not args.not_finetuned and not args.is_seq_class
convert_wavaveca_checkpoint(
args.checkpoint_path,
args.pytorch_dump_folder_path,
args.config_path,
args.dict_path,
is_finetuned,
args.is_seq_class,
)
| 277 |
import unittest
import numpy as np
from transformers.testing_utils import require_torch, require_vision
from transformers.utils import is_torch_available, is_vision_available
from ...test_image_processing_common import ImageProcessingSavingTestMixin, prepare_image_inputs
if is_torch_available():
import torch
if is_vision_available():
from PIL import Image
from transformers import PoolFormerImageProcessor
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
def __init__( self : Optional[int], _snake_case : List[Any], _snake_case : str=7, _snake_case : Tuple=3, _snake_case : List[str]=3_0, _snake_case : Tuple=4_0_0, _snake_case : Any=True, _snake_case : List[Any]=None, _snake_case : int=0.9, _snake_case : Optional[Any]=None, _snake_case : str=True, _snake_case : Union[str, Any]=[0.5, 0.5, 0.5], _snake_case : Union[str, Any]=[0.5, 0.5, 0.5], ) ->List[Any]:
snake_case__ : int = size if size is not None else {'shortest_edge': 3_0}
snake_case__ : Tuple = crop_size if crop_size is not None else {'height': 3_0, 'width': 3_0}
snake_case__ : Union[str, Any] = parent
snake_case__ : Dict = batch_size
snake_case__ : int = num_channels
snake_case__ : Tuple = min_resolution
snake_case__ : Any = max_resolution
snake_case__ : List[Any] = do_resize_and_center_crop
snake_case__ : str = size
snake_case__ : str = crop_pct
snake_case__ : List[str] = crop_size
snake_case__ : Optional[int] = do_normalize
snake_case__ : Tuple = image_mean
snake_case__ : Tuple = image_std
def lowercase_ ( self : Optional[int] ) ->int:
return {
"size": self.size,
"do_resize_and_center_crop": self.do_resize_and_center_crop,
"crop_pct": self.crop_pct,
"crop_size": self.crop_size,
"do_normalize": self.do_normalize,
"image_mean": self.image_mean,
"image_std": self.image_std,
}
@require_torch
@require_vision
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = PoolFormerImageProcessor if is_vision_available() else None
def lowercase_ ( self : Union[str, Any] ) ->Dict:
snake_case__ : Union[str, Any] = PoolFormerImageProcessingTester(self )
@property
def lowercase_ ( self : int ) ->Dict:
return self.image_processor_tester.prepare_image_processor_dict()
def lowercase_ ( self : Union[str, Any] ) ->Optional[int]:
snake_case__ : List[str] = self.image_processing_class(**self.image_processor_dict )
self.assertTrue(hasattr(_snake_case, 'do_resize_and_center_crop' ) )
self.assertTrue(hasattr(_snake_case, 'size' ) )
self.assertTrue(hasattr(_snake_case, 'crop_pct' ) )
self.assertTrue(hasattr(_snake_case, 'do_normalize' ) )
self.assertTrue(hasattr(_snake_case, 'image_mean' ) )
self.assertTrue(hasattr(_snake_case, 'image_std' ) )
def lowercase_ ( self : List[str] ) ->List[str]:
snake_case__ : Union[str, Any] = self.image_processing_class.from_dict(self.image_processor_dict )
self.assertEqual(image_processor.size, {'shortest_edge': 3_0} )
self.assertEqual(image_processor.crop_size, {'height': 3_0, 'width': 3_0} )
snake_case__ : int = self.image_processing_class.from_dict(self.image_processor_dict, size=4_2, crop_size=8_4 )
self.assertEqual(image_processor.size, {'shortest_edge': 4_2} )
self.assertEqual(image_processor.crop_size, {'height': 8_4, 'width': 8_4} )
def lowercase_ ( self : List[Any] ) ->List[Any]:
pass
def lowercase_ ( self : List[str] ) ->str:
# Initialize image_processing
snake_case__ : Union[str, Any] = self.image_processing_class(**self.image_processor_dict )
# create random PIL images
snake_case__ : List[str] = prepare_image_inputs(self.image_processor_tester, equal_resolution=_snake_case )
for image in image_inputs:
self.assertIsInstance(_snake_case, Image.Image )
# Test not batched input
snake_case__ : Optional[int] = image_processing(image_inputs[0], return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
# Test batched
snake_case__ : str = image_processing(_snake_case, return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
def lowercase_ ( self : int ) ->List[Any]:
# Initialize image_processing
snake_case__ : Optional[int] = self.image_processing_class(**self.image_processor_dict )
# create random numpy tensors
snake_case__ : Dict = prepare_image_inputs(self.image_processor_tester, equal_resolution=_snake_case, numpify=_snake_case )
for image in image_inputs:
self.assertIsInstance(_snake_case, np.ndarray )
# Test not batched input
snake_case__ : Dict = image_processing(image_inputs[0], return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
# Test batched
snake_case__ : List[Any] = image_processing(_snake_case, return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
def lowercase_ ( self : List[str] ) ->List[str]:
# Initialize image_processing
snake_case__ : Tuple = self.image_processing_class(**self.image_processor_dict )
# create random PyTorch tensors
snake_case__ : List[str] = prepare_image_inputs(self.image_processor_tester, equal_resolution=_snake_case, torchify=_snake_case )
for image in image_inputs:
self.assertIsInstance(_snake_case, torch.Tensor )
# Test not batched input
snake_case__ : Tuple = image_processing(image_inputs[0], return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
# Test batched
snake_case__ : Optional[Any] = image_processing(_snake_case, return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
| 277 | 1 |
import argparse
import json
import os
import fairseq
import torch
from fairseq.data import Dictionary
from transformers import (
HubertConfig,
HubertForCTC,
HubertModel,
WavaVecaCTCTokenizer,
WavaVecaFeatureExtractor,
WavaVecaProcessor,
logging,
)
logging.set_verbosity_info()
a_ :int = logging.get_logger(__name__)
a_ :Optional[int] = {
"post_extract_proj": "feature_projection.projection",
"encoder.pos_conv.0": "encoder.pos_conv_embed.conv",
"self_attn.k_proj": "encoder.layers.*.attention.k_proj",
"self_attn.v_proj": "encoder.layers.*.attention.v_proj",
"self_attn.q_proj": "encoder.layers.*.attention.q_proj",
"self_attn.out_proj": "encoder.layers.*.attention.out_proj",
"self_attn_layer_norm": "encoder.layers.*.layer_norm",
"fc1": "encoder.layers.*.feed_forward.intermediate_dense",
"fc2": "encoder.layers.*.feed_forward.output_dense",
"final_layer_norm": "encoder.layers.*.final_layer_norm",
"encoder.layer_norm": "encoder.layer_norm",
"w2v_model.layer_norm": "feature_projection.layer_norm",
"w2v_encoder.proj": "lm_head",
"mask_emb": "masked_spec_embed",
}
def lowercase_ (A : Optional[Any] , A : Tuple , A : Union[str, Any] , A : Tuple , A : Optional[Any] ):
for attribute in key.split('.' ):
snake_case__ : Any = getattr(A , A )
if weight_type is not None:
snake_case__ : Union[str, Any] = getattr(A , A ).shape
else:
snake_case__ : Tuple = hf_pointer.shape
assert hf_shape == value.shape, (
F'''Shape of hf {key + "." + weight_type if weight_type is not None else ""} is {hf_shape}, but should be'''
F''' {value.shape} for {full_name}'''
)
if weight_type == "weight":
snake_case__ : Tuple = value
elif weight_type == "weight_g":
snake_case__ : List[Any] = value
elif weight_type == "weight_v":
snake_case__ : Tuple = value
elif weight_type == "bias":
snake_case__ : str = value
else:
snake_case__ : Optional[Any] = value
logger.info(F'''{key + "." + weight_type if weight_type is not None else ""} was initialized from {full_name}.''' )
def lowercase_ (A : Optional[Any] , A : List[str] , A : Any ):
snake_case__ : Union[str, Any] = []
snake_case__ : str = fairseq_model.state_dict()
snake_case__ : List[Any] = hf_model.hubert.feature_extractor if is_finetuned else hf_model.feature_extractor
for name, value in fairseq_dict.items():
snake_case__ : Any = False
if "conv_layers" in name:
load_conv_layer(
A , A , A , A , hf_model.config.feat_extract_norm == 'group' , )
snake_case__ : Any = True
else:
for key, mapped_key in MAPPING.items():
snake_case__ : Any = 'hubert.' + mapped_key if (is_finetuned and mapped_key != 'lm_head') else mapped_key
if key in name or (key.split('w2v_model.' )[-1] == name.split('.' )[0] and not is_finetuned):
snake_case__ : List[str] = True
if "*" in mapped_key:
snake_case__ : Optional[Any] = name.split(A )[0].split('.' )[-2]
snake_case__ : List[str] = mapped_key.replace('*' , A )
if "weight_g" in name:
snake_case__ : Union[str, Any] = 'weight_g'
elif "weight_v" in name:
snake_case__ : int = 'weight_v'
elif "weight" in name:
snake_case__ : Tuple = 'weight'
elif "bias" in name:
snake_case__ : int = 'bias'
else:
snake_case__ : List[Any] = None
set_recursively(A , A , A , A , A )
continue
if not is_used:
unused_weights.append(A )
logger.warning(F'''Unused weights: {unused_weights}''' )
def lowercase_ (A : Union[str, Any] , A : str , A : Any , A : int , A : List[Any] ):
snake_case__ : Optional[int] = full_name.split('conv_layers.' )[-1]
snake_case__ : int = name.split('.' )
snake_case__ : str = int(items[0] )
snake_case__ : Optional[Any] = int(items[1] )
if type_id == 0:
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.bias.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.bias.data.shape} was found.'''
)
snake_case__ : List[str] = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.weight.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.weight.data.shape} was found.'''
)
snake_case__ : Any = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif (type_id == 2 and not use_group_norm) or (type_id == 2 and layer_id == 0 and use_group_norm):
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape, (
F'''{full_name} has size {value.shape}, but {feature_extractor[layer_id].layer_norm.bias.data.shape} was'''
" found."
)
snake_case__ : List[Any] = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor[layer_id].layer_norm.weight.data.shape} was found.'''
)
snake_case__ : Any = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
else:
unused_weights.append(A )
@torch.no_grad()
def lowercase_ (A : List[str] , A : Optional[int] , A : List[Any]=None , A : Union[str, Any]=None , A : List[str]=True ):
if config_path is not None:
snake_case__ : Tuple = HubertConfig.from_pretrained(A )
else:
snake_case__ : Tuple = HubertConfig()
if is_finetuned:
if dict_path:
snake_case__ : int = Dictionary.load(A )
# important change bos & pad token id since CTC symbol is <pad> and
# not <s> as in fairseq
snake_case__ : Dict = target_dict.pad_index
snake_case__ : Union[str, Any] = target_dict.bos_index
snake_case__ : Optional[Any] = target_dict.eos_index
snake_case__ : Union[str, Any] = len(target_dict.symbols )
snake_case__ : List[Any] = os.path.join(A , 'vocab.json' )
if not os.path.isdir(A ):
logger.error('--pytorch_dump_folder_path ({}) should be a directory'.format(A ) )
return
os.makedirs(A , exist_ok=A )
with open(A , 'w' , encoding='utf-8' ) as vocab_handle:
json.dump(target_dict.indices , A )
snake_case__ : Tuple = WavaVecaCTCTokenizer(
A , unk_token=target_dict.unk_word , pad_token=target_dict.pad_word , bos_token=target_dict.bos_word , eos_token=target_dict.eos_word , word_delimiter_token='|' , do_lower_case=A , )
snake_case__ : List[Any] = True if config.feat_extract_norm == 'layer' else False
snake_case__ : List[str] = WavaVecaFeatureExtractor(
feature_size=1 , sampling_rate=1_6_0_0_0 , padding_value=0 , do_normalize=A , return_attention_mask=A , )
snake_case__ : List[Any] = WavaVecaProcessor(feature_extractor=A , tokenizer=A )
processor.save_pretrained(A )
snake_case__ : Optional[Any] = HubertForCTC(A )
else:
snake_case__ : int = HubertModel(A )
if is_finetuned:
snake_case__ , snake_case__ , snake_case__ : Tuple = fairseq.checkpoint_utils.load_model_ensemble_and_task(
[checkpoint_path] , arg_overrides={'data': '/'.join(dict_path.split('/' )[:-1] )} )
else:
snake_case__ , snake_case__ , snake_case__ : List[str] = fairseq.checkpoint_utils.load_model_ensemble_and_task([checkpoint_path] )
snake_case__ : str = model[0].eval()
recursively_load_weights(A , A , A )
hf_wavavec.save_pretrained(A )
if __name__ == "__main__":
a_ :Any = argparse.ArgumentParser()
parser.add_argument("--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model.")
parser.add_argument("--checkpoint_path", default=None, type=str, help="Path to fairseq checkpoint")
parser.add_argument("--dict_path", default=None, type=str, help="Path to dict of fine-tuned model")
parser.add_argument("--config_path", default=None, type=str, help="Path to hf config.json of model to convert")
parser.add_argument(
"--not_finetuned", action="store_true", help="Whether the model to convert is a fine-tuned model or not"
)
a_ :List[Any] = parser.parse_args()
convert_hubert_checkpoint(
args.checkpoint_path, args.pytorch_dump_folder_path, args.config_path, args.dict_path, not args.not_finetuned
)
| 277 |
from collections import deque
from .hash_table import HashTable
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
def __init__( self : Optional[Any], *_snake_case : Optional[Any], **_snake_case : List[Any] ) ->Optional[int]:
super().__init__(*_snake_case, **_snake_case )
def lowercase_ ( self : Optional[Any], _snake_case : Tuple, _snake_case : Dict ) ->Dict:
snake_case__ : int = deque([] ) if self.values[key] is None else self.values[key]
self.values[key].appendleft(_snake_case )
snake_case__ : Dict = self.values[key]
def lowercase_ ( self : Any ) ->Optional[Any]:
return (
sum(self.charge_factor - len(_snake_case ) for slot in self.values )
/ self.size_table
* self.charge_factor
)
def lowercase_ ( self : Union[str, Any], _snake_case : str, _snake_case : Optional[int]=None ) ->Optional[Any]:
if not (
len(self.values[key] ) == self.charge_factor and self.values.count(_snake_case ) == 0
):
return key
return super()._collision_resolution(_snake_case, _snake_case )
| 277 | 1 |
import os
from distutils.util import strtobool
def lowercase_ (A : Optional[int] , A : str ):
for e in env_keys:
snake_case__ : str = int(os.environ.get(A , -1 ) )
if val >= 0:
return val
return default
def lowercase_ (A : List[Any] , A : Tuple=False ):
snake_case__ : str = os.environ.get(A , str(A ) )
return strtobool(A ) == 1 # As its name indicates `strtobool` actually returns an int...
def lowercase_ (A : int , A : int="no" ):
snake_case__ : Optional[int] = os.environ.get(A , str(A ) )
return value
| 277 |
def lowercase_ (A : Union[str, Any] , A : List[str] , A : int , A : Optional[int] ):
global f # a global dp table for knapsack
if f[i][j] < 0:
if j < wt[i - 1]:
snake_case__ : Union[str, Any] = mf_knapsack(i - 1 , A , A , A )
else:
snake_case__ : Any = max(
mf_knapsack(i - 1 , A , A , A ) , mf_knapsack(i - 1 , A , A , j - wt[i - 1] ) + val[i - 1] , )
snake_case__ : Optional[int] = val
return f[i][j]
def lowercase_ (A : Optional[int] , A : Union[str, Any] , A : str , A : Dict ):
snake_case__ : int = [[0] * (w + 1) for _ in range(n + 1 )]
for i in range(1 , n + 1 ):
for w_ in range(1 , w + 1 ):
if wt[i - 1] <= w_:
snake_case__ : Union[str, Any] = max(val[i - 1] + dp[i - 1][w_ - wt[i - 1]] , dp[i - 1][w_] )
else:
snake_case__ : str = dp[i - 1][w_]
return dp[n][w_], dp
def lowercase_ (A : int , A : list , A : list ):
if not (isinstance(A , (list, tuple) ) and isinstance(A , (list, tuple) )):
raise ValueError(
'Both the weights and values vectors must be either lists or tuples' )
snake_case__ : Dict = len(A )
if num_items != len(A ):
snake_case__ : str = (
'The number of weights must be the same as the number of values.\n'
F'''But got {num_items} weights and {len(A )} values'''
)
raise ValueError(A )
for i in range(A ):
if not isinstance(wt[i] , A ):
snake_case__ : Optional[int] = (
'All weights must be integers but got weight of '
F'''type {type(wt[i] )} at index {i}'''
)
raise TypeError(A )
snake_case__ , snake_case__ : Optional[int] = knapsack(A , A , A , A )
snake_case__ : set = set()
_construct_solution(A , A , A , A , A )
return optimal_val, example_optional_set
def lowercase_ (A : list , A : list , A : int , A : int , A : set ):
# for the current item i at a maximum weight j to be part of an optimal subset,
# the optimal value at (i, j) must be greater than the optimal value at (i-1, j).
# where i - 1 means considering only the previous items at the given maximum weight
if i > 0 and j > 0:
if dp[i - 1][j] == dp[i][j]:
_construct_solution(A , A , i - 1 , A , A )
else:
optimal_set.add(A )
_construct_solution(A , A , i - 1 , j - wt[i - 1] , A )
if __name__ == "__main__":
a_ :Any = [3, 2, 4, 4]
a_ :List[Any] = [4, 3, 2, 3]
a_ :Union[str, Any] = 4
a_ :List[str] = 6
a_ :Union[str, Any] = [[0] * (w + 1)] + [[0] + [-1] * (w + 1) for _ in range(n + 1)]
a_ , a_ :List[Any] = knapsack(w, wt, val, n)
print(optimal_solution)
print(mf_knapsack(n, wt, val, w)) # switched the n and w
# testing the dynamic programming problem with example
# the optimal subset for the above example are items 3 and 4
a_ , a_ :Any = knapsack_with_example_solution(w, wt, val)
assert optimal_solution == 8
assert optimal_subset == {3, 4}
print("optimal_value = ", optimal_solution)
print("An optimal subset corresponding to the optimal value", optimal_subset)
| 277 | 1 |
from typing import TYPE_CHECKING
from ...utils import (
OptionalDependencyNotAvailable,
_LazyModule,
is_flax_available,
is_tf_available,
is_tokenizers_available,
is_torch_available,
is_vision_available,
)
a_ :Any = {
"configuration_owlvit": [
"OWLVIT_PRETRAINED_CONFIG_ARCHIVE_MAP",
"OwlViTConfig",
"OwlViTOnnxConfig",
"OwlViTTextConfig",
"OwlViTVisionConfig",
],
"processing_owlvit": ["OwlViTProcessor"],
}
try:
if not is_vision_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :List[str] = ["OwlViTFeatureExtractor"]
a_ :List[str] = ["OwlViTImageProcessor"]
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :Optional[int] = [
"OWLVIT_PRETRAINED_MODEL_ARCHIVE_LIST",
"OwlViTModel",
"OwlViTPreTrainedModel",
"OwlViTTextModel",
"OwlViTVisionModel",
"OwlViTForObjectDetection",
]
if TYPE_CHECKING:
from .configuration_owlvit import (
OWLVIT_PRETRAINED_CONFIG_ARCHIVE_MAP,
OwlViTConfig,
OwlViTOnnxConfig,
OwlViTTextConfig,
OwlViTVisionConfig,
)
from .processing_owlvit import OwlViTProcessor
try:
if not is_vision_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .feature_extraction_owlvit import OwlViTFeatureExtractor
from .image_processing_owlvit import OwlViTImageProcessor
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_owlvit import (
OWLVIT_PRETRAINED_MODEL_ARCHIVE_LIST,
OwlViTForObjectDetection,
OwlViTModel,
OwlViTPreTrainedModel,
OwlViTTextModel,
OwlViTVisionModel,
)
else:
import sys
a_ :Optional[Any] = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 277 |
from typing import TYPE_CHECKING
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_flax_available, is_torch_available
a_ :int = {
"configuration_longt5": ["LONGT5_PRETRAINED_CONFIG_ARCHIVE_MAP", "LongT5Config", "LongT5OnnxConfig"],
}
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :List[str] = [
"LONGT5_PRETRAINED_MODEL_ARCHIVE_LIST",
"LongT5EncoderModel",
"LongT5ForConditionalGeneration",
"LongT5Model",
"LongT5PreTrainedModel",
]
try:
if not is_flax_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :int = [
"FlaxLongT5ForConditionalGeneration",
"FlaxLongT5Model",
"FlaxLongT5PreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_longta import LONGT5_PRETRAINED_CONFIG_ARCHIVE_MAP, LongTaConfig, LongTaOnnxConfig
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_longta import (
LONGT5_PRETRAINED_MODEL_ARCHIVE_LIST,
LongTaEncoderModel,
LongTaForConditionalGeneration,
LongTaModel,
LongTaPreTrainedModel,
)
try:
if not is_flax_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_flax_longta import (
FlaxLongTaForConditionalGeneration,
FlaxLongTaModel,
FlaxLongTaPreTrainedModel,
)
else:
import sys
a_ :Optional[int] = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 277 | 1 |
import dataclasses
import json
import warnings
from dataclasses import dataclass, field
from time import time
from typing import List
from ..utils import logging
a_ :List[Any] = logging.get_logger(__name__)
def lowercase_ (A : Tuple=None , A : Tuple=None ):
return field(default_factory=lambda: default , metadata=A )
@dataclass
class snake_case__ :
"""simple docstring"""
_SCREAMING_SNAKE_CASE = list_field(
default=[] , metadata={
"""help""": (
"""Model checkpoints to be provided to the AutoModel classes. Leave blank to benchmark the base version"""
""" of all available models"""
)
} , )
_SCREAMING_SNAKE_CASE = list_field(
default=[8] , metadata={"""help""": """List of batch sizes for which memory and time performance will be evaluated"""} )
_SCREAMING_SNAKE_CASE = list_field(
default=[8, 32, 128, 512] , metadata={"""help""": """List of sequence lengths for which memory and time performance will be evaluated"""} , )
_SCREAMING_SNAKE_CASE = field(
default=lowerCAmelCase_ , metadata={"""help""": """Whether to benchmark inference of model. Inference can be disabled via --no-inference."""} , )
_SCREAMING_SNAKE_CASE = field(
default=lowerCAmelCase_ , metadata={"""help""": """Whether to run on available cuda devices. Cuda can be disabled via --no-cuda."""} , )
_SCREAMING_SNAKE_CASE = field(
default=lowerCAmelCase_ , metadata={"""help""": """Whether to run on available tpu devices. TPU can be disabled via --no-tpu."""} )
_SCREAMING_SNAKE_CASE = field(default=lowerCAmelCase_ , metadata={"""help""": """Use FP16 to accelerate inference."""} )
_SCREAMING_SNAKE_CASE = field(default=lowerCAmelCase_ , metadata={"""help""": """Benchmark training of model"""} )
_SCREAMING_SNAKE_CASE = field(default=lowerCAmelCase_ , metadata={"""help""": """Verbose memory tracing"""} )
_SCREAMING_SNAKE_CASE = field(
default=lowerCAmelCase_ , metadata={"""help""": """Whether to perform speed measurements. Speed measurements can be disabled via --no-speed."""} , )
_SCREAMING_SNAKE_CASE = field(
default=lowerCAmelCase_ , metadata={
"""help""": """Whether to perform memory measurements. Memory measurements can be disabled via --no-memory"""
} , )
_SCREAMING_SNAKE_CASE = field(default=lowerCAmelCase_ , metadata={"""help""": """Trace memory line by line"""} )
_SCREAMING_SNAKE_CASE = field(default=lowerCAmelCase_ , metadata={"""help""": """Save result to a CSV file"""} )
_SCREAMING_SNAKE_CASE = field(default=lowerCAmelCase_ , metadata={"""help""": """Save all print statements in a log file"""} )
_SCREAMING_SNAKE_CASE = field(default=lowerCAmelCase_ , metadata={"""help""": """Whether to print environment information"""} )
_SCREAMING_SNAKE_CASE = field(
default=lowerCAmelCase_ , metadata={
"""help""": (
"""Whether to use multiprocessing for memory and speed measurement. It is highly recommended to use"""
""" multiprocessing for accurate CPU and GPU memory measurements. This option should only be disabled"""
""" for debugging / testing and on TPU."""
)
} , )
_SCREAMING_SNAKE_CASE = field(
default=F"""inference_time_{round(time() )}.csv""" , metadata={"""help""": """CSV filename used if saving time results to csv."""} , )
_SCREAMING_SNAKE_CASE = field(
default=F"""inference_memory_{round(time() )}.csv""" , metadata={"""help""": """CSV filename used if saving memory results to csv."""} , )
_SCREAMING_SNAKE_CASE = field(
default=F"""train_time_{round(time() )}.csv""" , metadata={"""help""": """CSV filename used if saving time results to csv for training."""} , )
_SCREAMING_SNAKE_CASE = field(
default=F"""train_memory_{round(time() )}.csv""" , metadata={"""help""": """CSV filename used if saving memory results to csv for training."""} , )
_SCREAMING_SNAKE_CASE = field(
default=F"""env_info_{round(time() )}.csv""" , metadata={"""help""": """CSV filename used if saving environment information."""} , )
_SCREAMING_SNAKE_CASE = field(
default=F"""log_{round(time() )}.csv""" , metadata={"""help""": """Log filename used if print statements are saved in log."""} , )
_SCREAMING_SNAKE_CASE = field(default=3 , metadata={"""help""": """Times an experiment will be run."""} )
_SCREAMING_SNAKE_CASE = field(
default=lowerCAmelCase_ , metadata={
"""help""": (
"""Instead of loading the model as defined in `config.architectures` if exists, just load the pretrain"""
""" model weights."""
)
} , )
def lowercase_ ( self : Optional[Any] ) ->List[str]:
warnings.warn(
F'''The class {self.__class__} is deprecated. Hugging Face Benchmarking utils'''
' are deprecated in general and it is advised to use external Benchmarking libraries '
' to benchmark Transformer models.', _snake_case, )
def lowercase_ ( self : Tuple ) ->int:
return json.dumps(dataclasses.asdict(self ), indent=2 )
@property
def lowercase_ ( self : Optional[Any] ) ->List[str]:
if len(self.models ) <= 0:
raise ValueError(
'Please make sure you provide at least one model name / model identifier, *e.g.* `--models'
' bert-base-cased` or `args.models = [\'bert-base-cased\'].' )
return self.models
@property
def lowercase_ ( self : Union[str, Any] ) ->Tuple:
if not self.multi_process:
return False
elif self.is_tpu:
logger.info('Multiprocessing is currently not possible on TPU.' )
return False
else:
return True
| 277 |
import argparse
import json
import os
import torch
from torch import nn
from transformers import NllbMoeConfig, NllbMoeModel
from transformers.modeling_utils import dtype_byte_size
from transformers.utils import WEIGHTS_INDEX_NAME, WEIGHTS_NAME
def lowercase_ (A : List[str] ):
snake_case__ : Tuple = [
'encoder.version',
'decoder.version',
'model.encoder.version',
'model.decoder.version',
'decoder.output_projection.weight',
'_float_tensor',
'encoder.embed_positions._float_tensor',
'decoder.embed_positions._float_tensor',
]
for k in ignore_keys:
state_dict.pop(A , A )
def lowercase_ (A : str ):
snake_case__ , snake_case__ : Union[str, Any] = emb.weight.shape
snake_case__ : str = nn.Linear(A , A , bias=A )
snake_case__ : str = emb.weight.data
return lin_layer
def lowercase_ (A : Optional[int] , A : Union[str, Any]=None ):
snake_case__ : Any = {}
for old_key in state_dict.keys():
snake_case__ : Tuple = old_key
if "moe_layer.experts." in key:
if expert_idx is not None:
snake_case__ : int = key.replace('moe_layer.experts.0' , F'''ffn.experts.expert_{expert_idx}''' )
else:
snake_case__ : Any = key.replace('moe_layer.experts.' , 'ffn.experts.expert_' )
if "gate" in key:
snake_case__ : Dict = key.replace('.moe_layer.gate.wg' , '.ffn.router.classifier' )
if "fc2" and "experts" not in key:
snake_case__ : str = key.replace('.fc2.' , '.ffn.fc2.' )
if "fc1" and "experts" not in key:
snake_case__ : str = key.replace('.fc1.' , '.ffn.fc1.' )
if ".encoder_attn." in key:
snake_case__ : Tuple = key.replace('.encoder_attn.' , '.cross_attention.' )
if "encoder_attn_layer_norm" in key:
snake_case__ : Tuple = key.replace('encoder_attn_layer_norm' , 'cross_attention_layer_norm' )
if "final_layer_norm" in key:
snake_case__ : Optional[int] = key.replace('final_layer_norm' , 'ff_layer_norm' )
snake_case__ : Dict = state_dict[old_key]
return new_dict
def lowercase_ (A : List[Any] , A : Tuple , A : List[Any] , A : List[str] , A : str = WEIGHTS_NAME ):
snake_case__ : Dict = []
snake_case__ : str = 0
os.makedirs(A , exist_ok=A )
for expert in range(A ):
snake_case__ : Tuple = switch_checkpoint_path + F'''-rank-{expert}.pt'''
if os.path.isfile(A ):
snake_case__ : Optional[Any] = torch.load(A )['model']
remove_ignore_keys_(A )
snake_case__ : Optional[Any] = rename_fairseq_keys(A , A )
snake_case__ : Dict = os.path.join(
A , weights_name.replace('.bin' , F'''-{len(A )+1:05d}-of-???.bin''' ) )
torch.save(A , A )
sharded_state_dicts.append(expert_state.keys() )
total_size += sum([value.numel() for key, value in expert_state.items()] ) * dtype_byte_size(
expert_state[list(A )[0]].dtype )
# Add the last block
snake_case__ : Tuple = os.path.join(A , weights_name.replace('.bin' , F'''-{len(A )+1:05d}-of-???.bin''' ) )
snake_case__ : Union[str, Any] = torch.load(switch_checkpoint_path + '-shared.pt' )['model']
remove_ignore_keys_(A )
snake_case__ : str = rename_fairseq_keys(A , A )
snake_case__ : Any = shared_weights['decoder.embed_tokens.weight']
sharded_state_dicts.append(shared_weights.keys() )
# If we only have the shared weights (dummy model/experts saved on the same file)
if len(A ) == 1:
snake_case__ : Any = os.path.join(A , A )
torch.save(A , A )
return {weights_name: sharded_state_dicts[0]}, None
else:
torch.save(A , A )
# Otherwise, let's build the index
snake_case__ : Tuple = {}
for idx, shard in enumerate(A ):
snake_case__ : Optional[int] = weights_name.replace('.bin' , F'''-{idx+1:05d}-of-{len(A ):05d}.bin''' )
snake_case__ : List[Any] = os.path.join(A , weights_name.replace('.bin' , F'''-{idx+1:05d}-of-???.bin''' ) )
os.rename(A , os.path.join(A , A ) )
for key in shard:
snake_case__ : Any = shard_file
# Add the metadata
snake_case__ : int = {'total_size': total_size}
snake_case__ : Dict = {'metadata': metadata, 'weight_map': weight_map}
with open(os.path.join(A , A ) , 'w' , encoding='utf-8' ) as f:
snake_case__ : Any = json.dumps(A , indent=2 , sort_keys=A ) + '\n'
f.write(A )
return metadata, index
if __name__ == "__main__":
a_ :int = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--nllb_moe_checkpoint_path",
default="/home/arthur_huggingface_co/fairseq/weights/checkpoints/model_moe_54b/checkpoint_2_300000",
type=str,
required=False,
help="Path to a directory containing a folder per layer. Follows the original Google format.",
)
parser.add_argument("--dtype", default="float32", type=str, required=False, help="dtype of the saved model")
parser.add_argument(
"--pytorch_dump_folder_path",
default="/home/arthur_huggingface_co/fairseq/weights/checkpoints/hf-converted-moe-54b",
type=str,
required=False,
help="Path to the output pytorch model.",
)
a_ :Optional[Any] = parser.parse_args()
a_ , a_ :Optional[Any] = shard_on_the_fly(
args.nllb_moe_checkpoint_path,
args.pytorch_dump_folder_path,
128,
args.dtype,
)
a_ :List[str] = NllbMoeConfig.from_pretrained(
"facebook/nllb-200-3.3B", encoder_sparse_step=4, decoder_sparse_step=4, num_experts=128
)
config.save_pretrained(args.pytorch_dump_folder_path)
a_ :int = NllbMoeModel.from_pretrained(args.pytorch_dump_folder_path)
print("Done")
model.save_pretrained(args.pytorch_dump_folder_path)
| 277 | 1 |
from math import sqrt
def lowercase_ (A : int ):
assert isinstance(A , A ) and (
number >= 0
), "'number' must been an int and positive"
snake_case__ : Optional[Any] = True
# 0 and 1 are none primes.
if number <= 1:
snake_case__ : Tuple = False
for divisor in range(2 , int(round(sqrt(A ) ) ) + 1 ):
# if 'number' divisible by 'divisor' then sets 'status'
# of false and break up the loop.
if number % divisor == 0:
snake_case__ : Optional[Any] = False
break
# precondition
assert isinstance(A , A ), "'status' must been from type bool"
return status
def lowercase_ (A : Tuple ):
assert isinstance(A , A ) and (n > 2), "'N' must been an int and > 2"
# beginList: contains all natural numbers from 2 up to N
snake_case__ : Optional[Any] = list(range(2 , n + 1 ) )
snake_case__ : List[Any] = [] # this list will be returns.
# actual sieve of erathostenes
for i in range(len(A ) ):
for j in range(i + 1 , len(A ) ):
if (begin_list[i] != 0) and (begin_list[j] % begin_list[i] == 0):
snake_case__ : int = 0
# filters actual prime numbers.
snake_case__ : Union[str, Any] = [x for x in begin_list if x != 0]
# precondition
assert isinstance(A , A ), "'ans' must been from type list"
return ans
def lowercase_ (A : Optional[int] ):
assert isinstance(A , A ) and (n > 2), "'N' must been an int and > 2"
snake_case__ : int = []
# iterates over all numbers between 2 up to N+1
# if a number is prime then appends to list 'ans'
for number in range(2 , n + 1 ):
if is_prime(A ):
ans.append(A )
# precondition
assert isinstance(A , A ), "'ans' must been from type list"
return ans
def lowercase_ (A : str ):
assert isinstance(A , A ) and number >= 0, "'number' must been an int and >= 0"
snake_case__ : Optional[int] = [] # this list will be returns of the function.
# potential prime number factors.
snake_case__ : List[Any] = 2
snake_case__ : Dict = number
if number == 0 or number == 1:
ans.append(A )
# if 'number' not prime then builds the prime factorization of 'number'
elif not is_prime(A ):
while quotient != 1:
if is_prime(A ) and (quotient % factor == 0):
ans.append(A )
quotient /= factor
else:
factor += 1
else:
ans.append(A )
# precondition
assert isinstance(A , A ), "'ans' must been from type list"
return ans
def lowercase_ (A : Optional[int] ):
assert isinstance(A , A ) and (
number >= 0
), "'number' bust been an int and >= 0"
snake_case__ : Union[str, Any] = 0
# prime factorization of 'number'
snake_case__ : Tuple = prime_factorization(A )
snake_case__ : Tuple = max(A )
# precondition
assert isinstance(A , A ), "'ans' must been from type int"
return ans
def lowercase_ (A : List[Any] ):
assert isinstance(A , A ) and (
number >= 0
), "'number' bust been an int and >= 0"
snake_case__ : Tuple = 0
# prime factorization of 'number'
snake_case__ : Union[str, Any] = prime_factorization(A )
snake_case__ : Union[str, Any] = min(A )
# precondition
assert isinstance(A , A ), "'ans' must been from type int"
return ans
def lowercase_ (A : Union[str, Any] ):
assert isinstance(A , A ), "'number' must been an int"
assert isinstance(number % 2 == 0 , A ), "compare bust been from type bool"
return number % 2 == 0
def lowercase_ (A : Any ):
assert isinstance(A , A ), "'number' must been an int"
assert isinstance(number % 2 != 0 , A ), "compare bust been from type bool"
return number % 2 != 0
def lowercase_ (A : List[Any] ):
assert (
isinstance(A , A ) and (number > 2) and is_even(A )
), "'number' must been an int, even and > 2"
snake_case__ : Dict = [] # this list will returned
# creates a list of prime numbers between 2 up to 'number'
snake_case__ : Union[str, Any] = get_prime_numbers(A )
snake_case__ : Union[str, Any] = len(A )
# run variable for while-loops.
snake_case__ : Dict = 0
snake_case__ : Union[str, Any] = None
# exit variable. for break up the loops
snake_case__ : str = True
while i < len_pn and loop:
snake_case__ : Union[str, Any] = i + 1
while j < len_pn and loop:
if prime_numbers[i] + prime_numbers[j] == number:
snake_case__ : List[Any] = False
ans.append(prime_numbers[i] )
ans.append(prime_numbers[j] )
j += 1
i += 1
# precondition
assert (
isinstance(A , A )
and (len(A ) == 2)
and (ans[0] + ans[1] == number)
and is_prime(ans[0] )
and is_prime(ans[1] )
), "'ans' must contains two primes. And sum of elements must been eq 'number'"
return ans
def lowercase_ (A : Union[str, Any] , A : List[str] ):
assert (
isinstance(A , A )
and isinstance(A , A )
and (numbera >= 0)
and (numbera >= 0)
), "'number1' and 'number2' must been positive integer."
snake_case__ : Optional[Any] = 0
while numbera != 0:
snake_case__ : List[Any] = numbera % numbera
snake_case__ : List[Any] = numbera
snake_case__ : Dict = rest
# precondition
assert isinstance(A , A ) and (
numbera >= 0
), "'number' must been from type int and positive"
return numbera
def lowercase_ (A : Optional[int] , A : Optional[int] ):
assert (
isinstance(A , A )
and isinstance(A , A )
and (numbera >= 1)
and (numbera >= 1)
), "'number1' and 'number2' must been positive integer."
snake_case__ : Optional[int] = 1 # actual answer that will be return.
# for kgV (x,1)
if numbera > 1 and numbera > 1:
# builds the prime factorization of 'number1' and 'number2'
snake_case__ : Tuple = prime_factorization(A )
snake_case__ : Dict = prime_factorization(A )
elif numbera == 1 or numbera == 1:
snake_case__ : Optional[Any] = []
snake_case__ : List[str] = []
snake_case__ : Union[str, Any] = max(A , A )
snake_case__ : Tuple = 0
snake_case__ : Tuple = 0
snake_case__ : Optional[int] = [] # captured numbers int both 'primeFac1' and 'primeFac2'
# iterates through primeFac1
for n in prime_fac_a:
if n not in done:
if n in prime_fac_a:
snake_case__ : int = prime_fac_a.count(A )
snake_case__ : Union[str, Any] = prime_fac_a.count(A )
for _ in range(max(A , A ) ):
ans *= n
else:
snake_case__ : Union[str, Any] = prime_fac_a.count(A )
for _ in range(A ):
ans *= n
done.append(A )
# iterates through primeFac2
for n in prime_fac_a:
if n not in done:
snake_case__ : int = prime_fac_a.count(A )
for _ in range(A ):
ans *= n
done.append(A )
# precondition
assert isinstance(A , A ) and (
ans >= 0
), "'ans' must been from type int and positive"
return ans
def lowercase_ (A : List[Any] ):
assert isinstance(A , A ) and (n >= 0), "'number' must been a positive int"
snake_case__ : Union[str, Any] = 0
snake_case__ : Optional[int] = 2 # this variable holds the answer
while index < n:
index += 1
ans += 1 # counts to the next number
# if ans not prime then
# runs to the next prime number.
while not is_prime(A ):
ans += 1
# precondition
assert isinstance(A , A ) and is_prime(
A ), "'ans' must been a prime number and from type int"
return ans
def lowercase_ (A : int , A : Union[str, Any] ):
assert (
is_prime(A ) and is_prime(A ) and (p_number_a < p_number_a)
), "The arguments must been prime numbers and 'pNumber1' < 'pNumber2'"
snake_case__ : str = p_number_a + 1 # jump to the next number
snake_case__ : Tuple = [] # this list will be returns.
# if number is not prime then
# fetch the next prime number.
while not is_prime(A ):
number += 1
while number < p_number_a:
ans.append(A )
number += 1
# fetch the next prime number.
while not is_prime(A ):
number += 1
# precondition
assert (
isinstance(A , A )
and ans[0] != p_number_a
and ans[len(A ) - 1] != p_number_a
), "'ans' must been a list without the arguments"
# 'ans' contains not 'pNumber1' and 'pNumber2' !
return ans
def lowercase_ (A : int ):
assert isinstance(A , A ) and (n >= 1), "'n' must been int and >= 1"
snake_case__ : Optional[int] = [] # will be returned.
for divisor in range(1 , n + 1 ):
if n % divisor == 0:
ans.append(A )
# precondition
assert ans[0] == 1 and ans[len(A ) - 1] == n, "Error in function getDivisiors(...)"
return ans
def lowercase_ (A : str ):
assert isinstance(A , A ) and (
number > 1
), "'number' must been an int and >= 1"
snake_case__ : Optional[Any] = get_divisors(A )
# precondition
assert (
isinstance(A , A )
and (divisors[0] == 1)
and (divisors[len(A ) - 1] == number)
), "Error in help-function getDivisiors(...)"
# summed all divisors up to 'number' (exclusive), hence [:-1]
return sum(divisors[:-1] ) == number
def lowercase_ (A : Any , A : Optional[Any] ):
assert (
isinstance(A , A )
and isinstance(A , A )
and (denominator != 0)
), "The arguments must been from type int and 'denominator' != 0"
# build the greatest common divisor of numerator and denominator.
snake_case__ : Union[str, Any] = gcd(abs(A ) , abs(A ) )
# precondition
assert (
isinstance(A , A )
and (numerator % gcd_of_fraction == 0)
and (denominator % gcd_of_fraction == 0)
), "Error in function gcd(...,...)"
return (numerator // gcd_of_fraction, denominator // gcd_of_fraction)
def lowercase_ (A : str ):
assert isinstance(A , A ) and (n >= 0), "'n' must been a int and >= 0"
snake_case__ : List[Any] = 1 # this will be return.
for factor in range(1 , n + 1 ):
ans *= factor
return ans
def lowercase_ (A : int ):
assert isinstance(A , A ) and (n >= 0), "'n' must been an int and >= 0"
snake_case__ : Any = 0
snake_case__ : Tuple = 1
snake_case__ : Dict = 1 # this will be return
for _ in range(n - 1 ):
snake_case__ : Optional[int] = ans
ans += fiba
snake_case__ : Optional[int] = tmp
return ans
| 277 |
from typing import TYPE_CHECKING
from ...utils import (
OptionalDependencyNotAvailable,
_LazyModule,
is_sentencepiece_available,
is_tokenizers_available,
is_torch_available,
)
a_ :Optional[Any] = {"configuration_reformer": ["REFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP", "ReformerConfig"]}
try:
if not is_sentencepiece_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :str = ["ReformerTokenizer"]
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :int = ["ReformerTokenizerFast"]
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :List[str] = [
"REFORMER_PRETRAINED_MODEL_ARCHIVE_LIST",
"ReformerAttention",
"ReformerForMaskedLM",
"ReformerForQuestionAnswering",
"ReformerForSequenceClassification",
"ReformerLayer",
"ReformerModel",
"ReformerModelWithLMHead",
"ReformerPreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_reformer import REFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP, ReformerConfig
try:
if not is_sentencepiece_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_reformer import ReformerTokenizer
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_reformer_fast import ReformerTokenizerFast
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_reformer import (
REFORMER_PRETRAINED_MODEL_ARCHIVE_LIST,
ReformerAttention,
ReformerForMaskedLM,
ReformerForQuestionAnswering,
ReformerForSequenceClassification,
ReformerLayer,
ReformerModel,
ReformerModelWithLMHead,
ReformerPreTrainedModel,
)
else:
import sys
a_ :Optional[Any] = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 277 | 1 |
import unittest
from transformers import AutoTokenizer, is_flax_available
from transformers.testing_utils import require_flax, require_sentencepiece, require_tokenizers, slow
if is_flax_available():
import jax.numpy as jnp
from transformers import FlaxXLMRobertaModel
@require_sentencepiece
@require_tokenizers
@require_flax
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
@slow
def lowercase_ ( self : Optional[Any] ) ->Optional[Any]:
snake_case__ : Optional[int] = FlaxXLMRobertaModel.from_pretrained('xlm-roberta-base' )
snake_case__ : Tuple = AutoTokenizer.from_pretrained('xlm-roberta-base' )
snake_case__ : List[str] = 'The dog is cute and lives in the garden house'
snake_case__ : Tuple = jnp.array([tokenizer.encode(_snake_case )] )
snake_case__ : Dict = (1, 1_2, 7_6_8) # batch_size, sequence_length, embedding_vector_dim
snake_case__ : Optional[int] = jnp.array(
[[-0.0_1_0_1, 0.1_2_1_8, -0.0_8_0_3, 0.0_8_0_1, 0.1_3_2_7, 0.0_7_7_6, -0.1_2_1_5, 0.2_3_8_3, 0.3_3_3_8, 0.3_1_0_6, 0.0_3_0_0, 0.0_2_5_2]] )
snake_case__ : Dict = model(_snake_case )['last_hidden_state']
self.assertEqual(output.shape, _snake_case )
# compare the actual values for a slice of last dim
self.assertTrue(jnp.allclose(output[:, :, -1], _snake_case, atol=1e-3 ) )
| 277 |
import itertools
import random
import unittest
import numpy as np
from transformers import BatchFeature, SpeechTaFeatureExtractor
from transformers.testing_utils import require_torch
from transformers.utils.import_utils import is_torch_available
from ...test_sequence_feature_extraction_common import SequenceFeatureExtractionTestMixin
if is_torch_available():
import torch
a_ :Any = random.Random()
def lowercase_ (A : int , A : Union[str, Any]=1.0 , A : List[str]=None , A : Any=None ):
if rng is None:
snake_case__ : List[str] = global_rng
snake_case__ : int = []
for batch_idx in range(shape[0] ):
values.append([] )
for _ in range(shape[1] ):
values[-1].append(rng.random() * scale )
return values
@require_torch
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
def __init__( self : Optional[Any], _snake_case : List[str], _snake_case : Tuple=7, _snake_case : Union[str, Any]=4_0_0, _snake_case : Any=2_0_0_0, _snake_case : Dict=1, _snake_case : Optional[Any]=0.0, _snake_case : List[Any]=1_6_0_0_0, _snake_case : List[Any]=True, _snake_case : List[Any]=8_0, _snake_case : Dict=1_6, _snake_case : str=6_4, _snake_case : Tuple="hann_window", _snake_case : Union[str, Any]=8_0, _snake_case : Optional[Any]=7_6_0_0, _snake_case : str=1e-10, _snake_case : Any=True, ) ->Union[str, Any]:
snake_case__ : Optional[int] = parent
snake_case__ : Optional[Any] = batch_size
snake_case__ : List[Any] = min_seq_length
snake_case__ : List[Any] = max_seq_length
snake_case__ : Any = (self.max_seq_length - self.min_seq_length) // (self.batch_size - 1)
snake_case__ : Tuple = feature_size
snake_case__ : List[Any] = padding_value
snake_case__ : Any = sampling_rate
snake_case__ : Dict = do_normalize
snake_case__ : Union[str, Any] = num_mel_bins
snake_case__ : Any = hop_length
snake_case__ : Any = win_length
snake_case__ : Any = win_function
snake_case__ : Optional[int] = fmin
snake_case__ : int = fmax
snake_case__ : Union[str, Any] = mel_floor
snake_case__ : Union[str, Any] = return_attention_mask
def lowercase_ ( self : Optional[int] ) ->List[str]:
return {
"feature_size": self.feature_size,
"padding_value": self.padding_value,
"sampling_rate": self.sampling_rate,
"do_normalize": self.do_normalize,
"num_mel_bins": self.num_mel_bins,
"hop_length": self.hop_length,
"win_length": self.win_length,
"win_function": self.win_function,
"fmin": self.fmin,
"fmax": self.fmax,
"mel_floor": self.mel_floor,
"return_attention_mask": self.return_attention_mask,
}
def lowercase_ ( self : Any, _snake_case : Optional[Any]=False, _snake_case : List[str]=False ) ->Union[str, Any]:
def _flatten(_snake_case : List[str] ):
return list(itertools.chain(*_snake_case ) )
if equal_length:
snake_case__ : Any = floats_list((self.batch_size, self.max_seq_length) )
else:
# make sure that inputs increase in size
snake_case__ : int = [
_flatten(floats_list((x, self.feature_size) ) )
for x in range(self.min_seq_length, self.max_seq_length, self.seq_length_diff )
]
if numpify:
snake_case__ : Any = [np.asarray(_snake_case ) for x in speech_inputs]
return speech_inputs
def lowercase_ ( self : Union[str, Any], _snake_case : str=False, _snake_case : Dict=False ) ->List[str]:
if equal_length:
snake_case__ : Optional[Any] = [floats_list((self.max_seq_length, self.num_mel_bins) ) for _ in range(self.batch_size )]
else:
# make sure that inputs increase in size
snake_case__ : List[str] = [
floats_list((x, self.num_mel_bins) )
for x in range(self.min_seq_length, self.max_seq_length, self.seq_length_diff )
]
if numpify:
snake_case__ : int = [np.asarray(_snake_case ) for x in speech_inputs]
return speech_inputs
@require_torch
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = SpeechTaFeatureExtractor
def lowercase_ ( self : int ) ->Union[str, Any]:
snake_case__ : List[str] = SpeechTaFeatureExtractionTester(self )
def lowercase_ ( self : Any, _snake_case : Dict ) ->Any:
self.assertTrue(np.all(np.mean(_snake_case, axis=0 ) < 1e-3 ) )
self.assertTrue(np.all(np.abs(np.var(_snake_case, axis=0 ) - 1 ) < 1e-3 ) )
def lowercase_ ( self : List[Any] ) ->Union[str, Any]:
# Tests that all call wrap to encode_plus and batch_encode_plus
snake_case__ : Optional[Any] = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
# create three inputs of length 800, 1000, and 1200
snake_case__ : int = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : Tuple = [np.asarray(_snake_case ) for speech_input in speech_inputs]
# Test not batched input
snake_case__ : str = feat_extract(speech_inputs[0], return_tensors='np' ).input_values
snake_case__ : List[str] = feat_extract(np_speech_inputs[0], return_tensors='np' ).input_values
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
# Test batched
snake_case__ : Any = feat_extract(_snake_case, return_tensors='np' ).input_values
snake_case__ : Union[str, Any] = feat_extract(_snake_case, return_tensors='np' ).input_values
for enc_seq_a, enc_seq_a in zip(_snake_case, _snake_case ):
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
def lowercase_ ( self : int ) ->Optional[int]:
snake_case__ : List[Any] = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : Tuple = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : int = ['longest', 'max_length', 'do_not_pad']
snake_case__ : List[str] = [None, 1_6_0_0, None]
for max_length, padding in zip(_snake_case, _snake_case ):
snake_case__ : Optional[int] = feat_extract(_snake_case, padding=_snake_case, max_length=_snake_case, return_tensors='np' )
snake_case__ : Optional[int] = processed.input_values
self._check_zero_mean_unit_variance(input_values[0][:8_0_0] )
self.assertTrue(input_values[0][8_0_0:].sum() < 1e-6 )
self._check_zero_mean_unit_variance(input_values[1][:1_0_0_0] )
self.assertTrue(input_values[0][1_0_0_0:].sum() < 1e-6 )
self._check_zero_mean_unit_variance(input_values[2][:1_2_0_0] )
def lowercase_ ( self : Union[str, Any] ) ->Optional[Any]:
snake_case__ : Optional[Any] = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : Tuple = range(8_0_0, 1_4_0_0, 2_0_0 )
snake_case__ : Optional[Any] = [floats_list((1, x) )[0] for x in lengths]
snake_case__ : Union[str, Any] = ['longest', 'max_length', 'do_not_pad']
snake_case__ : str = [None, 1_6_0_0, None]
for max_length, padding in zip(_snake_case, _snake_case ):
snake_case__ : List[str] = feat_extract(_snake_case, max_length=_snake_case, padding=_snake_case )
snake_case__ : Tuple = processed.input_values
self._check_zero_mean_unit_variance(input_values[0][:8_0_0] )
self._check_zero_mean_unit_variance(input_values[1][:1_0_0_0] )
self._check_zero_mean_unit_variance(input_values[2][:1_2_0_0] )
def lowercase_ ( self : List[Any] ) ->Optional[Any]:
snake_case__ : Any = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : str = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : Optional[Any] = feat_extract(
_snake_case, truncation=_snake_case, max_length=1_0_0_0, padding='max_length', return_tensors='np' )
snake_case__ : int = processed.input_values
self._check_zero_mean_unit_variance(input_values[0, :8_0_0] )
self._check_zero_mean_unit_variance(input_values[1] )
self._check_zero_mean_unit_variance(input_values[2] )
def lowercase_ ( self : int ) ->Union[str, Any]:
snake_case__ : str = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : Dict = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : str = feat_extract(
_snake_case, truncation=_snake_case, max_length=1_0_0_0, padding='longest', return_tensors='np' )
snake_case__ : Dict = processed.input_values
self._check_zero_mean_unit_variance(input_values[0, :8_0_0] )
self._check_zero_mean_unit_variance(input_values[1, :1_0_0_0] )
self._check_zero_mean_unit_variance(input_values[2] )
# make sure that if max_length < longest -> then pad to max_length
self.assertTrue(input_values.shape == (3, 1_0_0_0) )
snake_case__ : Tuple = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : List[str] = feat_extract(
_snake_case, truncation=_snake_case, max_length=2_0_0_0, padding='longest', return_tensors='np' )
snake_case__ : Optional[Any] = processed.input_values
self._check_zero_mean_unit_variance(input_values[0, :8_0_0] )
self._check_zero_mean_unit_variance(input_values[1, :1_0_0_0] )
self._check_zero_mean_unit_variance(input_values[2] )
# make sure that if max_length > longest -> then pad to longest
self.assertTrue(input_values.shape == (3, 1_2_0_0) )
def lowercase_ ( self : List[str] ) ->Dict:
snake_case__ : Dict = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : List[Any] = np.random.rand(1_0_0 ).astype(np.floataa )
snake_case__ : int = np_speech_inputs.tolist()
for inputs in [py_speech_inputs, np_speech_inputs]:
snake_case__ : int = feature_extractor.pad([{'input_values': inputs}], return_tensors='np' )
self.assertTrue(np_processed.input_values.dtype == np.floataa )
snake_case__ : Optional[int] = feature_extractor.pad([{'input_values': inputs}], return_tensors='pt' )
self.assertTrue(pt_processed.input_values.dtype == torch.floataa )
def lowercase_ ( self : Optional[int] ) ->Optional[Any]:
# Tests that all call wrap to encode_plus and batch_encode_plus
snake_case__ : str = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
# create three inputs of length 800, 1000, and 1200
snake_case__ : List[Any] = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : Dict = [np.asarray(_snake_case ) for speech_input in speech_inputs]
# Test feature size
snake_case__ : Optional[int] = feature_extractor(audio_target=_snake_case, padding=_snake_case, return_tensors='np' ).input_values
self.assertTrue(input_values.ndim == 3 )
self.assertTrue(input_values.shape[-1] == feature_extractor.num_mel_bins )
# Test not batched input
snake_case__ : Dict = feature_extractor(speech_inputs[0], return_tensors='np' ).input_values
snake_case__ : Any = feature_extractor(np_speech_inputs[0], return_tensors='np' ).input_values
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
# Test batched
snake_case__ : Dict = feature_extractor(_snake_case, return_tensors='np' ).input_values
snake_case__ : Dict = feature_extractor(_snake_case, return_tensors='np' ).input_values
for enc_seq_a, enc_seq_a in zip(_snake_case, _snake_case ):
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
# Test 2-D numpy arrays are batched.
snake_case__ : Optional[Any] = [floats_list((1, x) )[0] for x in (8_0_0, 8_0_0, 8_0_0)]
snake_case__ : int = np.asarray(_snake_case )
snake_case__ : Union[str, Any] = feature_extractor(_snake_case, return_tensors='np' ).input_values
snake_case__ : Union[str, Any] = feature_extractor(_snake_case, return_tensors='np' ).input_values
for enc_seq_a, enc_seq_a in zip(_snake_case, _snake_case ):
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
def lowercase_ ( self : Union[str, Any] ) ->str:
snake_case__ : int = self.feat_extract_tester.prepare_inputs_for_target()
snake_case__ : List[str] = self.feature_extraction_class(**self.feat_extract_dict )
snake_case__ : Optional[Any] = feat_extract.model_input_names[0]
snake_case__ : Tuple = BatchFeature({input_name: speech_inputs} )
self.assertTrue(all(len(_snake_case ) == len(_snake_case ) for x, y in zip(_snake_case, processed_features[input_name] ) ) )
snake_case__ : int = self.feat_extract_tester.prepare_inputs_for_target(equal_length=_snake_case )
snake_case__ : Union[str, Any] = BatchFeature({input_name: speech_inputs}, tensor_type='np' )
snake_case__ : Dict = processed_features[input_name]
if len(batch_features_input.shape ) < 3:
snake_case__ : List[str] = batch_features_input[:, :, None]
self.assertTrue(
batch_features_input.shape
== (self.feat_extract_tester.batch_size, len(speech_inputs[0] ), self.feat_extract_tester.num_mel_bins) )
@require_torch
def lowercase_ ( self : List[str] ) ->Any:
snake_case__ : int = self.feat_extract_tester.prepare_inputs_for_target(equal_length=_snake_case )
snake_case__ : Optional[Any] = self.feature_extraction_class(**self.feat_extract_dict )
snake_case__ : Tuple = feat_extract.model_input_names[0]
snake_case__ : List[Any] = BatchFeature({input_name: speech_inputs}, tensor_type='pt' )
snake_case__ : Tuple = processed_features[input_name]
if len(batch_features_input.shape ) < 3:
snake_case__ : Any = batch_features_input[:, :, None]
self.assertTrue(
batch_features_input.shape
== (self.feat_extract_tester.batch_size, len(speech_inputs[0] ), self.feat_extract_tester.num_mel_bins) )
@require_torch
def lowercase_ ( self : Optional[int] ) ->Tuple:
snake_case__ : Dict = self.feature_extraction_class(**self.feat_extract_dict )
snake_case__ : Union[str, Any] = self.feat_extract_tester.prepare_inputs_for_target()
snake_case__ : Optional[Any] = feat_extract.model_input_names[0]
snake_case__ : List[str] = BatchFeature({input_name: speech_inputs} )
snake_case__ : int = feat_extract.num_mel_bins # hack!
snake_case__ : Tuple = feat_extract.pad(_snake_case, padding='longest', return_tensors='np' )[input_name]
snake_case__ : Union[str, Any] = feat_extract.pad(_snake_case, padding='longest', return_tensors='pt' )[input_name]
self.assertTrue(abs(input_np.astype(np.floataa ).sum() - input_pt.numpy().astype(np.floataa ).sum() ) < 1e-2 )
def lowercase_ ( self : int ) ->Any:
snake_case__ : Any = self.feat_extract_dict
snake_case__ : List[Any] = True
snake_case__ : Union[str, Any] = self.feature_extraction_class(**_snake_case )
snake_case__ : Any = self.feat_extract_tester.prepare_inputs_for_target()
snake_case__ : List[Any] = [len(_snake_case ) for x in speech_inputs]
snake_case__ : Union[str, Any] = feat_extract.model_input_names[0]
snake_case__ : Optional[int] = BatchFeature({input_name: speech_inputs} )
snake_case__ : List[str] = feat_extract.num_mel_bins # hack!
snake_case__ : str = feat_extract.pad(_snake_case, padding='longest', return_tensors='np' )
self.assertIn('attention_mask', _snake_case )
self.assertListEqual(list(processed.attention_mask.shape ), list(processed[input_name].shape[:2] ) )
self.assertListEqual(processed.attention_mask.sum(-1 ).tolist(), _snake_case )
def lowercase_ ( self : Optional[int] ) ->str:
snake_case__ : int = self.feat_extract_dict
snake_case__ : List[str] = True
snake_case__ : Tuple = self.feature_extraction_class(**_snake_case )
snake_case__ : List[str] = self.feat_extract_tester.prepare_inputs_for_target()
snake_case__ : str = [len(_snake_case ) for x in speech_inputs]
snake_case__ : Optional[Any] = feat_extract.model_input_names[0]
snake_case__ : Optional[int] = BatchFeature({input_name: speech_inputs} )
snake_case__ : Optional[Any] = min(_snake_case )
snake_case__ : Union[str, Any] = feat_extract.num_mel_bins # hack!
snake_case__ : Tuple = feat_extract.pad(
_snake_case, padding='max_length', max_length=_snake_case, truncation=_snake_case, return_tensors='np' )
self.assertIn('attention_mask', _snake_case )
self.assertListEqual(
list(processed_pad.attention_mask.shape ), [processed_pad[input_name].shape[0], max_length] )
self.assertListEqual(
processed_pad.attention_mask[:, :max_length].sum(-1 ).tolist(), [max_length for x in speech_inputs] )
def lowercase_ ( self : List[Any], _snake_case : Optional[int] ) ->Optional[Any]:
from datasets import load_dataset
snake_case__ : str = load_dataset('hf-internal-testing/librispeech_asr_dummy', 'clean', split='validation' )
# automatic decoding with librispeech
snake_case__ : Dict = ds.sort('id' ).select(range(_snake_case ) )[:num_samples]['audio']
return [x["array"] for x in speech_samples]
def lowercase_ ( self : str ) ->str:
# fmt: off
snake_case__ : List[Any] = torch.tensor(
[2.3804e-03, 2.0752e-03, 1.9836e-03, 2.1057e-03, 1.6174e-03,
3.0518e-04, 9.1553e-05, 3.3569e-04, 9.7656e-04, 1.8311e-03,
2.0142e-03, 2.1057e-03, 1.7395e-03, 4.5776e-04, -3.9673e-04,
4.5776e-04, 1.0071e-03, 9.1553e-05, 4.8828e-04, 1.1597e-03,
7.3242e-04, 9.4604e-04, 1.8005e-03, 1.8311e-03, 8.8501e-04,
4.2725e-04, 4.8828e-04, 7.3242e-04, 1.0986e-03, 2.1057e-03] )
# fmt: on
snake_case__ : Union[str, Any] = self._load_datasamples(1 )
snake_case__ : Optional[int] = SpeechTaFeatureExtractor()
snake_case__ : List[Any] = feature_extractor(_snake_case, return_tensors='pt' ).input_values
self.assertEquals(input_values.shape, (1, 9_3_6_8_0) )
self.assertTrue(torch.allclose(input_values[0, :3_0], _snake_case, atol=1e-6 ) )
def lowercase_ ( self : Any ) ->str:
# fmt: off
snake_case__ : Optional[Any] = torch.tensor(
[-2.6_8_7_0, -3.0_1_0_4, -3.1_3_5_6, -3.5_3_5_2, -3.0_0_4_4, -3.0_3_5_3, -3.4_7_1_9, -3.6_7_7_7,
-3.1_5_2_0, -2.9_4_3_5, -2.6_5_5_3, -2.8_7_9_5, -2.9_9_4_4, -2.5_9_2_1, -3.0_2_7_9, -3.0_3_8_6,
-3.0_8_6_4, -3.1_2_9_1, -3.2_3_5_3, -2.7_4_4_4, -2.6_8_3_1, -2.7_2_8_7, -3.1_7_6_1, -3.1_5_7_1,
-3.2_7_2_6, -3.0_5_8_2, -3.1_0_0_7, -3.4_5_3_3, -3.4_6_9_5, -3.0_9_9_8] )
# fmt: on
snake_case__ : List[str] = self._load_datasamples(1 )
snake_case__ : str = SpeechTaFeatureExtractor()
snake_case__ : Optional[Any] = feature_extractor(audio_target=_snake_case, return_tensors='pt' ).input_values
self.assertEquals(input_values.shape, (1, 3_6_6, 8_0) )
self.assertTrue(torch.allclose(input_values[0, 0, :3_0], _snake_case, atol=1e-4 ) )
| 277 | 1 |
from __future__ import annotations
def lowercase_ (A : list[int] , A : int ):
snake_case__ : list[list[int]] = []
snake_case__ : list[int] = []
snake_case__ : Union[str, Any] = 0
snake_case__ : List[str] = sum(A )
create_state_space_tree(A , A , A , A , A , A )
return result
def lowercase_ (A : list[int] , A : int , A : int , A : list[int] , A : list[list[int]] , A : int , ):
if sum(A ) > max_sum or (remaining_nums_sum + sum(A )) < max_sum:
return
if sum(A ) == max_sum:
result.append(A )
return
for index in range(A , len(A ) ):
create_state_space_tree(
A , A , index + 1 , [*path, nums[index]] , A , remaining_nums_sum - nums[index] , )
a_ :Optional[int] = [3, 34, 4, 12, 5, 2]
a_ :List[str] = 9
a_ :Dict = generate_sum_of_subsets_soln(nums, max_sum)
print(*result)
| 277 |
# Copyright 2023 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from ..models.auto import AutoModelForSeqaSeqLM, AutoTokenizer
from .base import PipelineTool
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = """philschmid/bart-large-cnn-samsum"""
_SCREAMING_SNAKE_CASE = (
"""This is a tool that summarizes an English text. It takes an input `text` containing the text to summarize, """
"""and returns a summary of the text."""
)
_SCREAMING_SNAKE_CASE = """summarizer"""
_SCREAMING_SNAKE_CASE = AutoTokenizer
_SCREAMING_SNAKE_CASE = AutoModelForSeqaSeqLM
_SCREAMING_SNAKE_CASE = ["""text"""]
_SCREAMING_SNAKE_CASE = ["""text"""]
def lowercase_ ( self : Optional[Any], _snake_case : str ) ->Any:
return self.pre_processor(_snake_case, return_tensors='pt', truncation=_snake_case )
def lowercase_ ( self : int, _snake_case : List[Any] ) ->Any:
return self.model.generate(**_snake_case )[0]
def lowercase_ ( self : int, _snake_case : int ) ->str:
return self.pre_processor.decode(_snake_case, skip_special_tokens=_snake_case, clean_up_tokenization_spaces=_snake_case )
| 277 | 1 |
a_ :Tuple = {str(digit): digit**5 for digit in range(10)}
def lowercase_ (A : int ):
return sum(DIGITS_FIFTH_POWER[digit] for digit in str(A ) )
def lowercase_ ():
return sum(
number
for number in range(1_0_0_0 , 1_0_0_0_0_0_0 )
if number == digits_fifth_powers_sum(A ) )
if __name__ == "__main__":
print(solution())
| 277 |
import argparse
import torch
from transformers import LxmertConfig, LxmertForPreTraining, load_tf_weights_in_lxmert
from transformers.utils import logging
logging.set_verbosity_info()
def lowercase_ (A : str , A : List[Any] , A : Any ):
# Initialise PyTorch model
snake_case__ : List[Any] = LxmertConfig.from_json_file(A )
print(F'''Building PyTorch model from configuration: {config}''' )
snake_case__ : List[str] = LxmertForPreTraining(A )
# Load weights from tf checkpoint
load_tf_weights_in_lxmert(A , A , A )
# Save pytorch-model
print(F'''Save PyTorch model to {pytorch_dump_path}''' )
torch.save(model.state_dict() , A )
if __name__ == "__main__":
a_ :Union[str, Any] = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--tf_checkpoint_path", default=None, type=str, required=True, help="Path to the TensorFlow checkpoint path."
)
parser.add_argument(
"--config_file",
default=None,
type=str,
required=True,
help="The config json file corresponding to the pre-trained model. \nThis specifies the model architecture.",
)
parser.add_argument(
"--pytorch_dump_path", default=None, type=str, required=True, help="Path to the output PyTorch model."
)
a_ :Optional[int] = parser.parse_args()
convert_tf_checkpoint_to_pytorch(args.tf_checkpoint_path, args.config_file, args.pytorch_dump_path)
| 277 | 1 |
from __future__ import annotations
from typing import Any
def lowercase_ (A : list[Any] ):
create_state_space_tree(A , [] , 0 )
def lowercase_ (A : list[Any] , A : list[Any] , A : int ):
if index == len(A ):
print(A )
return
create_state_space_tree(A , A , index + 1 )
current_subsequence.append(sequence[index] )
create_state_space_tree(A , A , index + 1 )
current_subsequence.pop()
if __name__ == "__main__":
a_ :list[Any] = [3, 1, 2, 4]
generate_all_subsequences(seq)
seq.clear()
seq.extend(["A", "B", "C"])
generate_all_subsequences(seq)
| 277 |
import argparse
import fairseq
import torch
from torch import nn
from transformers import (
MBartaaTokenizer,
MBartConfig,
MBartForCausalLM,
SpeechEncoderDecoderConfig,
SpeechEncoderDecoderModel,
WavaVecaConfig,
WavaVecaFeatureExtractor,
WavaVecaModel,
logging,
)
logging.set_verbosity_info()
a_ :Tuple = logging.get_logger(__name__)
a_ :List[Any] = {
"post_extract_proj": "feature_projection.projection",
"encoder.pos_conv.0": "encoder.pos_conv_embed.conv",
"self_attn.k_proj": "encoder.layers.*.attention.k_proj",
"self_attn.v_proj": "encoder.layers.*.attention.v_proj",
"self_attn.q_proj": "encoder.layers.*.attention.q_proj",
"self_attn.out_proj": "encoder.layers.*.attention.out_proj",
"self_attn_layer_norm": "encoder.layers.*.layer_norm",
"fc1": "encoder.layers.*.feed_forward.intermediate_dense",
"fc2": "encoder.layers.*.feed_forward.output_dense",
"final_layer_norm": "encoder.layers.*.final_layer_norm",
"encoder.layer_norm": "encoder.layer_norm",
"w2v_model.layer_norm": "feature_projection.layer_norm",
"quantizer.weight_proj": "quantizer.weight_proj",
"quantizer.vars": "quantizer.codevectors",
"project_q": "project_q",
"final_proj": "project_hid",
"w2v_encoder.proj": "lm_head",
"mask_emb": "masked_spec_embed",
}
a_ :Optional[int] = [
"lm_head",
"quantizer.weight_proj",
"quantizer.codevectors",
"project_q",
"project_hid",
]
def lowercase_ (A : Union[str, Any] , A : str , A : Dict , A : Optional[Any] , A : Optional[Any] ):
for attribute in key.split('.' ):
snake_case__ : Any = getattr(A , A )
if weight_type is not None:
snake_case__ : Optional[Any] = getattr(A , A ).shape
else:
snake_case__ : Optional[int] = hf_pointer.shape
assert hf_shape == value.shape, (
F'''Shape of hf {key + "." + weight_type if weight_type is not None else ""} is {hf_shape}, but should be'''
F''' {value.shape} for {full_name}'''
)
if weight_type == "weight":
snake_case__ : Tuple = value
elif weight_type == "weight_g":
snake_case__ : Tuple = value
elif weight_type == "weight_v":
snake_case__ : List[Any] = value
elif weight_type == "bias":
snake_case__ : List[Any] = value
else:
snake_case__ : Optional[Any] = value
logger.info(F'''{key + "." + weight_type if weight_type is not None else ""} was initialized from {full_name}.''' )
def lowercase_ (A : str , A : Any ):
snake_case__ : Union[str, Any] = []
snake_case__ : Union[str, Any] = fairseq_model.state_dict()
snake_case__ : Union[str, Any] = hf_model.feature_extractor
snake_case__ : Any = hf_model.adapter
for name, value in fairseq_dict.items():
snake_case__ : Any = False
if "conv_layers" in name:
load_conv_layer(
A , A , A , A , hf_model.config.feat_extract_norm == 'group' , )
snake_case__ : List[Any] = True
elif any(x in name for x in ['adaptor', 'w2v_encoder.proj.', 'w2v_proj_ln.'] ):
load_adapter(A , A , A , A )
snake_case__ : Optional[Any] = True
else:
for key, mapped_key in MAPPING.items():
if key in name or key.split('w2v_model.' )[-1] == name.split('.' )[0]:
snake_case__ : Tuple = True
if "*" in mapped_key:
snake_case__ : List[Any] = name.split(A )[0].split('.' )[-2]
snake_case__ : Optional[int] = mapped_key.replace('*' , A )
if "weight_g" in name:
snake_case__ : Optional[int] = 'weight_g'
elif "weight_v" in name:
snake_case__ : Optional[Any] = 'weight_v'
elif "bias" in name:
snake_case__ : Union[str, Any] = 'bias'
elif "weight" in name:
snake_case__ : Optional[int] = 'weight'
else:
snake_case__ : Tuple = None
set_recursively(A , A , A , A , A )
continue
if not is_used:
unused_weights.append(A )
logger.warning(F'''Unused weights: {unused_weights}''' )
def lowercase_ (A : Union[str, Any] , A : Any , A : str , A : str , A : int ):
snake_case__ : str = full_name.split('conv_layers.' )[-1]
snake_case__ : Optional[int] = name.split('.' )
snake_case__ : Tuple = int(items[0] )
snake_case__ : Any = int(items[1] )
if type_id == 0:
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.bias.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.bias.data.shape} was found.'''
)
snake_case__ : Union[str, Any] = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.weight.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.weight.data.shape} was found.'''
)
snake_case__ : Union[str, Any] = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif (type_id == 2 and not use_group_norm) or (type_id == 2 and layer_id == 0 and use_group_norm):
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape, (
F'''{full_name} has size {value.shape}, but {feature_extractor[layer_id].layer_norm.bias.data.shape} was'''
" found."
)
snake_case__ : Optional[int] = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor[layer_id].layer_norm.weight.data.shape} was found.'''
)
snake_case__ : Optional[Any] = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
else:
unused_weights.append(A )
def lowercase_ (A : Optional[Any] , A : Any , A : Tuple , A : Any ):
snake_case__ : List[str] = full_name.split('adaptor.' )[-1]
snake_case__ : Tuple = name.split('.' )
if items[1].isdigit():
snake_case__ : Optional[int] = int(items[1] )
else:
snake_case__ : Any = None
if "adaptor" not in full_name:
if "proj_ln" in full_name:
# has to be layer norm
if "bias" in name:
assert (
value.shape == adapter.proj_layer_norm.bias.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj_layer_norm.bias.data.shape} was found.'''
snake_case__ : List[Any] = value
logger.info(F'''Adapter proj layer norm bias was initialized from {full_name}.''' )
if "weight" in name:
assert (
value.shape == adapter.proj_layer_norm.weight.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj_layer_norm.weight.data.shape} was found.'''
snake_case__ : int = value
else:
# has to be projection layer
if "bias" in name:
assert (
value.shape == adapter.proj.bias.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj.bias.data.shape} was found.'''
snake_case__ : str = value
logger.info(F'''Adapter proj layer bias was initialized from {full_name}.''' )
if "weight" in name:
assert (
value.shape == adapter.proj.weight.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj.weight.data.shape} was found.'''
snake_case__ : Dict = value
logger.info(F'''Adapter proj layer weight was initialized from {full_name}.''' )
elif isinstance(A , A ):
if "bias" in name:
assert (
value.shape == adapter.layers[layer_id].conv.bias.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.layers[layer_id].conv.bias.data.shape} was found.'''
snake_case__ : List[str] = value
logger.info(F'''Adapter layer {layer_id} bias was initialized from {full_name}.''' )
elif "weight" in name:
assert (
value.shape == adapter.layers[layer_id].conv.weight.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.layers[layer_id].conv.weight.data.shape} was found.'''
snake_case__ : List[str] = value
logger.info(F'''Adapter layer {layer_id} bias was initialized from {full_name}.''' )
else:
unused_weights.append(A )
def lowercase_ (A : int ):
snake_case__ , snake_case__ : Union[str, Any] = emb.weight.shape
snake_case__ : int = nn.Linear(A , A , bias=A )
snake_case__ : Optional[Any] = emb.weight.data
return lin_layer
@torch.no_grad()
def lowercase_ (A : Tuple , A : Tuple , A : Any , A : Optional[Any] , A : int , A : Optional[Any] , A : Union[str, Any] , A : Union[str, Any] , A : Optional[Any] , A : List[Any] , A : Union[str, Any] , ):
snake_case__ : Optional[Any] = WavaVecaConfig.from_pretrained(
A , add_adapter=A , adapter_stride=A , adapter_kernel_size=A , use_auth_token=A , output_hidden_size=A , )
snake_case__ : Dict = MBartConfig.from_pretrained(A )
# load model
snake_case__ , snake_case__ , snake_case__ : Any = fairseq.checkpoint_utils.load_model_ensemble_and_task(
[checkpoint_path] , arg_overrides={
'config_yaml': config_yaml_path,
'data': '/'.join(dict_path.split('/' )[:-1] ),
'w2v_path': checkpoint_path,
'load_pretrained_decoder_from': None,
} , )
snake_case__ : List[Any] = model[0].eval()
# load feature extractor
snake_case__ : str = WavaVecaFeatureExtractor.from_pretrained(A , use_auth_token=A )
# set weights for wav2vec2 encoder
snake_case__ : List[str] = WavaVecaModel(A )
recursively_load_weights_wavaveca(model.encoder , A )
# load decoder weights
snake_case__ : Any = MBartForCausalLM(A )
snake_case__ , snake_case__ : int = hf_decoder.model.decoder.load_state_dict(model.decoder.state_dict() , strict=A )
logger.warning(F'''The following keys are missing when loading the decoder weights: {missing_keys}''' )
logger.warning(F'''The following keys are unexpected when loading the decoder weights: {unexpected_keys}''' )
snake_case__ : Union[str, Any] = SpeechEncoderDecoderModel(encoder=A , decoder=A )
snake_case__ : str = False
snake_case__ : int = MBartaaTokenizer(A )
tokenizer.save_pretrained(A )
snake_case__ : Any = hf_wavavec.config.to_dict()
snake_case__ : Tuple = tokenizer.pad_token_id
snake_case__ : Union[str, Any] = tokenizer.bos_token_id
snake_case__ : Dict = tokenizer.eos_token_id
snake_case__ : Optional[int] = 'mbart50'
snake_case__ : Union[str, Any] = 'wav2vec2'
snake_case__ : List[str] = tokenizer.eos_token_id
snake_case__ : Union[str, Any] = 2_5_0_0_0_4
snake_case__ : int = tokenizer.eos_token_id
snake_case__ : Union[str, Any] = SpeechEncoderDecoderConfig.from_dict(A )
hf_wavavec.save_pretrained(A )
feature_extractor.save_pretrained(A )
if __name__ == "__main__":
a_ :str = argparse.ArgumentParser()
parser.add_argument("--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model.")
parser.add_argument("--checkpoint_path", default=None, type=str, help="Path to fairseq checkpoint")
parser.add_argument("--dict_path", default=None, type=str, help="Path to dict of fine-tuned model")
parser.add_argument("--config_yaml_path", default=None, type=str, help="Path to yaml file of fine-tuned model")
parser.add_argument(
"--encoder_config_path",
default="facebook/wav2vec2-xls-r-1b",
type=str,
help="Path to hf encoder wav2vec2 checkpoint config",
)
parser.add_argument(
"--decoder_config_path",
default="facebook/mbart-large-50-one-to-many-mmt",
type=str,
help="Path to hf decoder checkpoint config",
)
parser.add_argument("--add_adapter", default=True, type=bool, help="whethere to add model adapter layers")
parser.add_argument("--adapter_stride", default=2, type=int, help="stride of adapter layers")
parser.add_argument("--adapter_kernel_size", default=3, type=int, help="kernel size of adapter layers")
parser.add_argument("--encoder_output_dim", default=1_024, type=int, help="encoder output dim")
parser.add_argument("--start_token_id", default=250_004, type=int, help="`decoder_start_token_id` of model config")
a_ :Union[str, Any] = parser.parse_args()
convert_wavaveca_checkpoint(
args.checkpoint_path,
args.pytorch_dump_folder_path,
args.dict_path,
args.config_yaml_path,
encoder_config_path=args.encoder_config_path,
decoder_config_path=args.decoder_config_path,
add_adapter=args.add_adapter,
adapter_kernel_size=args.adapter_kernel_size,
adapter_stride=args.adapter_stride,
decoder_start_token_id=args.start_token_id,
encoder_output_dim=args.encoder_output_dim,
)
| 277 | 1 |
import warnings
from ...utils import logging
from .image_processing_layoutlmva import LayoutLMvaImageProcessor
a_ :List[Any] = logging.get_logger(__name__)
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
def __init__( self : str, *_snake_case : Optional[Any], **_snake_case : List[str] ) ->None:
warnings.warn(
'The class LayoutLMv2FeatureExtractor is deprecated and will be removed in version 5 of Transformers.'
' Please use LayoutLMv2ImageProcessor instead.', _snake_case, )
super().__init__(*_snake_case, **_snake_case )
| 277 |
from collections import OrderedDict
from typing import TYPE_CHECKING, Any, Mapping, Optional, Union
from ...configuration_utils import PretrainedConfig
from ...onnx import OnnxConfig
from ...utils import logging
if TYPE_CHECKING:
from ... import FeatureExtractionMixin, PreTrainedTokenizerBase, TensorType
a_ :Tuple = logging.get_logger(__name__)
a_ :Union[str, Any] = {
"microsoft/deberta-v2-xlarge": "https://huggingface.co/microsoft/deberta-v2-xlarge/resolve/main/config.json",
"microsoft/deberta-v2-xxlarge": "https://huggingface.co/microsoft/deberta-v2-xxlarge/resolve/main/config.json",
"microsoft/deberta-v2-xlarge-mnli": (
"https://huggingface.co/microsoft/deberta-v2-xlarge-mnli/resolve/main/config.json"
),
"microsoft/deberta-v2-xxlarge-mnli": (
"https://huggingface.co/microsoft/deberta-v2-xxlarge-mnli/resolve/main/config.json"
),
}
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = """deberta-v2"""
def __init__( self : Union[str, Any], _snake_case : Dict=1_2_8_1_0_0, _snake_case : Any=1_5_3_6, _snake_case : Tuple=2_4, _snake_case : int=2_4, _snake_case : Optional[int]=6_1_4_4, _snake_case : Optional[int]="gelu", _snake_case : Optional[int]=0.1, _snake_case : List[str]=0.1, _snake_case : str=5_1_2, _snake_case : Optional[int]=0, _snake_case : Optional[int]=0.0_2, _snake_case : Dict=1e-7, _snake_case : int=False, _snake_case : Any=-1, _snake_case : List[str]=0, _snake_case : Tuple=True, _snake_case : Any=None, _snake_case : Union[str, Any]=0, _snake_case : Tuple="gelu", **_snake_case : Union[str, Any], ) ->Optional[int]:
super().__init__(**_snake_case )
snake_case__ : Dict = hidden_size
snake_case__ : Optional[int] = num_hidden_layers
snake_case__ : Any = num_attention_heads
snake_case__ : List[Any] = intermediate_size
snake_case__ : List[Any] = hidden_act
snake_case__ : Union[str, Any] = hidden_dropout_prob
snake_case__ : Dict = attention_probs_dropout_prob
snake_case__ : List[str] = max_position_embeddings
snake_case__ : List[str] = type_vocab_size
snake_case__ : Optional[Any] = initializer_range
snake_case__ : Optional[int] = relative_attention
snake_case__ : Tuple = max_relative_positions
snake_case__ : Union[str, Any] = pad_token_id
snake_case__ : Optional[int] = position_biased_input
# Backwards compatibility
if type(_snake_case ) == str:
snake_case__ : int = [x.strip() for x in pos_att_type.lower().split('|' )]
snake_case__ : List[str] = pos_att_type
snake_case__ : Union[str, Any] = vocab_size
snake_case__ : Optional[int] = layer_norm_eps
snake_case__ : Optional[int] = kwargs.get('pooler_hidden_size', _snake_case )
snake_case__ : int = pooler_dropout
snake_case__ : str = pooler_hidden_act
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
@property
def lowercase_ ( self : Optional[int] ) ->Mapping[str, Mapping[int, str]]:
if self.task == "multiple-choice":
snake_case__ : List[Any] = {0: 'batch', 1: 'choice', 2: 'sequence'}
else:
snake_case__ : int = {0: 'batch', 1: 'sequence'}
if self._config.type_vocab_size > 0:
return OrderedDict(
[('input_ids', dynamic_axis), ('attention_mask', dynamic_axis), ('token_type_ids', dynamic_axis)] )
else:
return OrderedDict([('input_ids', dynamic_axis), ('attention_mask', dynamic_axis)] )
@property
def lowercase_ ( self : Dict ) ->int:
return 1_2
def lowercase_ ( self : Tuple, _snake_case : Union["PreTrainedTokenizerBase", "FeatureExtractionMixin"], _snake_case : int = -1, _snake_case : int = -1, _snake_case : int = -1, _snake_case : bool = False, _snake_case : Optional["TensorType"] = None, _snake_case : int = 3, _snake_case : int = 4_0, _snake_case : int = 4_0, _snake_case : "PreTrainedTokenizerBase" = None, ) ->Mapping[str, Any]:
snake_case__ : Union[str, Any] = super().generate_dummy_inputs(preprocessor=_snake_case, framework=_snake_case )
if self._config.type_vocab_size == 0 and "token_type_ids" in dummy_inputs:
del dummy_inputs["token_type_ids"]
return dummy_inputs
| 277 | 1 |
from collections import deque
from .hash_table import HashTable
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
def __init__( self : Optional[Any], *_snake_case : Optional[Any], **_snake_case : List[Any] ) ->Optional[int]:
super().__init__(*_snake_case, **_snake_case )
def lowercase_ ( self : Optional[Any], _snake_case : Tuple, _snake_case : Dict ) ->Dict:
snake_case__ : int = deque([] ) if self.values[key] is None else self.values[key]
self.values[key].appendleft(_snake_case )
snake_case__ : Dict = self.values[key]
def lowercase_ ( self : Any ) ->Optional[Any]:
return (
sum(self.charge_factor - len(_snake_case ) for slot in self.values )
/ self.size_table
* self.charge_factor
)
def lowercase_ ( self : Union[str, Any], _snake_case : str, _snake_case : Optional[int]=None ) ->Optional[Any]:
if not (
len(self.values[key] ) == self.charge_factor and self.values.count(_snake_case ) == 0
):
return key
return super()._collision_resolution(_snake_case, _snake_case )
| 277 |
import argparse
import json
import pickle
from pathlib import Path
import requests
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import MaskFormerConfig, MaskFormerForInstanceSegmentation, MaskFormerImageProcessor, SwinConfig
from transformers.utils import logging
logging.set_verbosity_info()
a_ :str = logging.get_logger(__name__)
def lowercase_ (A : str ):
snake_case__ : Tuple = SwinConfig.from_pretrained(
'microsoft/swin-tiny-patch4-window7-224' , out_features=['stage1', 'stage2', 'stage3', 'stage4'] )
snake_case__ : List[Any] = MaskFormerConfig(backbone_config=A )
snake_case__ : Union[str, Any] = 'huggingface/label-files'
if "ade20k-full" in model_name:
# this should be ok
snake_case__ : Dict = 8_4_7
snake_case__ : List[str] = 'maskformer-ade20k-full-id2label.json'
elif "ade" in model_name:
# this should be ok
snake_case__ : Union[str, Any] = 1_5_0
snake_case__ : Any = 'ade20k-id2label.json'
elif "coco-stuff" in model_name:
# this should be ok
snake_case__ : List[str] = 1_7_1
snake_case__ : Union[str, Any] = 'maskformer-coco-stuff-id2label.json'
elif "coco" in model_name:
# TODO
snake_case__ : Dict = 1_3_3
snake_case__ : str = 'coco-panoptic-id2label.json'
elif "cityscapes" in model_name:
# this should be ok
snake_case__ : List[str] = 1_9
snake_case__ : Union[str, Any] = 'cityscapes-id2label.json'
elif "vistas" in model_name:
# this should be ok
snake_case__ : Tuple = 6_5
snake_case__ : List[str] = 'mapillary-vistas-id2label.json'
snake_case__ : Dict = json.load(open(hf_hub_download(A , A , repo_type='dataset' ) , 'r' ) )
snake_case__ : List[str] = {int(A ): v for k, v in idalabel.items()}
return config
def lowercase_ (A : Any ):
snake_case__ : Optional[int] = []
# stem
# fmt: off
rename_keys.append(('backbone.patch_embed.proj.weight', 'model.pixel_level_module.encoder.model.embeddings.patch_embeddings.projection.weight') )
rename_keys.append(('backbone.patch_embed.proj.bias', 'model.pixel_level_module.encoder.model.embeddings.patch_embeddings.projection.bias') )
rename_keys.append(('backbone.patch_embed.norm.weight', 'model.pixel_level_module.encoder.model.embeddings.norm.weight') )
rename_keys.append(('backbone.patch_embed.norm.bias', 'model.pixel_level_module.encoder.model.embeddings.norm.bias') )
# stages
for i in range(len(config.backbone_config.depths ) ):
for j in range(config.backbone_config.depths[i] ):
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.norm1.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_before.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.norm1.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_before.bias''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.attn.relative_position_bias_table''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_bias_table''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.attn.relative_position_index''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_index''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.attn.proj.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.attn.proj.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.bias''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.norm2.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_after.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.norm2.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_after.bias''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.mlp.fc1.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.mlp.fc1.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.bias''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.mlp.fc2.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.output.dense.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.mlp.fc2.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.output.dense.bias''') )
if i < 3:
rename_keys.append((F'''backbone.layers.{i}.downsample.reduction.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.reduction.weight''') )
rename_keys.append((F'''backbone.layers.{i}.downsample.norm.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.norm.weight''') )
rename_keys.append((F'''backbone.layers.{i}.downsample.norm.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.norm.bias''') )
rename_keys.append((F'''backbone.norm{i}.weight''', F'''model.pixel_level_module.encoder.hidden_states_norms.{i}.weight''') )
rename_keys.append((F'''backbone.norm{i}.bias''', F'''model.pixel_level_module.encoder.hidden_states_norms.{i}.bias''') )
# FPN
rename_keys.append(('sem_seg_head.layer_4.weight', 'model.pixel_level_module.decoder.fpn.stem.0.weight') )
rename_keys.append(('sem_seg_head.layer_4.norm.weight', 'model.pixel_level_module.decoder.fpn.stem.1.weight') )
rename_keys.append(('sem_seg_head.layer_4.norm.bias', 'model.pixel_level_module.decoder.fpn.stem.1.bias') )
for source_index, target_index in zip(range(3 , 0 , -1 ) , range(0 , 3 ) ):
rename_keys.append((F'''sem_seg_head.adapter_{source_index}.weight''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.0.weight''') )
rename_keys.append((F'''sem_seg_head.adapter_{source_index}.norm.weight''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.1.weight''') )
rename_keys.append((F'''sem_seg_head.adapter_{source_index}.norm.bias''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.1.bias''') )
rename_keys.append((F'''sem_seg_head.layer_{source_index}.weight''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.block.0.weight''') )
rename_keys.append((F'''sem_seg_head.layer_{source_index}.norm.weight''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.block.1.weight''') )
rename_keys.append((F'''sem_seg_head.layer_{source_index}.norm.bias''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.block.1.bias''') )
rename_keys.append(('sem_seg_head.mask_features.weight', 'model.pixel_level_module.decoder.mask_projection.weight') )
rename_keys.append(('sem_seg_head.mask_features.bias', 'model.pixel_level_module.decoder.mask_projection.bias') )
# Transformer decoder
for idx in range(config.decoder_config.decoder_layers ):
# self-attention out projection
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.out_proj.weight''', F'''model.transformer_module.decoder.layers.{idx}.self_attn.out_proj.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.out_proj.bias''', F'''model.transformer_module.decoder.layers.{idx}.self_attn.out_proj.bias''') )
# cross-attention out projection
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.out_proj.weight''', F'''model.transformer_module.decoder.layers.{idx}.encoder_attn.out_proj.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.out_proj.bias''', F'''model.transformer_module.decoder.layers.{idx}.encoder_attn.out_proj.bias''') )
# MLP 1
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear1.weight''', F'''model.transformer_module.decoder.layers.{idx}.fc1.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear1.bias''', F'''model.transformer_module.decoder.layers.{idx}.fc1.bias''') )
# MLP 2
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear2.weight''', F'''model.transformer_module.decoder.layers.{idx}.fc2.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear2.bias''', F'''model.transformer_module.decoder.layers.{idx}.fc2.bias''') )
# layernorm 1 (self-attention layernorm)
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm1.weight''', F'''model.transformer_module.decoder.layers.{idx}.self_attn_layer_norm.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm1.bias''', F'''model.transformer_module.decoder.layers.{idx}.self_attn_layer_norm.bias''') )
# layernorm 2 (cross-attention layernorm)
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm2.weight''', F'''model.transformer_module.decoder.layers.{idx}.encoder_attn_layer_norm.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm2.bias''', F'''model.transformer_module.decoder.layers.{idx}.encoder_attn_layer_norm.bias''') )
# layernorm 3 (final layernorm)
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm3.weight''', F'''model.transformer_module.decoder.layers.{idx}.final_layer_norm.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm3.bias''', F'''model.transformer_module.decoder.layers.{idx}.final_layer_norm.bias''') )
rename_keys.append(('sem_seg_head.predictor.transformer.decoder.norm.weight', 'model.transformer_module.decoder.layernorm.weight') )
rename_keys.append(('sem_seg_head.predictor.transformer.decoder.norm.bias', 'model.transformer_module.decoder.layernorm.bias') )
# heads on top
rename_keys.append(('sem_seg_head.predictor.query_embed.weight', 'model.transformer_module.queries_embedder.weight') )
rename_keys.append(('sem_seg_head.predictor.input_proj.weight', 'model.transformer_module.input_projection.weight') )
rename_keys.append(('sem_seg_head.predictor.input_proj.bias', 'model.transformer_module.input_projection.bias') )
rename_keys.append(('sem_seg_head.predictor.class_embed.weight', 'class_predictor.weight') )
rename_keys.append(('sem_seg_head.predictor.class_embed.bias', 'class_predictor.bias') )
for i in range(3 ):
rename_keys.append((F'''sem_seg_head.predictor.mask_embed.layers.{i}.weight''', F'''mask_embedder.{i}.0.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.mask_embed.layers.{i}.bias''', F'''mask_embedder.{i}.0.bias''') )
# fmt: on
return rename_keys
def lowercase_ (A : Tuple , A : Tuple , A : Optional[Any] ):
snake_case__ : Optional[int] = dct.pop(A )
snake_case__ : Union[str, Any] = val
def lowercase_ (A : Optional[Any] , A : Tuple ):
snake_case__ : Optional[int] = [int(backbone_config.embed_dim * 2**i ) for i in range(len(backbone_config.depths ) )]
for i in range(len(backbone_config.depths ) ):
snake_case__ : Optional[int] = num_features[i]
for j in range(backbone_config.depths[i] ):
# fmt: off
# read in weights + bias of input projection layer (in original implementation, this is a single matrix + bias)
snake_case__ : int = state_dict.pop(F'''backbone.layers.{i}.blocks.{j}.attn.qkv.weight''' )
snake_case__ : Tuple = state_dict.pop(F'''backbone.layers.{i}.blocks.{j}.attn.qkv.bias''' )
# next, add query, keys and values (in that order) to the state dict
snake_case__ : str = in_proj_weight[:dim, :]
snake_case__ : int = in_proj_bias[: dim]
snake_case__ : List[Any] = in_proj_weight[
dim : dim * 2, :
]
snake_case__ : List[str] = in_proj_bias[
dim : dim * 2
]
snake_case__ : List[Any] = in_proj_weight[
-dim :, :
]
snake_case__ : Dict = in_proj_bias[-dim :]
# fmt: on
def lowercase_ (A : List[str] , A : List[Any] ):
# fmt: off
snake_case__ : str = config.decoder_config.hidden_size
for idx in range(config.decoder_config.decoder_layers ):
# read in weights + bias of self-attention input projection layer (in the original implementation, this is a single matrix + bias)
snake_case__ : List[Any] = state_dict.pop(F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.in_proj_weight''' )
snake_case__ : int = state_dict.pop(F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.in_proj_bias''' )
# next, add query, keys and values (in that order) to the state dict
snake_case__ : Any = in_proj_weight[: hidden_size, :]
snake_case__ : Tuple = in_proj_bias[:config.hidden_size]
snake_case__ : List[str] = in_proj_weight[hidden_size : hidden_size * 2, :]
snake_case__ : Dict = in_proj_bias[hidden_size : hidden_size * 2]
snake_case__ : Any = in_proj_weight[-hidden_size :, :]
snake_case__ : int = in_proj_bias[-hidden_size :]
# read in weights + bias of cross-attention input projection layer (in the original implementation, this is a single matrix + bias)
snake_case__ : List[Any] = state_dict.pop(F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.in_proj_weight''' )
snake_case__ : List[str] = state_dict.pop(F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.in_proj_bias''' )
# next, add query, keys and values (in that order) to the state dict
snake_case__ : Optional[int] = in_proj_weight[: hidden_size, :]
snake_case__ : Optional[Any] = in_proj_bias[:config.hidden_size]
snake_case__ : int = in_proj_weight[hidden_size : hidden_size * 2, :]
snake_case__ : List[str] = in_proj_bias[hidden_size : hidden_size * 2]
snake_case__ : List[str] = in_proj_weight[-hidden_size :, :]
snake_case__ : str = in_proj_bias[-hidden_size :]
# fmt: on
def lowercase_ ():
snake_case__ : Any = 'http://images.cocodataset.org/val2017/000000039769.jpg'
snake_case__ : int = Image.open(requests.get(A , stream=A ).raw )
return im
@torch.no_grad()
def lowercase_ (A : str , A : str , A : str , A : bool = False ):
snake_case__ : Optional[int] = get_maskformer_config(A )
# load original state_dict
with open(A , 'rb' ) as f:
snake_case__ : List[Any] = pickle.load(A )
snake_case__ : Optional[int] = data['model']
# for name, param in state_dict.items():
# print(name, param.shape)
# rename keys
snake_case__ : List[str] = create_rename_keys(A )
for src, dest in rename_keys:
rename_key(A , A , A )
read_in_swin_q_k_v(A , config.backbone_config )
read_in_decoder_q_k_v(A , A )
# update to torch tensors
for key, value in state_dict.items():
snake_case__ : int = torch.from_numpy(A )
# load 🤗 model
snake_case__ : str = MaskFormerForInstanceSegmentation(A )
model.eval()
for name, param in model.named_parameters():
print(A , param.shape )
snake_case__ , snake_case__ : Union[str, Any] = model.load_state_dict(A , strict=A )
assert missing_keys == [
"model.pixel_level_module.encoder.model.layernorm.weight",
"model.pixel_level_module.encoder.model.layernorm.bias",
]
assert len(A ) == 0, F'''Unexpected keys: {unexpected_keys}'''
# verify results
snake_case__ : Optional[Any] = prepare_img()
if "vistas" in model_name:
snake_case__ : int = 6_5
elif "cityscapes" in model_name:
snake_case__ : Dict = 6_5_5_3_5
else:
snake_case__ : Tuple = 2_5_5
snake_case__ : Optional[int] = True if 'ade' in model_name else False
snake_case__ : Dict = MaskFormerImageProcessor(ignore_index=A , reduce_labels=A )
snake_case__ : Any = image_processor(A , return_tensors='pt' )
snake_case__ : Any = model(**A )
print('Logits:' , outputs.class_queries_logits[0, :3, :3] )
if model_name == "maskformer-swin-tiny-ade":
snake_case__ : Tuple = torch.tensor(
[[3.6353, -4.4770, -2.6065], [0.5081, -4.2394, -3.5343], [2.1909, -5.0353, -1.9323]] )
assert torch.allclose(outputs.class_queries_logits[0, :3, :3] , A , atol=1e-4 )
print('Looks ok!' )
if pytorch_dump_folder_path is not None:
print(F'''Saving model and image processor to {pytorch_dump_folder_path}''' )
Path(A ).mkdir(exist_ok=A )
model.save_pretrained(A )
image_processor.save_pretrained(A )
if push_to_hub:
print('Pushing model and image processor to the hub...' )
model.push_to_hub(F'''nielsr/{model_name}''' )
image_processor.push_to_hub(F'''nielsr/{model_name}''' )
if __name__ == "__main__":
a_ :Optional[int] = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--model_name",
default="maskformer-swin-tiny-ade",
type=str,
help=("Name of the MaskFormer model you'd like to convert",),
)
parser.add_argument(
"--checkpoint_path",
default="/Users/nielsrogge/Documents/MaskFormer_checkpoints/MaskFormer-Swin-tiny-ADE20k/model.pkl",
type=str,
help="Path to the original state dict (.pth file).",
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model directory."
)
parser.add_argument(
"--push_to_hub", action="store_true", help="Whether or not to push the converted model to the 🤗 hub."
)
a_ :Dict = parser.parse_args()
convert_maskformer_checkpoint(
args.model_name, args.checkpoint_path, args.pytorch_dump_folder_path, args.push_to_hub
)
| 277 | 1 |
import os
import sys
import tempfile
import unittest
import unittest.mock as mock
from pathlib import Path
from huggingface_hub import HfFolder, delete_repo
from huggingface_hub.file_download import http_get
from requests.exceptions import HTTPError
from transformers import (
AlbertTokenizer,
AutoTokenizer,
BertTokenizer,
BertTokenizerFast,
GPTaTokenizerFast,
is_tokenizers_available,
)
from transformers.testing_utils import TOKEN, USER, is_staging_test, require_tokenizers
from transformers.tokenization_utils import Trie
sys.path.append(str(Path(__file__).parent.parent / "utils"))
from test_module.custom_tokenization import CustomTokenizer # noqa E402
if is_tokenizers_available():
from test_module.custom_tokenization_fast import CustomTokenizerFast
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
def lowercase_ ( self : Dict ) ->Any:
# A mock response for an HTTP head request to emulate server down
snake_case__ : List[str] = mock.Mock()
snake_case__ : Tuple = 5_0_0
snake_case__ : Union[str, Any] = {}
snake_case__ : List[Any] = HTTPError
snake_case__ : Union[str, Any] = {}
# Download this model to make sure it's in the cache.
snake_case__ : Union[str, Any] = BertTokenizer.from_pretrained('hf-internal-testing/tiny-random-bert' )
# Under the mock environment we get a 500 error when trying to reach the tokenizer.
with mock.patch('requests.Session.request', return_value=_snake_case ) as mock_head:
snake_case__ : Union[str, Any] = BertTokenizer.from_pretrained('hf-internal-testing/tiny-random-bert' )
# This check we did call the fake head request
mock_head.assert_called()
@require_tokenizers
def lowercase_ ( self : Dict ) ->Optional[int]:
# A mock response for an HTTP head request to emulate server down
snake_case__ : int = mock.Mock()
snake_case__ : Optional[Any] = 5_0_0
snake_case__ : Dict = {}
snake_case__ : Tuple = HTTPError
snake_case__ : Optional[Any] = {}
# Download this model to make sure it's in the cache.
snake_case__ : Tuple = GPTaTokenizerFast.from_pretrained('gpt2' )
# Under the mock environment we get a 500 error when trying to reach the tokenizer.
with mock.patch('requests.Session.request', return_value=_snake_case ) as mock_head:
snake_case__ : Optional[Any] = GPTaTokenizerFast.from_pretrained('gpt2' )
# This check we did call the fake head request
mock_head.assert_called()
def lowercase_ ( self : List[Any] ) ->Dict:
# This test is for deprecated behavior and can be removed in v5
try:
snake_case__ : Optional[int] = tempfile.mktemp()
with open(_snake_case, 'wb' ) as f:
http_get('https://huggingface.co/albert-base-v1/resolve/main/spiece.model', _snake_case )
snake_case__ : Dict = AlbertTokenizer.from_pretrained(_snake_case )
finally:
os.remove(_snake_case )
# Supporting this legacy load introduced a weird bug where the tokenizer would load local files if they are in
# the current folder and have the right name.
if os.path.isfile('tokenizer.json' ):
# We skip the test if the user has a `tokenizer.json` in this folder to avoid deleting it.
return
try:
with open('tokenizer.json', 'wb' ) as f:
http_get('https://huggingface.co/hf-internal-testing/tiny-random-bert/blob/main/tokenizer.json', _snake_case )
snake_case__ : Optional[Any] = AutoTokenizer.from_pretrained('hf-internal-testing/tiny-random-gpt2' )
# The tiny random BERT has a vocab size of 1024, tiny gpt2 as a vocab size of 1000
self.assertEqual(tokenizer.vocab_size, 1_0_0_0 )
# Tokenizer should depend on the remote checkpoint, not the local tokenizer.json file.
finally:
os.remove('tokenizer.json' )
def lowercase_ ( self : Union[str, Any] ) ->Union[str, Any]:
# This test is for deprecated behavior and can be removed in v5
snake_case__ : Optional[int] = AlbertTokenizer.from_pretrained('https://huggingface.co/albert-base-v1/resolve/main/spiece.model' )
@is_staging_test
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = ["""[UNK]""", """[CLS]""", """[SEP]""", """[PAD]""", """[MASK]""", """bla""", """blou"""]
@classmethod
def lowercase_ ( cls : Any ) ->List[Any]:
snake_case__ : Optional[int] = TOKEN
HfFolder.save_token(_snake_case )
@classmethod
def lowercase_ ( cls : Any ) ->int:
try:
delete_repo(token=cls._token, repo_id='test-tokenizer' )
except HTTPError:
pass
try:
delete_repo(token=cls._token, repo_id='valid_org/test-tokenizer-org' )
except HTTPError:
pass
try:
delete_repo(token=cls._token, repo_id='test-dynamic-tokenizer' )
except HTTPError:
pass
def lowercase_ ( self : Optional[int] ) ->Optional[int]:
with tempfile.TemporaryDirectory() as tmp_dir:
snake_case__ : List[Any] = os.path.join(_snake_case, 'vocab.txt' )
with open(_snake_case, 'w', encoding='utf-8' ) as vocab_writer:
vocab_writer.write(''.join([x + '\n' for x in self.vocab_tokens] ) )
snake_case__ : str = BertTokenizer(_snake_case )
tokenizer.push_to_hub('test-tokenizer', use_auth_token=self._token )
snake_case__ : int = BertTokenizer.from_pretrained(F'''{USER}/test-tokenizer''' )
self.assertDictEqual(new_tokenizer.vocab, tokenizer.vocab )
# Reset repo
delete_repo(token=self._token, repo_id='test-tokenizer' )
# Push to hub via save_pretrained
with tempfile.TemporaryDirectory() as tmp_dir:
tokenizer.save_pretrained(_snake_case, repo_id='test-tokenizer', push_to_hub=_snake_case, use_auth_token=self._token )
snake_case__ : Any = BertTokenizer.from_pretrained(F'''{USER}/test-tokenizer''' )
self.assertDictEqual(new_tokenizer.vocab, tokenizer.vocab )
def lowercase_ ( self : Tuple ) ->Union[str, Any]:
with tempfile.TemporaryDirectory() as tmp_dir:
snake_case__ : Tuple = os.path.join(_snake_case, 'vocab.txt' )
with open(_snake_case, 'w', encoding='utf-8' ) as vocab_writer:
vocab_writer.write(''.join([x + '\n' for x in self.vocab_tokens] ) )
snake_case__ : Any = BertTokenizer(_snake_case )
tokenizer.push_to_hub('valid_org/test-tokenizer-org', use_auth_token=self._token )
snake_case__ : List[str] = BertTokenizer.from_pretrained('valid_org/test-tokenizer-org' )
self.assertDictEqual(new_tokenizer.vocab, tokenizer.vocab )
# Reset repo
delete_repo(token=self._token, repo_id='valid_org/test-tokenizer-org' )
# Push to hub via save_pretrained
with tempfile.TemporaryDirectory() as tmp_dir:
tokenizer.save_pretrained(
_snake_case, repo_id='valid_org/test-tokenizer-org', push_to_hub=_snake_case, use_auth_token=self._token )
snake_case__ : Any = BertTokenizer.from_pretrained('valid_org/test-tokenizer-org' )
self.assertDictEqual(new_tokenizer.vocab, tokenizer.vocab )
@require_tokenizers
def lowercase_ ( self : Optional[int] ) ->List[str]:
CustomTokenizer.register_for_auto_class()
with tempfile.TemporaryDirectory() as tmp_dir:
snake_case__ : Any = os.path.join(_snake_case, 'vocab.txt' )
with open(_snake_case, 'w', encoding='utf-8' ) as vocab_writer:
vocab_writer.write(''.join([x + '\n' for x in self.vocab_tokens] ) )
snake_case__ : Union[str, Any] = CustomTokenizer(_snake_case )
# No fast custom tokenizer
tokenizer.push_to_hub('test-dynamic-tokenizer', use_auth_token=self._token )
snake_case__ : Dict = AutoTokenizer.from_pretrained(F'''{USER}/test-dynamic-tokenizer''', trust_remote_code=_snake_case )
# Can't make an isinstance check because the new_model.config is from the CustomTokenizer class of a dynamic module
self.assertEqual(tokenizer.__class__.__name__, 'CustomTokenizer' )
# Fast and slow custom tokenizer
CustomTokenizerFast.register_for_auto_class()
with tempfile.TemporaryDirectory() as tmp_dir:
snake_case__ : Optional[int] = os.path.join(_snake_case, 'vocab.txt' )
with open(_snake_case, 'w', encoding='utf-8' ) as vocab_writer:
vocab_writer.write(''.join([x + '\n' for x in self.vocab_tokens] ) )
snake_case__ : Union[str, Any] = BertTokenizerFast.from_pretrained(_snake_case )
bert_tokenizer.save_pretrained(_snake_case )
snake_case__ : Dict = CustomTokenizerFast.from_pretrained(_snake_case )
tokenizer.push_to_hub('test-dynamic-tokenizer', use_auth_token=self._token )
snake_case__ : List[Any] = AutoTokenizer.from_pretrained(F'''{USER}/test-dynamic-tokenizer''', trust_remote_code=_snake_case )
# Can't make an isinstance check because the new_model.config is from the FakeConfig class of a dynamic module
self.assertEqual(tokenizer.__class__.__name__, 'CustomTokenizerFast' )
snake_case__ : int = AutoTokenizer.from_pretrained(
F'''{USER}/test-dynamic-tokenizer''', use_fast=_snake_case, trust_remote_code=_snake_case )
# Can't make an isinstance check because the new_model.config is from the FakeConfig class of a dynamic module
self.assertEqual(tokenizer.__class__.__name__, 'CustomTokenizer' )
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
def lowercase_ ( self : Optional[Any] ) ->Any:
snake_case__ : Any = Trie()
trie.add('Hello 友達' )
self.assertEqual(trie.data, {'H': {'e': {'l': {'l': {'o': {' ': {'友': {'達': {'': 1}}}}}}}}} )
trie.add('Hello' )
trie.data
self.assertEqual(trie.data, {'H': {'e': {'l': {'l': {'o': {'': 1, ' ': {'友': {'達': {'': 1}}}}}}}}} )
def lowercase_ ( self : Tuple ) ->Any:
snake_case__ : int = Trie()
self.assertEqual(trie.split('[CLS] This is a extra_id_100' ), ['[CLS] This is a extra_id_100'] )
trie.add('[CLS]' )
trie.add('extra_id_1' )
trie.add('extra_id_100' )
self.assertEqual(trie.split('[CLS] This is a extra_id_100' ), ['[CLS]', ' This is a ', 'extra_id_100'] )
def lowercase_ ( self : Optional[Any] ) ->Union[str, Any]:
snake_case__ : Union[str, Any] = Trie()
trie.add('A' )
self.assertEqual(trie.split('ABC' ), ['A', 'BC'] )
self.assertEqual(trie.split('BCA' ), ['BC', 'A'] )
def lowercase_ ( self : Union[str, Any] ) ->Dict:
snake_case__ : Tuple = Trie()
trie.add('TOKEN]' )
trie.add('[SPECIAL_TOKEN]' )
self.assertEqual(trie.split('This is something [SPECIAL_TOKEN]' ), ['This is something ', '[SPECIAL_TOKEN]'] )
def lowercase_ ( self : Optional[int] ) ->List[Any]:
snake_case__ : int = Trie()
trie.add('A' )
trie.add('P' )
trie.add('[SPECIAL_TOKEN]' )
self.assertEqual(trie.split('This is something [SPECIAL_TOKEN]' ), ['This is something ', '[SPECIAL_TOKEN]'] )
def lowercase_ ( self : List[str] ) ->List[Any]:
snake_case__ : str = Trie()
trie.add('AB' )
trie.add('B' )
trie.add('C' )
self.assertEqual(trie.split('ABC' ), ['AB', 'C'] )
def lowercase_ ( self : int ) ->Optional[Any]:
snake_case__ : Union[str, Any] = Trie()
trie.add('ABC' )
trie.add('B' )
trie.add('CD' )
self.assertEqual(trie.split('ABCD' ), ['ABC', 'D'] )
def lowercase_ ( self : str ) ->Dict:
# Even if the offsets are wrong, we necessarily output correct string
# parts.
snake_case__ : Tuple = Trie()
snake_case__ : Optional[int] = trie.cut_text('ABC', [0, 0, 2, 1, 2, 3] )
self.assertEqual(_snake_case, ['AB', 'C'] )
| 277 |
import unittest
from transformers import is_torch_available
from transformers.testing_utils import require_torch, slow, torch_device
from ...generation.test_utils import GenerationTesterMixin
from ...test_configuration_common import ConfigTester
from ...test_modeling_common import ModelTesterMixin, ids_tensor
from ...test_pipeline_mixin import PipelineTesterMixin
if is_torch_available():
import torch
from transformers import (
OPENAI_GPT_PRETRAINED_MODEL_ARCHIVE_LIST,
OpenAIGPTConfig,
OpenAIGPTDoubleHeadsModel,
OpenAIGPTForSequenceClassification,
OpenAIGPTLMHeadModel,
OpenAIGPTModel,
)
class snake_case__ :
"""simple docstring"""
def __init__( self : List[str], _snake_case : Any, _snake_case : int=1_3, _snake_case : Optional[int]=7, _snake_case : int=True, _snake_case : Optional[Any]=True, _snake_case : Optional[Any]=True, _snake_case : Union[str, Any]=9_9, _snake_case : Optional[Any]=3_2, _snake_case : Tuple=5, _snake_case : str=4, _snake_case : Any=3_7, _snake_case : int="gelu", _snake_case : Optional[Any]=0.1, _snake_case : str=0.1, _snake_case : str=5_1_2, _snake_case : Dict=1_6, _snake_case : str=2, _snake_case : Union[str, Any]=0.0_2, _snake_case : Optional[int]=3, _snake_case : Union[str, Any]=4, _snake_case : Tuple=None, ) ->Optional[Any]:
snake_case__ : Optional[int] = parent
snake_case__ : List[Any] = batch_size
snake_case__ : Tuple = seq_length
snake_case__ : str = is_training
snake_case__ : Optional[int] = use_token_type_ids
snake_case__ : Any = use_labels
snake_case__ : Dict = vocab_size
snake_case__ : str = hidden_size
snake_case__ : Union[str, Any] = num_hidden_layers
snake_case__ : List[str] = num_attention_heads
snake_case__ : Union[str, Any] = intermediate_size
snake_case__ : List[Any] = hidden_act
snake_case__ : int = hidden_dropout_prob
snake_case__ : str = attention_probs_dropout_prob
snake_case__ : Any = max_position_embeddings
snake_case__ : Union[str, Any] = type_vocab_size
snake_case__ : Optional[Any] = type_sequence_label_size
snake_case__ : Optional[int] = initializer_range
snake_case__ : Optional[int] = num_labels
snake_case__ : str = num_choices
snake_case__ : int = scope
snake_case__ : List[str] = self.vocab_size - 1
def lowercase_ ( self : Union[str, Any] ) ->Tuple:
snake_case__ : List[str] = ids_tensor([self.batch_size, self.seq_length], self.vocab_size )
snake_case__ : List[str] = None
if self.use_token_type_ids:
snake_case__ : Optional[Any] = ids_tensor([self.batch_size, self.seq_length], self.type_vocab_size )
snake_case__ : Tuple = None
snake_case__ : str = None
snake_case__ : List[Any] = None
if self.use_labels:
snake_case__ : Dict = ids_tensor([self.batch_size], self.type_sequence_label_size )
snake_case__ : int = ids_tensor([self.batch_size, self.seq_length], self.num_labels )
snake_case__ : List[str] = ids_tensor([self.batch_size], self.num_choices )
snake_case__ : Union[str, Any] = OpenAIGPTConfig(
vocab_size=self.vocab_size, n_embd=self.hidden_size, n_layer=self.num_hidden_layers, n_head=self.num_attention_heads, n_positions=self.max_position_embeddings, pad_token_id=self.pad_token_id, )
snake_case__ : List[str] = ids_tensor([self.num_hidden_layers, self.num_attention_heads], 2 )
return (
config,
input_ids,
head_mask,
token_type_ids,
sequence_labels,
token_labels,
choice_labels,
)
def lowercase_ ( self : Any, _snake_case : List[str], _snake_case : Any, _snake_case : List[Any], _snake_case : Tuple, *_snake_case : Optional[Any] ) ->Tuple:
snake_case__ : Union[str, Any] = OpenAIGPTModel(config=_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Optional[Any] = model(_snake_case, token_type_ids=_snake_case, head_mask=_snake_case )
snake_case__ : Union[str, Any] = model(_snake_case, token_type_ids=_snake_case )
snake_case__ : Optional[Any] = model(_snake_case )
self.parent.assertEqual(result.last_hidden_state.shape, (self.batch_size, self.seq_length, self.hidden_size) )
def lowercase_ ( self : Optional[int], _snake_case : Optional[Any], _snake_case : Union[str, Any], _snake_case : Optional[int], _snake_case : List[Any], *_snake_case : Dict ) ->Optional[int]:
snake_case__ : Optional[Any] = OpenAIGPTLMHeadModel(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Tuple = model(_snake_case, token_type_ids=_snake_case, labels=_snake_case )
self.parent.assertEqual(result.loss.shape, () )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.seq_length, self.vocab_size) )
def lowercase_ ( self : int, _snake_case : Tuple, _snake_case : List[str], _snake_case : List[Any], _snake_case : List[Any], *_snake_case : List[Any] ) ->Optional[int]:
snake_case__ : List[str] = OpenAIGPTDoubleHeadsModel(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Optional[Any] = model(_snake_case, token_type_ids=_snake_case, labels=_snake_case )
self.parent.assertEqual(result.loss.shape, () )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.seq_length, self.vocab_size) )
def lowercase_ ( self : Optional[int], _snake_case : Tuple, _snake_case : Dict, _snake_case : List[str], _snake_case : Optional[Any], *_snake_case : Union[str, Any] ) ->str:
snake_case__ : List[str] = self.num_labels
snake_case__ : Dict = OpenAIGPTForSequenceClassification(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : List[str] = ids_tensor([self.batch_size], self.type_sequence_label_size )
snake_case__ : List[str] = model(_snake_case, token_type_ids=_snake_case, labels=_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.num_labels) )
def lowercase_ ( self : Dict ) ->int:
snake_case__ : List[Any] = self.prepare_config_and_inputs()
(
(
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) ,
) : Optional[Any] = config_and_inputs
snake_case__ : str = {
'input_ids': input_ids,
'token_type_ids': token_type_ids,
'head_mask': head_mask,
}
return config, inputs_dict
@require_torch
class snake_case__ ( lowerCAmelCase_ , lowerCAmelCase_ , lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = (
(OpenAIGPTModel, OpenAIGPTLMHeadModel, OpenAIGPTDoubleHeadsModel, OpenAIGPTForSequenceClassification)
if is_torch_available()
else ()
)
_SCREAMING_SNAKE_CASE = (
(OpenAIGPTLMHeadModel,) if is_torch_available() else ()
) # TODO (PVP): Add Double HeadsModel when generate() function is changed accordingly
_SCREAMING_SNAKE_CASE = (
{
"""feature-extraction""": OpenAIGPTModel,
"""text-classification""": OpenAIGPTForSequenceClassification,
"""text-generation""": OpenAIGPTLMHeadModel,
"""zero-shot""": OpenAIGPTForSequenceClassification,
}
if is_torch_available()
else {}
)
def lowercase_ ( self : Optional[int], _snake_case : Union[str, Any], _snake_case : int, _snake_case : Tuple, _snake_case : Tuple, _snake_case : List[str] ) ->Optional[Any]:
if pipeline_test_casse_name == "ZeroShotClassificationPipelineTests":
# Get `tokenizer does not have a padding token` error for both fast/slow tokenizers.
# `OpenAIGPTConfig` was never used in pipeline tests, either because of a missing checkpoint or because a
# tiny config could not be created.
return True
return False
def lowercase_ ( self : Optional[Any], _snake_case : Union[str, Any], _snake_case : List[str], _snake_case : Any=False ) ->Tuple:
snake_case__ : Optional[int] = super()._prepare_for_class(_snake_case, _snake_case, return_labels=_snake_case )
if return_labels:
if model_class.__name__ == "OpenAIGPTDoubleHeadsModel":
snake_case__ : Union[str, Any] = torch.zeros(
(self.model_tester.batch_size, self.model_tester.num_choices, self.model_tester.seq_length), dtype=torch.long, device=_snake_case, )
snake_case__ : List[Any] = inputs_dict['labels']
snake_case__ : List[Any] = inputs_dict['labels']
snake_case__ : Any = torch.zeros(
(self.model_tester.batch_size, self.model_tester.num_choices), dtype=torch.long, device=_snake_case, )
snake_case__ : Tuple = torch.zeros(
self.model_tester.batch_size, dtype=torch.long, device=_snake_case )
return inputs_dict
def lowercase_ ( self : Union[str, Any] ) ->List[str]:
snake_case__ : List[str] = OpenAIGPTModelTester(self )
snake_case__ : Any = ConfigTester(self, config_class=_snake_case, n_embd=3_7 )
def lowercase_ ( self : Optional[int] ) ->str:
self.config_tester.run_common_tests()
def lowercase_ ( self : int ) ->Tuple:
snake_case__ : str = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_openai_gpt_model(*_snake_case )
def lowercase_ ( self : Tuple ) ->List[str]:
snake_case__ : Optional[int] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_lm_head_model(*_snake_case )
def lowercase_ ( self : Dict ) ->int:
snake_case__ : Optional[Any] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_double_lm_head_model(*_snake_case )
def lowercase_ ( self : int ) ->str:
snake_case__ : List[Any] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_openai_gpt_for_sequence_classification(*_snake_case )
@slow
def lowercase_ ( self : Optional[Any] ) ->str:
for model_name in OPENAI_GPT_PRETRAINED_MODEL_ARCHIVE_LIST[:1]:
snake_case__ : Optional[int] = OpenAIGPTModel.from_pretrained(_snake_case )
self.assertIsNotNone(_snake_case )
@require_torch
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
@slow
def lowercase_ ( self : Tuple ) ->Optional[int]:
snake_case__ : Union[str, Any] = OpenAIGPTLMHeadModel.from_pretrained('openai-gpt' )
model.to(_snake_case )
snake_case__ : Tuple = torch.tensor([[4_8_1, 4_7_3_5, 5_4_4]], dtype=torch.long, device=_snake_case ) # the president is
snake_case__ : int = [
4_8_1,
4_7_3_5,
5_4_4,
2_4_6,
9_6_3,
8_7_0,
7_6_2,
2_3_9,
2_4_4,
4_0_4_7_7,
2_4_4,
2_4_9,
7_1_9,
8_8_1,
4_8_7,
5_4_4,
2_4_0,
2_4_4,
6_0_3,
4_8_1,
] # the president is a very good man. " \n " i\'m sure he is, " said the
snake_case__ : Optional[int] = model.generate(_snake_case, do_sample=_snake_case )
self.assertListEqual(output_ids[0].tolist(), _snake_case )
| 277 | 1 |
import unittest
from pathlib import Path
from tempfile import TemporaryDirectory
from transformers import AutoConfig, TFGPTaLMHeadModel, is_keras_nlp_available, is_tf_available
from transformers.models.gpta.tokenization_gpta import GPTaTokenizer
from transformers.testing_utils import require_keras_nlp, require_tf, slow
if is_tf_available():
import tensorflow as tf
if is_keras_nlp_available():
from transformers.models.gpta import TFGPTaTokenizer
a_ :int = ["gpt2"]
a_ :Union[str, Any] = "gpt2"
if is_tf_available():
class snake_case__ ( tf.Module ):
"""simple docstring"""
def __init__( self : List[str], _snake_case : Union[str, Any] ) ->Optional[int]:
super().__init__()
snake_case__ : Union[str, Any] = tokenizer
snake_case__ : Union[str, Any] = AutoConfig.from_pretrained(_snake_case )
snake_case__ : str = TFGPTaLMHeadModel.from_config(_snake_case )
@tf.function(input_signature=(tf.TensorSpec((None,), tf.string, name='text' ),) )
def lowercase_ ( self : Optional[int], _snake_case : Any ) ->Dict:
snake_case__ : Dict = self.tokenizer(_snake_case )
snake_case__ : int = tokenized['input_ids'].to_tensor()
snake_case__ : int = tf.cast(input_ids_dense > 0, tf.intaa )
# input_mask = tf.reshape(input_mask, [-1, MAX_SEQ_LEN])
snake_case__ : Optional[int] = self.model(input_ids=_snake_case, attention_mask=_snake_case )['logits']
return outputs
@require_tf
@require_keras_nlp
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
def lowercase_ ( self : Optional[Any] ) ->List[Any]:
super().setUp()
snake_case__ : Any = [GPTaTokenizer.from_pretrained(_snake_case ) for checkpoint in (TOKENIZER_CHECKPOINTS)]
snake_case__ : Optional[int] = [TFGPTaTokenizer.from_pretrained(_snake_case ) for checkpoint in TOKENIZER_CHECKPOINTS]
assert len(self.tokenizers ) == len(self.tf_tokenizers )
snake_case__ : Dict = [
'This is a straightforward English test sentence.',
'This one has some weird characters\rto\nsee\r\nif those\u00E9break things.',
'Now we\'re going to add some Chinese: 一 二 三 一二三',
'And some much more rare Chinese: 齉 堃 齉堃',
'Je vais aussi écrire en français pour tester les accents',
'Classical Irish also has some unusual characters, so in they go: Gaelaċ, ꝼ',
]
snake_case__ : Union[str, Any] = list(zip(self.test_sentences, self.test_sentences[::-1] ) )
def lowercase_ ( self : Union[str, Any] ) ->str:
for tokenizer, tf_tokenizer in zip(self.tokenizers, self.tf_tokenizers ):
for test_inputs in self.test_sentences:
snake_case__ : Any = tokenizer([test_inputs], return_tensors='tf' )
snake_case__ : Dict = tf_tokenizer([test_inputs] )
for key in python_outputs.keys():
# convert them to numpy to avoid messing with ragged tensors
snake_case__ : List[Any] = python_outputs[key].numpy()
snake_case__ : List[str] = tf_outputs[key].numpy()
self.assertTrue(tf.reduce_all(python_outputs_values.shape == tf_outputs_values.shape ) )
self.assertTrue(tf.reduce_all(tf.cast(_snake_case, tf.intaa ) == tf_outputs_values ) )
@slow
def lowercase_ ( self : Any ) ->Union[str, Any]:
for tf_tokenizer in self.tf_tokenizers:
snake_case__ : Any = tf.function(_snake_case )
for test_inputs in self.test_sentences:
snake_case__ : Union[str, Any] = tf.constant(_snake_case )
snake_case__ : Tuple = compiled_tokenizer(_snake_case )
snake_case__ : Tuple = tf_tokenizer(_snake_case )
for key in eager_outputs.keys():
self.assertTrue(tf.reduce_all(eager_outputs[key] == compiled_outputs[key] ) )
@slow
def lowercase_ ( self : List[str] ) ->Union[str, Any]:
for tf_tokenizer in self.tf_tokenizers:
snake_case__ : str = ModelToSave(tokenizer=_snake_case )
snake_case__ : Tuple = tf.convert_to_tensor([self.test_sentences[0]] )
snake_case__ : str = model.serving(_snake_case ) # Build model with some sample inputs
with TemporaryDirectory() as tempdir:
snake_case__ : Optional[Any] = Path(_snake_case ) / 'saved.model'
tf.saved_model.save(_snake_case, _snake_case, signatures={'serving_default': model.serving} )
snake_case__ : Any = tf.saved_model.load(_snake_case )
snake_case__ : Optional[Any] = loaded_model.signatures['serving_default'](_snake_case )['output_0']
# We may see small differences because the loaded model is compiled, so we need an epsilon for the test
self.assertTrue(tf.reduce_all(out == loaded_output ) )
@slow
def lowercase_ ( self : str ) ->List[Any]:
for tf_tokenizer in self.tf_tokenizers:
snake_case__ : Optional[int] = tf.convert_to_tensor([self.test_sentences[0]] )
snake_case__ : Optional[Any] = tf_tokenizer(_snake_case ) # Build model with some sample inputs
snake_case__ : Optional[int] = tf_tokenizer.get_config()
snake_case__ : Optional[Any] = TFGPTaTokenizer.from_config(_snake_case )
snake_case__ : Optional[Any] = model_from_config(_snake_case )
for key in from_config_output.keys():
self.assertTrue(tf.reduce_all(from_config_output[key] == out[key] ) )
@slow
def lowercase_ ( self : Any ) ->Tuple:
for tf_tokenizer in self.tf_tokenizers:
# for the test to run
snake_case__ : Optional[Any] = 1_2_3_1_2_3
for max_length in [3, 5, 1_0_2_4]:
snake_case__ : Optional[int] = tf.convert_to_tensor([self.test_sentences[0]] )
snake_case__ : int = tf_tokenizer(_snake_case, max_length=_snake_case )
snake_case__ : List[Any] = out['input_ids'].numpy().shape[1]
assert out_length == max_length
| 277 |
import os
import unittest
from transformers.models.transfo_xl.tokenization_transfo_xl import VOCAB_FILES_NAMES, TransfoXLTokenizer
from ...test_tokenization_common import TokenizerTesterMixin
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = TransfoXLTokenizer
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
def lowercase_ ( self : Optional[int] ) ->Any:
super().setUp()
snake_case__ : Tuple = [
'<unk>',
'[CLS]',
'[SEP]',
'want',
'unwanted',
'wa',
'un',
'running',
',',
'low',
'l',
]
snake_case__ : Any = os.path.join(self.tmpdirname, VOCAB_FILES_NAMES['vocab_file'] )
with open(self.vocab_file, 'w', encoding='utf-8' ) as vocab_writer:
vocab_writer.write(''.join([x + '\n' for x in vocab_tokens] ) )
def lowercase_ ( self : Union[str, Any], **_snake_case : List[Any] ) ->Dict:
snake_case__ : str = True
return TransfoXLTokenizer.from_pretrained(self.tmpdirname, **_snake_case )
def lowercase_ ( self : Optional[Any], _snake_case : str ) ->Dict:
snake_case__ : List[Any] = '<unk> UNwanted , running'
snake_case__ : List[Any] = '<unk> unwanted, running'
return input_text, output_text
def lowercase_ ( self : List[Any] ) ->Tuple:
snake_case__ : Dict = TransfoXLTokenizer(vocab_file=self.vocab_file, lower_case=_snake_case )
snake_case__ : str = tokenizer.tokenize('<unk> UNwanted , running' )
self.assertListEqual(_snake_case, ['<unk>', 'unwanted', ',', 'running'] )
self.assertListEqual(tokenizer.convert_tokens_to_ids(_snake_case ), [0, 4, 8, 7] )
def lowercase_ ( self : List[str] ) ->List[Any]:
snake_case__ : str = TransfoXLTokenizer(lower_case=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHeLLo ! how \n Are yoU ? ' ), ['hello', '!', 'how', 'are', 'you', '?'] )
def lowercase_ ( self : Optional[int] ) ->Optional[Any]:
snake_case__ : Optional[int] = TransfoXLTokenizer(lower_case=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHeLLo ! how \n Are yoU ? ' ), ['HeLLo', '!', 'how', 'Are', 'yoU', '?'] )
def lowercase_ ( self : Optional[int] ) ->Union[str, Any]:
snake_case__ : List[Any] = TransfoXLTokenizer(lower_case=_snake_case )
snake_case__ : Dict = 'Hello (bracket) and side-scrolled [and] Henry\'s $5,000 with 3.34 m. What\'s up!?'
snake_case__ : List[Any] = [
'Hello',
'(',
'bracket',
')',
'and',
'side',
'@-@',
'scrolled',
'[',
'and',
']',
'Henry',
'\'s',
'$',
'5',
'@,@',
'000',
'with',
'3',
'@.@',
'34',
'm',
'.',
'What',
'\'s',
'up',
'!',
'?',
]
self.assertListEqual(tokenizer.tokenize(_snake_case ), _snake_case )
self.assertEqual(tokenizer.convert_tokens_to_string(_snake_case ), _snake_case )
def lowercase_ ( self : Dict ) ->Any:
snake_case__ : Dict = self.get_tokenizer()
snake_case__ : Optional[Any] = len(_snake_case )
tokenizer.add_tokens(['new1', 'new2'] )
tokenizer.move_added_token('new1', 1 )
# Check that moved token is not copied (duplicate)
self.assertEqual(len(_snake_case ), original_len + 2 )
# Check that token is moved to specified id
self.assertEqual(tokenizer.encode('new1' ), [1] )
self.assertEqual(tokenizer.decode([1] ), 'new1' )
| 277 | 1 |
from dataclasses import dataclass, field
from typing import Tuple
from ..utils import cached_property, is_torch_available, is_torch_tpu_available, logging, requires_backends
from .benchmark_args_utils import BenchmarkArguments
if is_torch_available():
import torch
if is_torch_tpu_available(check_device=False):
import torch_xla.core.xla_model as xm
a_ :Tuple = logging.get_logger(__name__)
@dataclass
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = [
"""no_inference""",
"""no_cuda""",
"""no_tpu""",
"""no_speed""",
"""no_memory""",
"""no_env_print""",
"""no_multi_process""",
]
def __init__( self : Any, **_snake_case : Union[str, Any] ) ->Optional[Any]:
for deprecated_arg in self.deprecated_args:
if deprecated_arg in kwargs:
snake_case__ : int = deprecated_arg[3:]
setattr(self, _snake_case, not kwargs.pop(_snake_case ) )
logger.warning(
F'''{deprecated_arg} is depreciated. Please use --no_{positive_arg} or'''
F''' {positive_arg}={kwargs[positive_arg]}''' )
snake_case__ : Union[str, Any] = kwargs.pop('torchscript', self.torchscript )
snake_case__ : int = kwargs.pop('torch_xla_tpu_print_metrics', self.torch_xla_tpu_print_metrics )
snake_case__ : Optional[Any] = kwargs.pop('fp16_opt_level', self.fpaa_opt_level )
super().__init__(**_snake_case )
_SCREAMING_SNAKE_CASE = field(default=lowerCAmelCase_ , metadata={"""help""": """Trace the models using torchscript"""} )
_SCREAMING_SNAKE_CASE = field(default=lowerCAmelCase_ , metadata={"""help""": """Print Xla/PyTorch tpu metrics"""} )
_SCREAMING_SNAKE_CASE = field(
default="""O1""" , metadata={
"""help""": (
"""For fp16: Apex AMP optimization level selected in ['O0', 'O1', 'O2', and 'O3']. """
"""See details at https://nvidia.github.io/apex/amp.html"""
)
} , )
@cached_property
def lowercase_ ( self : int ) ->Tuple["torch.device", int]:
requires_backends(self, ['torch'] )
logger.info('PyTorch: setting up devices' )
if not self.cuda:
snake_case__ : Union[str, Any] = torch.device('cpu' )
snake_case__ : Tuple = 0
elif is_torch_tpu_available():
snake_case__ : Union[str, Any] = xm.xla_device()
snake_case__ : Tuple = 0
else:
snake_case__ : str = torch.device('cuda' if torch.cuda.is_available() else 'cpu' )
snake_case__ : Union[str, Any] = torch.cuda.device_count()
return device, n_gpu
@property
def lowercase_ ( self : Union[str, Any] ) ->List[str]:
return is_torch_tpu_available() and self.tpu
@property
def lowercase_ ( self : List[Any] ) ->int:
requires_backends(self, ['torch'] )
# TODO(PVP): currently only single GPU is supported
return torch.cuda.current_device()
@property
def lowercase_ ( self : Union[str, Any] ) ->"torch.device":
requires_backends(self, ['torch'] )
return self._setup_devices[0]
@property
def lowercase_ ( self : Tuple ) ->Tuple:
requires_backends(self, ['torch'] )
return self._setup_devices[1]
@property
def lowercase_ ( self : int ) ->Union[str, Any]:
return self.n_gpu > 0
| 277 |
from ...configuration_utils import PretrainedConfig
from ...utils import logging
a_ :Optional[int] = logging.get_logger(__name__)
a_ :Dict = {"openai-gpt": "https://huggingface.co/openai-gpt/resolve/main/config.json"}
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = """openai-gpt"""
_SCREAMING_SNAKE_CASE = {
"""max_position_embeddings""": """n_positions""",
"""hidden_size""": """n_embd""",
"""num_attention_heads""": """n_head""",
"""num_hidden_layers""": """n_layer""",
}
def __init__( self : Optional[int], _snake_case : Dict=4_0_4_7_8, _snake_case : str=5_1_2, _snake_case : int=7_6_8, _snake_case : Tuple=1_2, _snake_case : Any=1_2, _snake_case : str="gelu", _snake_case : List[str]=0.1, _snake_case : Any=0.1, _snake_case : Dict=0.1, _snake_case : int=1e-5, _snake_case : Optional[Any]=0.0_2, _snake_case : List[Any]="cls_index", _snake_case : Any=True, _snake_case : Any=None, _snake_case : int=True, _snake_case : Optional[Any]=0.1, **_snake_case : List[Any], ) ->Optional[int]:
snake_case__ : int = vocab_size
snake_case__ : Dict = n_positions
snake_case__ : str = n_embd
snake_case__ : str = n_layer
snake_case__ : List[Any] = n_head
snake_case__ : List[Any] = afn
snake_case__ : Optional[Any] = resid_pdrop
snake_case__ : List[str] = embd_pdrop
snake_case__ : List[Any] = attn_pdrop
snake_case__ : Optional[int] = layer_norm_epsilon
snake_case__ : str = initializer_range
snake_case__ : List[str] = summary_type
snake_case__ : Optional[int] = summary_use_proj
snake_case__ : List[str] = summary_activation
snake_case__ : Optional[Any] = summary_first_dropout
snake_case__ : int = summary_proj_to_labels
super().__init__(**_snake_case )
| 277 | 1 |
import heapq
import sys
import numpy as np
a_ :Optional[Any] = tuple[int, int]
class snake_case__ :
"""simple docstring"""
def __init__( self : List[Any] ) ->str:
snake_case__ : Any = []
snake_case__ : Dict = set()
def lowercase_ ( self : List[Any] ) ->List[Any]:
if not self.empty():
return self.elements[0][0]
else:
return float('inf' )
def lowercase_ ( self : Tuple ) ->List[Any]:
return len(self.elements ) == 0
def lowercase_ ( self : str, _snake_case : Optional[Any], _snake_case : List[str] ) ->Any:
if item not in self.set:
heapq.heappush(self.elements, (priority, item) )
self.set.add(_snake_case )
else:
# update
# print("update", item)
snake_case__ : List[Any] = []
((snake_case__) , (snake_case__)) : Optional[int] = heapq.heappop(self.elements )
while x != item:
temp.append((pri, x) )
((snake_case__) , (snake_case__)) : Any = heapq.heappop(self.elements )
temp.append((priority, item) )
for pro, xxx in temp:
heapq.heappush(self.elements, (pro, xxx) )
def lowercase_ ( self : Any, _snake_case : Tuple ) ->str:
if item in self.set:
self.set.remove(_snake_case )
snake_case__ : Union[str, Any] = []
((snake_case__) , (snake_case__)) : int = heapq.heappop(self.elements )
while x != item:
temp.append((pro, x) )
((snake_case__) , (snake_case__)) : Any = heapq.heappop(self.elements )
for prito, yyy in temp:
heapq.heappush(self.elements, (prito, yyy) )
def lowercase_ ( self : str ) ->Union[str, Any]:
return self.elements[0][1]
def lowercase_ ( self : str ) ->Any:
((snake_case__) , (snake_case__)) : Dict = heapq.heappop(self.elements )
self.set.remove(_snake_case )
return (priority, item)
def lowercase_ (A : TPos , A : TPos ):
# euclidean distance
snake_case__ : Dict = np.array(A )
snake_case__ : str = np.array(A )
return np.linalg.norm(a - b )
def lowercase_ (A : TPos , A : TPos ):
# integer division by time variable
return consistent_heuristic(A , A ) // t
def lowercase_ (A : TPos , A : TPos ):
# manhattan distance
return abs(p[0] - goal[0] ) + abs(p[1] - goal[1] )
def lowercase_ (A : TPos , A : int , A : TPos , A : dict[TPos, float] ):
snake_case__ : List[Any] = g_function[start] + Wa * heuristics[i](A , A )
return ans
def lowercase_ (A : Tuple , A : int , A : Optional[Any] ):
snake_case__ : str = np.chararray((n, n) )
for i in range(A ):
for j in range(A ):
snake_case__ : Any = '*'
for i in range(A ):
for j in range(A ):
if (j, (n - 1) - i) in blocks:
snake_case__ : Dict = '#'
snake_case__ : Any = '-'
snake_case__ : Tuple = back_pointer[goal]
while x != start:
((snake_case__) , (snake_case__)) : str = x
# print(x)
snake_case__ : Tuple = '-'
snake_case__ : Tuple = back_pointer[x]
snake_case__ : str = '-'
for i in range(A ):
for j in range(A ):
if (i, j) == (0, n - 1):
print(grid[i][j] , end=' ' )
print('<-- End position' , end=' ' )
else:
print(grid[i][j] , end=' ' )
print()
print('^' )
print('Start position' )
print()
print('# is an obstacle' )
print('- is the path taken by algorithm' )
print('PATH TAKEN BY THE ALGORITHM IS:-' )
snake_case__ : str = back_pointer[goal]
while x != start:
print(A , end=' ' )
snake_case__ : Union[str, Any] = back_pointer[x]
print(A )
sys.exit()
def lowercase_ (A : TPos ):
if p[0] < 0 or p[0] > n - 1:
return False
if p[1] < 0 or p[1] > n - 1:
return False
return True
def lowercase_ (A : int , A : Optional[int] , A : Any , A : List[str] , A : Optional[Any] , A : Optional[Any] , A : Union[str, Any] , A : Union[str, Any] , ):
for itera in range(A ):
open_list[itera].remove_element(A )
# print("s", s)
# print("j", j)
((snake_case__) , (snake_case__)) : Union[str, Any] = s
snake_case__ : Optional[int] = (x - 1, y)
snake_case__ : Optional[Any] = (x + 1, y)
snake_case__ : Tuple = (x, y + 1)
snake_case__ : int = (x, y - 1)
for neighbours in [left, right, up, down]:
if neighbours not in blocks:
if valid(A ) and neighbours not in visited:
# print("neighbour", neighbours)
visited.add(A )
snake_case__ : Any = -1
snake_case__ : Dict = float('inf' )
if valid(A ) and g_function[neighbours] > g_function[s] + 1:
snake_case__ : Optional[int] = g_function[s] + 1
snake_case__ : Union[str, Any] = s
if neighbours not in close_list_anchor:
open_list[0].put(A , key(A , 0 , A , A ) )
if neighbours not in close_list_inad:
for var in range(1 , A ):
if key(A , A , A , A ) <= Wa * key(
A , 0 , A , A ):
open_list[j].put(
A , key(A , A , A , A ) )
def lowercase_ ():
snake_case__ : str = []
for x in range(1 , 5 ):
for y in range(1 , 6 ):
some_list.append((x, y) )
for x in range(1_5 , 2_0 ):
some_list.append((x, 1_7) )
for x in range(1_0 , 1_9 ):
for y in range(1 , 1_5 ):
some_list.append((x, y) )
# L block
for x in range(1 , 4 ):
for y in range(1_2 , 1_9 ):
some_list.append((x, y) )
for x in range(3 , 1_3 ):
for y in range(1_6 , 1_9 ):
some_list.append((x, y) )
return some_list
a_ :Any = {0: consistent_heuristic, 1: heuristic_a, 2: heuristic_a}
a_ :int = [
(0, 1),
(1, 1),
(2, 1),
(3, 1),
(4, 1),
(5, 1),
(6, 1),
(7, 1),
(8, 1),
(9, 1),
(10, 1),
(11, 1),
(12, 1),
(13, 1),
(14, 1),
(15, 1),
(16, 1),
(17, 1),
(18, 1),
(19, 1),
]
a_ :Union[str, Any] = make_common_ground()
a_ :Dict = blocks_blk
# hyper parameters
a_ :Optional[int] = 1
a_ :List[str] = 1
a_ :List[Any] = 20
a_ :List[str] = 3 # one consistent and two other inconsistent
# start and end destination
a_ :List[Any] = (0, 0)
a_ :Union[str, Any] = (n - 1, n - 1)
a_ :int = 1
def lowercase_ (A : TPos , A : TPos , A : int ):
snake_case__ : Tuple = {start: 0, goal: float('inf' )}
snake_case__ : Dict = {start: -1, goal: -1}
snake_case__ : int = []
snake_case__ : List[str] = set()
for i in range(A ):
open_list.append(PriorityQueue() )
open_list[i].put(A , key(A , A , A , A ) )
snake_case__ : list[int] = []
snake_case__ : list[int] = []
while open_list[0].minkey() < float('inf' ):
for i in range(1 , A ):
# print(open_list[0].minkey(), open_list[i].minkey())
if open_list[i].minkey() <= Wa * open_list[0].minkey():
global t
t += 1
if g_function[goal] <= open_list[i].minkey():
if g_function[goal] < float('inf' ):
do_something(A , A , A )
else:
snake_case__ , snake_case__ : Dict = open_list[i].top_show()
visited.add(A )
expand_state(
A , A , A , A , A , A , A , A , )
close_list_inad.append(A )
else:
if g_function[goal] <= open_list[0].minkey():
if g_function[goal] < float('inf' ):
do_something(A , A , A )
else:
snake_case__ : Any = open_list[0].top_show()
visited.add(A )
expand_state(
A , 0 , A , A , A , A , A , A , )
close_list_anchor.append(A )
print('No path found to goal' )
print()
for i in range(n - 1 , -1 , -1 ):
for j in range(A ):
if (j, i) in blocks:
print('#' , end=' ' )
elif (j, i) in back_pointer:
if (j, i) == (n - 1, n - 1):
print('*' , end=' ' )
else:
print('-' , end=' ' )
else:
print('*' , end=' ' )
if (j, i) == (n - 1, n - 1):
print('<-- End position' , end=' ' )
print()
print('^' )
print('Start position' )
print()
print('# is an obstacle' )
print('- is the path taken by algorithm' )
if __name__ == "__main__":
multi_a_star(start, goal, n_heuristic)
| 277 |
import argparse
import logging
import os
from datetime import datetime
import numpy as np
import torch
from torch import nn
from torch.utils.data import DataLoader, RandomSampler, TensorDataset
from tqdm import tqdm
from transformers import GPTaLMHeadModel
a_ :Optional[Any] = logging.getLogger(__name__)
def lowercase_ (A : List[Any] , A : List[Any] ):
# save results
if os.path.exists(A ):
if os.path.exists(os.path.join(A , 'config.json' ) ) and os.path.isfile(
os.path.join(A , 'config.json' ) ):
os.remove(os.path.join(A , 'config.json' ) )
if os.path.exists(os.path.join(A , 'pytorch_model.bin' ) ) and os.path.isfile(
os.path.join(A , 'pytorch_model.bin' ) ):
os.remove(os.path.join(A , 'pytorch_model.bin' ) )
else:
os.makedirs(A )
model.save_pretrained(A )
def lowercase_ (A : Any , A : Optional[Any]=False ):
snake_case__ : str = 2
if unlogit:
snake_case__ : Dict = torch.pow(A , A )
snake_case__ : Any = p * torch.log(A )
snake_case__ : Tuple = 0
return -plogp.sum(dim=-1 )
def lowercase_ (A : List[str] ):
logger.info('lv, h >\t' + '\t'.join(F'''{x + 1}''' for x in range(len(A ) ) ) )
for row in range(len(A ) ):
if tensor.dtype != torch.long:
logger.info(F'''layer {row + 1}:\t''' + '\t'.join(F'''{x:.5f}''' for x in tensor[row].cpu().data ) )
else:
logger.info(F'''layer {row + 1}:\t''' + '\t'.join(F'''{x:d}''' for x in tensor[row].cpu().data ) )
def lowercase_ (A : Tuple , A : Optional[Any] , A : str , A : int=True , A : Optional[int]=True , A : Any=None , A : int=False ):
snake_case__ , snake_case__ : Optional[Any] = model.config.num_hidden_layers, model.config.num_attention_heads
snake_case__ : int = torch.zeros(A , A ).to(args.device )
snake_case__ : Any = torch.zeros(A , A ).to(args.device )
if head_mask is None:
snake_case__ : Dict = torch.ones(A , A ).to(args.device )
head_mask.requires_grad_(requires_grad=A )
# If actually pruned attention multi-head, set head mask to None to avoid shape mismatch
if actually_pruned:
snake_case__ : Optional[int] = None
snake_case__ : List[Any] = 0.0
snake_case__ : str = 0.0
for step, inputs in enumerate(tqdm(A , desc='Iteration' , disable=args.local_rank not in [-1, 0] ) ):
snake_case__ : Union[str, Any] = tuple(t.to(args.device ) for t in inputs )
((snake_case__) , ) : Optional[Any] = inputs
# Do a forward pass (not with torch.no_grad() since we need gradients for importance score - see below)
snake_case__ : Union[str, Any] = model(A , labels=A , head_mask=A )
# (loss), lm_logits, presents, (all hidden_states), (attentions)
snake_case__ , snake_case__ , snake_case__ : Dict = (
outputs[0],
outputs[1],
outputs[-1],
) # Loss and logits are the first, attention the last
loss.backward() # Backpropagate to populate the gradients in the head mask
total_loss += loss.detach().cpu().numpy()
if compute_entropy:
for layer, attn in enumerate(A ):
snake_case__ : Optional[Any] = entropy(attn.detach() , A )
attn_entropy[layer] += masked_entropy.sum(-1 ).sum(0 ).sum(0 ).detach()
if compute_importance:
head_importance += head_mask.grad.abs().detach()
tot_tokens += torch.ones_like(A ).float().detach().sum().data
# Normalize
attn_entropy /= tot_tokens
head_importance /= tot_tokens
# Layerwise importance normalization
if not args.dont_normalize_importance_by_layer:
snake_case__ : Union[str, Any] = 2
snake_case__ : List[Any] = torch.pow(torch.pow(A , A ).sum(-1 ) , 1 / exponent )
head_importance /= norm_by_layer.unsqueeze(-1 ) + 1e-20
if not args.dont_normalize_global_importance:
snake_case__ : Tuple = (head_importance - head_importance.min()) / (head_importance.max() - head_importance.min())
# Print matrices
if compute_entropy:
logger.info('Attention entropies' )
print_ad_tensor(A )
if compute_importance:
logger.info('Head importance scores' )
print_ad_tensor(A )
logger.info('Head ranked by importance scores' )
snake_case__ : Tuple = torch.zeros(head_importance.numel() , dtype=torch.long , device=args.device )
snake_case__ : Union[str, Any] = torch.arange(
head_importance.numel() , device=args.device )
snake_case__ : str = head_ranks.view_as(A )
print_ad_tensor(A )
return attn_entropy, head_importance, total_loss
def lowercase_ (A : Optional[int] , A : Dict , A : Optional[int] ):
snake_case__ , snake_case__ , snake_case__ : Any = compute_heads_importance(A , A , A , compute_entropy=A )
snake_case__ : Tuple = 1 / loss # instead of downsteam score use the LM loss
logger.info('Pruning: original score: %f, threshold: %f' , A , original_score * args.masking_threshold )
snake_case__ : Optional[Any] = torch.ones_like(A )
snake_case__ : Union[str, Any] = max(1 , int(new_head_mask.numel() * args.masking_amount ) )
snake_case__ : Dict = original_score
while current_score >= original_score * args.masking_threshold:
snake_case__ : int = new_head_mask.clone().detach() # save current head mask
# heads from least important to most - keep only not-masked heads
snake_case__ : List[Any] = float('Inf' )
snake_case__ : Union[str, Any] = head_importance.view(-1 ).sort()[1]
if len(A ) <= num_to_mask:
print('BREAK BY num_to_mask' )
break
# mask heads
snake_case__ : int = current_heads_to_mask[:num_to_mask]
logger.info('Heads to mask: %s' , str(current_heads_to_mask.tolist() ) )
snake_case__ : int = new_head_mask.view(-1 )
snake_case__ : int = 0.0
snake_case__ : Union[str, Any] = new_head_mask.view_as(A )
snake_case__ : List[str] = new_head_mask.clone().detach()
print_ad_tensor(A )
# Compute metric and head importance again
snake_case__ , snake_case__ , snake_case__ : Any = compute_heads_importance(
A , A , A , compute_entropy=A , head_mask=A )
snake_case__ : Dict = 1 / loss
logger.info(
'Masking: current score: %f, remaining heads %d (%.1f percents)' , A , new_head_mask.sum() , new_head_mask.sum() / new_head_mask.numel() * 1_0_0 , )
logger.info('Final head mask' )
print_ad_tensor(A )
np.save(os.path.join(args.output_dir , 'head_mask.npy' ) , head_mask.detach().cpu().numpy() )
return head_mask
def lowercase_ (A : List[str] , A : Tuple , A : Optional[Any] , A : int ):
snake_case__ : Any = datetime.now()
snake_case__ , snake_case__ , snake_case__ : str = compute_heads_importance(
A , A , A , compute_entropy=A , compute_importance=A , head_mask=A )
snake_case__ : Tuple = 1 / loss
snake_case__ : Dict = datetime.now() - before_time
snake_case__ : Union[str, Any] = sum(p.numel() for p in model.parameters() )
snake_case__ : Optional[Any] = {
layer: (1 - head_mask[layer].long()).nonzero().squeeze().tolist() for layer in range(len(A ) )
}
for k, v in heads_to_prune.items():
if isinstance(A , A ):
snake_case__ : Any = [
v,
]
assert sum(len(A ) for h in heads_to_prune.values() ) == (1 - head_mask.long()).sum().item()
model.prune_heads(A )
snake_case__ : Dict = sum(p.numel() for p in model.parameters() )
snake_case__ : Tuple = datetime.now()
snake_case__ , snake_case__ , snake_case__ : Dict = compute_heads_importance(
A , A , A , compute_entropy=A , compute_importance=A , head_mask=A , actually_pruned=A , )
snake_case__ : Any = 1 / loss
snake_case__ : int = datetime.now() - before_time
logger.info(
'Pruning: original num of params: %.2e, after pruning %.2e (%.1f percents)' , A , A , pruned_num_params / original_num_params * 1_0_0 , )
logger.info('Pruning: score with masking: %f score with pruning: %f' , A , A )
logger.info('Pruning: speed ratio (original timing / new timing): %f percents' , original_time / new_time * 1_0_0 )
save_model(A , args.output_dir )
def lowercase_ ():
snake_case__ : str = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
'--data_dir' , default=A , type=A , required=A , help='The input data dir. Should contain the .tsv files (or other data files) for the task.' , )
parser.add_argument(
'--model_name_or_path' , default=A , type=A , required=A , help='Path to pretrained model or model identifier from huggingface.co/models' , )
parser.add_argument(
'--output_dir' , default=A , type=A , required=A , help='The output directory where the model predictions and checkpoints will be written.' , )
# Other parameters
parser.add_argument(
'--config_name' , default='' , type=A , help='Pretrained config name or path if not the same as model_name_or_path' , )
parser.add_argument(
'--tokenizer_name' , default='' , type=A , help='Pretrained tokenizer name or path if not the same as model_name_or_path' , )
parser.add_argument(
'--cache_dir' , default=A , type=A , help='Where do you want to store the pre-trained models downloaded from s3' , )
parser.add_argument(
'--data_subset' , type=A , default=-1 , help='If > 0: limit the data to a subset of data_subset instances.' )
parser.add_argument(
'--overwrite_output_dir' , action='store_true' , help='Whether to overwrite data in output directory' )
parser.add_argument(
'--overwrite_cache' , action='store_true' , help='Overwrite the cached training and evaluation sets' )
parser.add_argument(
'--dont_normalize_importance_by_layer' , action='store_true' , help='Don\'t normalize importance score by layers' )
parser.add_argument(
'--dont_normalize_global_importance' , action='store_true' , help='Don\'t normalize all importance scores between 0 and 1' , )
parser.add_argument(
'--try_masking' , action='store_true' , help='Whether to try to mask head until a threshold of accuracy.' )
parser.add_argument(
'--masking_threshold' , default=0.9 , type=A , help='masking threshold in term of metrics (stop masking when metric < threshold * original metric value).' , )
parser.add_argument(
'--masking_amount' , default=0.1 , type=A , help='Amount to heads to masking at each masking step.' )
parser.add_argument('--metric_name' , default='acc' , type=A , help='Metric to use for head masking.' )
parser.add_argument(
'--max_seq_length' , default=1_2_8 , type=A , help=(
'The maximum total input sequence length after WordPiece tokenization. \n'
'Sequences longer than this will be truncated, sequences shorter padded.'
) , )
parser.add_argument('--batch_size' , default=1 , type=A , help='Batch size.' )
parser.add_argument('--seed' , type=A , default=4_2 )
parser.add_argument('--local_rank' , type=A , default=-1 , help='local_rank for distributed training on gpus' )
parser.add_argument('--no_cuda' , action='store_true' , help='Whether not to use CUDA when available' )
parser.add_argument('--server_ip' , type=A , default='' , help='Can be used for distant debugging.' )
parser.add_argument('--server_port' , type=A , default='' , help='Can be used for distant debugging.' )
snake_case__ : Optional[int] = parser.parse_args()
if args.server_ip and args.server_port:
# Distant debugging - see https://code.visualstudio.com/docs/python/debugging#_attach-to-a-local-script
import ptvsd
print('Waiting for debugger attach' )
ptvsd.enable_attach(address=(args.server_ip, args.server_port) , redirect_output=A )
ptvsd.wait_for_attach()
# Setup devices and distributed training
if args.local_rank == -1 or args.no_cuda:
snake_case__ : List[Any] = torch.device('cuda' if torch.cuda.is_available() and not args.no_cuda else 'cpu' )
snake_case__ : Optional[Any] = 0 if args.no_cuda else torch.cuda.device_count()
else:
torch.cuda.set_device(args.local_rank )
snake_case__ : int = torch.device('cuda' , args.local_rank )
snake_case__ : List[str] = 1
torch.distributed.init_process_group(backend='nccl' ) # Initializes the distributed backend
# Setup logging
logging.basicConfig(level=logging.INFO if args.local_rank in [-1, 0] else logging.WARN )
logger.info('device: {} n_gpu: {}, distributed: {}'.format(args.device , args.n_gpu , bool(args.local_rank != -1 ) ) )
snake_case__ : Any = GPTaLMHeadModel.from_pretrained(args.model_name_or_path )
# Distributed and parallel training
model.to(args.device )
if args.local_rank != -1:
snake_case__ : List[str] = nn.parallel.DistributedDataParallel(
A , device_ids=[args.local_rank] , output_device=args.local_rank , find_unused_parameters=A )
elif args.n_gpu > 1:
snake_case__ : Optional[int] = nn.DataParallel(A )
# Print/save training arguments
os.makedirs(args.output_dir , exist_ok=A )
torch.save(A , os.path.join(args.output_dir , 'run_args.bin' ) )
logger.info('Training/evaluation parameters %s' , A )
# Prepare dataset
snake_case__ : Optional[Any] = np.concatenate(
[
np.loadtxt(args.data_dir , dtype=np.intaa ),
] )
snake_case__ : List[str] = (torch.from_numpy(A ),)
snake_case__ : int = TensorDataset(*A )
snake_case__ : Union[str, Any] = RandomSampler(A )
snake_case__ : Any = DataLoader(A , sampler=A , batch_size=args.batch_size )
# Compute head entropy and importance score
compute_heads_importance(A , A , A )
# Try head masking (set heads to zero until the score goes under a threshole)
# and head pruning (remove masked heads and see the effect on the network)
if args.try_masking and args.masking_threshold > 0.0 and args.masking_threshold < 1.0:
snake_case__ : Dict = mask_heads(A , A , A )
prune_heads(A , A , A , A )
if __name__ == "__main__":
main()
| 277 | 1 |
from __future__ import absolute_import, division, print_function, unicode_literals
from torch import nn
from torch.nn import CrossEntropyLoss, MSELoss
from transformers import RobertaConfig
from transformers.file_utils import add_start_docstrings, add_start_docstrings_to_model_forward
from transformers.models.roberta.modeling_roberta import (
ROBERTA_INPUTS_DOCSTRING,
ROBERTA_START_DOCSTRING,
RobertaEmbeddings,
)
from .modeling_highway_bert import BertPreTrainedModel, DeeBertModel, HighwayException, entropy
@add_start_docstrings(
"""The RoBERTa Model transformer with early exiting (DeeRoBERTa). """ , lowerCAmelCase_ , )
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = RobertaConfig
_SCREAMING_SNAKE_CASE = """roberta"""
def __init__( self : Dict, _snake_case : Tuple ) ->List[Any]:
super().__init__(_snake_case )
snake_case__ : Union[str, Any] = RobertaEmbeddings(_snake_case )
self.init_weights()
@add_start_docstrings(
"""RoBERTa Model (with early exiting - DeeRoBERTa) with a classifier on top,
also takes care of multi-layer training. """ , lowerCAmelCase_ , )
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = RobertaConfig
_SCREAMING_SNAKE_CASE = """roberta"""
def __init__( self : Optional[int], _snake_case : Dict ) ->str:
super().__init__(_snake_case )
snake_case__ : Dict = config.num_labels
snake_case__ : Tuple = config.num_hidden_layers
snake_case__ : Optional[int] = DeeRobertaModel(_snake_case )
snake_case__ : Any = nn.Dropout(config.hidden_dropout_prob )
snake_case__ : str = nn.Linear(config.hidden_size, self.config.num_labels )
@add_start_docstrings_to_model_forward(_snake_case )
def lowercase_ ( self : Union[str, Any], _snake_case : Any=None, _snake_case : List[Any]=None, _snake_case : str=None, _snake_case : Union[str, Any]=None, _snake_case : Union[str, Any]=None, _snake_case : List[Any]=None, _snake_case : List[Any]=None, _snake_case : Tuple=-1, _snake_case : str=False, ) ->List[str]:
snake_case__ : Optional[Any] = self.num_layers
try:
snake_case__ : Union[str, Any] = self.roberta(
_snake_case, attention_mask=_snake_case, token_type_ids=_snake_case, position_ids=_snake_case, head_mask=_snake_case, inputs_embeds=_snake_case, )
snake_case__ : List[str] = outputs[1]
snake_case__ : int = self.dropout(_snake_case )
snake_case__ : Union[str, Any] = self.classifier(_snake_case )
snake_case__ : Tuple = (logits,) + outputs[2:] # add hidden states and attention if they are here
except HighwayException as e:
snake_case__ : str = e.message
snake_case__ : Any = e.exit_layer
snake_case__ : Any = outputs[0]
if not self.training:
snake_case__ : Optional[int] = entropy(_snake_case )
snake_case__ : Dict = []
snake_case__ : Any = []
if labels is not None:
if self.num_labels == 1:
# We are doing regression
snake_case__ : List[str] = MSELoss()
snake_case__ : Optional[Any] = loss_fct(logits.view(-1 ), labels.view(-1 ) )
else:
snake_case__ : str = CrossEntropyLoss()
snake_case__ : List[Any] = loss_fct(logits.view(-1, self.num_labels ), labels.view(-1 ) )
# work with highway exits
snake_case__ : Optional[int] = []
for highway_exit in outputs[-1]:
snake_case__ : List[Any] = highway_exit[0]
if not self.training:
highway_logits_all.append(_snake_case )
highway_entropy.append(highway_exit[2] )
if self.num_labels == 1:
# We are doing regression
snake_case__ : str = MSELoss()
snake_case__ : List[str] = loss_fct(highway_logits.view(-1 ), labels.view(-1 ) )
else:
snake_case__ : int = CrossEntropyLoss()
snake_case__ : Any = loss_fct(highway_logits.view(-1, self.num_labels ), labels.view(-1 ) )
highway_losses.append(_snake_case )
if train_highway:
snake_case__ : Optional[Any] = (sum(highway_losses[:-1] ),) + outputs
# exclude the final highway, of course
else:
snake_case__ : Optional[int] = (loss,) + outputs
if not self.training:
snake_case__ : Optional[int] = outputs + ((original_entropy, highway_entropy), exit_layer)
if output_layer >= 0:
snake_case__ : str = (
(outputs[0],) + (highway_logits_all[output_layer],) + outputs[2:]
) # use the highway of the last layer
return outputs # (loss), logits, (hidden_states), (attentions), entropy
| 277 |
import argparse
import json
from collections import OrderedDict
from pathlib import Path
import requests
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import (
SegformerConfig,
SegformerForImageClassification,
SegformerForSemanticSegmentation,
SegformerImageProcessor,
)
from transformers.utils import logging
logging.set_verbosity_info()
a_ :Dict = logging.get_logger(__name__)
def lowercase_ (A : Optional[Any] , A : Any=False ):
snake_case__ : List[Any] = OrderedDict()
for key, value in state_dict.items():
if encoder_only and not key.startswith('head' ):
snake_case__ : str = 'segformer.encoder.' + key
if key.startswith('backbone' ):
snake_case__ : str = key.replace('backbone' , 'segformer.encoder' )
if "patch_embed" in key:
# replace for example patch_embed1 by patch_embeddings.0
snake_case__ : Optional[int] = key[key.find('patch_embed' ) + len('patch_embed' )]
snake_case__ : int = key.replace(F'''patch_embed{idx}''' , F'''patch_embeddings.{int(A )-1}''' )
if "norm" in key:
snake_case__ : Optional[int] = key.replace('norm' , 'layer_norm' )
if "segformer.encoder.layer_norm" in key:
# replace for example layer_norm1 by layer_norm.0
snake_case__ : Tuple = key[key.find('segformer.encoder.layer_norm' ) + len('segformer.encoder.layer_norm' )]
snake_case__ : Union[str, Any] = key.replace(F'''layer_norm{idx}''' , F'''layer_norm.{int(A )-1}''' )
if "layer_norm1" in key:
snake_case__ : List[Any] = key.replace('layer_norm1' , 'layer_norm_1' )
if "layer_norm2" in key:
snake_case__ : List[Any] = key.replace('layer_norm2' , 'layer_norm_2' )
if "block" in key:
# replace for example block1 by block.0
snake_case__ : List[Any] = key[key.find('block' ) + len('block' )]
snake_case__ : List[Any] = key.replace(F'''block{idx}''' , F'''block.{int(A )-1}''' )
if "attn.q" in key:
snake_case__ : int = key.replace('attn.q' , 'attention.self.query' )
if "attn.proj" in key:
snake_case__ : str = key.replace('attn.proj' , 'attention.output.dense' )
if "attn" in key:
snake_case__ : Optional[int] = key.replace('attn' , 'attention.self' )
if "fc1" in key:
snake_case__ : str = key.replace('fc1' , 'dense1' )
if "fc2" in key:
snake_case__ : Dict = key.replace('fc2' , 'dense2' )
if "linear_pred" in key:
snake_case__ : Union[str, Any] = key.replace('linear_pred' , 'classifier' )
if "linear_fuse" in key:
snake_case__ : List[str] = key.replace('linear_fuse.conv' , 'linear_fuse' )
snake_case__ : List[Any] = key.replace('linear_fuse.bn' , 'batch_norm' )
if "linear_c" in key:
# replace for example linear_c4 by linear_c.3
snake_case__ : Optional[int] = key[key.find('linear_c' ) + len('linear_c' )]
snake_case__ : Tuple = key.replace(F'''linear_c{idx}''' , F'''linear_c.{int(A )-1}''' )
if key.startswith('head' ):
snake_case__ : Tuple = key.replace('head' , 'classifier' )
snake_case__ : Optional[int] = value
return new_state_dict
def lowercase_ (A : Tuple , A : Optional[int] ):
# for each of the encoder blocks:
for i in range(config.num_encoder_blocks ):
for j in range(config.depths[i] ):
# read in weights + bias of keys and values (which is a single matrix in the original implementation)
snake_case__ : List[str] = state_dict.pop(F'''segformer.encoder.block.{i}.{j}.attention.self.kv.weight''' )
snake_case__ : Optional[Any] = state_dict.pop(F'''segformer.encoder.block.{i}.{j}.attention.self.kv.bias''' )
# next, add keys and values (in that order) to the state dict
snake_case__ : str = kv_weight[
: config.hidden_sizes[i], :
]
snake_case__ : Dict = kv_bias[: config.hidden_sizes[i]]
snake_case__ : List[str] = kv_weight[
config.hidden_sizes[i] :, :
]
snake_case__ : List[Any] = kv_bias[
config.hidden_sizes[i] :
]
def lowercase_ ():
snake_case__ : Union[str, Any] = 'http://images.cocodataset.org/val2017/000000039769.jpg'
snake_case__ : Dict = Image.open(requests.get(A , stream=A ).raw )
return image
@torch.no_grad()
def lowercase_ (A : Any , A : Union[str, Any] , A : Optional[Any] ):
snake_case__ : List[str] = SegformerConfig()
snake_case__ : Dict = False
# set attributes based on model_name
snake_case__ : Optional[int] = 'huggingface/label-files'
if "segformer" in model_name:
snake_case__ : str = model_name[len('segformer.' ) : len('segformer.' ) + 2]
if "ade" in model_name:
snake_case__ : Optional[int] = 1_5_0
snake_case__ : int = 'ade20k-id2label.json'
snake_case__ : List[Any] = (1, 1_5_0, 1_2_8, 1_2_8)
elif "city" in model_name:
snake_case__ : str = 1_9
snake_case__ : List[str] = 'cityscapes-id2label.json'
snake_case__ : Optional[Any] = (1, 1_9, 1_2_8, 1_2_8)
else:
raise ValueError(F'''Model {model_name} not supported''' )
elif "mit" in model_name:
snake_case__ : str = True
snake_case__ : Union[str, Any] = model_name[4:6]
snake_case__ : Optional[Any] = 1_0_0_0
snake_case__ : Optional[int] = 'imagenet-1k-id2label.json'
snake_case__ : List[Any] = (1, 1_0_0_0)
else:
raise ValueError(F'''Model {model_name} not supported''' )
# set config attributes
snake_case__ : str = json.load(open(hf_hub_download(A , A , repo_type='dataset' ) , 'r' ) )
snake_case__ : List[Any] = {int(A ): v for k, v in idalabel.items()}
snake_case__ : Union[str, Any] = idalabel
snake_case__ : Tuple = {v: k for k, v in idalabel.items()}
if size == "b0":
pass
elif size == "b1":
snake_case__ : List[Any] = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : Tuple = 2_5_6
elif size == "b2":
snake_case__ : List[str] = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : int = 7_6_8
snake_case__ : List[Any] = [3, 4, 6, 3]
elif size == "b3":
snake_case__ : Optional[Any] = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : int = 7_6_8
snake_case__ : Optional[Any] = [3, 4, 1_8, 3]
elif size == "b4":
snake_case__ : str = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : Optional[Any] = 7_6_8
snake_case__ : Union[str, Any] = [3, 8, 2_7, 3]
elif size == "b5":
snake_case__ : List[str] = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : Optional[Any] = 7_6_8
snake_case__ : Any = [3, 6, 4_0, 3]
else:
raise ValueError(F'''Size {size} not supported''' )
# load image processor (only resize + normalize)
snake_case__ : Dict = SegformerImageProcessor(
image_scale=(5_1_2, 5_1_2) , keep_ratio=A , align=A , do_random_crop=A )
# prepare image
snake_case__ : List[str] = prepare_img()
snake_case__ : Dict = image_processor(images=A , return_tensors='pt' ).pixel_values
logger.info(F'''Converting model {model_name}...''' )
# load original state dict
if encoder_only:
snake_case__ : Tuple = torch.load(A , map_location=torch.device('cpu' ) )
else:
snake_case__ : int = torch.load(A , map_location=torch.device('cpu' ) )['state_dict']
# rename keys
snake_case__ : List[Any] = rename_keys(A , encoder_only=A )
if not encoder_only:
del state_dict["decode_head.conv_seg.weight"]
del state_dict["decode_head.conv_seg.bias"]
# key and value matrices need special treatment
read_in_k_v(A , A )
# create HuggingFace model and load state dict
if encoder_only:
snake_case__ : str = False
snake_case__ : List[Any] = SegformerForImageClassification(A )
else:
snake_case__ : Dict = SegformerForSemanticSegmentation(A )
model.load_state_dict(A )
model.eval()
# forward pass
snake_case__ : int = model(A )
snake_case__ : Any = outputs.logits
# set expected_slice based on model name
# ADE20k checkpoints
if model_name == "segformer.b0.512x512.ade.160k":
snake_case__ : Dict = torch.tensor(
[
[[-4.6310, -5.5232, -6.2356], [-5.1921, -6.1444, -6.5996], [-5.4424, -6.2790, -6.7574]],
[[-12.1391, -13.3122, -13.9554], [-12.8732, -13.9352, -14.3563], [-12.9438, -13.8226, -14.2513]],
[[-12.5134, -13.4686, -14.4915], [-12.8669, -14.4343, -14.7758], [-13.2523, -14.5819, -15.0694]],
] )
elif model_name == "segformer.b1.512x512.ade.160k":
snake_case__ : Optional[int] = torch.tensor(
[
[[-7.5820, -8.7231, -8.3215], [-8.0600, -10.3529, -10.0304], [-7.5208, -9.4103, -9.6239]],
[[-12.6918, -13.8994, -13.7137], [-13.3196, -15.7523, -15.4789], [-12.9343, -14.8757, -14.9689]],
[[-11.1911, -11.9421, -11.3243], [-11.3342, -13.6839, -13.3581], [-10.3909, -12.1832, -12.4858]],
] )
elif model_name == "segformer.b2.512x512.ade.160k":
snake_case__ : List[Any] = torch.tensor(
[
[[-11.8173, -14.3850, -16.3128], [-14.5648, -16.5804, -18.6568], [-14.7223, -15.7387, -18.4218]],
[[-15.7290, -17.9171, -19.4423], [-18.3105, -19.9448, -21.4661], [-17.9296, -18.6497, -20.7910]],
[[-15.0783, -17.0336, -18.2789], [-16.8771, -18.6870, -20.1612], [-16.2454, -17.1426, -19.5055]],
] )
elif model_name == "segformer.b3.512x512.ade.160k":
snake_case__ : Union[str, Any] = torch.tensor(
[
[[-9.0878, -10.2081, -10.1891], [-9.3144, -10.7941, -10.9843], [-9.2294, -10.3855, -10.5704]],
[[-12.2316, -13.9068, -13.6102], [-12.9161, -14.3702, -14.3235], [-12.5233, -13.7174, -13.7932]],
[[-14.6275, -15.2490, -14.9727], [-14.3400, -15.9687, -16.2827], [-14.1484, -15.4033, -15.8937]],
] )
elif model_name == "segformer.b4.512x512.ade.160k":
snake_case__ : Dict = torch.tensor(
[
[[-12.3144, -13.2447, -14.0802], [-13.3614, -14.5816, -15.6117], [-13.3340, -14.4433, -16.2219]],
[[-19.2781, -20.4128, -20.7506], [-20.6153, -21.6566, -22.0998], [-19.9800, -21.0430, -22.1494]],
[[-18.8739, -19.7804, -21.1834], [-20.1233, -21.6765, -23.2944], [-20.0315, -21.2641, -23.6944]],
] )
elif model_name == "segformer.b5.640x640.ade.160k":
snake_case__ : List[Any] = torch.tensor(
[
[[-9.5524, -12.0835, -11.7348], [-10.5229, -13.6446, -14.5662], [-9.5842, -12.8851, -13.9414]],
[[-15.3432, -17.5323, -17.0818], [-16.3330, -18.9255, -19.2101], [-15.1340, -17.7848, -18.3971]],
[[-12.6072, -14.9486, -14.6631], [-13.7629, -17.0907, -17.7745], [-12.7899, -16.1695, -17.1671]],
] )
# Cityscapes checkpoints
elif model_name == "segformer.b0.1024x1024.city.160k":
snake_case__ : str = torch.tensor(
[
[[-11.9295, -13.4057, -14.8106], [-13.3431, -14.8179, -15.3781], [-14.2836, -15.5942, -16.1588]],
[[-11.4906, -12.8067, -13.6564], [-13.1189, -14.0500, -14.1543], [-13.8748, -14.5136, -14.8789]],
[[0.5374, 0.1067, -0.4742], [0.1141, -0.2255, -0.7099], [-0.3000, -0.5924, -1.3105]],
] )
elif model_name == "segformer.b0.512x1024.city.160k":
snake_case__ : Tuple = torch.tensor(
[
[[-7.8217, -9.8767, -10.1717], [-9.4438, -10.9058, -11.4047], [-9.7939, -12.3495, -12.1079]],
[[-7.1514, -9.5336, -10.0860], [-9.7776, -11.6822, -11.8439], [-10.1411, -12.7655, -12.8972]],
[[0.3021, 0.0805, -0.2310], [-0.0328, -0.1605, -0.2714], [-0.1408, -0.5477, -0.6976]],
] )
elif model_name == "segformer.b0.640x1280.city.160k":
snake_case__ : Any = torch.tensor(
[
[
[-1.1_372e01, -1.2_787e01, -1.3_477e01],
[-1.2_536e01, -1.4_194e01, -1.4_409e01],
[-1.3_217e01, -1.4_888e01, -1.5_327e01],
],
[
[-1.4_791e01, -1.7_122e01, -1.8_277e01],
[-1.7_163e01, -1.9_192e01, -1.9_533e01],
[-1.7_897e01, -1.9_991e01, -2.0_315e01],
],
[
[7.6_723e-01, 4.1_921e-01, -7.7_878e-02],
[4.7_772e-01, 9.5_557e-03, -2.8_082e-01],
[3.6_032e-01, -2.4_826e-01, -5.1_168e-01],
],
] )
elif model_name == "segformer.b0.768x768.city.160k":
snake_case__ : Optional[int] = torch.tensor(
[
[[-9.4959, -11.3087, -11.7479], [-11.0025, -12.6540, -12.3319], [-11.4064, -13.0487, -12.9905]],
[[-9.8905, -11.3084, -12.0854], [-11.1726, -12.7698, -12.9583], [-11.5985, -13.3278, -14.1774]],
[[0.2213, 0.0192, -0.2466], [-0.1731, -0.4213, -0.4874], [-0.3126, -0.6541, -1.1389]],
] )
elif model_name == "segformer.b1.1024x1024.city.160k":
snake_case__ : Union[str, Any] = torch.tensor(
[
[[-13.5748, -13.9111, -12.6500], [-14.3500, -15.3683, -14.2328], [-14.7532, -16.0424, -15.6087]],
[[-17.1651, -15.8725, -12.9653], [-17.2580, -17.3718, -14.8223], [-16.6058, -16.8783, -16.7452]],
[[-3.6456, -3.0209, -1.4203], [-3.0797, -3.1959, -2.0000], [-1.8757, -1.9217, -1.6997]],
] )
elif model_name == "segformer.b2.1024x1024.city.160k":
snake_case__ : List[str] = torch.tensor(
[
[[-16.0976, -16.4856, -17.3962], [-16.6234, -19.0342, -19.7685], [-16.0900, -18.0661, -19.1180]],
[[-18.4750, -18.8488, -19.5074], [-19.4030, -22.1570, -22.5977], [-19.1191, -20.8486, -22.3783]],
[[-4.5178, -5.5037, -6.5109], [-5.0884, -7.2174, -8.0334], [-4.4156, -5.8117, -7.2970]],
] )
elif model_name == "segformer.b3.1024x1024.city.160k":
snake_case__ : List[Any] = torch.tensor(
[
[[-14.2081, -14.4732, -14.1977], [-14.5867, -16.4423, -16.6356], [-13.4441, -14.9685, -16.8696]],
[[-14.4576, -14.7073, -15.0451], [-15.0816, -17.6237, -17.9873], [-14.4213, -16.0199, -18.5992]],
[[-4.7349, -4.9588, -5.0966], [-4.3210, -6.9325, -7.2591], [-3.4312, -4.7484, -7.1917]],
] )
elif model_name == "segformer.b4.1024x1024.city.160k":
snake_case__ : str = torch.tensor(
[
[[-11.7737, -11.9526, -11.3273], [-13.6692, -14.4574, -13.8878], [-13.8937, -14.6924, -15.9345]],
[[-14.6706, -14.5330, -14.1306], [-16.1502, -16.8180, -16.4269], [-16.8338, -17.8939, -20.1746]],
[[1.0491, 0.8289, 1.0310], [1.1044, 0.5219, 0.8055], [1.0899, 0.6926, 0.5590]],
] )
elif model_name == "segformer.b5.1024x1024.city.160k":
snake_case__ : List[str] = torch.tensor(
[
[[-12.5641, -13.4777, -13.0684], [-13.9587, -15.8983, -16.6557], [-13.3109, -15.7350, -16.3141]],
[[-14.7074, -15.4352, -14.5944], [-16.6353, -18.1663, -18.6120], [-15.1702, -18.0329, -18.1547]],
[[-1.7990, -2.0951, -1.7784], [-2.6397, -3.8245, -3.9686], [-1.5264, -2.8126, -2.9316]],
] )
else:
snake_case__ : Tuple = logits.argmax(-1 ).item()
print('Predicted class:' , model.config.idalabel[predicted_class_idx] )
# verify logits
if not encoder_only:
assert logits.shape == expected_shape
assert torch.allclose(logits[0, :3, :3, :3] , A , atol=1e-2 )
# finally, save model and image processor
logger.info(F'''Saving PyTorch model and image processor to {pytorch_dump_folder_path}...''' )
Path(A ).mkdir(exist_ok=A )
model.save_pretrained(A )
image_processor.save_pretrained(A )
if __name__ == "__main__":
a_ :Optional[int] = argparse.ArgumentParser()
parser.add_argument(
"--model_name",
default="segformer.b0.512x512.ade.160k",
type=str,
help="Name of the model you'd like to convert.",
)
parser.add_argument(
"--checkpoint_path", default=None, type=str, help="Path to the original PyTorch checkpoint (.pth file)."
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to the folder to output PyTorch model."
)
a_ :Union[str, Any] = parser.parse_args()
convert_segformer_checkpoint(args.model_name, args.checkpoint_path, args.pytorch_dump_folder_path)
| 277 | 1 |
import datasets
a_ :Optional[int] = "\\n@InProceedings{conneau2018xnli,\n author = \"Conneau, Alexis\n and Rinott, Ruty\n and Lample, Guillaume\n and Williams, Adina\n and Bowman, Samuel R.\n and Schwenk, Holger\n and Stoyanov, Veselin\",\n title = \"XNLI: Evaluating Cross-lingual Sentence Representations\",\n booktitle = \"Proceedings of the 2018 Conference on Empirical Methods\n in Natural Language Processing\",\n year = \"2018\",\n publisher = \"Association for Computational Linguistics\",\n location = \"Brussels, Belgium\",\n}\n"
a_ :List[Any] = "\\nXNLI is a subset of a few thousand examples from MNLI which has been translated\ninto a 14 different languages (some low-ish resource). As with MNLI, the goal is\nto predict textual entailment (does sentence A imply/contradict/neither sentence\nB) and is a classification task (given two sentences, predict one of three\nlabels).\n"
a_ :str = "\nComputes XNLI score which is just simple accuracy.\nArgs:\n predictions: Predicted labels.\n references: Ground truth labels.\nReturns:\n 'accuracy': accuracy\nExamples:\n\n >>> predictions = [0, 1]\n >>> references = [0, 1]\n >>> xnli_metric = datasets.load_metric(\"xnli\")\n >>> results = xnli_metric.compute(predictions=predictions, references=references)\n >>> print(results)\n {'accuracy': 1.0}\n"
def lowercase_ (A : Any , A : Union[str, Any] ):
return (preds == labels).mean()
@datasets.utils.file_utils.add_start_docstrings(_DESCRIPTION , _KWARGS_DESCRIPTION )
class snake_case__ ( datasets.Metric ):
"""simple docstring"""
def lowercase_ ( self : List[str] ) ->int:
return datasets.MetricInfo(
description=_DESCRIPTION, citation=_CITATION, inputs_description=_KWARGS_DESCRIPTION, features=datasets.Features(
{
'predictions': datasets.Value('int64' if self.config_name != 'sts-b' else 'float32' ),
'references': datasets.Value('int64' if self.config_name != 'sts-b' else 'float32' ),
} ), codebase_urls=[], reference_urls=[], format='numpy', )
def lowercase_ ( self : List[str], _snake_case : Dict, _snake_case : Optional[Any] ) ->List[str]:
return {"accuracy": simple_accuracy(_snake_case, _snake_case )}
| 277 |
import argparse
import json
import os
import fairseq
import torch
from fairseq.data import Dictionary
from transformers import (
WavaVecaConfig,
WavaVecaCTCTokenizer,
WavaVecaFeatureExtractor,
WavaVecaForCTC,
WavaVecaForPreTraining,
WavaVecaProcessor,
logging,
)
from transformers.models.wavaveca.modeling_wavaveca import WavaVecaForSequenceClassification
logging.set_verbosity_info()
a_ :List[Any] = logging.get_logger(__name__)
a_ :List[Any] = {
"post_extract_proj": "feature_projection.projection",
"encoder.pos_conv.0": "encoder.pos_conv_embed.conv",
"self_attn.k_proj": "encoder.layers.*.attention.k_proj",
"self_attn.v_proj": "encoder.layers.*.attention.v_proj",
"self_attn.q_proj": "encoder.layers.*.attention.q_proj",
"self_attn.out_proj": "encoder.layers.*.attention.out_proj",
"self_attn_layer_norm": "encoder.layers.*.layer_norm",
"fc1": "encoder.layers.*.feed_forward.intermediate_dense",
"fc2": "encoder.layers.*.feed_forward.output_dense",
"final_layer_norm": "encoder.layers.*.final_layer_norm",
"encoder.layer_norm": "encoder.layer_norm",
"adapter_layer": "encoder.layers.*.adapter_layer",
"w2v_model.layer_norm": "feature_projection.layer_norm",
"quantizer.weight_proj": "quantizer.weight_proj",
"quantizer.vars": "quantizer.codevectors",
"project_q": "project_q",
"final_proj": "project_hid",
"w2v_encoder.proj": "lm_head",
"mask_emb": "masked_spec_embed",
"pooling_layer.linear": "projector",
"pooling_layer.projection": "classifier",
}
a_ :List[Any] = [
"lm_head",
"quantizer.weight_proj",
"quantizer.codevectors",
"project_q",
"project_hid",
"projector",
"classifier",
]
def lowercase_ (A : Dict ):
snake_case__ : Optional[Any] = {}
with open(A , 'r' ) as file:
for line_number, line in enumerate(A ):
snake_case__ : Dict = line.strip()
if line:
snake_case__ : int = line.split()
snake_case__ : List[str] = line_number
snake_case__ : Dict = words[0]
snake_case__ : Optional[Any] = value
return result
def lowercase_ (A : int , A : int , A : Optional[int] , A : Optional[Any] , A : Tuple ):
for attribute in key.split('.' ):
snake_case__ : Optional[int] = getattr(A , A )
snake_case__ : Union[str, Any] = None
for param_key in PARAM_MAPPING.keys():
if full_name.endswith(A ):
snake_case__ : List[str] = PARAM_MAPPING[full_name.split('.' )[-1]]
snake_case__ : Dict = 'param'
if weight_type is not None and weight_type != "param":
snake_case__ : Union[str, Any] = getattr(A , A ).shape
elif weight_type is not None and weight_type == "param":
snake_case__ : Optional[int] = hf_pointer
for attribute in hf_param_name.split('.' ):
snake_case__ : Optional[Any] = getattr(A , A )
snake_case__ : Dict = shape_pointer.shape
# let's reduce dimension
snake_case__ : List[Any] = value[0]
else:
snake_case__ : Union[str, Any] = hf_pointer.shape
if hf_shape != value.shape:
raise ValueError(
F'''Shape of hf {key + "." + weight_type if weight_type is not None else ""} is {hf_shape}, but should be'''
F''' {value.shape} for {full_name}''' )
if weight_type == "weight":
snake_case__ : Any = value
elif weight_type == "weight_g":
snake_case__ : List[Any] = value
elif weight_type == "weight_v":
snake_case__ : Any = value
elif weight_type == "bias":
snake_case__ : List[Any] = value
elif weight_type == "param":
for attribute in hf_param_name.split('.' ):
snake_case__ : int = getattr(A , A )
snake_case__ : Optional[int] = value
else:
snake_case__ : Optional[Any] = value
logger.info(F'''{key + "." + weight_type if weight_type is not None else ""} was initialized from {full_name}.''' )
def lowercase_ (A : Tuple , A : List[Any] , A : int , A : str , A : Tuple ):
snake_case__ : Optional[int] = None
for param_key in PARAM_MAPPING.keys():
if full_name.endswith(A ):
snake_case__ : List[str] = PARAM_MAPPING[full_name.split('.' )[-1]]
snake_case__ : str = 'param'
if weight_type is not None and weight_type != "param":
snake_case__ : int = '.'.join([key, weight_type] )
elif weight_type is not None and weight_type == "param":
snake_case__ : Any = '.'.join([key, hf_param_name] )
else:
snake_case__ : Dict = key
snake_case__ : List[str] = value if 'lm_head' in full_key else value[0]
a_ :List[str] = {
"W_a": "linear_1.weight",
"W_b": "linear_2.weight",
"b_a": "linear_1.bias",
"b_b": "linear_2.bias",
"ln_W": "norm.weight",
"ln_b": "norm.bias",
}
def lowercase_ (A : str , A : Optional[Any] , A : Optional[Any]=None , A : List[str]=None ):
snake_case__ : Optional[int] = False
for key, mapped_key in MAPPING.items():
snake_case__ : Tuple = 'wav2vec2.' + mapped_key if mapped_key not in TOP_LEVEL_KEYS else mapped_key
if key in name or key.split('w2v_model.' )[-1] == name.split('.' )[0]:
snake_case__ : Optional[int] = True
if "*" in mapped_key:
snake_case__ : List[Any] = name.split(A )[0].split('.' )[-2]
snake_case__ : Union[str, Any] = mapped_key.replace('*' , A )
if "weight_g" in name:
snake_case__ : Tuple = 'weight_g'
elif "weight_v" in name:
snake_case__ : List[str] = 'weight_v'
elif "bias" in name:
snake_case__ : Dict = 'bias'
elif "weight" in name:
# TODO: don't match quantizer.weight_proj
snake_case__ : Optional[int] = 'weight'
else:
snake_case__ : str = None
if hf_dict is not None:
rename_dict(A , A , A , A , A )
else:
set_recursively(A , A , A , A , A )
return is_used
return is_used
def lowercase_ (A : Optional[Any] , A : Dict , A : Optional[int] ):
snake_case__ : Dict = []
snake_case__ : Tuple = fairseq_model.state_dict()
snake_case__ : str = hf_model.wavaveca.feature_extractor
for name, value in fairseq_dict.items():
snake_case__ : str = False
if "conv_layers" in name:
load_conv_layer(
A , A , A , A , hf_model.config.feat_extract_norm == 'group' , )
snake_case__ : Any = True
else:
snake_case__ : Dict = load_wavaveca_layer(A , A , A )
if not is_used:
unused_weights.append(A )
logger.warning(F'''Unused weights: {unused_weights}''' )
def lowercase_ (A : Dict , A : Optional[Any] , A : Tuple , A : str , A : List[str] ):
snake_case__ : List[Any] = full_name.split('conv_layers.' )[-1]
snake_case__ : List[str] = name.split('.' )
snake_case__ : List[Any] = int(items[0] )
snake_case__ : str = int(items[1] )
if type_id == 0:
if "bias" in name:
if value.shape != feature_extractor.conv_layers[layer_id].conv.bias.data.shape:
raise ValueError(
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.bias.data.shape} was found.''' )
snake_case__ : Any = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
if value.shape != feature_extractor.conv_layers[layer_id].conv.weight.data.shape:
raise ValueError(
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.weight.data.shape} was found.''' )
snake_case__ : str = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif (type_id == 2 and not use_group_norm) or (type_id == 2 and layer_id == 0 and use_group_norm):
if "bias" in name:
if value.shape != feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape:
raise ValueError(
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape} was found.''' )
snake_case__ : str = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
if value.shape != feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape:
raise ValueError(
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape} was found.''' )
snake_case__ : int = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
else:
unused_weights.append(A )
@torch.no_grad()
def lowercase_ (A : Union[str, Any] , A : str , A : Tuple=None , A : List[str]=None , A : Any=True , A : Optional[int]=False ):
if config_path is not None:
snake_case__ : List[Any] = WavaVecaConfig.from_pretrained(A )
else:
snake_case__ : List[Any] = WavaVecaConfig()
if is_seq_class:
snake_case__ : Dict = read_txt_into_dict(A )
snake_case__ : Any = idalabel
snake_case__ : Union[str, Any] = WavaVecaForSequenceClassification(A )
snake_case__ : Any = WavaVecaFeatureExtractor(
feature_size=1 , sampling_rate=1_6_0_0_0 , padding_value=0 , do_normalize=A , return_attention_mask=A , )
feature_extractor.save_pretrained(A )
elif is_finetuned:
if dict_path:
snake_case__ : str = Dictionary.load(A )
# important change bos & pad token id since CTC symbol is <pad> and
# not <s> as in fairseq
snake_case__ : List[str] = target_dict.pad_index
snake_case__ : Optional[int] = target_dict.bos_index
snake_case__ : Optional[int] = target_dict.eos_index
snake_case__ : List[Any] = len(target_dict.symbols )
snake_case__ : str = os.path.join(A , 'vocab.json' )
if not os.path.isdir(A ):
logger.error('--pytorch_dump_folder_path ({}) should be a directory'.format(A ) )
return
os.makedirs(A , exist_ok=A )
snake_case__ : Optional[Any] = target_dict.indices
# fairseq has the <pad> and <s> switched
snake_case__ : Optional[Any] = 0
snake_case__ : Union[str, Any] = 1
with open(A , 'w' , encoding='utf-8' ) as vocab_handle:
json.dump(A , A )
snake_case__ : List[Any] = WavaVecaCTCTokenizer(
A , unk_token=target_dict.unk_word , pad_token=target_dict.pad_word , bos_token=target_dict.bos_word , eos_token=target_dict.eos_word , word_delimiter_token='|' , do_lower_case=A , )
snake_case__ : str = True if config.feat_extract_norm == 'layer' else False
snake_case__ : Optional[Any] = WavaVecaFeatureExtractor(
feature_size=1 , sampling_rate=1_6_0_0_0 , padding_value=0 , do_normalize=A , return_attention_mask=A , )
snake_case__ : Union[str, Any] = WavaVecaProcessor(feature_extractor=A , tokenizer=A )
processor.save_pretrained(A )
snake_case__ : str = WavaVecaForCTC(A )
else:
snake_case__ : int = WavaVecaForPreTraining(A )
if is_finetuned or is_seq_class:
snake_case__ , snake_case__ , snake_case__ : str = fairseq.checkpoint_utils.load_model_ensemble_and_task(
[checkpoint_path] , arg_overrides={'data': '/'.join(dict_path.split('/' )[:-1] )} )
else:
snake_case__ : Tuple = argparse.Namespace(task='audio_pretraining' )
snake_case__ : str = fairseq.tasks.setup_task(A )
snake_case__ , snake_case__ , snake_case__ : Any = fairseq.checkpoint_utils.load_model_ensemble_and_task([checkpoint_path] , task=A )
snake_case__ : List[Any] = model[0].eval()
recursively_load_weights(A , A , not is_finetuned )
hf_wavavec.save_pretrained(A )
if __name__ == "__main__":
a_ :List[Any] = argparse.ArgumentParser()
parser.add_argument("--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model.")
parser.add_argument("--checkpoint_path", default=None, type=str, help="Path to fairseq checkpoint")
parser.add_argument("--dict_path", default=None, type=str, help="Path to dict of fine-tuned model")
parser.add_argument("--config_path", default=None, type=str, help="Path to hf config.json of model to convert")
parser.add_argument(
"--not_finetuned", action="store_true", help="Whether the model to convert is a fine-tuned model or not"
)
parser.add_argument(
"--is_seq_class",
action="store_true",
help="Whether the model to convert is a fine-tuned sequence classification model or not",
)
a_ :str = parser.parse_args()
a_ :Tuple = not args.not_finetuned and not args.is_seq_class
convert_wavaveca_checkpoint(
args.checkpoint_path,
args.pytorch_dump_folder_path,
args.config_path,
args.dict_path,
is_finetuned,
args.is_seq_class,
)
| 277 | 1 |
from math import factorial, pi
def lowercase_ (A : float , A : int = 3_0 ):
if not isinstance(A , (int, float) ):
raise ValueError('maclaurin_sin() requires either an int or float for theta' )
if not isinstance(A , A ) or accuracy <= 0:
raise ValueError('maclaurin_sin() requires a positive int for accuracy' )
snake_case__ : int = float(A )
snake_case__ : Dict = theta // (2 * pi)
theta -= 2 * div * pi
return sum(
(-1) ** r * theta ** (2 * r + 1) / factorial(2 * r + 1 ) for r in range(A ) )
def lowercase_ (A : float , A : int = 3_0 ):
if not isinstance(A , (int, float) ):
raise ValueError('maclaurin_cos() requires either an int or float for theta' )
if not isinstance(A , A ) or accuracy <= 0:
raise ValueError('maclaurin_cos() requires a positive int for accuracy' )
snake_case__ : Optional[int] = float(A )
snake_case__ : Any = theta // (2 * pi)
theta -= 2 * div * pi
return sum((-1) ** r * theta ** (2 * r) / factorial(2 * r ) for r in range(A ) )
if __name__ == "__main__":
import doctest
doctest.testmod()
print(maclaurin_sin(10))
print(maclaurin_sin(-10))
print(maclaurin_sin(10, 15))
print(maclaurin_sin(-10, 15))
print(maclaurin_cos(5))
print(maclaurin_cos(-5))
print(maclaurin_cos(10, 15))
print(maclaurin_cos(-10, 15))
| 277 |
from typing import Dict, List
from nltk.translate import gleu_score
import datasets
from datasets import MetricInfo
a_ :Any = "\\n@misc{wu2016googles,\n title={Google's Neural Machine Translation System: Bridging the Gap between Human and Machine Translation},\n author={Yonghui Wu and Mike Schuster and Zhifeng Chen and Quoc V. Le and Mohammad Norouzi and Wolfgang Macherey\n and Maxim Krikun and Yuan Cao and Qin Gao and Klaus Macherey and Jeff Klingner and Apurva Shah and Melvin\n Johnson and Xiaobing Liu and Łukasz Kaiser and Stephan Gouws and Yoshikiyo Kato and Taku Kudo and Hideto\n Kazawa and Keith Stevens and George Kurian and Nishant Patil and Wei Wang and Cliff Young and\n Jason Smith and Jason Riesa and Alex Rudnick and Oriol Vinyals and Greg Corrado and Macduff Hughes\n and Jeffrey Dean},\n year={2016},\n eprint={1609.08144},\n archivePrefix={arXiv},\n primaryClass={cs.CL}\n}\n"
a_ :List[str] = "\\nThe BLEU score has some undesirable properties when used for single\nsentences, as it was designed to be a corpus measure. We therefore\nuse a slightly different score for our RL experiments which we call\nthe 'GLEU score'. For the GLEU score, we record all sub-sequences of\n1, 2, 3 or 4 tokens in output and target sequence (n-grams). We then\ncompute a recall, which is the ratio of the number of matching n-grams\nto the number of total n-grams in the target (ground truth) sequence,\nand a precision, which is the ratio of the number of matching n-grams\nto the number of total n-grams in the generated output sequence. Then\nGLEU score is simply the minimum of recall and precision. This GLEU\nscore's range is always between 0 (no matches) and 1 (all match) and\nit is symmetrical when switching output and target. According to\nour experiments, GLEU score correlates quite well with the BLEU\nmetric on a corpus level but does not have its drawbacks for our per\nsentence reward objective.\n"
a_ :List[str] = "\\nComputes corpus-level Google BLEU (GLEU) score of translated segments against one or more references.\nInstead of averaging the sentence level GLEU scores (i.e. macro-average precision), Wu et al. (2016) sum up the matching\ntokens and the max of hypothesis and reference tokens for each sentence, then compute using the aggregate values.\n\nArgs:\n predictions (list of str): list of translations to score.\n Each translation should be tokenized into a list of tokens.\n references (list of list of str): list of lists of references for each translation.\n Each reference should be tokenized into a list of tokens.\n min_len (int): The minimum order of n-gram this function should extract. Defaults to 1.\n max_len (int): The maximum order of n-gram this function should extract. Defaults to 4.\n\nReturns:\n 'google_bleu': google_bleu score\n\nExamples:\n Example 1:\n >>> hyp1 = ['It', 'is', 'a', 'guide', 'to', 'action', 'which',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'always',\n ... 'disobeys', 'the', 'commands', 'of', 'the', 'cat']\n >>> ref1a = ['It', 'is', 'the', 'guiding', 'principle', 'which',\n ... 'guarantees', 'the', 'rubber', 'duck', 'forces', 'never',\n ... 'being', 'under', 'the', 'command', 'of', 'the', 'cat']\n\n >>> hyp2 = ['he', 'read', 'the', 'book', 'because', 'he', 'was',\n ... 'interested', 'in', 'world', 'history']\n >>> ref2a = ['he', 'was', 'interested', 'in', 'world', 'history',\n ... 'because', 'he', 'read', 'the', 'book']\n\n >>> list_of_references = [[ref1a], [ref2a]]\n >>> hypotheses = [hyp1, hyp2]\n >>> google_bleu = datasets.load_metric(\"google_bleu\")\n >>> results = google_bleu.compute(predictions=hypotheses, references=list_of_references)\n >>> print(round(results[\"google_bleu\"], 2))\n 0.44\n\n Example 2:\n >>> hyp1 = ['It', 'is', 'a', 'guide', 'to', 'action', 'which',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'always',\n ... 'disobeys', 'the', 'commands', 'of', 'the', 'cat']\n >>> ref1a = ['It', 'is', 'the', 'guiding', 'principle', 'which',\n ... 'guarantees', 'the', 'rubber', 'duck', 'forces', 'never',\n ... 'being', 'under', 'the', 'command', 'of', 'the', 'cat']\n >>> ref1b = ['It', 'is', 'a', 'guide', 'to', 'action', 'that',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'will', 'never',\n ... 'heed', 'the', 'cat', 'commands']\n >>> ref1c = ['It', 'is', 'the', 'practical', 'guide', 'for', 'the',\n ... 'rubber', 'duck', 'army', 'never', 'to', 'heed', 'the', 'directions',\n ... 'of', 'the', 'cat']\n\n >>> hyp2 = ['he', 'read', 'the', 'book', 'because', 'he', 'was',\n ... 'interested', 'in', 'world', 'history']\n >>> ref2a = ['he', 'was', 'interested', 'in', 'world', 'history',\n ... 'because', 'he', 'read', 'the', 'book']\n\n >>> list_of_references = [[ref1a, ref1b, ref1c], [ref2a]]\n >>> hypotheses = [hyp1, hyp2]\n >>> google_bleu = datasets.load_metric(\"google_bleu\")\n >>> results = google_bleu.compute(predictions=hypotheses, references=list_of_references)\n >>> print(round(results[\"google_bleu\"], 2))\n 0.61\n\n Example 3:\n >>> hyp1 = ['It', 'is', 'a', 'guide', 'to', 'action', 'which',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'always',\n ... 'disobeys', 'the', 'commands', 'of', 'the', 'cat']\n >>> ref1a = ['It', 'is', 'the', 'guiding', 'principle', 'which',\n ... 'guarantees', 'the', 'rubber', 'duck', 'forces', 'never',\n ... 'being', 'under', 'the', 'command', 'of', 'the', 'cat']\n >>> ref1b = ['It', 'is', 'a', 'guide', 'to', 'action', 'that',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'will', 'never',\n ... 'heed', 'the', 'cat', 'commands']\n >>> ref1c = ['It', 'is', 'the', 'practical', 'guide', 'for', 'the',\n ... 'rubber', 'duck', 'army', 'never', 'to', 'heed', 'the', 'directions',\n ... 'of', 'the', 'cat']\n\n >>> hyp2 = ['he', 'read', 'the', 'book', 'because', 'he', 'was',\n ... 'interested', 'in', 'world', 'history']\n >>> ref2a = ['he', 'was', 'interested', 'in', 'world', 'history',\n ... 'because', 'he', 'read', 'the', 'book']\n\n >>> list_of_references = [[ref1a, ref1b, ref1c], [ref2a]]\n >>> hypotheses = [hyp1, hyp2]\n >>> google_bleu = datasets.load_metric(\"google_bleu\")\n >>> results = google_bleu.compute(predictions=hypotheses, references=list_of_references, min_len=2)\n >>> print(round(results[\"google_bleu\"], 2))\n 0.53\n\n Example 4:\n >>> hyp1 = ['It', 'is', 'a', 'guide', 'to', 'action', 'which',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'always',\n ... 'disobeys', 'the', 'commands', 'of', 'the', 'cat']\n >>> ref1a = ['It', 'is', 'the', 'guiding', 'principle', 'which',\n ... 'guarantees', 'the', 'rubber', 'duck', 'forces', 'never',\n ... 'being', 'under', 'the', 'command', 'of', 'the', 'cat']\n >>> ref1b = ['It', 'is', 'a', 'guide', 'to', 'action', 'that',\n ... 'ensures', 'that', 'the', 'rubber', 'duck', 'will', 'never',\n ... 'heed', 'the', 'cat', 'commands']\n >>> ref1c = ['It', 'is', 'the', 'practical', 'guide', 'for', 'the',\n ... 'rubber', 'duck', 'army', 'never', 'to', 'heed', 'the', 'directions',\n ... 'of', 'the', 'cat']\n\n >>> hyp2 = ['he', 'read', 'the', 'book', 'because', 'he', 'was',\n ... 'interested', 'in', 'world', 'history']\n >>> ref2a = ['he', 'was', 'interested', 'in', 'world', 'history',\n ... 'because', 'he', 'read', 'the', 'book']\n\n >>> list_of_references = [[ref1a, ref1b, ref1c], [ref2a]]\n >>> hypotheses = [hyp1, hyp2]\n >>> google_bleu = datasets.load_metric(\"google_bleu\")\n >>> results = google_bleu.compute(predictions=hypotheses,references=list_of_references, min_len=2, max_len=6)\n >>> print(round(results[\"google_bleu\"], 2))\n 0.4\n"
@datasets.utils.file_utils.add_start_docstrings(_DESCRIPTION , _KWARGS_DESCRIPTION )
class snake_case__ ( datasets.Metric ):
"""simple docstring"""
def lowercase_ ( self : str ) ->MetricInfo:
return datasets.MetricInfo(
description=_DESCRIPTION, citation=_CITATION, inputs_description=_KWARGS_DESCRIPTION, features=datasets.Features(
{
'predictions': datasets.Sequence(datasets.Value('string', id='token' ), id='sequence' ),
'references': datasets.Sequence(
datasets.Sequence(datasets.Value('string', id='token' ), id='sequence' ), id='references' ),
} ), )
def lowercase_ ( self : str, _snake_case : List[List[List[str]]], _snake_case : List[List[str]], _snake_case : int = 1, _snake_case : int = 4, ) ->Dict[str, float]:
return {
"google_bleu": gleu_score.corpus_gleu(
list_of_references=_snake_case, hypotheses=_snake_case, min_len=_snake_case, max_len=_snake_case )
}
| 277 | 1 |
from timeit import timeit
def lowercase_ (A : int ):
if number < 0:
raise ValueError('the value of input must not be negative' )
snake_case__ : Dict = 0
while number:
number &= number - 1
result += 1
return result
def lowercase_ (A : int ):
if number < 0:
raise ValueError('the value of input must not be negative' )
snake_case__ : List[str] = 0
while number:
if number % 2 == 1:
result += 1
number >>= 1
return result
def lowercase_ ():
def do_benchmark(A : int ) -> None:
snake_case__ : Dict = 'import __main__ as z'
print(F'''Benchmark when {number = }:''' )
print(F'''{get_set_bits_count_using_modulo_operator(A ) = }''' )
snake_case__ : int = timeit('z.get_set_bits_count_using_modulo_operator(25)' , setup=A )
print(F'''timeit() runs in {timing} seconds''' )
print(F'''{get_set_bits_count_using_brian_kernighans_algorithm(A ) = }''' )
snake_case__ : Tuple = timeit(
'z.get_set_bits_count_using_brian_kernighans_algorithm(25)' , setup=A , )
print(F'''timeit() runs in {timing} seconds''' )
for number in (2_5, 3_7, 5_8, 0):
do_benchmark(A )
print()
if __name__ == "__main__":
import doctest
doctest.testmod()
benchmark()
| 277 |
from math import factorial
def lowercase_ (A : int , A : int , A : float ):
if successes > trials:
raise ValueError('successes must be lower or equal to trials' )
if trials < 0 or successes < 0:
raise ValueError('the function is defined for non-negative integers' )
if not isinstance(A , A ) or not isinstance(A , A ):
raise ValueError('the function is defined for non-negative integers' )
if not 0 < prob < 1:
raise ValueError('prob has to be in range of 1 - 0' )
snake_case__ : List[Any] = (prob**successes) * ((1 - prob) ** (trials - successes))
# Calculate the binomial coefficient: n! / k!(n-k)!
snake_case__ : List[str] = float(factorial(A ) )
coefficient /= factorial(A ) * factorial(trials - successes )
return probability * coefficient
if __name__ == "__main__":
from doctest import testmod
testmod()
print("Probability of 2 successes out of 4 trails")
print("with probability of 0.75 is:", end=" ")
print(binomial_distribution(2, 4, 0.75))
| 277 | 1 |
from ...configuration_utils import PretrainedConfig
from ...utils import logging
a_ :List[Any] = logging.get_logger(__name__)
a_ :Optional[int] = {
"microsoft/biogpt": "https://huggingface.co/microsoft/biogpt/resolve/main/config.json",
# See all BioGPT models at https://huggingface.co/models?filter=biogpt
}
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = """biogpt"""
def __init__( self : Optional[Any], _snake_case : str=4_2_3_8_4, _snake_case : Optional[int]=1_0_2_4, _snake_case : Optional[int]=2_4, _snake_case : List[str]=1_6, _snake_case : Any=4_0_9_6, _snake_case : int="gelu", _snake_case : str=0.1, _snake_case : Optional[int]=0.1, _snake_case : Dict=1_0_2_4, _snake_case : int=0.0_2, _snake_case : int=1e-12, _snake_case : str=True, _snake_case : Union[str, Any]=True, _snake_case : Dict=0.0, _snake_case : Any=0.0, _snake_case : Optional[int]=1, _snake_case : str=0, _snake_case : Tuple=2, **_snake_case : Tuple, ) ->Optional[Any]:
snake_case__ : str = vocab_size
snake_case__ : Any = max_position_embeddings
snake_case__ : Dict = hidden_size
snake_case__ : int = num_hidden_layers
snake_case__ : Tuple = num_attention_heads
snake_case__ : Dict = intermediate_size
snake_case__ : int = hidden_act
snake_case__ : str = hidden_dropout_prob
snake_case__ : Tuple = attention_probs_dropout_prob
snake_case__ : Union[str, Any] = initializer_range
snake_case__ : str = layer_norm_eps
snake_case__ : Union[str, Any] = scale_embedding
snake_case__ : str = use_cache
snake_case__ : int = layerdrop
snake_case__ : Dict = activation_dropout
super().__init__(pad_token_id=_snake_case, bos_token_id=_snake_case, eos_token_id=_snake_case, **_snake_case )
| 277 |
from collections import UserDict
from typing import Union
import numpy as np
import requests
from ..utils import (
add_end_docstrings,
logging,
)
from .audio_classification import ffmpeg_read
from .base import PIPELINE_INIT_ARGS, Pipeline
a_ :List[Any] = logging.get_logger(__name__)
@add_end_docstrings(lowerCAmelCase_ )
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
def __init__( self : Optional[Any], **_snake_case : str ) ->Dict:
super().__init__(**_snake_case )
if self.framework != "pt":
raise ValueError(F'''The {self.__class__} is only available in PyTorch.''' )
# No specific FOR_XXX available yet
def __call__( self : Union[str, Any], _snake_case : Union[np.ndarray, bytes, str], **_snake_case : Tuple ) ->Dict:
return super().__call__(_snake_case, **_snake_case )
def lowercase_ ( self : Tuple, **_snake_case : Any ) ->Union[str, Any]:
snake_case__ : str = {}
if "candidate_labels" in kwargs:
snake_case__ : str = kwargs['candidate_labels']
if "hypothesis_template" in kwargs:
snake_case__ : str = kwargs['hypothesis_template']
return preprocess_params, {}, {}
def lowercase_ ( self : Dict, _snake_case : str, _snake_case : Optional[int]=None, _snake_case : List[str]="This is a sound of {}." ) ->int:
if isinstance(_snake_case, _snake_case ):
if audio.startswith('http://' ) or audio.startswith('https://' ):
# We need to actually check for a real protocol, otherwise it's impossible to use a local file
# like http_huggingface_co.png
snake_case__ : List[Any] = requests.get(_snake_case ).content
else:
with open(_snake_case, 'rb' ) as f:
snake_case__ : Union[str, Any] = f.read()
if isinstance(_snake_case, _snake_case ):
snake_case__ : List[Any] = ffmpeg_read(_snake_case, self.feature_extractor.sampling_rate )
if not isinstance(_snake_case, np.ndarray ):
raise ValueError('We expect a numpy ndarray as input' )
if len(audio.shape ) != 1:
raise ValueError('We expect a single channel audio input for ZeroShotAudioClassificationPipeline' )
snake_case__ : Tuple = self.feature_extractor(
[audio], sampling_rate=self.feature_extractor.sampling_rate, return_tensors='pt' )
snake_case__ : int = candidate_labels
snake_case__ : int = [hypothesis_template.format(_snake_case ) for x in candidate_labels]
snake_case__ : Optional[int] = self.tokenizer(_snake_case, return_tensors=self.framework, padding=_snake_case )
snake_case__ : List[Any] = [text_inputs]
return inputs
def lowercase_ ( self : Optional[int], _snake_case : Optional[Any] ) ->int:
snake_case__ : Optional[int] = model_inputs.pop('candidate_labels' )
snake_case__ : str = model_inputs.pop('text_inputs' )
if isinstance(text_inputs[0], _snake_case ):
snake_case__ : Optional[Any] = text_inputs[0]
else:
# Batching case.
snake_case__ : int = text_inputs[0][0]
snake_case__ : Any = self.model(**_snake_case, **_snake_case )
snake_case__ : List[Any] = {
'candidate_labels': candidate_labels,
'logits': outputs.logits_per_audio,
}
return model_outputs
def lowercase_ ( self : Union[str, Any], _snake_case : str ) ->List[str]:
snake_case__ : int = model_outputs.pop('candidate_labels' )
snake_case__ : List[Any] = model_outputs['logits'][0]
if self.framework == "pt":
snake_case__ : Tuple = logits.softmax(dim=0 )
snake_case__ : Union[str, Any] = probs.tolist()
else:
raise ValueError('`tf` framework not supported.' )
snake_case__ : Union[str, Any] = [
{'score': score, 'label': candidate_label}
for score, candidate_label in sorted(zip(_snake_case, _snake_case ), key=lambda _snake_case : -x[0] )
]
return result
| 277 | 1 |
from typing import TYPE_CHECKING
from ...utils import (
OptionalDependencyNotAvailable,
_LazyModule,
is_flax_available,
is_tf_available,
is_tokenizers_available,
is_torch_available,
is_vision_available,
)
a_ :Dict = {
"configuration_clip": [
"CLIP_PRETRAINED_CONFIG_ARCHIVE_MAP",
"CLIPConfig",
"CLIPOnnxConfig",
"CLIPTextConfig",
"CLIPVisionConfig",
],
"processing_clip": ["CLIPProcessor"],
"tokenization_clip": ["CLIPTokenizer"],
}
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :Tuple = ["CLIPTokenizerFast"]
try:
if not is_vision_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :Dict = ["CLIPFeatureExtractor"]
a_ :Dict = ["CLIPImageProcessor"]
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :Any = [
"CLIP_PRETRAINED_MODEL_ARCHIVE_LIST",
"CLIPModel",
"CLIPPreTrainedModel",
"CLIPTextModel",
"CLIPTextModelWithProjection",
"CLIPVisionModel",
"CLIPVisionModelWithProjection",
]
try:
if not is_tf_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :Dict = [
"TF_CLIP_PRETRAINED_MODEL_ARCHIVE_LIST",
"TFCLIPModel",
"TFCLIPPreTrainedModel",
"TFCLIPTextModel",
"TFCLIPVisionModel",
]
try:
if not is_flax_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :str = [
"FlaxCLIPModel",
"FlaxCLIPPreTrainedModel",
"FlaxCLIPTextModel",
"FlaxCLIPTextPreTrainedModel",
"FlaxCLIPVisionModel",
"FlaxCLIPVisionPreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_clip import (
CLIP_PRETRAINED_CONFIG_ARCHIVE_MAP,
CLIPConfig,
CLIPOnnxConfig,
CLIPTextConfig,
CLIPVisionConfig,
)
from .processing_clip import CLIPProcessor
from .tokenization_clip import CLIPTokenizer
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_clip_fast import CLIPTokenizerFast
try:
if not is_vision_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .feature_extraction_clip import CLIPFeatureExtractor
from .image_processing_clip import CLIPImageProcessor
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_clip import (
CLIP_PRETRAINED_MODEL_ARCHIVE_LIST,
CLIPModel,
CLIPPreTrainedModel,
CLIPTextModel,
CLIPTextModelWithProjection,
CLIPVisionModel,
CLIPVisionModelWithProjection,
)
try:
if not is_tf_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_tf_clip import (
TF_CLIP_PRETRAINED_MODEL_ARCHIVE_LIST,
TFCLIPModel,
TFCLIPPreTrainedModel,
TFCLIPTextModel,
TFCLIPVisionModel,
)
try:
if not is_flax_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_flax_clip import (
FlaxCLIPModel,
FlaxCLIPPreTrainedModel,
FlaxCLIPTextModel,
FlaxCLIPTextPreTrainedModel,
FlaxCLIPVisionModel,
FlaxCLIPVisionPreTrainedModel,
)
else:
import sys
a_ :str = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 277 |
import collections
import inspect
import unittest
from transformers import SwinvaConfig
from transformers.testing_utils import require_torch, require_vision, slow, torch_device
from transformers.utils import cached_property, is_torch_available, is_vision_available
from ...test_configuration_common import ConfigTester
from ...test_modeling_common import ModelTesterMixin, _config_zero_init, floats_tensor, ids_tensor
from ...test_pipeline_mixin import PipelineTesterMixin
if is_torch_available():
import torch
from torch import nn
from transformers import SwinvaForImageClassification, SwinvaForMaskedImageModeling, SwinvaModel
from transformers.models.swinva.modeling_swinva import SWINV2_PRETRAINED_MODEL_ARCHIVE_LIST
if is_vision_available():
from PIL import Image
from transformers import AutoImageProcessor
class snake_case__ :
"""simple docstring"""
def __init__( self : Tuple, _snake_case : Any, _snake_case : int=1_3, _snake_case : Optional[int]=3_2, _snake_case : Tuple=2, _snake_case : Any=3, _snake_case : Tuple=1_6, _snake_case : Tuple=[1, 2, 1], _snake_case : Dict=[2, 2, 4], _snake_case : str=2, _snake_case : Union[str, Any]=2.0, _snake_case : Dict=True, _snake_case : Dict=0.0, _snake_case : str=0.0, _snake_case : str=0.1, _snake_case : List[str]="gelu", _snake_case : int=False, _snake_case : Optional[Any]=True, _snake_case : List[Any]=0.0_2, _snake_case : Union[str, Any]=1e-5, _snake_case : Union[str, Any]=True, _snake_case : List[Any]=None, _snake_case : Any=True, _snake_case : List[Any]=1_0, _snake_case : str=8, ) ->Union[str, Any]:
snake_case__ : Any = parent
snake_case__ : Tuple = batch_size
snake_case__ : Tuple = image_size
snake_case__ : Any = patch_size
snake_case__ : Optional[int] = num_channels
snake_case__ : Tuple = embed_dim
snake_case__ : Any = depths
snake_case__ : Any = num_heads
snake_case__ : List[str] = window_size
snake_case__ : Dict = mlp_ratio
snake_case__ : Optional[int] = qkv_bias
snake_case__ : Optional[Any] = hidden_dropout_prob
snake_case__ : List[str] = attention_probs_dropout_prob
snake_case__ : Union[str, Any] = drop_path_rate
snake_case__ : str = hidden_act
snake_case__ : Union[str, Any] = use_absolute_embeddings
snake_case__ : Union[str, Any] = patch_norm
snake_case__ : Any = layer_norm_eps
snake_case__ : Tuple = initializer_range
snake_case__ : Dict = is_training
snake_case__ : Any = scope
snake_case__ : Optional[Any] = use_labels
snake_case__ : str = type_sequence_label_size
snake_case__ : List[Any] = encoder_stride
def lowercase_ ( self : Tuple ) ->str:
snake_case__ : Tuple = floats_tensor([self.batch_size, self.num_channels, self.image_size, self.image_size] )
snake_case__ : List[Any] = None
if self.use_labels:
snake_case__ : Optional[Any] = ids_tensor([self.batch_size], self.type_sequence_label_size )
snake_case__ : Any = self.get_config()
return config, pixel_values, labels
def lowercase_ ( self : Optional[int] ) ->Optional[int]:
return SwinvaConfig(
image_size=self.image_size, patch_size=self.patch_size, num_channels=self.num_channels, embed_dim=self.embed_dim, depths=self.depths, num_heads=self.num_heads, window_size=self.window_size, mlp_ratio=self.mlp_ratio, qkv_bias=self.qkv_bias, hidden_dropout_prob=self.hidden_dropout_prob, attention_probs_dropout_prob=self.attention_probs_dropout_prob, drop_path_rate=self.drop_path_rate, hidden_act=self.hidden_act, use_absolute_embeddings=self.use_absolute_embeddings, path_norm=self.patch_norm, layer_norm_eps=self.layer_norm_eps, initializer_range=self.initializer_range, encoder_stride=self.encoder_stride, )
def lowercase_ ( self : Optional[int], _snake_case : str, _snake_case : List[str], _snake_case : int ) ->Dict:
snake_case__ : List[Any] = SwinvaModel(config=_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Optional[int] = model(_snake_case )
snake_case__ : List[Any] = ((config.image_size // config.patch_size) ** 2) // (4 ** (len(config.depths ) - 1))
snake_case__ : List[Any] = int(config.embed_dim * 2 ** (len(config.depths ) - 1) )
self.parent.assertEqual(result.last_hidden_state.shape, (self.batch_size, expected_seq_len, expected_dim) )
def lowercase_ ( self : Optional[Any], _snake_case : Any, _snake_case : List[str], _snake_case : Dict ) ->List[Any]:
snake_case__ : List[str] = SwinvaForMaskedImageModeling(config=_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Union[str, Any] = model(_snake_case )
self.parent.assertEqual(
result.logits.shape, (self.batch_size, self.num_channels, self.image_size, self.image_size) )
# test greyscale images
snake_case__ : Optional[Any] = 1
snake_case__ : Optional[int] = SwinvaForMaskedImageModeling(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Tuple = floats_tensor([self.batch_size, 1, self.image_size, self.image_size] )
snake_case__ : Any = model(_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, 1, self.image_size, self.image_size) )
def lowercase_ ( self : List[str], _snake_case : int, _snake_case : List[Any], _snake_case : Optional[int] ) ->Any:
snake_case__ : Tuple = self.type_sequence_label_size
snake_case__ : int = SwinvaForImageClassification(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Tuple = model(_snake_case, labels=_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.type_sequence_label_size) )
def lowercase_ ( self : Any ) ->Dict:
snake_case__ : str = self.prepare_config_and_inputs()
snake_case__ , snake_case__ , snake_case__ : List[str] = config_and_inputs
snake_case__ : Union[str, Any] = {'pixel_values': pixel_values}
return config, inputs_dict
@require_torch
class snake_case__ ( lowerCAmelCase_ , lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = (
(SwinvaModel, SwinvaForImageClassification, SwinvaForMaskedImageModeling) if is_torch_available() else ()
)
_SCREAMING_SNAKE_CASE = (
{"""feature-extraction""": SwinvaModel, """image-classification""": SwinvaForImageClassification}
if is_torch_available()
else {}
)
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
def lowercase_ ( self : Union[str, Any] ) ->Dict:
snake_case__ : Optional[int] = SwinvaModelTester(self )
snake_case__ : int = ConfigTester(self, config_class=_snake_case, embed_dim=3_7 )
def lowercase_ ( self : Tuple ) ->int:
self.config_tester.create_and_test_config_to_json_string()
self.config_tester.create_and_test_config_to_json_file()
self.config_tester.create_and_test_config_from_and_save_pretrained()
self.config_tester.create_and_test_config_with_num_labels()
self.config_tester.check_config_can_be_init_without_params()
self.config_tester.check_config_arguments_init()
def lowercase_ ( self : Any ) ->str:
snake_case__ : int = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_model(*_snake_case )
@unittest.skip(reason='Got `CUDA error: misaligned address` with PyTorch 2.0.0.' )
def lowercase_ ( self : Any ) ->Union[str, Any]:
pass
@unittest.skip(reason='Swinv2 does not use inputs_embeds' )
def lowercase_ ( self : str ) ->Union[str, Any]:
pass
def lowercase_ ( self : Optional[Any] ) ->Union[str, Any]:
snake_case__ , snake_case__ : Optional[int] = self.model_tester.prepare_config_and_inputs_for_common()
for model_class in self.all_model_classes:
snake_case__ : Union[str, Any] = model_class(_snake_case )
self.assertIsInstance(model.get_input_embeddings(), (nn.Module) )
snake_case__ : Union[str, Any] = model.get_output_embeddings()
self.assertTrue(x is None or isinstance(_snake_case, nn.Linear ) )
def lowercase_ ( self : List[str] ) ->Optional[int]:
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
for model_class in self.all_model_classes:
snake_case__ : Any = model_class(_snake_case )
snake_case__ : Dict = inspect.signature(model.forward )
# signature.parameters is an OrderedDict => so arg_names order is deterministic
snake_case__ : Optional[Any] = [*signature.parameters.keys()]
snake_case__ : List[Any] = ['pixel_values']
self.assertListEqual(arg_names[:1], _snake_case )
def lowercase_ ( self : str ) ->Union[str, Any]:
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : int = True
for model_class in self.all_model_classes:
snake_case__ : str = True
snake_case__ : Union[str, Any] = False
snake_case__ : Tuple = True
snake_case__ : int = model_class(_snake_case )
model.to(_snake_case )
model.eval()
with torch.no_grad():
snake_case__ : Optional[int] = model(**self._prepare_for_class(_snake_case, _snake_case ) )
snake_case__ : List[str] = outputs.attentions
snake_case__ : List[Any] = len(self.model_tester.depths )
self.assertEqual(len(_snake_case ), _snake_case )
# check that output_attentions also work using config
del inputs_dict["output_attentions"]
snake_case__ : str = True
snake_case__ : Tuple = config.window_size**2
snake_case__ : Optional[int] = model_class(_snake_case )
model.to(_snake_case )
model.eval()
with torch.no_grad():
snake_case__ : str = model(**self._prepare_for_class(_snake_case, _snake_case ) )
snake_case__ : Tuple = outputs.attentions
self.assertEqual(len(_snake_case ), _snake_case )
self.assertListEqual(
list(attentions[0].shape[-3:] ), [self.model_tester.num_heads[0], window_size_squared, window_size_squared], )
snake_case__ : Optional[Any] = len(_snake_case )
# Check attention is always last and order is fine
snake_case__ : Optional[int] = True
snake_case__ : Dict = True
snake_case__ : List[Any] = model_class(_snake_case )
model.to(_snake_case )
model.eval()
with torch.no_grad():
snake_case__ : Optional[int] = model(**self._prepare_for_class(_snake_case, _snake_case ) )
if hasattr(self.model_tester, 'num_hidden_states_types' ):
snake_case__ : str = self.model_tester.num_hidden_states_types
else:
# also another +1 for reshaped_hidden_states
snake_case__ : Dict = 2
self.assertEqual(out_len + added_hidden_states, len(_snake_case ) )
snake_case__ : Any = outputs.attentions
self.assertEqual(len(_snake_case ), _snake_case )
self.assertListEqual(
list(self_attentions[0].shape[-3:] ), [self.model_tester.num_heads[0], window_size_squared, window_size_squared], )
def lowercase_ ( self : Dict, _snake_case : Tuple, _snake_case : Any, _snake_case : int, _snake_case : Optional[int] ) ->str:
snake_case__ : Dict = model_class(_snake_case )
model.to(_snake_case )
model.eval()
with torch.no_grad():
snake_case__ : List[Any] = model(**self._prepare_for_class(_snake_case, _snake_case ) )
snake_case__ : Dict = outputs.hidden_states
snake_case__ : int = getattr(
self.model_tester, 'expected_num_hidden_layers', len(self.model_tester.depths ) + 1 )
self.assertEqual(len(_snake_case ), _snake_case )
# Swinv2 has a different seq_length
snake_case__ : int = (
config.patch_size
if isinstance(config.patch_size, collections.abc.Iterable )
else (config.patch_size, config.patch_size)
)
snake_case__ : Optional[Any] = (image_size[1] // patch_size[1]) * (image_size[0] // patch_size[0])
self.assertListEqual(
list(hidden_states[0].shape[-2:] ), [num_patches, self.model_tester.embed_dim], )
snake_case__ : Union[str, Any] = outputs.reshaped_hidden_states
self.assertEqual(len(_snake_case ), _snake_case )
snake_case__ , snake_case__ , snake_case__ , snake_case__ : str = reshaped_hidden_states[0].shape
snake_case__ : Any = (
reshaped_hidden_states[0].view(_snake_case, _snake_case, height * width ).permute(0, 2, 1 )
)
self.assertListEqual(
list(reshaped_hidden_states.shape[-2:] ), [num_patches, self.model_tester.embed_dim], )
def lowercase_ ( self : str ) ->List[Any]:
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : List[Any] = (
self.model_tester.image_size
if isinstance(self.model_tester.image_size, collections.abc.Iterable )
else (self.model_tester.image_size, self.model_tester.image_size)
)
for model_class in self.all_model_classes:
snake_case__ : Optional[int] = True
self.check_hidden_states_output(_snake_case, _snake_case, _snake_case, _snake_case )
# check that output_hidden_states also work using config
del inputs_dict["output_hidden_states"]
snake_case__ : Dict = True
self.check_hidden_states_output(_snake_case, _snake_case, _snake_case, _snake_case )
def lowercase_ ( self : List[str] ) ->str:
snake_case__ , snake_case__ : Optional[Any] = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : List[str] = 3
snake_case__ : Union[str, Any] = (
self.model_tester.image_size
if isinstance(self.model_tester.image_size, collections.abc.Iterable )
else (self.model_tester.image_size, self.model_tester.image_size)
)
snake_case__ : str = (
config.patch_size
if isinstance(config.patch_size, collections.abc.Iterable )
else (config.patch_size, config.patch_size)
)
snake_case__ : Tuple = image_size[0] + patch_size[0] - (image_size[0] % patch_size[0])
snake_case__ : Optional[Any] = image_size[1] + patch_size[1] - (image_size[1] % patch_size[1])
for model_class in self.all_model_classes:
snake_case__ : int = True
self.check_hidden_states_output(_snake_case, _snake_case, _snake_case, (padded_height, padded_width) )
# check that output_hidden_states also work using config
del inputs_dict["output_hidden_states"]
snake_case__ : List[str] = True
self.check_hidden_states_output(_snake_case, _snake_case, _snake_case, (padded_height, padded_width) )
def lowercase_ ( self : List[str] ) ->Optional[int]:
snake_case__ : Any = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_masked_image_modeling(*_snake_case )
def lowercase_ ( self : List[Any] ) ->str:
snake_case__ : Any = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_image_classification(*_snake_case )
@slow
def lowercase_ ( self : str ) ->Union[str, Any]:
for model_name in SWINV2_PRETRAINED_MODEL_ARCHIVE_LIST[:1]:
snake_case__ : Dict = SwinvaModel.from_pretrained(_snake_case )
self.assertIsNotNone(_snake_case )
def lowercase_ ( self : Optional[int] ) ->List[str]:
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : List[Any] = _config_zero_init(_snake_case )
for model_class in self.all_model_classes:
snake_case__ : List[str] = model_class(config=_snake_case )
for name, param in model.named_parameters():
if "embeddings" not in name and "logit_scale" not in name and param.requires_grad:
self.assertIn(
((param.data.mean() * 1e9).round() / 1e9).item(), [0.0, 1.0], msg=F'''Parameter {name} of model {model_class} seems not properly initialized''', )
@require_vision
@require_torch
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
@cached_property
def lowercase_ ( self : Union[str, Any] ) ->List[str]:
return (
AutoImageProcessor.from_pretrained('microsoft/swinv2-tiny-patch4-window8-256' )
if is_vision_available()
else None
)
@slow
def lowercase_ ( self : int ) ->List[Any]:
snake_case__ : Any = SwinvaForImageClassification.from_pretrained('microsoft/swinv2-tiny-patch4-window8-256' ).to(
_snake_case )
snake_case__ : int = self.default_image_processor
snake_case__ : Union[str, Any] = Image.open('./tests/fixtures/tests_samples/COCO/000000039769.png' )
snake_case__ : Optional[Any] = image_processor(images=_snake_case, return_tensors='pt' ).to(_snake_case )
# forward pass
with torch.no_grad():
snake_case__ : List[str] = model(**_snake_case )
# verify the logits
snake_case__ : int = torch.Size((1, 1_0_0_0) )
self.assertEqual(outputs.logits.shape, _snake_case )
snake_case__ : Optional[int] = torch.tensor([-0.3_9_4_7, -0.4_3_0_6, 0.0_0_2_6] ).to(_snake_case )
self.assertTrue(torch.allclose(outputs.logits[0, :3], _snake_case, atol=1e-4 ) )
| 277 | 1 |
class snake_case__ :
"""simple docstring"""
def __init__( self : Union[str, Any], _snake_case : int ) ->Dict:
# we need a list not a string, so do something to change the type
snake_case__ : Any = arr.split(',' )
def lowercase_ ( self : Tuple ) ->Any:
snake_case__ : Tuple = [int(self.array[0] )] * len(self.array )
snake_case__ : Tuple = [int(self.array[0] )] * len(self.array )
for i in range(1, len(self.array ) ):
snake_case__ : Optional[Any] = max(
int(self.array[i] ) + sum_value[i - 1], int(self.array[i] ) )
snake_case__ : Optional[int] = max(sum_value[i], rear[i - 1] )
return rear[len(self.array ) - 1]
if __name__ == "__main__":
a_ :Optional[int] = input("please input some numbers:")
a_ :Dict = SubArray(whole_array)
a_ :str = array.solve_sub_array()
print(("the results is:", re))
| 277 |
import unittest
import numpy as np
from transformers.testing_utils import require_torch, require_vision
from transformers.utils import is_torch_available, is_vision_available
from ...test_image_processing_common import ImageProcessingSavingTestMixin, prepare_image_inputs
if is_torch_available():
import torch
if is_vision_available():
from PIL import Image
from transformers import PoolFormerImageProcessor
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
def __init__( self : Optional[int], _snake_case : List[Any], _snake_case : str=7, _snake_case : Tuple=3, _snake_case : List[str]=3_0, _snake_case : Tuple=4_0_0, _snake_case : Any=True, _snake_case : List[Any]=None, _snake_case : int=0.9, _snake_case : Optional[Any]=None, _snake_case : str=True, _snake_case : Union[str, Any]=[0.5, 0.5, 0.5], _snake_case : Union[str, Any]=[0.5, 0.5, 0.5], ) ->List[Any]:
snake_case__ : int = size if size is not None else {'shortest_edge': 3_0}
snake_case__ : Tuple = crop_size if crop_size is not None else {'height': 3_0, 'width': 3_0}
snake_case__ : Union[str, Any] = parent
snake_case__ : Dict = batch_size
snake_case__ : int = num_channels
snake_case__ : Tuple = min_resolution
snake_case__ : Any = max_resolution
snake_case__ : List[Any] = do_resize_and_center_crop
snake_case__ : str = size
snake_case__ : str = crop_pct
snake_case__ : List[str] = crop_size
snake_case__ : Optional[int] = do_normalize
snake_case__ : Tuple = image_mean
snake_case__ : Tuple = image_std
def lowercase_ ( self : Optional[int] ) ->int:
return {
"size": self.size,
"do_resize_and_center_crop": self.do_resize_and_center_crop,
"crop_pct": self.crop_pct,
"crop_size": self.crop_size,
"do_normalize": self.do_normalize,
"image_mean": self.image_mean,
"image_std": self.image_std,
}
@require_torch
@require_vision
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = PoolFormerImageProcessor if is_vision_available() else None
def lowercase_ ( self : Union[str, Any] ) ->Dict:
snake_case__ : Union[str, Any] = PoolFormerImageProcessingTester(self )
@property
def lowercase_ ( self : int ) ->Dict:
return self.image_processor_tester.prepare_image_processor_dict()
def lowercase_ ( self : Union[str, Any] ) ->Optional[int]:
snake_case__ : List[str] = self.image_processing_class(**self.image_processor_dict )
self.assertTrue(hasattr(_snake_case, 'do_resize_and_center_crop' ) )
self.assertTrue(hasattr(_snake_case, 'size' ) )
self.assertTrue(hasattr(_snake_case, 'crop_pct' ) )
self.assertTrue(hasattr(_snake_case, 'do_normalize' ) )
self.assertTrue(hasattr(_snake_case, 'image_mean' ) )
self.assertTrue(hasattr(_snake_case, 'image_std' ) )
def lowercase_ ( self : List[str] ) ->List[str]:
snake_case__ : Union[str, Any] = self.image_processing_class.from_dict(self.image_processor_dict )
self.assertEqual(image_processor.size, {'shortest_edge': 3_0} )
self.assertEqual(image_processor.crop_size, {'height': 3_0, 'width': 3_0} )
snake_case__ : int = self.image_processing_class.from_dict(self.image_processor_dict, size=4_2, crop_size=8_4 )
self.assertEqual(image_processor.size, {'shortest_edge': 4_2} )
self.assertEqual(image_processor.crop_size, {'height': 8_4, 'width': 8_4} )
def lowercase_ ( self : List[Any] ) ->List[Any]:
pass
def lowercase_ ( self : List[str] ) ->str:
# Initialize image_processing
snake_case__ : Union[str, Any] = self.image_processing_class(**self.image_processor_dict )
# create random PIL images
snake_case__ : List[str] = prepare_image_inputs(self.image_processor_tester, equal_resolution=_snake_case )
for image in image_inputs:
self.assertIsInstance(_snake_case, Image.Image )
# Test not batched input
snake_case__ : Optional[int] = image_processing(image_inputs[0], return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
# Test batched
snake_case__ : str = image_processing(_snake_case, return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
def lowercase_ ( self : int ) ->List[Any]:
# Initialize image_processing
snake_case__ : Optional[int] = self.image_processing_class(**self.image_processor_dict )
# create random numpy tensors
snake_case__ : Dict = prepare_image_inputs(self.image_processor_tester, equal_resolution=_snake_case, numpify=_snake_case )
for image in image_inputs:
self.assertIsInstance(_snake_case, np.ndarray )
# Test not batched input
snake_case__ : Dict = image_processing(image_inputs[0], return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
# Test batched
snake_case__ : List[Any] = image_processing(_snake_case, return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
def lowercase_ ( self : List[str] ) ->List[str]:
# Initialize image_processing
snake_case__ : Tuple = self.image_processing_class(**self.image_processor_dict )
# create random PyTorch tensors
snake_case__ : List[str] = prepare_image_inputs(self.image_processor_tester, equal_resolution=_snake_case, torchify=_snake_case )
for image in image_inputs:
self.assertIsInstance(_snake_case, torch.Tensor )
# Test not batched input
snake_case__ : Tuple = image_processing(image_inputs[0], return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
# Test batched
snake_case__ : Optional[Any] = image_processing(_snake_case, return_tensors='pt' ).pixel_values
self.assertEqual(
encoded_images.shape, (
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['height'],
self.image_processor_tester.crop_size['width'],
), )
| 277 | 1 |
def lowercase_ (A : Union[str, Any] , A : List[str] , A : int , A : Optional[int] ):
global f # a global dp table for knapsack
if f[i][j] < 0:
if j < wt[i - 1]:
snake_case__ : Union[str, Any] = mf_knapsack(i - 1 , A , A , A )
else:
snake_case__ : Any = max(
mf_knapsack(i - 1 , A , A , A ) , mf_knapsack(i - 1 , A , A , j - wt[i - 1] ) + val[i - 1] , )
snake_case__ : Optional[int] = val
return f[i][j]
def lowercase_ (A : Optional[int] , A : Union[str, Any] , A : str , A : Dict ):
snake_case__ : int = [[0] * (w + 1) for _ in range(n + 1 )]
for i in range(1 , n + 1 ):
for w_ in range(1 , w + 1 ):
if wt[i - 1] <= w_:
snake_case__ : Union[str, Any] = max(val[i - 1] + dp[i - 1][w_ - wt[i - 1]] , dp[i - 1][w_] )
else:
snake_case__ : str = dp[i - 1][w_]
return dp[n][w_], dp
def lowercase_ (A : int , A : list , A : list ):
if not (isinstance(A , (list, tuple) ) and isinstance(A , (list, tuple) )):
raise ValueError(
'Both the weights and values vectors must be either lists or tuples' )
snake_case__ : Dict = len(A )
if num_items != len(A ):
snake_case__ : str = (
'The number of weights must be the same as the number of values.\n'
F'''But got {num_items} weights and {len(A )} values'''
)
raise ValueError(A )
for i in range(A ):
if not isinstance(wt[i] , A ):
snake_case__ : Optional[int] = (
'All weights must be integers but got weight of '
F'''type {type(wt[i] )} at index {i}'''
)
raise TypeError(A )
snake_case__ , snake_case__ : Optional[int] = knapsack(A , A , A , A )
snake_case__ : set = set()
_construct_solution(A , A , A , A , A )
return optimal_val, example_optional_set
def lowercase_ (A : list , A : list , A : int , A : int , A : set ):
# for the current item i at a maximum weight j to be part of an optimal subset,
# the optimal value at (i, j) must be greater than the optimal value at (i-1, j).
# where i - 1 means considering only the previous items at the given maximum weight
if i > 0 and j > 0:
if dp[i - 1][j] == dp[i][j]:
_construct_solution(A , A , i - 1 , A , A )
else:
optimal_set.add(A )
_construct_solution(A , A , i - 1 , j - wt[i - 1] , A )
if __name__ == "__main__":
a_ :Any = [3, 2, 4, 4]
a_ :List[Any] = [4, 3, 2, 3]
a_ :Union[str, Any] = 4
a_ :List[str] = 6
a_ :Union[str, Any] = [[0] * (w + 1)] + [[0] + [-1] * (w + 1) for _ in range(n + 1)]
a_ , a_ :List[Any] = knapsack(w, wt, val, n)
print(optimal_solution)
print(mf_knapsack(n, wt, val, w)) # switched the n and w
# testing the dynamic programming problem with example
# the optimal subset for the above example are items 3 and 4
a_ , a_ :Any = knapsack_with_example_solution(w, wt, val)
assert optimal_solution == 8
assert optimal_subset == {3, 4}
print("optimal_value = ", optimal_solution)
print("An optimal subset corresponding to the optimal value", optimal_subset)
| 277 |
from collections import deque
from .hash_table import HashTable
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
def __init__( self : Optional[Any], *_snake_case : Optional[Any], **_snake_case : List[Any] ) ->Optional[int]:
super().__init__(*_snake_case, **_snake_case )
def lowercase_ ( self : Optional[Any], _snake_case : Tuple, _snake_case : Dict ) ->Dict:
snake_case__ : int = deque([] ) if self.values[key] is None else self.values[key]
self.values[key].appendleft(_snake_case )
snake_case__ : Dict = self.values[key]
def lowercase_ ( self : Any ) ->Optional[Any]:
return (
sum(self.charge_factor - len(_snake_case ) for slot in self.values )
/ self.size_table
* self.charge_factor
)
def lowercase_ ( self : Union[str, Any], _snake_case : str, _snake_case : Optional[int]=None ) ->Optional[Any]:
if not (
len(self.values[key] ) == self.charge_factor and self.values.count(_snake_case ) == 0
):
return key
return super()._collision_resolution(_snake_case, _snake_case )
| 277 | 1 |
# Copyright 2023 The HuggingFace Team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from typing import TYPE_CHECKING
# rely on isort to merge the imports
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_torch_available, is_vision_available
a_ :Tuple = {
"configuration_vivit": ["VIVIT_PRETRAINED_CONFIG_ARCHIVE_MAP", "VivitConfig"],
}
try:
if not is_vision_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :Union[str, Any] = ["VivitImageProcessor"]
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :Any = [
"VIVIT_PRETRAINED_MODEL_ARCHIVE_LIST",
"VivitModel",
"VivitPreTrainedModel",
"VivitForVideoClassification",
]
if TYPE_CHECKING:
from .configuration_vivit import VIVIT_PRETRAINED_CONFIG_ARCHIVE_MAP, VivitConfig
try:
if not is_vision_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .image_processing_vivit import VivitImageProcessor
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_vivit import (
VIVIT_PRETRAINED_MODEL_ARCHIVE_LIST,
VivitForVideoClassification,
VivitModel,
VivitPreTrainedModel,
)
else:
import sys
a_ :Dict = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 277 |
def lowercase_ (A : Union[str, Any] , A : List[str] , A : int , A : Optional[int] ):
global f # a global dp table for knapsack
if f[i][j] < 0:
if j < wt[i - 1]:
snake_case__ : Union[str, Any] = mf_knapsack(i - 1 , A , A , A )
else:
snake_case__ : Any = max(
mf_knapsack(i - 1 , A , A , A ) , mf_knapsack(i - 1 , A , A , j - wt[i - 1] ) + val[i - 1] , )
snake_case__ : Optional[int] = val
return f[i][j]
def lowercase_ (A : Optional[int] , A : Union[str, Any] , A : str , A : Dict ):
snake_case__ : int = [[0] * (w + 1) for _ in range(n + 1 )]
for i in range(1 , n + 1 ):
for w_ in range(1 , w + 1 ):
if wt[i - 1] <= w_:
snake_case__ : Union[str, Any] = max(val[i - 1] + dp[i - 1][w_ - wt[i - 1]] , dp[i - 1][w_] )
else:
snake_case__ : str = dp[i - 1][w_]
return dp[n][w_], dp
def lowercase_ (A : int , A : list , A : list ):
if not (isinstance(A , (list, tuple) ) and isinstance(A , (list, tuple) )):
raise ValueError(
'Both the weights and values vectors must be either lists or tuples' )
snake_case__ : Dict = len(A )
if num_items != len(A ):
snake_case__ : str = (
'The number of weights must be the same as the number of values.\n'
F'''But got {num_items} weights and {len(A )} values'''
)
raise ValueError(A )
for i in range(A ):
if not isinstance(wt[i] , A ):
snake_case__ : Optional[int] = (
'All weights must be integers but got weight of '
F'''type {type(wt[i] )} at index {i}'''
)
raise TypeError(A )
snake_case__ , snake_case__ : Optional[int] = knapsack(A , A , A , A )
snake_case__ : set = set()
_construct_solution(A , A , A , A , A )
return optimal_val, example_optional_set
def lowercase_ (A : list , A : list , A : int , A : int , A : set ):
# for the current item i at a maximum weight j to be part of an optimal subset,
# the optimal value at (i, j) must be greater than the optimal value at (i-1, j).
# where i - 1 means considering only the previous items at the given maximum weight
if i > 0 and j > 0:
if dp[i - 1][j] == dp[i][j]:
_construct_solution(A , A , i - 1 , A , A )
else:
optimal_set.add(A )
_construct_solution(A , A , i - 1 , j - wt[i - 1] , A )
if __name__ == "__main__":
a_ :Any = [3, 2, 4, 4]
a_ :List[Any] = [4, 3, 2, 3]
a_ :Union[str, Any] = 4
a_ :List[str] = 6
a_ :Union[str, Any] = [[0] * (w + 1)] + [[0] + [-1] * (w + 1) for _ in range(n + 1)]
a_ , a_ :List[Any] = knapsack(w, wt, val, n)
print(optimal_solution)
print(mf_knapsack(n, wt, val, w)) # switched the n and w
# testing the dynamic programming problem with example
# the optimal subset for the above example are items 3 and 4
a_ , a_ :Any = knapsack_with_example_solution(w, wt, val)
assert optimal_solution == 8
assert optimal_subset == {3, 4}
print("optimal_value = ", optimal_solution)
print("An optimal subset corresponding to the optimal value", optimal_subset)
| 277 | 1 |
from typing import Any, Dict, List, Union
from ..utils import add_end_docstrings, is_torch_available, is_vision_available, logging, requires_backends
from .base import PIPELINE_INIT_ARGS, ChunkPipeline
if is_vision_available():
from PIL import Image
from ..image_utils import load_image
if is_torch_available():
import torch
from transformers.modeling_outputs import BaseModelOutput
from ..models.auto.modeling_auto import MODEL_FOR_ZERO_SHOT_OBJECT_DETECTION_MAPPING
a_ :Union[str, Any] = logging.get_logger(__name__)
@add_end_docstrings(lowerCAmelCase_ )
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
def __init__( self : Optional[Any], **_snake_case : List[Any] ) ->Any:
super().__init__(**_snake_case )
if self.framework == "tf":
raise ValueError(F'''The {self.__class__} is only available in PyTorch.''' )
requires_backends(self, 'vision' )
self.check_model_type(_snake_case )
def __call__( self : Optional[int], _snake_case : Union[str, "Image.Image", List[Dict[str, Any]]], _snake_case : Union[str, List[str]] = None, **_snake_case : Any, ) ->int:
if "text_queries" in kwargs:
snake_case__ : Optional[int] = kwargs.pop('text_queries' )
if isinstance(_snake_case, (str, Image.Image) ):
snake_case__ : Any = {'image': image, 'candidate_labels': candidate_labels}
else:
snake_case__ : Optional[int] = image
snake_case__ : Tuple = super().__call__(_snake_case, **_snake_case )
return results
def lowercase_ ( self : str, **_snake_case : Union[str, Any] ) ->int:
snake_case__ : Dict = {}
if "threshold" in kwargs:
snake_case__ : int = kwargs['threshold']
if "top_k" in kwargs:
snake_case__ : Any = kwargs['top_k']
return {}, {}, postprocess_params
def lowercase_ ( self : List[str], _snake_case : int ) ->List[str]:
snake_case__ : Dict = load_image(inputs['image'] )
snake_case__ : Optional[int] = inputs['candidate_labels']
if isinstance(_snake_case, _snake_case ):
snake_case__ : Any = candidate_labels.split(',' )
snake_case__ : List[str] = torch.tensor([[image.height, image.width]], dtype=torch.intaa )
for i, candidate_label in enumerate(_snake_case ):
snake_case__ : List[Any] = self.tokenizer(_snake_case, return_tensors=self.framework )
snake_case__ : List[str] = self.image_processor(_snake_case, return_tensors=self.framework )
yield {
"is_last": i == len(_snake_case ) - 1,
"target_size": target_size,
"candidate_label": candidate_label,
**text_inputs,
**image_features,
}
def lowercase_ ( self : Optional[Any], _snake_case : Optional[Any] ) ->Optional[int]:
snake_case__ : str = model_inputs.pop('target_size' )
snake_case__ : Dict = model_inputs.pop('candidate_label' )
snake_case__ : Dict = model_inputs.pop('is_last' )
snake_case__ : Optional[int] = self.model(**_snake_case )
snake_case__ : List[Any] = {'target_size': target_size, 'candidate_label': candidate_label, 'is_last': is_last, **outputs}
return model_outputs
def lowercase_ ( self : Any, _snake_case : Any, _snake_case : Dict=0.1, _snake_case : List[str]=None ) ->Dict:
snake_case__ : Dict = []
for model_output in model_outputs:
snake_case__ : Any = model_output['candidate_label']
snake_case__ : str = BaseModelOutput(_snake_case )
snake_case__ : List[str] = self.image_processor.post_process_object_detection(
outputs=_snake_case, threshold=_snake_case, target_sizes=model_output['target_size'] )[0]
for index in outputs["scores"].nonzero():
snake_case__ : List[str] = outputs['scores'][index].item()
snake_case__ : Union[str, Any] = self._get_bounding_box(outputs['boxes'][index][0] )
snake_case__ : int = {'score': score, 'label': label, 'box': box}
results.append(_snake_case )
snake_case__ : Tuple = sorted(_snake_case, key=lambda _snake_case : x["score"], reverse=_snake_case )
if top_k:
snake_case__ : List[str] = results[:top_k]
return results
def lowercase_ ( self : List[str], _snake_case : "torch.Tensor" ) ->Dict[str, int]:
if self.framework != "pt":
raise ValueError('The ZeroShotObjectDetectionPipeline is only available in PyTorch.' )
snake_case__ , snake_case__ , snake_case__ , snake_case__ : Union[str, Any] = box.int().tolist()
snake_case__ : str = {
'xmin': xmin,
'ymin': ymin,
'xmax': xmax,
'ymax': ymax,
}
return bbox
| 277 |
from typing import TYPE_CHECKING
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_flax_available, is_torch_available
a_ :int = {
"configuration_longt5": ["LONGT5_PRETRAINED_CONFIG_ARCHIVE_MAP", "LongT5Config", "LongT5OnnxConfig"],
}
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :List[str] = [
"LONGT5_PRETRAINED_MODEL_ARCHIVE_LIST",
"LongT5EncoderModel",
"LongT5ForConditionalGeneration",
"LongT5Model",
"LongT5PreTrainedModel",
]
try:
if not is_flax_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :int = [
"FlaxLongT5ForConditionalGeneration",
"FlaxLongT5Model",
"FlaxLongT5PreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_longta import LONGT5_PRETRAINED_CONFIG_ARCHIVE_MAP, LongTaConfig, LongTaOnnxConfig
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_longta import (
LONGT5_PRETRAINED_MODEL_ARCHIVE_LIST,
LongTaEncoderModel,
LongTaForConditionalGeneration,
LongTaModel,
LongTaPreTrainedModel,
)
try:
if not is_flax_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_flax_longta import (
FlaxLongTaForConditionalGeneration,
FlaxLongTaModel,
FlaxLongTaPreTrainedModel,
)
else:
import sys
a_ :Optional[int] = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 277 | 1 |
import math
def lowercase_ (A : int ):
if 1 < number < 4:
# 2 and 3 are primes
return True
elif number < 2 or number % 2 == 0 or number % 3 == 0:
# Negatives, 0, 1, all even numbers, all multiples of 3 are not primes
return False
# All primes number are in format of 6k +/- 1
for i in range(5 , int(math.sqrt(A ) + 1 ) , 6 ):
if number % i == 0 or number % (i + 2) == 0:
return False
return True
def lowercase_ (A : int = 1_0_0_0_1 ):
try:
snake_case__ : Tuple = int(A )
except (TypeError, ValueError):
raise TypeError('Parameter nth must be int or castable to int.' ) from None
if nth <= 0:
raise ValueError('Parameter nth must be greater than or equal to one.' )
snake_case__ : list[int] = []
snake_case__ : Tuple = 2
while len(A ) < nth:
if is_prime(A ):
primes.append(A )
num += 1
else:
num += 1
return primes[len(A ) - 1]
if __name__ == "__main__":
print(F"""{solution() = }""")
| 277 |
import argparse
import json
import os
import torch
from torch import nn
from transformers import NllbMoeConfig, NllbMoeModel
from transformers.modeling_utils import dtype_byte_size
from transformers.utils import WEIGHTS_INDEX_NAME, WEIGHTS_NAME
def lowercase_ (A : List[str] ):
snake_case__ : Tuple = [
'encoder.version',
'decoder.version',
'model.encoder.version',
'model.decoder.version',
'decoder.output_projection.weight',
'_float_tensor',
'encoder.embed_positions._float_tensor',
'decoder.embed_positions._float_tensor',
]
for k in ignore_keys:
state_dict.pop(A , A )
def lowercase_ (A : str ):
snake_case__ , snake_case__ : Union[str, Any] = emb.weight.shape
snake_case__ : str = nn.Linear(A , A , bias=A )
snake_case__ : str = emb.weight.data
return lin_layer
def lowercase_ (A : Optional[int] , A : Union[str, Any]=None ):
snake_case__ : Any = {}
for old_key in state_dict.keys():
snake_case__ : Tuple = old_key
if "moe_layer.experts." in key:
if expert_idx is not None:
snake_case__ : int = key.replace('moe_layer.experts.0' , F'''ffn.experts.expert_{expert_idx}''' )
else:
snake_case__ : Any = key.replace('moe_layer.experts.' , 'ffn.experts.expert_' )
if "gate" in key:
snake_case__ : Dict = key.replace('.moe_layer.gate.wg' , '.ffn.router.classifier' )
if "fc2" and "experts" not in key:
snake_case__ : str = key.replace('.fc2.' , '.ffn.fc2.' )
if "fc1" and "experts" not in key:
snake_case__ : str = key.replace('.fc1.' , '.ffn.fc1.' )
if ".encoder_attn." in key:
snake_case__ : Tuple = key.replace('.encoder_attn.' , '.cross_attention.' )
if "encoder_attn_layer_norm" in key:
snake_case__ : Tuple = key.replace('encoder_attn_layer_norm' , 'cross_attention_layer_norm' )
if "final_layer_norm" in key:
snake_case__ : Optional[int] = key.replace('final_layer_norm' , 'ff_layer_norm' )
snake_case__ : Dict = state_dict[old_key]
return new_dict
def lowercase_ (A : List[Any] , A : Tuple , A : List[Any] , A : List[str] , A : str = WEIGHTS_NAME ):
snake_case__ : Dict = []
snake_case__ : str = 0
os.makedirs(A , exist_ok=A )
for expert in range(A ):
snake_case__ : Tuple = switch_checkpoint_path + F'''-rank-{expert}.pt'''
if os.path.isfile(A ):
snake_case__ : Optional[Any] = torch.load(A )['model']
remove_ignore_keys_(A )
snake_case__ : Optional[Any] = rename_fairseq_keys(A , A )
snake_case__ : Dict = os.path.join(
A , weights_name.replace('.bin' , F'''-{len(A )+1:05d}-of-???.bin''' ) )
torch.save(A , A )
sharded_state_dicts.append(expert_state.keys() )
total_size += sum([value.numel() for key, value in expert_state.items()] ) * dtype_byte_size(
expert_state[list(A )[0]].dtype )
# Add the last block
snake_case__ : Tuple = os.path.join(A , weights_name.replace('.bin' , F'''-{len(A )+1:05d}-of-???.bin''' ) )
snake_case__ : Union[str, Any] = torch.load(switch_checkpoint_path + '-shared.pt' )['model']
remove_ignore_keys_(A )
snake_case__ : str = rename_fairseq_keys(A , A )
snake_case__ : Any = shared_weights['decoder.embed_tokens.weight']
sharded_state_dicts.append(shared_weights.keys() )
# If we only have the shared weights (dummy model/experts saved on the same file)
if len(A ) == 1:
snake_case__ : Any = os.path.join(A , A )
torch.save(A , A )
return {weights_name: sharded_state_dicts[0]}, None
else:
torch.save(A , A )
# Otherwise, let's build the index
snake_case__ : Tuple = {}
for idx, shard in enumerate(A ):
snake_case__ : Optional[int] = weights_name.replace('.bin' , F'''-{idx+1:05d}-of-{len(A ):05d}.bin''' )
snake_case__ : List[Any] = os.path.join(A , weights_name.replace('.bin' , F'''-{idx+1:05d}-of-???.bin''' ) )
os.rename(A , os.path.join(A , A ) )
for key in shard:
snake_case__ : Any = shard_file
# Add the metadata
snake_case__ : int = {'total_size': total_size}
snake_case__ : Dict = {'metadata': metadata, 'weight_map': weight_map}
with open(os.path.join(A , A ) , 'w' , encoding='utf-8' ) as f:
snake_case__ : Any = json.dumps(A , indent=2 , sort_keys=A ) + '\n'
f.write(A )
return metadata, index
if __name__ == "__main__":
a_ :int = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--nllb_moe_checkpoint_path",
default="/home/arthur_huggingface_co/fairseq/weights/checkpoints/model_moe_54b/checkpoint_2_300000",
type=str,
required=False,
help="Path to a directory containing a folder per layer. Follows the original Google format.",
)
parser.add_argument("--dtype", default="float32", type=str, required=False, help="dtype of the saved model")
parser.add_argument(
"--pytorch_dump_folder_path",
default="/home/arthur_huggingface_co/fairseq/weights/checkpoints/hf-converted-moe-54b",
type=str,
required=False,
help="Path to the output pytorch model.",
)
a_ :Optional[Any] = parser.parse_args()
a_ , a_ :Optional[Any] = shard_on_the_fly(
args.nllb_moe_checkpoint_path,
args.pytorch_dump_folder_path,
128,
args.dtype,
)
a_ :List[str] = NllbMoeConfig.from_pretrained(
"facebook/nllb-200-3.3B", encoder_sparse_step=4, decoder_sparse_step=4, num_experts=128
)
config.save_pretrained(args.pytorch_dump_folder_path)
a_ :int = NllbMoeModel.from_pretrained(args.pytorch_dump_folder_path)
print("Done")
model.save_pretrained(args.pytorch_dump_folder_path)
| 277 | 1 |
import os
import unittest
from transformers import BertTokenizerFast
from transformers.models.bert.tokenization_bert import (
VOCAB_FILES_NAMES,
BasicTokenizer,
BertTokenizer,
WordpieceTokenizer,
_is_control,
_is_punctuation,
_is_whitespace,
)
from transformers.testing_utils import require_tokenizers, slow
from ...test_tokenization_common import TokenizerTesterMixin, filter_non_english
@require_tokenizers
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = BertTokenizer
_SCREAMING_SNAKE_CASE = BertTokenizerFast
_SCREAMING_SNAKE_CASE = True
_SCREAMING_SNAKE_CASE = True
_SCREAMING_SNAKE_CASE = filter_non_english
def lowercase_ ( self : int ) ->Any:
super().setUp()
snake_case__ : List[Any] = [
'[UNK]',
'[CLS]',
'[SEP]',
'[PAD]',
'[MASK]',
'want',
'##want',
'##ed',
'wa',
'un',
'runn',
'##ing',
',',
'low',
'lowest',
]
snake_case__ : Tuple = os.path.join(self.tmpdirname, VOCAB_FILES_NAMES['vocab_file'] )
with open(self.vocab_file, 'w', encoding='utf-8' ) as vocab_writer:
vocab_writer.write(''.join([x + '\n' for x in vocab_tokens] ) )
def lowercase_ ( self : List[str], _snake_case : List[str] ) ->str:
snake_case__ : Optional[Any] = 'UNwant\u00E9d,running'
snake_case__ : Any = 'unwanted, running'
return input_text, output_text
def lowercase_ ( self : Any ) ->Dict:
snake_case__ : int = self.tokenizer_class(self.vocab_file )
snake_case__ : List[str] = tokenizer.tokenize('UNwant\u00E9d,running' )
self.assertListEqual(_snake_case, ['un', '##want', '##ed', ',', 'runn', '##ing'] )
self.assertListEqual(tokenizer.convert_tokens_to_ids(_snake_case ), [9, 6, 7, 1_2, 1_0, 1_1] )
def lowercase_ ( self : Optional[int] ) ->List[str]:
if not self.test_rust_tokenizer:
return
snake_case__ : Optional[int] = self.get_tokenizer()
snake_case__ : Dict = self.get_rust_tokenizer()
snake_case__ : List[str] = 'UNwant\u00E9d,running'
snake_case__ : List[str] = tokenizer.tokenize(_snake_case )
snake_case__ : Optional[int] = rust_tokenizer.tokenize(_snake_case )
self.assertListEqual(_snake_case, _snake_case )
snake_case__ : Dict = tokenizer.encode(_snake_case, add_special_tokens=_snake_case )
snake_case__ : Tuple = rust_tokenizer.encode(_snake_case, add_special_tokens=_snake_case )
self.assertListEqual(_snake_case, _snake_case )
snake_case__ : Optional[int] = self.get_rust_tokenizer()
snake_case__ : Union[str, Any] = tokenizer.encode(_snake_case )
snake_case__ : Dict = rust_tokenizer.encode(_snake_case )
self.assertListEqual(_snake_case, _snake_case )
# With lower casing
snake_case__ : List[str] = self.get_tokenizer(do_lower_case=_snake_case )
snake_case__ : Union[str, Any] = self.get_rust_tokenizer(do_lower_case=_snake_case )
snake_case__ : Tuple = 'UNwant\u00E9d,running'
snake_case__ : Any = tokenizer.tokenize(_snake_case )
snake_case__ : Tuple = rust_tokenizer.tokenize(_snake_case )
self.assertListEqual(_snake_case, _snake_case )
snake_case__ : str = tokenizer.encode(_snake_case, add_special_tokens=_snake_case )
snake_case__ : Dict = rust_tokenizer.encode(_snake_case, add_special_tokens=_snake_case )
self.assertListEqual(_snake_case, _snake_case )
snake_case__ : List[str] = self.get_rust_tokenizer()
snake_case__ : List[Any] = tokenizer.encode(_snake_case )
snake_case__ : Dict = rust_tokenizer.encode(_snake_case )
self.assertListEqual(_snake_case, _snake_case )
def lowercase_ ( self : Any ) ->Any:
snake_case__ : List[str] = BasicTokenizer()
self.assertListEqual(tokenizer.tokenize('ah\u535A\u63A8zz' ), ['ah', '\u535A', '\u63A8', 'zz'] )
def lowercase_ ( self : str ) ->Any:
snake_case__ : Optional[int] = BasicTokenizer(do_lower_case=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHeLLo!how \n Are yoU? ' ), ['hello', '!', 'how', 'are', 'you', '?'] )
self.assertListEqual(tokenizer.tokenize('H\u00E9llo' ), ['hello'] )
def lowercase_ ( self : int ) ->Any:
snake_case__ : Any = BasicTokenizer(do_lower_case=_snake_case, strip_accents=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHäLLo!how \n Are yoU? ' ), ['hällo', '!', 'how', 'are', 'you', '?'] )
self.assertListEqual(tokenizer.tokenize('H\u00E9llo' ), ['h\u00E9llo'] )
def lowercase_ ( self : Any ) ->str:
snake_case__ : Union[str, Any] = BasicTokenizer(do_lower_case=_snake_case, strip_accents=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHäLLo!how \n Are yoU? ' ), ['hallo', '!', 'how', 'are', 'you', '?'] )
self.assertListEqual(tokenizer.tokenize('H\u00E9llo' ), ['hello'] )
def lowercase_ ( self : Optional[Any] ) ->List[str]:
snake_case__ : List[Any] = BasicTokenizer(do_lower_case=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHäLLo!how \n Are yoU? ' ), ['hallo', '!', 'how', 'are', 'you', '?'] )
self.assertListEqual(tokenizer.tokenize('H\u00E9llo' ), ['hello'] )
def lowercase_ ( self : Optional[Any] ) ->Optional[Any]:
snake_case__ : Any = BasicTokenizer(do_lower_case=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHeLLo!how \n Are yoU? ' ), ['HeLLo', '!', 'how', 'Are', 'yoU', '?'] )
def lowercase_ ( self : Tuple ) ->Optional[int]:
snake_case__ : Any = BasicTokenizer(do_lower_case=_snake_case, strip_accents=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHäLLo!how \n Are yoU? ' ), ['HäLLo', '!', 'how', 'Are', 'yoU', '?'] )
def lowercase_ ( self : Tuple ) ->List[Any]:
snake_case__ : Optional[Any] = BasicTokenizer(do_lower_case=_snake_case, strip_accents=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHäLLo!how \n Are yoU? ' ), ['HaLLo', '!', 'how', 'Are', 'yoU', '?'] )
def lowercase_ ( self : Union[str, Any] ) ->Optional[Any]:
snake_case__ : str = BasicTokenizer(do_lower_case=_snake_case, never_split=['[UNK]'] )
self.assertListEqual(
tokenizer.tokenize(' \tHeLLo!how \n Are yoU? [UNK]' ), ['HeLLo', '!', 'how', 'Are', 'yoU', '?', '[UNK]'] )
def lowercase_ ( self : Optional[int] ) ->Union[str, Any]:
snake_case__ : Optional[int] = BasicTokenizer()
snake_case__ : Optional[Any] = 'a\n\'ll !!to?\'d of, can\'t.'
snake_case__ : Optional[Any] = ['a', '\'', 'll', '!', '!', 'to', '?', '\'', 'd', 'of', ',', 'can', '\'', 't', '.']
self.assertListEqual(tokenizer.tokenize(_snake_case ), _snake_case )
def lowercase_ ( self : List[str] ) ->List[Any]:
snake_case__ : int = ['[UNK]', '[CLS]', '[SEP]', 'want', '##want', '##ed', 'wa', 'un', 'runn', '##ing']
snake_case__ : Dict = {}
for i, token in enumerate(_snake_case ):
snake_case__ : int = i
snake_case__ : Tuple = WordpieceTokenizer(vocab=_snake_case, unk_token='[UNK]' )
self.assertListEqual(tokenizer.tokenize('' ), [] )
self.assertListEqual(tokenizer.tokenize('unwanted running' ), ['un', '##want', '##ed', 'runn', '##ing'] )
self.assertListEqual(tokenizer.tokenize('unwantedX running' ), ['[UNK]', 'runn', '##ing'] )
def lowercase_ ( self : List[str] ) ->Any:
self.assertTrue(_is_whitespace(' ' ) )
self.assertTrue(_is_whitespace('\t' ) )
self.assertTrue(_is_whitespace('\r' ) )
self.assertTrue(_is_whitespace('\n' ) )
self.assertTrue(_is_whitespace('\u00A0' ) )
self.assertFalse(_is_whitespace('A' ) )
self.assertFalse(_is_whitespace('-' ) )
def lowercase_ ( self : Optional[Any] ) ->Optional[int]:
self.assertTrue(_is_control('\u0005' ) )
self.assertFalse(_is_control('A' ) )
self.assertFalse(_is_control(' ' ) )
self.assertFalse(_is_control('\t' ) )
self.assertFalse(_is_control('\r' ) )
def lowercase_ ( self : Dict ) ->Tuple:
self.assertTrue(_is_punctuation('-' ) )
self.assertTrue(_is_punctuation('$' ) )
self.assertTrue(_is_punctuation('`' ) )
self.assertTrue(_is_punctuation('.' ) )
self.assertFalse(_is_punctuation('A' ) )
self.assertFalse(_is_punctuation(' ' ) )
def lowercase_ ( self : Dict ) ->Any:
snake_case__ : List[Any] = self.get_tokenizer()
snake_case__ : Dict = self.get_rust_tokenizer()
# Example taken from the issue https://github.com/huggingface/tokenizers/issues/340
self.assertListEqual([tokenizer.tokenize(_snake_case ) for t in ['Test', '\xad', 'test']], [['[UNK]'], [], ['[UNK]']] )
self.assertListEqual(
[rust_tokenizer.tokenize(_snake_case ) for t in ['Test', '\xad', 'test']], [['[UNK]'], [], ['[UNK]']] )
@slow
def lowercase_ ( self : Optional[int] ) ->Any:
snake_case__ : Tuple = self.tokenizer_class.from_pretrained('bert-base-uncased' )
snake_case__ : List[str] = tokenizer.encode('sequence builders', add_special_tokens=_snake_case )
snake_case__ : Union[str, Any] = tokenizer.encode('multi-sequence build', add_special_tokens=_snake_case )
snake_case__ : List[str] = tokenizer.build_inputs_with_special_tokens(_snake_case )
snake_case__ : Optional[int] = tokenizer.build_inputs_with_special_tokens(_snake_case, _snake_case )
assert encoded_sentence == [1_0_1] + text + [1_0_2]
assert encoded_pair == [1_0_1] + text + [1_0_2] + text_a + [1_0_2]
def lowercase_ ( self : Optional[int] ) ->List[Any]:
for tokenizer, pretrained_name, kwargs in self.tokenizers_list:
with self.subTest(F'''{tokenizer.__class__.__name__} ({pretrained_name})''' ):
snake_case__ : Union[str, Any] = self.rust_tokenizer_class.from_pretrained(_snake_case, **_snake_case )
snake_case__ : int = F'''A, naïve {tokenizer_r.mask_token} AllenNLP sentence.'''
snake_case__ : List[str] = tokenizer_r.encode_plus(
_snake_case, return_attention_mask=_snake_case, return_token_type_ids=_snake_case, return_offsets_mapping=_snake_case, add_special_tokens=_snake_case, )
snake_case__ : List[Any] = tokenizer_r.do_lower_case if hasattr(_snake_case, 'do_lower_case' ) else False
snake_case__ : List[str] = (
[
((0, 0), tokenizer_r.cls_token),
((0, 1), 'A'),
((1, 2), ','),
((3, 5), 'na'),
((5, 6), '##ï'),
((6, 8), '##ve'),
((9, 1_5), tokenizer_r.mask_token),
((1_6, 2_1), 'Allen'),
((2_1, 2_3), '##NL'),
((2_3, 2_4), '##P'),
((2_5, 3_3), 'sentence'),
((3_3, 3_4), '.'),
((0, 0), tokenizer_r.sep_token),
]
if not do_lower_case
else [
((0, 0), tokenizer_r.cls_token),
((0, 1), 'a'),
((1, 2), ','),
((3, 8), 'naive'),
((9, 1_5), tokenizer_r.mask_token),
((1_6, 2_1), 'allen'),
((2_1, 2_3), '##nl'),
((2_3, 2_4), '##p'),
((2_5, 3_3), 'sentence'),
((3_3, 3_4), '.'),
((0, 0), tokenizer_r.sep_token),
]
)
self.assertEqual(
[e[1] for e in expected_results], tokenizer_r.convert_ids_to_tokens(tokens['input_ids'] ) )
self.assertEqual([e[0] for e in expected_results], tokens['offset_mapping'] )
def lowercase_ ( self : int ) ->Optional[Any]:
snake_case__ : Optional[Any] = ['的', '人', '有']
snake_case__ : Union[str, Any] = ''.join(_snake_case )
for tokenizer, pretrained_name, kwargs in self.tokenizers_list:
with self.subTest(F'''{tokenizer.__class__.__name__} ({pretrained_name})''' ):
snake_case__ : int = True
snake_case__ : str = self.tokenizer_class.from_pretrained(_snake_case, **_snake_case )
snake_case__ : Union[str, Any] = self.rust_tokenizer_class.from_pretrained(_snake_case, **_snake_case )
snake_case__ : Any = tokenizer_p.encode(_snake_case, add_special_tokens=_snake_case )
snake_case__ : Union[str, Any] = tokenizer_r.encode(_snake_case, add_special_tokens=_snake_case )
snake_case__ : Any = tokenizer_r.convert_ids_to_tokens(_snake_case )
snake_case__ : Tuple = tokenizer_p.convert_ids_to_tokens(_snake_case )
# it is expected that each Chinese character is not preceded by "##"
self.assertListEqual(_snake_case, _snake_case )
self.assertListEqual(_snake_case, _snake_case )
snake_case__ : Optional[Any] = False
snake_case__ : Dict = self.rust_tokenizer_class.from_pretrained(_snake_case, **_snake_case )
snake_case__ : str = self.tokenizer_class.from_pretrained(_snake_case, **_snake_case )
snake_case__ : Union[str, Any] = tokenizer_r.encode(_snake_case, add_special_tokens=_snake_case )
snake_case__ : int = tokenizer_p.encode(_snake_case, add_special_tokens=_snake_case )
snake_case__ : Dict = tokenizer_r.convert_ids_to_tokens(_snake_case )
snake_case__ : Any = tokenizer_p.convert_ids_to_tokens(_snake_case )
# it is expected that only the first Chinese character is not preceded by "##".
snake_case__ : List[Any] = [
F'''##{token}''' if idx != 0 else token for idx, token in enumerate(_snake_case )
]
self.assertListEqual(_snake_case, _snake_case )
self.assertListEqual(_snake_case, _snake_case )
| 277 |
from typing import TYPE_CHECKING
from ...utils import (
OptionalDependencyNotAvailable,
_LazyModule,
is_sentencepiece_available,
is_tokenizers_available,
is_torch_available,
)
a_ :Optional[Any] = {"configuration_reformer": ["REFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP", "ReformerConfig"]}
try:
if not is_sentencepiece_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :str = ["ReformerTokenizer"]
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :int = ["ReformerTokenizerFast"]
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
a_ :List[str] = [
"REFORMER_PRETRAINED_MODEL_ARCHIVE_LIST",
"ReformerAttention",
"ReformerForMaskedLM",
"ReformerForQuestionAnswering",
"ReformerForSequenceClassification",
"ReformerLayer",
"ReformerModel",
"ReformerModelWithLMHead",
"ReformerPreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_reformer import REFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP, ReformerConfig
try:
if not is_sentencepiece_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_reformer import ReformerTokenizer
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_reformer_fast import ReformerTokenizerFast
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_reformer import (
REFORMER_PRETRAINED_MODEL_ARCHIVE_LIST,
ReformerAttention,
ReformerForMaskedLM,
ReformerForQuestionAnswering,
ReformerForSequenceClassification,
ReformerLayer,
ReformerModel,
ReformerModelWithLMHead,
ReformerPreTrainedModel,
)
else:
import sys
a_ :Optional[Any] = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 277 | 1 |
a_ :Tuple = 65_521
def lowercase_ (A : str ):
snake_case__ : str = 1
snake_case__ : Optional[Any] = 0
for plain_chr in plain_text:
snake_case__ : Tuple = (a + ord(A )) % MOD_ADLER
snake_case__ : Optional[Any] = (b + a) % MOD_ADLER
return (b << 1_6) | a
| 277 |
import itertools
import random
import unittest
import numpy as np
from transformers import BatchFeature, SpeechTaFeatureExtractor
from transformers.testing_utils import require_torch
from transformers.utils.import_utils import is_torch_available
from ...test_sequence_feature_extraction_common import SequenceFeatureExtractionTestMixin
if is_torch_available():
import torch
a_ :Any = random.Random()
def lowercase_ (A : int , A : Union[str, Any]=1.0 , A : List[str]=None , A : Any=None ):
if rng is None:
snake_case__ : List[str] = global_rng
snake_case__ : int = []
for batch_idx in range(shape[0] ):
values.append([] )
for _ in range(shape[1] ):
values[-1].append(rng.random() * scale )
return values
@require_torch
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
def __init__( self : Optional[Any], _snake_case : List[str], _snake_case : Tuple=7, _snake_case : Union[str, Any]=4_0_0, _snake_case : Any=2_0_0_0, _snake_case : Dict=1, _snake_case : Optional[Any]=0.0, _snake_case : List[Any]=1_6_0_0_0, _snake_case : List[Any]=True, _snake_case : List[Any]=8_0, _snake_case : Dict=1_6, _snake_case : str=6_4, _snake_case : Tuple="hann_window", _snake_case : Union[str, Any]=8_0, _snake_case : Optional[Any]=7_6_0_0, _snake_case : str=1e-10, _snake_case : Any=True, ) ->Union[str, Any]:
snake_case__ : Optional[int] = parent
snake_case__ : Optional[Any] = batch_size
snake_case__ : List[Any] = min_seq_length
snake_case__ : List[Any] = max_seq_length
snake_case__ : Any = (self.max_seq_length - self.min_seq_length) // (self.batch_size - 1)
snake_case__ : Tuple = feature_size
snake_case__ : List[Any] = padding_value
snake_case__ : Any = sampling_rate
snake_case__ : Dict = do_normalize
snake_case__ : Union[str, Any] = num_mel_bins
snake_case__ : Any = hop_length
snake_case__ : Any = win_length
snake_case__ : Any = win_function
snake_case__ : Optional[int] = fmin
snake_case__ : int = fmax
snake_case__ : Union[str, Any] = mel_floor
snake_case__ : Union[str, Any] = return_attention_mask
def lowercase_ ( self : Optional[int] ) ->List[str]:
return {
"feature_size": self.feature_size,
"padding_value": self.padding_value,
"sampling_rate": self.sampling_rate,
"do_normalize": self.do_normalize,
"num_mel_bins": self.num_mel_bins,
"hop_length": self.hop_length,
"win_length": self.win_length,
"win_function": self.win_function,
"fmin": self.fmin,
"fmax": self.fmax,
"mel_floor": self.mel_floor,
"return_attention_mask": self.return_attention_mask,
}
def lowercase_ ( self : Any, _snake_case : Optional[Any]=False, _snake_case : List[str]=False ) ->Union[str, Any]:
def _flatten(_snake_case : List[str] ):
return list(itertools.chain(*_snake_case ) )
if equal_length:
snake_case__ : Any = floats_list((self.batch_size, self.max_seq_length) )
else:
# make sure that inputs increase in size
snake_case__ : int = [
_flatten(floats_list((x, self.feature_size) ) )
for x in range(self.min_seq_length, self.max_seq_length, self.seq_length_diff )
]
if numpify:
snake_case__ : Any = [np.asarray(_snake_case ) for x in speech_inputs]
return speech_inputs
def lowercase_ ( self : Union[str, Any], _snake_case : str=False, _snake_case : Dict=False ) ->List[str]:
if equal_length:
snake_case__ : Optional[Any] = [floats_list((self.max_seq_length, self.num_mel_bins) ) for _ in range(self.batch_size )]
else:
# make sure that inputs increase in size
snake_case__ : List[str] = [
floats_list((x, self.num_mel_bins) )
for x in range(self.min_seq_length, self.max_seq_length, self.seq_length_diff )
]
if numpify:
snake_case__ : int = [np.asarray(_snake_case ) for x in speech_inputs]
return speech_inputs
@require_torch
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = SpeechTaFeatureExtractor
def lowercase_ ( self : int ) ->Union[str, Any]:
snake_case__ : List[str] = SpeechTaFeatureExtractionTester(self )
def lowercase_ ( self : Any, _snake_case : Dict ) ->Any:
self.assertTrue(np.all(np.mean(_snake_case, axis=0 ) < 1e-3 ) )
self.assertTrue(np.all(np.abs(np.var(_snake_case, axis=0 ) - 1 ) < 1e-3 ) )
def lowercase_ ( self : List[Any] ) ->Union[str, Any]:
# Tests that all call wrap to encode_plus and batch_encode_plus
snake_case__ : Optional[Any] = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
# create three inputs of length 800, 1000, and 1200
snake_case__ : int = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : Tuple = [np.asarray(_snake_case ) for speech_input in speech_inputs]
# Test not batched input
snake_case__ : str = feat_extract(speech_inputs[0], return_tensors='np' ).input_values
snake_case__ : List[str] = feat_extract(np_speech_inputs[0], return_tensors='np' ).input_values
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
# Test batched
snake_case__ : Any = feat_extract(_snake_case, return_tensors='np' ).input_values
snake_case__ : Union[str, Any] = feat_extract(_snake_case, return_tensors='np' ).input_values
for enc_seq_a, enc_seq_a in zip(_snake_case, _snake_case ):
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
def lowercase_ ( self : int ) ->Optional[int]:
snake_case__ : List[Any] = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : Tuple = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : int = ['longest', 'max_length', 'do_not_pad']
snake_case__ : List[str] = [None, 1_6_0_0, None]
for max_length, padding in zip(_snake_case, _snake_case ):
snake_case__ : Optional[int] = feat_extract(_snake_case, padding=_snake_case, max_length=_snake_case, return_tensors='np' )
snake_case__ : Optional[int] = processed.input_values
self._check_zero_mean_unit_variance(input_values[0][:8_0_0] )
self.assertTrue(input_values[0][8_0_0:].sum() < 1e-6 )
self._check_zero_mean_unit_variance(input_values[1][:1_0_0_0] )
self.assertTrue(input_values[0][1_0_0_0:].sum() < 1e-6 )
self._check_zero_mean_unit_variance(input_values[2][:1_2_0_0] )
def lowercase_ ( self : Union[str, Any] ) ->Optional[Any]:
snake_case__ : Optional[Any] = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : Tuple = range(8_0_0, 1_4_0_0, 2_0_0 )
snake_case__ : Optional[Any] = [floats_list((1, x) )[0] for x in lengths]
snake_case__ : Union[str, Any] = ['longest', 'max_length', 'do_not_pad']
snake_case__ : str = [None, 1_6_0_0, None]
for max_length, padding in zip(_snake_case, _snake_case ):
snake_case__ : List[str] = feat_extract(_snake_case, max_length=_snake_case, padding=_snake_case )
snake_case__ : Tuple = processed.input_values
self._check_zero_mean_unit_variance(input_values[0][:8_0_0] )
self._check_zero_mean_unit_variance(input_values[1][:1_0_0_0] )
self._check_zero_mean_unit_variance(input_values[2][:1_2_0_0] )
def lowercase_ ( self : List[Any] ) ->Optional[Any]:
snake_case__ : Any = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : str = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : Optional[Any] = feat_extract(
_snake_case, truncation=_snake_case, max_length=1_0_0_0, padding='max_length', return_tensors='np' )
snake_case__ : int = processed.input_values
self._check_zero_mean_unit_variance(input_values[0, :8_0_0] )
self._check_zero_mean_unit_variance(input_values[1] )
self._check_zero_mean_unit_variance(input_values[2] )
def lowercase_ ( self : int ) ->Union[str, Any]:
snake_case__ : str = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : Dict = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : str = feat_extract(
_snake_case, truncation=_snake_case, max_length=1_0_0_0, padding='longest', return_tensors='np' )
snake_case__ : Dict = processed.input_values
self._check_zero_mean_unit_variance(input_values[0, :8_0_0] )
self._check_zero_mean_unit_variance(input_values[1, :1_0_0_0] )
self._check_zero_mean_unit_variance(input_values[2] )
# make sure that if max_length < longest -> then pad to max_length
self.assertTrue(input_values.shape == (3, 1_0_0_0) )
snake_case__ : Tuple = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : List[str] = feat_extract(
_snake_case, truncation=_snake_case, max_length=2_0_0_0, padding='longest', return_tensors='np' )
snake_case__ : Optional[Any] = processed.input_values
self._check_zero_mean_unit_variance(input_values[0, :8_0_0] )
self._check_zero_mean_unit_variance(input_values[1, :1_0_0_0] )
self._check_zero_mean_unit_variance(input_values[2] )
# make sure that if max_length > longest -> then pad to longest
self.assertTrue(input_values.shape == (3, 1_2_0_0) )
def lowercase_ ( self : List[str] ) ->Dict:
snake_case__ : Dict = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
snake_case__ : List[Any] = np.random.rand(1_0_0 ).astype(np.floataa )
snake_case__ : int = np_speech_inputs.tolist()
for inputs in [py_speech_inputs, np_speech_inputs]:
snake_case__ : int = feature_extractor.pad([{'input_values': inputs}], return_tensors='np' )
self.assertTrue(np_processed.input_values.dtype == np.floataa )
snake_case__ : Optional[int] = feature_extractor.pad([{'input_values': inputs}], return_tensors='pt' )
self.assertTrue(pt_processed.input_values.dtype == torch.floataa )
def lowercase_ ( self : Optional[int] ) ->Optional[Any]:
# Tests that all call wrap to encode_plus and batch_encode_plus
snake_case__ : str = self.feature_extraction_class(**self.feat_extract_tester.prepare_feat_extract_dict() )
# create three inputs of length 800, 1000, and 1200
snake_case__ : List[Any] = [floats_list((1, x) )[0] for x in range(8_0_0, 1_4_0_0, 2_0_0 )]
snake_case__ : Dict = [np.asarray(_snake_case ) for speech_input in speech_inputs]
# Test feature size
snake_case__ : Optional[int] = feature_extractor(audio_target=_snake_case, padding=_snake_case, return_tensors='np' ).input_values
self.assertTrue(input_values.ndim == 3 )
self.assertTrue(input_values.shape[-1] == feature_extractor.num_mel_bins )
# Test not batched input
snake_case__ : Dict = feature_extractor(speech_inputs[0], return_tensors='np' ).input_values
snake_case__ : Any = feature_extractor(np_speech_inputs[0], return_tensors='np' ).input_values
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
# Test batched
snake_case__ : Dict = feature_extractor(_snake_case, return_tensors='np' ).input_values
snake_case__ : Dict = feature_extractor(_snake_case, return_tensors='np' ).input_values
for enc_seq_a, enc_seq_a in zip(_snake_case, _snake_case ):
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
# Test 2-D numpy arrays are batched.
snake_case__ : Optional[Any] = [floats_list((1, x) )[0] for x in (8_0_0, 8_0_0, 8_0_0)]
snake_case__ : int = np.asarray(_snake_case )
snake_case__ : Union[str, Any] = feature_extractor(_snake_case, return_tensors='np' ).input_values
snake_case__ : Union[str, Any] = feature_extractor(_snake_case, return_tensors='np' ).input_values
for enc_seq_a, enc_seq_a in zip(_snake_case, _snake_case ):
self.assertTrue(np.allclose(_snake_case, _snake_case, atol=1e-3 ) )
def lowercase_ ( self : Union[str, Any] ) ->str:
snake_case__ : int = self.feat_extract_tester.prepare_inputs_for_target()
snake_case__ : List[str] = self.feature_extraction_class(**self.feat_extract_dict )
snake_case__ : Optional[Any] = feat_extract.model_input_names[0]
snake_case__ : Tuple = BatchFeature({input_name: speech_inputs} )
self.assertTrue(all(len(_snake_case ) == len(_snake_case ) for x, y in zip(_snake_case, processed_features[input_name] ) ) )
snake_case__ : int = self.feat_extract_tester.prepare_inputs_for_target(equal_length=_snake_case )
snake_case__ : Union[str, Any] = BatchFeature({input_name: speech_inputs}, tensor_type='np' )
snake_case__ : Dict = processed_features[input_name]
if len(batch_features_input.shape ) < 3:
snake_case__ : List[str] = batch_features_input[:, :, None]
self.assertTrue(
batch_features_input.shape
== (self.feat_extract_tester.batch_size, len(speech_inputs[0] ), self.feat_extract_tester.num_mel_bins) )
@require_torch
def lowercase_ ( self : List[str] ) ->Any:
snake_case__ : int = self.feat_extract_tester.prepare_inputs_for_target(equal_length=_snake_case )
snake_case__ : Optional[Any] = self.feature_extraction_class(**self.feat_extract_dict )
snake_case__ : Tuple = feat_extract.model_input_names[0]
snake_case__ : List[Any] = BatchFeature({input_name: speech_inputs}, tensor_type='pt' )
snake_case__ : Tuple = processed_features[input_name]
if len(batch_features_input.shape ) < 3:
snake_case__ : Any = batch_features_input[:, :, None]
self.assertTrue(
batch_features_input.shape
== (self.feat_extract_tester.batch_size, len(speech_inputs[0] ), self.feat_extract_tester.num_mel_bins) )
@require_torch
def lowercase_ ( self : Optional[int] ) ->Tuple:
snake_case__ : Dict = self.feature_extraction_class(**self.feat_extract_dict )
snake_case__ : Union[str, Any] = self.feat_extract_tester.prepare_inputs_for_target()
snake_case__ : Optional[Any] = feat_extract.model_input_names[0]
snake_case__ : List[str] = BatchFeature({input_name: speech_inputs} )
snake_case__ : int = feat_extract.num_mel_bins # hack!
snake_case__ : Tuple = feat_extract.pad(_snake_case, padding='longest', return_tensors='np' )[input_name]
snake_case__ : Union[str, Any] = feat_extract.pad(_snake_case, padding='longest', return_tensors='pt' )[input_name]
self.assertTrue(abs(input_np.astype(np.floataa ).sum() - input_pt.numpy().astype(np.floataa ).sum() ) < 1e-2 )
def lowercase_ ( self : int ) ->Any:
snake_case__ : Any = self.feat_extract_dict
snake_case__ : List[Any] = True
snake_case__ : Union[str, Any] = self.feature_extraction_class(**_snake_case )
snake_case__ : Any = self.feat_extract_tester.prepare_inputs_for_target()
snake_case__ : List[Any] = [len(_snake_case ) for x in speech_inputs]
snake_case__ : Union[str, Any] = feat_extract.model_input_names[0]
snake_case__ : Optional[int] = BatchFeature({input_name: speech_inputs} )
snake_case__ : List[str] = feat_extract.num_mel_bins # hack!
snake_case__ : str = feat_extract.pad(_snake_case, padding='longest', return_tensors='np' )
self.assertIn('attention_mask', _snake_case )
self.assertListEqual(list(processed.attention_mask.shape ), list(processed[input_name].shape[:2] ) )
self.assertListEqual(processed.attention_mask.sum(-1 ).tolist(), _snake_case )
def lowercase_ ( self : Optional[int] ) ->str:
snake_case__ : int = self.feat_extract_dict
snake_case__ : List[str] = True
snake_case__ : Tuple = self.feature_extraction_class(**_snake_case )
snake_case__ : List[str] = self.feat_extract_tester.prepare_inputs_for_target()
snake_case__ : str = [len(_snake_case ) for x in speech_inputs]
snake_case__ : Optional[Any] = feat_extract.model_input_names[0]
snake_case__ : Optional[int] = BatchFeature({input_name: speech_inputs} )
snake_case__ : Optional[Any] = min(_snake_case )
snake_case__ : Union[str, Any] = feat_extract.num_mel_bins # hack!
snake_case__ : Tuple = feat_extract.pad(
_snake_case, padding='max_length', max_length=_snake_case, truncation=_snake_case, return_tensors='np' )
self.assertIn('attention_mask', _snake_case )
self.assertListEqual(
list(processed_pad.attention_mask.shape ), [processed_pad[input_name].shape[0], max_length] )
self.assertListEqual(
processed_pad.attention_mask[:, :max_length].sum(-1 ).tolist(), [max_length for x in speech_inputs] )
def lowercase_ ( self : List[Any], _snake_case : Optional[int] ) ->Optional[Any]:
from datasets import load_dataset
snake_case__ : str = load_dataset('hf-internal-testing/librispeech_asr_dummy', 'clean', split='validation' )
# automatic decoding with librispeech
snake_case__ : Dict = ds.sort('id' ).select(range(_snake_case ) )[:num_samples]['audio']
return [x["array"] for x in speech_samples]
def lowercase_ ( self : str ) ->str:
# fmt: off
snake_case__ : List[Any] = torch.tensor(
[2.3804e-03, 2.0752e-03, 1.9836e-03, 2.1057e-03, 1.6174e-03,
3.0518e-04, 9.1553e-05, 3.3569e-04, 9.7656e-04, 1.8311e-03,
2.0142e-03, 2.1057e-03, 1.7395e-03, 4.5776e-04, -3.9673e-04,
4.5776e-04, 1.0071e-03, 9.1553e-05, 4.8828e-04, 1.1597e-03,
7.3242e-04, 9.4604e-04, 1.8005e-03, 1.8311e-03, 8.8501e-04,
4.2725e-04, 4.8828e-04, 7.3242e-04, 1.0986e-03, 2.1057e-03] )
# fmt: on
snake_case__ : Union[str, Any] = self._load_datasamples(1 )
snake_case__ : Optional[int] = SpeechTaFeatureExtractor()
snake_case__ : List[Any] = feature_extractor(_snake_case, return_tensors='pt' ).input_values
self.assertEquals(input_values.shape, (1, 9_3_6_8_0) )
self.assertTrue(torch.allclose(input_values[0, :3_0], _snake_case, atol=1e-6 ) )
def lowercase_ ( self : Any ) ->str:
# fmt: off
snake_case__ : Optional[Any] = torch.tensor(
[-2.6_8_7_0, -3.0_1_0_4, -3.1_3_5_6, -3.5_3_5_2, -3.0_0_4_4, -3.0_3_5_3, -3.4_7_1_9, -3.6_7_7_7,
-3.1_5_2_0, -2.9_4_3_5, -2.6_5_5_3, -2.8_7_9_5, -2.9_9_4_4, -2.5_9_2_1, -3.0_2_7_9, -3.0_3_8_6,
-3.0_8_6_4, -3.1_2_9_1, -3.2_3_5_3, -2.7_4_4_4, -2.6_8_3_1, -2.7_2_8_7, -3.1_7_6_1, -3.1_5_7_1,
-3.2_7_2_6, -3.0_5_8_2, -3.1_0_0_7, -3.4_5_3_3, -3.4_6_9_5, -3.0_9_9_8] )
# fmt: on
snake_case__ : List[str] = self._load_datasamples(1 )
snake_case__ : str = SpeechTaFeatureExtractor()
snake_case__ : Optional[Any] = feature_extractor(audio_target=_snake_case, return_tensors='pt' ).input_values
self.assertEquals(input_values.shape, (1, 3_6_6, 8_0) )
self.assertTrue(torch.allclose(input_values[0, 0, :3_0], _snake_case, atol=1e-4 ) )
| 277 | 1 |
from dataclasses import dataclass, field
from typing import ClassVar, Dict
from ..features import Features, Value
from .base import TaskTemplate
@dataclass(frozen=lowerCAmelCase_ )
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = field(default="""language-modeling""" , metadata={"""include_in_asdict_even_if_is_default""": True} )
_SCREAMING_SNAKE_CASE = Features({"""text""": Value("""string""" )} )
_SCREAMING_SNAKE_CASE = Features({} )
_SCREAMING_SNAKE_CASE = "text"
@property
def lowercase_ ( self : List[Any] ) ->Dict[str, str]:
return {self.text_column: "text"}
| 277 |
# Copyright 2023 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from ..models.auto import AutoModelForSeqaSeqLM, AutoTokenizer
from .base import PipelineTool
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = """philschmid/bart-large-cnn-samsum"""
_SCREAMING_SNAKE_CASE = (
"""This is a tool that summarizes an English text. It takes an input `text` containing the text to summarize, """
"""and returns a summary of the text."""
)
_SCREAMING_SNAKE_CASE = """summarizer"""
_SCREAMING_SNAKE_CASE = AutoTokenizer
_SCREAMING_SNAKE_CASE = AutoModelForSeqaSeqLM
_SCREAMING_SNAKE_CASE = ["""text"""]
_SCREAMING_SNAKE_CASE = ["""text"""]
def lowercase_ ( self : Optional[Any], _snake_case : str ) ->Any:
return self.pre_processor(_snake_case, return_tensors='pt', truncation=_snake_case )
def lowercase_ ( self : int, _snake_case : List[Any] ) ->Any:
return self.model.generate(**_snake_case )[0]
def lowercase_ ( self : int, _snake_case : int ) ->str:
return self.pre_processor.decode(_snake_case, skip_special_tokens=_snake_case, clean_up_tokenization_spaces=_snake_case )
| 277 | 1 |
import argparse
import json
from collections import OrderedDict
from pathlib import Path
import requests
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import PoolFormerConfig, PoolFormerForImageClassification, PoolFormerImageProcessor
from transformers.utils import logging
logging.set_verbosity_info()
a_ :Optional[int] = logging.get_logger(__name__)
def lowercase_ (A : int , A : Optional[Any] , A : Any , A : Any ):
snake_case__ : str = original_name.split('.' )[0]
snake_case__ : List[str] = key.split('.' )
snake_case__ : Tuple = int(key_list[key_list.index(A ) - 2] )
snake_case__ : Dict = int(key_list[key_list.index(A ) - 1] )
snake_case__ : Any = orig_block_num - offset
snake_case__ : Dict = key.replace(F'''{orig_block_num}.{layer_num}.{original_name}''' , F'''block.{new_block_num}.{layer_num}.{new_name}''' )
return key
def lowercase_ (A : Optional[Any] ):
snake_case__ : Dict = OrderedDict()
snake_case__ , snake_case__ : int = 0, 0
for key, value in state_dict.items():
if key.startswith('network' ):
snake_case__ : str = key.replace('network' , 'poolformer.encoder' )
if "proj" in key:
# Works for the first embedding as well as the internal embedding layers
if key.endswith('bias' ) and "patch_embed" not in key:
patch_emb_offset += 1
snake_case__ : Dict = key[: key.find('proj' )]
snake_case__ : int = key.replace(A , F'''patch_embeddings.{total_embed_found}.''' )
snake_case__ : Dict = key.replace('proj' , 'projection' )
if key.endswith('bias' ):
total_embed_found += 1
if "patch_embeddings" in key:
snake_case__ : Dict = 'poolformer.encoder.' + key
if "mlp.fc1" in key:
snake_case__ : Dict = replace_key_with_offset(A , A , 'mlp.fc1' , 'output.conv1' )
if "mlp.fc2" in key:
snake_case__ : List[Any] = replace_key_with_offset(A , A , 'mlp.fc2' , 'output.conv2' )
if "norm1" in key:
snake_case__ : List[str] = replace_key_with_offset(A , A , 'norm1' , 'before_norm' )
if "norm2" in key:
snake_case__ : Dict = replace_key_with_offset(A , A , 'norm2' , 'after_norm' )
if "layer_scale_1" in key:
snake_case__ : Optional[Any] = replace_key_with_offset(A , A , 'layer_scale_1' , 'layer_scale_1' )
if "layer_scale_2" in key:
snake_case__ : Tuple = replace_key_with_offset(A , A , 'layer_scale_2' , 'layer_scale_2' )
if "head" in key:
snake_case__ : Union[str, Any] = key.replace('head' , 'classifier' )
snake_case__ : int = value
return new_state_dict
def lowercase_ ():
snake_case__ : Dict = 'http://images.cocodataset.org/val2017/000000039769.jpg'
snake_case__ : List[str] = Image.open(requests.get(A , stream=A ).raw )
return image
@torch.no_grad()
def lowercase_ (A : Union[str, Any] , A : Union[str, Any] , A : int ):
snake_case__ : Any = PoolFormerConfig()
# set attributes based on model_name
snake_case__ : str = 'huggingface/label-files'
snake_case__ : List[Any] = model_name[-3:]
snake_case__ : Optional[int] = 1_0_0_0
snake_case__ : Tuple = 'imagenet-1k-id2label.json'
snake_case__ : Union[str, Any] = (1, 1_0_0_0)
# set config attributes
snake_case__ : Optional[int] = json.load(open(hf_hub_download(A , A , repo_type='dataset' ) , 'r' ) )
snake_case__ : Any = {int(A ): v for k, v in idalabel.items()}
snake_case__ : int = idalabel
snake_case__ : List[str] = {v: k for k, v in idalabel.items()}
if size == "s12":
snake_case__ : str = [2, 2, 6, 2]
snake_case__ : Optional[int] = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : Union[str, Any] = 4.0
snake_case__ : str = 0.9
elif size == "s24":
snake_case__ : List[str] = [4, 4, 1_2, 4]
snake_case__ : Any = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : List[str] = 4.0
snake_case__ : Any = 0.9
elif size == "s36":
snake_case__ : int = [6, 6, 1_8, 6]
snake_case__ : int = [6_4, 1_2_8, 3_2_0, 5_1_2]
snake_case__ : Dict = 4.0
snake_case__ : Dict = 1e-6
snake_case__ : Any = 0.9
elif size == "m36":
snake_case__ : int = [6, 6, 1_8, 6]
snake_case__ : Dict = [9_6, 1_9_2, 3_8_4, 7_6_8]
snake_case__ : Tuple = 4.0
snake_case__ : Union[str, Any] = 1e-6
snake_case__ : str = 0.95
elif size == "m48":
snake_case__ : Union[str, Any] = [8, 8, 2_4, 8]
snake_case__ : Optional[int] = [9_6, 1_9_2, 3_8_4, 7_6_8]
snake_case__ : Optional[Any] = 4.0
snake_case__ : int = 1e-6
snake_case__ : Optional[Any] = 0.95
else:
raise ValueError(F'''Size {size} not supported''' )
# load image processor
snake_case__ : List[Any] = PoolFormerImageProcessor(crop_pct=A )
# Prepare image
snake_case__ : Optional[Any] = prepare_img()
snake_case__ : Optional[Any] = image_processor(images=A , return_tensors='pt' ).pixel_values
logger.info(F'''Converting model {model_name}...''' )
# load original state dict
snake_case__ : Optional[Any] = torch.load(A , map_location=torch.device('cpu' ) )
# rename keys
snake_case__ : Union[str, Any] = rename_keys(A )
# create HuggingFace model and load state dict
snake_case__ : str = PoolFormerForImageClassification(A )
model.load_state_dict(A )
model.eval()
# Define image processor
snake_case__ : Union[str, Any] = PoolFormerImageProcessor(crop_pct=A )
snake_case__ : Any = image_processor(images=prepare_img() , return_tensors='pt' ).pixel_values
# forward pass
snake_case__ : List[Any] = model(A )
snake_case__ : List[Any] = outputs.logits
# define expected logit slices for different models
if size == "s12":
snake_case__ : List[Any] = torch.tensor([-0.3045, -0.6758, -0.4869] )
elif size == "s24":
snake_case__ : Optional[int] = torch.tensor([0.4402, -0.1374, -0.8045] )
elif size == "s36":
snake_case__ : Optional[Any] = torch.tensor([-0.6080, -0.5133, -0.5898] )
elif size == "m36":
snake_case__ : Any = torch.tensor([0.3952, 0.2263, -1.2668] )
elif size == "m48":
snake_case__ : Optional[int] = torch.tensor([0.1167, -0.0656, -0.3423] )
else:
raise ValueError(F'''Size {size} not supported''' )
# verify logits
assert logits.shape == expected_shape
assert torch.allclose(logits[0, :3] , A , atol=1e-2 )
# finally, save model and image processor
logger.info(F'''Saving PyTorch model and image processor to {pytorch_dump_folder_path}...''' )
Path(A ).mkdir(exist_ok=A )
model.save_pretrained(A )
print(F'''Saving image processor to {pytorch_dump_folder_path}''' )
image_processor.save_pretrained(A )
if __name__ == "__main__":
a_ :Union[str, Any] = argparse.ArgumentParser()
parser.add_argument(
"--model_name",
default="poolformer_s12",
type=str,
help="Name of the model you'd like to convert.",
)
parser.add_argument(
"--checkpoint_path", default=None, type=str, help="Path to the original PyTorch checkpoint (.pth file)."
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to the folder to output PyTorch model."
)
a_ :List[Any] = parser.parse_args()
convert_poolformer_checkpoint(args.model_name, args.checkpoint_path, args.pytorch_dump_folder_path)
| 277 |
import argparse
import torch
from transformers import LxmertConfig, LxmertForPreTraining, load_tf_weights_in_lxmert
from transformers.utils import logging
logging.set_verbosity_info()
def lowercase_ (A : str , A : List[Any] , A : Any ):
# Initialise PyTorch model
snake_case__ : List[Any] = LxmertConfig.from_json_file(A )
print(F'''Building PyTorch model from configuration: {config}''' )
snake_case__ : List[str] = LxmertForPreTraining(A )
# Load weights from tf checkpoint
load_tf_weights_in_lxmert(A , A , A )
# Save pytorch-model
print(F'''Save PyTorch model to {pytorch_dump_path}''' )
torch.save(model.state_dict() , A )
if __name__ == "__main__":
a_ :Union[str, Any] = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--tf_checkpoint_path", default=None, type=str, required=True, help="Path to the TensorFlow checkpoint path."
)
parser.add_argument(
"--config_file",
default=None,
type=str,
required=True,
help="The config json file corresponding to the pre-trained model. \nThis specifies the model architecture.",
)
parser.add_argument(
"--pytorch_dump_path", default=None, type=str, required=True, help="Path to the output PyTorch model."
)
a_ :Optional[int] = parser.parse_args()
convert_tf_checkpoint_to_pytorch(args.tf_checkpoint_path, args.config_file, args.pytorch_dump_path)
| 277 | 1 |
import json
from typing import List, Optional, Tuple
from tokenizers import normalizers
from ...tokenization_utils_fast import PreTrainedTokenizerFast
from ...utils import logging
from .tokenization_mobilebert import MobileBertTokenizer
a_ :Optional[Any] = logging.get_logger(__name__)
a_ :Optional[int] = {"vocab_file": "vocab.txt", "tokenizer_file": "tokenizer.json"}
a_ :Any = {
"vocab_file": {"mobilebert-uncased": "https://huggingface.co/google/mobilebert-uncased/resolve/main/vocab.txt"},
"tokenizer_file": {
"mobilebert-uncased": "https://huggingface.co/google/mobilebert-uncased/resolve/main/tokenizer.json"
},
}
a_ :str = {"mobilebert-uncased": 512}
a_ :List[Any] = {}
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = VOCAB_FILES_NAMES
_SCREAMING_SNAKE_CASE = PRETRAINED_VOCAB_FILES_MAP
_SCREAMING_SNAKE_CASE = PRETRAINED_INIT_CONFIGURATION
_SCREAMING_SNAKE_CASE = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES
_SCREAMING_SNAKE_CASE = MobileBertTokenizer
def __init__( self : Tuple, _snake_case : Optional[int]=None, _snake_case : List[Any]=None, _snake_case : str=True, _snake_case : Dict="[UNK]", _snake_case : List[Any]="[SEP]", _snake_case : Union[str, Any]="[PAD]", _snake_case : Optional[Any]="[CLS]", _snake_case : Union[str, Any]="[MASK]", _snake_case : Optional[Any]=True, _snake_case : Optional[int]=None, **_snake_case : str, ) ->str:
super().__init__(
_snake_case, tokenizer_file=_snake_case, do_lower_case=_snake_case, unk_token=_snake_case, sep_token=_snake_case, pad_token=_snake_case, cls_token=_snake_case, mask_token=_snake_case, tokenize_chinese_chars=_snake_case, strip_accents=_snake_case, **_snake_case, )
snake_case__ : Union[str, Any] = json.loads(self.backend_tokenizer.normalizer.__getstate__() )
if (
normalizer_state.get('lowercase', _snake_case ) != do_lower_case
or normalizer_state.get('strip_accents', _snake_case ) != strip_accents
or normalizer_state.get('handle_chinese_chars', _snake_case ) != tokenize_chinese_chars
):
snake_case__ : Dict = getattr(_snake_case, normalizer_state.pop('type' ) )
snake_case__ : Union[str, Any] = do_lower_case
snake_case__ : str = strip_accents
snake_case__ : Tuple = tokenize_chinese_chars
snake_case__ : int = normalizer_class(**_snake_case )
snake_case__ : List[Any] = do_lower_case
def lowercase_ ( self : Tuple, _snake_case : List[str], _snake_case : Tuple=None ) ->Optional[Any]:
snake_case__ : List[Any] = [self.cls_token_id] + token_ids_a + [self.sep_token_id]
if token_ids_a:
output += token_ids_a + [self.sep_token_id]
return output
def lowercase_ ( self : Optional[int], _snake_case : List[int], _snake_case : Optional[List[int]] = None ) ->List[int]:
snake_case__ : Dict = [self.sep_token_id]
snake_case__ : Any = [self.cls_token_id]
if token_ids_a is None:
return len(cls + token_ids_a + sep ) * [0]
return len(cls + token_ids_a + sep ) * [0] + len(token_ids_a + sep ) * [1]
def lowercase_ ( self : Optional[Any], _snake_case : str, _snake_case : Optional[str] = None ) ->Tuple[str]:
snake_case__ : List[str] = self._tokenizer.model.save(_snake_case, name=_snake_case )
return tuple(_snake_case )
| 277 |
import argparse
import fairseq
import torch
from torch import nn
from transformers import (
MBartaaTokenizer,
MBartConfig,
MBartForCausalLM,
SpeechEncoderDecoderConfig,
SpeechEncoderDecoderModel,
WavaVecaConfig,
WavaVecaFeatureExtractor,
WavaVecaModel,
logging,
)
logging.set_verbosity_info()
a_ :Tuple = logging.get_logger(__name__)
a_ :List[Any] = {
"post_extract_proj": "feature_projection.projection",
"encoder.pos_conv.0": "encoder.pos_conv_embed.conv",
"self_attn.k_proj": "encoder.layers.*.attention.k_proj",
"self_attn.v_proj": "encoder.layers.*.attention.v_proj",
"self_attn.q_proj": "encoder.layers.*.attention.q_proj",
"self_attn.out_proj": "encoder.layers.*.attention.out_proj",
"self_attn_layer_norm": "encoder.layers.*.layer_norm",
"fc1": "encoder.layers.*.feed_forward.intermediate_dense",
"fc2": "encoder.layers.*.feed_forward.output_dense",
"final_layer_norm": "encoder.layers.*.final_layer_norm",
"encoder.layer_norm": "encoder.layer_norm",
"w2v_model.layer_norm": "feature_projection.layer_norm",
"quantizer.weight_proj": "quantizer.weight_proj",
"quantizer.vars": "quantizer.codevectors",
"project_q": "project_q",
"final_proj": "project_hid",
"w2v_encoder.proj": "lm_head",
"mask_emb": "masked_spec_embed",
}
a_ :Optional[int] = [
"lm_head",
"quantizer.weight_proj",
"quantizer.codevectors",
"project_q",
"project_hid",
]
def lowercase_ (A : Union[str, Any] , A : str , A : Dict , A : Optional[Any] , A : Optional[Any] ):
for attribute in key.split('.' ):
snake_case__ : Any = getattr(A , A )
if weight_type is not None:
snake_case__ : Optional[Any] = getattr(A , A ).shape
else:
snake_case__ : Optional[int] = hf_pointer.shape
assert hf_shape == value.shape, (
F'''Shape of hf {key + "." + weight_type if weight_type is not None else ""} is {hf_shape}, but should be'''
F''' {value.shape} for {full_name}'''
)
if weight_type == "weight":
snake_case__ : Tuple = value
elif weight_type == "weight_g":
snake_case__ : Tuple = value
elif weight_type == "weight_v":
snake_case__ : List[Any] = value
elif weight_type == "bias":
snake_case__ : List[Any] = value
else:
snake_case__ : Optional[Any] = value
logger.info(F'''{key + "." + weight_type if weight_type is not None else ""} was initialized from {full_name}.''' )
def lowercase_ (A : str , A : Any ):
snake_case__ : Union[str, Any] = []
snake_case__ : Union[str, Any] = fairseq_model.state_dict()
snake_case__ : Union[str, Any] = hf_model.feature_extractor
snake_case__ : Any = hf_model.adapter
for name, value in fairseq_dict.items():
snake_case__ : Any = False
if "conv_layers" in name:
load_conv_layer(
A , A , A , A , hf_model.config.feat_extract_norm == 'group' , )
snake_case__ : List[Any] = True
elif any(x in name for x in ['adaptor', 'w2v_encoder.proj.', 'w2v_proj_ln.'] ):
load_adapter(A , A , A , A )
snake_case__ : Optional[Any] = True
else:
for key, mapped_key in MAPPING.items():
if key in name or key.split('w2v_model.' )[-1] == name.split('.' )[0]:
snake_case__ : Tuple = True
if "*" in mapped_key:
snake_case__ : List[Any] = name.split(A )[0].split('.' )[-2]
snake_case__ : Optional[int] = mapped_key.replace('*' , A )
if "weight_g" in name:
snake_case__ : Optional[int] = 'weight_g'
elif "weight_v" in name:
snake_case__ : Optional[Any] = 'weight_v'
elif "bias" in name:
snake_case__ : Union[str, Any] = 'bias'
elif "weight" in name:
snake_case__ : Optional[int] = 'weight'
else:
snake_case__ : Tuple = None
set_recursively(A , A , A , A , A )
continue
if not is_used:
unused_weights.append(A )
logger.warning(F'''Unused weights: {unused_weights}''' )
def lowercase_ (A : Union[str, Any] , A : Any , A : str , A : str , A : int ):
snake_case__ : str = full_name.split('conv_layers.' )[-1]
snake_case__ : Optional[int] = name.split('.' )
snake_case__ : Tuple = int(items[0] )
snake_case__ : Any = int(items[1] )
if type_id == 0:
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.bias.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.bias.data.shape} was found.'''
)
snake_case__ : Union[str, Any] = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.weight.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor.conv_layers[layer_id].conv.weight.data.shape} was found.'''
)
snake_case__ : Union[str, Any] = value
logger.info(F'''Feat extract conv layer {layer_id} was initialized from {full_name}.''' )
elif (type_id == 2 and not use_group_norm) or (type_id == 2 and layer_id == 0 and use_group_norm):
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape, (
F'''{full_name} has size {value.shape}, but {feature_extractor[layer_id].layer_norm.bias.data.shape} was'''
" found."
)
snake_case__ : Optional[int] = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape, (
F'''{full_name} has size {value.shape}, but'''
F''' {feature_extractor[layer_id].layer_norm.weight.data.shape} was found.'''
)
snake_case__ : Optional[Any] = value
logger.info(F'''Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}.''' )
else:
unused_weights.append(A )
def lowercase_ (A : Optional[Any] , A : Any , A : Tuple , A : Any ):
snake_case__ : List[str] = full_name.split('adaptor.' )[-1]
snake_case__ : Tuple = name.split('.' )
if items[1].isdigit():
snake_case__ : Optional[int] = int(items[1] )
else:
snake_case__ : Any = None
if "adaptor" not in full_name:
if "proj_ln" in full_name:
# has to be layer norm
if "bias" in name:
assert (
value.shape == adapter.proj_layer_norm.bias.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj_layer_norm.bias.data.shape} was found.'''
snake_case__ : List[Any] = value
logger.info(F'''Adapter proj layer norm bias was initialized from {full_name}.''' )
if "weight" in name:
assert (
value.shape == adapter.proj_layer_norm.weight.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj_layer_norm.weight.data.shape} was found.'''
snake_case__ : int = value
else:
# has to be projection layer
if "bias" in name:
assert (
value.shape == adapter.proj.bias.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj.bias.data.shape} was found.'''
snake_case__ : str = value
logger.info(F'''Adapter proj layer bias was initialized from {full_name}.''' )
if "weight" in name:
assert (
value.shape == adapter.proj.weight.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.proj.weight.data.shape} was found.'''
snake_case__ : Dict = value
logger.info(F'''Adapter proj layer weight was initialized from {full_name}.''' )
elif isinstance(A , A ):
if "bias" in name:
assert (
value.shape == adapter.layers[layer_id].conv.bias.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.layers[layer_id].conv.bias.data.shape} was found.'''
snake_case__ : List[str] = value
logger.info(F'''Adapter layer {layer_id} bias was initialized from {full_name}.''' )
elif "weight" in name:
assert (
value.shape == adapter.layers[layer_id].conv.weight.data.shape
), F'''{full_name} has size {value.shape}, but {adapter.layers[layer_id].conv.weight.data.shape} was found.'''
snake_case__ : List[str] = value
logger.info(F'''Adapter layer {layer_id} bias was initialized from {full_name}.''' )
else:
unused_weights.append(A )
def lowercase_ (A : int ):
snake_case__ , snake_case__ : Union[str, Any] = emb.weight.shape
snake_case__ : int = nn.Linear(A , A , bias=A )
snake_case__ : Optional[Any] = emb.weight.data
return lin_layer
@torch.no_grad()
def lowercase_ (A : Tuple , A : Tuple , A : Any , A : Optional[Any] , A : int , A : Optional[Any] , A : Union[str, Any] , A : Union[str, Any] , A : Optional[Any] , A : List[Any] , A : Union[str, Any] , ):
snake_case__ : Optional[Any] = WavaVecaConfig.from_pretrained(
A , add_adapter=A , adapter_stride=A , adapter_kernel_size=A , use_auth_token=A , output_hidden_size=A , )
snake_case__ : Dict = MBartConfig.from_pretrained(A )
# load model
snake_case__ , snake_case__ , snake_case__ : Any = fairseq.checkpoint_utils.load_model_ensemble_and_task(
[checkpoint_path] , arg_overrides={
'config_yaml': config_yaml_path,
'data': '/'.join(dict_path.split('/' )[:-1] ),
'w2v_path': checkpoint_path,
'load_pretrained_decoder_from': None,
} , )
snake_case__ : List[Any] = model[0].eval()
# load feature extractor
snake_case__ : str = WavaVecaFeatureExtractor.from_pretrained(A , use_auth_token=A )
# set weights for wav2vec2 encoder
snake_case__ : List[str] = WavaVecaModel(A )
recursively_load_weights_wavaveca(model.encoder , A )
# load decoder weights
snake_case__ : Any = MBartForCausalLM(A )
snake_case__ , snake_case__ : int = hf_decoder.model.decoder.load_state_dict(model.decoder.state_dict() , strict=A )
logger.warning(F'''The following keys are missing when loading the decoder weights: {missing_keys}''' )
logger.warning(F'''The following keys are unexpected when loading the decoder weights: {unexpected_keys}''' )
snake_case__ : Union[str, Any] = SpeechEncoderDecoderModel(encoder=A , decoder=A )
snake_case__ : str = False
snake_case__ : int = MBartaaTokenizer(A )
tokenizer.save_pretrained(A )
snake_case__ : Any = hf_wavavec.config.to_dict()
snake_case__ : Tuple = tokenizer.pad_token_id
snake_case__ : Union[str, Any] = tokenizer.bos_token_id
snake_case__ : Dict = tokenizer.eos_token_id
snake_case__ : Optional[int] = 'mbart50'
snake_case__ : Union[str, Any] = 'wav2vec2'
snake_case__ : List[str] = tokenizer.eos_token_id
snake_case__ : Union[str, Any] = 2_5_0_0_0_4
snake_case__ : int = tokenizer.eos_token_id
snake_case__ : Union[str, Any] = SpeechEncoderDecoderConfig.from_dict(A )
hf_wavavec.save_pretrained(A )
feature_extractor.save_pretrained(A )
if __name__ == "__main__":
a_ :str = argparse.ArgumentParser()
parser.add_argument("--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model.")
parser.add_argument("--checkpoint_path", default=None, type=str, help="Path to fairseq checkpoint")
parser.add_argument("--dict_path", default=None, type=str, help="Path to dict of fine-tuned model")
parser.add_argument("--config_yaml_path", default=None, type=str, help="Path to yaml file of fine-tuned model")
parser.add_argument(
"--encoder_config_path",
default="facebook/wav2vec2-xls-r-1b",
type=str,
help="Path to hf encoder wav2vec2 checkpoint config",
)
parser.add_argument(
"--decoder_config_path",
default="facebook/mbart-large-50-one-to-many-mmt",
type=str,
help="Path to hf decoder checkpoint config",
)
parser.add_argument("--add_adapter", default=True, type=bool, help="whethere to add model adapter layers")
parser.add_argument("--adapter_stride", default=2, type=int, help="stride of adapter layers")
parser.add_argument("--adapter_kernel_size", default=3, type=int, help="kernel size of adapter layers")
parser.add_argument("--encoder_output_dim", default=1_024, type=int, help="encoder output dim")
parser.add_argument("--start_token_id", default=250_004, type=int, help="`decoder_start_token_id` of model config")
a_ :Union[str, Any] = parser.parse_args()
convert_wavaveca_checkpoint(
args.checkpoint_path,
args.pytorch_dump_folder_path,
args.dict_path,
args.config_yaml_path,
encoder_config_path=args.encoder_config_path,
decoder_config_path=args.decoder_config_path,
add_adapter=args.add_adapter,
adapter_kernel_size=args.adapter_kernel_size,
adapter_stride=args.adapter_stride,
decoder_start_token_id=args.start_token_id,
encoder_output_dim=args.encoder_output_dim,
)
| 277 | 1 |
from __future__ import annotations
from collections.abc import MutableSequence
class snake_case__ :
"""simple docstring"""
def __init__( self : Dict, _snake_case : int, _snake_case : MutableSequence[float] ) ->None:
if len(_snake_case ) != degree + 1:
raise ValueError(
'The number of coefficients should be equal to the degree + 1.' )
snake_case__ : list[float] = list(_snake_case )
snake_case__ : Any = degree
def __add__( self : Dict, _snake_case : Polynomial ) ->Polynomial:
if self.degree > polynomial_a.degree:
snake_case__ : Tuple = self.coefficients[:]
for i in range(polynomial_a.degree + 1 ):
coefficients[i] += polynomial_a.coefficients[i]
return Polynomial(self.degree, _snake_case )
else:
snake_case__ : Union[str, Any] = polynomial_a.coefficients[:]
for i in range(self.degree + 1 ):
coefficients[i] += self.coefficients[i]
return Polynomial(polynomial_a.degree, _snake_case )
def __sub__( self : Dict, _snake_case : Polynomial ) ->Polynomial:
return self + polynomial_a * Polynomial(0, [-1] )
def __neg__( self : str ) ->Polynomial:
return Polynomial(self.degree, [-c for c in self.coefficients] )
def __mul__( self : str, _snake_case : Polynomial ) ->Polynomial:
snake_case__ : list[float] = [0] * (self.degree + polynomial_a.degree + 1)
for i in range(self.degree + 1 ):
for j in range(polynomial_a.degree + 1 ):
coefficients[i + j] += (
self.coefficients[i] * polynomial_a.coefficients[j]
)
return Polynomial(self.degree + polynomial_a.degree, _snake_case )
def lowercase_ ( self : List[Any], _snake_case : int | float ) ->int | float:
snake_case__ : int | float = 0
for i in range(self.degree + 1 ):
result += self.coefficients[i] * (substitution**i)
return result
def __str__( self : Any ) ->str:
snake_case__ : str = ''
for i in range(self.degree, -1, -1 ):
if self.coefficients[i] == 0:
continue
elif self.coefficients[i] > 0:
if polynomial:
polynomial += " + "
else:
polynomial += " - "
if i == 0:
polynomial += str(abs(self.coefficients[i] ) )
elif i == 1:
polynomial += str(abs(self.coefficients[i] ) ) + "x"
else:
polynomial += str(abs(self.coefficients[i] ) ) + "x^" + str(_snake_case )
return polynomial
def __repr__( self : Any ) ->str:
return self.__str__()
def lowercase_ ( self : Dict ) ->Polynomial:
snake_case__ : list[float] = [0] * self.degree
for i in range(self.degree ):
snake_case__ : int = self.coefficients[i + 1] * (i + 1)
return Polynomial(self.degree - 1, _snake_case )
def lowercase_ ( self : Any, _snake_case : int | float = 0 ) ->Polynomial:
snake_case__ : list[float] = [0] * (self.degree + 2)
snake_case__ : List[Any] = constant
for i in range(self.degree + 1 ):
snake_case__ : Dict = self.coefficients[i] / (i + 1)
return Polynomial(self.degree + 1, _snake_case )
def __eq__( self : List[Any], _snake_case : object ) ->bool:
if not isinstance(_snake_case, _snake_case ):
return False
if self.degree != polynomial_a.degree:
return False
for i in range(self.degree + 1 ):
if self.coefficients[i] != polynomial_a.coefficients[i]:
return False
return True
def __ne__( self : List[str], _snake_case : object ) ->bool:
return not self.__eq__(_snake_case )
| 277 |
from collections import OrderedDict
from typing import TYPE_CHECKING, Any, Mapping, Optional, Union
from ...configuration_utils import PretrainedConfig
from ...onnx import OnnxConfig
from ...utils import logging
if TYPE_CHECKING:
from ... import FeatureExtractionMixin, PreTrainedTokenizerBase, TensorType
a_ :Tuple = logging.get_logger(__name__)
a_ :Union[str, Any] = {
"microsoft/deberta-v2-xlarge": "https://huggingface.co/microsoft/deberta-v2-xlarge/resolve/main/config.json",
"microsoft/deberta-v2-xxlarge": "https://huggingface.co/microsoft/deberta-v2-xxlarge/resolve/main/config.json",
"microsoft/deberta-v2-xlarge-mnli": (
"https://huggingface.co/microsoft/deberta-v2-xlarge-mnli/resolve/main/config.json"
),
"microsoft/deberta-v2-xxlarge-mnli": (
"https://huggingface.co/microsoft/deberta-v2-xxlarge-mnli/resolve/main/config.json"
),
}
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = """deberta-v2"""
def __init__( self : Union[str, Any], _snake_case : Dict=1_2_8_1_0_0, _snake_case : Any=1_5_3_6, _snake_case : Tuple=2_4, _snake_case : int=2_4, _snake_case : Optional[int]=6_1_4_4, _snake_case : Optional[int]="gelu", _snake_case : Optional[int]=0.1, _snake_case : List[str]=0.1, _snake_case : str=5_1_2, _snake_case : Optional[int]=0, _snake_case : Optional[int]=0.0_2, _snake_case : Dict=1e-7, _snake_case : int=False, _snake_case : Any=-1, _snake_case : List[str]=0, _snake_case : Tuple=True, _snake_case : Any=None, _snake_case : Union[str, Any]=0, _snake_case : Tuple="gelu", **_snake_case : Union[str, Any], ) ->Optional[int]:
super().__init__(**_snake_case )
snake_case__ : Dict = hidden_size
snake_case__ : Optional[int] = num_hidden_layers
snake_case__ : Any = num_attention_heads
snake_case__ : List[Any] = intermediate_size
snake_case__ : List[Any] = hidden_act
snake_case__ : Union[str, Any] = hidden_dropout_prob
snake_case__ : Dict = attention_probs_dropout_prob
snake_case__ : List[str] = max_position_embeddings
snake_case__ : List[str] = type_vocab_size
snake_case__ : Optional[Any] = initializer_range
snake_case__ : Optional[int] = relative_attention
snake_case__ : Tuple = max_relative_positions
snake_case__ : Union[str, Any] = pad_token_id
snake_case__ : Optional[int] = position_biased_input
# Backwards compatibility
if type(_snake_case ) == str:
snake_case__ : int = [x.strip() for x in pos_att_type.lower().split('|' )]
snake_case__ : List[str] = pos_att_type
snake_case__ : Union[str, Any] = vocab_size
snake_case__ : Optional[int] = layer_norm_eps
snake_case__ : Optional[int] = kwargs.get('pooler_hidden_size', _snake_case )
snake_case__ : int = pooler_dropout
snake_case__ : str = pooler_hidden_act
class snake_case__ ( lowerCAmelCase_ ):
"""simple docstring"""
@property
def lowercase_ ( self : Optional[int] ) ->Mapping[str, Mapping[int, str]]:
if self.task == "multiple-choice":
snake_case__ : List[Any] = {0: 'batch', 1: 'choice', 2: 'sequence'}
else:
snake_case__ : int = {0: 'batch', 1: 'sequence'}
if self._config.type_vocab_size > 0:
return OrderedDict(
[('input_ids', dynamic_axis), ('attention_mask', dynamic_axis), ('token_type_ids', dynamic_axis)] )
else:
return OrderedDict([('input_ids', dynamic_axis), ('attention_mask', dynamic_axis)] )
@property
def lowercase_ ( self : Dict ) ->int:
return 1_2
def lowercase_ ( self : Tuple, _snake_case : Union["PreTrainedTokenizerBase", "FeatureExtractionMixin"], _snake_case : int = -1, _snake_case : int = -1, _snake_case : int = -1, _snake_case : bool = False, _snake_case : Optional["TensorType"] = None, _snake_case : int = 3, _snake_case : int = 4_0, _snake_case : int = 4_0, _snake_case : "PreTrainedTokenizerBase" = None, ) ->Mapping[str, Any]:
snake_case__ : Union[str, Any] = super().generate_dummy_inputs(preprocessor=_snake_case, framework=_snake_case )
if self._config.type_vocab_size == 0 and "token_type_ids" in dummy_inputs:
del dummy_inputs["token_type_ids"]
return dummy_inputs
| 277 | 1 |
from __future__ import annotations
a_ :Tuple = [True] * 1_000_001
a_ :Union[str, Any] = 2
while i * i <= 1_000_000:
if seive[i]:
for j in range(i * i, 1_000_001, i):
a_ :str = False
i += 1
def lowercase_ (A : int ):
return seive[n]
def lowercase_ (A : int ):
return any(digit in '02468' for digit in str(A ) )
def lowercase_ (A : int = 1_0_0_0_0_0_0 ):
snake_case__ : Optional[Any] = [2] # result already includes the number 2.
for num in range(3 , limit + 1 , 2 ):
if is_prime(A ) and not contains_an_even_digit(A ):
snake_case__ : List[Any] = str(A )
snake_case__ : Dict = [int(str_num[j:] + str_num[:j] ) for j in range(len(A ) )]
if all(is_prime(A ) for i in list_nums ):
result.append(A )
return result
def lowercase_ ():
return len(find_circular_primes() )
if __name__ == "__main__":
print(F"""{len(find_circular_primes()) = }""")
| 277 |
import argparse
import json
import pickle
from pathlib import Path
import requests
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import MaskFormerConfig, MaskFormerForInstanceSegmentation, MaskFormerImageProcessor, SwinConfig
from transformers.utils import logging
logging.set_verbosity_info()
a_ :str = logging.get_logger(__name__)
def lowercase_ (A : str ):
snake_case__ : Tuple = SwinConfig.from_pretrained(
'microsoft/swin-tiny-patch4-window7-224' , out_features=['stage1', 'stage2', 'stage3', 'stage4'] )
snake_case__ : List[Any] = MaskFormerConfig(backbone_config=A )
snake_case__ : Union[str, Any] = 'huggingface/label-files'
if "ade20k-full" in model_name:
# this should be ok
snake_case__ : Dict = 8_4_7
snake_case__ : List[str] = 'maskformer-ade20k-full-id2label.json'
elif "ade" in model_name:
# this should be ok
snake_case__ : Union[str, Any] = 1_5_0
snake_case__ : Any = 'ade20k-id2label.json'
elif "coco-stuff" in model_name:
# this should be ok
snake_case__ : List[str] = 1_7_1
snake_case__ : Union[str, Any] = 'maskformer-coco-stuff-id2label.json'
elif "coco" in model_name:
# TODO
snake_case__ : Dict = 1_3_3
snake_case__ : str = 'coco-panoptic-id2label.json'
elif "cityscapes" in model_name:
# this should be ok
snake_case__ : List[str] = 1_9
snake_case__ : Union[str, Any] = 'cityscapes-id2label.json'
elif "vistas" in model_name:
# this should be ok
snake_case__ : Tuple = 6_5
snake_case__ : List[str] = 'mapillary-vistas-id2label.json'
snake_case__ : Dict = json.load(open(hf_hub_download(A , A , repo_type='dataset' ) , 'r' ) )
snake_case__ : List[str] = {int(A ): v for k, v in idalabel.items()}
return config
def lowercase_ (A : Any ):
snake_case__ : Optional[int] = []
# stem
# fmt: off
rename_keys.append(('backbone.patch_embed.proj.weight', 'model.pixel_level_module.encoder.model.embeddings.patch_embeddings.projection.weight') )
rename_keys.append(('backbone.patch_embed.proj.bias', 'model.pixel_level_module.encoder.model.embeddings.patch_embeddings.projection.bias') )
rename_keys.append(('backbone.patch_embed.norm.weight', 'model.pixel_level_module.encoder.model.embeddings.norm.weight') )
rename_keys.append(('backbone.patch_embed.norm.bias', 'model.pixel_level_module.encoder.model.embeddings.norm.bias') )
# stages
for i in range(len(config.backbone_config.depths ) ):
for j in range(config.backbone_config.depths[i] ):
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.norm1.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_before.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.norm1.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_before.bias''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.attn.relative_position_bias_table''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_bias_table''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.attn.relative_position_index''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_index''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.attn.proj.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.attn.proj.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.bias''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.norm2.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_after.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.norm2.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_after.bias''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.mlp.fc1.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.mlp.fc1.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.bias''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.mlp.fc2.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.output.dense.weight''') )
rename_keys.append((F'''backbone.layers.{i}.blocks.{j}.mlp.fc2.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.output.dense.bias''') )
if i < 3:
rename_keys.append((F'''backbone.layers.{i}.downsample.reduction.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.reduction.weight''') )
rename_keys.append((F'''backbone.layers.{i}.downsample.norm.weight''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.norm.weight''') )
rename_keys.append((F'''backbone.layers.{i}.downsample.norm.bias''', F'''model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.norm.bias''') )
rename_keys.append((F'''backbone.norm{i}.weight''', F'''model.pixel_level_module.encoder.hidden_states_norms.{i}.weight''') )
rename_keys.append((F'''backbone.norm{i}.bias''', F'''model.pixel_level_module.encoder.hidden_states_norms.{i}.bias''') )
# FPN
rename_keys.append(('sem_seg_head.layer_4.weight', 'model.pixel_level_module.decoder.fpn.stem.0.weight') )
rename_keys.append(('sem_seg_head.layer_4.norm.weight', 'model.pixel_level_module.decoder.fpn.stem.1.weight') )
rename_keys.append(('sem_seg_head.layer_4.norm.bias', 'model.pixel_level_module.decoder.fpn.stem.1.bias') )
for source_index, target_index in zip(range(3 , 0 , -1 ) , range(0 , 3 ) ):
rename_keys.append((F'''sem_seg_head.adapter_{source_index}.weight''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.0.weight''') )
rename_keys.append((F'''sem_seg_head.adapter_{source_index}.norm.weight''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.1.weight''') )
rename_keys.append((F'''sem_seg_head.adapter_{source_index}.norm.bias''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.1.bias''') )
rename_keys.append((F'''sem_seg_head.layer_{source_index}.weight''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.block.0.weight''') )
rename_keys.append((F'''sem_seg_head.layer_{source_index}.norm.weight''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.block.1.weight''') )
rename_keys.append((F'''sem_seg_head.layer_{source_index}.norm.bias''', F'''model.pixel_level_module.decoder.fpn.layers.{target_index}.block.1.bias''') )
rename_keys.append(('sem_seg_head.mask_features.weight', 'model.pixel_level_module.decoder.mask_projection.weight') )
rename_keys.append(('sem_seg_head.mask_features.bias', 'model.pixel_level_module.decoder.mask_projection.bias') )
# Transformer decoder
for idx in range(config.decoder_config.decoder_layers ):
# self-attention out projection
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.out_proj.weight''', F'''model.transformer_module.decoder.layers.{idx}.self_attn.out_proj.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.out_proj.bias''', F'''model.transformer_module.decoder.layers.{idx}.self_attn.out_proj.bias''') )
# cross-attention out projection
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.out_proj.weight''', F'''model.transformer_module.decoder.layers.{idx}.encoder_attn.out_proj.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.out_proj.bias''', F'''model.transformer_module.decoder.layers.{idx}.encoder_attn.out_proj.bias''') )
# MLP 1
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear1.weight''', F'''model.transformer_module.decoder.layers.{idx}.fc1.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear1.bias''', F'''model.transformer_module.decoder.layers.{idx}.fc1.bias''') )
# MLP 2
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear2.weight''', F'''model.transformer_module.decoder.layers.{idx}.fc2.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear2.bias''', F'''model.transformer_module.decoder.layers.{idx}.fc2.bias''') )
# layernorm 1 (self-attention layernorm)
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm1.weight''', F'''model.transformer_module.decoder.layers.{idx}.self_attn_layer_norm.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm1.bias''', F'''model.transformer_module.decoder.layers.{idx}.self_attn_layer_norm.bias''') )
# layernorm 2 (cross-attention layernorm)
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm2.weight''', F'''model.transformer_module.decoder.layers.{idx}.encoder_attn_layer_norm.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm2.bias''', F'''model.transformer_module.decoder.layers.{idx}.encoder_attn_layer_norm.bias''') )
# layernorm 3 (final layernorm)
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm3.weight''', F'''model.transformer_module.decoder.layers.{idx}.final_layer_norm.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm3.bias''', F'''model.transformer_module.decoder.layers.{idx}.final_layer_norm.bias''') )
rename_keys.append(('sem_seg_head.predictor.transformer.decoder.norm.weight', 'model.transformer_module.decoder.layernorm.weight') )
rename_keys.append(('sem_seg_head.predictor.transformer.decoder.norm.bias', 'model.transformer_module.decoder.layernorm.bias') )
# heads on top
rename_keys.append(('sem_seg_head.predictor.query_embed.weight', 'model.transformer_module.queries_embedder.weight') )
rename_keys.append(('sem_seg_head.predictor.input_proj.weight', 'model.transformer_module.input_projection.weight') )
rename_keys.append(('sem_seg_head.predictor.input_proj.bias', 'model.transformer_module.input_projection.bias') )
rename_keys.append(('sem_seg_head.predictor.class_embed.weight', 'class_predictor.weight') )
rename_keys.append(('sem_seg_head.predictor.class_embed.bias', 'class_predictor.bias') )
for i in range(3 ):
rename_keys.append((F'''sem_seg_head.predictor.mask_embed.layers.{i}.weight''', F'''mask_embedder.{i}.0.weight''') )
rename_keys.append((F'''sem_seg_head.predictor.mask_embed.layers.{i}.bias''', F'''mask_embedder.{i}.0.bias''') )
# fmt: on
return rename_keys
def lowercase_ (A : Tuple , A : Tuple , A : Optional[Any] ):
snake_case__ : Optional[int] = dct.pop(A )
snake_case__ : Union[str, Any] = val
def lowercase_ (A : Optional[Any] , A : Tuple ):
snake_case__ : Optional[int] = [int(backbone_config.embed_dim * 2**i ) for i in range(len(backbone_config.depths ) )]
for i in range(len(backbone_config.depths ) ):
snake_case__ : Optional[int] = num_features[i]
for j in range(backbone_config.depths[i] ):
# fmt: off
# read in weights + bias of input projection layer (in original implementation, this is a single matrix + bias)
snake_case__ : int = state_dict.pop(F'''backbone.layers.{i}.blocks.{j}.attn.qkv.weight''' )
snake_case__ : Tuple = state_dict.pop(F'''backbone.layers.{i}.blocks.{j}.attn.qkv.bias''' )
# next, add query, keys and values (in that order) to the state dict
snake_case__ : str = in_proj_weight[:dim, :]
snake_case__ : int = in_proj_bias[: dim]
snake_case__ : List[Any] = in_proj_weight[
dim : dim * 2, :
]
snake_case__ : List[str] = in_proj_bias[
dim : dim * 2
]
snake_case__ : List[Any] = in_proj_weight[
-dim :, :
]
snake_case__ : Dict = in_proj_bias[-dim :]
# fmt: on
def lowercase_ (A : List[str] , A : List[Any] ):
# fmt: off
snake_case__ : str = config.decoder_config.hidden_size
for idx in range(config.decoder_config.decoder_layers ):
# read in weights + bias of self-attention input projection layer (in the original implementation, this is a single matrix + bias)
snake_case__ : List[Any] = state_dict.pop(F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.in_proj_weight''' )
snake_case__ : int = state_dict.pop(F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.in_proj_bias''' )
# next, add query, keys and values (in that order) to the state dict
snake_case__ : Any = in_proj_weight[: hidden_size, :]
snake_case__ : Tuple = in_proj_bias[:config.hidden_size]
snake_case__ : List[str] = in_proj_weight[hidden_size : hidden_size * 2, :]
snake_case__ : Dict = in_proj_bias[hidden_size : hidden_size * 2]
snake_case__ : Any = in_proj_weight[-hidden_size :, :]
snake_case__ : int = in_proj_bias[-hidden_size :]
# read in weights + bias of cross-attention input projection layer (in the original implementation, this is a single matrix + bias)
snake_case__ : List[Any] = state_dict.pop(F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.in_proj_weight''' )
snake_case__ : List[str] = state_dict.pop(F'''sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.in_proj_bias''' )
# next, add query, keys and values (in that order) to the state dict
snake_case__ : Optional[int] = in_proj_weight[: hidden_size, :]
snake_case__ : Optional[Any] = in_proj_bias[:config.hidden_size]
snake_case__ : int = in_proj_weight[hidden_size : hidden_size * 2, :]
snake_case__ : List[str] = in_proj_bias[hidden_size : hidden_size * 2]
snake_case__ : List[str] = in_proj_weight[-hidden_size :, :]
snake_case__ : str = in_proj_bias[-hidden_size :]
# fmt: on
def lowercase_ ():
snake_case__ : Any = 'http://images.cocodataset.org/val2017/000000039769.jpg'
snake_case__ : int = Image.open(requests.get(A , stream=A ).raw )
return im
@torch.no_grad()
def lowercase_ (A : str , A : str , A : str , A : bool = False ):
snake_case__ : Optional[int] = get_maskformer_config(A )
# load original state_dict
with open(A , 'rb' ) as f:
snake_case__ : List[Any] = pickle.load(A )
snake_case__ : Optional[int] = data['model']
# for name, param in state_dict.items():
# print(name, param.shape)
# rename keys
snake_case__ : List[str] = create_rename_keys(A )
for src, dest in rename_keys:
rename_key(A , A , A )
read_in_swin_q_k_v(A , config.backbone_config )
read_in_decoder_q_k_v(A , A )
# update to torch tensors
for key, value in state_dict.items():
snake_case__ : int = torch.from_numpy(A )
# load 🤗 model
snake_case__ : str = MaskFormerForInstanceSegmentation(A )
model.eval()
for name, param in model.named_parameters():
print(A , param.shape )
snake_case__ , snake_case__ : Union[str, Any] = model.load_state_dict(A , strict=A )
assert missing_keys == [
"model.pixel_level_module.encoder.model.layernorm.weight",
"model.pixel_level_module.encoder.model.layernorm.bias",
]
assert len(A ) == 0, F'''Unexpected keys: {unexpected_keys}'''
# verify results
snake_case__ : Optional[Any] = prepare_img()
if "vistas" in model_name:
snake_case__ : int = 6_5
elif "cityscapes" in model_name:
snake_case__ : Dict = 6_5_5_3_5
else:
snake_case__ : Tuple = 2_5_5
snake_case__ : Optional[int] = True if 'ade' in model_name else False
snake_case__ : Dict = MaskFormerImageProcessor(ignore_index=A , reduce_labels=A )
snake_case__ : Any = image_processor(A , return_tensors='pt' )
snake_case__ : Any = model(**A )
print('Logits:' , outputs.class_queries_logits[0, :3, :3] )
if model_name == "maskformer-swin-tiny-ade":
snake_case__ : Tuple = torch.tensor(
[[3.6353, -4.4770, -2.6065], [0.5081, -4.2394, -3.5343], [2.1909, -5.0353, -1.9323]] )
assert torch.allclose(outputs.class_queries_logits[0, :3, :3] , A , atol=1e-4 )
print('Looks ok!' )
if pytorch_dump_folder_path is not None:
print(F'''Saving model and image processor to {pytorch_dump_folder_path}''' )
Path(A ).mkdir(exist_ok=A )
model.save_pretrained(A )
image_processor.save_pretrained(A )
if push_to_hub:
print('Pushing model and image processor to the hub...' )
model.push_to_hub(F'''nielsr/{model_name}''' )
image_processor.push_to_hub(F'''nielsr/{model_name}''' )
if __name__ == "__main__":
a_ :Optional[int] = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--model_name",
default="maskformer-swin-tiny-ade",
type=str,
help=("Name of the MaskFormer model you'd like to convert",),
)
parser.add_argument(
"--checkpoint_path",
default="/Users/nielsrogge/Documents/MaskFormer_checkpoints/MaskFormer-Swin-tiny-ADE20k/model.pkl",
type=str,
help="Path to the original state dict (.pth file).",
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model directory."
)
parser.add_argument(
"--push_to_hub", action="store_true", help="Whether or not to push the converted model to the 🤗 hub."
)
a_ :Dict = parser.parse_args()
convert_maskformer_checkpoint(
args.model_name, args.checkpoint_path, args.pytorch_dump_folder_path, args.push_to_hub
)
| 277 | 1 |
import argparse
import torch
from transformers import LxmertConfig, LxmertForPreTraining, load_tf_weights_in_lxmert
from transformers.utils import logging
logging.set_verbosity_info()
def lowercase_ (A : str , A : List[Any] , A : Any ):
# Initialise PyTorch model
snake_case__ : List[Any] = LxmertConfig.from_json_file(A )
print(F'''Building PyTorch model from configuration: {config}''' )
snake_case__ : List[str] = LxmertForPreTraining(A )
# Load weights from tf checkpoint
load_tf_weights_in_lxmert(A , A , A )
# Save pytorch-model
print(F'''Save PyTorch model to {pytorch_dump_path}''' )
torch.save(model.state_dict() , A )
if __name__ == "__main__":
a_ :Union[str, Any] = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--tf_checkpoint_path", default=None, type=str, required=True, help="Path to the TensorFlow checkpoint path."
)
parser.add_argument(
"--config_file",
default=None,
type=str,
required=True,
help="The config json file corresponding to the pre-trained model. \nThis specifies the model architecture.",
)
parser.add_argument(
"--pytorch_dump_path", default=None, type=str, required=True, help="Path to the output PyTorch model."
)
a_ :Optional[int] = parser.parse_args()
convert_tf_checkpoint_to_pytorch(args.tf_checkpoint_path, args.config_file, args.pytorch_dump_path)
| 277 |
import unittest
from transformers import is_torch_available
from transformers.testing_utils import require_torch, slow, torch_device
from ...generation.test_utils import GenerationTesterMixin
from ...test_configuration_common import ConfigTester
from ...test_modeling_common import ModelTesterMixin, ids_tensor
from ...test_pipeline_mixin import PipelineTesterMixin
if is_torch_available():
import torch
from transformers import (
OPENAI_GPT_PRETRAINED_MODEL_ARCHIVE_LIST,
OpenAIGPTConfig,
OpenAIGPTDoubleHeadsModel,
OpenAIGPTForSequenceClassification,
OpenAIGPTLMHeadModel,
OpenAIGPTModel,
)
class snake_case__ :
"""simple docstring"""
def __init__( self : List[str], _snake_case : Any, _snake_case : int=1_3, _snake_case : Optional[int]=7, _snake_case : int=True, _snake_case : Optional[Any]=True, _snake_case : Optional[Any]=True, _snake_case : Union[str, Any]=9_9, _snake_case : Optional[Any]=3_2, _snake_case : Tuple=5, _snake_case : str=4, _snake_case : Any=3_7, _snake_case : int="gelu", _snake_case : Optional[Any]=0.1, _snake_case : str=0.1, _snake_case : str=5_1_2, _snake_case : Dict=1_6, _snake_case : str=2, _snake_case : Union[str, Any]=0.0_2, _snake_case : Optional[int]=3, _snake_case : Union[str, Any]=4, _snake_case : Tuple=None, ) ->Optional[Any]:
snake_case__ : Optional[int] = parent
snake_case__ : List[Any] = batch_size
snake_case__ : Tuple = seq_length
snake_case__ : str = is_training
snake_case__ : Optional[int] = use_token_type_ids
snake_case__ : Any = use_labels
snake_case__ : Dict = vocab_size
snake_case__ : str = hidden_size
snake_case__ : Union[str, Any] = num_hidden_layers
snake_case__ : List[str] = num_attention_heads
snake_case__ : Union[str, Any] = intermediate_size
snake_case__ : List[Any] = hidden_act
snake_case__ : int = hidden_dropout_prob
snake_case__ : str = attention_probs_dropout_prob
snake_case__ : Any = max_position_embeddings
snake_case__ : Union[str, Any] = type_vocab_size
snake_case__ : Optional[Any] = type_sequence_label_size
snake_case__ : Optional[int] = initializer_range
snake_case__ : Optional[int] = num_labels
snake_case__ : str = num_choices
snake_case__ : int = scope
snake_case__ : List[str] = self.vocab_size - 1
def lowercase_ ( self : Union[str, Any] ) ->Tuple:
snake_case__ : List[str] = ids_tensor([self.batch_size, self.seq_length], self.vocab_size )
snake_case__ : List[str] = None
if self.use_token_type_ids:
snake_case__ : Optional[Any] = ids_tensor([self.batch_size, self.seq_length], self.type_vocab_size )
snake_case__ : Tuple = None
snake_case__ : str = None
snake_case__ : List[Any] = None
if self.use_labels:
snake_case__ : Dict = ids_tensor([self.batch_size], self.type_sequence_label_size )
snake_case__ : int = ids_tensor([self.batch_size, self.seq_length], self.num_labels )
snake_case__ : List[str] = ids_tensor([self.batch_size], self.num_choices )
snake_case__ : Union[str, Any] = OpenAIGPTConfig(
vocab_size=self.vocab_size, n_embd=self.hidden_size, n_layer=self.num_hidden_layers, n_head=self.num_attention_heads, n_positions=self.max_position_embeddings, pad_token_id=self.pad_token_id, )
snake_case__ : List[str] = ids_tensor([self.num_hidden_layers, self.num_attention_heads], 2 )
return (
config,
input_ids,
head_mask,
token_type_ids,
sequence_labels,
token_labels,
choice_labels,
)
def lowercase_ ( self : Any, _snake_case : List[str], _snake_case : Any, _snake_case : List[Any], _snake_case : Tuple, *_snake_case : Optional[Any] ) ->Tuple:
snake_case__ : Union[str, Any] = OpenAIGPTModel(config=_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Optional[Any] = model(_snake_case, token_type_ids=_snake_case, head_mask=_snake_case )
snake_case__ : Union[str, Any] = model(_snake_case, token_type_ids=_snake_case )
snake_case__ : Optional[Any] = model(_snake_case )
self.parent.assertEqual(result.last_hidden_state.shape, (self.batch_size, self.seq_length, self.hidden_size) )
def lowercase_ ( self : Optional[int], _snake_case : Optional[Any], _snake_case : Union[str, Any], _snake_case : Optional[int], _snake_case : List[Any], *_snake_case : Dict ) ->Optional[int]:
snake_case__ : Optional[Any] = OpenAIGPTLMHeadModel(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Tuple = model(_snake_case, token_type_ids=_snake_case, labels=_snake_case )
self.parent.assertEqual(result.loss.shape, () )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.seq_length, self.vocab_size) )
def lowercase_ ( self : int, _snake_case : Tuple, _snake_case : List[str], _snake_case : List[Any], _snake_case : List[Any], *_snake_case : List[Any] ) ->Optional[int]:
snake_case__ : List[str] = OpenAIGPTDoubleHeadsModel(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : Optional[Any] = model(_snake_case, token_type_ids=_snake_case, labels=_snake_case )
self.parent.assertEqual(result.loss.shape, () )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.seq_length, self.vocab_size) )
def lowercase_ ( self : Optional[int], _snake_case : Tuple, _snake_case : Dict, _snake_case : List[str], _snake_case : Optional[Any], *_snake_case : Union[str, Any] ) ->str:
snake_case__ : List[str] = self.num_labels
snake_case__ : Dict = OpenAIGPTForSequenceClassification(_snake_case )
model.to(_snake_case )
model.eval()
snake_case__ : List[str] = ids_tensor([self.batch_size], self.type_sequence_label_size )
snake_case__ : List[str] = model(_snake_case, token_type_ids=_snake_case, labels=_snake_case )
self.parent.assertEqual(result.logits.shape, (self.batch_size, self.num_labels) )
def lowercase_ ( self : Dict ) ->int:
snake_case__ : List[Any] = self.prepare_config_and_inputs()
(
(
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) , (
snake_case__
) ,
) : Optional[Any] = config_and_inputs
snake_case__ : str = {
'input_ids': input_ids,
'token_type_ids': token_type_ids,
'head_mask': head_mask,
}
return config, inputs_dict
@require_torch
class snake_case__ ( lowerCAmelCase_ , lowerCAmelCase_ , lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = (
(OpenAIGPTModel, OpenAIGPTLMHeadModel, OpenAIGPTDoubleHeadsModel, OpenAIGPTForSequenceClassification)
if is_torch_available()
else ()
)
_SCREAMING_SNAKE_CASE = (
(OpenAIGPTLMHeadModel,) if is_torch_available() else ()
) # TODO (PVP): Add Double HeadsModel when generate() function is changed accordingly
_SCREAMING_SNAKE_CASE = (
{
"""feature-extraction""": OpenAIGPTModel,
"""text-classification""": OpenAIGPTForSequenceClassification,
"""text-generation""": OpenAIGPTLMHeadModel,
"""zero-shot""": OpenAIGPTForSequenceClassification,
}
if is_torch_available()
else {}
)
def lowercase_ ( self : Optional[int], _snake_case : Union[str, Any], _snake_case : int, _snake_case : Tuple, _snake_case : Tuple, _snake_case : List[str] ) ->Optional[Any]:
if pipeline_test_casse_name == "ZeroShotClassificationPipelineTests":
# Get `tokenizer does not have a padding token` error for both fast/slow tokenizers.
# `OpenAIGPTConfig` was never used in pipeline tests, either because of a missing checkpoint or because a
# tiny config could not be created.
return True
return False
def lowercase_ ( self : Optional[Any], _snake_case : Union[str, Any], _snake_case : List[str], _snake_case : Any=False ) ->Tuple:
snake_case__ : Optional[int] = super()._prepare_for_class(_snake_case, _snake_case, return_labels=_snake_case )
if return_labels:
if model_class.__name__ == "OpenAIGPTDoubleHeadsModel":
snake_case__ : Union[str, Any] = torch.zeros(
(self.model_tester.batch_size, self.model_tester.num_choices, self.model_tester.seq_length), dtype=torch.long, device=_snake_case, )
snake_case__ : List[Any] = inputs_dict['labels']
snake_case__ : List[Any] = inputs_dict['labels']
snake_case__ : Any = torch.zeros(
(self.model_tester.batch_size, self.model_tester.num_choices), dtype=torch.long, device=_snake_case, )
snake_case__ : Tuple = torch.zeros(
self.model_tester.batch_size, dtype=torch.long, device=_snake_case )
return inputs_dict
def lowercase_ ( self : Union[str, Any] ) ->List[str]:
snake_case__ : List[str] = OpenAIGPTModelTester(self )
snake_case__ : Any = ConfigTester(self, config_class=_snake_case, n_embd=3_7 )
def lowercase_ ( self : Optional[int] ) ->str:
self.config_tester.run_common_tests()
def lowercase_ ( self : int ) ->Tuple:
snake_case__ : str = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_openai_gpt_model(*_snake_case )
def lowercase_ ( self : Tuple ) ->List[str]:
snake_case__ : Optional[int] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_lm_head_model(*_snake_case )
def lowercase_ ( self : Dict ) ->int:
snake_case__ : Optional[Any] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_double_lm_head_model(*_snake_case )
def lowercase_ ( self : int ) ->str:
snake_case__ : List[Any] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_openai_gpt_for_sequence_classification(*_snake_case )
@slow
def lowercase_ ( self : Optional[Any] ) ->str:
for model_name in OPENAI_GPT_PRETRAINED_MODEL_ARCHIVE_LIST[:1]:
snake_case__ : Optional[int] = OpenAIGPTModel.from_pretrained(_snake_case )
self.assertIsNotNone(_snake_case )
@require_torch
class snake_case__ ( unittest.TestCase ):
"""simple docstring"""
@slow
def lowercase_ ( self : Tuple ) ->Optional[int]:
snake_case__ : Union[str, Any] = OpenAIGPTLMHeadModel.from_pretrained('openai-gpt' )
model.to(_snake_case )
snake_case__ : Tuple = torch.tensor([[4_8_1, 4_7_3_5, 5_4_4]], dtype=torch.long, device=_snake_case ) # the president is
snake_case__ : int = [
4_8_1,
4_7_3_5,
5_4_4,
2_4_6,
9_6_3,
8_7_0,
7_6_2,
2_3_9,
2_4_4,
4_0_4_7_7,
2_4_4,
2_4_9,
7_1_9,
8_8_1,
4_8_7,
5_4_4,
2_4_0,
2_4_4,
6_0_3,
4_8_1,
] # the president is a very good man. " \n " i\'m sure he is, " said the
snake_case__ : Optional[int] = model.generate(_snake_case, do_sample=_snake_case )
self.assertListEqual(output_ids[0].tolist(), _snake_case )
| 277 | 1 |
import pandas as pd
from matplotlib import pyplot as plt
from sklearn.linear_model import LinearRegression
# Splitting the dataset into the Training set and Test set
from sklearn.model_selection import train_test_split
# Fitting Polynomial Regression to the dataset
from sklearn.preprocessing import PolynomialFeatures
# Importing the dataset
UpperCAmelCase__ = pd.read_csv(
"https://s3.us-west-2.amazonaws.com/public.gamelab.fun/dataset/"
"position_salaries.csv"
)
UpperCAmelCase__ = dataset.iloc[:, 1:2].values
UpperCAmelCase__ = dataset.iloc[:, 2].values
UpperCAmelCase__ , UpperCAmelCase__ , UpperCAmelCase__ , UpperCAmelCase__ = train_test_split(X, y, test_size=0.2, random_state=0)
UpperCAmelCase__ = PolynomialFeatures(degree=4)
UpperCAmelCase__ = poly_reg.fit_transform(X)
UpperCAmelCase__ = LinearRegression()
pol_reg.fit(X_poly, y)
def _a ( ) -> Optional[Any]:
plt.scatter(a , a , color='''red''' )
plt.plot(a , pol_reg.predict(poly_reg.fit_transform(a ) ) , color='''blue''' )
plt.title('''Truth or Bluff (Linear Regression)''' )
plt.xlabel('''Position level''' )
plt.ylabel('''Salary''' )
plt.show()
if __name__ == "__main__":
viz_polymonial()
# Predicting a new result with Polymonial Regression
pol_reg.predict(poly_reg.fit_transform([[5.5]]))
# output should be 132148.43750003
| 0 |
import os
import unittest
from transformers.models.transfo_xl.tokenization_transfo_xl import VOCAB_FILES_NAMES, TransfoXLTokenizer
from ...test_tokenization_common import TokenizerTesterMixin
class snake_case__ ( lowerCAmelCase_ , unittest.TestCase ):
"""simple docstring"""
_SCREAMING_SNAKE_CASE = TransfoXLTokenizer
_SCREAMING_SNAKE_CASE = False
_SCREAMING_SNAKE_CASE = False
def lowercase_ ( self : Optional[int] ) ->Any:
super().setUp()
snake_case__ : Tuple = [
'<unk>',
'[CLS]',
'[SEP]',
'want',
'unwanted',
'wa',
'un',
'running',
',',
'low',
'l',
]
snake_case__ : Any = os.path.join(self.tmpdirname, VOCAB_FILES_NAMES['vocab_file'] )
with open(self.vocab_file, 'w', encoding='utf-8' ) as vocab_writer:
vocab_writer.write(''.join([x + '\n' for x in vocab_tokens] ) )
def lowercase_ ( self : Union[str, Any], **_snake_case : List[Any] ) ->Dict:
snake_case__ : str = True
return TransfoXLTokenizer.from_pretrained(self.tmpdirname, **_snake_case )
def lowercase_ ( self : Optional[Any], _snake_case : str ) ->Dict:
snake_case__ : List[Any] = '<unk> UNwanted , running'
snake_case__ : List[Any] = '<unk> unwanted, running'
return input_text, output_text
def lowercase_ ( self : List[Any] ) ->Tuple:
snake_case__ : Dict = TransfoXLTokenizer(vocab_file=self.vocab_file, lower_case=_snake_case )
snake_case__ : str = tokenizer.tokenize('<unk> UNwanted , running' )
self.assertListEqual(_snake_case, ['<unk>', 'unwanted', ',', 'running'] )
self.assertListEqual(tokenizer.convert_tokens_to_ids(_snake_case ), [0, 4, 8, 7] )
def lowercase_ ( self : List[str] ) ->List[Any]:
snake_case__ : str = TransfoXLTokenizer(lower_case=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHeLLo ! how \n Are yoU ? ' ), ['hello', '!', 'how', 'are', 'you', '?'] )
def lowercase_ ( self : Optional[int] ) ->Optional[Any]:
snake_case__ : Optional[int] = TransfoXLTokenizer(lower_case=_snake_case )
self.assertListEqual(
tokenizer.tokenize(' \tHeLLo ! how \n Are yoU ? ' ), ['HeLLo', '!', 'how', 'Are', 'yoU', '?'] )
def lowercase_ ( self : Optional[int] ) ->Union[str, Any]:
snake_case__ : List[Any] = TransfoXLTokenizer(lower_case=_snake_case )
snake_case__ : Dict = 'Hello (bracket) and side-scrolled [and] Henry\'s $5,000 with 3.34 m. What\'s up!?'
snake_case__ : List[Any] = [
'Hello',
'(',
'bracket',
')',
'and',
'side',
'@-@',
'scrolled',
'[',
'and',
']',
'Henry',
'\'s',
'$',
'5',
'@,@',
'000',
'with',
'3',
'@.@',
'34',
'm',
'.',
'What',
'\'s',
'up',
'!',
'?',
]
self.assertListEqual(tokenizer.tokenize(_snake_case ), _snake_case )
self.assertEqual(tokenizer.convert_tokens_to_string(_snake_case ), _snake_case )
def lowercase_ ( self : Dict ) ->Any:
snake_case__ : Dict = self.get_tokenizer()
snake_case__ : Optional[Any] = len(_snake_case )
tokenizer.add_tokens(['new1', 'new2'] )
tokenizer.move_added_token('new1', 1 )
# Check that moved token is not copied (duplicate)
self.assertEqual(len(_snake_case ), original_len + 2 )
# Check that token is moved to specified id
self.assertEqual(tokenizer.encode('new1' ), [1] )
self.assertEqual(tokenizer.decode([1] ), 'new1' )
| 277 | 0 |
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