| | """ |
| | 2025.10.1 |
| | 2025.10.1 |
| | 4.56.2 |
| | 0.22.2 |
| | __UNSLOTH_VERSIONING__ |
| | """ |
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|
| | from torch import Tensor |
| | import torch |
| | import torch.nn as nn |
| | from torch.nn import functional as F |
| | from typing import Any, List, Optional, Tuple, Union, Dict, Set, Callable |
| | from trl.trainer.bco_trainer import (Any, AutoModelForCausalLM, BCOConfig, BCOTrainer, BaseImageProcessor, CLF_NAME, Callable, DPODataCollatorWithPadding, DataCollator, DataLoader, Dataset, EvalLoopOutput, F, FeatureExtractionMixin, Literal, LogisticRegression, Optional, PartialState, Path, PeftModel, PreTrainedModel, PreTrainedTokenizerBase, ProcessorMixin, RUNNING_NAME, RunningMoments, SequentialSampler, Trainer, TrainerCallback, TrainingArguments, Union, _process_tokens, _tokenize, autocast, contextmanager, create_reference_model, defaultdict, disable_dropout_in_model, generate_model_card, get_comet_experiment_url, has_length, inspect, is_comet_available, is_joblib_available, is_peft_available, is_sklearn_available, is_wandb_available, itemgetter, joblib, log_table_to_comet_experiment, logger, logging, maybe_apply_chat_template, maybe_extract_prompt, maybe_unpair_preference_dataset, nn, np, nullcontext, os, pad_to_length, pd, peft_module_casting_to_bf16, prepare_deepspeed, prepare_model_for_kbit_training, random, selective_log_softmax, textwrap, torch, tqdm, wandb, F, Optional, PeftModel, PreTrainedModel, Trainer, is_peft_available, logger, os, torch) |
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| |
|
| | import os |
| | from typing import * |
| | from dataclasses import dataclass, field |
| | from packaging.version import Version |
| | import torch |
| | import numpy as np |
| | from contextlib import nullcontext |
| | from torch.nn import functional as F |
| | from transformers import DataCollatorForSeq2Seq, DataCollatorForLanguageModeling as TransformersDataCollatorForLanguageModeling |
| | from transformers.training_args import ParallelMode |
| |
|
| | |
| | import functools |
| | from types import MethodType |
| | def prepare_for_training_mode(f): |
| | @functools.wraps(f) |
| | def wrapper(self, *args, **kwargs): |
| | |
| | if hasattr(self, 'model') and hasattr(self.model, "for_training"): |
| | self.model.for_training() |
| | output = f(self, *args, **kwargs) |
| | |
| | if hasattr(self, 'model') and hasattr(self.model, "for_inference"): |
| | self.model.for_inference() |
| | return output |
| | return wrapper |
| | pass |
| |
|
| | torch_compile_options = { |
| | "epilogue_fusion" : True, |
| | "max_autotune" : False, |
| | "shape_padding" : True, |
| | "trace.enabled" : False, |
| | "triton.cudagraphs" : False, |
| | } |
| |
|
| | @torch.compile(dynamic = True, fullgraph = True, options = torch_compile_options,) |
| | def chunked_selective_log_softmax(logits, index): |
| | |
| | chunked_logits = torch.chunk(logits.reshape(-1, logits.shape[-1]), chunks = 4, dim = 0) |
| | chunked_index = torch.chunk(index.reshape(-1), chunks = 4, dim = 0) |
| | all_per_token_logps = [] |
| | |
| | for chunk_logits, chunk_index in zip(chunked_logits, chunked_index): |
| | chunk_logits = chunk_logits.to(torch.float32) |
| | selected_logits = torch.gather(chunk_logits, dim = -1, index = chunk_index.unsqueeze(-1)).squeeze(-1) |
| | logsumexp_values = torch.logsumexp(chunk_logits, dim = -1) |
| | per_token_logps = selected_logits - logsumexp_values |
| | all_per_token_logps.append(per_token_logps) |
| | pass |
| | all_per_token_logps = torch.concat(all_per_token_logps) |
| | all_per_token_logps = all_per_token_logps.reshape((logits.shape[0], logits.shape[1])) |
| | return all_per_token_logps |
| |
|
| | def calculate_pad_tokens_in_prompt( |
| | input_ids: torch.Tensor, |
| | logits_to_keep: int, |
| | pad_token_id: int |
| | ) -> torch.Tensor: |
| | """ |
| | Given prompt tensor, it returns all the left padded tokens in that sequence. so [pad, pad, pad, cat] = 3 tokens |
| | """ |
| | if logits_to_keep >= input_ids.shape[1]: |
| | raise ValueError("logits_to_keep must be smaller than the sequence length.") |
| |
|
| | prompt_section = input_ids[:, :-logits_to_keep] |
| |
|
| | padding_mask = (prompt_section == pad_token_id) |
| |
|
| | pad_token_counts = padding_mask.sum(dim=1) |
| |
|
| | return pad_token_counts |
| |
|
| | def create_completion_attention_mask( |
| | completion_input_ids: torch.Tensor, |
| | left_pad_tokens_per_prompt: torch.Tensor, |
| | max_left_pad: int, |
| | pad_token_id: int |
| | ) -> torch.Tensor: |
| | """ |
| | Given that we have a sequence, [p,p,p,c,c,c,pad,pad,pad] |
| | |
| | Where p are extra prompt tokens we got from slicing the torch tensor, c is completion tokens |
| | and pad are pad tokens, this function would make a completion mask that would 0 out the pad |
| | and p tokens. so in this example [0,0,0,1,1,1,0,0,0] |
| | """ |
| | batch_size, completion_len = completion_input_ids.shape |
| | device = completion_input_ids.device |
| |
|
| | num_tokens_to_mask = max_left_pad - left_pad_tokens_per_prompt |
| |
|
| | indices = torch.arange(completion_len, device=device).unsqueeze(0) |
| | shift_mask = indices >= num_tokens_to_mask.unsqueeze(1) |
| |
|
| | non_padding_mask = (completion_input_ids != pad_token_id) |
| |
|
| | final_mask = shift_mask & non_padding_mask |
| |
|
| | return final_mask |
| |
|
| | def left_pack_padding(tensor: torch.Tensor, pad_id: int) -> torch.Tensor: |
| | """ |
| | Moves all padding tokens in each sequence of a batch to the right. |
| | """ |
| | mask = (tensor != pad_id) |
| | |
| | sorted_indices = torch.argsort(mask, dim=1, descending=True, stable=True) |
| | packed_tensor = torch.gather(tensor, 1, sorted_indices) |
| | return packed_tensor |
| | @dataclass |
| | class UnslothBCOConfig(BCOConfig): |
| | """ |
| | |
| | Configuration class for the [`BCOTrainer`]. |
| | |
| | This class includes only the parameters that are specific to BCO training. For a full list of training arguments, |
| | please refer to the [`~transformers.TrainingArguments`] documentation. Note that default values in this class may |
| | differ from those in [`~transformers.TrainingArguments`]. |
| | |
| | Using [`~transformers.HfArgumentParser`] we can turn this class into |
| | [argparse](https://docs.python.org/3/library/argparse#module-argparse) arguments that can be specified on the |
| | command line. |
| | |
| | Parameters: |
| | max_length (`int` or `None`, *optional*, defaults to `1024`): |
| | Maximum length of the sequences (prompt + completion) in the batch. This argument is required if you want |
| | to use the default data collator. |
| | max_prompt_length (`int` or `None`, *optional*, defaults to `512`): |
| | Maximum length of the prompt. This argument is required if you want to use the default data collator. |
| | max_completion_length (`int` or `None`, *optional*, defaults to `None`): |
| | Maximum length of the completion. This argument is required if you want to use the default data collator |
| | and your model is an encoder-decoder. |
| | beta (`float`, *optional*, defaults to `0.1`): |
| | Parameter controlling the deviation from the reference model. Higher β means less deviation from the |
| | reference model. |
| | label_pad_token_id (`int`, *optional*, defaults to `-100`): |
| | Label pad token id. This argument is required if you want to use the default data collator. |
| | padding_value (`int` or `None`, *optional*, defaults to `None`): |
| | Padding value to use. If `None`, the padding value of the tokenizer is used. |
| | truncation_mode (`str`, *optional*, defaults to `"keep_end"`): |
| | Truncation mode to use when the prompt is too long. Possible values are `"keep_end"` or `"keep_start"`. |
| | This argument is required if you want to use the default data collator. |
| | disable_dropout (`bool`, *optional*, defaults to `True`): |
| | Whether to disable dropout in the model and reference model. |
| | generate_during_eval (`bool`, *optional*, defaults to `False`): |
| | If `True`, generates and logs completions from both the model and the reference model to W&B or Comet |
| | during evaluation. |
| | is_encoder_decoder (`bool` or `None`, *optional*, defaults to `None`): |
| | When using the `model_init` argument (callable) to instantiate the model instead of the `model` argument, |
| | you need to specify if the model returned by the callable is an encoder-decoder model. |
| | precompute_ref_log_probs (`bool`, *optional*, defaults to `False`): |
| | Whether to precompute reference model log probabilities for training and evaluation datasets. This is |
| | useful when training without the reference model to reduce the total GPU memory needed. |
| | model_init_kwargs (`dict[str, Any]` or `None`, *optional*, defaults to `None`): |
| | Keyword arguments to pass to `AutoModelForCausalLM.from_pretrained` when instantiating the model from a |
| | string. |
| | ref_model_init_kwargs (`dict[str, Any]` or `None`, *optional*, defaults to `None`): |
| | Keyword arguments to pass to `AutoModelForCausalLM.from_pretrained` when instantiating the reference model |
| | from a string. |
| | dataset_num_proc (`int` or `None`, *optional*, defaults to `None`): |
| | Number of processes to use for processing the dataset. |
| | prompt_sample_size (`int`, *optional*, defaults to `1024`): |
| | Number of prompts that are fed to density ratio classifier. |
| | min_density_ratio (`float`, *optional*, defaults to `0.5`): |
| | Minimum value of the density ratio. The estimated density ratio is clamped to this value. |
| | max_density_ratio (`float`, *optional*, defaults to `10.0`): |
| | Maximum value of the density ratio. The estimated density ratio is clamped to this value. |
| | |
| | """ |
| | vllm_sampling_params: Optional[Any] = field( |
| | default = None, |
| | metadata = {'help': 'vLLM SamplingParams'}, |
| | ) |
| | unsloth_num_chunks : Optional[int] = field( |
| | default = -1, |
| | metadata = {'help': 'Chunk size to reduce memory usage. -1 is most efficient.'}, |
| | ) |
| | max_seq_length : Optional[int] = field( |
| | default = None, |
| | metadata = {'help': 'Maximum sequence length to truncate to.'}, |
| | ) |
| | def __init__( |
| | self, |
| | output_dir = None, |
| | overwrite_output_dir = None, |
| | do_train = False, |
| | do_eval = False, |
| | do_predict = False, |
| | eval_strategy = 'no', |
| | prediction_loss_only = False, |
| | per_device_train_batch_size = 4, |
| | per_device_eval_batch_size = 4, |
| | per_gpu_train_batch_size = None, |
| | per_gpu_eval_batch_size = None, |
| | gradient_accumulation_steps = 2, |
| | eval_accumulation_steps = 2, |
| | eval_delay = 0, |
| | torch_empty_cache_steps = 250, |
| | learning_rate = 5e-05, |
| | weight_decay = 0.01, |
| | adam_beta1 = 0.9, |
| | adam_beta2 = 0.999, |
| | adam_epsilon = 1e-08, |
| | max_grad_norm = 1.0, |
| | num_train_epochs = 3.0, |
| | max_steps = -1, |
| | lr_scheduler_type = 'linear', |
| | warmup_ratio = 0.1, |
| | warmup_steps = 0, |
| | log_level = 'passive', |
| | log_level_replica = 'warning', |
| | log_on_each_node = True, |
| | logging_dir = None, |
| | logging_strategy = 'steps', |
| | logging_first_step = False, |
| | logging_steps = 1, |
| | logging_nan_inf_filter = False, |
| | save_strategy = 'steps', |
| | save_steps = 500, |
| | save_total_limit = None, |
| | save_safetensors = True, |
| | save_on_each_node = False, |
| | save_only_model = False, |
| | restore_callback_states_from_checkpoint = False, |
| | no_cuda = False, |
| | use_cpu = False, |
| | use_mps_device = False, |
| | seed = 3407, |
| | data_seed = 3407, |
| | jit_mode_eval = False, |
| | use_ipex = False, |
| | bf16 = False, |
| | fp16 = False, |
| | fp16_opt_level = 'O1', |
| | half_precision_backend = 'auto', |
| | bf16_full_eval = False, |
| | fp16_full_eval = False, |
| | tf32 = None, |
| | local_rank = -1, |
| | ddp_backend = None, |
| | tpu_num_cores = None, |
| | tpu_metrics_debug = False, |
| | debug = '', |
| | dataloader_drop_last = False, |
| | eval_steps = None, |
| | dataloader_num_workers = 0, |
| | dataloader_prefetch_factor = None, |
| | past_index = -1, |
| | run_name = None, |
| | disable_tqdm = None, |
| | remove_unused_columns = True, |
| | label_names = None, |
| | load_best_model_at_end = False, |
| | metric_for_best_model = None, |
| | greater_is_better = None, |
| | ignore_data_skip = False, |
| | fsdp = '', |
| | fsdp_min_num_params = 0, |
| | fsdp_config = None, |
| | fsdp_transformer_layer_cls_to_wrap = None, |
| | accelerator_config = None, |
| | parallelism_config = None, |
| | deepspeed = None, |
| | label_smoothing_factor = 0.0, |
| | optim = 'adamw_8bit', |
| | optim_args = None, |
| | adafactor = False, |
| | group_by_length = False, |
| | length_column_name = 'length', |
| | report_to = None, |
| | ddp_find_unused_parameters = None, |
| | ddp_bucket_cap_mb = None, |
| | ddp_broadcast_buffers = None, |
| | dataloader_pin_memory = True, |
| | dataloader_persistent_workers = False, |
| | skip_memory_metrics = True, |
| | use_legacy_prediction_loop = False, |
| | push_to_hub = False, |
| | resume_from_checkpoint = None, |
| | hub_model_id = None, |
| | hub_strategy = 'every_save', |
| | hub_token = None, |
| | hub_private_repo = None, |
| | hub_always_push = False, |
| | hub_revision = None, |
| | gradient_checkpointing = True, |
| | gradient_checkpointing_kwargs = None, |
| | include_inputs_for_metrics = False, |
| | eval_do_concat_batches = True, |
| | fp16_backend = 'auto', |
| | push_to_hub_model_id = None, |
| | push_to_hub_organization = None, |
| | push_to_hub_token = None, |
| | mp_parameters = '', |
| | auto_find_batch_size = False, |
| | full_determinism = False, |
| | torchdynamo = None, |
| | ray_scope = 'last', |
| | ddp_timeout = 1800, |
| | torch_compile = False, |
| | torch_compile_backend = None, |
| | torch_compile_mode = None, |
| | include_tokens_per_second = False, |
| | include_num_input_tokens_seen = False, |
| | neftune_noise_alpha = None, |
| | optim_target_modules = None, |
| | batch_eval_metrics = False, |
| | eval_on_start = False, |
| | use_liger_kernel = False, |
| | liger_kernel_config = None, |
| | eval_use_gather_object = False, |
| | average_tokens_across_devices = True, |
| | max_length = 1024, |
| | max_prompt_length = 512, |
| | max_completion_length = None, |
| | beta = 0.1, |
| | label_pad_token_id = -100, |
| | padding_value = None, |
| | truncation_mode = 'keep_end', |
| | disable_dropout = True, |
| | generate_during_eval = False, |
| | is_encoder_decoder = None, |
| | precompute_ref_log_probs = False, |
| | model_init_kwargs = None, |
| | ref_model_init_kwargs = None, |
| | dataset_num_proc = None, |
| | prompt_sample_size = 1024, |
| | min_density_ratio = 0.5, |
| | max_density_ratio = 10.0, |
| | vllm_sampling_params = None, |
| | unsloth_num_chunks = -1, |
| | max_seq_length = None, |
| | **kwargs, |
| | ): |
| | if learning_rate < 1e-7: print(f'Unsloth: Your learning rate of `{learning_rate}` is too small and less than 1e-7! Consider increasing it, otherwise gradient updates will be close to 0!') |
| | if learning_rate > 1: print(f'Unsloth: Your learning rate of `{learning_rate}` is way too larger > 1! Consider decreasing it to 1e-1, otherwise gradient updates will explode!') |
| | if output_dir is None and save_strategy == 'steps' and save_steps == 500: |
| | output_dir = 'unsloth_training_checkpoints' |
| | save_strategy = 'no' |
| | if dataset_num_proc is None: |
| | from multiprocessing import cpu_count |
| | dataset_num_proc = max(cpu_count()+4, 2) |
| | |
| | super().__init__( |
| | output_dir = output_dir, |
| | overwrite_output_dir = overwrite_output_dir, |
| | do_train = do_train, |
| | do_eval = do_eval, |
| | do_predict = do_predict, |
| | eval_strategy = eval_strategy, |
| | prediction_loss_only = prediction_loss_only, |
| | per_device_train_batch_size = per_device_train_batch_size, |
| | per_device_eval_batch_size = per_device_eval_batch_size, |
| | per_gpu_train_batch_size = per_gpu_train_batch_size, |
| | per_gpu_eval_batch_size = per_gpu_eval_batch_size, |
| | gradient_accumulation_steps = gradient_accumulation_steps, |
| | eval_accumulation_steps = eval_accumulation_steps, |
| | eval_delay = eval_delay, |
| | torch_empty_cache_steps = torch_empty_cache_steps, |
| | learning_rate = learning_rate, |
| | weight_decay = weight_decay, |
| | adam_beta1 = adam_beta1, |
| | adam_beta2 = adam_beta2, |
| | adam_epsilon = adam_epsilon, |
| | max_grad_norm = max_grad_norm, |
| | num_train_epochs = num_train_epochs, |
| | max_steps = max_steps, |
| | lr_scheduler_type = lr_scheduler_type, |
| | warmup_ratio = warmup_ratio, |
| | warmup_steps = warmup_steps, |
| | log_level = log_level, |
| | log_level_replica = log_level_replica, |
| | log_on_each_node = log_on_each_node, |
| | logging_dir = logging_dir, |
| | logging_strategy = logging_strategy, |
| | logging_first_step = logging_first_step, |
| | logging_steps = logging_steps, |
| | logging_nan_inf_filter = logging_nan_inf_filter, |
| | save_strategy = save_strategy, |
| | save_steps = save_steps, |
| | save_total_limit = save_total_limit, |
| | save_safetensors = save_safetensors, |
| | save_on_each_node = save_on_each_node, |
| | save_only_model = save_only_model, |
| | restore_callback_states_from_checkpoint = restore_callback_states_from_checkpoint, |
| | no_cuda = no_cuda, |
| | use_cpu = use_cpu, |
| | use_mps_device = use_mps_device, |
| | seed = seed, |
| | data_seed = data_seed, |
| | jit_mode_eval = jit_mode_eval, |
| | use_ipex = use_ipex, |
| | bf16 = bf16, |
| | fp16 = fp16, |
| | fp16_opt_level = fp16_opt_level, |
| | half_precision_backend = half_precision_backend, |
| | bf16_full_eval = bf16_full_eval, |
| | fp16_full_eval = fp16_full_eval, |
| | tf32 = tf32, |
| | local_rank = local_rank, |
| | ddp_backend = ddp_backend, |
| | tpu_num_cores = tpu_num_cores, |
| | tpu_metrics_debug = tpu_metrics_debug, |
| | debug = debug, |
| | dataloader_drop_last = dataloader_drop_last, |
| | eval_steps = eval_steps, |
| | dataloader_num_workers = dataloader_num_workers, |
| | dataloader_prefetch_factor = dataloader_prefetch_factor, |
| | past_index = past_index, |
| | run_name = run_name, |
| | disable_tqdm = disable_tqdm, |
| | remove_unused_columns = remove_unused_columns, |
| | label_names = label_names, |
| | load_best_model_at_end = load_best_model_at_end, |
| | metric_for_best_model = metric_for_best_model, |
| | greater_is_better = greater_is_better, |
| | ignore_data_skip = ignore_data_skip, |
| | fsdp = fsdp, |
| | fsdp_min_num_params = fsdp_min_num_params, |
| | fsdp_config = fsdp_config, |
| | fsdp_transformer_layer_cls_to_wrap = fsdp_transformer_layer_cls_to_wrap, |
| | accelerator_config = accelerator_config, |
| | parallelism_config = parallelism_config, |
| | deepspeed = deepspeed, |
| | label_smoothing_factor = label_smoothing_factor, |
| | optim = optim, |
| | optim_args = optim_args, |
| | adafactor = adafactor, |
| | group_by_length = group_by_length, |
| | length_column_name = length_column_name, |
| | report_to = report_to, |
| | ddp_find_unused_parameters = ddp_find_unused_parameters, |
| | ddp_bucket_cap_mb = ddp_bucket_cap_mb, |
| | ddp_broadcast_buffers = ddp_broadcast_buffers, |
| | dataloader_pin_memory = dataloader_pin_memory, |
| | dataloader_persistent_workers = dataloader_persistent_workers, |
| | skip_memory_metrics = skip_memory_metrics, |
| | use_legacy_prediction_loop = use_legacy_prediction_loop, |
| | push_to_hub = push_to_hub, |
| | resume_from_checkpoint = resume_from_checkpoint, |
| | hub_model_id = hub_model_id, |
| | hub_strategy = hub_strategy, |
| | hub_token = hub_token, |
| | hub_private_repo = hub_private_repo, |
| | hub_always_push = hub_always_push, |
| | hub_revision = hub_revision, |
| | gradient_checkpointing = gradient_checkpointing, |
| | gradient_checkpointing_kwargs = gradient_checkpointing_kwargs, |
| | include_inputs_for_metrics = include_inputs_for_metrics, |
| | eval_do_concat_batches = eval_do_concat_batches, |
| | fp16_backend = fp16_backend, |
| | push_to_hub_model_id = push_to_hub_model_id, |
| | push_to_hub_organization = push_to_hub_organization, |
| | push_to_hub_token = push_to_hub_token, |
| | mp_parameters = mp_parameters, |
| | auto_find_batch_size = auto_find_batch_size, |
| | full_determinism = full_determinism, |
| | torchdynamo = torchdynamo, |
| | ray_scope = ray_scope, |
| | ddp_timeout = ddp_timeout, |
| | torch_compile = torch_compile, |
| | torch_compile_backend = torch_compile_backend, |
| | torch_compile_mode = torch_compile_mode, |
| | include_tokens_per_second = include_tokens_per_second, |
| | include_num_input_tokens_seen = include_num_input_tokens_seen, |
| | neftune_noise_alpha = neftune_noise_alpha, |
| | optim_target_modules = optim_target_modules, |
| | batch_eval_metrics = batch_eval_metrics, |
| | eval_on_start = eval_on_start, |
| | use_liger_kernel = use_liger_kernel, |
| | liger_kernel_config = liger_kernel_config, |
| | eval_use_gather_object = eval_use_gather_object, |
| | average_tokens_across_devices = average_tokens_across_devices, |
| | max_length = max_length, |
| | max_prompt_length = max_prompt_length, |
| | max_completion_length = max_completion_length, |
| | beta = beta, |
| | label_pad_token_id = label_pad_token_id, |
| | padding_value = padding_value, |
| | truncation_mode = truncation_mode, |
| | disable_dropout = disable_dropout, |
| | generate_during_eval = generate_during_eval, |
| | is_encoder_decoder = is_encoder_decoder, |
| | precompute_ref_log_probs = precompute_ref_log_probs, |
| | model_init_kwargs = model_init_kwargs, |
| | ref_model_init_kwargs = ref_model_init_kwargs, |
| | dataset_num_proc = dataset_num_proc, |
| | prompt_sample_size = prompt_sample_size, |
| | min_density_ratio = min_density_ratio, |
| | max_density_ratio = max_density_ratio,**kwargs) |
| | self.vllm_sampling_params = vllm_sampling_params |
| | self.unsloth_num_chunks = unsloth_num_chunks |
| | self.max_seq_length = max_seq_length |
| | pass |
| |
|
| | class _UnslothBCOTrainer(Trainer): |
| | r"""""" |
| |
|
| | _tag_names = ["trl", "bco"] |
| |
|
| | def __init__( |
| | self, |
| | model: Union[PreTrainedModel, nn.Module, str] = None, |
| | ref_model: Optional[Union[PreTrainedModel, nn.Module, str]] = None, |
| | args: BCOConfig = None, |
| | train_dataset: Optional[Dataset] = None, |
| | eval_dataset: Optional[Union[Dataset, dict[str, Dataset]]] = None, |
| | processing_class: Optional[ |
| | Union[PreTrainedTokenizerBase, BaseImageProcessor, FeatureExtractionMixin, ProcessorMixin] |
| | ] = None, |
| | data_collator: Optional[DataCollator] = None, |
| | model_init: Optional[Callable[[], PreTrainedModel]] = None, |
| | callbacks: Optional[list[TrainerCallback]] = None, |
| | optimizers: tuple[torch.optim.Optimizer, torch.optim.lr_scheduler.LambdaLR] = (None, None), |
| | preprocess_logits_for_metrics: Optional[Callable[[torch.Tensor, torch.Tensor], torch.Tensor]] = None, |
| | peft_config: Optional[dict] = None, |
| | compute_metrics: Optional[Callable[[EvalLoopOutput], dict]] = None, |
| | model_adapter_name: Optional[str] = None, |
| | ref_adapter_name: Optional[str] = None, |
| | embedding_func: Optional[Callable] = None, |
| | embedding_tokenizer: Optional[PreTrainedTokenizerBase] = None, |
| | ): |
| | if embedding_func is not None and not (is_sklearn_available() and is_joblib_available()): |
| | raise ImportError( |
| | "BCOTrainer with UDM requires the scikit-learn and joblib libraries. Please install it with `pip install scikit-learn joblib`." |
| | ) |
| |
|
| | if type(args) is TrainingArguments: |
| | raise ValueError("Please use `BCOConfig` instead `TrainingArguments`.") |
| |
|
| | if not isinstance(model, str) and model is not None and ref_model is model: |
| | raise ValueError( |
| | "`model` and `ref_model` cannot be the same object. If you want `ref_model` to be the " |
| | "same as `model`, you must mass a copy of it, or `None` if you use peft." |
| | ) |
| |
|
| | if args.model_init_kwargs is None: |
| | model_init_kwargs = {} |
| | elif not isinstance(model, str): |
| | raise ValueError("You passed model_kwargs to the BCOTrainer. But your model is already instantiated.") |
| | else: |
| | model_init_kwargs = args.model_init_kwargs |
| | torch_dtype = model_init_kwargs.get("torch_dtype") |
| | if torch_dtype is not None: |
| | |
| | if isinstance(torch_dtype, str) and torch_dtype != "auto": |
| | torch_dtype = getattr(torch, torch_dtype) |
| | if torch_dtype != "auto" and not isinstance(torch_dtype, torch.dtype): |
| | raise ValueError( |
| | f"Invalid `torch_dtype` passed to the BCOConfig. Expected a string with either `torch.dtype` or 'auto', but got {torch_dtype}." |
| | ) |
| | model_init_kwargs["torch_dtype"] = torch_dtype |
| |
|
| | if args.ref_model_init_kwargs is None: |
| | ref_model_init_kwargs = {} |
| | elif not isinstance(ref_model, str): |
| | raise ValueError( |
| | "You passed ref_model_kwargs to the BCOTrainer. But your ref_model is already instantiated." |
| | ) |
| | else: |
| | ref_model_init_kwargs = args.ref_model_init_kwargs |
| | torch_dtype = ref_model_init_kwargs.get("torch_dtype") |
| | if torch_dtype is not None: |
| | |
| | if isinstance(torch_dtype, str) and torch_dtype != "auto": |
| | torch_dtype = getattr(torch, torch_dtype) |
| | if torch_dtype != "auto" and not isinstance(torch_dtype, torch.dtype): |
| | raise ValueError( |
| | f"Invalid `torch_dtype` passed to the BCOConfig. Expected a string with either `torch.dtype` or 'auto', but got {torch_dtype}." |
| | ) |
| | ref_model_init_kwargs["torch_dtype"] = torch_dtype |
| |
|
| | if isinstance(model, str): |
| | model = AutoModelForCausalLM.from_pretrained(model, **model_init_kwargs) |
| |
|
| | if isinstance(ref_model, str): |
| | ref_model = AutoModelForCausalLM.from_pretrained(ref_model, **ref_model_init_kwargs) |
| |
|
| | |
| | |
| | self._peft_has_been_casted_to_bf16 = False |
| |
|
| | if not is_peft_available() and peft_config is not None: |
| | raise ValueError( |
| | "PEFT is not installed and you passed a `peft_config` in the trainer's kwargs, please install it with `pip install peft` to use the PEFT models" |
| | ) |
| | elif is_peft_available() and peft_config is not None: |
| | |
| | if isinstance(model, PeftModel): |
| | model = model.merge_and_unload() |
| |
|
| | if getattr(model, "is_loaded_in_8bit", False) or getattr(model, "is_loaded_in_4bit", False): |
| | _support_gc_kwargs = hasattr( |
| | args, "gradient_checkpointing_kwargs" |
| | ) and "gradient_checkpointing_kwargs" in list( |
| | inspect.signature(prepare_model_for_kbit_training).parameters |
| | ) |
| |
|
| | prepare_model_kwargs = {"use_gradient_checkpointing": args.gradient_checkpointing} |
| |
|
| | if _support_gc_kwargs: |
| | prepare_model_kwargs["gradient_checkpointing_kwargs"] = args.gradient_checkpointing_kwargs |
| |
|
| | model = prepare_model_for_kbit_training(model, **prepare_model_kwargs) |
| | elif args.gradient_checkpointing: |
| | |
| | if hasattr(model, "enable_input_require_grads"): |
| | model.enable_input_require_grads() |
| | else: |
| |
|
| | def make_inputs_require_grad(module, input, output): |
| | output.requires_grad_(True) |
| |
|
| | model.get_input_embeddings().register_forward_hook(make_inputs_require_grad) |
| |
|
| | |
| | model = model |
| | if args.bf16 and getattr(model, "is_loaded_in_4bit", False): |
| | peft_module_casting_to_bf16(model) |
| | |
| | self._peft_has_been_casted_to_bf16 = True |
| |
|
| | |
| | |
| | |
| | elif args.gradient_checkpointing: |
| | |
| | if hasattr(model, "enable_input_require_grads"): |
| | model.enable_input_require_grads() |
| | else: |
| |
|
| | def make_inputs_require_grad(module, input, output): |
| | output.requires_grad_(True) |
| |
|
| | model.get_input_embeddings().register_forward_hook(make_inputs_require_grad) |
| |
|
| | if args.generate_during_eval and not (is_wandb_available() or is_comet_available()): |
| | raise ValueError( |
| | "`generate_during_eval=True` requires Weights and Biases or Comet to be installed." |
| | " Please install `wandb` or `comet-ml` to resolve." |
| | ) |
| |
|
| | if model is not None: |
| | self.is_encoder_decoder = model.config.is_encoder_decoder |
| | elif args.is_encoder_decoder is None: |
| | raise ValueError("When no model is provided, you need to pass the parameter is_encoder_decoder.") |
| | else: |
| | self.is_encoder_decoder = args.is_encoder_decoder |
| |
|
| | self.is_peft_model = is_peft_available() and isinstance(model, PeftModel) |
| | self.model_adapter_name = model_adapter_name |
| | self.ref_adapter_name = ref_adapter_name |
| |
|
| | if ref_model: |
| | self.ref_model = ref_model |
| | elif self.is_peft_model or args.precompute_ref_log_probs: |
| | |
| | self.ref_model = None |
| | else: |
| | self.ref_model = create_reference_model(model) |
| |
|
| | if processing_class is None: |
| | raise ValueError( |
| | "max_length or a processing_class must be specified when using the default DPODataCollatorWithPadding" |
| | ) |
| | if args.max_length is None: |
| | logger.warning( |
| | "When using DPODataCollatorWithPadding, you should set `max_length` in the `BCOConfig`. " |
| | "It will be set to `512` by default, but you should do it yourself in the future.", |
| | ) |
| | max_length = 512 |
| | if args.max_length is not None: |
| | max_length = args.max_length |
| |
|
| | if args.max_prompt_length is None: |
| | logger.warning( |
| | "When using DPODataCollatorWithPadding, you should set `max_prompt_length` in the `BCOConfig`. " |
| | "It will be set to `128` by default, but you should do it yourself in the future.", |
| | ) |
| | max_prompt_length = 128 |
| | if args.max_prompt_length is not None: |
| | max_prompt_length = args.max_prompt_length |
| |
|
| | max_completion_length = None |
| | if args.max_completion_length is None and self.is_encoder_decoder: |
| | logger.warning( |
| | "When using DPODataCollatorWithPadding with an encoder decoder architecture, you should set `max_completion_length` in the BCOTrainer's init" |
| | " it will be set to `128` by default, but you should do it yourself in the future.", |
| | ) |
| | max_completion_length = 128 |
| | if args.max_completion_length is not None and self.is_encoder_decoder: |
| | max_completion_length = args.max_completion_length |
| |
|
| | if data_collator is None: |
| | data_collator = DPODataCollatorWithPadding( |
| | pad_token_id=processing_class.pad_token_id, |
| | label_pad_token_id=args.label_pad_token_id, |
| | is_encoder_decoder=self.is_encoder_decoder, |
| | ) |
| |
|
| | if args.remove_unused_columns: |
| | args.remove_unused_columns = False |
| | |
| | logger.warning( |
| | "When using DPODataCollatorWithPadding, you should set `remove_unused_columns=False` in your BCOConfig" |
| | " we have set it for you, but you should do it yourself in the future.", |
| | ) |
| |
|
| | self.use_dpo_data_collator = True |
| | else: |
| | self.use_dpo_data_collator = False |
| |
|
| | |
| | if args.disable_dropout: |
| | disable_dropout_in_model(model) |
| | if self.ref_model is not None: |
| | disable_dropout_in_model(self.ref_model) |
| |
|
| | self.max_length = max_length |
| | self.generate_during_eval = args.generate_during_eval |
| | self.label_pad_token_id = args.label_pad_token_id |
| | self.padding_value = args.padding_value if args.padding_value is not None else processing_class.pad_token_id |
| | self.max_prompt_length = max_prompt_length |
| | self.truncation_mode = args.truncation_mode |
| | self.max_completion_length = max_completion_length |
| | self.precompute_ref_log_probs = args.precompute_ref_log_probs |
| |
|
| | |
| | |
| | self._precomputed_train_ref_log_probs = False |
| | self._precomputed_eval_ref_log_probs = False |
| |
|
| | |
| | self._stored_metrics = defaultdict(lambda: defaultdict(list)) |
| |
|
| | |
| | self.beta = args.beta |
| | self.aux_loss_enabled = getattr(model.config, "output_router_logits", False) |
| | self.aux_loss_coef = getattr(model.config, "router_aux_loss_coef", 0.0) |
| | if self.aux_loss_enabled and self.aux_loss_coef == 0.0: |
| | logger.warning( |
| | "You set `output_router_logits` to `True` in the model config, but `router_aux_loss_coef` is set to " |
| | "`0.0`, meaning the auxiliary loss will not be used. Either set `router_aux_loss_coef` to a value " |
| | "greater than `0.0`, or set `output_router_logits` to `False` if you don't want to use the auxiliary " |
| | "loss.", |
| | ) |
| |
|
| | |
| | self.embedding_func = embedding_func |
| | self.embedding_tokenizer = embedding_tokenizer |
| |
|
| | |
| | |
| | |
| | |
| | |
| | |
| | |
| | model.warnings_issued["estimate_tokens"] = True |
| |
|
| | with PartialState().main_process_first(): |
| | |
| | train_dataset = train_dataset.map( |
| | maybe_extract_prompt, num_proc=args.dataset_num_proc, desc="Extracting prompt from train dataset" |
| | ) |
| | |
| | train_dataset = maybe_unpair_preference_dataset( |
| | train_dataset, args.dataset_num_proc, desc="Unpairing train dataset" |
| | ) |
| | |
| | train_dataset = train_dataset.map( |
| | maybe_apply_chat_template, fn_kwargs={"tokenizer": processing_class}, num_proc=args.dataset_num_proc |
| | ) |
| | if eval_dataset is not None: |
| | |
| | eval_dataset = eval_dataset.map( |
| | maybe_extract_prompt, num_proc=args.dataset_num_proc, desc="Extracting prompt from eval dataset" |
| | ) |
| | |
| | eval_dataset = maybe_unpair_preference_dataset( |
| | eval_dataset, args.dataset_num_proc, desc="Unpairing eval dataset" |
| | ) |
| | eval_dataset = eval_dataset.map( |
| | maybe_apply_chat_template, |
| | fn_kwargs={"tokenizer": processing_class}, |
| | num_proc=args.dataset_num_proc, |
| | ) |
| |
|
| | |
| | train_dataset = train_dataset.map( |
| | _tokenize, |
| | batched=True, |
| | fn_kwargs={"tokenizer": processing_class, "embedding_tokenizer": self.embedding_tokenizer}, |
| | num_proc=args.dataset_num_proc, |
| | desc="Tokenizing train dataset", |
| | ) |
| |
|
| | |
| | fn_kwargs = { |
| | "prefix": "", |
| | "is_encoder_decoder": self.is_encoder_decoder, |
| | "tokenizer": processing_class, |
| | "max_length": self.max_length, |
| | "truncation_mode": self.truncation_mode, |
| | "label_pad_token_id": self.label_pad_token_id, |
| | "max_prompt_length": self.max_prompt_length, |
| | "max_completion_length": self.max_completion_length, |
| | } |
| | train_dataset = train_dataset.map( |
| | _process_tokens, |
| | fn_kwargs=fn_kwargs, |
| | num_proc=args.dataset_num_proc, |
| | desc="Processing tokenized train dataset", |
| | ) |
| |
|
| | if eval_dataset is not None: |
| | |
| | eval_dataset = eval_dataset.map( |
| | _tokenize, |
| | fn_kwargs={"tokenizer": processing_class, "embedding_tokenizer": self.embedding_tokenizer}, |
| | batched=True, |
| | num_proc=args.dataset_num_proc, |
| | desc="Tokenizing eval dataset", |
| | ) |
| |
|
| | |
| | fn_kwargs = { |
| | "prefix": "", |
| | "is_encoder_decoder": self.is_encoder_decoder, |
| | "tokenizer": processing_class, |
| | "max_length": self.max_length, |
| | "truncation_mode": self.truncation_mode, |
| | "label_pad_token_id": self.label_pad_token_id, |
| | "max_prompt_length": self.max_prompt_length, |
| | "max_completion_length": self.max_completion_length, |
| | } |
| | eval_dataset = eval_dataset.map( |
| | _process_tokens, |
| | fn_kwargs=fn_kwargs, |
| | num_proc=args.dataset_num_proc, |
| | desc="Processing tokenized eval dataset", |
| | ) |
| |
|
| | desirable = train_dataset.filter( |
| | lambda x: x["label"], num_proc=args.dataset_num_proc, desc="Filtering desirable examples" |
| | ) |
| | undesirable = train_dataset.filter( |
| | lambda x: not x["label"], num_proc=args.dataset_num_proc, desc="Filtering undesirable examples" |
| | ) |
| |
|
| | super().__init__( |
| | model=model, |
| | args=args, |
| | data_collator=data_collator, |
| | train_dataset=train_dataset, |
| | eval_dataset=eval_dataset, |
| | processing_class=processing_class, |
| | model_init=model_init, |
| | compute_metrics=compute_metrics, |
| | callbacks=callbacks, |
| | optimizers=optimizers, |
| | preprocess_logits_for_metrics=preprocess_logits_for_metrics, |
| | ) |
| |
|
| | |
| | |
| | |
| | self.model_accepts_loss_kwargs = False |
| |
|
| | |
| | if hasattr(self.model, "add_model_tags"): |
| | self.model.add_model_tags(self._tag_names) |
| |
|
| | if not hasattr(self, "accelerator"): |
| | raise AttributeError( |
| | "Your `Trainer` does not have an `accelerator` object. Consider upgrading `transformers`." |
| | ) |
| |
|
| | |
| | if self.is_deepspeed_enabled: |
| | if self.accelerator.state.deepspeed_plugin.zero_stage == 3 and self.precompute_ref_log_probs: |
| | raise ValueError( |
| | "You cannot use `precompute_ref_log_probs=True` with Deepspeed ZeRO-3. Please set `precompute_ref_log_probs=False`." |
| | ) |
| |
|
| | if self.ref_model is None: |
| | if not (self.is_peft_model or self.precompute_ref_log_probs): |
| | raise ValueError( |
| | "No reference model and model is not a Peft model. Try setting `precompute_ref_log_probs=True`" |
| | ) |
| | else: |
| | if self.is_deepspeed_enabled: |
| | self.ref_model = prepare_deepspeed(self.ref_model, self.accelerator) |
| | else: |
| | self.ref_model = self.accelerator.prepare_model(self.ref_model, evaluation_mode=True) |
| |
|
| | self.running = RunningMoments(accelerator=self.accelerator) |
| |
|
| | if self.embedding_func is None or args.resume_from_checkpoint: |
| | return |
| |
|
| | chosen_embeddings = self._get_sample_prompt_embeddings(desirable, sample_size=self.args.prompt_sample_size) |
| | rejected_embeddings = self._get_sample_prompt_embeddings(undesirable, sample_size=self.args.prompt_sample_size) |
| |
|
| | embeddings = torch.cat((chosen_embeddings, rejected_embeddings), dim=0) |
| | labels = torch.cat( |
| | (torch.ones_like(chosen_embeddings[:, 0]), torch.zeros_like(rejected_embeddings[:, 0])), dim=0 |
| | ) |
| |
|
| | self.clf = LogisticRegression(class_weight="balanced").fit( |
| | embeddings.cpu().float().numpy(), labels.cpu().numpy() |
| | ) |
| | chosen_mean = self.clf.score( |
| | chosen_embeddings.cpu().float().numpy(), torch.ones_like(chosen_embeddings[:, 0]).cpu().numpy() |
| | ) |
| | rejected_mean = self.clf.score( |
| | rejected_embeddings.cpu().float().numpy(), torch.zeros_like(rejected_embeddings[:, 0]).cpu().numpy() |
| | ) |
| | logger.info(f"UDM classifier training scores: chosen: {chosen_mean}, rejected: {rejected_mean}") |
| |
|
| | @property |
| | def match_underlying_distribution(self): |
| | return self.embedding_func is not None and self.embedding_tokenizer is not None |
| |
|
| | def _get_chosen_prob(self, prompt_embeddings: torch.FloatTensor) -> torch.FloatTensor: |
| | """ |
| | Calculates the probability if the given prompt embedding is from desirable dataset. This function calculates |
| | the probability in the process and ensemble across processes. |
| | """ |
| | dtype = prompt_embeddings.dtype |
| | device = prompt_embeddings.device |
| | rank = self.accelerator.process_index |
| |
|
| | padded_prompt_embeddings = self.accelerator.pad_across_processes( |
| | prompt_embeddings, pad_index=self.embedding_tokenizer.pad_token_id |
| | ) |
| | sample_size = padded_prompt_embeddings.shape[0] |
| | nonzero = padded_prompt_embeddings.mean(dim=1) != self.embedding_tokenizer.pad_token_id |
| | prompt_embeddings = self.accelerator.gather(padded_prompt_embeddings) |
| |
|
| | |
| | if prompt_embeddings.shape[0] == 0: |
| | return torch.tensor([], device=device, dtype=dtype) |
| |
|
| | prob = self.clf.predict_proba(prompt_embeddings.cpu().float().numpy())[:, 1] |
| | prob = torch.as_tensor(prob, dtype=dtype, device=device) |
| | prob = self.accelerator.reduce(prob, reduction="mean") |
| |
|
| | prob = prob[sample_size * rank : sample_size * (rank + 1)] |
| | prob = prob[nonzero] |
| |
|
| | return prob |
| |
|
| | def _vectorize_prompt(self, input_ids: torch.LongTensor, attention_mask: torch.LongTensor) -> torch.FloatTensor: |
| | """ |
| | Replaces processing_class.pad_token_id to embedding_tokenizer.pad_token_id and applies self.embedding_func |
| | """ |
| | input_ids = torch.where( |
| | input_ids == self.processing_class.pad_token_id, |
| | self.embedding_tokenizer.pad_token_id, |
| | input_ids, |
| | ) |
| |
|
| | with torch.no_grad(): |
| | embeddings = self.embedding_func( |
| | input_ids=input_ids, |
| | attention_mask=attention_mask, |
| | ) |
| |
|
| | return embeddings |
| |
|
| | def _get_prompt_embeddings( |
| | self, batch: dict[str, Union[list, torch.LongTensor]] |
| | ) -> tuple[torch.FloatTensor, torch.FloatTensor]: |
| | """Extract embeddings from frozen embedding model""" |
| |
|
| | if not self.match_underlying_distribution: |
| | return None, None |
| |
|
| | embeddings = self._vectorize_prompt( |
| | input_ids=batch["embedding_input_ids"], |
| | attention_mask=batch["embedding_attention_mask"], |
| | ) |
| |
|
| | labels = torch.tensor(batch["label"], dtype=torch.bool, device=embeddings.device) |
| | chosen_idx = torch.where(labels)[0] |
| | rejected_idx = torch.where(~labels)[0] |
| |
|
| | chosen_embeddings = embeddings[chosen_idx, ...] |
| | rejected_embeddings = embeddings[rejected_idx, ...] |
| |
|
| | return (chosen_embeddings, rejected_embeddings) |
| |
|
| | def _get_sample_prompt_embeddings(self, dataset: Dataset, sample_size: int = 512) -> torch.FloatTensor: |
| | """ |
| | Sample instances from dataset and get prompt embeddings. Used for density ratio classifier training. |
| | """ |
| | n_samples = min(len(dataset), sample_size) |
| | rand_indices = np.random.choice(len(dataset), size=(n_samples,)) |
| |
|
| | embedding_dataset = dataset.select(rand_indices) |
| |
|
| | dataloader_params = { |
| | "batch_size": self.args.per_device_train_batch_size, |
| | "collate_fn": self.data_collator, |
| | "num_workers": self.args.dataloader_num_workers, |
| | "pin_memory": self.args.dataloader_pin_memory, |
| | "shuffle": False, |
| | } |
| |
|
| | |
| | data_loader = self.accelerator.prepare(DataLoader(embedding_dataset, **dataloader_params)) |
| |
|
| | with torch.no_grad(): |
| | all_embeddings = torch.empty(0) |
| | for padded_batch in tqdm(iterable=data_loader, desc="Building sample prompt embeddings"): |
| | embeddings = self._vectorize_prompt( |
| | input_ids=padded_batch["embedding_input_ids"], |
| | attention_mask=padded_batch["embedding_attention_mask"], |
| | ) |
| | embeddings = self.accelerator.gather_for_metrics(embeddings) |
| | all_embeddings = torch.cat((all_embeddings, embeddings.cpu())) |
| |
|
| | return all_embeddings |
| |
|
| | def _save_optimizer_and_scheduler(self, output_dir): |
| | output_dir = output_dir if output_dir is not None else self.args.output_dir |
| | super()._save_optimizer_and_scheduler(output_dir) |
| |
|
| | if self.accelerator.is_main_process: |
| | |
| | self.running.save_to_json(os.path.join(output_dir, RUNNING_NAME)) |
| |
|
| | if self.match_underlying_distribution: |
| | joblib.dump(self.clf, os.path.join(output_dir, CLF_NAME), compress=True) |
| |
|
| | def _load_optimizer_and_scheduler(self, checkpoint): |
| | if checkpoint is None: |
| | logger.warning_once(f"Missing Checkpoint {checkpoint}") |
| | return |
| |
|
| | super()._load_optimizer_and_scheduler(checkpoint) |
| |
|
| | |
| | running_file = os.path.join(checkpoint, RUNNING_NAME) |
| | if os.path.isfile(running_file): |
| | self.running = RunningMoments.load_from_json(self.accelerator, running_file) |
| |
|
| | if self.match_underlying_distribution: |
| | clf_file = os.path.join(checkpoint, CLF_NAME) |
| | if os.path.isfile(clf_file): |
| | self.clf = joblib.load(clf_file) |
| |
|
| | @contextmanager |
| | def null_ref_context(self): |
| | """Context manager for handling null reference model (that is, peft adapter manipulation).""" |
| | with ( |
| | self.accelerator.unwrap_model(self.model).disable_adapter() |
| | if self.is_peft_model and not self.ref_adapter_name |
| | else nullcontext() |
| | ): |
| | if self.ref_adapter_name: |
| | self.model.set_adapter(self.ref_adapter_name) |
| | yield |
| | if self.ref_adapter_name: |
| | self.model.set_adapter(self.model_adapter_name or "default") |
| |
|
| | def get_train_dataloader(self) -> DataLoader: |
| | """ |
| | Returns the training [`~torch.utils.data.DataLoader`]. |
| | |
| | Subclass of transformers.src.transformers.trainer.get_train_dataloader to precompute `ref_log_probs`. |
| | """ |
| |
|
| | if self.precompute_ref_log_probs and not self._precomputed_train_ref_log_probs: |
| | dataloader_params = { |
| | "batch_size": self.args.per_device_train_batch_size, |
| | "collate_fn": self.data_collator, |
| | "num_workers": self.args.dataloader_num_workers, |
| | "pin_memory": self.args.dataloader_pin_memory, |
| | "shuffle": False, |
| | } |
| |
|
| | |
| | data_loader = self.accelerator.prepare(DataLoader(self.train_dataset, **dataloader_params)) |
| | reference_completion_logps = [] |
| |
|
| | for padded_batch in tqdm(iterable=data_loader, desc="Train dataset reference log probs"): |
| | reference_completion_logp = self.compute_reference_log_probs(padded_batch) |
| |
|
| | reference_completion_logp = self.accelerator.gather_for_metrics(reference_completion_logp) |
| | reference_completion_logps.append(reference_completion_logp.cpu()) |
| |
|
| | self.train_dataset = self.train_dataset.add_column( |
| | name="reference_logps", column=torch.cat(reference_completion_logps).float().numpy() |
| | ) |
| |
|
| | self._precomputed_train_ref_log_probs = True |
| |
|
| | return super().get_train_dataloader() |
| |
|
| | def get_eval_dataloader(self, eval_dataset: Optional[Dataset] = None) -> DataLoader: |
| | """ |
| | Returns the evaluation [`~torch.utils.data.DataLoader`]. |
| | |
| | Subclass of transformers.src.transformers.trainer.get_eval_dataloader to precompute `ref_log_probs`. |
| | |
| | Args: |
| | eval_dataset (`torch.utils.data.Dataset`, *optional*): |
| | If provided, will override `self.eval_dataset`. If it is a [`~datasets.Dataset`], columns not accepted |
| | by the `model.forward()` method are automatically removed. It must implement `__len__`. |
| | """ |
| | if eval_dataset is None and self.eval_dataset is None: |
| | raise ValueError("Trainer: evaluation requires an eval_dataset.") |
| | eval_dataset = eval_dataset if eval_dataset is not None else self.eval_dataset |
| |
|
| | if self.precompute_ref_log_probs and not self._precomputed_eval_ref_log_probs: |
| | dataloader_params = { |
| | "batch_size": self.args.per_device_eval_batch_size, |
| | "collate_fn": self.data_collator, |
| | "num_workers": self.args.dataloader_num_workers, |
| | "pin_memory": self.args.dataloader_pin_memory, |
| | "shuffle": False, |
| | } |
| |
|
| | |
| | data_loader = self.accelerator.prepare(DataLoader(eval_dataset, **dataloader_params)) |
| |
|
| | reference_completion_logps = [] |
| |
|
| | for padded_batch in tqdm(iterable=data_loader, desc="Eval dataset reference log probs"): |
| | reference_completion_logp = self.compute_reference_log_probs(padded_batch) |
| |
|
| | reference_completion_logp = self.accelerator.gather_for_metrics(reference_completion_logp) |
| | reference_completion_logps.append(reference_completion_logp.cpu()) |
| |
|
| | eval_dataset = eval_dataset.add_column( |
| | name="reference_logps", column=torch.cat(reference_completion_logps).float().numpy() |
| | ) |
| |
|
| | |
| | if self.eval_dataset is not None: |
| | self.eval_dataset = eval_dataset |
| | self._precomputed_eval_ref_log_probs = True |
| |
|
| | return super().get_eval_dataloader(eval_dataset=eval_dataset) |
| |
|
| | def compute_reference_log_probs(self, padded_batch: dict) -> dict: |
| | """Computes log probabilities of the reference model for a single padded batch of a BCO specific dataset.""" |
| | with torch.no_grad(): |
| | if self.ref_model is None: |
| | with self.null_ref_context(): |
| | if self.is_encoder_decoder: |
| | completion_logits = self.model( |
| | padded_batch["prompt_input_ids"], |
| | attention_mask=padded_batch["prompt_attention_mask"], |
| | decoder_input_ids=padded_batch.get("completion_decoder_input_ids"), |
| | labels=padded_batch["completion_labels"], |
| | ).logits |
| |
|
| | else: |
| | completion_logits = self.model( |
| | padded_batch["completion_input_ids"], |
| | attention_mask=padded_batch["completion_attention_mask"], |
| | ).logits |
| |
|
| | else: |
| | if self.is_encoder_decoder: |
| | completion_logits = self.ref_model( |
| | padded_batch["prompt_input_ids"], |
| | attention_mask=padded_batch["prompt_attention_mask"], |
| | decoder_input_ids=padded_batch.get("completion_decoder_input_ids"), |
| | labels=padded_batch["completion_labels"], |
| | ).logits |
| |
|
| | else: |
| | completion_logits = self.ref_model( |
| | padded_batch["completion_input_ids"], attention_mask=padded_batch["completion_attention_mask"] |
| | ).logits |
| |
|
| | completion_logps = self.get_batch_logps( |
| | completion_logits, |
| | padded_batch["completion_labels"], |
| | average_log_prob=False, |
| | is_encoder_decoder=self.is_encoder_decoder, |
| | label_pad_token_id=self.label_pad_token_id, |
| | ) |
| |
|
| | return completion_logps |
| |
|
| | @staticmethod |
| | def get_batch_logps( |
| | logits: torch.FloatTensor, |
| | labels: torch.LongTensor, |
| | average_log_prob: bool = False, |
| | label_pad_token_id: int = -100, |
| | is_encoder_decoder: bool = False, |
| | ) -> torch.FloatTensor: |
| | """Compute the log probabilities of the given labels under the given logits. |
| | |
| | Args: |
| | logits: Logits of the model (unnormalized). Shape: (batch_size, sequence_length, vocab_size) |
| | labels: |
| | Labels for which to compute the log probabilities. Label tokens with a value of label_pad_token_id are |
| | ignored. Shape: (batch_size, sequence_length) |
| | average_log_prob: |
| | If True, return the average log probability per (non-masked) token. Otherwise, return the sum of the |
| | log probabilities of the (non-masked) tokens. |
| | |
| | Returns: |
| | A tensor of shape (batch_size,) containing the average/sum log probabilities of the given labels under the |
| | given logits. |
| | """ |
| | if logits.shape[:-1] != labels.shape: |
| | raise ValueError("Logits (batch and sequence length dim) and labels must have the same shape.") |
| |
|
| | if not is_encoder_decoder: |
| | labels = labels[:, 1:].clone() |
| | logits = logits[:, :-1, :] |
| | else: |
| | |
| | labels = labels.clone() |
| |
|
| | loss_mask = labels != label_pad_token_id |
| |
|
| | |
| | labels[labels == label_pad_token_id] = 0 |
| |
|
| | per_token_logps = selective_log_softmax(logits, labels) |
| |
|
| | if average_log_prob: |
| | return (per_token_logps * loss_mask).sum(-1) / loss_mask.sum(-1) |
| | else: |
| | return (per_token_logps * loss_mask).sum(-1) |
| |
|
| | def forward( |
| | self, model: nn.Module, batch: dict[str, Union[list, torch.LongTensor]] |
| | ) -> tuple[torch.FloatTensor, torch.FloatTensor, torch.FloatTensor, torch.FloatTensor]: |
| | model_kwargs = ( |
| | { |
| | "labels": batch["completion_labels"], |
| | "decoder_input_ids": batch.get("completion_decoder_input_ids"), |
| | } |
| | if self.is_encoder_decoder |
| | else {} |
| | ) |
| | if self.aux_loss_enabled: |
| | model_kwargs["output_router_logits"] = True |
| |
|
| | outputs = model( |
| | batch["completion_input_ids"], |
| | attention_mask=batch["completion_attention_mask"], |
| | **model_kwargs, |
| | ) |
| | completion_logits = outputs.logits |
| |
|
| | completion_logps = self.get_batch_logps( |
| | completion_logits, |
| | batch["completion_labels"], |
| | average_log_prob=False, |
| | is_encoder_decoder=self.is_encoder_decoder, |
| | label_pad_token_id=self.label_pad_token_id, |
| | ) |
| |
|
| | if completion_logps.shape[0] != len(batch["label"]): |
| | raise ValueError( |
| | "There is a mismatch between the number of examples in this batch and the number of " |
| | "examples for which an output sequence was predicted." |
| | ) |
| |
|
| | chosen_idx = [i for i in range(completion_logps.shape[0]) if batch["label"][i] is True] |
| | rejected_idx = [i for i in range(completion_logps.shape[0]) if batch["label"][i] is False] |
| |
|
| | chosen_logps = completion_logps[chosen_idx, ...] |
| | rejected_logps = completion_logps[rejected_idx, ...] |
| |
|
| | chosen_logits = completion_logits[chosen_idx, ...] |
| | rejected_logits = completion_logits[rejected_idx, ...] |
| |
|
| | if self.aux_loss_enabled: |
| | return (chosen_logps, rejected_logps, chosen_logits, rejected_logits, outputs.aux_loss) |
| | else: |
| | return (chosen_logps, rejected_logps, chosen_logits, rejected_logits) |
| |
|
| | def _get_udm_weight(self, rejected_embeddings: torch.FloatTensor) -> torch.FloatTensor: |
| | prob_desirable = self._get_chosen_prob(rejected_embeddings) |
| | min_ratio = self.args.min_density_ratio |
| | max_ratio = self.args.max_density_ratio |
| |
|
| | weight = (prob_desirable / (1 - prob_desirable + 1e-8)).clamp(min=min_ratio, max=max_ratio) |
| |
|
| | return weight |
| |
|
| | def bco_loss( |
| | self, |
| | policy_chosen_logps: torch.FloatTensor, |
| | policy_rejected_logps: torch.FloatTensor, |
| | reference_chosen_logps: torch.FloatTensor, |
| | reference_rejected_logps: torch.FloatTensor, |
| | chosen_embeddings: Optional[torch.FloatTensor], |
| | rejected_embeddings: Optional[torch.FloatTensor], |
| | do_train: bool = True, |
| | ) -> tuple[torch.FloatTensor, torch.FloatTensor, torch.FloatTensor, torch.FloatTensor]: |
| | """Compute the BCO loss for a batch of policy and reference model log probabilities. |
| | |
| | Args: |
| | policy_chosen_logps: |
| | Log probabilities of the policy model for the chosen responses. Shape: (num(chosen) in batch_size,) |
| | policy_rejected_logps: |
| | Log probabilities of the policy model for the rejected responses. Shape: (num(rejected) in batch_size,) |
| | reference_chosen_logps: |
| | Log probabilities of the reference model for the chosen responses. Shape: (num(chosen) in batch_size,) |
| | reference_rejected_logps: |
| | Log probabilities of the reference model for the rejected responses. Shape: (num(rejected) in |
| | batch_size,) |
| | chosen_embeddings: embeddings of desirable prompts |
| | rejected_embeddings: embeddings of undesirable prompts |
| | |
| | Returns: |
| | A tuple of four tensors: (losses, chosen_rewards, rejected_rewards, delta). The losses tensor contains the |
| | BCO loss for each example in the batch. The chosen_rewards and rejected_rewards tensors contain the rewards |
| | for the chosen and rejected responses, respectively. The delta value contains the moving average of all |
| | implicit rewards. |
| | """ |
| |
|
| | chosen_logratios = policy_chosen_logps - reference_chosen_logps |
| | chosen_rewards = self.beta * chosen_logratios |
| |
|
| | rejected_logratios = policy_rejected_logps - reference_rejected_logps |
| | rejected_rewards = self.beta * rejected_logratios |
| |
|
| | if do_train: |
| | self.running.update(torch.cat((chosen_rewards, rejected_rewards), 0).detach()) |
| | delta = torch.as_tensor(self.running.mean, device=chosen_rewards.device) |
| |
|
| | chosen_losses = -F.logsigmoid(chosen_rewards - delta) |
| | rejected_losses = -F.logsigmoid(-(rejected_rewards - delta)) |
| |
|
| | if self.match_underlying_distribution: |
| | chosen_weight = torch.ones_like(chosen_losses) |
| | rejected_weight = self._get_udm_weight(rejected_embeddings) |
| |
|
| | losses = torch.cat((chosen_weight * chosen_losses, rejected_weight * rejected_losses), dim=0) |
| | else: |
| | losses = torch.cat((chosen_losses, rejected_losses), dim=0) |
| |
|
| | return losses, chosen_rewards, rejected_rewards, delta |
| |
|
| | def get_batch_loss_metrics( |
| | self, |
| | model, |
| | batch: dict[str, Union[list, torch.LongTensor]], |
| | do_train: bool = True, |
| | ): |
| | """Compute the BCO loss and other metrics for the given batch of inputs for train or test.""" |
| | metrics = {} |
| | batch = {k: (v.to(self.accelerator.device) if isinstance(v, torch.Tensor) else v) for k, v in batch.items()} |
| |
|
| | forward_output = self.forward(model, batch) |
| | ( |
| | policy_chosen_logps, |
| | policy_rejected_logps, |
| | policy_chosen_logits, |
| | policy_rejected_logits, |
| | ) = forward_output[:4] |
| | if self.aux_loss_enabled: |
| | aux_loss = forward_output[4] |
| |
|
| | |
| | if "reference_logps" in batch: |
| | chosen_idx = [i for i in range(batch["reference_logps"].shape[0]) if batch["label"][i] is True] |
| | rejected_idx = [i for i in range(batch["reference_logps"].shape[0]) if batch["label"][i] is False] |
| |
|
| | reference_chosen_logps = batch["reference_logps"][chosen_idx, ...] |
| | reference_rejected_logps = batch["reference_logps"][rejected_idx, ...] |
| | else: |
| | with torch.no_grad(): |
| | if self.ref_model is None: |
| | with self.null_ref_context(): |
| | ( |
| | reference_chosen_logps, |
| | reference_rejected_logps, |
| | _, |
| | _, |
| | ) = self.forward(self.model, batch)[:4] |
| | else: |
| | ( |
| | reference_chosen_logps, |
| | reference_rejected_logps, |
| | _, |
| | _, |
| | ) = self.forward(self.ref_model, batch)[:4] |
| |
|
| | chosen_embeddings, rejected_embeddings = self._get_prompt_embeddings(batch) |
| |
|
| | losses, chosen_rewards, rejected_rewards, delta = self.bco_loss( |
| | policy_chosen_logps, |
| | policy_rejected_logps, |
| | reference_chosen_logps, |
| | reference_rejected_logps, |
| | chosen_embeddings, |
| | rejected_embeddings, |
| | do_train=do_train, |
| | ) |
| | metrics["delta"] = self.accelerator.gather_for_metrics(delta).mean().item() |
| |
|
| | num_chosen = torch.Tensor([len(chosen_rewards)]).to(self.accelerator.device) |
| | num_rejected = torch.Tensor([len(rejected_rewards)]).to(self.accelerator.device) |
| |
|
| | all_num_chosen = self.accelerator.gather_for_metrics(num_chosen).sum().item() |
| | all_num_rejected = self.accelerator.gather_for_metrics(num_rejected).sum().item() |
| |
|
| | if all_num_chosen > 0: |
| | metrics["rewards/chosen_sum"] = ( |
| | self.accelerator.gather_for_metrics(chosen_rewards.nansum()).nansum().item() |
| | ) |
| | metrics["logps/chosen_sum"] = ( |
| | self.accelerator.gather_for_metrics(policy_chosen_logps.nansum()).nansum().item() |
| | ) |
| | metrics["logits/chosen_sum"] = ( |
| | self.accelerator.gather_for_metrics(policy_chosen_logits.nansum()).nansum().item() |
| | ) |
| | metrics["count/chosen"] = all_num_chosen |
| |
|
| | if all_num_rejected > 0: |
| | metrics["rewards/rejected_sum"] = ( |
| | self.accelerator.gather_for_metrics(rejected_rewards.nansum()).nansum().item() |
| | ) |
| | metrics["logps/rejected_sum"] = ( |
| | self.accelerator.gather_for_metrics(policy_rejected_logps.nansum()).nansum().item() |
| | ) |
| | metrics["logits/rejected_sum"] = ( |
| | self.accelerator.gather_for_metrics(policy_rejected_logits.nansum()).nansum().item() |
| | ) |
| | metrics["count/rejected"] = all_num_rejected |
| |
|
| | loss = losses.nanmean() |
| | if self.aux_loss_enabled: |
| | loss += self.aux_loss_coef * aux_loss |
| |
|
| | return loss, metrics |
| |
|
| | def compute_loss( |
| | self, |
| | model: Union[PreTrainedModel, nn.Module], |
| | inputs: dict[str, Union[torch.Tensor, Any]], |
| | return_outputs=False, |
| | num_items_in_batch=None, |
| | ) -> Union[torch.Tensor, tuple[torch.Tensor, dict[str, torch.Tensor]]]: |
| | compute_loss_context_manager = ( |
| | autocast(self.accelerator.device.type) if self._peft_has_been_casted_to_bf16 else nullcontext() |
| | ) |
| |
|
| | with compute_loss_context_manager: |
| | loss, metrics = self.get_batch_loss_metrics(model, inputs) |
| |
|
| | |
| | loss = loss.to(self.args.device) |
| | |
| | if self.accelerator.is_main_process: |
| | self.store_metrics(metrics, train_eval="train") |
| |
|
| | if return_outputs: |
| | return (loss, metrics) |
| | return loss |
| |
|
| | def store_metrics(self, metrics: dict[str, float], train_eval: Literal["train", "eval"] = "train") -> None: |
| | for key, value in metrics.items(): |
| | self._stored_metrics[train_eval][key].append(value) |
| |
|
| | def _get_train_sampler(self, dataset: Optional[Dataset] = None) -> Optional[torch.utils.data.Sampler]: |
| | if dataset is None: |
| | dataset = self.train_dataset |
| | if dataset is None or not has_length(dataset): |
| | return None |
| | return SequentialSampler(dataset) |
| |
|
| | def generate_from_model_and_ref(self, model, batch: dict[str, torch.LongTensor]) -> tuple[str, str]: |
| | """Generate samples from the model and reference model for the given batch of inputs.""" |
| |
|
| | |
| | |
| | generate_context_manager = ( |
| | autocast(self.accelerator.device.type) if self._peft_has_been_casted_to_bf16 else nullcontext() |
| | ) |
| | with generate_context_manager: |
| | policy_output = model.generate( |
| | input_ids=batch["prompt_input_ids"], |
| | attention_mask=batch["prompt_attention_mask"], |
| | max_length=self.max_length, |
| | do_sample=True, |
| | pad_token_id=self.processing_class.pad_token_id, |
| | ) |
| |
|
| | |
| | if "reference_output" in batch: |
| | reference_output = batch["reference_output"] |
| | else: |
| | if self.ref_model is None: |
| | with self.null_ref_context(): |
| | reference_output = self.model.generate( |
| | input_ids=batch["prompt_input_ids"], |
| | attention_mask=batch["prompt_attention_mask"], |
| | max_length=self.max_length, |
| | do_sample=True, |
| | pad_token_id=self.processing_class.pad_token_id, |
| | ) |
| | else: |
| | reference_output = self.ref_model.generate( |
| | input_ids=batch["prompt_input_ids"], |
| | attention_mask=batch["prompt_attention_mask"], |
| | max_length=self.max_length, |
| | do_sample=True, |
| | pad_token_id=self.processing_class.pad_token_id, |
| | ) |
| |
|
| | policy_output = pad_to_length(policy_output, self.max_length, self.processing_class.pad_token_id) |
| | policy_output_decoded = self.processing_class.batch_decode(policy_output, skip_special_tokens=True) |
| |
|
| | reference_output = pad_to_length(reference_output, self.max_length, self.processing_class.pad_token_id) |
| | reference_output_decoded = self.processing_class.batch_decode(reference_output, skip_special_tokens=True) |
| |
|
| | return policy_output_decoded, reference_output_decoded |
| |
|
| | def prediction_step( |
| | self, |
| | model: Union[PreTrainedModel, nn.Module], |
| | inputs: dict[str, Union[torch.Tensor, Any]], |
| | prediction_loss_only: bool, |
| | ignore_keys: Optional[list[str]] = None, |
| | ): |
| | if ignore_keys is None: |
| | if hasattr(model, "config"): |
| | ignore_keys = getattr(model.config, "keys_to_ignore_at_inference", []) |
| | else: |
| | ignore_keys = [] |
| |
|
| | prediction_context_manager = ( |
| | autocast(self.accelerator.device.type) if self._peft_has_been_casted_to_bf16 else nullcontext() |
| | ) |
| | with torch.no_grad(), prediction_context_manager: |
| | loss, metrics = self.get_batch_loss_metrics(model, inputs, do_train=False) |
| |
|
| | |
| | if self.accelerator.is_main_process: |
| | self.store_metrics(metrics, train_eval="eval") |
| |
|
| | if prediction_loss_only: |
| | return (loss.detach(), None, None) |
| |
|
| | |
| | logits_dict = {} |
| | if "logits/chosen_sum" in metrics: |
| | logits_dict["eval_logits/chosen"] = metrics["logits/chosen_sum"] |
| | if "logits/rejected_sum" in metrics: |
| | logits_dict["eval_logits/rejected"] = metrics["logits/rejected_sum"] |
| | logits = [v for k, v in logits_dict.items() if k not in ignore_keys] |
| | logits = torch.tensor(logits, device=self.accelerator.device) |
| | labels = torch.zeros(logits.shape[0], device=self.accelerator.device) |
| |
|
| | return (loss.detach(), logits, labels) |
| |
|
| | def evaluation_loop( |
| | self, |
| | dataloader: DataLoader, |
| | description: str, |
| | prediction_loss_only: Optional[bool] = None, |
| | ignore_keys: Optional[list[str]] = None, |
| | metric_key_prefix: str = "eval", |
| | ) -> EvalLoopOutput: |
| | """ |
| | Overriding built-in evaluation loop to store metrics for each batch. Prediction/evaluation loop, shared by |
| | `Trainer.evaluate()` and `Trainer.predict()`. |
| | |
| | Works both with or without labels. |
| | """ |
| |
|
| | |
| | if self.generate_during_eval: |
| | |
| | num_samples = len(dataloader.dataset) |
| | random_indices = random.sample(range(num_samples), k=self.args.eval_batch_size) |
| |
|
| | |
| | random_batch_dataset = dataloader.dataset.select(random_indices) |
| | random_batch = self.data_collator(random_batch_dataset) |
| | random_batch = self._prepare_inputs(random_batch) |
| |
|
| | target_labels = torch.tensor(random_batch["label"], dtype=torch.bool, device=self.accelerator.device) |
| | target_indices = torch.where(~target_labels)[0] |
| | target_batch = { |
| | "prompt_input_ids": random_batch["prompt_input_ids"][target_indices], |
| | "prompt_attention_mask": random_batch["prompt_attention_mask"][target_indices], |
| | "prompt": itemgetter(*target_indices)(random_batch["prompt"]), |
| | } |
| | policy_output_decoded, ref_output_decoded = self.generate_from_model_and_ref(self.model, target_batch) |
| |
|
| | table = pd.DataFrame( |
| | columns=["Prompt", "Policy", "Ref Model"], |
| | data=[ |
| | [prompt, pol[len(prompt) :], ref[len(prompt) :]] |
| | for prompt, pol, ref in zip(target_batch["prompt"], policy_output_decoded, ref_output_decoded) |
| | ], |
| | ) |
| | if "wandb" in self.args.report_to: |
| | wandb.log({"game_log": wandb.Table(data=table)}) |
| |
|
| | if "comet_ml" in self.args.report_to: |
| | log_table_to_comet_experiment( |
| | name="game_log.csv", |
| | table=table, |
| | ) |
| |
|
| | |
| | initial_output = super().evaluation_loop( |
| | dataloader, description, prediction_loss_only, ignore_keys, metric_key_prefix |
| | ) |
| |
|
| | return initial_output |
| |
|
| | def log(self, logs: dict[str, float], start_time: Optional[float] = None) -> None: |
| | """ |
| | Log `logs` on the various objects watching training, including stored metrics. |
| | |
| | Args: |
| | logs (`dict[str, float]`): |
| | The values to log. |
| | start_time (`float` or `None`, *optional*, defaults to `None`): |
| | Start time of the training. |
| | """ |
| | |
| | train_eval = "train" if "loss" in logs else "eval" |
| | |
| | prefix = "eval_" if train_eval == "eval" else "" |
| | |
| | for split in ["chosen", "rejected"]: |
| | if f"count/{split}" in self._stored_metrics[train_eval]: |
| | count_sum = torch.Tensor(self._stored_metrics[train_eval][f"count/{split}"]).sum().item() |
| | for metric in ["rewards", "logps", "logits"]: |
| | logs[f"{prefix}{metric}/{split}"] = ( |
| | torch.Tensor(self._stored_metrics[train_eval][f"{metric}/{split}_sum"]).sum().item() |
| | / count_sum |
| | ) |
| | |
| | del self._stored_metrics[train_eval][f"{metric}/{split}_sum"] |
| | del self._stored_metrics[train_eval][f"count/{split}"] |
| | |
| | if f"{prefix}rewards/chosen" in logs and f"{prefix}rewards/rejected" in logs: |
| | logs[f"{prefix}rewards/margins"] = logs[f"{prefix}rewards/chosen"] - logs[f"{prefix}rewards/rejected"] |
| | |
| | for key, metrics in self._stored_metrics[train_eval].items(): |
| | logs[f"{prefix}{key}"] = torch.Tensor(metrics).mean().item() |
| | del self._stored_metrics[train_eval] |
| | return super().log(logs, start_time) |
| |
|
| | |
| | def _save_checkpoint(self, model, trial): |
| | if self.args.hub_model_id is None: |
| | model_name = Path(self.args.output_dir).name |
| | else: |
| | model_name = self.args.hub_model_id.split("/")[-1] |
| | self.create_model_card(model_name=model_name) |
| | super()._save_checkpoint(model, trial) |
| |
|
| | def create_model_card( |
| | self, |
| | model_name: Optional[str] = None, |
| | dataset_name: Optional[str] = None, |
| | tags: Union[str, list[str], None] = None, |
| | ): |
| | """ |
| | Creates a draft of a model card using the information available to the `Trainer`. |
| | |
| | Args: |
| | model_name (`str` or `None`, *optional*, defaults to `None`): |
| | Name of the model. |
| | dataset_name (`str` or `None`, *optional*, defaults to `None`): |
| | Name of the dataset used for training. |
| | tags (`str`, `list[str]` or `None`, *optional*, defaults to `None`): |
| | Tags to be associated with the model card. |
| | """ |
| | if not self.is_world_process_zero(): |
| | return |
| |
|
| | if hasattr(self.model.config, "_name_or_path") and not os.path.isdir(self.model.config._name_or_path): |
| | base_model = self.model.config._name_or_path |
| | else: |
| | base_model = None |
| |
|
| | |
| | if tags is None: |
| | tags = set() |
| | elif isinstance(tags, str): |
| | tags = {tags} |
| | else: |
| | tags = set(tags) |
| |
|
| | if hasattr(self.model.config, "unsloth_version"): |
| | tags.add("unsloth") |
| |
|
| | if "JOB_ID" in os.environ: |
| | tags.add("hf_jobs") |
| |
|
| | tags.update(self._tag_names) |
| |
|
| | |
| | citation = textwrap.dedent("""\ |
| | @article{jung2024binary, |
| | title = {{Binary Classifier Optimization for Large Language Model Alignment}}, |
| | author = {Seungjae Jung and Gunsoo Han and Daniel Wontae Nam and Kyoung{-}Woon On}, |
| | year = 2024, |
| | eprint = {arXiv:2404.04656} |
| | }""") |
| |
|
| | model_card = generate_model_card( |
| | base_model=base_model, |
| | model_name=model_name, |
| | hub_model_id=self.hub_model_id, |
| | dataset_name=dataset_name, |
| | tags=tags, |
| | wandb_url=wandb.run.url if is_wandb_available() and wandb.run is not None else None, |
| | comet_url=get_comet_experiment_url(), |
| | trainer_name="BCO", |
| | trainer_citation=citation, |
| | paper_title="Binary Classifier Optimization for Large Language Model Alignment", |
| | paper_id="2404.04656", |
| | ) |
| |
|
| | model_card.save(os.path.join(self.args.output_dir, "README.md")) |
| | class UnslothBCOTrainer(_UnslothBCOTrainer): |
| | """ |
| | |
| | Initialize BCOTrainer from [BCO](https://huggingface.co/papers/2404.04656) paper. |
| | |
| | Args: |
| | model (`transformers.PreTrainedModel`): |
| | The model to train, preferably an `AutoModelForSequenceClassification`. |
| | ref_model (`PreTrainedModelWrapper`): |
| | Hugging Face transformer model with a casual language modelling head. Used for implicit reward computation |
| | and loss. If no reference model is provided, the trainer will create a reference model with the same |
| | architecture as the model to be optimized. |
| | args (`BCOConfig`): |
| | The arguments to use for training. |
| | train_dataset (`datasets.Dataset`): |
| | The dataset to use for training. |
| | eval_dataset (`datasets.Dataset`): |
| | The dataset to use for evaluation. |
| | processing_class ([`~transformers.PreTrainedTokenizerBase`], [`~transformers.BaseImageProcessor`], [`~transformers.FeatureExtractionMixin`] or [`~transformers.ProcessorMixin`], *optional*, defaults to `None`): |
| | Processing class used to process the data. If provided, will be used to automatically process the inputs |
| | for the model, and it will be saved along the model to make it easier to rerun an interrupted training or |
| | reuse the fine-tuned model. |
| | data_collator (`transformers.DataCollator`, *optional*, defaults to `None`): |
| | The data collator to use for training. If None is specified, the default data collator |
| | (`DPODataCollatorWithPadding`) will be used which will pad the sequences to the maximum length of the |
| | sequences in the batch, given a dataset of paired sequences. |
| | model_init (`Callable[[], transformers.PreTrainedModel]`): |
| | The model initializer to use for training. If None is specified, the default model initializer will be |
| | used. |
| | callbacks (`list[transformers.TrainerCallback]`): |
| | The callbacks to use for training. |
| | optimizers (`tuple[torch.optim.Optimizer, torch.optim.lr_scheduler.LambdaLR]`): |
| | The optimizer and scheduler to use for training. |
| | preprocess_logits_for_metrics (`Callable[[torch.Tensor, torch.Tensor], torch.Tensor]`): |
| | The function to use to preprocess the logits before computing the metrics. |
| | peft_config (`dict`, defaults to `None`): |
| | The PEFT configuration to use for training. If you pass a PEFT configuration, the model will be wrapped in |
| | a PEFT model. |
| | compute_metrics (`Callable[[EvalPrediction], dict]`, *optional*): |
| | The function to use to compute the metrics. Must take a `EvalPrediction` and return a dictionary string to |
| | metric values. |
| | model_adapter_name (`str`, defaults to `None`): |
| | Name of the train target PEFT adapter, when using LoRA with multiple adapters. |
| | ref_adapter_name (`str`, defaults to `None`): |
| | Name of the reference PEFT adapter, when using LoRA with multiple adapters. |
| | |
| | """ |
| | def __init__( |
| | self, |
| | model = None, |
| | ref_model = None, |
| | args = None, |
| | train_dataset = None, |
| | eval_dataset = None, |
| | processing_class = None, |
| | data_collator = None, |
| | model_init = None, |
| | callbacks = None, |
| | preprocess_logits_for_metrics = None, |
| | peft_config = None, |
| | compute_metrics = None, |
| | model_adapter_name = None, |
| | ref_adapter_name = None, |
| | embedding_func = None, |
| | embedding_tokenizer = None, |
| | **kwargs |
| | ): |
| | if args is None: args = UnslothBCOConfig() |
| | use_bf16 = getattr(args, 'bf16', False) |
| | if type(use_bf16) is not bool: use_bf16 = False |
| | use_fp16 = getattr(args, 'fp16', False) |
| | if type(use_fp16) is not bool: use_fp16 = False |
| | force_float32 = False |
| | full_finetuning = os.environ.get('UNSLOTH_ENABLE_FULL_FINETUNING', '0') == '1' |
| | if not full_finetuning and (os.environ.get('UNSLOTH_FORCE_FLOAT32', '0') == '1'): |
| | print('Unsloth: Switching to float32 training since model cannot work with float16') |
| | force_float32 = True |
| | mixed_precision_dtype = os.environ.get('UNSLOTH_MIXED_PRECISION', 'float32') |
| | dtype = getattr(model.config, 'dtype', None) or getattr(model.config, 'torch_dtype', None) |
| | if dtype is None: dtype = model.get_input_embeddings().dtype |
| | from unsloth_zoo.utils import _get_dtype |
| | dtype = _get_dtype(dtype) |
| | float16 = dtype == torch.float16 |
| | if not force_float32 and (float16 and use_bf16): raise TypeError('Unsloth: Model is in float16 precision but you want to use bfloat16 precision. Set fp16 to `True` and bf16 to `False`') |
| | if not force_float32 and (not float16 and use_fp16): raise TypeError('Unsloth: Model is in bfloat16 precision but you want to use float16 precision. Set fp16 to `False` and bf16 to `True`') |
| | if force_float32: |
| | |
| | args.fp16 = False |
| | args.bf16 = False |
| | os.environ['ACCELERATE_MIXED_PRECISION'] = 'no' |
| | elif (not use_bf16 and not use_fp16) and mixed_precision_dtype == 'float32': |
| | |
| | args.fp16 = float16 |
| | args.bf16 = not float16 |
| | os.environ['ACCELERATE_MIXED_PRECISION'] = 'fp16' if float16 else 'bf16' |
| | if getattr(args, 'eval_dataset', None) is not None and getattr(args, 'eval_strategy', 'no') == 'no': |
| | args.eval_strategy = 'steps' |
| | if getattr(args, 'eval_steps', None) is None: args.eval_steps = 0.1 |
| | ga_steps = getattr(args, 'gradient_accumulation_steps', None) |
| | if ga_steps is not None and ga_steps > 1: |
| | from transformers import __version__ as transformers_version |
| | if Version(transformers_version) <= Version('4.45.2'): |
| | print('**** Unsloth: Please use our fixed gradient_accumulation_steps by updating transformers, TRL and Unsloth!\n' |
| | '`pip install --upgrade --no-cache-dir --force-reinstall --no-deps unsloth transformers trl unsloth_zoo`') |
| | if getattr(args, 'eval_strategy', 'no') != 'no': |
| | eval_bsz = getattr(args, 'per_device_eval_batch_size', 8) |
| | if eval_bsz == 8 and args.per_device_train_batch_size < eval_bsz: args.per_device_eval_batch_size = args.per_device_train_batch_size |
| | if getattr(args, 'eval_accumulation_steps', None) is None and ga_steps is not None: args.eval_accumulation_steps = ga_steps |
| | fp16_full_eval = getattr(args, 'fp16_full_eval', False) |
| | if type(fp16_full_eval) is not bool: fp16_full_eval = False |
| | bf16_full_eval = getattr(args, 'bf16_full_eval', False) |
| | if type(bf16_full_eval) is not bool: bf16_full_eval = False |
| | if args.fp16 and bf16_full_eval: args.bf16_full_eval = False; args.fp16_full_eval = True |
| | if args.bf16 and fp16_full_eval: args.bf16_full_eval = True; args.fp16_full_eval = False |
| | if force_float32: |
| | args.bf16_full_eval = False |
| | args.fp16_full_eval = False |
| | elif os.environ.get('UNSLOTH_MIXED_PRECISION', 'float32') == 'bfloat16': |
| | args.bf16_full_eval = True |
| | args.fp16_full_eval = False |
| | elif not bf16_full_eval and not fp16_full_eval: |
| | args.bf16_full_eval = args.bf16 |
| | args.fp16_full_eval = args.fp16 |
| | _output_logits = False |
| | if locals().get('compute_metrics', None) is not None: _output_logits = True |
| | if locals().get('preprocess_logits_for_metrics', None) is not None: _output_logits = True |
| | if _output_logits: |
| | os.environ['UNSLOTH_RETURN_LOGITS'] = '1' |
| | if 'max_seq_length' not in locals() and not hasattr(args, 'max_seq_length'): |
| | pass |
| | else: |
| | model_max_seq_length = getattr(model, 'max_seq_length', None) |
| | args_max_seq_length = getattr(args, 'max_seq_length', None) |
| | if args_max_seq_length is None and model_max_seq_length is not None: |
| | max_seq_length = model.max_seq_length |
| | if hasattr(args, 'max_seq_length'): args.max_seq_length = max_seq_length |
| | if model is not None and hasattr(model, 'for_training'): |
| | model.for_training() |
| | if 'tokenizer' in locals() and hasattr(tokenizer, 'padding_side'): tokenizer.padding_side = 'right' |
| | if 'processing_class' in locals(): |
| | if hasattr(processing_class, 'padding_side'): processing_class.padding_side = 'right' |
| | if hasattr(processing_class, 'tokenizer') and hasattr(processing_class.tokenizer, 'padding_side'): processing_class.tokenizer.padding_side = 'right' |
| | __tokenizer = processing_class if 'processing_class' in locals() else tokenizer |
| | from unsloth_zoo.vision_utils import UnslothVisionDataCollator |
| | if not isinstance(data_collator, UnslothVisionDataCollator): |
| | if isinstance(data_collator, DataCollatorForSeq2Seq) and 'labels' not in train_dataset.column_names: |
| | data_collator = TransformersDataCollatorForLanguageModeling( |
| | __tokenizer, |
| | mlm = False, |
| | mlm_probability = 0.0, |
| | pad_to_multiple_of = getattr(args, 'pad_to_multiple_of', None), |
| | ) |
| | elif isinstance(data_collator, TransformersDataCollatorForLanguageModeling) and 'labels' in train_dataset.column_names: |
| | data_collator = DataCollatorForSeq2Seq( |
| | __tokenizer, |
| | pad_to_multiple_of = getattr(args, 'pad_to_multiple_of', None), |
| | ) |
| | else: |
| | if hasattr(args, 'remove_unused_columns'): args.remove_unused_columns = False |
| | if hasattr(args, 'dataset_text_field'): args.dataset_text_field = '' |
| | if hasattr(args, 'dataset_kwargs'): args.dataset_kwargs = {'skip_prepare_dataset': True} |
| | if not isinstance(data_collator, UnslothVisionDataCollator): |
| | if not hasattr(__tokenizer, 'pad') and hasattr(__tokenizer, 'tokenizer'): |
| | if isinstance(data_collator, DataCollatorForSeq2Seq): |
| | data_collator = DataCollatorForSeq2Seq( |
| | __tokenizer.tokenizer, |
| | pad_to_multiple_of = getattr(args, 'pad_to_multiple_of', None), |
| | ) |
| | else: |
| | data_collator = TransformersDataCollatorForLanguageModeling( |
| | __tokenizer.tokenizer, |
| | mlm = False, |
| | mlm_probability = 0.0, |
| | pad_to_multiple_of = getattr(args, 'pad_to_multiple_of', None), |
| | ) |
| | other_metrics = [] |
| | |
| | from unsloth_zoo.logging_utils import PatchRLStatistics |
| | PatchRLStatistics('bco_trainer', other_metrics) |
| | |
| | |
| | |
| | if getattr(args, "parallel_mode", None) == ParallelMode.NOT_DISTRIBUTED and args.n_gpu > 1: |
| | if getattr(args, "_n_gpu", 1) != 1: |
| | args._n_gpu = 1 |
| | if "model" in locals() and hasattr(model, "for_training"): |
| | model.for_training() |
| | super().__init__( |
| | model = model, |
| | ref_model = ref_model, |
| | args = args, |
| | train_dataset = train_dataset, |
| | eval_dataset = eval_dataset, |
| | processing_class = processing_class, |
| | data_collator = data_collator, |
| | model_init = model_init, |
| | callbacks = callbacks, |
| | preprocess_logits_for_metrics = preprocess_logits_for_metrics, |
| | peft_config = peft_config, |
| | compute_metrics = compute_metrics, |
| | model_adapter_name = model_adapter_name, |
| | ref_adapter_name = ref_adapter_name, |
| | embedding_func = embedding_func, |
| | embedding_tokenizer = embedding_tokenizer,**kwargs) |
| | if "model" in locals() and hasattr(model, "for_inference"): |
| | model.for_inference() |
| | if hasattr(self, 'neftune_hook_handle'): |
| | self.neftune_hook_handle.remove() |
| | if hasattr(self, 'neftune_hook_handle'): del self.neftune_hook_handle |
| | if getattr(args, 'neftune_noise_alpha', None) is not None: |
| | model.get_input_embeddings().neftune_noise_alpha = self.neftune_noise_alpha |
| | pass |
| | if hasattr(self, 'accelerator'): |
| | scaler = self.accelerator.scaler |
| | current_model = model |
| | while hasattr(current_model, 'model'): |
| | current_model.accelerator_scaler = scaler |
| | current_model = current_model.model |
| | current_model.accelerator_scaler = scaler |
| | pass |
| | if hasattr(self, 'train'): |
| | self.train = MethodType(prepare_for_training_mode(self.__class__.train), self) |
| | pass |
| | |
| | pass |
| |
|
| |
|
| | if hasattr(logger, "addFilter"): |
| | import logging |
| | class HideLoggingMessage(logging.Filter): |
| | def __init__(self, text): self.text = text |
| | def filter(self, x): return not (self.text in x.getMessage()) |
| | pass |
| | logger.addFilter(HideLoggingMessage("`use_cache=True`")) |
| |
|
| |
|