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| import json |
| from typing import List |
|
|
| import numpy as np |
| import triton_python_backend_utils as pb_utils |
| from transformers import AutoTokenizer, T5Tokenizer |
|
|
|
|
| class TritonPythonModel: |
| """Your Python model must use the same class name. Every Python model |
| that is created must have "TritonPythonModel" as the class name. |
| """ |
|
|
| def initialize(self, args): |
| """`initialize` is called only once when the model is being loaded. |
| Implementing `initialize` function is optional. This function allows |
| the model to initialize any state associated with this model. |
| Parameters |
| ---------- |
| args : dict |
| Both keys and values are strings. The dictionary keys and values are: |
| * model_config: A JSON string containing the model configuration |
| * model_instance_kind: A string containing model instance kind |
| * model_instance_device_id: A string containing model instance device ID |
| * model_repository: Model repository path |
| * model_version: Model version |
| * model_name: Model name |
| """ |
| |
| model_config = json.loads(args['model_config']) |
| tokenizer_dir = model_config['parameters']['tokenizer_dir'][ |
| 'string_value'] |
|
|
| add_special_tokens = model_config['parameters'].get( |
| 'add_special_tokens') |
| if add_special_tokens is not None: |
| add_special_tokens_str = add_special_tokens['string_value'].lower() |
| if add_special_tokens_str in [ |
| 'true', 'false', '1', '0', 't', 'f', 'y', 'n', 'yes', 'no' |
| ]: |
| self.add_special_tokens = add_special_tokens_str in [ |
| 'true', '1', 't', 'y', 'yes' |
| ] |
| else: |
| print( |
| f"[TensorRT-LLM][WARNING] Don't setup 'add_special_tokens' correctly (set value is {add_special_tokens['string_value']}). Set it as True by default." |
| ) |
| self.add_special_tokens = True |
| else: |
| print( |
| f"[TensorRT-LLM][WARNING] Don't setup 'add_special_tokens'. Set it as True by default." |
| ) |
| self.add_special_tokens = True |
|
|
| self.tokenizer = AutoTokenizer.from_pretrained(tokenizer_dir, |
| legacy=False, |
| padding_side='left', |
| trust_remote_code=True) |
| if isinstance(self.tokenizer, T5Tokenizer): |
| self.tokenizer_bos_id = self.tokenizer.sp_model.bos_id() |
|
|
| if not self.tokenizer.pad_token: |
| self.tokenizer.pad_token = self.tokenizer.eos_token |
|
|
| self.tokenizer_end_id = self.tokenizer.encode( |
| self.tokenizer.eos_token, add_special_tokens=False)[0] |
| self.tokenizer_pad_id = self.tokenizer.encode( |
| self.tokenizer.pad_token, add_special_tokens=False)[0] |
|
|
| |
| output_names = [ |
| "INPUT_ID", "DECODER_INPUT_ID", "REQUEST_INPUT_LEN", |
| "REQUEST_DECODER_INPUT_LEN", "BAD_WORDS_IDS", "STOP_WORDS_IDS", |
| "OUT_END_ID", "OUT_PAD_ID" |
| ] |
| input_names = ["EMBEDDING_BIAS_WORDS", "EMBEDDING_BIAS_WEIGHTS"] |
| for input_name in input_names: |
| setattr( |
| self, |
| input_name.lower() + "_dtype", |
| pb_utils.triton_string_to_numpy( |
| pb_utils.get_input_config_by_name( |
| model_config, input_name)['data_type'])) |
|
|
| for output_name in output_names: |
| setattr( |
| self, |
| output_name.lower() + "_dtype", |
| pb_utils.triton_string_to_numpy( |
| pb_utils.get_output_config_by_name( |
| model_config, output_name)['data_type'])) |
|
|
| def execute(self, requests): |
| """`execute` must be implemented in every Python model. `execute` |
| function receives a list of pb_utils.InferenceRequest as the only |
| argument. This function is called when an inference is requested |
| for this model. Depending on the batching configuration (e.g. Dynamic |
| Batching) used, `requests` may contain multiple requests. Every |
| Python model, must create one pb_utils.InferenceResponse for every |
| pb_utils.InferenceRequest in `requests`. If there is an error, you can |
| set the error argument when creating a pb_utils.InferenceResponse. |
| Parameters |
| ---------- |
| requests : list |
| A list of pb_utils.InferenceRequest |
| Returns |
| ------- |
| list |
| A list of pb_utils.InferenceResponse. The length of this list must |
| be the same as `requests` |
| """ |
|
|
| responses = [] |
|
|
| |
| |
| logger = pb_utils.Logger |
| for idx, request in enumerate(requests): |
| |
| query = pb_utils.get_input_tensor_by_name(request, |
| 'QUERY').as_numpy() |
| decoder_query = pb_utils.get_input_tensor_by_name( |
| request, 'DECODER_QUERY') |
| if decoder_query is not None: |
| decoder_query = decoder_query.as_numpy() |
|
|
| batch_dim = query.shape[0] |
| if batch_dim != 1: |
|
|
| err_str = "Inflight batching backend expects requests with batch size of 1." |
| logger.log_error(err_str) |
| responses.append( |
| pb_utils.InferenceResponse( |
| output_tensors=[], |
| error=pb_utils.TritonError(err_str))) |
| continue |
|
|
| request_output_len = pb_utils.get_input_tensor_by_name( |
| request, 'REQUEST_OUTPUT_LEN').as_numpy() |
|
|
| bad_words_dict = pb_utils.get_input_tensor_by_name( |
| request, 'BAD_WORDS_DICT') |
| if bad_words_dict is not None: |
| bad_words_dict = bad_words_dict.as_numpy() |
|
|
| stop_words_dict = pb_utils.get_input_tensor_by_name( |
| request, 'STOP_WORDS_DICT') |
| if stop_words_dict is not None: |
| stop_words_dict = stop_words_dict.as_numpy() |
|
|
| embedding_bias_words = pb_utils.get_input_tensor_by_name( |
| request, 'EMBEDDING_BIAS_WORDS') |
| if embedding_bias_words is not None: |
| embedding_bias_words = embedding_bias_words.as_numpy() |
|
|
| embedding_bias_weights = pb_utils.get_input_tensor_by_name( |
| request, 'EMBEDDING_BIAS_WEIGHTS') |
| if embedding_bias_weights is not None: |
| embedding_bias_weights = embedding_bias_weights.as_numpy() |
|
|
| |
| |
| end_id = pb_utils.get_input_tensor_by_name(request, 'END_ID') |
| if end_id is not None: |
| end_id = end_id.as_numpy() |
| else: |
| end_id = [[self.tokenizer_end_id]] |
|
|
| |
| |
| pad_id = pb_utils.get_input_tensor_by_name(request, 'PAD_ID') |
| if pad_id is not None: |
| pad_id = pad_id.as_numpy() |
| else: |
| pad_id = [[self.tokenizer_pad_id]] |
|
|
| |
| input_id, request_input_len = self._create_request(query) |
| print(input_id) |
| print(request_input_len) |
| if decoder_query is not None: |
| decoder_input_id, request_decoder_input_len = self._create_request( |
| decoder_query) |
| else: |
| decoder_input_id = pad_id * np.ones((1, 1), np.int32) |
| request_decoder_input_len = 1 * np.ones((1, 1), np.int32) |
|
|
| bad_words = self._to_word_list_format(bad_words_dict) |
| stop_words = self._to_word_list_format(stop_words_dict) |
|
|
| embedding_bias = self._get_embedding_bias( |
| embedding_bias_words, embedding_bias_weights, |
| self.embedding_bias_weights_dtype) |
|
|
| |
| |
| input_id_tensor = pb_utils.Tensor( |
| 'INPUT_ID', input_id.astype(self.input_id_dtype)) |
| request_input_len_tensor = pb_utils.Tensor( |
| 'REQUEST_INPUT_LEN', |
| request_input_len.astype(self.request_input_len_dtype)) |
| decoder_input_id_tensor = pb_utils.Tensor( |
| 'DECODER_INPUT_ID', |
| decoder_input_id.astype(self.decoder_input_id_dtype)) |
| request_decoder_input_len_tensor = pb_utils.Tensor( |
| 'REQUEST_DECODER_INPUT_LEN', |
| request_decoder_input_len.astype( |
| self.request_decoder_input_len_dtype)) |
| request_output_len_tensor = pb_utils.Tensor( |
| 'REQUEST_OUTPUT_LEN', request_output_len) |
| bad_words_ids_tensor = pb_utils.Tensor('BAD_WORDS_IDS', bad_words) |
| stop_words_ids_tensor = pb_utils.Tensor('STOP_WORDS_IDS', |
| stop_words) |
| embedding_bias_tensor = pb_utils.Tensor('EMBEDDING_BIAS', |
| embedding_bias) |
| end_id_tensor = pb_utils.Tensor('OUT_END_ID', |
| np.array(end_id, dtype=np.int32)) |
| pad_id_tensor = pb_utils.Tensor('OUT_PAD_ID', |
| np.array(pad_id, dtype=np.int32)) |
|
|
| inference_response = pb_utils.InferenceResponse(output_tensors=[ |
| input_id_tensor, decoder_input_id_tensor, bad_words_ids_tensor, |
| stop_words_ids_tensor, request_input_len_tensor, |
| request_decoder_input_len_tensor, request_output_len_tensor, |
| embedding_bias_tensor, end_id_tensor, pad_id_tensor |
| ]) |
| responses.append(inference_response) |
|
|
| |
| |
| return responses |
|
|
| def finalize(self): |
| """`finalize` is called only once when the model is being unloaded. |
| Implementing `finalize` function is optional. This function allows |
| the model to perform any necessary clean ups before exit. |
| """ |
| print('Cleaning up...') |
|
|
| def _create_request(self, query): |
| """ |
| query : batch string (2D numpy array) |
| """ |
| if isinstance(self.tokenizer, T5Tokenizer): |
| start_ids = [ |
| np.array([self.tokenizer_bos_id] + self.tokenizer.encode( |
| s[0].decode(), add_special_tokens=self.add_special_tokens) |
| ).astype(int) for s in query |
| ] |
| else: |
| start_ids = [ |
| np.array( |
| self.tokenizer.encode( |
| s[0].decode(), |
| add_special_tokens=self.add_special_tokens)).astype( |
| int) for s in query |
| ] |
| start_lengths = np.array([[len(ids)] for ids in start_ids]).astype(int) |
|
|
| max_len = 0 |
| for seq in start_ids: |
| max_len = max(max_len, seq.shape[0]) |
| start_ids = np.stack([ |
| np.pad(seq, (0, max_len - seq.shape[0]), |
| 'constant', |
| constant_values=(0, self.tokenizer_pad_id)) |
| for seq in start_ids |
| ]) |
|
|
| return start_ids, start_lengths |
|
|
| def _to_word_list_format(self, word_lists: List[List[str | bytes]]): |
| ''' |
| word_lists format: |
| len(word_lists) == batch_size |
| word_lists[i] means the words associated to batch item i. A "word" may actually be any string. Like "lorem" or "lorem ipsum". |
| ''' |
| assert self.tokenizer != None, "need to set tokenizer" |
|
|
| if word_lists is None: |
| |
| return np.empty([1, 2, 0], dtype="int32") |
|
|
| flat_ids = [] |
| offsets = [] |
| for word_list in word_lists: |
| item_flat_ids = [] |
| item_offsets = [] |
|
|
| for word in word_list: |
| if isinstance(word, bytes): |
| word = word.decode() |
|
|
| ids = self.tokenizer.encode(word, add_special_tokens=False) |
| if len(ids) == 0: |
| continue |
|
|
| item_flat_ids += ids |
| item_offsets.append(len(ids)) |
|
|
| flat_ids.append(np.array(item_flat_ids)) |
| offsets.append(np.cumsum(np.array(item_offsets))) |
|
|
| pad_to = max(1, max(len(ids) for ids in flat_ids)) |
|
|
| for i, (ids, offs) in enumerate(zip(flat_ids, offsets)): |
| flat_ids[i] = np.pad(ids, (0, pad_to - len(ids)), |
| constant_values=0) |
| offsets[i] = np.pad(offs, (0, pad_to - len(offs)), |
| constant_values=-1) |
|
|
| return np.array([flat_ids, offsets], dtype="int32").transpose( |
| (1, 0, 2)) |
|
|
| def _get_embedding_bias(self, embedding_bias_words, embedding_bias_weights, |
| bias_dtype): |
|
|
| assert self.tokenizer != None, "need to set tokenizer" |
|
|
| if embedding_bias_words is None or embedding_bias_weights is None: |
| return np.empty([1, 0], dtype=self.embedding_bias_weights_dtype) |
|
|
| batch_embedding_bias = [] |
| for words, weights in zip(embedding_bias_words, |
| embedding_bias_weights): |
|
|
| vocab_size = self.tokenizer.vocab_size |
| embedding_bias = [0.] * vocab_size |
|
|
| assert len(words) == len( |
| weights |
| ), "Embedding bias words must have same dimension as embedding bias weights" |
|
|
| for word, weight in zip(words, weights): |
| if isinstance(word, bytes): |
| word = word.decode() |
| ids = self.tokenizer.encode(word) |
|
|
| if len(ids) == 0: |
| continue |
|
|
| for id in ids: |
| embedding_bias[id] += weight |
|
|
| batch_embedding_bias.append(np.array(embedding_bias)) |
|
|
| return np.array(batch_embedding_bias, dtype=bias_dtype) |
|
|