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translation/backends/local_seq2seq.py 13.7 KB
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  """Local seq2seq translation backends powered by Transformers."""
  
  from __future__ import annotations
  
  import logging
  import os
  import threading
  from typing import Dict, List, Optional, Sequence, Union
  
  import torch
  from transformers import AutoModelForSeq2SeqLM, AutoTokenizer
  
  from translation.languages import MARIAN_LANGUAGE_DIRECTIONS, NLLB_LANGUAGE_CODES
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  from translation.text_splitter import (
      compute_safe_input_token_limit,
      join_translated_segments,
      split_text_for_translation,
  )
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  logger = logging.getLogger(__name__)
  
  
  def _resolve_device(device: Optional[str]) -> str:
      value = str(device or "auto").strip().lower()
      if value == "auto":
          return "cuda" if torch.cuda.is_available() else "cpu"
      return value
  
  
  def _resolve_dtype(dtype: Optional[str], device: str) -> Optional[torch.dtype]:
      value = str(dtype or "auto").strip().lower()
      if value == "auto":
          return torch.float16 if device.startswith("cuda") else None
      if value in {"float16", "fp16", "half"}:
          return torch.float16 if device.startswith("cuda") else None
      if value in {"bfloat16", "bf16"}:
          return torch.bfloat16
      if value in {"float32", "fp32"}:
          return torch.float32
      raise ValueError(f"Unsupported torch dtype: {dtype}")
  
  
  class LocalSeq2SeqTranslationBackend:
      """Base backend for local Hugging Face seq2seq translation models."""
  
      def __init__(
          self,
          *,
          name: str,
          model_id: str,
          model_dir: str,
          device: str,
          torch_dtype: str,
          batch_size: int,
          max_input_length: int,
          max_new_tokens: int,
          num_beams: int,
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          attn_implementation: Optional[str] = None,
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      ) -> None:
          self.model = name
          self.model_id = model_id
          self.model_dir = model_dir
          self.device = _resolve_device(device)
          self.torch_dtype = _resolve_dtype(torch_dtype, self.device)
          self.batch_size = int(batch_size)
          self.max_input_length = int(max_input_length)
          self.max_new_tokens = int(max_new_tokens)
          self.num_beams = int(num_beams)
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          self.attn_implementation = str(attn_implementation or "").strip() or None
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          self._lock = threading.Lock()
          self._load_model()
  
      @property
      def supports_batch(self) -> bool:
          return True
  
      def _load_model(self) -> None:
          model_path = self.model_dir if os.path.exists(self.model_dir) else self.model_id
          logger.info(
              "Loading local translation model | name=%s source=%s device=%s dtype=%s",
              self.model,
              model_path,
              self.device,
              self.torch_dtype,
          )
          tokenizer_kwargs = self._tokenizer_kwargs()
          model_kwargs = self._model_kwargs()
          self.tokenizer = AutoTokenizer.from_pretrained(model_path, **tokenizer_kwargs)
          self.seq2seq_model = AutoModelForSeq2SeqLM.from_pretrained(model_path, **model_kwargs)
          self.seq2seq_model.to(self.device)
          self.seq2seq_model.eval()
          if self.tokenizer.pad_token is None and self.tokenizer.eos_token is not None:
              self.tokenizer.pad_token = self.tokenizer.eos_token
  
      def _tokenizer_kwargs(self) -> Dict[str, object]:
          return {}
  
      def _model_kwargs(self) -> Dict[str, object]:
          kwargs: Dict[str, object] = {}
          if self.torch_dtype is not None:
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              kwargs["torch_dtype"] = self.torch_dtype
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          kwargs["low_cpu_mem_usage"] = True
          if self.attn_implementation:
              kwargs["attn_implementation"] = self.attn_implementation
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          return kwargs
  
      def _normalize_texts(self, text: Union[str, Sequence[str]]) -> List[str]:
          if isinstance(text, str):
              return [text]
          return ["" if item is None else str(item) for item in text]
  
      def _validate_languages(self, source_lang: Optional[str], target_lang: str) -> None:
          del source_lang, target_lang
  
      def _prepare_tokenizer(self, source_lang: Optional[str], target_lang: str) -> Dict[str, object]:
          del source_lang, target_lang
          return {}
  
      def _build_generate_kwargs(self, source_lang: Optional[str], target_lang: str) -> Dict[str, object]:
          del source_lang, target_lang
          return {
              "num_beams": self.num_beams,
          }
  
      def _translate_batch(
          self,
          texts: List[str],
          target_lang: str,
          source_lang: Optional[str] = None,
      ) -> List[Optional[str]]:
          self._validate_languages(source_lang, target_lang)
          tokenizer_kwargs = self._prepare_tokenizer(source_lang, target_lang)
          with self._lock, torch.inference_mode():
              encoded = self.tokenizer(
                  texts,
                  return_tensors="pt",
                  padding=True,
                  truncation=True,
                  max_length=self.max_input_length,
                  **tokenizer_kwargs,
              )
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              encoded = {
                  key: value.to(self.device, non_blocking=self.device.startswith("cuda"))
                  for key, value in encoded.items()
              }
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              generate_kwargs = self._build_generate_kwargs(source_lang, target_lang)
              input_ids = encoded.get("input_ids")
              if input_ids is not None and "max_length" not in generate_kwargs:
                  generate_kwargs["max_length"] = int(input_ids.shape[-1]) + self.max_new_tokens
              generated = self.seq2seq_model.generate(
                  **encoded,
                  **generate_kwargs,
              )
              outputs = self.tokenizer.batch_decode(generated, skip_special_tokens=True)
          return [item.strip() if item and item.strip() else None for item in outputs]
  
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      def _token_count(
          self,
          text: str,
          target_lang: str,
          source_lang: Optional[str] = None,
      ) -> int:
          tokenizer_kwargs = self._prepare_tokenizer(source_lang, target_lang)
          with self._lock:
              encoded = self.tokenizer(
                  [text],
                  truncation=False,
                  padding=False,
                  **tokenizer_kwargs,
              )
          input_ids = encoded["input_ids"]
          first_item = input_ids[0]
          if hasattr(first_item, "shape"):
              return int(first_item.shape[-1])
          return len(first_item)
  
      def _effective_input_token_limit(self, target_lang: str, source_lang: Optional[str] = None) -> int:
          del target_lang, source_lang
          return compute_safe_input_token_limit(
              max_input_length=self.max_input_length,
              max_new_tokens=self.max_new_tokens,
          )
  
      def _split_text_if_needed(
          self,
          text: str,
          target_lang: str,
          source_lang: Optional[str] = None,
      ) -> List[str]:
          limit = self._effective_input_token_limit(target_lang, source_lang)
          return split_text_for_translation(
              text,
              max_tokens=limit,
              token_length_fn=lambda value: self._token_count(
                  value,
                  target_lang=target_lang,
                  source_lang=source_lang,
              ),
          )
  
      def _translate_with_segmentation(
          self,
          texts: List[str],
          target_lang: str,
          source_lang: Optional[str] = None,
      ) -> List[Optional[str]]:
          segment_plans: List[List[str]] = []
          flat_segments: List[str] = []
          for text in texts:
              if not text.strip():
                  segment_plans.append([])
                  continue
              segments = self._split_text_if_needed(text, target_lang=target_lang, source_lang=source_lang)
              segment_plans.append(segments)
              flat_segments.extend(segments)
  
          translated_segments = (
              self._translate_batch(flat_segments, target_lang=target_lang, source_lang=source_lang)
              if flat_segments
              else []
          )
          outputs: List[Optional[str]] = []
          offset = 0
          for original_text, segments in zip(texts, segment_plans):
              if not segments:
                  outputs.append(None if not original_text.strip() else original_text)
                  continue
              current = translated_segments[offset:offset + len(segments)]
              offset += len(segments)
              if len(segments) == 1:
                  outputs.append(current[0])
                  continue
              outputs.append(
                  join_translated_segments(
                      current,
                      target_lang=target_lang,
                      original_text=original_text,
                  )
              )
          return outputs
  
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      def translate(
          self,
          text: Union[str, Sequence[str]],
          target_lang: str,
          source_lang: Optional[str] = None,
          scene: Optional[str] = None,
      ) -> Union[Optional[str], List[Optional[str]]]:
          del scene
          is_single = isinstance(text, str)
          texts = self._normalize_texts(text)
          outputs: List[Optional[str]] = []
          for start in range(0, len(texts), self.batch_size):
              chunk = texts[start:start + self.batch_size]
              if not any(item.strip() for item in chunk):
                  outputs.extend([None if not item.strip() else item for item in chunk])  # type: ignore[list-item]
                  continue
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              outputs.extend(self._translate_with_segmentation(chunk, target_lang=target_lang, source_lang=source_lang))
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          return outputs[0] if is_single else outputs
  
  
  class MarianMTTranslationBackend(LocalSeq2SeqTranslationBackend):
      """Local backend for Marian/OPUS MT models."""
  
      def __init__(
          self,
          *,
          name: str,
          model_id: str,
          model_dir: str,
          device: str,
          torch_dtype: str,
          batch_size: int,
          max_input_length: int,
          max_new_tokens: int,
          num_beams: int,
          source_langs: Sequence[str],
          target_langs: Sequence[str],
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          attn_implementation: Optional[str] = None,
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      ) -> None:
          self.source_langs = {str(lang).strip().lower() for lang in source_langs if str(lang).strip()}
          self.target_langs = {str(lang).strip().lower() for lang in target_langs if str(lang).strip()}
          super().__init__(
              name=name,
              model_id=model_id,
              model_dir=model_dir,
              device=device,
              torch_dtype=torch_dtype,
              batch_size=batch_size,
              max_input_length=max_input_length,
              max_new_tokens=max_new_tokens,
              num_beams=num_beams,
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              attn_implementation=attn_implementation,
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          )
  
      def _validate_languages(self, source_lang: Optional[str], target_lang: str) -> None:
          src = str(source_lang or "").strip().lower()
          tgt = str(target_lang or "").strip().lower()
          if self.source_langs and src not in self.source_langs:
              raise ValueError(
                  f"Model '{self.model}' only supports source languages: {sorted(self.source_langs)}"
              )
          if self.target_langs and tgt not in self.target_langs:
              raise ValueError(
                  f"Model '{self.model}' only supports target languages: {sorted(self.target_langs)}"
              )
  
  
  class NLLBTranslationBackend(LocalSeq2SeqTranslationBackend):
      """Local backend for NLLB translation models."""
  
      def __init__(
          self,
          *,
          name: str,
          model_id: str,
          model_dir: str,
          device: str,
          torch_dtype: str,
          batch_size: int,
          max_input_length: int,
          max_new_tokens: int,
          num_beams: int,
          language_codes: Optional[Dict[str, str]] = None,
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          attn_implementation: Optional[str] = None,
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      ) -> None:
          overrides = language_codes or {}
          self.language_codes = {
              **NLLB_LANGUAGE_CODES,
              **{str(k).strip().lower(): str(v).strip() for k, v in overrides.items() if str(k).strip()},
          }
          super().__init__(
              name=name,
              model_id=model_id,
              model_dir=model_dir,
              device=device,
              torch_dtype=torch_dtype,
              batch_size=batch_size,
              max_input_length=max_input_length,
              max_new_tokens=max_new_tokens,
              num_beams=num_beams,
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              attn_implementation=attn_implementation,
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          )
  
      def _validate_languages(self, source_lang: Optional[str], target_lang: str) -> None:
          src = str(source_lang or "").strip().lower()
          tgt = str(target_lang or "").strip().lower()
          if not src:
              raise ValueError(f"Model '{self.model}' requires source_lang")
          if src not in self.language_codes:
              raise ValueError(f"Unsupported NLLB source language: {source_lang}")
          if tgt not in self.language_codes:
              raise ValueError(f"Unsupported NLLB target language: {target_lang}")
  
      def _prepare_tokenizer(self, source_lang: Optional[str], target_lang: str) -> Dict[str, object]:
          del target_lang
          src_code = self.language_codes[str(source_lang).strip().lower()]
          self.tokenizer.src_lang = src_code
          return {}
  
      def _build_generate_kwargs(self, source_lang: Optional[str], target_lang: str) -> Dict[str, object]:
          del source_lang
          tgt_code = self.language_codes[str(target_lang).strip().lower()]
          forced_bos_token_id = None
          if hasattr(self.tokenizer, "lang_code_to_id"):
              forced_bos_token_id = self.tokenizer.lang_code_to_id.get(tgt_code)
          if forced_bos_token_id is None:
              forced_bos_token_id = self.tokenizer.convert_tokens_to_ids(tgt_code)
          return {
              "num_beams": self.num_beams,
              "forced_bos_token_id": forced_bos_token_id,
          }
  
  
  def get_marian_language_direction(model_name: str) -> tuple[str, str]:
      direction = MARIAN_LANGUAGE_DIRECTIONS.get(model_name)
      if direction is None:
          raise ValueError(f"Translation capability '{model_name}' is not registered with Marian language directions")
      return direction