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"""Local translation backends powered by CTranslate2."""
from __future__ import annotations
import logging
import os
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import json
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import threading
from pathlib import Path
from typing import Dict, List, Optional, Sequence, Union
from transformers import AutoTokenizer
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from translation.languages import (
MARIAN_LANGUAGE_DIRECTIONS,
build_nllb_language_catalog,
normalize_language_key,
resolve_nllb_language_code,
)
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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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from translation.ct2_conversion import convert_transformers_model
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logger = logging.getLogger(__name__)
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def _text_preview(text: Optional[str], limit: int = 32) -> str:
return str(text or "").replace("\n", "\\n")[:limit]
def _summarize_lengths(values: Sequence[int]) -> str:
if not values:
return "[]"
total = sum(values)
return f"min={min(values)} max={max(values)} avg={total / len(values):.1f}"
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def _resolve_device(device: Optional[str]) -> str:
value = str(device or "auto").strip().lower()
if value not in {"auto", "cpu", "cuda"}:
raise ValueError(f"Unsupported CTranslate2 device: {device}")
return value
def _resolve_compute_type(
torch_dtype: Optional[str],
compute_type: Optional[str],
device: str,
) -> str:
value = str(compute_type or torch_dtype or "default").strip().lower()
if value in {"auto", "default"}:
return "float16" if device == "cuda" else "default"
if value in {"float16", "fp16", "half"}:
return "float16"
if value in {"bfloat16", "bf16"}:
return "bfloat16"
if value in {"float32", "fp32"}:
return "float32"
if value in {
"int8",
"int8_float32",
"int8_float16",
"int8_bfloat16",
"int16",
}:
return value
raise ValueError(f"Unsupported CTranslate2 compute type: {compute_type or torch_dtype}")
def _derive_ct2_model_dir(model_dir: str, compute_type: str) -> str:
normalized = compute_type.replace("_", "-")
return str(Path(model_dir).expanduser() / f"ctranslate2-{normalized}")
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def _detect_local_model_type(model_dir: str) -> Optional[str]:
config_path = Path(model_dir).expanduser() / "config.json"
if not config_path.exists():
return None
try:
with open(config_path, "r", encoding="utf-8") as handle:
payload = json.load(handle) or {}
except Exception as exc:
logger.warning("Failed to inspect local translation config %s: %s", config_path, exc)
return None
model_type = str(payload.get("model_type") or "").strip().lower()
return model_type or None
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class LocalCTranslate2TranslationBackend:
"""Base backend for local CTranslate2 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,
ct2_model_dir: Optional[str] = None,
ct2_compute_type: Optional[str] = None,
ct2_auto_convert: bool = True,
ct2_conversion_quantization: Optional[str] = None,
ct2_inter_threads: int = 1,
ct2_intra_threads: int = 0,
ct2_max_queued_batches: int = 0,
ct2_batch_type: str = "examples",
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ct2_decoding_length_mode: str = "fixed",
ct2_decoding_length_extra: int = 0,
ct2_decoding_length_min: int = 1,
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) -> None:
self.model = name
self.model_id = model_id
self.model_dir = model_dir
self.device = _resolve_device(device)
self.compute_type = _resolve_compute_type(torch_dtype, ct2_compute_type, 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)
self.ct2_model_dir = str(ct2_model_dir or _derive_ct2_model_dir(model_dir, self.compute_type))
self.ct2_auto_convert = bool(ct2_auto_convert)
self.ct2_conversion_quantization = _resolve_compute_type(
torch_dtype,
ct2_conversion_quantization or self.compute_type,
self.device,
)
self.ct2_inter_threads = int(ct2_inter_threads)
self.ct2_intra_threads = int(ct2_intra_threads)
self.ct2_max_queued_batches = int(ct2_max_queued_batches)
self.ct2_batch_type = str(ct2_batch_type or "examples").strip().lower()
if self.ct2_batch_type not in {"examples", "tokens"}:
raise ValueError(f"Unsupported CTranslate2 batch type: {ct2_batch_type}")
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self.ct2_decoding_length_mode = str(ct2_decoding_length_mode or "fixed").strip().lower()
if self.ct2_decoding_length_mode not in {"fixed", "source"}:
raise ValueError(f"Unsupported CTranslate2 decoding length mode: {ct2_decoding_length_mode}")
self.ct2_decoding_length_extra = int(ct2_decoding_length_extra)
self.ct2_decoding_length_min = max(1, int(ct2_decoding_length_min))
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self._tokenizer_lock = threading.Lock()
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self._local_model_source = self._resolve_local_model_source()
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self._load_runtime()
@property
def supports_batch(self) -> bool:
return True
def _tokenizer_source(self) -> str:
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return self._local_model_source or self.model_id
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def _model_source(self) -> str:
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return self._local_model_source or self.model_id
def _expected_local_model_types(self) -> Optional[set[str]]:
return None
def _resolve_local_model_source(self) -> Optional[str]:
model_path = Path(self.model_dir).expanduser()
if not model_path.exists():
return None
if not (model_path / "config.json").exists():
logger.warning(
"Local translation model_dir is incomplete | model=%s model_dir=%s missing=config.json fallback=model_id",
self.model,
model_path,
)
return None
expected_types = self._expected_local_model_types()
if not expected_types:
return str(model_path)
detected_type = _detect_local_model_type(str(model_path))
if detected_type is None:
return str(model_path)
if detected_type in expected_types:
return str(model_path)
logger.warning(
"Local translation model_dir has unexpected model_type | model=%s model_dir=%s detected=%s expected=%s fallback=model_id",
self.model,
model_path,
detected_type,
sorted(expected_types),
)
return None
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def _tokenizer_kwargs(self) -> Dict[str, object]:
return {}
def _translator_kwargs(self) -> Dict[str, object]:
return {
"device": self.device,
"compute_type": self.compute_type,
"inter_threads": self.ct2_inter_threads,
"intra_threads": self.ct2_intra_threads,
"max_queued_batches": self.ct2_max_queued_batches,
}
def _load_runtime(self) -> None:
try:
import ctranslate2
except ImportError as exc:
raise RuntimeError(
"CTranslate2 is required for local Marian/NLLB translation. "
"Install the translator service dependencies again after adding ctranslate2."
) from exc
tokenizer_source = self._tokenizer_source()
model_source = self._model_source()
self._ensure_converted_model(model_source)
logger.info(
"Loading CTranslate2 translation model | name=%s ct2_model_dir=%s tokenizer=%s device=%s compute_type=%s",
self.model,
self.ct2_model_dir,
tokenizer_source,
self.device,
self.compute_type,
)
self.tokenizer = AutoTokenizer.from_pretrained(tokenizer_source, **self._tokenizer_kwargs())
self.translator = ctranslate2.Translator(self.ct2_model_dir, **self._translator_kwargs())
if self.tokenizer.pad_token is None and self.tokenizer.eos_token is not None:
self.tokenizer.pad_token = self.tokenizer.eos_token
def _ensure_converted_model(self, model_source: str) -> None:
ct2_path = Path(self.ct2_model_dir).expanduser()
if (ct2_path / "model.bin").exists():
return
if not self.ct2_auto_convert:
raise FileNotFoundError(
f"CTranslate2 model not found for '{self.model}': {ct2_path}. "
"Enable ct2_auto_convert or pre-convert the model."
)
ct2_path.parent.mkdir(parents=True, exist_ok=True)
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logger.info(
"Converting translation model to CTranslate2 | name=%s source=%s output=%s quantization=%s",
self.model,
model_source,
ct2_path,
self.ct2_conversion_quantization,
)
try:
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convert_transformers_model(
model_source,
str(ct2_path),
self.ct2_conversion_quantization,
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)
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except Exception as exc:
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raise RuntimeError(
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f"Failed to convert model '{self.model}' to CTranslate2: {exc}"
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) from exc
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 _encode_source_tokens(
self,
texts: List[str],
source_lang: Optional[str],
target_lang: str,
) -> List[List[str]]:
del source_lang, target_lang
with self._tokenizer_lock:
encoded = self.tokenizer(
texts,
truncation=True,
max_length=self.max_input_length,
padding=False,
)
input_ids = encoded["input_ids"]
return [self.tokenizer.convert_ids_to_tokens(ids) for ids in input_ids]
def _target_prefixes(
self,
count: int,
source_lang: Optional[str],
target_lang: str,
) -> Optional[List[Optional[List[str]]]]:
del count, source_lang, target_lang
return None
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def _resolve_max_decoding_length(self, source_tokens: Sequence[Sequence[str]]) -> int:
if self.ct2_decoding_length_mode != "source":
return self.max_new_tokens
if not source_tokens:
return self.max_new_tokens
max_source_length = max(len(tokens) for tokens in source_tokens)
dynamic_length = max(self.ct2_decoding_length_min, max_source_length + self.ct2_decoding_length_extra)
return min(self.max_new_tokens, dynamic_length)
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def _postprocess_hypothesis(
self,
tokens: List[str],
source_lang: Optional[str],
target_lang: str,
) -> List[str]:
del source_lang, target_lang
return tokens
def _decode_tokens(self, tokens: List[str]) -> Optional[str]:
token_ids = self.tokenizer.convert_tokens_to_ids(tokens)
text = self.tokenizer.decode(token_ids, skip_special_tokens=True).strip()
return text or None
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)
source_tokens = self._encode_source_tokens(texts, source_lang, target_lang)
target_prefix = self._target_prefixes(len(source_tokens), source_lang, target_lang)
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max_decoding_length = self._resolve_max_decoding_length(source_tokens)
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logger.info(
"Translation model batch detail | model=%s segment_count=%s token_lengths=%s max_decoding_length=%s batch_type=%s beam_size=%s target_lang=%s source_lang=%s",
self.model,
len(source_tokens),
_summarize_lengths([len(tokens) for tokens in source_tokens]),
max_decoding_length,
self.ct2_batch_type,
self.num_beams,
target_lang,
source_lang or "auto",
)
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results = self.translator.translate_batch(
source_tokens,
target_prefix=target_prefix,
max_batch_size=self.batch_size,
batch_type=self.ct2_batch_type,
beam_size=self.num_beams,
max_input_length=self.max_input_length,
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max_decoding_length=max_decoding_length,
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)
outputs: List[Optional[str]] = []
for result in results:
hypothesis = result.hypotheses[0] if result.hypotheses else []
processed = self._postprocess_hypothesis(hypothesis, source_lang, target_lang)
outputs.append(self._decode_tokens(processed))
return outputs
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def _token_count(
self,
text: str,
target_lang: str,
source_lang: Optional[str] = None,
) -> int:
encoded = self._encode_source_tokens([text], source_lang, target_lang)
return len(encoded[0]) if encoded else 0
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,
decoding_length_mode=self.ct2_decoding_length_mode,
decoding_length_extra=self.ct2_decoding_length_extra,
)
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)
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token_count_cache: Dict[str, int] = {}
def _cached_token_count(value: str) -> int:
cached = token_count_cache.get(value)
if cached is not None:
return cached
count = self._token_count(
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value,
target_lang=target_lang,
source_lang=source_lang,
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)
token_count_cache[value] = count
return count
return split_text_for_translation(
text,
max_tokens=limit,
token_length_fn=_cached_token_count,
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def _log_segmentation_summary(
self,
*,
texts: Sequence[str],
segment_plans: Sequence[Sequence[str]],
target_lang: str,
source_lang: Optional[str],
) -> None:
non_empty_count = sum(1 for text in texts if text.strip())
segment_counts = [len(segments) for segments in segment_plans if segments]
total_segments = sum(segment_counts)
segmented_inputs = sum(1 for count in segment_counts if count > 1)
logger.info(
"Translation segmentation summary | model=%s inputs=%s non_empty_inputs=%s segmented_inputs=%s total_segments=%s batch_size=%s target_lang=%s source_lang=%s segments_per_input=%s",
self.model,
len(texts),
non_empty_count,
segmented_inputs,
total_segments,
self.batch_size,
target_lang,
source_lang or "auto",
_summarize_lengths(segment_counts),
)
def _translate_segment_batches(
self,
segments: List[str],
target_lang: str,
source_lang: Optional[str] = None,
) -> List[Optional[str]]:
if not segments:
return []
outputs: List[Optional[str]] = []
total_batches = (len(segments) + self.batch_size - 1) // self.batch_size
for batch_index, start in enumerate(range(0, len(segments), self.batch_size), start=1):
batch = segments[start:start + self.batch_size]
logger.info(
"Translation inference batch | model=%s batch_index=%s total_batches=%s segment_count=%s char_lengths=%s first_preview=%s target_lang=%s source_lang=%s",
self.model,
batch_index,
total_batches,
len(batch),
_summarize_lengths([len(segment) for segment in batch]),
_text_preview(batch[0] if batch else ""),
target_lang,
source_lang or "auto",
)
outputs.extend(
self._translate_batch(batch, target_lang=target_lang, source_lang=source_lang)
)
return outputs
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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)
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self._log_segmentation_summary(
texts=texts,
segment_plans=segment_plans,
target_lang=target_lang,
source_lang=source_lang,
)
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translated_segments = (
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self._translate_segment_batches(flat_segments, target_lang=target_lang, source_lang=source_lang)
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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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CTranslate2
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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)
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if not any(item.strip() for item in texts):
outputs = [None if not item.strip() else item for item in texts] # type: ignore[list-item]
return outputs[0] if is_single else outputs
outputs = self._translate_with_segmentation(texts, target_lang=target_lang, source_lang=source_lang)
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return outputs[0] if is_single else outputs
class MarianCTranslate2TranslationBackend(LocalCTranslate2TranslationBackend):
"""Local backend for Marian/OPUS MT models on CTranslate2."""
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],
ct2_model_dir: Optional[str] = None,
ct2_compute_type: Optional[str] = None,
ct2_auto_convert: bool = True,
ct2_conversion_quantization: Optional[str] = None,
ct2_inter_threads: int = 1,
ct2_intra_threads: int = 0,
ct2_max_queued_batches: int = 0,
ct2_batch_type: str = "examples",
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ct2_decoding_length_mode: str = "fixed",
ct2_decoding_length_extra: int = 0,
ct2_decoding_length_min: int = 1,
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CTranslate2
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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,
ct2_model_dir=ct2_model_dir,
ct2_compute_type=ct2_compute_type,
ct2_auto_convert=ct2_auto_convert,
ct2_conversion_quantization=ct2_conversion_quantization,
ct2_inter_threads=ct2_inter_threads,
ct2_intra_threads=ct2_intra_threads,
ct2_max_queued_batches=ct2_max_queued_batches,
ct2_batch_type=ct2_batch_type,
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ct2_decoding_length_mode=ct2_decoding_length_mode,
ct2_decoding_length_extra=ct2_decoding_length_extra,
ct2_decoding_length_min=ct2_decoding_length_min,
|
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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)}"
)
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def _expected_local_model_types(self) -> Optional[set[str]]:
return {"marian"}
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class NLLBCTranslate2TranslationBackend(LocalCTranslate2TranslationBackend):
"""Local backend for NLLB models on CTranslate2."""
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,
ct2_model_dir: Optional[str] = None,
ct2_compute_type: Optional[str] = None,
ct2_auto_convert: bool = True,
ct2_conversion_quantization: Optional[str] = None,
ct2_inter_threads: int = 1,
ct2_intra_threads: int = 0,
ct2_max_queued_batches: int = 0,
ct2_batch_type: str = "examples",
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ct2_decoding_length_mode: str = "fixed",
ct2_decoding_length_extra: int = 0,
ct2_decoding_length_min: int = 1,
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) -> None:
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self.language_codes = build_nllb_language_catalog(language_codes)
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self._tokenizers_by_source: Dict[str, object] = {}
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,
ct2_model_dir=ct2_model_dir,
ct2_compute_type=ct2_compute_type,
ct2_auto_convert=ct2_auto_convert,
ct2_conversion_quantization=ct2_conversion_quantization,
ct2_inter_threads=ct2_inter_threads,
ct2_intra_threads=ct2_intra_threads,
ct2_max_queued_batches=ct2_max_queued_batches,
ct2_batch_type=ct2_batch_type,
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ct2_decoding_length_mode=ct2_decoding_length_mode,
ct2_decoding_length_extra=ct2_decoding_length_extra,
ct2_decoding_length_min=ct2_decoding_length_min,
|
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)
def _validate_languages(self, source_lang: Optional[str], target_lang: str) -> None:
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if not str(source_lang or "").strip():
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CTranslate2
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|
raise ValueError(f"Model '{self.model}' requires source_lang")
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if resolve_nllb_language_code(source_lang, self.language_codes) is None:
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CTranslate2
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|
raise ValueError(f"Unsupported NLLB source language: {source_lang}")
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if resolve_nllb_language_code(target_lang, self.language_codes) is None:
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CTranslate2
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raise ValueError(f"Unsupported NLLB target language: {target_lang}")
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def _expected_local_model_types(self) -> Optional[set[str]]:
return {"m2m_100", "nllb_moe"}
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CTranslate2
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def _get_tokenizer_for_source(self, source_lang: str):
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src_code = resolve_nllb_language_code(source_lang, self.language_codes)
if src_code is None:
raise ValueError(f"Unsupported NLLB source language: {source_lang}")
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CTranslate2
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with self._tokenizer_lock:
tokenizer = self._tokenizers_by_source.get(src_code)
if tokenizer is None:
tokenizer = AutoTokenizer.from_pretrained(self._tokenizer_source(), src_lang=src_code)
if tokenizer.pad_token is None and tokenizer.eos_token is not None:
tokenizer.pad_token = tokenizer.eos_token
self._tokenizers_by_source[src_code] = tokenizer
return tokenizer
def _encode_source_tokens(
self,
texts: List[str],
source_lang: Optional[str],
target_lang: str,
) -> List[List[str]]:
del target_lang
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source_key = normalize_language_key(source_lang)
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tokenizer = self._get_tokenizer_for_source(source_key)
encoded = tokenizer(
texts,
truncation=True,
max_length=self.max_input_length,
padding=False,
)
input_ids = encoded["input_ids"]
return [tokenizer.convert_ids_to_tokens(ids) for ids in input_ids]
def _target_prefixes(
self,
count: int,
source_lang: Optional[str],
target_lang: str,
) -> Optional[List[Optional[List[str]]]]:
del source_lang
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tgt_code = resolve_nllb_language_code(target_lang, self.language_codes)
if tgt_code is None:
raise ValueError(f"Unsupported NLLB target language: {target_lang}")
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return [[tgt_code] for _ in range(count)]
def _postprocess_hypothesis(
self,
tokens: List[str],
source_lang: Optional[str],
target_lang: str,
) -> List[str]:
del source_lang
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tgt_code = resolve_nllb_language_code(target_lang, self.language_codes)
if tgt_code is None:
raise ValueError(f"Unsupported NLLB target language: {target_lang}")
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if tokens and tokens[0] == tgt_code:
return tokens[1:]
return tokens
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
|