service.py
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"""Translation service orchestration."""
from __future__ import annotations
import logging
from typing import Dict, List, Optional, Tuple
from config.loader import get_app_config
from config.schema import AppConfig
from translation.cache import TranslationCache
from translation.protocols import TranslateInput, TranslateOutput, TranslationBackendProtocol
from translation.settings import (
TranslationConfig,
get_enabled_translation_models,
get_translation_capability,
normalize_translation_model,
normalize_translation_scene,
translation_cache_probe_models,
)
logger = logging.getLogger(__name__)
class TranslationService:
"""Owns translation backends and routes calls by model and scene."""
def __init__(self, config: Optional[TranslationConfig] = None, app_config: Optional[AppConfig] = None) -> None:
self._app_config = app_config or get_app_config()
self.config = config or self._app_config.services.translation.as_dict()
self._enabled_capabilities = self._collect_enabled_capabilities()
if not self._enabled_capabilities:
raise ValueError("No enabled translation backends found in services.translation.capabilities")
self._translation_cache = TranslationCache(self.config["cache"])
self._backends = self._initialize_backends()
def _collect_enabled_capabilities(self) -> Dict[str, Dict[str, object]]:
enabled: Dict[str, Dict[str, object]] = {}
for name in get_enabled_translation_models(self.config):
capability = get_translation_capability(self.config, name, require_enabled=True)
backend_type = capability.get("backend")
if not backend_type:
raise ValueError(f"Translation capability '{name}' must define a backend")
enabled[name] = capability
return enabled
def _create_backend(
self,
*,
name: str,
backend_type: str,
cfg: Dict[str, object],
) -> TranslationBackendProtocol:
registry = {
"qwen_mt": self._create_qwen_mt_backend,
"deepl": self._create_deepl_backend,
"llm": self._create_llm_backend,
"local_nllb": self._create_local_nllb_backend,
"local_marian": self._create_local_marian_backend,
}
factory = registry.get(backend_type)
if factory is None:
raise ValueError(f"Unsupported translation backend '{backend_type}' for capability '{name}'")
return factory(name=name, cfg=cfg)
def _initialize_backends(self) -> Dict[str, TranslationBackendProtocol]:
backends: Dict[str, TranslationBackendProtocol] = {}
for name, capability_cfg in self._enabled_capabilities.items():
backend_type = str(capability_cfg["backend"])
logger.info("Initializing translation backend | model=%s backend=%s", name, backend_type)
backends[name] = self._create_backend(
name=name,
backend_type=backend_type,
cfg=capability_cfg,
)
logger.info(
"Translation backend initialized | model=%s backend=%s use_cache=%s backend_model=%s",
name,
backend_type,
bool(capability_cfg.get("use_cache")),
getattr(backends[name], "model", name),
)
return backends
def _create_qwen_mt_backend(self, *, name: str, cfg: Dict[str, object]) -> TranslationBackendProtocol:
from translation.backends.qwen_mt import QwenMTTranslationBackend
return QwenMTTranslationBackend(
capability_name=name,
model=str(cfg["model"]).strip(),
base_url=str(cfg["base_url"]).strip(),
api_key=self._app_config.infrastructure.secrets.dashscope_api_key,
timeout=int(cfg["timeout_sec"]),
glossary_id=cfg.get("glossary_id"),
)
def _create_deepl_backend(self, *, name: str, cfg: Dict[str, object]) -> TranslationBackendProtocol:
from translation.backends.deepl import DeepLTranslationBackend
return DeepLTranslationBackend(
api_key=self._app_config.infrastructure.secrets.deepl_auth_key,
api_url=str(cfg["api_url"]).strip(),
timeout=float(cfg["timeout_sec"]),
glossary_id=cfg.get("glossary_id"),
)
def _create_llm_backend(self, *, name: str, cfg: Dict[str, object]) -> TranslationBackendProtocol:
from translation.backends.llm import LLMTranslationBackend
return LLMTranslationBackend(
capability_name=name,
model=str(cfg["model"]).strip(),
timeout_sec=float(cfg["timeout_sec"]),
base_url=str(cfg["base_url"]).strip(),
api_key=self._app_config.infrastructure.secrets.dashscope_api_key,
)
def _create_local_nllb_backend(self, *, name: str, cfg: Dict[str, object]) -> TranslationBackendProtocol:
from translation.backends.local_ctranslate2 import NLLBCTranslate2TranslationBackend
return NLLBCTranslate2TranslationBackend(
name=name,
model_id=str(cfg["model_id"]).strip(),
model_dir=str(cfg["model_dir"]).strip(),
device=str(cfg["device"]).strip(),
torch_dtype=str(cfg["torch_dtype"]).strip(),
batch_size=int(cfg["batch_size"]),
max_input_length=int(cfg["max_input_length"]),
max_new_tokens=int(cfg["max_new_tokens"]),
num_beams=int(cfg["num_beams"]),
ct2_model_dir=cfg.get("ct2_model_dir"),
ct2_compute_type=cfg.get("ct2_compute_type"),
ct2_auto_convert=bool(cfg.get("ct2_auto_convert", True)),
ct2_conversion_quantization=cfg.get("ct2_conversion_quantization"),
ct2_inter_threads=int(cfg.get("ct2_inter_threads", 1)),
ct2_intra_threads=int(cfg.get("ct2_intra_threads", 0)),
ct2_max_queued_batches=int(cfg.get("ct2_max_queued_batches", 0)),
ct2_batch_type=str(cfg.get("ct2_batch_type", "examples")),
ct2_decoding_length_mode=str(cfg.get("ct2_decoding_length_mode", "fixed")),
ct2_decoding_length_extra=int(cfg.get("ct2_decoding_length_extra", 0)),
ct2_decoding_length_min=int(cfg.get("ct2_decoding_length_min", 1)),
)
def _create_local_marian_backend(self, *, name: str, cfg: Dict[str, object]) -> TranslationBackendProtocol:
from translation.backends.local_ctranslate2 import MarianCTranslate2TranslationBackend, get_marian_language_direction
source_lang, target_lang = get_marian_language_direction(name)
return MarianCTranslate2TranslationBackend(
name=name,
model_id=str(cfg["model_id"]).strip(),
model_dir=str(cfg["model_dir"]).strip(),
device=str(cfg["device"]).strip(),
torch_dtype=str(cfg["torch_dtype"]).strip(),
batch_size=int(cfg["batch_size"]),
max_input_length=int(cfg["max_input_length"]),
max_new_tokens=int(cfg["max_new_tokens"]),
num_beams=int(cfg["num_beams"]),
source_langs=[source_lang],
target_langs=[target_lang],
ct2_model_dir=cfg.get("ct2_model_dir"),
ct2_compute_type=cfg.get("ct2_compute_type"),
ct2_auto_convert=bool(cfg.get("ct2_auto_convert", True)),
ct2_conversion_quantization=cfg.get("ct2_conversion_quantization"),
ct2_inter_threads=int(cfg.get("ct2_inter_threads", 1)),
ct2_intra_threads=int(cfg.get("ct2_intra_threads", 0)),
ct2_max_queued_batches=int(cfg.get("ct2_max_queued_batches", 0)),
ct2_batch_type=str(cfg.get("ct2_batch_type", "examples")),
ct2_decoding_length_mode=str(cfg.get("ct2_decoding_length_mode", "fixed")),
ct2_decoding_length_extra=int(cfg.get("ct2_decoding_length_extra", 0)),
ct2_decoding_length_min=int(cfg.get("ct2_decoding_length_min", 1)),
)
@property
def available_models(self) -> List[str]:
return list(self._enabled_capabilities.keys())
@property
def loaded_models(self) -> List[str]:
return list(self._backends.keys())
def get_backend(self, model: Optional[str] = None) -> TranslationBackendProtocol:
normalized = normalize_translation_model(self.config, model)
backend = self._backends.get(normalized)
if backend is None:
raise ValueError(
f"Translation model '{normalized}' is not enabled. "
f"Available models: {', '.join(self.available_models) or 'none'}"
)
return backend
def translate(
self,
text: TranslateInput,
target_lang: str,
source_lang: Optional[str] = None,
*,
model: Optional[str] = None,
scene: Optional[str] = None,
) -> TranslateOutput:
normalized_model = normalize_translation_model(self.config, model)
backend = self.get_backend(normalized_model)
active_scene = normalize_translation_scene(self.config, scene)
capability_cfg = self._enabled_capabilities[normalized_model]
use_cache = bool(capability_cfg.get("use_cache"))
logger.info(
"Translation route | backend=%s request_type=%s use_cache=%s cache_available=%s",
getattr(backend, "model", normalized_model),
"single" if isinstance(text, str) else "batch",
use_cache,
self._translation_cache.available,
)
if not use_cache or not self._translation_cache.available:
return backend.translate(
text=text,
target_lang=target_lang,
source_lang=source_lang,
scene=active_scene,
)
if isinstance(text, str):
return self._translate_with_cache(
backend,
text=text,
target_lang=target_lang,
source_lang=source_lang,
scene=active_scene,
model=normalized_model,
)
return self._translate_batch_with_cache(
text=text,
target_lang=target_lang,
source_lang=source_lang,
backend=backend,
scene=active_scene,
model=normalized_model,
)
def _translate_with_cache(
self,
backend: TranslationBackendProtocol,
*,
text: str,
target_lang: str,
source_lang: Optional[str],
scene: str,
model: str,
) -> Optional[str]:
if not text.strip():
return text
cached, _served = self._tiered_cache_get(
request_model=model,
target_lang=target_lang,
source_text=text,
)
if cached is not None:
logger.info(
"Translation cache served | request_type=single text_len=%s",
len(text),
)
return cached
translated = backend.translate(
text=text,
target_lang=target_lang,
source_lang=source_lang,
scene=scene,
)
if translated is not None:
self._translation_cache.set(
model=model,
target_lang=target_lang,
source_text=text,
translated_text=translated,
)
logger.info(
"Translation backend result cached | request_type=single text_len=%s result_len=%s",
len(text),
len(str(translated)),
)
else:
logger.warning(
"Translation backend returned empty result | request_type=single text_len=%s",
len(text),
)
return translated
def _tiered_cache_get(
self,
*,
request_model: str,
target_lang: str,
source_text: str,
) -> Tuple[Optional[str], Optional[str]]:
"""Redis lookup: cache from higher-tier or **same-tier** models may satisfy A.
Lower-tier entries are never read. Returns ``(translated, served_model)``.
"""
probe_models = translation_cache_probe_models(self.config, request_model)
for probe_model in probe_models:
hit = self._translation_cache.get(
model=probe_model,
target_lang=target_lang,
source_text=source_text,
)
if hit is not None:
return hit, probe_model
return None, None
def _translate_batch_with_cache(
self,
*,
text: TranslateInput,
target_lang: str,
source_lang: Optional[str],
backend: TranslationBackendProtocol,
scene: str,
model: str,
) -> List[Optional[str]]:
texts = list(text)
results: List[Optional[str]] = [None] * len(texts)
misses: List[str] = []
miss_indices: List[int] = []
cache_hits = 0
for idx, item in enumerate(texts):
normalized_text = "" if item is None else str(item)
if not normalized_text.strip():
results[idx] = normalized_text
continue
cached, _served = self._tiered_cache_get(
request_model=model,
target_lang=target_lang,
source_text=normalized_text,
)
if cached is not None:
results[idx] = cached
cache_hits += 1
continue
misses.append(normalized_text)
miss_indices.append(idx)
logger.info(
"Translation batch cache summary | total=%s cache_hits=%s cache_misses=%s",
len(texts),
cache_hits,
len(misses),
)
if misses:
translated = backend.translate(
text=misses,
target_lang=target_lang,
source_lang=source_lang,
scene=scene,
)
translated_list = translated if isinstance(translated, list) else [translated]
for idx, original_text, translated_text in zip(miss_indices, misses, translated_list):
results[idx] = translated_text
if translated_text is not None:
self._translation_cache.set(
model=model,
target_lang=target_lang,
source_text=original_text,
translated_text=translated_text,
)
else:
logger.warning(
"Translation batch item returned empty result | item_index=%s text_len=%s",
idx,
len(original_text),
)
return results