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"""
Query parser - main module for query processing.
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Responsibilities are intentionally narrow:
- normalize and rewrite the incoming query
- detect language and tokenize with HanLP
- run translation and embedding requests concurrently
- return parser facts, not Elasticsearch language-planning data
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"""
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from dataclasses import dataclass, field
from typing import Any, Callable, Dict, List, Optional, Tuple
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import numpy as np
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import logging
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import time
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from concurrent.futures import ThreadPoolExecutor, wait
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from embeddings.image_encoder import CLIPImageEncoder
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from embeddings.text_encoder import TextEmbeddingEncoder
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from config import SearchConfig
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from translation import create_translation_client
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from .language_detector import LanguageDetector
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from .product_title_exclusion import (
ProductTitleExclusionDetector,
ProductTitleExclusionProfile,
ProductTitleExclusionRegistry,
)
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from .query_rewriter import QueryRewriter, QueryNormalizer
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from .style_intent import StyleIntentDetector, StyleIntentProfile, StyleIntentRegistry
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from .tokenization import QueryTextAnalysisCache, contains_han_text, extract_token_strings
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from .keyword_extractor import KeywordExtractor, collect_keywords_queries
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logger = logging.getLogger(__name__)
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import hanlp # type: ignore
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def _async_enrichment_result_summary(
task_type: str, lang: Optional[str], result: Any
) -> str:
"""One-line description of a completed translation/embedding task for logging."""
if task_type == "translation":
if result:
return f"lang={lang} translated={result!r}"
return f"lang={lang} empty_translation"
if task_type in ("embedding", "image_embedding"):
if result is not None:
return f"vector_shape={tuple(result.shape)}"
return "no_vector" if task_type == "embedding" else "no_image_vector"
return f"unexpected_task_type={task_type!r}"
def _async_enrichment_failure_warning(task_type: str, lang: Optional[str], err: BaseException) -> str:
"""Warning text aligned with historical messages for context.add_warning."""
msg = str(err)
if task_type == "translation":
return f"Translation failed | Language: {lang} | Error: {msg}"
if task_type == "image_embedding":
return f"CLIP text query vector generation failed | Error: {msg}"
return f"Query vector generation failed | Error: {msg}"
def _log_async_enrichment_finished(
log_info: Callable[[str], None],
*,
task_type: str,
summary: str,
elapsed_ms: float,
) -> None:
log_info(
f"Async enrichment task finished | task_type={task_type} | "
f"summary={summary} | elapsed_ms={elapsed_ms:.1f}"
)
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def rerank_query_text(
original_query: str,
*,
detected_language: Optional[str] = None,
translations: Optional[Dict[str, str]] = None,
) -> str:
"""
Text substituted for ``{query}`` when calling the reranker.
Chinese and English queries use the original string. For any other detected
language, prefer the English translation, then Chinese; if neither exists,
fall back to the original query.
"""
lang = (detected_language or "").strip().lower()
if lang in ("zh", "en"):
return original_query
trans = translations or {}
for key in ("en", "zh"):
t = (trans.get(key) or "").strip()
if t:
return t
return original_query
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@dataclass(slots=True)
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class ParsedQuery:
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"""
Container for query parser facts.
``keywords_queries`` parallels text variants: key ``base`` (see
``keyword_extractor.KEYWORDS_QUERY_BASE_KEY``) for ``rewritten_query``,
and the same language codes as ``translations`` for each translated string.
Entries with no extracted nouns are omitted.
"""
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original_query: str
query_normalized: str
rewritten_query: str
detected_language: Optional[str] = None
translations: Dict[str, str] = field(default_factory=dict)
query_vector: Optional[np.ndarray] = None
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image_query_vector: Optional[np.ndarray] = None
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query_tokens: List[str] = field(default_factory=list)
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keywords_queries: Dict[str, str] = field(default_factory=dict)
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style_intent_profile: Optional[StyleIntentProfile] = None
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product_title_exclusion_profile: Optional[ProductTitleExclusionProfile] = None
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_text_analysis_cache: Optional[QueryTextAnalysisCache] = field(default=None, repr=False)
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def text_for_rerank(self) -> str:
"""See :func:`rerank_query_text`."""
return rerank_query_text(
self.original_query,
detected_language=self.detected_language,
translations=self.translations,
)
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def to_dict(self) -> Dict[str, Any]:
"""Convert to dictionary representation."""
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return {
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"original_query": self.original_query,
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"query_normalized": self.query_normalized,
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"rewritten_query": self.rewritten_query,
"detected_language": self.detected_language,
"translations": self.translations,
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"has_query_vector": self.query_vector is not None,
"has_image_query_vector": self.image_query_vector is not None,
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"query_tokens": self.query_tokens,
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"keywords_queries": dict(self.keywords_queries),
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"style_intent_profile": (
self.style_intent_profile.to_dict() if self.style_intent_profile is not None else None
),
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"product_title_exclusion_profile": (
self.product_title_exclusion_profile.to_dict()
if self.product_title_exclusion_profile is not None
else None
),
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}
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class QueryParser:
"""
Main query parser that processes queries through multiple stages:
1. Normalization
2. Query rewriting (brand/category mappings, synonyms)
3. Language detection
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4. Translation to caller-provided target languages
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5. Text embedding generation (for semantic search)
"""
def __init__(
self,
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config: SearchConfig,
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text_encoder: Optional[TextEmbeddingEncoder] = None,
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image_encoder: Optional[CLIPImageEncoder] = None,
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translator: Optional[Any] = None,
tokenizer: Optional[Callable[[str], Any]] = None,
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):
"""
Initialize query parser.
Args:
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config: SearchConfig instance
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text_encoder: Text embedding encoder (initialized at startup if not provided)
translator: Translator instance (initialized at startup if not provided)
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"""
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self.config = config
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self._text_encoder = text_encoder
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self._image_encoder = image_encoder
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self._translator = translator
# Initialize components
self.normalizer = QueryNormalizer()
self.language_detector = LanguageDetector()
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self.rewriter = QueryRewriter(config.query_config.rewrite_dictionary)
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self._tokenizer = tokenizer or self._build_tokenizer()
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self._keyword_extractor = KeywordExtractor(tokenizer=self._tokenizer)
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self.style_intent_registry = StyleIntentRegistry.from_query_config(config.query_config)
self.style_intent_detector = StyleIntentDetector(
self.style_intent_registry,
tokenizer=self._tokenizer,
)
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self.product_title_exclusion_registry = ProductTitleExclusionRegistry.from_query_config(
config.query_config
)
self.product_title_exclusion_detector = ProductTitleExclusionDetector(
self.product_title_exclusion_registry,
tokenizer=self._tokenizer,
)
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# Eager initialization (startup-time failure visibility, no lazy init in request path)
if self.config.query_config.enable_text_embedding and self._text_encoder is None:
logger.info("Initializing text encoder at QueryParser construction...")
self._text_encoder = TextEmbeddingEncoder()
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if self.config.query_config.image_embedding_field and self._image_encoder is None:
logger.info("Initializing image encoder at QueryParser construction...")
self._image_encoder = CLIPImageEncoder()
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if self._translator is None:
from config.services_config import get_translation_config
cfg = get_translation_config()
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logger.info(
"Initializing translator client at QueryParser construction (service_url=%s, default_model=%s)...",
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cfg.get("service_url"),
cfg.get("default_model"),
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)
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self._translator = create_translation_client()
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@property
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def text_encoder(self) -> TextEmbeddingEncoder:
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"""Return pre-initialized text encoder."""
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return self._text_encoder
@property
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def translator(self) -> Any:
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"""Return pre-initialized translator."""
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return self._translator
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@property
def image_encoder(self) -> Optional[CLIPImageEncoder]:
"""Return pre-initialized image encoder for CLIP text embeddings."""
return self._image_encoder
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def _build_tokenizer(self) -> Callable[[str], Any]:
"""Build the tokenizer used by query parsing. No fallback path by design."""
if hanlp is None:
raise RuntimeError("HanLP is required for QueryParser tokenization")
logger.info("Initializing HanLP tokenizer...")
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tokenizer = hanlp.load(hanlp.pretrained.tok.FINE_ELECTRA_SMALL_ZH)
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tokenizer.config.output_spans = True
logger.info("HanLP tokenizer initialized")
return tokenizer
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@staticmethod
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def _pick_query_translation_model(
source_lang: str,
target_lang: str,
config: SearchConfig,
source_language_in_index: bool,
) -> str:
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"""Pick the translation capability for query-time translation (configurable)."""
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src = str(source_lang or "").strip().lower()
tgt = str(target_lang or "").strip().lower()
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qc = config.query_config
if source_language_in_index:
if src == "zh" and tgt == "en":
return qc.zh_to_en_model
if src == "en" and tgt == "zh":
return qc.en_to_zh_model
return qc.default_translation_model
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if src == "zh" and tgt == "en":
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return qc.zh_to_en_model_source_not_in_index or qc.zh_to_en_model
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if src == "en" and tgt == "zh":
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return qc.en_to_zh_model_source_not_in_index or qc.en_to_zh_model
return qc.default_translation_model_source_not_in_index or qc.default_translation_model
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@staticmethod
def _normalize_language_codes(languages: Optional[List[str]]) -> List[str]:
normalized: List[str] = []
seen = set()
for language in languages or []:
token = str(language or "").strip().lower()
if not token or token in seen:
continue
seen.add(token)
normalized.append(token)
return normalized
@staticmethod
def _extract_tokens(tokenizer_result: Any) -> List[str]:
"""Normalize tokenizer output into a flat token string list."""
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return extract_token_strings(tokenizer_result)
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def _get_query_tokens(self, query: str) -> List[str]:
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return self._extract_tokens(self._tokenizer(query))
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@staticmethod
def _is_ascii_latin_query(text: str) -> bool:
candidate = str(text or "").strip()
if not candidate or contains_han_text(candidate):
return False
try:
candidate.encode("ascii")
except UnicodeEncodeError:
return False
return any(ch.isalpha() for ch in candidate)
def _detect_query_language(
self,
query_text: str,
*,
target_languages: Optional[List[str]] = None,
) -> str:
normalized_targets = self._normalize_language_codes(target_languages)
supported_languages = self._normalize_language_codes(
getattr(self.config.query_config, "supported_languages", None)
)
active_languages = normalized_targets or supported_languages
if active_languages and set(active_languages).issubset({"en", "zh"}):
if self._is_ascii_latin_query(query_text):
return "en"
return self.language_detector.detect(query_text)
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def parse(
self,
query: str,
tenant_id: Optional[str] = None,
generate_vector: bool = True,
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context: Optional[Any] = None,
target_languages: Optional[List[str]] = None,
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) -> ParsedQuery:
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"""
Parse query through all processing stages.
Args:
query: Raw query string
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tenant_id: Deprecated and ignored by QueryParser. Kept temporarily
to avoid a wider refactor in this first step.
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generate_vector: Whether to generate query embedding
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context: Optional request context for tracking and logging
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target_languages: Translation target languages decided by the caller
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Returns:
ParsedQuery object with all processing results
"""
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parse_t0 = time.perf_counter()
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# Initialize logger if context provided
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active_logger = context.logger if context else logger
if context and hasattr(context, "logger"):
context.logger.info(
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add logs
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f"Starting query parsing | Original query: '{query}' | Generate vector: {generate_vector}",
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extra={'reqid': context.reqid, 'uid': context.uid}
)
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feat: implement r...
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def log_info(msg):
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1. 日志、配置基础设施,使用优化
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if context and hasattr(context, 'logger'):
context.logger.info(msg, extra={'reqid': context.reqid, 'uid': context.uid})
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feat: implement r...
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else:
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embeddings
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active_logger.info(msg)
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feat: implement r...
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def log_debug(msg):
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1. 日志、配置基础设施,使用优化
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if context and hasattr(context, 'logger'):
context.logger.debug(msg, extra={'reqid': context.reqid, 'uid': context.uid})
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feat: implement r...
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else:
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embeddings
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active_logger.debug(msg)
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first commit
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qp性能优化
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before_wait_t0 = time.perf_counter()
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first commit
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# Stage 1: Normalize
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normalized = self.normalizer.normalize(query)
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log_debug(f"Normalization completed | '{query}' -> '{normalized}'")
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feat: implement r...
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if context:
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1. ES字段 skus的 ima...
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context.store_intermediate_result('query_normalized', normalized)
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first commit
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first commit
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# Stage 2: Query rewriting
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query_text = normalized
rewritten = normalized
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if self.config.query_config.rewrite_dictionary: # Enable rewrite if dictionary exists
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first commit
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rewritten = self.rewriter.rewrite(query_text)
if rewritten != query_text:
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log_info(f"Query rewritten | '{query_text}' -> '{rewritten}'")
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first commit
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query_text = rewritten
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if context:
context.store_intermediate_result('rewritten_query', rewritten)
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add logs
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context.add_warning(f"Query was rewritten: {query_text}")
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qp性能优化
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normalized_targets = self._normalize_language_codes(target_languages)
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# Stage 3: Language detection
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qp性能优化
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detected_lang = self._detect_query_language(
query_text,
target_languages=normalized_targets,
)
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多语言查询优化
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# Use default language if detection failed (None or "unknown")
if not detected_lang or detected_lang == "unknown":
detected_lang = self.config.query_config.default_language
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add logs
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log_info(f"Language detection | Detected language: {detected_lang}")
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feat: implement r...
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if context:
context.store_intermediate_result('detected_language', detected_lang)
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qp性能优化
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text_analysis_cache = QueryTextAnalysisCache(tokenizer=self._tokenizer)
for text_variant in (query, normalized, query_text):
text_analysis_cache.set_language_hint(text_variant, detected_lang)
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first commit
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混杂语言处理
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# Stage 5: Translation + embedding. Parser only coordinates async enrichment work; the
# caller decides translation targets and later search-field planning.
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translations: Dict[str, str] = {}
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ef5baa86
tangwang
混杂语言处理
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future_to_task: Dict[Any, Tuple[str, Optional[str]]] = {}
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log optimize
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future_submit_at: Dict[Any, float] = {}
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tangwang
混杂语言处理
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async_executor: Optional[ThreadPoolExecutor] = None
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query翻译等待超时逻辑
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detected_norm = str(detected_lang or "").strip().lower()
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混杂语言处理
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translation_targets = [lang for lang in normalized_targets if lang != detected_norm]
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query翻译,根据源语言是否在索...
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source_language_in_index = bool(normalized_targets) and detected_norm in normalized_targets
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tangwang
混杂语言处理
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# Stage 6: Text embedding - async execution
query_vector = None
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dc403578
tangwang
多模态搜索
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image_query_vector = None
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混杂语言处理
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should_generate_embedding = (
generate_vector and
self.config.query_config.enable_text_embedding
)
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dc403578
tangwang
多模态搜索
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should_generate_image_embedding = (
generate_vector and
bool(self.config.query_config.image_embedding_field)
)
|
ef5baa86
tangwang
混杂语言处理
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420
|
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dc403578
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多模态搜索
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task_count = (
len(translation_targets)
+ (1 if should_generate_embedding else 0)
+ (1 if should_generate_image_embedding else 0)
)
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ef5baa86
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混杂语言处理
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426
427
428
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if task_count > 0:
async_executor = ThreadPoolExecutor(
max_workers=max(1, min(task_count, 4)),
thread_name_prefix="query-enrichment",
)
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1556989b
tangwang
query翻译等待超时逻辑
|
431
|
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345d960b
tangwang
1. 删除全局 enable_tr...
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432
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try:
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ef5baa86
tangwang
混杂语言处理
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434
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if async_executor is not None:
for lang in translation_targets:
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tangwang
query翻译,根据源语言是否在索...
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435
436
437
438
439
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model_name = self._pick_query_translation_model(
detected_lang,
lang,
self.config,
source_language_in_index,
)
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1556989b
tangwang
query翻译等待超时逻辑
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441
442
443
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log_debug(
f"Submitting query translation | source={detected_lang} target={lang} model={model_name}"
)
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ef5baa86
tangwang
混杂语言处理
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444
|
future = async_executor.submit(
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1556989b
tangwang
query翻译等待超时逻辑
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445
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451
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self.translator.translate,
query_text,
lang,
detected_lang,
"ecommerce_search_query",
model_name,
)
|
ef5baa86
tangwang
混杂语言处理
|
452
|
future_to_task[future] = ("translation", lang)
|
db9c469c
tangwang
log optimize
|
453
|
future_submit_at[future] = time.perf_counter()
|
ef5baa86
tangwang
混杂语言处理
|
454
455
456
457
458
459
460
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if should_generate_embedding:
if self.text_encoder is None:
raise RuntimeError("Text embedding is enabled but text encoder is not initialized")
log_debug("Submitting query vector generation")
def _encode_query_vector() -> Optional[np.ndarray]:
|
4650fcec
tangwang
日志优化、日志串联(uid rqid)
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461
462
463
464
465
466
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arr = self.text_encoder.encode(
[query_text],
priority=1,
request_id=(context.reqid if context else None),
user_id=(context.uid if context else None),
)
|
ef5baa86
tangwang
混杂语言处理
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467
468
469
470
471
472
473
474
475
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if arr is None or len(arr) == 0:
return None
vec = arr[0]
if vec is None:
return None
return np.asarray(vec, dtype=np.float32)
future = async_executor.submit(_encode_query_vector)
future_to_task[future] = ("embedding", None)
|
db9c469c
tangwang
log optimize
|
476
|
future_submit_at[future] = time.perf_counter()
|
dc403578
tangwang
多模态搜索
|
477
478
479
480
481
482
483
484
485
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491
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|
if should_generate_image_embedding:
if self.image_encoder is None:
raise RuntimeError(
"Image embedding field is configured but image encoder is not initialized"
)
log_debug("Submitting CLIP text query vector generation")
def _encode_image_query_vector() -> Optional[np.ndarray]:
vec = self.image_encoder.encode_clip_text(
query_text,
normalize_embeddings=True,
priority=1,
request_id=(context.reqid if context else None),
user_id=(context.uid if context else None),
)
if vec is None:
return None
return np.asarray(vec, dtype=np.float32)
future = async_executor.submit(_encode_image_query_vector)
future_to_task[future] = ("image_embedding", None)
|
db9c469c
tangwang
log optimize
|
499
|
future_submit_at[future] = time.perf_counter()
|
345d960b
tangwang
1. 删除全局 enable_tr...
|
500
|
except Exception as e:
|
ef5baa86
tangwang
混杂语言处理
|
501
|
error_msg = f"Async query enrichment submission failed | Error: {str(e)}"
|
345d960b
tangwang
1. 删除全局 enable_tr...
|
502
503
504
|
log_info(error_msg)
if context:
context.add_warning(error_msg)
|
ef5baa86
tangwang
混杂语言处理
|
505
506
507
508
|
if async_executor is not None:
async_executor.shutdown(wait=False)
async_executor = None
future_to_task.clear()
|
db9c469c
tangwang
log optimize
|
509
|
future_submit_at.clear()
|
be52af70
tangwang
first commit
|
510
|
|
45b39796
tangwang
qp性能优化
|
511
|
# Stage 4: Query analysis (tokenization) now overlaps with async enrichment work.
|
45b39796
tangwang
qp性能优化
|
512
|
query_tokenizer_result = text_analysis_cache.get_tokenizer_result(query_text)
|
45b39796
tangwang
qp性能优化
|
513
|
query_tokens = self._extract_tokens(query_tokenizer_result)
|
45b39796
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qp性能优化
|
514
515
516
517
518
519
520
521
522
523
524
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526
527
528
529
530
|
log_debug(f"Query analysis | Query tokens: {query_tokens}")
if context:
context.store_intermediate_result('query_tokens', query_tokens)
keywords_base_query = ""
keywords_base_ms = 0.0
try:
keywords_base_t0 = time.perf_counter()
keywords_base_query = self._keyword_extractor.extract_keywords(
query_text,
language_hint=detected_lang,
tokenizer_result=text_analysis_cache.get_tokenizer_result(query_text),
)
keywords_base_ms = (time.perf_counter() - keywords_base_t0) * 1000.0
except Exception as e:
log_info(f"Base keyword extraction failed | Error: {e}")
|
9d0214bb
tangwang
qp性能优化
|
531
|
before_wait_ms = (time.perf_counter() - before_wait_t0) * 1000.0
|
45b39796
tangwang
qp性能优化
|
532
|
|
ef5baa86
tangwang
混杂语言处理
|
533
534
|
# Wait for translation + embedding concurrently; shared budget depends on whether
# the detected language belongs to caller-provided target_languages.
|
1556989b
tangwang
query翻译等待超时逻辑
|
535
|
qc = self.config.query_config
|
ef5baa86
tangwang
混杂语言处理
|
536
|
source_in_target_languages = bool(normalized_targets) and detected_norm in normalized_targets
|
1556989b
tangwang
query翻译等待超时逻辑
|
537
538
|
budget_ms = (
qc.translation_embedding_wait_budget_ms_source_in_index
|
ef5baa86
tangwang
混杂语言处理
|
539
|
if source_in_target_languages
|
1556989b
tangwang
query翻译等待超时逻辑
|
540
541
542
543
|
else qc.translation_embedding_wait_budget_ms_source_not_in_index
)
budget_sec = max(0.0, float(budget_ms) / 1000.0)
|
ef5baa86
tangwang
混杂语言处理
|
544
|
if translation_targets:
|
1556989b
tangwang
query翻译等待超时逻辑
|
545
546
|
log_info(
f"Translation+embedding shared wait budget | budget_ms={budget_ms} | "
|
ef5baa86
tangwang
混杂语言处理
|
547
548
|
f"source_in_target_languages={source_in_target_languages} | "
f"translation_targets={translation_targets}"
|
1556989b
tangwang
query翻译等待超时逻辑
|
549
550
|
)
|
ef5baa86
tangwang
混杂语言处理
|
551
|
if future_to_task:
|
1556989b
tangwang
query翻译等待超时逻辑
|
552
553
|
log_debug(
f"Waiting for async tasks (translation+embedding) | budget_ms={budget_ms} | "
|
ef5baa86
tangwang
混杂语言处理
|
554
|
f"source_in_target_languages={source_in_target_languages}"
|
1556989b
tangwang
query翻译等待超时逻辑
|
555
556
|
)
|
45b39796
tangwang
qp性能优化
|
557
|
async_wait_t0 = time.perf_counter()
|
ef5baa86
tangwang
混杂语言处理
|
558
|
done, not_done = wait(list(future_to_task.keys()), timeout=budget_sec)
|
45b39796
tangwang
qp性能优化
|
559
|
async_wait_ms = (time.perf_counter() - async_wait_t0) * 1000.0
|
d4cadc13
tangwang
翻译重构
|
560
|
for future in done:
|
ef5baa86
tangwang
混杂语言处理
|
561
|
task_type, lang = future_to_task[future]
|
db9c469c
tangwang
log optimize
|
562
563
|
t0 = future_submit_at.pop(future, None)
elapsed_ms = (time.perf_counter() - t0) * 1000.0 if t0 is not None else 0.0
|
3ec5bfe6
tangwang
1. get_translatio...
|
564
565
|
try:
result = future.result()
|
1556989b
tangwang
query翻译等待超时逻辑
|
566
|
if task_type == "translation":
|
3ec5bfe6
tangwang
1. get_translatio...
|
567
568
|
if result:
translations[lang] = result
|
45b39796
tangwang
qp性能优化
|
569
|
text_analysis_cache.set_language_hint(result, lang)
|
3ec5bfe6
tangwang
1. get_translatio...
|
570
|
if context:
|
1556989b
tangwang
query翻译等待超时逻辑
|
571
572
|
context.store_intermediate_result(f"translation_{lang}", result)
elif task_type == "embedding":
|
3ec5bfe6
tangwang
1. get_translatio...
|
573
|
query_vector = result
|
db9c469c
tangwang
log optimize
|
574
575
|
if query_vector is not None and context:
context.store_intermediate_result("query_vector_shape", query_vector.shape)
|
dc403578
tangwang
多模态搜索
|
576
577
|
elif task_type == "image_embedding":
image_query_vector = result
|
db9c469c
tangwang
log optimize
|
578
579
580
581
|
if image_query_vector is not None and context:
context.store_intermediate_result(
"image_query_vector_shape",
image_query_vector.shape,
|
dc403578
tangwang
多模态搜索
|
582
|
)
|
db9c469c
tangwang
log optimize
|
583
584
585
586
587
588
|
_log_async_enrichment_finished(
log_info,
task_type=task_type,
summary=_async_enrichment_result_summary(task_type, lang, result),
elapsed_ms=elapsed_ms,
)
|
3ec5bfe6
tangwang
1. get_translatio...
|
589
|
except Exception as e:
|
db9c469c
tangwang
log optimize
|
590
591
592
593
594
595
|
_log_async_enrichment_finished(
log_info,
task_type=task_type,
summary=f"error={e!s}",
elapsed_ms=elapsed_ms,
)
|
3ec5bfe6
tangwang
1. get_translatio...
|
596
|
if context:
|
db9c469c
tangwang
log optimize
|
597
|
context.add_warning(_async_enrichment_failure_warning(task_type, lang, e))
|
d4cadc13
tangwang
翻译重构
|
598
|
|
d4cadc13
tangwang
翻译重构
|
599
600
|
if not_done:
for future in not_done:
|
db9c469c
tangwang
log optimize
|
601
|
future_submit_at.pop(future, None)
|
ef5baa86
tangwang
混杂语言处理
|
602
|
task_type, lang = future_to_task[future]
|
1556989b
tangwang
query翻译等待超时逻辑
|
603
|
if task_type == "translation":
|
d4cadc13
tangwang
翻译重构
|
604
|
timeout_msg = (
|
1556989b
tangwang
query翻译等待超时逻辑
|
605
|
f"Translation timeout (>{budget_ms}ms) | Language: {lang} | "
|
d4cadc13
tangwang
翻译重构
|
606
607
|
f"Query text: '{query_text}'"
)
|
dc403578
tangwang
多模态搜索
|
608
609
610
611
612
|
elif task_type == "image_embedding":
timeout_msg = (
f"CLIP text query vector generation timeout (>{budget_ms}ms), "
"proceeding without image embedding result"
)
|
d4cadc13
tangwang
翻译重构
|
613
|
else:
|
1556989b
tangwang
query翻译等待超时逻辑
|
614
615
616
|
timeout_msg = (
f"Query vector generation timeout (>{budget_ms}ms), proceeding without embedding result"
)
|
d4cadc13
tangwang
翻译重构
|
617
618
619
|
log_info(timeout_msg)
if context:
context.add_warning(timeout_msg)
|
d4cadc13
tangwang
翻译重构
|
620
|
|
ef5baa86
tangwang
混杂语言处理
|
621
622
|
if async_executor:
async_executor.shutdown(wait=False)
|
1556989b
tangwang
query翻译等待超时逻辑
|
623
|
|
3ec5bfe6
tangwang
1. get_translatio...
|
624
|
if translations and context:
|
1556989b
tangwang
query翻译等待超时逻辑
|
625
|
context.store_intermediate_result("translations", translations)
|
45b39796
tangwang
qp性能优化
|
626
627
|
else:
async_wait_ms = 0.0
|
be52af70
tangwang
first commit
|
628
|
|
45b39796
tangwang
qp性能优化
|
629
|
tail_sync_t0 = time.perf_counter()
|
ceaf6d03
tangwang
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keywords_queries: Dict[str, str] = {}
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keyword_tail_ms = 0.0
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try:
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keywords_t0 = time.perf_counter()
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keywords_queries = collect_keywords_queries(
self._keyword_extractor,
query_text,
translations,
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source_language=detected_lang,
text_analysis_cache=text_analysis_cache,
base_keywords_query=keywords_base_query,
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)
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keyword_tail_ms = (time.perf_counter() - keywords_t0) * 1000.0
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if context:
context.store_intermediate_result("keywords_queries", keywords_queries)
log_info(f"Keyword extraction completed | keywords_queries={keywords_queries}")
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except Exception as e:
log_info(f"Keyword extraction failed | Error: {e}")
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# Build result
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base_result = ParsedQuery(
original_query=query,
query_normalized=normalized,
rewritten_query=query_text,
detected_language=detected_lang,
translations=translations,
query_vector=query_vector,
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image_query_vector=image_query_vector,
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query_tokens=query_tokens,
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keywords_queries=keywords_queries,
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_text_analysis_cache=text_analysis_cache,
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)
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style_intent_profile = self.style_intent_detector.detect(base_result)
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product_title_exclusion_profile = self.product_title_exclusion_detector.detect(base_result)
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tail_sync_ms = (time.perf_counter() - tail_sync_t0) * 1000.0
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log_info(
"Query parse stage timings | "
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f"before_wait_ms={before_wait_ms:.1f} | "
f"async_wait_ms={async_wait_ms:.1f} | "
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f"base_keywords_ms={keywords_base_ms:.1f} | "
f"keyword_tail_ms={keyword_tail_ms:.1f} | "
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f"tail_sync_ms={tail_sync_ms:.1f}"
)
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if context:
context.store_intermediate_result(
"style_intent_profile",
style_intent_profile.to_dict(),
)
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context.store_intermediate_result(
"product_title_exclusion_profile",
product_title_exclusion_profile.to_dict(),
)
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result = ParsedQuery(
original_query=query,
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query_normalized=normalized,
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rewritten_query=query_text,
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detected_language=detected_lang,
translations=translations,
query_vector=query_vector,
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image_query_vector=image_query_vector,
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query_tokens=query_tokens,
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keywords_queries=keywords_queries,
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style_intent_profile=style_intent_profile,
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product_title_exclusion_profile=product_title_exclusion_profile,
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_text_analysis_cache=text_analysis_cache,
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)
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parse_total_ms = (time.perf_counter() - parse_t0) * 1000.0
completion_tail = (
f"Translation count: {len(translations)} | "
f"Vector: {'yes' if query_vector is not None else 'no'} | "
f"Image vector: {'yes' if image_query_vector is not None else 'no'} | "
f"parse_total_ms={parse_total_ms:.1f}"
)
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if context and hasattr(context, 'logger'):
context.logger.info(
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f"Query parsing completed | Original query: '{query}' | Final query: '{rewritten or query_text}' | "
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f"Language: {detected_lang} | {completion_tail}",
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extra={'reqid': context.reqid, 'uid': context.uid}
)
else:
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logger.info(
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f"Query parsing completed | Original query: '{query}' | Final query: '{rewritten or query_text}' | "
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f"Language: {detected_lang} | {completion_tail}"
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325eec03
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)
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feat: implement r...
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return result
def get_search_queries(self, parsed_query: ParsedQuery) -> List[str]:
"""
Get list of queries to search (original + translations).
Args:
parsed_query: Parsed query object
Returns:
List of query strings to search
"""
queries = [parsed_query.rewritten_query]
# Add translations
for lang, translation in parsed_query.translations.items():
if translation and translation != parsed_query.rewritten_query:
queries.append(translation)
return queries
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def detect_text_language_for_suggestions(
text: str,
*,
index_languages: Optional[List[str]] = None,
primary_language: str = "en",
) -> Tuple[str, float, str]:
"""
Language detection for short strings (mixed-language tags, query-log fallback).
Uses the same ``LanguageDetector`` as :class:`QueryParser`. Returns a language
code present in ``index_languages`` when possible, otherwise the tenant primary.
Returns:
(lang, confidence, source) where source is ``detector``, ``fallback``, or ``default``.
"""
langs_list = [x for x in (index_languages or []) if x]
langs_set = set(langs_list)
def _norm_lang(raw: Optional[str]) -> Optional[str]:
if not raw:
return None
token = str(raw).strip().lower().replace("-", "_")
if not token:
return None
if token in {"zh_tw", "pt_br"}:
return token
return token.split("_")[0]
primary = _norm_lang(primary_language) or "en"
if primary not in langs_set and langs_list:
primary = _norm_lang(langs_list[0]) or langs_list[0]
if not text or not str(text).strip():
return primary, 0.0, "default"
raw_code = LanguageDetector().detect(str(text).strip())
if not raw_code or raw_code == "unknown":
return primary, 0.35, "default"
def _index_lang_base(cand: str) -> str:
t = str(cand).strip().lower().replace("-", "_")
return t.split("_")[0] if t else ""
def _resolve_index_lang(code: str) -> Optional[str]:
if code in langs_set:
return code
for cand in langs_list:
if _index_lang_base(cand) == code:
return cand
return None
if langs_list:
resolved = _resolve_index_lang(raw_code)
if resolved is None:
return primary, 0.5, "fallback"
return resolved, 0.92, "detector"
return raw_code, 0.92, "detector"
|