Blame view

search/searcher.py 50.3 KB
be52af70   tangwang   first commit
1
2
3
  """
  Main Searcher module - executes search queries against Elasticsearch.
  
bd96cead   tangwang   1. 动态多语言字段与统一策略配置
4
  Handles query parsing, ranking, and result formatting.
be52af70   tangwang   first commit
5
6
  """
  
deccd68a   tangwang   Added the SKU pre...
7
  from typing import Dict, Any, List, Optional, Union, Tuple
d1d356f8   tangwang   脚本优化
8
  import os
99bea633   tangwang   add logs
9
  import time, json
325eec03   tangwang   1. 日志、配置基础设施,使用优化
10
  import logging
28e57bb1   tangwang   日志体系优化
11
  import hashlib
5f7d7f09   tangwang   性能测试报告.md
12
  from string import Formatter
deccd68a   tangwang   Added the SKU pre...
13
  import numpy as np
be52af70   tangwang   first commit
14
  
be52af70   tangwang   first commit
15
16
  from utils.es_client import ESClient
  from query import QueryParser, ParsedQuery
07cf5a93   tangwang   START_EMBEDDING=...
17
  from embeddings.image_encoder import CLIPImageEncoder
be52af70   tangwang   first commit
18
  from .es_query_builder import ESQueryBuilder
9f96d6f3   tangwang   短query不用语义搜索
19
  from config import SearchConfig
345d960b   tangwang   1. 删除全局 enable_tr...
20
  from config.tenant_config_loader import get_tenant_config_loader
ed948666   tangwang   tidy
21
  from context.request_context import RequestContext, RequestContextStage
13320ac6   tangwang   分面接口修改:
22
  from api.models import FacetResult, FacetValue, FacetConfig
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
23
  from api.result_formatter import ResultFormatter
e4a39cc8   tangwang   索引隔离。 不同的tenant_i...
24
  from indexer.mapping_generator import get_tenant_index_name
be52af70   tangwang   first commit
25
  
325eec03   tangwang   1. 日志、配置基础设施,使用优化
26
  logger = logging.getLogger(__name__)
28e57bb1   tangwang   日志体系优化
27
28
29
30
31
32
33
34
35
  backend_verbose_logger = logging.getLogger("backend.verbose")
  
  
  def _log_backend_verbose(payload: Dict[str, Any]) -> None:
      if not backend_verbose_logger.handlers:
          return
      backend_verbose_logger.info(
          json.dumps(payload, ensure_ascii=False, separators=(",", ":"))
      )
325eec03   tangwang   1. 日志、配置基础设施,使用优化
36
  
be52af70   tangwang   first commit
37
38
  
  class SearchResult:
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
39
      """Container for search results (外部友好格式)."""
be52af70   tangwang   first commit
40
41
42
  
      def __init__(
          self,
cadc77b6   tangwang   索引字段名、变量名、API数据结构...
43
          results: List[Any],  # List[SpuResult]
be52af70   tangwang   first commit
44
45
46
          total: int,
          max_score: float,
          took_ms: int,
6aa246be   tangwang   问题:Pydantic 应该能自动...
47
          facets: Optional[List[FacetResult]] = None,
1f071951   tangwang   补充调试信息,记录包括各个阶段的 ...
48
          query_info: Optional[Dict[str, Any]] = None,
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
49
50
          suggestions: Optional[List[str]] = None,
          related_searches: Optional[List[str]] = None,
1f071951   tangwang   补充调试信息,记录包括各个阶段的 ...
51
          debug_info: Optional[Dict[str, Any]] = None
be52af70   tangwang   first commit
52
      ):
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
53
          self.results = results
be52af70   tangwang   first commit
54
55
56
          self.total = total
          self.max_score = max_score
          self.took_ms = took_ms
6aa246be   tangwang   问题:Pydantic 应该能自动...
57
          self.facets = facets
be52af70   tangwang   first commit
58
          self.query_info = query_info or {}
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
59
60
          self.suggestions = suggestions or []
          self.related_searches = related_searches or []
1f071951   tangwang   补充调试信息,记录包括各个阶段的 ...
61
          self.debug_info = debug_info
43f1139f   tangwang   refactor: ES查询结构重...
62
  
be52af70   tangwang   first commit
63
64
      def to_dict(self) -> Dict[str, Any]:
          """Convert to dictionary representation."""
1f071951   tangwang   补充调试信息,记录包括各个阶段的 ...
65
          result = {
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
66
              "results": [r.model_dump() if hasattr(r, 'model_dump') else r for r in self.results],
be52af70   tangwang   first commit
67
68
69
              "total": self.total,
              "max_score": self.max_score,
              "took_ms": self.took_ms,
6aa246be   tangwang   问题:Pydantic 应该能自动...
70
              "facets": [f.model_dump() for f in self.facets] if self.facets else None,
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
71
72
73
              "query_info": self.query_info,
              "suggestions": self.suggestions,
              "related_searches": self.related_searches
be52af70   tangwang   first commit
74
          }
1f071951   tangwang   补充调试信息,记录包括各个阶段的 ...
75
76
77
          if self.debug_info is not None:
              result["debug_info"] = self.debug_info
          return result
be52af70   tangwang   first commit
78
79
80
81
82
83
84
85
  
  
  class Searcher:
      """
      Main search engine class.
  
      Handles:
      - Query parsing and translation
bd96cead   tangwang   1. 动态多语言字段与统一策略配置
86
      - Dynamic multi-language text recall planning
be52af70   tangwang   first commit
87
88
89
90
91
92
      - ES query building
      - Result ranking and formatting
      """
  
      def __init__(
          self,
be52af70   tangwang   first commit
93
          es_client: ESClient,
9f96d6f3   tangwang   短query不用语义搜索
94
          config: SearchConfig,
26b910bd   tangwang   refactor service ...
95
96
          query_parser: Optional[QueryParser] = None,
          image_encoder: Optional[CLIPImageEncoder] = None,
be52af70   tangwang   first commit
97
98
99
100
101
      ):
          """
          Initialize searcher.
  
          Args:
be52af70   tangwang   first commit
102
              es_client: Elasticsearch client
9f96d6f3   tangwang   短query不用语义搜索
103
              config: SearchConfig instance
be52af70   tangwang   first commit
104
              query_parser: Query parser (created if not provided)
26b910bd   tangwang   refactor service ...
105
              image_encoder: Optional pre-initialized image encoder
be52af70   tangwang   first commit
106
          """
be52af70   tangwang   first commit
107
          self.es_client = es_client
9f96d6f3   tangwang   短query不用语义搜索
108
          self.config = config
e4a39cc8   tangwang   索引隔离。 不同的tenant_i...
109
          # Index name is now generated dynamically per tenant, no longer stored here
9f96d6f3   tangwang   短query不用语义搜索
110
          self.query_parser = query_parser or QueryParser(config)
9f96d6f3   tangwang   短query不用语义搜索
111
          self.text_embedding_field = config.query_config.text_embedding_field or "title_embedding"
26b910bd   tangwang   refactor service ...
112
113
114
115
116
117
          self.image_embedding_field = config.query_config.image_embedding_field
          if self.image_embedding_field and image_encoder is None:
              self.image_encoder = CLIPImageEncoder()
          else:
              self.image_encoder = image_encoder
          self.source_fields = config.query_config.source_fields
be52af70   tangwang   first commit
118
  
f0d020c3   tangwang   多语言查询改为只支持中英文两种,f...
119
          # Query builder - simplified single-layer architecture
f0d020c3   tangwang   多语言查询改为只支持中英文两种,f...
120
          self.query_builder = ESQueryBuilder(
bd96cead   tangwang   1. 动态多语言字段与统一策略配置
121
122
123
124
125
              match_fields=[],
              field_boosts=self.config.field_boosts,
              multilingual_fields=self.config.query_config.multilingual_fields,
              shared_fields=self.config.query_config.shared_fields,
              core_multilingual_fields=self.config.query_config.core_multilingual_fields,
be52af70   tangwang   first commit
126
              text_embedding_field=self.text_embedding_field,
13377199   tangwang   接口优化
127
              image_embedding_field=self.image_embedding_field,
9f96d6f3   tangwang   短query不用语义搜索
128
              source_fields=self.source_fields,
7bc756c5   tangwang   优化 ES 查询构建
129
              function_score_config=self.config.function_score,
70dab99f   tangwang   add logs
130
              default_language=self.config.query_config.default_language,
bd96cead   tangwang   1. 动态多语言字段与统一策略配置
131
132
133
134
              knn_boost=self.config.query_config.knn_boost,
              base_minimum_should_match=self.config.query_config.base_minimum_should_match,
              translation_minimum_should_match=self.config.query_config.translation_minimum_should_match,
              translation_boost=self.config.query_config.translation_boost,
bd96cead   tangwang   1. 动态多语言字段与统一策略配置
135
              tie_breaker_base_query=self.config.query_config.tie_breaker_base_query,
e756b18e   tangwang   重构了文本召回构建器,现在每个 b...
136
137
138
139
              best_fields_boosts=self.config.query_config.best_fields,
              best_fields_clause_boost=self.config.query_config.best_fields_boost,
              phrase_field_boosts=self.config.query_config.phrase_fields,
              phrase_match_boost=self.config.query_config.phrase_match_boost,
be52af70   tangwang   first commit
140
141
          )
  
26b910bd   tangwang   refactor service ...
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
      def _apply_source_filter(self, es_query: Dict[str, Any]) -> None:
          """
          Apply tri-state _source semantics:
          - None: do not set _source (return full source)
          - []: _source=false (return no source fields)
          - [..]: _source.includes=[..]
          """
          if self.source_fields is None:
              return
          if not isinstance(self.source_fields, list):
              raise ValueError("query_config.source_fields must be null or list[str]")
          if len(self.source_fields) == 0:
              es_query["_source"] = False
              return
          es_query["_source"] = {"includes": self.source_fields}
  
5f7d7f09   tangwang   性能测试报告.md
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
      def _resolve_rerank_source_filter(self, doc_template: str) -> Dict[str, Any]:
          """
          Build a lightweight _source filter for rerank prefetch.
  
          Only fetch fields required by rerank doc template to reduce ES payload.
          """
          field_map = {
              "title": "title",
              "brief": "brief",
              "vendor": "vendor",
              "description": "description",
              "category_path": "category_path",
          }
          includes: set[str] = set()
          template = str(doc_template or "{title}")
          for _, field_name, _, _ in Formatter().parse(template):
              if not field_name:
                  continue
              key = field_name.split(".", 1)[0].split("!", 1)[0].split(":", 1)[0]
              mapped = field_map.get(key)
              if mapped:
                  includes.add(mapped)
  
          # Fallback to title-only to keep rerank docs usable.
          if not includes:
              includes.add("title")
  
          return {"includes": sorted(includes)}
  
      def _fetch_hits_by_ids(
          self,
          index_name: str,
          doc_ids: List[str],
          source_spec: Optional[Any],
      ) -> tuple[Dict[str, Dict[str, Any]], int]:
          """
          Fetch page documents by IDs for final response fill.
  
          Returns:
              (hits_by_id, es_took_ms)
          """
          if not doc_ids:
              return {}, 0
  
          body: Dict[str, Any] = {
              "query": {
                  "ids": {
                      "values": doc_ids,
                  }
              }
          }
          if source_spec is not None:
              body["_source"] = source_spec
  
          resp = self.es_client.search(
              index_name=index_name,
              body=body,
              size=len(doc_ids),
              from_=0,
          )
          hits = resp.get("hits", {}).get("hits") or []
          hits_by_id: Dict[str, Dict[str, Any]] = {}
          for hit in hits:
              hid = hit.get("_id")
              if hid is None:
                  continue
              hits_by_id[str(hid)] = hit
          return hits_by_id, int(resp.get("took", 0) or 0)
  
deccd68a   tangwang   Added the SKU pre...
227
228
229
230
231
232
233
      @staticmethod
      def _normalize_sku_match_text(value: Optional[str]) -> str:
          """Normalize free text for lightweight SKU option matching."""
          if value is None:
              return ""
          return " ".join(str(value).strip().casefold().split())
  
a7cc9078   tangwang   sku排序
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
254
255
256
      @staticmethod
      def _sku_option1_embedding_key(
          sku: Dict[str, Any],
          spu_option1_name: Optional[Any] = None,
      ) -> Optional[str]:
          """
          Text sent to the embedding service for option1 must be "name:value"
          (option name from SKU row or SPU-level option1_name).
          """
          value_raw = sku.get("option1_value")
          if value_raw is None:
              return None
          value = str(value_raw).strip()
          if not value:
              return None
          name = sku.get("option1_name")
          if name is None or not str(name).strip():
              name = spu_option1_name
          name_str = str(name).strip() if name is not None and str(name).strip() else ""
          if name_str:
              value = f"{name_str}:{value}"
          return value.casefold()
  
deccd68a   tangwang   Added the SKU pre...
257
258
259
260
261
262
263
264
265
266
267
268
      def _build_sku_query_texts(self, parsed_query: ParsedQuery) -> List[str]:
          """Collect original and translated query texts for SKU option matching."""
          candidates: List[str] = []
          for text in (
              getattr(parsed_query, "original_query", None),
              getattr(parsed_query, "query_normalized", None),
              getattr(parsed_query, "rewritten_query", None),
          ):
              normalized = self._normalize_sku_match_text(text)
              if normalized:
                  candidates.append(normalized)
  
deccd68a   tangwang   Added the SKU pre...
269
270
271
272
273
274
275
276
277
278
279
280
281
282
283
284
285
286
287
288
          translations = getattr(parsed_query, "translations", {}) or {}
          if isinstance(translations, dict):
              for text in translations.values():
                  normalized = self._normalize_sku_match_text(text)
                  if normalized:
                      candidates.append(normalized)
  
          deduped: List[str] = []
          seen = set()
          for text in candidates:
              if text in seen:
                  continue
              seen.add(text)
              deduped.append(text)
          return deduped
  
      def _find_query_matching_sku_index(
          self,
          skus: List[Dict[str, Any]],
          query_texts: List[str],
a7cc9078   tangwang   sku排序
289
          spu_option1_name: Optional[Any] = None,
deccd68a   tangwang   Added the SKU pre...
290
      ) -> Optional[int]:
a7cc9078   tangwang   sku排序
291
          """Return the first SKU whose option1_value (or name:value) appears in query texts."""
deccd68a   tangwang   Added the SKU pre...
292
293
294
295
296
297
298
299
300
          if not skus or not query_texts:
              return None
  
          for index, sku in enumerate(skus):
              option1_value = self._normalize_sku_match_text(sku.get("option1_value"))
              if not option1_value:
                  continue
              if any(option1_value in query_text for query_text in query_texts):
                  return index
a7cc9078   tangwang   sku排序
301
302
303
304
305
306
307
              embed_key = self._sku_option1_embedding_key(sku, spu_option1_name)
              if embed_key and embed_key != option1_value:
                  composite_norm = self._normalize_sku_match_text(embed_key.replace(":", " "))
                  if any(composite_norm in query_text for query_text in query_texts):
                      return index
                  if any(embed_key.casefold() in query_text for query_text in query_texts):
                      return index
deccd68a   tangwang   Added the SKU pre...
308
309
310
311
312
313
314
315
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
331
332
333
334
335
336
337
338
339
340
341
342
343
344
345
346
347
348
          return None
  
      def _encode_query_vector_for_sku_matching(
          self,
          parsed_query: ParsedQuery,
          context: Optional[RequestContext] = None,
      ) -> Optional[np.ndarray]:
          """Best-effort fallback query embedding for final-page SKU matching."""
          query_text = (
              getattr(parsed_query, "rewritten_query", None)
              or getattr(parsed_query, "query_normalized", None)
              or getattr(parsed_query, "original_query", None)
          )
          if not query_text:
              return None
  
          text_encoder = getattr(self.query_parser, "text_encoder", None)
          if text_encoder is None:
              return None
  
          try:
              vectors = text_encoder.encode([query_text], priority=1)
          except Exception as exc:
              logger.warning("Failed to encode query vector for SKU matching: %s", exc, exc_info=True)
              if context is not None:
                  context.add_warning(f"SKU query embedding failed: {exc}")
              return None
  
          if vectors is None or len(vectors) == 0:
              return None
  
          vector = vectors[0]
          if vector is None:
              return None
          return np.asarray(vector, dtype=np.float32)
  
      def _select_sku_by_embedding(
          self,
          skus: List[Dict[str, Any]],
          option1_vectors: Dict[str, np.ndarray],
          query_vector: np.ndarray,
a7cc9078   tangwang   sku排序
349
          spu_option1_name: Optional[Any] = None,
deccd68a   tangwang   Added the SKU pre...
350
      ) -> Tuple[Optional[int], Optional[float]]:
a7cc9078   tangwang   sku排序
351
          """Select the SKU whose option1 embedding key (name:value) is most similar to the query."""
deccd68a   tangwang   Added the SKU pre...
352
353
354
355
          best_index: Optional[int] = None
          best_score: Optional[float] = None
  
          for index, sku in enumerate(skus):
a7cc9078   tangwang   sku排序
356
357
              embed_key = self._sku_option1_embedding_key(sku, spu_option1_name)
              if not embed_key:
deccd68a   tangwang   Added the SKU pre...
358
                  continue
a7cc9078   tangwang   sku排序
359
              option_vector = option1_vectors.get(embed_key)
deccd68a   tangwang   Added the SKU pre...
360
361
362
363
364
365
366
367
368
369
370
371
372
373
374
375
376
377
378
379
380
381
382
383
384
385
386
387
388
389
390
391
392
393
394
395
396
397
398
399
400
401
402
403
404
405
406
407
408
              if option_vector is None:
                  continue
              score = float(np.inner(query_vector, option_vector))
              if best_score is None or score > best_score:
                  best_index = index
                  best_score = score
  
          return best_index, best_score
  
      @staticmethod
      def _promote_matching_sku(source: Dict[str, Any], match_index: int) -> Optional[Dict[str, Any]]:
          """Move the matched SKU to the front and swap the SPU image."""
          skus = source.get("skus")
          if not isinstance(skus, list) or match_index < 0 or match_index >= len(skus):
              return None
  
          matched_sku = skus.pop(match_index)
          skus.insert(0, matched_sku)
  
          image_src = matched_sku.get("image_src") or matched_sku.get("imageSrc")
          if image_src:
              source["image_url"] = image_src
          return matched_sku
  
      def _apply_sku_sorting_for_page_hits(
          self,
          es_hits: List[Dict[str, Any]],
          parsed_query: ParsedQuery,
          context: Optional[RequestContext] = None,
      ) -> None:
          """Sort each page hit's SKUs so the best-matching SKU is first."""
          if not es_hits:
              return
  
          query_texts = self._build_sku_query_texts(parsed_query)
          unmatched_hits: List[Dict[str, Any]] = []
          option1_values_to_encode: List[str] = []
          seen_option1_values = set()
          text_matched = 0
          embedding_matched = 0
  
          for hit in es_hits:
              source = hit.get("_source")
              if not isinstance(source, dict):
                  continue
              skus = source.get("skus")
              if not isinstance(skus, list) or not skus:
                  continue
  
a7cc9078   tangwang   sku排序
409
410
411
412
              spu_option1_name = source.get("option1_name")
              match_index = self._find_query_matching_sku_index(
                  skus, query_texts, spu_option1_name=spu_option1_name
              )
deccd68a   tangwang   Added the SKU pre...
413
414
415
416
417
418
419
              if match_index is not None:
                  self._promote_matching_sku(source, match_index)
                  text_matched += 1
                  continue
  
              unmatched_hits.append(hit)
              for sku in skus:
a7cc9078   tangwang   sku排序
420
421
                  embed_key = self._sku_option1_embedding_key(sku, spu_option1_name)
                  if not embed_key or embed_key in seen_option1_values:
deccd68a   tangwang   Added the SKU pre...
422
                      continue
a7cc9078   tangwang   sku排序
423
424
                  seen_option1_values.add(embed_key)
                  option1_values_to_encode.append(embed_key)
deccd68a   tangwang   Added the SKU pre...
425
426
427
428
429
430
431
432
433
434
435
436
437
438
439
440
441
442
443
444
445
446
447
448
449
450
451
452
453
454
455
456
457
458
459
460
  
          if not unmatched_hits or not option1_values_to_encode:
              return
  
          query_vector = getattr(parsed_query, "query_vector", None)
          if query_vector is None:
              query_vector = self._encode_query_vector_for_sku_matching(parsed_query, context=context)
          if query_vector is None:
              return
  
          text_encoder = getattr(self.query_parser, "text_encoder", None)
          if text_encoder is None:
              return
  
          try:
              encoded_option_vectors = text_encoder.encode(option1_values_to_encode, priority=1)
          except Exception as exc:
              logger.warning("Failed to encode SKU option1 values for final-page sorting: %s", exc, exc_info=True)
              if context is not None:
                  context.add_warning(f"SKU option embedding failed: {exc}")
              return
  
          option1_vectors: Dict[str, np.ndarray] = {}
          for option1_value, vector in zip(option1_values_to_encode, encoded_option_vectors):
              if vector is None:
                  continue
              option1_vectors[option1_value] = np.asarray(vector, dtype=np.float32)
  
          query_vector_array = np.asarray(query_vector, dtype=np.float32)
          for hit in unmatched_hits:
              source = hit.get("_source")
              if not isinstance(source, dict):
                  continue
              skus = source.get("skus")
              if not isinstance(skus, list) or not skus:
                  continue
a7cc9078   tangwang   sku排序
461
462
463
464
465
466
              match_index, _ = self._select_sku_by_embedding(
                  skus,
                  option1_vectors,
                  query_vector_array,
                  spu_option1_name=source.get("option1_name"),
              )
deccd68a   tangwang   Added the SKU pre...
467
468
469
470
471
472
473
474
475
476
477
478
              if match_index is None:
                  continue
              self._promote_matching_sku(source, match_index)
              embedding_matched += 1
  
          if text_matched or embedding_matched:
              logger.info(
                  "Final-page SKU sorting completed | text_matched=%s | embedding_matched=%s",
                  text_matched,
                  embedding_matched,
              )
  
be52af70   tangwang   first commit
479
480
481
      def search(
          self,
          query: str,
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
482
          tenant_id: str,
be52af70   tangwang   first commit
483
484
485
          size: int = 10,
          from_: int = 0,
          filters: Optional[Dict[str, Any]] = None,
6aa246be   tangwang   问题:Pydantic 应该能自动...
486
          range_filters: Optional[Dict[str, Any]] = None,
13320ac6   tangwang   分面接口修改:
487
          facets: Optional[List[FacetConfig]] = None,
16c42787   tangwang   feat: implement r...
488
          min_score: Optional[float] = None,
c86c8237   tangwang   支持聚合。过滤项补充了逻辑,但是有问题
489
          context: Optional[RequestContext] = None,
c86c8237   tangwang   支持聚合。过滤项补充了逻辑,但是有问题
490
          sort_by: Optional[str] = None,
1f071951   tangwang   补充调试信息,记录包括各个阶段的 ...
491
          sort_order: Optional[str] = "desc",
577ec972   tangwang   返回给前端的字段、格式适配。主要包...
492
          debug: bool = False,
2739b281   tangwang   多语言索引调整
493
          language: str = "en",
a3a5d41b   tangwang   (sku_filter_dimen...
494
          sku_filter_dimension: Optional[List[str]] = None,
5f7d7f09   tangwang   性能测试报告.md
495
          enable_rerank: Optional[bool] = None,
ff32d894   tangwang   rerank
496
497
          rerank_query_template: Optional[str] = None,
          rerank_doc_template: Optional[str] = None,
be52af70   tangwang   first commit
498
499
      ) -> SearchResult:
          """
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
500
          Execute search query (外部友好格式).
be52af70   tangwang   first commit
501
502
503
  
          Args:
              query: Search query string
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
504
              tenant_id: Tenant ID (required for filtering)
be52af70   tangwang   first commit
505
506
              size: Number of results to return
              from_: Offset for pagination
6aa246be   tangwang   问题:Pydantic 应该能自动...
507
508
509
              filters: Exact match filters
              range_filters: Range filters for numeric fields
              facets: Facet configurations for faceted search
be52af70   tangwang   first commit
510
              min_score: Minimum score threshold
ef5baa86   tangwang   混杂语言处理
511
              context: Request context for tracking (required)
c86c8237   tangwang   支持聚合。过滤项补充了逻辑,但是有问题
512
513
              sort_by: Field name for sorting
              sort_order: Sort order: 'asc' or 'desc'
1f071951   tangwang   补充调试信息,记录包括各个阶段的 ...
514
              debug: Enable debug information output
ef5baa86   tangwang   混杂语言处理
515
516
517
518
519
520
521
522
523
              language: Response / field selection language hint (e.g. zh, en)
              sku_filter_dimension: SKU grouping dimensions for per-SPU variant pick
              enable_rerank: If None, use ``config.rerank.enabled``; if set, overrides
                  whether the rerank provider is invoked (subject to rerank window).
              rerank_query_template: Override for rerank query text template; None uses
                  ``config.rerank.rerank_query_template`` (e.g. ``"{query}"``).
              rerank_doc_template: Override for per-hit document text passed to rerank;
                  None uses ``config.rerank.rerank_doc_template``. Placeholders are
                  resolved in ``search/rerank_client.py``.
be52af70   tangwang   first commit
524
525
  
          Returns:
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
526
              SearchResult object with formatted results
be52af70   tangwang   first commit
527
          """
16c42787   tangwang   feat: implement r...
528
          if context is None:
ed948666   tangwang   tidy
529
              raise ValueError("context is required")
16c42787   tangwang   feat: implement r...
530
  
345d960b   tangwang   1. 删除全局 enable_tr...
531
532
533
          # 根据租户配置决定翻译开关(离线/在线统一)
          tenant_loader = get_tenant_config_loader()
          tenant_cfg = tenant_loader.get_tenant_config(tenant_id)
038e4e2f   tangwang   refactor(i18n): t...
534
535
          index_langs = tenant_cfg.get("index_languages") or []
          enable_translation = len(index_langs) > 0
9f96d6f3   tangwang   短query不用语义搜索
536
          enable_embedding = self.config.query_config.enable_text_embedding
5f7d7f09   tangwang   性能测试报告.md
537
538
539
540
541
542
          rc = self.config.rerank
          effective_query_template = rerank_query_template or rc.rerank_query_template
          effective_doc_template = rerank_doc_template or rc.rerank_doc_template
          # 重排开关优先级:请求参数显式传值 > 服务端配置(默认开启)
          rerank_enabled_by_config = bool(rc.enabled)
          do_rerank = rerank_enabled_by_config if enable_rerank is None else bool(enable_rerank)
c51d254f   tangwang   性能测试
543
          rerank_window = rc.rerank_window
506c39b7   tangwang   feat(search): 统一重...
544
          # 若开启重排且请求范围在窗口内:从 ES 取前 rerank_window 条、重排后再按 from/size 分页;否则不重排,按原 from/size 查 ES
ff32d894   tangwang   rerank
545
          in_rerank_window = do_rerank and (from_ + size) <= rerank_window
506c39b7   tangwang   feat(search): 统一重...
546
547
          es_fetch_from = 0 if in_rerank_window else from_
          es_fetch_size = rerank_window if in_rerank_window else size
16c42787   tangwang   feat: implement r...
548
549
550
551
552
553
  
          # Start timing
          context.start_stage(RequestContextStage.TOTAL)
  
          context.logger.info(
              f"开始搜索请求 | 查询: '{query}' | 参数: size={size}, from_={from_}, "
5f7d7f09   tangwang   性能测试报告.md
554
555
556
              f"enable_rerank(request)={enable_rerank}, enable_rerank(config)={rerank_enabled_by_config}, "
              f"enable_rerank(effective)={do_rerank}, in_rerank_window={in_rerank_window}, "
              f"es_fetch=({es_fetch_from},{es_fetch_size}) | "
506c39b7   tangwang   feat(search): 统一重...
557
              f"enable_translation={enable_translation}, enable_embedding={enable_embedding}, min_score={min_score}",
16c42787   tangwang   feat: implement r...
558
559
560
561
562
563
564
              extra={'reqid': context.reqid, 'uid': context.uid}
          )
  
          # Store search parameters in context
          context.metadata['search_params'] = {
              'size': size,
              'from_': from_,
506c39b7   tangwang   feat(search): 统一重...
565
566
567
              'es_fetch_from': es_fetch_from,
              'es_fetch_size': es_fetch_size,
              'in_rerank_window': in_rerank_window,
5f7d7f09   tangwang   性能测试报告.md
568
569
570
571
              'rerank_enabled_by_config': rerank_enabled_by_config,
              'enable_rerank_request': enable_rerank,
              'rerank_query_template': effective_query_template,
              'rerank_doc_template': effective_doc_template,
16c42787   tangwang   feat: implement r...
572
              'filters': filters,
6aa246be   tangwang   问题:Pydantic 应该能自动...
573
574
              'range_filters': range_filters,
              'facets': facets,
16c42787   tangwang   feat: implement r...
575
576
              'enable_translation': enable_translation,
              'enable_embedding': enable_embedding,
ff32d894   tangwang   rerank
577
              'enable_rerank': do_rerank,
c86c8237   tangwang   支持聚合。过滤项补充了逻辑,但是有问题
578
              'min_score': min_score,
c86c8237   tangwang   支持聚合。过滤项补充了逻辑,但是有问题
579
580
              'sort_by': sort_by,
              'sort_order': sort_order
16c42787   tangwang   feat: implement r...
581
          }
be52af70   tangwang   first commit
582
  
16c42787   tangwang   feat: implement r...
583
584
585
          context.metadata['feature_flags'] = {
              'translation_enabled': enable_translation,
              'embedding_enabled': enable_embedding,
ff32d894   tangwang   rerank
586
              'rerank_enabled': do_rerank
16c42787   tangwang   feat: implement r...
587
          }
be52af70   tangwang   first commit
588
589
  
          # Step 1: Parse query
16c42787   tangwang   feat: implement r...
590
591
592
593
          context.start_stage(RequestContextStage.QUERY_PARSING)
          try:
              parsed_query = self.query_parser.parse(
                  query,
345d960b   tangwang   1. 删除全局 enable_tr...
594
                  tenant_id=tenant_id,
16c42787   tangwang   feat: implement r...
595
                  generate_vector=enable_embedding,
ef5baa86   tangwang   混杂语言处理
596
597
                  context=context,
                  target_languages=index_langs if enable_translation else [],
16c42787   tangwang   feat: implement r...
598
599
600
601
              )
              # Store query analysis results in context
              context.store_query_analysis(
                  original_query=parsed_query.original_query,
3a5fda00   tangwang   1. ES字段 skus的 ima...
602
                  query_normalized=parsed_query.query_normalized,
16c42787   tangwang   feat: implement r...
603
604
605
606
                  rewritten_query=parsed_query.rewritten_query,
                  detected_language=parsed_query.detected_language,
                  translations=parsed_query.translations,
                  query_vector=parsed_query.query_vector.tolist() if parsed_query.query_vector is not None else None,
ef5baa86   tangwang   混杂语言处理
607
                  domain="default",
bd96cead   tangwang   1. 动态多语言字段与统一策略配置
608
                  is_simple_query=True
16c42787   tangwang   feat: implement r...
609
              )
be52af70   tangwang   first commit
610
  
16c42787   tangwang   feat: implement r...
611
612
613
614
              context.logger.info(
                  f"查询解析完成 | 原查询: '{parsed_query.original_query}' | "
                  f"重写后: '{parsed_query.rewritten_query}' | "
                  f"语言: {parsed_query.detected_language} | "
16c42787   tangwang   feat: implement r...
615
616
617
618
619
620
621
622
623
624
625
626
627
                  f"向量: {'是' if parsed_query.query_vector is not None else '否'}",
                  extra={'reqid': context.reqid, 'uid': context.uid}
              )
          except Exception as e:
              context.set_error(e)
              context.logger.error(
                  f"查询解析失败 | 错误: {str(e)}",
                  extra={'reqid': context.reqid, 'uid': context.uid}
              )
              raise
          finally:
              context.end_stage(RequestContextStage.QUERY_PARSING)
  
bd96cead   tangwang   1. 动态多语言字段与统一策略配置
628
          # Step 2: Query building
16c42787   tangwang   feat: implement r...
629
630
          context.start_stage(RequestContextStage.QUERY_BUILDING)
          try:
e4a39cc8   tangwang   索引隔离。 不同的tenant_i...
631
632
              # Generate tenant-specific index name
              index_name = get_tenant_index_name(tenant_id)
2739b281   tangwang   多语言索引调整
633
              # index_name = "search_products"
e4a39cc8   tangwang   索引隔离。 不同的tenant_i...
634
635
              
              # No longer need to add tenant_id to filters since each tenant has its own index
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
636
  
f0d020c3   tangwang   多语言查询改为只支持中英文两种,f...
637
              es_query = self.query_builder.build_query(
3a5fda00   tangwang   1. ES字段 skus的 ima...
638
                  query_text=parsed_query.rewritten_query or parsed_query.query_normalized,
16c42787   tangwang   feat: implement r...
639
                  query_vector=parsed_query.query_vector if enable_embedding else None,
16c42787   tangwang   feat: implement r...
640
                  filters=filters,
6aa246be   tangwang   问题:Pydantic 应该能自动...
641
                  range_filters=range_filters,
c581becd   tangwang   feat: 实现 Multi-Se...
642
                  facet_configs=facets,
506c39b7   tangwang   feat(search): 统一重...
643
644
                  size=es_fetch_size,
                  from_=es_fetch_from,
16c42787   tangwang   feat: implement r...
645
                  enable_knn=enable_embedding and parsed_query.query_vector is not None,
7bc756c5   tangwang   优化 ES 查询构建
646
                  min_score=min_score,
ef5baa86   tangwang   混杂语言处理
647
                  parsed_query=parsed_query,
16c42787   tangwang   feat: implement r...
648
              )
be52af70   tangwang   first commit
649
  
6aa246be   tangwang   问题:Pydantic 应该能自动...
650
651
652
653
654
655
656
              # Add facets for faceted search
              if facets:
                  facet_aggs = self.query_builder.build_facets(facets)
                  if facet_aggs:
                      if "aggs" not in es_query:
                          es_query["aggs"] = {}
                      es_query["aggs"].update(facet_aggs)
16c42787   tangwang   feat: implement r...
657
  
c86c8237   tangwang   支持聚合。过滤项补充了逻辑,但是有问题
658
659
660
              # Add sorting if specified
              if sort_by:
                  es_query = self.query_builder.add_sorting(es_query, sort_by, sort_order)
a47416ec   tangwang   把融合逻辑改成乘法公式,并把 ES...
661
                  es_query["track_scores"] = True
c86c8237   tangwang   支持聚合。过滤项补充了逻辑,但是有问题
662
  
5f7d7f09   tangwang   性能测试报告.md
663
664
665
666
667
668
669
670
671
672
673
              # Keep requested response _source semantics for the final response fill.
              response_source_spec = es_query.get("_source")
  
              # In rerank window, first pass only fetches minimal fields required by rerank template.
              es_query_for_fetch = es_query
              rerank_prefetch_source = None
              if in_rerank_window:
                  rerank_prefetch_source = self._resolve_rerank_source_filter(effective_doc_template)
                  es_query_for_fetch = dict(es_query)
                  es_query_for_fetch["_source"] = rerank_prefetch_source
  
16c42787   tangwang   feat: implement r...
674
              # Extract size and from from body for ES client parameters
5f7d7f09   tangwang   性能测试报告.md
675
              body_for_es = {k: v for k, v in es_query_for_fetch.items() if k not in ['size', 'from']}
16c42787   tangwang   feat: implement r...
676
677
678
  
              # Store ES query in context
              context.store_intermediate_result('es_query', es_query)
5f7d7f09   tangwang   性能测试报告.md
679
680
              if in_rerank_window and rerank_prefetch_source is not None:
                  context.store_intermediate_result('es_query_rerank_prefetch_source', rerank_prefetch_source)
16c42787   tangwang   feat: implement r...
681
682
              context.store_intermediate_result('es_body_for_search', body_for_es)
  
28e57bb1   tangwang   日志体系优化
683
              # Serialize ES query to compute a compact size + stable digest for correlation
5f7d7f09   tangwang   性能测试报告.md
684
              es_query_compact = json.dumps(es_query_for_fetch, ensure_ascii=False, separators=(",", ":"))
28e57bb1   tangwang   日志体系优化
685
686
687
              es_query_digest = hashlib.sha256(es_query_compact.encode("utf-8")).hexdigest()[:16]
              knn_enabled = bool(enable_embedding and parsed_query.query_vector is not None)
              vector_dims = int(len(parsed_query.query_vector)) if parsed_query.query_vector is not None else 0
99bea633   tangwang   add logs
688
  
16c42787   tangwang   feat: implement r...
689
              context.logger.info(
5f7d7f09   tangwang   性能测试报告.md
690
                  "ES query built | size: %s chars | digest: %s | KNN: %s | vector_dims: %s | facets: %s | rerank_prefetch_source: %s",
28e57bb1   tangwang   日志体系优化
691
692
693
694
695
                  len(es_query_compact),
                  es_query_digest,
                  "yes" if knn_enabled else "no",
                  vector_dims,
                  "yes" if facets else "no",
5f7d7f09   tangwang   性能测试报告.md
696
                  rerank_prefetch_source,
16c42787   tangwang   feat: implement r...
697
698
                  extra={'reqid': context.reqid, 'uid': context.uid}
              )
28e57bb1   tangwang   日志体系优化
699
700
701
702
703
704
705
706
707
708
              _log_backend_verbose({
                  "event": "es_query_built",
                  "reqid": context.reqid,
                  "uid": context.uid,
                  "tenant_id": tenant_id,
                  "size_chars": len(es_query_compact),
                  "sha256_16": es_query_digest,
                  "knn_enabled": knn_enabled,
                  "vector_dims": vector_dims,
                  "has_facets": bool(facets),
5f7d7f09   tangwang   性能测试报告.md
709
                  "query": es_query_for_fetch,
28e57bb1   tangwang   日志体系优化
710
              })
16c42787   tangwang   feat: implement r...
711
712
713
714
715
716
717
718
719
720
          except Exception as e:
              context.set_error(e)
              context.logger.error(
                  f"ES查询构建失败 | 错误: {str(e)}",
                  extra={'reqid': context.reqid, 'uid': context.uid}
              )
              raise
          finally:
              context.end_stage(RequestContextStage.QUERY_BUILDING)
  
a99e62ba   tangwang   记录各阶段耗时
721
722
          # Step 4: Elasticsearch search (primary recall)
          context.start_stage(RequestContextStage.ELASTICSEARCH_SEARCH_PRIMARY)
16c42787   tangwang   feat: implement r...
723
          try:
506c39b7   tangwang   feat(search): 统一重...
724
              # Use tenant-specific index name(开启重排且在窗口内时已用 es_fetch_size/es_fetch_from)
16c42787   tangwang   feat: implement r...
725
              es_response = self.es_client.search(
e4a39cc8   tangwang   索引隔离。 不同的tenant_i...
726
                  index_name=index_name,
16c42787   tangwang   feat: implement r...
727
                  body=body_for_es,
506c39b7   tangwang   feat(search): 统一重...
728
                  size=es_fetch_size,
a47416ec   tangwang   把融合逻辑改成乘法公式,并把 ES...
729
730
                  from_=es_fetch_from,
                  include_named_queries_score=bool(do_rerank and in_rerank_window),
be52af70   tangwang   first commit
731
732
              )
  
16c42787   tangwang   feat: implement r...
733
734
              # Store ES response in context
              context.store_intermediate_result('es_response', es_response)
be52af70   tangwang   first commit
735
  
16c42787   tangwang   feat: implement r...
736
737
738
739
740
              # Extract timing from ES response
              es_took = es_response.get('took', 0)
              context.logger.info(
                  f"ES搜索完成 | 耗时: {es_took}ms | "
                  f"命中数: {es_response.get('hits', {}).get('total', {}).get('value', 0)} | "
25d3e81d   tangwang   fix指定sort项时候的bug
741
                  f"最高分: {(es_response.get('hits', {}).get('max_score') or 0):.3f}",
16c42787   tangwang   feat: implement r...
742
743
744
745
746
747
748
749
750
751
                  extra={'reqid': context.reqid, 'uid': context.uid}
              )
          except Exception as e:
              context.set_error(e)
              context.logger.error(
                  f"ES搜索执行失败 | 错误: {str(e)}",
                  extra={'reqid': context.reqid, 'uid': context.uid}
              )
              raise
          finally:
a99e62ba   tangwang   记录各阶段耗时
752
              context.end_stage(RequestContextStage.ELASTICSEARCH_SEARCH_PRIMARY)
16c42787   tangwang   feat: implement r...
753
  
506c39b7   tangwang   feat(search): 统一重...
754
          # Optional Step 4.5: AI reranking(仅当请求范围在重排窗口内时执行)
ff32d894   tangwang   rerank
755
          if do_rerank and in_rerank_window:
506c39b7   tangwang   feat(search): 统一重...
756
757
758
759
760
              context.start_stage(RequestContextStage.RERANKING)
              try:
                  from .rerank_client import run_rerank
  
                  rerank_query = parsed_query.original_query if parsed_query else query
506c39b7   tangwang   feat(search): 统一重...
761
762
763
764
                  es_response, rerank_meta, fused_debug = run_rerank(
                      query=rerank_query,
                      es_response=es_response,
                      language=language,
506c39b7   tangwang   feat(search): 统一重...
765
766
767
                      timeout_sec=rc.timeout_sec,
                      weight_es=rc.weight_es,
                      weight_ai=rc.weight_ai,
ff32d894   tangwang   rerank
768
769
                      rerank_query_template=effective_query_template,
                      rerank_doc_template=effective_doc_template,
d31c7f65   tangwang   补充云服务reranker
770
                      top_n=(from_ + size),
506c39b7   tangwang   feat(search): 统一重...
771
772
773
                  )
  
                  if rerank_meta is not None:
42e3aea6   tangwang   tidy
774
775
                      from config.services_config import get_rerank_service_url
                      rerank_url = get_rerank_service_url()
506c39b7   tangwang   feat(search): 统一重...
776
777
778
779
780
781
782
783
784
785
786
787
788
789
790
791
792
793
794
795
796
797
798
799
800
801
802
                      context.metadata.setdefault("rerank_info", {})
                      context.metadata["rerank_info"].update({
                          "service_url": rerank_url,
                          "docs": len(es_response.get("hits", {}).get("hits") or []),
                          "meta": rerank_meta,
                      })
                      context.store_intermediate_result("rerank_scores", fused_debug)
                      context.logger.info(
                          f"重排完成 | docs={len(fused_debug)} | meta={rerank_meta}",
                          extra={'reqid': context.reqid, 'uid': context.uid}
                      )
              except Exception as e:
                  context.add_warning(f"Rerank failed: {e}")
                  context.logger.warning(
                      f"调用重排服务失败 | error: {e}",
                      extra={'reqid': context.reqid, 'uid': context.uid},
                      exc_info=True,
                  )
              finally:
                  context.end_stage(RequestContextStage.RERANKING)
  
          # 当本次请求在重排窗口内时:已从 ES 取了 rerank_window 条并可能已重排,需按请求的 from/size 做分页切片
          if in_rerank_window:
              hits = es_response.get("hits", {}).get("hits") or []
              sliced = hits[from_ : from_ + size]
              es_response.setdefault("hits", {})["hits"] = sliced
              if sliced:
af827ce9   tangwang   rerank
803
804
805
806
807
                  # 对于启用重排的结果,优先使用 _fused_score 计算 max_score;否则退回原始 _score
                  slice_max = max(
                      (h.get("_fused_score", h.get("_score", 0.0)) for h in sliced),
                      default=0.0,
                  )
506c39b7   tangwang   feat(search): 统一重...
808
809
810
811
812
813
                  try:
                      es_response["hits"]["max_score"] = float(slice_max)
                  except (TypeError, ValueError):
                      es_response["hits"]["max_score"] = 0.0
              else:
                  es_response["hits"]["max_score"] = 0.0
5f7d7f09   tangwang   性能测试报告.md
814
815
816
817
818
819
820
821
822
823
824
  
              # Page fill: fetch detailed fields only for final page hits.
              if sliced:
                  if response_source_spec is False:
                      for hit in sliced:
                          hit.pop("_source", None)
                      context.logger.info(
                          "分页详情回填跳过 | 原查询 _source=false",
                          extra={'reqid': context.reqid, 'uid': context.uid}
                      )
                  else:
a99e62ba   tangwang   记录各阶段耗时
825
826
827
828
829
830
831
832
833
834
835
836
837
838
839
840
841
842
843
844
845
846
847
848
849
850
851
                      context.start_stage(RequestContextStage.ELASTICSEARCH_PAGE_FILL)
                      try:
                          page_ids = [str(h.get("_id")) for h in sliced if h.get("_id") is not None]
                          details_by_id, fill_took = self._fetch_hits_by_ids(
                              index_name=index_name,
                              doc_ids=page_ids,
                              source_spec=response_source_spec,
                          )
                          filled = 0
                          for hit in sliced:
                              hid = hit.get("_id")
                              if hid is None:
                                  continue
                              detail_hit = details_by_id.get(str(hid))
                              if detail_hit is None:
                                  continue
                              if "_source" in detail_hit:
                                  hit["_source"] = detail_hit.get("_source") or {}
                                  filled += 1
                          if fill_took:
                              es_response["took"] = int((es_response.get("took", 0) or 0) + fill_took)
                          context.logger.info(
                              f"分页详情回填 | ids={len(page_ids)} | filled={filled} | took={fill_took}ms",
                              extra={'reqid': context.reqid, 'uid': context.uid}
                          )
                      finally:
                          context.end_stage(RequestContextStage.ELASTICSEARCH_PAGE_FILL)
5f7d7f09   tangwang   性能测试报告.md
852
  
506c39b7   tangwang   feat(search): 统一重...
853
854
855
856
857
              context.logger.info(
                  f"重排分页切片 | from={from_}, size={size}, 返回={len(sliced)}条",
                  extra={'reqid': context.reqid, 'uid': context.uid}
              )
  
16c42787   tangwang   feat: implement r...
858
859
860
          # Step 5: Result processing
          context.start_stage(RequestContextStage.RESULT_PROCESSING)
          try:
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
861
862
              # Extract ES hits
              es_hits = []
16c42787   tangwang   feat: implement r...
863
              if 'hits' in es_response and 'hits' in es_response['hits']:
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
864
                  es_hits = es_response['hits']['hits']
16c42787   tangwang   feat: implement r...
865
866
867
868
869
870
              # Extract total and max_score
              total = es_response.get('hits', {}).get('total', {})
              if isinstance(total, dict):
                  total_value = total.get('value', 0)
              else:
                  total_value = total
506c39b7   tangwang   feat(search): 统一重...
871
              # max_score 会在启用 AI 搜索时被更新为融合分数的最大值
25d3e81d   tangwang   fix指定sort项时候的bug
872
              max_score = es_response.get('hits', {}).get('max_score') or 0.0
be52af70   tangwang   first commit
873
  
af827ce9   tangwang   rerank
874
875
876
877
878
879
880
881
882
883
884
885
              # 从上下文中取出重排调试信息(若有)
              rerank_debug_raw = context.get_intermediate_result('rerank_scores', None)
              rerank_debug_by_doc: Dict[str, Dict[str, Any]] = {}
              if isinstance(rerank_debug_raw, list):
                  for item in rerank_debug_raw:
                      if not isinstance(item, dict):
                          continue
                      doc_id = item.get("doc_id")
                      if doc_id is None:
                          continue
                      rerank_debug_by_doc[str(doc_id)] = item
  
deccd68a   tangwang   Added the SKU pre...
886
887
              self._apply_sku_sorting_for_page_hits(es_hits, parsed_query, context=context)
  
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
888
              # Format results using ResultFormatter
577ec972   tangwang   返回给前端的字段、格式适配。主要包...
889
890
891
              formatted_results = ResultFormatter.format_search_results(
                  es_hits,
                  max_score,
ca91352a   tangwang   更新文档
892
893
                  language=language,
                  sku_filter_dimension=sku_filter_dimension
577ec972   tangwang   返回给前端的字段、格式适配。主要包...
894
              )
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
895
  
985752f5   tangwang   1. 前端调试功能
896
897
898
899
900
              # Build per-result debug info (per SPU) when debug mode is enabled
              per_result_debug = []
              if debug and es_hits and formatted_results:
                  for hit, spu in zip(es_hits, formatted_results):
                      source = hit.get("_source", {}) or {}
af827ce9   tangwang   rerank
901
902
903
904
905
                      doc_id = hit.get("_id")
                      rerank_debug = None
                      if doc_id is not None:
                          rerank_debug = rerank_debug_by_doc.get(str(doc_id))
  
985752f5   tangwang   1. 前端调试功能
906
907
908
909
910
911
912
913
914
915
916
917
918
919
                      raw_score = hit.get("_score")
                      try:
                          es_score = float(raw_score) if raw_score is not None else 0.0
                      except (TypeError, ValueError):
                          es_score = 0.0
                      try:
                          normalized = float(es_score) / float(max_score) if max_score else None
                      except (TypeError, ValueError, ZeroDivisionError):
                          normalized = None
  
                      title_multilingual = source.get("title") if isinstance(source.get("title"), dict) else None
                      brief_multilingual = source.get("brief") if isinstance(source.get("brief"), dict) else None
                      vendor_multilingual = source.get("vendor") if isinstance(source.get("vendor"), dict) else None
  
af827ce9   tangwang   rerank
920
921
922
923
924
925
926
927
928
929
930
931
932
                      debug_entry: Dict[str, Any] = {
                          "spu_id": spu.spu_id,
                          "es_score": es_score,
                          "es_score_normalized": normalized,
                          "title_multilingual": title_multilingual,
                          "brief_multilingual": brief_multilingual,
                          "vendor_multilingual": vendor_multilingual,
                      }
  
                      # 若存在重排调试信息,则补充 doc 级别的融合分数信息
                      if rerank_debug:
                          debug_entry["doc_id"] = rerank_debug.get("doc_id")
                          # 与 rerank_client 中字段保持一致,便于前端直接使用
af827ce9   tangwang   rerank
933
                          debug_entry["rerank_score"] = rerank_debug.get("rerank_score")
a8261ece   tangwang   检索效果优化
934
                          debug_entry["text_score"] = rerank_debug.get("text_score")
c90f80ed   tangwang   相关性优化
935
936
                          debug_entry["text_source_score"] = rerank_debug.get("text_source_score")
                          debug_entry["text_translation_score"] = rerank_debug.get("text_translation_score")
c90f80ed   tangwang   相关性优化
937
938
                          debug_entry["text_primary_score"] = rerank_debug.get("text_primary_score")
                          debug_entry["text_support_score"] = rerank_debug.get("text_support_score")
a8261ece   tangwang   检索效果优化
939
                          debug_entry["knn_score"] = rerank_debug.get("knn_score")
af827ce9   tangwang   rerank
940
                          debug_entry["fused_score"] = rerank_debug.get("fused_score")
a8261ece   tangwang   检索效果优化
941
                          debug_entry["matched_queries"] = rerank_debug.get("matched_queries")
af827ce9   tangwang   rerank
942
943
  
                      per_result_debug.append(debug_entry)
985752f5   tangwang   1. 前端调试功能
944
  
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
945
946
947
948
949
              # Format facets
              standardized_facets = None
              if facets:
                  standardized_facets = ResultFormatter.format_facets(
                      es_response.get('aggregations', {}),
c581becd   tangwang   feat: 实现 Multi-Se...
950
951
                      facets,
                      filters
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
952
953
954
955
956
957
                  )
  
              # Generate suggestions and related searches
              query_text = parsed_query.original_query if parsed_query else query
              suggestions = ResultFormatter.generate_suggestions(query_text, formatted_results)
              related_searches = ResultFormatter.generate_related_searches(query_text, formatted_results)
be52af70   tangwang   first commit
958
  
16c42787   tangwang   feat: implement r...
959
              context.logger.info(
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
960
                  f"结果处理完成 | 返回: {len(formatted_results)}条 | 总计: {total_value}条",
16c42787   tangwang   feat: implement r...
961
962
963
964
965
966
967
968
969
970
971
972
                  extra={'reqid': context.reqid, 'uid': context.uid}
              )
  
          except Exception as e:
              context.set_error(e)
              context.logger.error(
                  f"结果处理失败 | 错误: {str(e)}",
                  extra={'reqid': context.reqid, 'uid': context.uid}
              )
              raise
          finally:
              context.end_stage(RequestContextStage.RESULT_PROCESSING)
be52af70   tangwang   first commit
973
  
16c42787   tangwang   feat: implement r...
974
975
976
          # End total timing and build result
          total_duration = context.end_stage(RequestContextStage.TOTAL)
          context.performance_metrics.total_duration = total_duration
be52af70   tangwang   first commit
977
  
1f071951   tangwang   补充调试信息,记录包括各个阶段的 ...
978
979
980
981
982
983
          # Collect debug information if requested
          debug_info = None
          if debug:
              debug_info = {
                  "query_analysis": {
                      "original_query": context.query_analysis.original_query,
3a5fda00   tangwang   1. ES字段 skus的 ima...
984
                      "query_normalized": context.query_analysis.query_normalized,
1f071951   tangwang   补充调试信息,记录包括各个阶段的 ...
985
986
987
                      "rewritten_query": context.query_analysis.rewritten_query,
                      "detected_language": context.query_analysis.detected_language,
                      "translations": context.query_analysis.translations,
1f071951   tangwang   补充调试信息,记录包括各个阶段的 ...
988
989
                      "has_vector": context.query_analysis.query_vector is not None,
                      "is_simple_query": context.query_analysis.is_simple_query,
1f071951   tangwang   补充调试信息,记录包括各个阶段的 ...
990
991
992
993
994
995
996
997
998
999
1000
1001
1002
1003
1004
                      "domain": context.query_analysis.domain
                  },
                  "es_query": context.get_intermediate_result('es_query', {}),
                  "es_response": {
                      "took_ms": es_response.get('took', 0),
                      "total_hits": total_value,
                      "max_score": max_score,
                      "shards": es_response.get('_shards', {})
                  },
                  "feature_flags": context.metadata.get('feature_flags', {}),
                  "stage_timings": {
                      k: round(v, 2) for k, v in context.performance_metrics.stage_timings.items()
                  },
                  "search_params": context.metadata.get('search_params', {})
              }
985752f5   tangwang   1. 前端调试功能
1005
1006
              if per_result_debug:
                  debug_info["per_result"] = per_result_debug
1f071951   tangwang   补充调试信息,记录包括各个阶段的 ...
1007
  
be52af70   tangwang   first commit
1008
1009
          # Build result
          result = SearchResult(
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
1010
              results=formatted_results,
be52af70   tangwang   first commit
1011
1012
              total=total_value,
              max_score=max_score,
16c42787   tangwang   feat: implement r...
1013
              took_ms=int(total_duration),
6aa246be   tangwang   问题:Pydantic 应该能自动...
1014
              facets=standardized_facets,
1f071951   tangwang   补充调试信息,记录包括各个阶段的 ...
1015
              query_info=parsed_query.to_dict(),
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
1016
1017
              suggestions=suggestions,
              related_searches=related_searches,
1f071951   tangwang   补充调试信息,记录包括各个阶段的 ...
1018
              debug_info=debug_info
be52af70   tangwang   first commit
1019
1020
          )
  
16c42787   tangwang   feat: implement r...
1021
1022
          # Log complete performance summary
          context.log_performance_summary()
be52af70   tangwang   first commit
1023
1024
1025
1026
1027
1028
  
          return result
  
      def search_by_image(
          self,
          image_url: str,
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
1029
          tenant_id: str,
be52af70   tangwang   first commit
1030
          size: int = 10,
6aa246be   tangwang   问题:Pydantic 应该能自动...
1031
1032
          filters: Optional[Dict[str, Any]] = None,
          range_filters: Optional[Dict[str, Any]] = None
be52af70   tangwang   first commit
1033
1034
      ) -> SearchResult:
          """
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
1035
          Search by image similarity (外部友好格式).
be52af70   tangwang   first commit
1036
1037
1038
  
          Args:
              image_url: URL of query image
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
1039
              tenant_id: Tenant ID (required for filtering)
be52af70   tangwang   first commit
1040
              size: Number of results
6aa246be   tangwang   问题:Pydantic 应该能自动...
1041
1042
              filters: Exact match filters
              range_filters: Range filters for numeric fields
be52af70   tangwang   first commit
1043
1044
  
          Returns:
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
1045
              SearchResult object with formatted results
be52af70   tangwang   first commit
1046
1047
1048
1049
1050
          """
          if not self.image_embedding_field:
              raise ValueError("Image embedding field not configured")
  
          # Generate image embedding
26b910bd   tangwang   refactor service ...
1051
1052
          if self.image_encoder is None:
              raise RuntimeError("Image encoder is not initialized at startup")
b754fd41   tangwang   图片向量化支持优先级参数
1053
          image_vector = self.image_encoder.encode_image_from_url(image_url, priority=1)
be52af70   tangwang   first commit
1054
1055
1056
1057
  
          if image_vector is None:
              raise ValueError(f"Failed to encode image: {image_url}")
  
e4a39cc8   tangwang   索引隔离。 不同的tenant_i...
1058
1059
1060
1061
          # Generate tenant-specific index name
          index_name = get_tenant_index_name(tenant_id)
          
          # No longer need to add tenant_id to filters since each tenant has its own index
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
1062
  
be52af70   tangwang   first commit
1063
1064
1065
1066
1067
1068
1069
1070
1071
1072
1073
          # Build KNN query
          es_query = {
              "size": size,
              "knn": {
                  "field": self.image_embedding_field,
                  "query_vector": image_vector.tolist(),
                  "k": size,
                  "num_candidates": size * 10
              }
          }
  
26b910bd   tangwang   refactor service ...
1074
1075
          # Apply source filtering semantics (None / [] / list)
          self._apply_source_filter(es_query)
13377199   tangwang   接口优化
1076
  
6aa246be   tangwang   问题:Pydantic 应该能自动...
1077
1078
1079
          if filters or range_filters:
              filter_clauses = self.query_builder._build_filters(filters, range_filters)
              if filter_clauses:
7fbca0d7   tangwang   启动脚本优化
1080
1081
1082
1083
1084
1085
1086
                  if len(filter_clauses) == 1:
                      es_query["knn"]["filter"] = filter_clauses[0]
                  else:
                      es_query["knn"]["filter"] = {
                          "bool": {
                              "filter": filter_clauses
                          }
6aa246be   tangwang   问题:Pydantic 应该能自动...
1087
                      }
be52af70   tangwang   first commit
1088
1089
1090
  
          # Execute search
          es_response = self.es_client.search(
e4a39cc8   tangwang   索引隔离。 不同的tenant_i...
1091
              index_name=index_name,
be52af70   tangwang   first commit
1092
1093
1094
1095
              body=es_query,
              size=size
          )
  
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
1096
1097
          # Extract ES hits
          es_hits = []
be52af70   tangwang   first commit
1098
          if 'hits' in es_response and 'hits' in es_response['hits']:
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
1099
              es_hits = es_response['hits']['hits']
be52af70   tangwang   first commit
1100
  
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
1101
          # Extract total and max_score
be52af70   tangwang   first commit
1102
1103
1104
1105
1106
1107
          total = es_response.get('hits', {}).get('total', {})
          if isinstance(total, dict):
              total_value = total.get('value', 0)
          else:
              total_value = total
  
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
1108
1109
1110
          max_score = es_response.get('hits', {}).get('max_score') or 0.0
  
          # Format results using ResultFormatter
ca91352a   tangwang   更新文档
1111
1112
1113
          formatted_results = ResultFormatter.format_search_results(
              es_hits, 
              max_score,
2739b281   tangwang   多语言索引调整
1114
              language="en",  # Default language for image search
ca91352a   tangwang   更新文档
1115
1116
              sku_filter_dimension=None  # Image search doesn't support SKU filtering
          )
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
1117
  
be52af70   tangwang   first commit
1118
          return SearchResult(
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
1119
              results=formatted_results,
be52af70   tangwang   first commit
1120
              total=total_value,
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
1121
              max_score=max_score,
be52af70   tangwang   first commit
1122
              took_ms=es_response.get('took', 0),
1f6d15fa   tangwang   重构:SPU级别索引、统一索引架构...
1123
1124
1125
1126
              facets=None,
              query_info={'image_url': image_url, 'search_type': 'image_similarity'},
              suggestions=[],
              related_searches=[]
be52af70   tangwang   first commit
1127
1128
          )
  
b926f678   tangwang   多语言查询
1129
1130
      def get_domain_summary(self) -> Dict[str, Any]:
          """
bd96cead   tangwang   1. 动态多语言字段与统一策略配置
1131
          Get summary of dynamic text retrieval configuration.
b926f678   tangwang   多语言查询
1132
1133
  
          Returns:
bd96cead   tangwang   1. 动态多语言字段与统一策略配置
1134
              Dictionary with language-aware field information
b926f678   tangwang   多语言查询
1135
          """
bd96cead   tangwang   1. 动态多语言字段与统一策略配置
1136
1137
1138
1139
1140
1141
1142
          return {
              "mode": "dynamic_language_fields",
              "multilingual_fields": self.config.query_config.multilingual_fields,
              "shared_fields": self.config.query_config.shared_fields,
              "core_multilingual_fields": self.config.query_config.core_multilingual_fields,
              "field_boosts": self.config.field_boosts,
          }
b926f678   tangwang   多语言查询
1143
  
e4a39cc8   tangwang   索引隔离。 不同的tenant_i...
1144
      def get_document(self, tenant_id: str, doc_id: str) -> Optional[Dict[str, Any]]:
be52af70   tangwang   first commit
1145
1146
1147
1148
          """
          Get single document by ID.
  
          Args:
e4a39cc8   tangwang   索引隔离。 不同的tenant_i...
1149
              tenant_id: Tenant ID (required to determine which index to query)
be52af70   tangwang   first commit
1150
1151
1152
1153
1154
1155
              doc_id: Document ID
  
          Returns:
              Document or None if not found
          """
          try:
e4a39cc8   tangwang   索引隔离。 不同的tenant_i...
1156
              index_name = get_tenant_index_name(tenant_id)
be52af70   tangwang   first commit
1157
              response = self.es_client.client.get(
e4a39cc8   tangwang   索引隔离。 不同的tenant_i...
1158
                  index=index_name,
be52af70   tangwang   first commit
1159
1160
1161
1162
                  id=doc_id
              )
              return response.get('_source')
          except Exception as e:
e4a39cc8   tangwang   索引隔离。 不同的tenant_i...
1163
              logger.error(f"Failed to get document {doc_id} from tenant {tenant_id}: {e}", exc_info=True)
be52af70   tangwang   first commit
1164
              return None
6aa246be   tangwang   问题:Pydantic 应该能自动...
1165
1166
1167
1168
  
      def _standardize_facets(
          self,
          es_aggregations: Dict[str, Any],
ff5325fa   tangwang   修复:直接在 Searcher 层...
1169
          facet_configs: Optional[List[Union[str, Any]]],
6aa246be   tangwang   问题:Pydantic 应该能自动...
1170
1171
1172
1173
1174
1175
1176
          current_filters: Optional[Dict[str, Any]]
      ) -> Optional[List[FacetResult]]:
          """
           ES 聚合结果转换为标准化的分面格式(返回 Pydantic 模型)。
          
          Args:
              es_aggregations: ES 原始聚合结果
ff5325fa   tangwang   修复:直接在 Searcher 层...
1177
              facet_configs: 分面配置列表(str  FacetConfig
6aa246be   tangwang   问题:Pydantic 应该能自动...
1178
1179
1180
1181
1182
1183
1184
1185
1186
1187
1188
1189
1190
1191
1192
1193
              current_filters: 当前应用的过滤器
          
          Returns:
              标准化的分面结果列表(FacetResult 对象)
          """
          if not es_aggregations or not facet_configs:
              return None
          
          standardized_facets: List[FacetResult] = []
          
          for config in facet_configs:
              # 解析配置
              if isinstance(config, str):
                  field = config
                  facet_type = "terms"
              else:
ff5325fa   tangwang   修复:直接在 Searcher 层...
1194
1195
1196
                  # FacetConfig 对象
                  field = config.field
                  facet_type = config.type
6aa246be   tangwang   问题:Pydantic 应该能自动...
1197
1198
1199
1200
1201
1202
1203
1204
1205
1206
1207
1208
1209
1210
1211
1212
1213
1214
1215
1216
1217
1218
1219
1220
1221
1222
1223
1224
1225
1226
1227
1228
1229
1230
              
              agg_name = f"{field}_facet"
              
              if agg_name not in es_aggregations:
                  continue
              
              agg_result = es_aggregations[agg_name]
              
              # 获取当前字段的选中值
              selected_values = set()
              if current_filters and field in current_filters:
                  filter_value = current_filters[field]
                  if isinstance(filter_value, list):
                      selected_values = set(filter_value)
                  else:
                      selected_values = {filter_value}
              
              # 转换 buckets 为 FacetValue 对象
              facet_values: List[FacetValue] = []
              if 'buckets' in agg_result:
                  for bucket in agg_result['buckets']:
                      value = bucket.get('key')
                      count = bucket.get('doc_count', 0)
                      
                      facet_values.append(FacetValue(
                          value=value,
                          label=str(value),
                          count=count,
                          selected=value in selected_values
                      ))
              
              # 构建 FacetResult 对象
              facet_result = FacetResult(
                  field=field,
e7ad2b4a   tangwang   测试页面分页配置
1231
                  label=field,
6aa246be   tangwang   问题:Pydantic 应该能自动...
1232
1233
1234
1235
1236
1237
1238
                  type=facet_type,
                  values=facet_values
              )
              
              standardized_facets.append(facet_result)
          
          return standardized_facets if standardized_facets else None