be52af70
tangwang
first commit
|
1
2
3
4
|
"""
Elasticsearch query builder.
Converts parsed queries and search parameters into ES DSL queries.
|
f0d020c3
tangwang
多语言查询改为只支持中英文两种,f...
|
5
6
7
8
|
Simplified architecture:
- filters and (text_recall or embedding_recall)
- function_score wrapper for boosting fields
|
be52af70
tangwang
first commit
|
9
10
|
"""
|
7bc756c5
tangwang
优化 ES 查询构建
|
11
|
from typing import Dict, Any, List, Optional, Union, Tuple
|
6823fe3e
tangwang
feat(search): 混合语...
|
12
|
|
be52af70
tangwang
first commit
|
13
|
import numpy as np
|
9f96d6f3
tangwang
短query不用语义搜索
|
14
|
from config import FunctionScoreConfig
|
be52af70
tangwang
first commit
|
15
|
|
6823fe3e
tangwang
feat(search): 混合语...
|
16
17
18
|
# (Elasticsearch field path, boost before formatting as "path^boost")
MatchFieldSpec = Tuple[str, float]
|
be52af70
tangwang
first commit
|
19
20
21
22
23
24
|
class ESQueryBuilder:
"""Builds Elasticsearch DSL queries."""
def __init__(
self,
|
be52af70
tangwang
first commit
|
25
|
match_fields: List[str],
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
26
27
28
29
|
field_boosts: Optional[Dict[str, float]] = None,
multilingual_fields: Optional[List[str]] = None,
shared_fields: Optional[List[str]] = None,
core_multilingual_fields: Optional[List[str]] = None,
|
be52af70
tangwang
first commit
|
30
|
text_embedding_field: Optional[str] = None,
|
13377199
tangwang
接口优化
|
31
|
image_embedding_field: Optional[str] = None,
|
9f96d6f3
tangwang
短query不用语义搜索
|
32
|
source_fields: Optional[List[str]] = None,
|
7bc756c5
tangwang
优化 ES 查询构建
|
33
|
function_score_config: Optional[FunctionScoreConfig] = None,
|
2739b281
tangwang
多语言索引调整
|
34
|
default_language: str = "en",
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
35
|
knn_boost: float = 0.25,
|
272aeabe
tangwang
调参
|
36
37
|
base_minimum_should_match: str = "70%",
translation_minimum_should_match: str = "70%",
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
38
|
translation_boost: float = 0.4,
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
39
|
tie_breaker_base_query: float = 0.9,
|
6823fe3e
tangwang
feat(search): 混合语...
|
40
|
mixed_script_merged_field_boost_scale: float = 0.6,
|
69881ecb
tangwang
相关性调参、enrich内容解析优化
|
41
42
43
44
|
phrase_match_base_fields: Optional[Tuple[str, ...]] = None,
phrase_match_slop: int = 2,
phrase_match_tie_breaker: float = 0.4,
phrase_match_boost: float = 3.0,
|
be52af70
tangwang
first commit
|
45
46
47
48
|
):
"""
Initialize query builder.
|
24e92141
tangwang
delete enable_mul...
|
49
|
Multi-language search (translation-based cross-language recall) is always enabled:
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
50
|
queries are matched against detected-language and translated target-language clauses.
|
24e92141
tangwang
delete enable_mul...
|
51
|
|
be52af70
tangwang
first commit
|
52
|
Args:
|
be52af70
tangwang
first commit
|
53
54
55
|
match_fields: Fields to search for text matching
text_embedding_field: Field name for text embeddings
image_embedding_field: Field name for image embeddings
|
13377199
tangwang
接口优化
|
56
|
source_fields: Fields to return in search results (_source includes)
|
9f96d6f3
tangwang
短query不用语义搜索
|
57
|
function_score_config: Function score configuration
|
a5a6bab8
tangwang
多语言查询优化
|
58
|
default_language: Default language to use when detection fails or returns "unknown"
|
70dab99f
tangwang
add logs
|
59
|
knn_boost: Boost value for KNN (embedding recall)
|
6823fe3e
tangwang
feat(search): 混合语...
|
60
|
mixed_script_merged_field_boost_scale: Multiply per-field ^boost for cross-script merged fields
|
be52af70
tangwang
first commit
|
61
|
"""
|
be52af70
tangwang
first commit
|
62
|
self.match_fields = match_fields
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
63
64
|
self.field_boosts = field_boosts or {}
self.multilingual_fields = multilingual_fields or [
|
a8261ece
tangwang
检索效果优化
|
65
|
"title", "brief", "description", "qanchors", "vendor", "category_path", "category_name_text"
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
66
67
68
|
]
self.shared_fields = shared_fields or ["tags", "option1_values", "option2_values", "option3_values"]
self.core_multilingual_fields = core_multilingual_fields or ["title", "brief", "vendor", "category_name_text"]
|
be52af70
tangwang
first commit
|
69
70
|
self.text_embedding_field = text_embedding_field
self.image_embedding_field = image_embedding_field
|
13377199
tangwang
接口优化
|
71
|
self.source_fields = source_fields
|
9f96d6f3
tangwang
短query不用语义搜索
|
72
|
self.function_score_config = function_score_config
|
a5a6bab8
tangwang
多语言查询优化
|
73
|
self.default_language = default_language
|
70dab99f
tangwang
add logs
|
74
|
self.knn_boost = knn_boost
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
75
76
77
|
self.base_minimum_should_match = base_minimum_should_match
self.translation_minimum_should_match = translation_minimum_should_match
self.translation_boost = float(translation_boost)
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
78
|
self.tie_breaker_base_query = float(tie_breaker_base_query)
|
6823fe3e
tangwang
feat(search): 混合语...
|
79
|
self.mixed_script_merged_field_boost_scale = float(mixed_script_merged_field_boost_scale)
|
69881ecb
tangwang
相关性调参、enrich内容解析优化
|
80
81
82
83
|
self.phrase_match_base_fields = tuple(phrase_match_base_fields or ("title", "qanchors"))
self.phrase_match_slop = int(phrase_match_slop)
self.phrase_match_tie_breaker = float(phrase_match_tie_breaker)
self.phrase_match_boost = float(phrase_match_boost)
|
be52af70
tangwang
first commit
|
84
|
|
26b910bd
tangwang
refactor service ...
|
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
|
def _apply_source_filter(self, es_query: Dict[str, Any]) -> None:
"""
Apply tri-state _source semantics:
- None: do not set _source (return all source fields)
- []: _source=false
- [..]: _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}
|
c581becd
tangwang
feat: 实现 Multi-Se...
|
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
|
def _split_filters_for_faceting(
self,
filters: Optional[Dict[str, Any]],
facet_configs: Optional[List[Any]]
) -> tuple:
"""
Split filters into conjunctive (query) and disjunctive (post_filter) based on facet configs.
Disjunctive filters (multi-select facets):
- Applied via post_filter (affects results but not aggregations)
- Allows showing other options in the same facet even when filtered
Conjunctive filters (standard facets):
- Applied in query.bool.filter (affects both results and aggregations)
- Standard drill-down behavior
Args:
filters: All filters from request
|
9a9b9ec5
tangwang
1. facet disjunctive
|
119
|
facet_configs: Facet configurations with disjunctive flags
|
c581becd
tangwang
feat: 实现 Multi-Se...
|
120
121
122
123
124
125
126
127
128
129
|
Returns:
(conjunctive_filters, disjunctive_filters)
"""
if not filters or not facet_configs:
return filters or {}, {}
# Get fields that support multi-select
multi_select_fields = set()
for fc in facet_configs:
|
9a9b9ec5
tangwang
1. facet disjunctive
|
130
|
if getattr(fc, 'disjunctive', False):
|
c581becd
tangwang
feat: 实现 Multi-Se...
|
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
|
# Handle specifications.xxx format
if fc.field.startswith('specifications.'):
multi_select_fields.add('specifications')
else:
multi_select_fields.add(fc.field)
# Split filters
conjunctive = {}
disjunctive = {}
for field, value in filters.items():
if field in multi_select_fields:
disjunctive[field] = value
else:
conjunctive[field] = value
return conjunctive, disjunctive
|
be52af70
tangwang
first commit
|
149
150
151
152
|
def build_query(
self,
query_text: str,
query_vector: Optional[np.ndarray] = None,
|
be52af70
tangwang
first commit
|
153
|
filters: Optional[Dict[str, Any]] = None,
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
154
|
range_filters: Optional[Dict[str, Any]] = None,
|
c581becd
tangwang
feat: 实现 Multi-Se...
|
155
|
facet_configs: Optional[List[Any]] = None,
|
be52af70
tangwang
first commit
|
156
157
158
159
160
|
size: int = 10,
from_: int = 0,
enable_knn: bool = True,
knn_k: int = 50,
knn_num_candidates: int = 200,
|
7bc756c5
tangwang
优化 ES 查询构建
|
161
|
min_score: Optional[float] = None,
|
ef5baa86
tangwang
混杂语言处理
|
162
163
|
parsed_query: Optional[Any] = None,
index_languages: Optional[List[str]] = None,
|
be52af70
tangwang
first commit
|
164
165
|
) -> Dict[str, Any]:
"""
|
c581becd
tangwang
feat: 实现 Multi-Se...
|
166
|
Build complete ES query with post_filter support for multi-select faceting.
|
f0d020c3
tangwang
多语言查询改为只支持中英文两种,f...
|
167
|
|
c581becd
tangwang
feat: 实现 Multi-Se...
|
168
169
170
|
结构:filters and (text_recall or embedding_recall) + post_filter
- conjunctive_filters: 应用在 query.bool.filter(影响结果和聚合)
- disjunctive_filters: 应用在 post_filter(只影响结果,不影响聚合)
|
0536222c
tangwang
query parser优化
|
171
|
- text_recall: 文本相关性召回(按实际 clause 语言动态字段)
|
f0d020c3
tangwang
多语言查询改为只支持中英文两种,f...
|
172
173
|
- embedding_recall: 向量召回(KNN)
- function_score: 包装召回部分,支持提权字段
|
be52af70
tangwang
first commit
|
174
175
176
177
|
Args:
query_text: Query text for BM25 matching
query_vector: Query embedding for KNN search
|
c581becd
tangwang
feat: 实现 Multi-Se...
|
178
179
180
|
filters: Exact match filters
range_filters: Range filters for numeric fields (always applied in query)
facet_configs: Facet configurations (used to identify multi-select facets)
|
be52af70
tangwang
first commit
|
181
182
183
184
185
186
187
188
189
190
|
size: Number of results
from_: Offset for pagination
enable_knn: Whether to use KNN search
knn_k: K value for KNN
knn_num_candidates: Number of candidates for KNN
min_score: Minimum score threshold
Returns:
ES query DSL dictionary
"""
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
191
|
# Boolean AST path has been removed; keep a single text strategy.
|
be52af70
tangwang
first commit
|
192
193
194
195
196
|
es_query = {
"size": size,
"from": from_
}
|
26b910bd
tangwang
refactor service ...
|
197
198
|
# Add _source filtering with explicit tri-state semantics.
self._apply_source_filter(es_query)
|
13377199
tangwang
接口优化
|
199
|
|
f0d020c3
tangwang
多语言查询改为只支持中英文两种,f...
|
200
201
202
203
204
|
# 1. Build recall queries (text or embedding)
recall_clauses = []
# Text recall (always include if query_text exists)
if query_text:
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
205
|
# Unified text query strategy
|
ef5baa86
tangwang
混杂语言处理
|
206
207
208
209
210
|
text_query = self._build_advanced_text_query(
query_text,
parsed_query,
index_languages=index_languages,
)
|
f0d020c3
tangwang
多语言查询改为只支持中英文两种,f...
|
211
212
213
214
215
|
recall_clauses.append(text_query)
# Embedding recall (KNN - separate from query, handled below)
has_embedding = enable_knn and query_vector is not None and self.text_embedding_field
|
c581becd
tangwang
feat: 实现 Multi-Se...
|
216
217
218
219
220
221
222
|
# 2. Split filters for multi-select faceting
conjunctive_filters, disjunctive_filters = self._split_filters_for_faceting(
filters, facet_configs
)
# Build filter clauses for query (conjunctive filters + range filters)
filter_clauses = self._build_filters(conjunctive_filters, range_filters)
|
f0d020c3
tangwang
多语言查询改为只支持中英文两种,f...
|
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
|
# 3. Build main query structure: filters and recall
if recall_clauses:
# Combine text recalls with OR logic (if multiple)
if len(recall_clauses) == 1:
recall_query = recall_clauses[0]
else:
recall_query = {
"bool": {
"should": recall_clauses,
"minimum_should_match": 1
}
}
# Wrap recall with function_score for boosting
recall_query = self._wrap_with_function_score(recall_query)
# Combine filters and recall
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
241
242
243
|
if filter_clauses:
es_query["query"] = {
"bool": {
|
f0d020c3
tangwang
多语言查询改为只支持中英文两种,f...
|
244
|
"must": [recall_query],
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
245
246
|
"filter": filter_clauses
}
|
be52af70
tangwang
first commit
|
247
|
}
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
248
|
else:
|
f0d020c3
tangwang
多语言查询改为只支持中英文两种,f...
|
249
|
es_query["query"] = recall_query
|
be52af70
tangwang
first commit
|
250
|
else:
|
f0d020c3
tangwang
多语言查询改为只支持中英文两种,f...
|
251
252
253
254
255
256
257
258
259
260
|
# No recall queries, only filters (match_all filtered)
if filter_clauses:
es_query["query"] = {
"bool": {
"must": [{"match_all": {}}],
"filter": filter_clauses
}
}
else:
es_query["query"] = {"match_all": {}}
|
be52af70
tangwang
first commit
|
261
|
|
f0d020c3
tangwang
多语言查询改为只支持中英文两种,f...
|
262
|
# 4. Add KNN search if enabled (separate from query, ES will combine)
|
ea118f2b
tangwang
build_query:根据 qu...
|
263
|
# Adjust KNN k, num_candidates, boost by query_tokens (short query: less KNN; long: more)
|
f0d020c3
tangwang
多语言查询改为只支持中英文两种,f...
|
264
|
if has_embedding:
|
ea118f2b
tangwang
build_query:根据 qu...
|
265
266
267
268
|
knn_boost = self.knn_boost
if parsed_query:
query_tokens = getattr(parsed_query, 'query_tokens', None) or []
token_count = len(query_tokens)
|
272aeabe
tangwang
调参
|
269
270
|
if token_count >= 5:
knn_k, knn_num_candidates = 160, 500
|
ea118f2b
tangwang
build_query:根据 qu...
|
271
272
|
knn_boost = self.knn_boost * 1.4 # Higher weight for long queries
else:
|
272aeabe
tangwang
调参
|
273
|
knn_k, knn_num_candidates = 120, 400
|
ea118f2b
tangwang
build_query:根据 qu...
|
274
|
else:
|
272aeabe
tangwang
调参
|
275
|
knn_k, knn_num_candidates = 120, 400
|
be52af70
tangwang
first commit
|
276
277
278
279
|
knn_clause = {
"field": self.text_embedding_field,
"query_vector": query_vector.tolist(),
"k": knn_k,
|
f0d020c3
tangwang
多语言查询改为只支持中英文两种,f...
|
280
|
"num_candidates": knn_num_candidates,
|
a47416ec
tangwang
把融合逻辑改成乘法公式,并把 ES...
|
281
|
"boost": knn_boost,
|
a8261ece
tangwang
检索效果优化
|
282
|
"_name": "knn_query",
|
be52af70
tangwang
first commit
|
283
|
}
|
7fbca0d7
tangwang
启动脚本优化
|
284
285
286
287
288
289
290
291
292
293
294
|
# Top-level knn does not inherit query.bool.filter automatically.
# Apply conjunctive + range filters here so vector recall respects hard filters.
if filter_clauses:
if len(filter_clauses) == 1:
knn_clause["filter"] = filter_clauses[0]
else:
knn_clause["filter"] = {
"bool": {
"filter": filter_clauses
}
}
|
be52af70
tangwang
first commit
|
295
296
|
es_query["knn"] = knn_clause
|
c581becd
tangwang
feat: 实现 Multi-Se...
|
297
298
299
300
301
302
303
304
305
306
307
308
|
# 5. Add post_filter for disjunctive (multi-select) filters
if disjunctive_filters:
post_filter_clauses = self._build_filters(disjunctive_filters, None)
if post_filter_clauses:
if len(post_filter_clauses) == 1:
es_query["post_filter"] = post_filter_clauses[0]
else:
es_query["post_filter"] = {
"bool": {"filter": post_filter_clauses}
}
# 6. Add minimum score filter
|
be52af70
tangwang
first commit
|
309
310
311
312
|
if min_score is not None:
es_query["min_score"] = min_score
return es_query
|
f0d020c3
tangwang
多语言查询改为只支持中英文两种,f...
|
313
314
315
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
|
def _wrap_with_function_score(self, query: Dict[str, Any]) -> Dict[str, Any]:
"""
Wrap query with function_score for boosting fields.
Args:
query: Base query to wrap
Returns:
Function score query or original query if no functions configured
"""
functions = self._build_score_functions()
# If no functions configured, return original query
if not functions:
return query
# Build function_score query
|
9f96d6f3
tangwang
短query不用语义搜索
|
331
332
333
|
score_mode = self.function_score_config.score_mode if self.function_score_config else "sum"
boost_mode = self.function_score_config.boost_mode if self.function_score_config else "multiply"
|
f0d020c3
tangwang
多语言查询改为只支持中英文两种,f...
|
334
335
336
337
|
function_score_query = {
"function_score": {
"query": query,
"functions": functions,
|
9f96d6f3
tangwang
短query不用语义搜索
|
338
339
|
"score_mode": score_mode,
"boost_mode": boost_mode
|
f0d020c3
tangwang
多语言查询改为只支持中英文两种,f...
|
340
341
342
343
344
345
346
347
348
349
350
351
352
|
}
}
return function_score_query
def _build_score_functions(self) -> List[Dict[str, Any]]:
"""
Build function_score functions from config.
Returns:
List of function score functions
"""
functions = []
|
9f96d6f3
tangwang
短query不用语义搜索
|
353
354
355
356
|
if not self.function_score_config:
return functions
config_functions = self.function_score_config.functions or []
|
f0d020c3
tangwang
多语言查询改为只支持中英文两种,f...
|
357
358
359
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
|
for func_config in config_functions:
func_type = func_config.get("type")
if func_type == "filter_weight":
# Filter + Weight
functions.append({
"filter": func_config["filter"],
"weight": func_config.get("weight", 1.0)
})
elif func_type == "field_value_factor":
# Field Value Factor
functions.append({
"field_value_factor": {
"field": func_config["field"],
"factor": func_config.get("factor", 1.0),
"modifier": func_config.get("modifier", "none"),
"missing": func_config.get("missing", 1.0)
}
})
elif func_type == "decay":
# Decay Function (gauss/exp/linear)
decay_func = func_config.get("function", "gauss")
field = func_config["field"]
decay_params = {
"origin": func_config.get("origin", "now"),
"scale": func_config["scale"]
}
if "offset" in func_config:
decay_params["offset"] = func_config["offset"]
if "decay" in func_config:
decay_params["decay"] = func_config["decay"]
functions.append({
decay_func: {
field: decay_params
}
})
return functions
|
be52af70
tangwang
first commit
|
401
402
403
404
|
def _build_text_query(self, query_text: str) -> Dict[str, Any]:
"""
Build simple text matching query (BM25).
|
be52af70
tangwang
first commit
|
405
406
407
408
409
410
411
412
413
414
415
416
417
418
419
420
421
|
Args:
query_text: Query text
Returns:
ES query clause
"""
return {
"multi_match": {
"query": query_text,
"fields": self.match_fields,
"minimum_should_match": "67%",
"tie_breaker": 0.9,
"boost": 1.0,
"_name": "base_query"
}
}
|
7bc756c5
tangwang
优化 ES 查询构建
|
422
|
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
423
424
425
|
def _format_field_with_boost(self, field_name: str, boost: float) -> str:
if abs(float(boost) - 1.0) < 1e-9:
return field_name
|
6823fe3e
tangwang
feat(search): 混合语...
|
426
|
return f"{field_name}^{round(boost, 2)}"
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
427
428
429
430
431
432
433
434
435
436
437
|
def _get_field_boost(self, base_field: str, language: Optional[str] = None) -> float:
# Language-specific override first (e.g. title.de), then base field (e.g. title)
if language:
lang_key = f"{base_field}.{language}"
if lang_key in self.field_boosts:
return float(self.field_boosts[lang_key])
if base_field in self.field_boosts:
return float(self.field_boosts[base_field])
return 1.0
|
6823fe3e
tangwang
feat(search): 混合语...
|
438
|
def _build_match_field_specs(self, language: str) -> Tuple[List[MatchFieldSpec], List[MatchFieldSpec]]:
|
7bc756c5
tangwang
优化 ES 查询构建
|
439
|
"""
|
6823fe3e
tangwang
feat(search): 混合语...
|
440
441
|
Per-language match targets as (field_path, boost). Single source of truth before string formatting.
Returns (all_fields, core_fields); core_fields are for phrase/keyword strategies elsewhere.
|
7bc756c5
tangwang
优化 ES 查询构建
|
442
|
"""
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
443
|
lang = (language or "").strip().lower()
|
6823fe3e
tangwang
feat(search): 混合语...
|
444
445
|
all_specs: List[MatchFieldSpec] = []
core_specs: List[MatchFieldSpec] = []
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
446
447
448
|
for base in self.multilingual_fields:
field = f"{base}.{lang}"
|
6823fe3e
tangwang
feat(search): 混合语...
|
449
|
all_specs.append((field, self._get_field_boost(base, lang)))
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
450
451
|
for shared in self.shared_fields:
|
6823fe3e
tangwang
feat(search): 混合语...
|
452
|
all_specs.append((shared, self._get_field_boost(shared, None)))
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
453
454
455
|
for base in self.core_multilingual_fields:
field = f"{base}.{lang}"
|
6823fe3e
tangwang
feat(search): 混合语...
|
456
457
458
459
460
461
462
463
|
core_specs.append((field, self._get_field_boost(base, lang)))
return all_specs, core_specs
def _format_match_field_specs(self, specs: List[MatchFieldSpec]) -> List[str]:
"""Format (field_path, boost) pairs for Elasticsearch multi_match ``fields``."""
return [self._format_field_with_boost(path, boost) for path, boost in specs]
|
69881ecb
tangwang
相关性调参、enrich内容解析优化
|
464
465
466
467
468
469
470
471
472
473
474
475
476
477
478
479
480
481
482
483
484
485
486
487
488
489
490
491
492
493
494
495
496
497
498
499
500
501
502
503
504
505
506
|
def _build_phrase_match_fields(self, language: str) -> List[str]:
"""Fields for phrase multi_match: base names × ``.{lang}`` with ``field_boosts``."""
lang = (language or "").strip().lower()
if not lang:
return []
out: List[str] = []
for base in self.phrase_match_base_fields:
path = f"{base}.{lang}"
boost = self._get_field_boost(base, lang)
out.append(self._format_field_with_boost(path, boost))
return out
def _append_phrase_should_clause(
self,
should_clauses: List[Dict[str, Any]],
lang: str,
lang_query: str,
clause_name: str,
is_source: bool,
) -> None:
text = (lang_query or "").strip()
if not text:
return
phrase_fields = self._build_phrase_match_fields(lang)
if not phrase_fields:
return
boost = (
self.phrase_match_boost
if is_source
else self.phrase_match_boost * float(self.translation_boost)
)
should_clauses.append({
"multi_match": {
"_name": f"{clause_name}_phrase",
"query": lang_query,
"type": "phrase",
"fields": phrase_fields,
"slop": self.phrase_match_slop,
"tie_breaker": self.phrase_match_tie_breaker,
"boost": boost,
}
})
|
6823fe3e
tangwang
feat(search): 混合语...
|
507
508
509
510
511
512
513
514
515
516
517
518
519
520
521
522
523
524
525
526
527
528
529
|
def _merge_supplemental_lang_field_specs(
self,
specs: List[MatchFieldSpec],
supplemental_lang: str,
) -> List[MatchFieldSpec]:
"""Append supplemental-language columns; boosts multiplied by mixed_script scale."""
scale = float(self.mixed_script_merged_field_boost_scale)
extra_all, _ = self._build_match_field_specs(supplemental_lang)
seen = {path for path, _ in specs}
out = list(specs)
for path, boost in extra_all:
if path not in seen:
out.append((path, boost * scale))
seen.add(path)
return out
def _expand_match_field_specs_for_mixed_script(
self,
lang: str,
specs: List[MatchFieldSpec],
contains_chinese: bool,
contains_english: bool,
index_languages: List[str],
|
0536222c
tangwang
query parser优化
|
530
|
is_source: bool = False
|
6823fe3e
tangwang
feat(search): 混合语...
|
531
532
533
534
535
536
537
538
539
540
541
542
543
|
) -> List[MatchFieldSpec]:
"""
When the query mixes scripts, widen each clause to indexed fields for the other script
(e.g. zh clause also searches title.en when the query contains an English word token).
"""
norm = {str(x or "").strip().lower() for x in (index_languages or []) if str(x or "").strip()}
allow = norm or {"zh", "en"}
def can_use(lcode: str) -> bool:
return lcode in allow if norm else True
out = list(specs)
lnorm = (lang or "").strip().lower()
|
0536222c
tangwang
query parser优化
|
544
545
546
547
548
|
if is_source:
if contains_english and lnorm != "en" and can_use("en"):
out = self._merge_supplemental_lang_field_specs(out, "en")
if contains_chinese and lnorm != "zh" and can_use("zh"):
out = self._merge_supplemental_lang_field_specs(out, "zh")
|
6823fe3e
tangwang
feat(search): 混合语...
|
549
|
return out
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
550
|
|
7bc756c5
tangwang
优化 ES 查询构建
|
551
552
553
554
555
|
def _get_embedding_field(self, language: str) -> str:
"""Get embedding field name for a language."""
# Currently using unified embedding field
return self.text_embedding_field or "title_embedding"
|
ef5baa86
tangwang
混杂语言处理
|
556
557
558
559
560
561
562
563
564
565
566
567
568
569
570
571
572
573
574
|
@staticmethod
def _normalize_language_list(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
def _build_advanced_text_query(
self,
query_text: str,
parsed_query: Optional[Any] = None,
*,
index_languages: Optional[List[str]] = None,
) -> Dict[str, Any]:
|
7bc756c5
tangwang
优化 ES 查询构建
|
575
|
"""
|
ef5baa86
tangwang
混杂语言处理
|
576
|
Build advanced text query using base and translated lexical clauses.
|
c90f80ed
tangwang
相关性优化
|
577
|
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
578
579
|
Unified implementation:
- base_query: source-language clause
|
ef5baa86
tangwang
混杂语言处理
|
580
|
- translation queries: target-language clauses from translations
|
7bc756c5
tangwang
优化 ES 查询构建
|
581
582
583
584
585
586
587
588
589
590
|
- KNN query: added separately in build_query
Args:
query_text: Query text
parsed_query: ParsedQuery object with analysis results
Returns:
ES bool query with should clauses
"""
should_clauses = []
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
591
|
source_lang = self.default_language
|
ef5baa86
tangwang
混杂语言处理
|
592
|
translations: Dict[str, str] = {}
|
6823fe3e
tangwang
feat(search): 混合语...
|
593
594
|
contains_chinese = False
contains_english = False
|
ef5baa86
tangwang
混杂语言处理
|
595
596
|
normalized_index_languages = self._normalize_language_list(index_languages)
|
7bc756c5
tangwang
优化 ES 查询构建
|
597
|
if parsed_query:
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
598
599
|
detected_lang = getattr(parsed_query, "detected_language", None)
source_lang = detected_lang if detected_lang and detected_lang != "unknown" else self.default_language
|
ef5baa86
tangwang
混杂语言处理
|
600
|
translations = getattr(parsed_query, "translations", None) or {}
|
6823fe3e
tangwang
feat(search): 混合语...
|
601
602
|
contains_chinese = bool(getattr(parsed_query, "contains_chinese", False))
contains_english = bool(getattr(parsed_query, "contains_english", False))
|
c90f80ed
tangwang
相关性优化
|
603
|
|
ef5baa86
tangwang
混杂语言处理
|
604
|
source_lang = str(source_lang or self.default_language).strip().lower() or self.default_language
|
ef5baa86
tangwang
混杂语言处理
|
605
606
607
608
609
610
|
base_query_text = (
getattr(parsed_query, "rewritten_query", None) if parsed_query else None
) or query_text
def append_clause(lang: str, lang_query: str, clause_name: str, is_source: bool) -> None:
nonlocal should_clauses
|
6823fe3e
tangwang
feat(search): 混合语...
|
611
612
613
614
615
616
|
all_specs, _ = self._build_match_field_specs(lang)
expanded_specs = self._expand_match_field_specs_for_mixed_script(
lang,
all_specs,
contains_chinese,
contains_english,
|
ef5baa86
tangwang
混杂语言处理
|
617
|
normalized_index_languages,
|
0536222c
tangwang
query parser优化
|
618
|
is_source,
|
6823fe3e
tangwang
feat(search): 混合语...
|
619
620
|
)
match_fields = self._format_match_field_specs(expanded_specs)
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
621
|
if not match_fields:
|
ef5baa86
tangwang
混杂语言处理
|
622
|
return
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
623
624
625
|
minimum_should_match = (
self.base_minimum_should_match if is_source else self.translation_minimum_should_match
)
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
626
627
|
clause = {
|
7bc756c5
tangwang
优化 ES 查询构建
|
628
|
"multi_match": {
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
629
|
"_name": clause_name,
|
7bc756c5
tangwang
优化 ES 查询构建
|
630
631
|
"fields": match_fields,
"minimum_should_match": minimum_should_match,
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
632
633
|
"query": lang_query,
"tie_breaker": self.tie_breaker_base_query,
|
7bc756c5
tangwang
优化 ES 查询构建
|
634
|
}
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
635
|
}
|
0536222c
tangwang
query parser优化
|
636
637
638
639
640
|
# base_query: never set multi_match.boost (ES default 1.0).
# Translation clauses: single knob from config — translation_boost.
if not is_source:
tb = float(self.translation_boost)
clause["multi_match"]["boost"] = tb
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
641
642
|
should_clauses.append({
"multi_match": clause["multi_match"]
|
7bc756c5
tangwang
优化 ES 查询构建
|
643
|
})
|
69881ecb
tangwang
相关性调参、enrich内容解析优化
|
644
645
646
|
self._append_phrase_should_clause(
should_clauses, lang, lang_query, clause_name, is_source
)
|
ea118f2b
tangwang
build_query:根据 qu...
|
647
|
|
ef5baa86
tangwang
混杂语言处理
|
648
649
650
651
652
653
654
655
656
657
658
|
if base_query_text:
append_clause(source_lang, base_query_text, "base_query", True)
for lang, translated_text in translations.items():
normalized_lang = str(lang or "").strip().lower()
normalized_text = str(translated_text or "").strip()
if not normalized_lang or not normalized_text:
continue
if normalized_lang == source_lang and normalized_text == base_query_text:
continue
append_clause(normalized_lang, normalized_text, f"base_query_trans_{normalized_lang}", False)
|
bcada818
tangwang
last
|
659
|
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
660
661
662
|
# Fallback to a simple query when language fields cannot be resolved.
if not should_clauses:
fallback_fields = self.match_fields or ["title.en^1.0"]
|
69881ecb
tangwang
相关性调参、enrich内容解析优化
|
663
|
fallback_lexical = {
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
664
665
666
667
668
669
670
671
|
"multi_match": {
"_name": "base_query_fallback",
"query": query_text,
"fields": fallback_fields,
"minimum_should_match": self.base_minimum_should_match,
"tie_breaker": self.tie_breaker_base_query,
}
}
|
69881ecb
tangwang
相关性调参、enrich内容解析优化
|
672
673
674
675
676
677
678
679
680
681
682
683
684
685
686
687
|
fb_should: List[Dict[str, Any]] = [fallback_lexical]
self._append_phrase_should_clause(
fb_should,
self.default_language,
query_text,
"base_query_fallback",
True,
)
if len(fb_should) == 1:
return fallback_lexical
return {
"bool": {
"should": fb_should,
"minimum_should_match": 1,
}
}
|
bd96cead
tangwang
1. 动态多语言字段与统一策略配置
|
688
|
|
7bc756c5
tangwang
优化 ES 查询构建
|
689
690
691
692
693
694
695
696
697
698
|
# Return bool query with should clauses
if len(should_clauses) == 1:
return should_clauses[0]
return {
"bool": {
"should": should_clauses,
"minimum_should_match": 1
}
}
|
be52af70
tangwang
first commit
|
699
|
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
700
701
702
|
def _build_filters(
self,
filters: Optional[Dict[str, Any]] = None,
|
43f1139f
tangwang
refactor: ES查询结构重...
|
703
|
range_filters: Optional[Dict[str, 'RangeFilter']] = None
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
704
|
) -> List[Dict[str, Any]]:
|
be52af70
tangwang
first commit
|
705
|
"""
|
43f1139f
tangwang
refactor: ES查询结构重...
|
706
|
构建过滤子句。
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
707
|
|
be52af70
tangwang
first commit
|
708
|
Args:
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
709
|
filters: 精确匹配过滤器字典
|
43f1139f
tangwang
refactor: ES查询结构重...
|
710
|
range_filters: 范围过滤器(Dict[str, RangeFilter],RangeFilter 是 Pydantic 模型)
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
711
|
|
be52af70
tangwang
first commit
|
712
|
Returns:
|
43f1139f
tangwang
refactor: ES查询结构重...
|
713
|
ES filter 子句列表
|
be52af70
tangwang
first commit
|
714
715
|
"""
filter_clauses = []
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
716
717
718
719
|
# 1. 处理精确匹配过滤
if filters:
for field, value in filters.items():
|
f7d3cf70
tangwang
更新文档
|
720
721
722
723
724
725
726
727
728
729
730
731
732
733
734
735
736
737
738
739
740
|
# 特殊处理:specifications 嵌套过滤
if field == "specifications":
if isinstance(value, dict):
# 单个规格过滤:{"name": "color", "value": "green"}
name = value.get("name")
spec_value = value.get("value")
if name and spec_value:
filter_clauses.append({
"nested": {
"path": "specifications",
"query": {
"bool": {
"must": [
{"term": {"specifications.name": name}},
{"term": {"specifications.value": spec_value}}
]
}
}
}
})
elif isinstance(value, list):
|
85f08823
tangwang
过滤逻辑
|
741
742
743
744
745
|
# 多个规格过滤:按 name 分组,相同维度 OR,不同维度 AND
# 例如:[{"name": "size", "value": "3"}, {"name": "size", "value": "4"}, {"name": "color", "value": "green"}]
# 应该生成:(size=3 OR size=4) AND color=green
from collections import defaultdict
specs_by_name = defaultdict(list)
|
f7d3cf70
tangwang
更新文档
|
746
747
748
749
750
|
for spec in value:
if isinstance(spec, dict):
name = spec.get("name")
spec_value = spec.get("value")
if name and spec_value:
|
85f08823
tangwang
过滤逻辑
|
751
752
753
754
755
756
757
758
759
760
761
762
763
764
765
|
specs_by_name[name].append(spec_value)
# 为每个 name 维度生成一个过滤子句
for name, values in specs_by_name.items():
if len(values) == 1:
# 单个值,直接生成 term 查询
filter_clauses.append({
"nested": {
"path": "specifications",
"query": {
"bool": {
"must": [
{"term": {"specifications.name": name}},
{"term": {"specifications.value": values[0]}}
]
|
f7d3cf70
tangwang
更新文档
|
766
767
|
}
}
|
85f08823
tangwang
过滤逻辑
|
768
769
770
771
772
773
774
775
776
777
778
779
780
|
}
})
else:
# 多个值,使用 should (OR) 连接
should_clauses = []
for spec_value in values:
should_clauses.append({
"bool": {
"must": [
{"term": {"specifications.name": name}},
{"term": {"specifications.value": spec_value}}
]
}
|
f7d3cf70
tangwang
更新文档
|
781
|
})
|
85f08823
tangwang
过滤逻辑
|
782
783
784
785
786
787
788
789
790
791
792
|
filter_clauses.append({
"nested": {
"path": "specifications",
"query": {
"bool": {
"should": should_clauses,
"minimum_should_match": 1
}
}
}
})
|
f7d3cf70
tangwang
更新文档
|
793
794
|
continue
|
985d7fe3
tangwang
为 filters 中所有字段加上...
|
795
796
797
798
799
800
801
802
803
804
805
806
807
808
809
810
811
812
813
814
815
816
817
818
819
820
821
822
823
824
825
826
827
828
829
830
831
832
833
834
|
# *_all 语义:多值时为 AND(必须同时匹配所有值)
if field.endswith("_all"):
es_field = field[:-4] # 去掉 _all 后缀
if es_field == "specifications" and isinstance(value, list):
# specifications_all: 列表内每个规格条件都要满足(AND)
must_nested = []
for spec in value:
if isinstance(spec, dict):
name = spec.get("name")
spec_value = spec.get("value")
if name and spec_value:
must_nested.append({
"nested": {
"path": "specifications",
"query": {
"bool": {
"must": [
{"term": {"specifications.name": name}},
{"term": {"specifications.value": spec_value}}
]
}
}
}
})
if must_nested:
filter_clauses.append({"bool": {"must": must_nested}})
else:
# 普通字段 _all:多值用 must + 多个 term
if isinstance(value, list):
if value:
filter_clauses.append({
"bool": {
"must": [{"term": {es_field: v}} for v in value]
}
})
else:
filter_clauses.append({"term": {es_field: value}})
continue
# 普通字段过滤(默认多值为 OR)
|
c86c8237
tangwang
支持聚合。过滤项补充了逻辑,但是有问题
|
835
|
if isinstance(value, list):
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
836
|
# 多值匹配(OR)
|
be52af70
tangwang
first commit
|
837
|
filter_clauses.append({
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
838
|
"terms": {field: value}
|
be52af70
tangwang
first commit
|
839
|
})
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
840
841
842
843
844
845
|
else:
# 单值精确匹配
filter_clauses.append({
"term": {field: value}
})
|
f0d020c3
tangwang
多语言查询改为只支持中英文两种,f...
|
846
|
# 2. 处理范围过滤(支持 RangeFilter Pydantic 模型或字典)
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
847
|
if range_filters:
|
43f1139f
tangwang
refactor: ES查询结构重...
|
848
|
for field, range_filter in range_filters.items():
|
f0d020c3
tangwang
多语言查询改为只支持中英文两种,f...
|
849
850
851
852
853
854
855
856
857
858
|
# 支持 Pydantic 模型或字典格式
if hasattr(range_filter, 'model_dump'):
# Pydantic 模型
range_dict = range_filter.model_dump(exclude_none=True)
elif isinstance(range_filter, dict):
# 已经是字典格式
range_dict = {k: v for k, v in range_filter.items() if v is not None}
else:
# 其他格式,跳过
continue
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
859
|
|
43f1139f
tangwang
refactor: ES查询结构重...
|
860
|
if range_dict:
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
861
|
filter_clauses.append({
|
43f1139f
tangwang
refactor: ES查询结构重...
|
862
|
"range": {field: range_dict}
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
863
864
|
})
|
be52af70
tangwang
first commit
|
865
866
|
return filter_clauses
|
c86c8237
tangwang
支持聚合。过滤项补充了逻辑,但是有问题
|
867
868
869
870
871
872
873
874
875
876
877
|
def add_sorting(
self,
es_query: Dict[str, Any],
sort_by: str,
sort_order: str = "desc"
) -> Dict[str, Any]:
"""
Add sorting to ES query.
Args:
es_query: Existing ES query
|
13320ac6
tangwang
分面接口修改:
|
878
|
sort_by: Field name for sorting (支持 'price' 自动映射)
|
c86c8237
tangwang
支持聚合。过滤项补充了逻辑,但是有问题
|
879
880
881
882
883
884
885
886
887
888
889
|
sort_order: Sort order: 'asc' or 'desc'
Returns:
Modified ES query
"""
if not sort_by:
return es_query
if not sort_order:
sort_order = "desc"
|
13320ac6
tangwang
分面接口修改:
|
890
891
892
893
894
895
896
|
# Auto-map 'price' to 'min_price' or 'max_price' based on sort_order
if sort_by == "price":
if sort_order.lower() == "asc":
sort_by = "min_price" # 价格从低到高
else:
sort_by = "max_price" # 价格从高到低
|
c86c8237
tangwang
支持聚合。过滤项补充了逻辑,但是有问题
|
897
898
899
900
901
902
903
904
905
906
907
908
909
|
if "sort" not in es_query:
es_query["sort"] = []
# Add the specified sort
sort_field = {
sort_by: {
"order": sort_order.lower()
}
}
es_query["sort"].append(sort_field)
return es_query
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
910
|
def build_facets(
|
be52af70
tangwang
first commit
|
911
|
self,
|
d8ca3b13
tangwang
修复 分面结果 各个选项结果数 和...
|
912
913
|
facet_configs: Optional[List['FacetConfig']] = None,
use_reverse_nested: bool = True
|
be52af70
tangwang
first commit
|
914
915
|
) -> Dict[str, Any]:
"""
|
ff5325fa
tangwang
修复:直接在 Searcher 层...
|
916
|
构建分面聚合。
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
917
|
|
be52af70
tangwang
first commit
|
918
|
Args:
|
13320ac6
tangwang
分面接口修改:
|
919
|
facet_configs: 分面配置对象列表
|
d8ca3b13
tangwang
修复 分面结果 各个选项结果数 和...
|
920
921
|
use_reverse_nested: 是否使用 reverse_nested 统计产品数量(默认 True)
如果为 False,将统计嵌套文档数量(性能更好但计数可能不准确)
|
13320ac6
tangwang
分面接口修改:
|
922
923
924
925
926
|
支持的字段类型:
- 普通字段: 如 "category1_name"(terms 或 range 类型)
- specifications: "specifications"(返回所有规格名称及其值)
- specifications.{name}: 如 "specifications.color"(返回指定规格名称的值)
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
927
|
|
be52af70
tangwang
first commit
|
928
|
Returns:
|
ff5325fa
tangwang
修复:直接在 Searcher 层...
|
929
|
ES aggregations 字典
|
d8ca3b13
tangwang
修复 分面结果 各个选项结果数 和...
|
930
931
932
933
|
性能说明:
- use_reverse_nested=True: 统计产品数量,准确性高但性能略差(通常影响 < 20%)
- use_reverse_nested=False: 统计嵌套文档数量,性能更好但计数可能不准确
|
be52af70
tangwang
first commit
|
934
|
"""
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
935
936
937
938
939
940
|
if not facet_configs:
return {}
aggs = {}
for config in facet_configs:
|
13320ac6
tangwang
分面接口修改:
|
941
942
943
944
945
946
947
948
949
950
951
952
953
954
955
956
957
958
959
960
961
|
field = config.field
size = config.size
facet_type = config.type
# 处理 specifications(所有规格名称)
if field == "specifications":
aggs["specifications_facet"] = {
"nested": {"path": "specifications"},
"aggs": {
"by_name": {
"terms": {
"field": "specifications.name",
"size": 20,
"order": {"_count": "desc"}
},
"aggs": {
"value_counts": {
"terms": {
"field": "specifications.value",
"size": size,
"order": {"_count": "desc"}
|
bf89b597
tangwang
feat(search): ada...
|
962
963
964
965
966
|
}
}
}
}
}
|
13320ac6
tangwang
分面接口修改:
|
967
968
969
970
971
972
973
|
}
continue
# 处理 specifications.{name}(指定规格名称)
if field.startswith("specifications."):
name = field[len("specifications."):]
agg_name = f"specifications_{name}_facet"
|
d8ca3b13
tangwang
修复 分面结果 各个选项结果数 和...
|
974
975
976
977
978
979
980
981
982
983
984
985
986
987
988
989
990
991
|
# 使用 reverse_nested 统计产品(父文档)数量,而不是规格条目(嵌套文档)数量
# 这样可以确保分面计数反映实际的产品数量,与搜索结果数量一致
base_value_counts = {
"terms": {
"field": "specifications.value",
"size": size,
"order": {"_count": "desc"}
}
}
# 如果启用 reverse_nested,添加子聚合统计产品数量
if use_reverse_nested:
base_value_counts["aggs"] = {
"product_count": {
"reverse_nested": {}
}
}
|
13320ac6
tangwang
分面接口修改:
|
992
993
994
995
996
997
|
aggs[agg_name] = {
"nested": {"path": "specifications"},
"aggs": {
"filter_by_name": {
"filter": {"term": {"specifications.name": name}},
"aggs": {
|
d8ca3b13
tangwang
修复 分面结果 各个选项结果数 和...
|
998
|
"value_counts": base_value_counts
|
f7d3cf70
tangwang
更新文档
|
999
1000
1001
|
}
}
}
|
13320ac6
tangwang
分面接口修改:
|
1002
1003
1004
1005
1006
|
}
continue
# 处理普通字段
agg_name = f"{field}_facet"
|
bf89b597
tangwang
feat(search): ada...
|
1007
|
|
13320ac6
tangwang
分面接口修改:
|
1008
|
if facet_type == 'terms':
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
1009
1010
1011
|
aggs[agg_name] = {
"terms": {
"field": field,
|
13320ac6
tangwang
分面接口修改:
|
1012
|
"size": size,
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
1013
1014
|
"order": {"_count": "desc"}
}
|
be52af70
tangwang
first commit
|
1015
|
}
|
13320ac6
tangwang
分面接口修改:
|
1016
1017
|
elif facet_type == 'range':
if config.ranges:
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
1018
|
aggs[agg_name] = {
|
13320ac6
tangwang
分面接口修改:
|
1019
|
"range": {
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
1020
|
"field": field,
|
13320ac6
tangwang
分面接口修改:
|
1021
|
"ranges": config.ranges
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
1022
1023
|
}
}
|
6aa246be
tangwang
问题:Pydantic 应该能自动...
|
1024
1025
|
return aggs
|