Blame view

tests/test_embedding_pipeline.py 10.9 KB
0ba0e0fc   tangwang   1. rerank漏斗配置优化
1
  from dataclasses import asdict
950a640e   tangwang   embeddings
2
3
4
  from typing import Any, Dict, List, Optional
  
  import numpy as np
ed948666   tangwang   tidy
5
  import pytest
950a640e   tangwang   embeddings
6
7
8
9
10
  
  from config import (
      FunctionScoreConfig,
      IndexConfig,
      QueryConfig,
950a640e   tangwang   embeddings
11
12
13
14
15
      RerankConfig,
      SPUConfig,
      SearchConfig,
  )
  from embeddings.text_encoder import TextEmbeddingEncoder
7214c2e7   tangwang   mplemented**
16
  from embeddings.image_encoder import CLIPImageEncoder
4650fcec   tangwang   日志优化、日志串联(uid rqid)
17
  from embeddings.text_embedding_tei import TEITextModel
4a37d233   tangwang   1. embedding cach...
18
  from embeddings.bf16 import encode_embedding_for_redis
7214c2e7   tangwang   mplemented**
19
  from embeddings.cache_keys import build_image_cache_key, build_text_cache_key
5a01af3c   tangwang   多模态hashkey调整:1. 加...
20
  from embeddings.config import CONFIG
950a640e   tangwang   embeddings
21
  from query import QueryParser
4650fcec   tangwang   日志优化、日志串联(uid rqid)
22
  from context.request_context import create_request_context, set_current_request_context, clear_current_request_context
950a640e   tangwang   embeddings
23
  
99b72698   tangwang   测试回归钩子梳理
24
25
  pytestmark = [pytest.mark.embedding, pytest.mark.regression]
  
950a640e   tangwang   embeddings
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
  
  class _FakeRedis:
      def __init__(self):
          self.store: Dict[str, bytes] = {}
  
      def ping(self):
          return True
  
      def get(self, key: str):
          return self.store.get(key)
  
      def setex(self, key: str, _expire, value: bytes):
          self.store[key] = value
          return True
  
      def expire(self, key: str, _expire):
          return key in self.store
  
      def delete(self, key: str):
          self.store.pop(key, None)
          return True
  
  
  class _FakeResponse:
      def __init__(self, payload: List[Optional[List[float]]]):
          self._payload = payload
  
      def raise_for_status(self):
          return None
  
      def json(self):
          return self._payload
  
  
  class _FakeTranslator:
      def translate(
          self,
          text: str,
          target_lang: str,
          source_lang: Optional[str] = None,
          prompt: Optional[str] = None,
      ) -> str:
          return f"{text}-{target_lang}"
  
  
  class _FakeQueryEncoder:
b754fd41   tangwang   图片向量化支持优先级参数
72
73
74
      def __init__(self):
          self.calls = []
  
950a640e   tangwang   embeddings
75
      def encode(self, sentences, **kwargs):
b754fd41   tangwang   图片向量化支持优先级参数
76
          self.calls.append({"sentences": sentences, "kwargs": dict(kwargs)})
950a640e   tangwang   embeddings
77
78
79
80
81
          if isinstance(sentences, str):
              sentences = [sentences]
          return np.array([np.array([0.11, 0.22, 0.33], dtype=np.float32) for _ in sentences], dtype=object)
  
  
dc403578   tangwang   多模态搜索
82
83
84
85
86
87
88
89
90
  class _FakeClipTextEncoder:
      def __init__(self):
          self.calls = []
  
      def encode_clip_text(self, text, **kwargs):
          self.calls.append({"text": text, "kwargs": dict(kwargs)})
          return np.array([0.44, 0.55, 0.66], dtype=np.float32)
  
  
ef5baa86   tangwang   混杂语言处理
91
92
93
94
  def _tokenizer(text):
      return str(text).split()
  
  
7214c2e7   tangwang   mplemented**
95
96
97
98
99
100
101
102
103
104
105
106
  class _FakeEmbeddingCache:
      def __init__(self):
          self.store: Dict[str, np.ndarray] = {}
  
      def get(self, key: str):
          return self.store.get(key)
  
      def set(self, key: str, embedding: np.ndarray):
          self.store[key] = np.asarray(embedding, dtype=np.float32)
          return True
  
  
dc403578   tangwang   多模态搜索
107
  def _build_test_config(*, image_embedding_field: Optional[str] = None) -> SearchConfig:
950a640e   tangwang   embeddings
108
109
110
111
112
113
114
115
      return SearchConfig(
          field_boosts={"title.en": 3.0},
          indexes=[IndexConfig(name="default", label="default", fields=["title.en"], boost=1.0)],
          query_config=QueryConfig(
              supported_languages=["en", "zh"],
              default_language="en",
              enable_text_embedding=True,
              enable_query_rewrite=False,
950a640e   tangwang   embeddings
116
              rewrite_dictionary={},
950a640e   tangwang   embeddings
117
              text_embedding_field="title_embedding",
dc403578   tangwang   多模态搜索
118
              image_embedding_field=image_embedding_field,
950a640e   tangwang   embeddings
119
          ),
77ab67ad   tangwang   更新测试用例
120
          function_score=FunctionScoreConfig(),
950a640e   tangwang   embeddings
121
122
123
          rerank=RerankConfig(),
          spu_config=SPUConfig(enabled=True, spu_field="spu_id", inner_hits_size=3),
          es_index_name="test_products",
950a640e   tangwang   embeddings
124
          es_settings={},
950a640e   tangwang   embeddings
125
126
127
128
      )
  
  
  def test_text_embedding_encoder_response_alignment(monkeypatch):
7214c2e7   tangwang   mplemented**
129
130
      fake_cache = _FakeEmbeddingCache()
      monkeypatch.setattr("embeddings.text_encoder.RedisEmbeddingCache", lambda **kwargs: fake_cache)
950a640e   tangwang   embeddings
131
  
77ab67ad   tangwang   更新测试用例
132
      def _fake_post(url, json, timeout, **kwargs):
950a640e   tangwang   embeddings
133
134
          assert url.endswith("/embed/text")
          assert json == ["hello", "world"]
b754fd41   tangwang   图片向量化支持优先级参数
135
          assert kwargs["params"]["priority"] == 0
ed948666   tangwang   tidy
136
          return _FakeResponse([[0.1, 0.2], [0.3, 0.4]])
950a640e   tangwang   embeddings
137
138
139
140
141
142
143
144
145
  
      monkeypatch.setattr("embeddings.text_encoder.requests.post", _fake_post)
  
      encoder = TextEmbeddingEncoder(service_url="http://127.0.0.1:6005")
      out = encoder.encode(["hello", "world"])
  
      assert len(out) == 2
      assert isinstance(out[0], np.ndarray)
      assert out[0].shape == (2,)
ed948666   tangwang   tidy
146
147
148
149
150
      assert isinstance(out[1], np.ndarray)
      assert out[1].shape == (2,)
  
  
  def test_text_embedding_encoder_raises_on_missing_vector(monkeypatch):
7214c2e7   tangwang   mplemented**
151
152
      fake_cache = _FakeEmbeddingCache()
      monkeypatch.setattr("embeddings.text_encoder.RedisEmbeddingCache", lambda **kwargs: fake_cache)
ed948666   tangwang   tidy
153
  
77ab67ad   tangwang   更新测试用例
154
      def _fake_post(url, json, timeout, **kwargs):
ed948666   tangwang   tidy
155
156
157
158
159
160
161
          return _FakeResponse([[0.1, 0.2], None])
  
      monkeypatch.setattr("embeddings.text_encoder.requests.post", _fake_post)
  
      encoder = TextEmbeddingEncoder(service_url="http://127.0.0.1:6005")
      with pytest.raises(ValueError):
          encoder.encode(["hello", "world"])
950a640e   tangwang   embeddings
162
163
164
  
  
  def test_text_embedding_encoder_cache_hit(monkeypatch):
7214c2e7   tangwang   mplemented**
165
      fake_cache = _FakeEmbeddingCache()
950a640e   tangwang   embeddings
166
      cached = np.array([0.9, 0.8], dtype=np.float32)
7214c2e7   tangwang   mplemented**
167
168
      fake_cache.store[build_text_cache_key("cached-text", normalize=True)] = cached
      monkeypatch.setattr("embeddings.text_encoder.RedisEmbeddingCache", lambda **kwargs: fake_cache)
950a640e   tangwang   embeddings
169
170
171
  
      calls = {"count": 0}
  
77ab67ad   tangwang   更新测试用例
172
      def _fake_post(url, json, timeout, **kwargs):
950a640e   tangwang   embeddings
173
174
175
176
177
178
179
180
181
          calls["count"] += 1
          return _FakeResponse([[0.3, 0.4]])
  
      monkeypatch.setattr("embeddings.text_encoder.requests.post", _fake_post)
  
      encoder = TextEmbeddingEncoder(service_url="http://127.0.0.1:6005")
      out = encoder.encode(["cached-text", "new-text"])
  
      assert calls["count"] == 1
99b72698   tangwang   测试回归钩子梳理
182
183
184
185
      # encoder returns an object-dtype ndarray of 1-D float32 vectors; cast per-row
      # before numeric comparison.
      assert np.allclose(np.asarray(out[0], dtype=np.float32), cached)
      assert np.allclose(np.asarray(out[1], dtype=np.float32), np.array([0.3, 0.4], dtype=np.float32))
950a640e   tangwang   embeddings
186
187
  
  
4650fcec   tangwang   日志优化、日志串联(uid rqid)
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
  def test_text_embedding_encoder_forwards_request_headers(monkeypatch):
      fake_cache = _FakeEmbeddingCache()
      monkeypatch.setattr("embeddings.text_encoder.RedisEmbeddingCache", lambda **kwargs: fake_cache)
  
      captured = {}
  
      def _fake_post(url, json, timeout, **kwargs):
          captured["headers"] = dict(kwargs.get("headers") or {})
          return _FakeResponse([[0.1, 0.2]])
  
      monkeypatch.setattr("embeddings.text_encoder.requests.post", _fake_post)
  
      context = create_request_context(reqid="req-ctx-1", uid="user-ctx-1")
      set_current_request_context(context)
      try:
          encoder = TextEmbeddingEncoder(service_url="http://127.0.0.1:6005")
          encoder.encode(["hello"])
      finally:
          clear_current_request_context()
  
      assert captured["headers"]["X-Request-ID"] == "req-ctx-1"
      assert captured["headers"]["X-User-ID"] == "user-ctx-1"
  
  
7214c2e7   tangwang   mplemented**
212
213
214
215
  def test_image_embedding_encoder_cache_hit(monkeypatch):
      fake_cache = _FakeEmbeddingCache()
      cached = np.array([0.5, 0.6], dtype=np.float32)
      url = "https://example.com/a.jpg"
5a01af3c   tangwang   多模态hashkey调整:1. 加...
216
217
218
      fake_cache.store[
          build_image_cache_key(url, normalize=True, model_name=CONFIG.MULTIMODAL_MODEL_NAME)
      ] = cached
7214c2e7   tangwang   mplemented**
219
220
221
222
223
224
      monkeypatch.setattr("embeddings.image_encoder.RedisEmbeddingCache", lambda **kwargs: fake_cache)
  
      calls = {"count": 0}
  
      def _fake_post(url, params, json, timeout, **kwargs):
          calls["count"] += 1
b754fd41   tangwang   图片向量化支持优先级参数
225
          assert params["priority"] == 0
7214c2e7   tangwang   mplemented**
226
227
228
229
230
231
232
233
234
235
236
237
          return _FakeResponse([[0.1, 0.2]])
  
      monkeypatch.setattr("embeddings.image_encoder.requests.post", _fake_post)
  
      encoder = CLIPImageEncoder(service_url="http://127.0.0.1:6008")
      out = encoder.encode_batch(["https://example.com/a.jpg", "https://example.com/b.jpg"])
  
      assert calls["count"] == 1
      assert np.allclose(out[0], cached)
      assert np.allclose(out[1], np.array([0.1, 0.2], dtype=np.float32))
  
  
b754fd41   tangwang   图片向量化支持优先级参数
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
  def test_image_embedding_encoder_passes_priority(monkeypatch):
      fake_cache = _FakeEmbeddingCache()
      monkeypatch.setattr("embeddings.image_encoder.RedisEmbeddingCache", lambda **kwargs: fake_cache)
  
      def _fake_post(url, params, json, timeout, **kwargs):
          assert params["priority"] == 1
          return _FakeResponse([[0.1, 0.2]])
  
      monkeypatch.setattr("embeddings.image_encoder.requests.post", _fake_post)
  
      encoder = CLIPImageEncoder(service_url="http://127.0.0.1:6008")
      out = encoder.encode_batch(["https://example.com/a.jpg"], priority=1)
      assert len(out) == 1
      assert np.allclose(out[0], np.array([0.1, 0.2], dtype=np.float32))
  
  
950a640e   tangwang   embeddings
254
  def test_query_parser_generates_query_vector_with_encoder():
b754fd41   tangwang   图片向量化支持优先级参数
255
      encoder = _FakeQueryEncoder()
950a640e   tangwang   embeddings
256
257
      parser = QueryParser(
          config=_build_test_config(),
b754fd41   tangwang   图片向量化支持优先级参数
258
          text_encoder=encoder,
950a640e   tangwang   embeddings
259
          translator=_FakeTranslator(),
ef5baa86   tangwang   混杂语言处理
260
          tokenizer=_tokenizer,
950a640e   tangwang   embeddings
261
262
263
264
265
      )
  
      parsed = parser.parse("red dress", tenant_id="162", generate_vector=True)
      assert parsed.query_vector is not None
      assert parsed.query_vector.shape == (3,)
b754fd41   tangwang   图片向量化支持优先级参数
266
267
      assert encoder.calls
      assert encoder.calls[0]["kwargs"]["priority"] == 1
950a640e   tangwang   embeddings
268
269
  
  
dc403578   tangwang   多模态搜索
270
271
272
273
274
275
276
277
278
279
280
281
282
283
284
285
286
287
288
289
  def test_query_parser_generates_image_query_vector_with_clip_text_encoder():
      text_encoder = _FakeQueryEncoder()
      image_encoder = _FakeClipTextEncoder()
      parser = QueryParser(
          config=_build_test_config(image_embedding_field="image_embedding.vector"),
          text_encoder=text_encoder,
          image_encoder=image_encoder,
          translator=_FakeTranslator(),
          tokenizer=_tokenizer,
      )
  
      parsed = parser.parse("red dress", tenant_id="162", generate_vector=True)
      assert parsed.query_vector is not None
      assert parsed.image_query_vector is not None
      assert parsed.image_query_vector.shape == (3,)
      assert image_encoder.calls
      assert image_encoder.calls[0]["text"] == "red dress"
      assert image_encoder.calls[0]["kwargs"]["priority"] == 1
  
  
950a640e   tangwang   embeddings
290
291
292
293
294
  def test_query_parser_skips_query_vector_when_disabled():
      parser = QueryParser(
          config=_build_test_config(),
          text_encoder=_FakeQueryEncoder(),
          translator=_FakeTranslator(),
ef5baa86   tangwang   混杂语言处理
295
          tokenizer=_tokenizer,
950a640e   tangwang   embeddings
296
297
298
299
      )
  
      parsed = parser.parse("red dress", tenant_id="162", generate_vector=False)
      assert parsed.query_vector is None
dc403578   tangwang   多模态搜索
300
      assert parsed.image_query_vector is None
4650fcec   tangwang   日志优化、日志串联(uid rqid)
301
302
303
304
305
306
307
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
  
  
  def test_tei_text_model_splits_batches_over_client_limit(monkeypatch):
      monkeypatch.setattr(TEITextModel, "_health_check", lambda self: None)
      calls = []
  
      class _Response:
          def __init__(self, payload):
              self._payload = payload
  
          def raise_for_status(self):
              return None
  
          def json(self):
              return self._payload
  
      def _fake_post(url, json, timeout):
          inputs = list(json["inputs"])
          calls.append(inputs)
          return _Response([[float(idx)] for idx, _ in enumerate(inputs, start=1)])
  
      monkeypatch.setattr("embeddings.text_embedding_tei.requests.post", _fake_post)
  
      model = TEITextModel(
          base_url="http://127.0.0.1:8080",
          timeout_sec=20,
          max_client_batch_size=24,
      )
      vectors = model.encode([f"text-{idx}" for idx in range(25)], normalize_embeddings=False)
  
      assert len(calls) == 2
      assert len(calls[0]) == 24
      assert len(calls[1]) == 1
      assert len(vectors) == 25