Blame view

embeddings/text_encoder.py 6.04 KB
950a640e   tangwang   embeddings
1
  """Text embedding client for the local embedding HTTP service."""
be52af70   tangwang   first commit
2
  
950a640e   tangwang   embeddings
3
4
  import logging
  import os
950a640e   tangwang   embeddings
5
6
  from datetime import timedelta
  from typing import Any, List, Optional, Union
be52af70   tangwang   first commit
7
  
be52af70   tangwang   first commit
8
  import numpy as np
950a640e   tangwang   embeddings
9
  import requests
325eec03   tangwang   1. 日志、配置基础设施,使用优化
10
11
  
  logger = logging.getLogger(__name__)
be52af70   tangwang   first commit
12
  
42e3aea6   tangwang   tidy
13
  from config.services_config import get_embedding_base_url
4a37d233   tangwang   1. embedding cach...
14
  from embeddings.redis_embedding_cache import RedisEmbeddingCache
42e3aea6   tangwang   tidy
15
  
453992a8   tangwang   需求:
16
  # Try to import REDIS_CONFIG, but allow import to fail
3d588bef   tangwang   embeddings
17
  from config.env_config import REDIS_CONFIG
be52af70   tangwang   first commit
18
  
950a640e   tangwang   embeddings
19
  class TextEmbeddingEncoder:
be52af70   tangwang   first commit
20
      """
950a640e   tangwang   embeddings
21
      Text embedding encoder using network service.
be52af70   tangwang   first commit
22
      """
be52af70   tangwang   first commit
23
  
950a640e   tangwang   embeddings
24
25
26
27
28
      def __init__(self, service_url: Optional[str] = None):
          resolved_url = service_url or os.getenv("EMBEDDING_SERVICE_URL") or get_embedding_base_url()
          self.service_url = str(resolved_url).rstrip("/")
          self.endpoint = f"{self.service_url}/embed/text"
          self.expire_time = timedelta(days=REDIS_CONFIG.get("cache_expire_days", 180))
3d588bef   tangwang   embeddings
29
          self.cache_prefix = str(REDIS_CONFIG.get("embedding_cache_prefix", "embedding")).strip() or "embedding"
950a640e   tangwang   embeddings
30
31
          logger.info("Creating TextEmbeddingEncoder instance with service URL: %s", self.service_url)
  
4a37d233   tangwang   1. embedding cach...
32
33
34
35
36
          self.cache = RedisEmbeddingCache(
              key_prefix=self.cache_prefix,
              namespace="",
              expire_time=self.expire_time,
          )
be52af70   tangwang   first commit
37
  
200fdddf   tangwang   embed norm
38
      def _call_service(self, request_data: List[str], normalize_embeddings: bool = True) -> List[Any]:
325eec03   tangwang   1. 日志、配置基础设施,使用优化
39
40
41
42
          """
          Call the embedding service API.
  
          Args:
7bfb9946   tangwang   向量化模块
43
              request_data: List of texts
325eec03   tangwang   1. 日志、配置基础设施,使用优化
44
45
  
          Returns:
7bfb9946   tangwang   向量化模块
46
              List of embeddings (list[float]) or nulls (None), aligned to input order
325eec03   tangwang   1. 日志、配置基础设施,使用优化
47
48
49
50
          """
          try:
              response = requests.post(
                  self.endpoint,
200fdddf   tangwang   embed norm
51
                  params={"normalize": "true" if normalize_embeddings else "false"},
325eec03   tangwang   1. 日志、配置基础设施,使用优化
52
53
54
55
56
57
                  json=request_data,
                  timeout=60
              )
              response.raise_for_status()
              return response.json()
          except requests.exceptions.RequestException as e:
950a640e   tangwang   embeddings
58
              logger.error(f"TextEmbeddingEncoder service request failed: {e}", exc_info=True)
325eec03   tangwang   1. 日志、配置基础设施,使用优化
59
60
              raise
  
be52af70   tangwang   first commit
61
62
63
64
      def encode(
          self,
          sentences: Union[str, List[str]],
          normalize_embeddings: bool = True,
325eec03   tangwang   1. 日志、配置基础设施,使用优化
65
          device: str = 'cpu',
be52af70   tangwang   first commit
66
67
68
          batch_size: int = 32
      ) -> np.ndarray:
          """
453992a8   tangwang   需求:
69
          Encode text into embeddings via network service with Redis caching.
be52af70   tangwang   first commit
70
71
72
  
          Args:
              sentences: Single string or list of strings to encode
200fdddf   tangwang   embed norm
73
              normalize_embeddings: Whether to request normalized embeddings from service
325eec03   tangwang   1. 日志、配置基础设施,使用优化
74
75
              device: Device parameter ignored for service compatibility
              batch_size: Batch size for processing (used for service requests)
be52af70   tangwang   first commit
76
77
  
          Returns:
ed948666   tangwang   tidy
78
79
              numpy array of dtype=object,元素均为有效 np.ndarray 向量。
              若任一输入无法生成向量,将直接抛出异常。
be52af70   tangwang   first commit
80
          """
325eec03   tangwang   1. 日志、配置基础设施,使用优化
81
82
83
          # Convert single string to list
          if isinstance(sentences, str):
              sentences = [sentences]
be52af70   tangwang   first commit
84
  
453992a8   tangwang   需求:
85
          # Check cache first
b2e50710   tangwang   BgeEncoder.encode...
86
87
          uncached_indices: List[int] = []
          uncached_texts: List[str] = []
453992a8   tangwang   需求:
88
          
70a318c6   tangwang   fix bug
89
90
91
          embeddings: List[Optional[np.ndarray]] = [None] * len(sentences)
  
          for i, text in enumerate(sentences):
3d588bef   tangwang   embeddings
92
              cached = self._get_cached_embedding(text)
70a318c6   tangwang   fix bug
93
94
95
96
97
98
99
              if cached is not None:
                  embeddings[i] = cached
              else:
                  uncached_indices.append(i)
                  uncached_texts.append(text)
          
          # Prepare request data for uncached texts (after cache check)
7bfb9946   tangwang   向量化模块
100
          request_data = list(uncached_texts)
453992a8   tangwang   需求:
101
102
103
          
          # If there are uncached texts, call service
          if uncached_texts:
200fdddf   tangwang   embed norm
104
              response_data = self._call_service(request_data, normalize_embeddings=normalize_embeddings)
453992a8   tangwang   需求:
105
  
ed948666   tangwang   tidy
106
107
108
109
110
111
112
              # Process response
              for i, text in enumerate(uncached_texts):
                  original_idx = uncached_indices[i]
                  if response_data and i < len(response_data):
                      embedding = response_data[i]
                  else:
                      embedding = None
7bfb9946   tangwang   向量化模块
113
  
ed948666   tangwang   tidy
114
115
116
117
                  if embedding is not None:
                      embedding_array = np.array(embedding, dtype=np.float32)
                      if self._is_valid_embedding(embedding_array):
                          embeddings[original_idx] = embedding_array
4a37d233   tangwang   1. embedding cach...
118
                          self._set_cached_embedding(text, embedding_array)
325eec03   tangwang   1. 日志、配置基础设施,使用优化
119
                      else:
ed948666   tangwang   tidy
120
121
122
123
124
                          raise ValueError(
                              f"Invalid embedding returned from service for text index {original_idx}"
                          )
                  else:
                      raise ValueError(f"No embedding found for text index {original_idx}: {text[:50]}...")
453992a8   tangwang   需求:
125
          
77516841   tangwang   tidy embeddings
126
          # 返回 numpy 数组(dtype=object),元素均为有效 np.ndarray 向量
b2e50710   tangwang   BgeEncoder.encode...
127
          return np.array(embeddings, dtype=object)
3d588bef   tangwang   embeddings
128
          
b2e50710   tangwang   BgeEncoder.encode...
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
      def _is_valid_embedding(self, embedding: np.ndarray) -> bool:
          """
          Check if embedding is valid (not None, correct shape, no NaN/Inf).
          
          Args:
              embedding: Embedding array to validate
              
          Returns:
              True if valid, False otherwise
          """
          if embedding is None:
              return False
          if not isinstance(embedding, np.ndarray):
              return False
          if embedding.size == 0:
              return False
          # Check for NaN or Inf values
          if not np.isfinite(embedding).all():
              return False
          return True
      
200fdddf   tangwang   embed norm
150
151
      def _get_cached_embedding(
          self,
4a37d233   tangwang   1. embedding cach...
152
          query: str,
200fdddf   tangwang   embed norm
153
      ) -> Optional[np.ndarray]:
4a37d233   tangwang   1. embedding cach...
154
155
156
157
158
          """Get embedding from cache if exists (with sliding expiration)."""
          embedding = self.cache.get(query)
          if embedding is not None:
              logger.debug(f"Cache hit for embedding: {query}")
          return embedding
453992a8   tangwang   需求:
159
      
200fdddf   tangwang   embed norm
160
161
162
      def _set_cached_embedding(
          self,
          query: str,
200fdddf   tangwang   embed norm
163
          embedding: np.ndarray,
200fdddf   tangwang   embed norm
164
      ) -> bool:
4a37d233   tangwang   1. embedding cach...
165
166
167
          """Store embedding in cache."""
          ok = self.cache.set(query, embedding)
          if ok:
453992a8   tangwang   需求:
168
              logger.debug(f"Successfully cached embedding for query: {query}")
4a37d233   tangwang   1. embedding cach...
169
          return ok