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  1. #
  2. # Copyright 2024 The InfiniFlow Authors. All Rights Reserved.
  3. #
  4. # Licensed under the Apache License, Version 2.0 (the "License");
  5. # you may not use this file except in compliance with the License.
  6. # You may obtain a copy of the License at
  7. #
  8. # http://www.apache.org/licenses/LICENSE-2.0
  9. #
  10. # Unless required by applicable law or agreed to in writing, software
  11. # distributed under the License is distributed on an "AS IS" BASIS,
  12. # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
  13. # See the License for the specific language governing permissions and
  14. # limitations under the License.
  15. #
  16. import logging
  17. import json
  18. import re
  19. from rag.utils.doc_store_conn import MatchTextExpr
  20. from rag.nlp import rag_tokenizer, term_weight, synonym
  21. class FulltextQueryer:
  22. def __init__(self):
  23. self.tw = term_weight.Dealer()
  24. self.syn = synonym.Dealer()
  25. self.query_fields = [
  26. "title_tks^10",
  27. "title_sm_tks^5",
  28. "important_kwd^30",
  29. "important_tks^20",
  30. "question_tks^20",
  31. "content_ltks^2",
  32. "content_sm_ltks",
  33. ]
  34. @staticmethod
  35. def subSpecialChar(line):
  36. return re.sub(r"([:\{\}/\[\]\-\*\"\(\)\|\+~\^])", r"\\\1", line).strip()
  37. @staticmethod
  38. def isChinese(line):
  39. arr = re.split(r"[ \t]+", line)
  40. if len(arr) <= 3:
  41. return True
  42. e = 0
  43. for t in arr:
  44. if not re.match(r"[a-zA-Z]+$", t):
  45. e += 1
  46. return e * 1.0 / len(arr) >= 0.7
  47. @staticmethod
  48. def rmWWW(txt):
  49. patts = [
  50. (
  51. r"是*(什么样的|哪家|一下|那家|请问|啥样|咋样了|什么时候|何时|何地|何人|是否|是不是|多少|哪里|怎么|哪儿|怎么样|如何|哪些|是啥|啥是|啊|吗|呢|吧|咋|什么|有没有|呀|谁|哪位|哪个)是*",
  52. "",
  53. ),
  54. (r"(^| )(what|who|how|which|where|why)('re|'s)? ", " "),
  55. (
  56. r"(^| )('s|'re|is|are|were|was|do|does|did|don't|doesn't|didn't|has|have|be|there|you|me|your|my|mine|just|please|may|i|should|would|wouldn't|will|won't|done|go|for|with|so|the|a|an|by|i'm|it's|he's|she's|they|they're|you're|as|by|on|in|at|up|out|down|of|to|or|and|if) ",
  57. " ")
  58. ]
  59. otxt = txt
  60. for r, p in patts:
  61. txt = re.sub(r, p, txt, flags=re.IGNORECASE)
  62. if not otxt:
  63. txt = otxt
  64. return txt
  65. def question(self, txt, tbl="qa", min_match: float = 0.6):
  66. txt = re.sub(
  67. r"[ :|\r\n\t,,。??/`!!&^%%()\[\]{}<>]+",
  68. " ",
  69. rag_tokenizer.tradi2simp(rag_tokenizer.strQ2B(txt.lower())),
  70. ).strip()
  71. txt = FulltextQueryer.rmWWW(txt)
  72. if not self.isChinese(txt):
  73. txt = FulltextQueryer.rmWWW(txt)
  74. tks = rag_tokenizer.tokenize(txt).split()
  75. keywords = [t for t in tks if t]
  76. tks_w = self.tw.weights(tks, preprocess=False)
  77. tks_w = [(re.sub(r"[ \\\"'^]", "", tk), w) for tk, w in tks_w]
  78. tks_w = [(re.sub(r"^[a-z0-9]$", "", tk), w) for tk, w in tks_w if tk]
  79. tks_w = [(re.sub(r"^[\+-]", "", tk), w) for tk, w in tks_w if tk]
  80. tks_w = [(tk.strip(), w) for tk, w in tks_w if tk.strip()]
  81. syns = []
  82. for tk, w in tks_w:
  83. syn = self.syn.lookup(tk)
  84. syn = rag_tokenizer.tokenize(" ".join(syn)).split()
  85. keywords.extend(syn)
  86. syn = ["\"{}\"^{:.4f}".format(s, w / 4.) for s in syn if s.strip()]
  87. syns.append(" ".join(syn))
  88. q = ["({}^{:.4f}".format(tk, w) + " {})".format(syn) for (tk, w), syn in zip(tks_w, syns) if
  89. tk and not re.match(r"[.^+\(\)-]", tk)]
  90. for i in range(1, len(tks_w)):
  91. left, right = tks_w[i - 1][0].strip(), tks_w[i][0].strip()
  92. if not left or not right:
  93. continue
  94. q.append(
  95. '"%s %s"^%.4f'
  96. % (
  97. tks_w[i - 1][0],
  98. tks_w[i][0],
  99. max(tks_w[i - 1][1], tks_w[i][1]) * 2,
  100. )
  101. )
  102. if not q:
  103. q.append(txt)
  104. query = " ".join(q)
  105. return MatchTextExpr(
  106. self.query_fields, query, 100
  107. ), keywords
  108. def need_fine_grained_tokenize(tk):
  109. if len(tk) < 3:
  110. return False
  111. if re.match(r"[0-9a-z\.\+#_\*-]+$", tk):
  112. return False
  113. return True
  114. txt = FulltextQueryer.rmWWW(txt)
  115. qs, keywords = [], []
  116. for tt in self.tw.split(txt)[:256]: # .split():
  117. if not tt:
  118. continue
  119. keywords.append(tt)
  120. twts = self.tw.weights([tt])
  121. syns = self.syn.lookup(tt)
  122. if syns and len(keywords) < 32:
  123. keywords.extend(syns)
  124. logging.debug(json.dumps(twts, ensure_ascii=False))
  125. tms = []
  126. for tk, w in sorted(twts, key=lambda x: x[1] * -1):
  127. sm = (
  128. rag_tokenizer.fine_grained_tokenize(tk).split()
  129. if need_fine_grained_tokenize(tk)
  130. else []
  131. )
  132. sm = [
  133. re.sub(
  134. r"[ ,\./;'\[\]\\`~!@#$%\^&\*\(\)=\+_<>\?:\"\{\}\|,。;‘’【】、!¥……()——《》?:“”-]+",
  135. "",
  136. m,
  137. )
  138. for m in sm
  139. ]
  140. sm = [FulltextQueryer.subSpecialChar(m) for m in sm if len(m) > 1]
  141. sm = [m for m in sm if len(m) > 1]
  142. if len(keywords) < 32:
  143. keywords.append(re.sub(r"[ \\\"']+", "", tk))
  144. keywords.extend(sm)
  145. tk_syns = self.syn.lookup(tk)
  146. tk_syns = [FulltextQueryer.subSpecialChar(s) for s in tk_syns]
  147. if len(keywords) < 32:
  148. keywords.extend([s for s in tk_syns if s])
  149. tk_syns = [rag_tokenizer.fine_grained_tokenize(s) for s in tk_syns if s]
  150. tk_syns = [f"\"{s}\"" if s.find(" ") > 0 else s for s in tk_syns]
  151. if len(keywords) >= 32:
  152. break
  153. tk = FulltextQueryer.subSpecialChar(tk)
  154. if tk.find(" ") > 0:
  155. tk = '"%s"' % tk
  156. if tk_syns:
  157. tk = f"({tk} OR (%s)^0.2)" % " ".join(tk_syns)
  158. if sm:
  159. tk = f'{tk} OR "%s" OR ("%s"~2)^0.5' % (" ".join(sm), " ".join(sm))
  160. if tk.strip():
  161. tms.append((tk, w))
  162. tms = " ".join([f"({t})^{w}" for t, w in tms])
  163. if len(twts) > 1:
  164. tms += ' ("%s"~2)^1.5' % rag_tokenizer.tokenize(tt)
  165. syns = " OR ".join(
  166. [
  167. '"%s"'
  168. % rag_tokenizer.tokenize(FulltextQueryer.subSpecialChar(s))
  169. for s in syns
  170. ]
  171. )
  172. if syns and tms:
  173. tms = f"({tms})^5 OR ({syns})^0.7"
  174. qs.append(tms)
  175. if qs:
  176. query = " OR ".join([f"({t})" for t in qs if t])
  177. return MatchTextExpr(
  178. self.query_fields, query, 100, {"minimum_should_match": min_match}
  179. ), keywords
  180. return None, keywords
  181. def hybrid_similarity(self, avec, bvecs, atks, btkss, tkweight=0.3, vtweight=0.7):
  182. from sklearn.metrics.pairwise import cosine_similarity as CosineSimilarity
  183. import numpy as np
  184. sims = CosineSimilarity([avec], bvecs)
  185. tksim = self.token_similarity(atks, btkss)
  186. if np.sum(sims[0]) == 0:
  187. return np.array(tksim), tksim, sims[0]
  188. return np.array(sims[0]) * vtweight + np.array(tksim) * tkweight, tksim, sims[0]
  189. def token_similarity(self, atks, btkss):
  190. def toDict(tks):
  191. d = {}
  192. if isinstance(tks, str):
  193. tks = tks.split()
  194. for t, c in self.tw.weights(tks, preprocess=False):
  195. if t not in d:
  196. d[t] = 0
  197. d[t] += c
  198. return d
  199. atks = toDict(atks)
  200. btkss = [toDict(tks) for tks in btkss]
  201. return [self.similarity(atks, btks) for btks in btkss]
  202. def similarity(self, qtwt, dtwt):
  203. if isinstance(dtwt, type("")):
  204. dtwt = {t: w for t, w in self.tw.weights(self.tw.split(dtwt), preprocess=False)}
  205. if isinstance(qtwt, type("")):
  206. qtwt = {t: w for t, w in self.tw.weights(self.tw.split(qtwt), preprocess=False)}
  207. s = 1e-9
  208. for k, v in qtwt.items():
  209. if k in dtwt:
  210. s += v # * dtwt[k]
  211. q = 1e-9
  212. for k, v in qtwt.items():
  213. q += v
  214. return s / q
  215. def paragraph(self, content_tks: str, keywords: list = [], keywords_topn=30):
  216. if isinstance(content_tks, str):
  217. content_tks = [c.strip() for c in content_tks.strip() if c.strip()]
  218. tks_w = self.tw.weights(content_tks, preprocess=False)
  219. keywords = [f'"{k.strip()}"' for k in keywords]
  220. for tk, w in sorted(tks_w, key=lambda x: x[1] * -1)[:keywords_topn]:
  221. tk_syns = self.syn.lookup(tk)
  222. tk_syns = [FulltextQueryer.subSpecialChar(s) for s in tk_syns]
  223. tk_syns = [rag_tokenizer.fine_grained_tokenize(s) for s in tk_syns if s]
  224. tk_syns = [f"\"{s}\"" if s.find(" ") > 0 else s for s in tk_syns]
  225. tk = FulltextQueryer.subSpecialChar(tk)
  226. if tk.find(" ") > 0:
  227. tk = '"%s"' % tk
  228. if tk_syns:
  229. tk = f"({tk} OR (%s)^0.2)" % " ".join(tk_syns)
  230. if tk:
  231. keywords.append(f"{tk}^{w}")
  232. return MatchTextExpr(self.query_fields, " ".join(keywords), 100,
  233. {"minimum_should_match": min(3, len(keywords) / 10)})