# # Copyright 2024 The InfiniFlow Authors. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. # import json from copy import deepcopy import pandas as pd from elasticsearch_dsl import Q, Search from rag.nlp.search import Dealer class KGSearch(Dealer): def search(self, req, idxnm, emb_mdl=None): def merge_into_first(sres, title=""): df,texts = [],[] for d in sres["hits"]["hits"]: try: df.append(json.loads(d["_source"]["content_with_weight"])) except Exception as e: texts.append(d["_source"]["content_with_weight"]) pass if not df and not texts: return False if df: try: sres["hits"]["hits"][0]["_source"]["content_with_weight"] = title + "\n" + pd.DataFrame(df).to_csv() except Exception as e: pass else: sres["hits"]["hits"][0]["_source"]["content_with_weight"] = title + "\n" + "\n".join(texts) return True src = req.get("fields", ["docnm_kwd", "content_ltks", "kb_id", "img_id", "title_tks", "important_kwd", "image_id", "doc_id", "q_512_vec", "q_768_vec", "position_int", "name_kwd", "q_1024_vec", "q_1536_vec", "available_int", "content_with_weight", "weight_int", "weight_flt", "rank_int" ]) qst = req.get("question", "") binary_query, keywords = self.qryr.question(qst, min_match="5%") binary_query = self._add_filters(binary_query, req) ## Entity retrieval bqry = deepcopy(binary_query) bqry.filter.append(Q("terms", knowledge_graph_kwd=["entity"])) s = Search() s = s.query(bqry)[0: 32] s = s.to_dict() q_vec = [] if req.get("vector"): assert emb_mdl, "No embedding model selected" s["knn"] = self._vector( qst, emb_mdl, req.get( "similarity", 0.1), 1024) s["knn"]["filter"] = bqry.to_dict() q_vec = s["knn"]["query_vector"] ent_res = self.es.search(deepcopy(s), idxnm=idxnm, timeout="600s", src=src) entities = [d["name_kwd"] for d in self.es.getSource(ent_res)] ent_ids = self.es.getDocIds(ent_res) if merge_into_first(ent_res, "-Entities-"): ent_ids = ent_ids[0:1] ## Community retrieval bqry = deepcopy(binary_query) bqry.filter.append(Q("terms", entities_kwd=entities)) bqry.filter.append(Q("terms", knowledge_graph_kwd=["community_report"])) s = Search() s = s.query(bqry)[0: 32] s = s.to_dict() comm_res = self.es.search(deepcopy(s), idxnm=idxnm, timeout="600s", src=src) comm_ids = self.es.getDocIds(comm_res) if merge_into_first(comm_res, "-Community Report-"): comm_ids = comm_ids[0:1] ## Text content retrieval bqry = deepcopy(binary_query) bqry.filter.append(Q("terms", knowledge_graph_kwd=["text"])) s = Search() s = s.query(bqry)[0: 6] s = s.to_dict() txt_res = self.es.search(deepcopy(s), idxnm=idxnm, timeout="600s", src=src) txt_ids = self.es.getDocIds(comm_res) if merge_into_first(txt_res, "-Original Content-"): txt_ids = comm_ids[0:1] return self.SearchResult( total=len(ent_ids) + len(comm_ids) + len(txt_ids), ids=[*ent_ids, *comm_ids, *txt_ids], query_vector=q_vec, aggregation=None, highlight=None, field={**self.getFields(ent_res, src), **self.getFields(comm_res, src), **self.getFields(txt_res, src)}, keywords=[] )