|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
| import datetime
|
| import json
|
| import traceback
|
|
|
| from flask import request
|
| from flask_login import login_required, current_user
|
| from elasticsearch_dsl import Q
|
|
|
| from rag.app.qa import rmPrefix, beAdoc
|
| from rag.nlp import search, rag_tokenizer, keyword_extraction
|
| from rag.utils.es_conn import ELASTICSEARCH
|
| from rag.utils import rmSpace
|
| from api.db import LLMType, ParserType
|
| from api.db.services.knowledgebase_service import KnowledgebaseService
|
| from api.db.services.llm_service import TenantLLMService
|
| from api.db.services.user_service import UserTenantService
|
| from api.utils.api_utils import server_error_response, get_data_error_result, validate_request
|
| from api.db.services.document_service import DocumentService
|
| from api.settings import RetCode, retrievaler, kg_retrievaler
|
| from api.utils.api_utils import get_json_result
|
| import hashlib
|
| import re
|
|
|
|
|
| @manager.route('/list', methods=['POST'])
|
| @login_required
|
| @validate_request("doc_id")
|
| def list_chunk():
|
| req = request.json
|
| doc_id = req["doc_id"]
|
| page = int(req.get("page", 1))
|
| size = int(req.get("size", 30))
|
| question = req.get("keywords", "")
|
| try:
|
| tenant_id = DocumentService.get_tenant_id(req["doc_id"])
|
| if not tenant_id:
|
| return get_data_error_result(retmsg="Tenant not found!")
|
| e, doc = DocumentService.get_by_id(doc_id)
|
| if not e:
|
| return get_data_error_result(retmsg="Document not found!")
|
| query = {
|
| "doc_ids": [doc_id], "page": page, "size": size, "question": question, "sort": True
|
| }
|
| if "available_int" in req:
|
| query["available_int"] = int(req["available_int"])
|
| sres = retrievaler.search(query, search.index_name(tenant_id))
|
| res = {"total": sres.total, "chunks": [], "doc": doc.to_dict()}
|
| for id in sres.ids:
|
| d = {
|
| "chunk_id": id,
|
| "content_with_weight": rmSpace(sres.highlight[id]) if question and id in sres.highlight else sres.field[
|
| id].get(
|
| "content_with_weight", ""),
|
| "doc_id": sres.field[id]["doc_id"],
|
| "docnm_kwd": sres.field[id]["docnm_kwd"],
|
| "important_kwd": sres.field[id].get("important_kwd", []),
|
| "img_id": sres.field[id].get("img_id", ""),
|
| "available_int": sres.field[id].get("available_int", 1),
|
| "positions": sres.field[id].get("position_int", "").split("\t")
|
| }
|
| if len(d["positions"]) % 5 == 0:
|
| poss = []
|
| for i in range(0, len(d["positions"]), 5):
|
| poss.append([float(d["positions"][i]), float(d["positions"][i + 1]), float(d["positions"][i + 2]),
|
| float(d["positions"][i + 3]), float(d["positions"][i + 4])])
|
| d["positions"] = poss
|
| res["chunks"].append(d)
|
| return get_json_result(data=res)
|
| except Exception as e:
|
| if str(e).find("not_found") > 0:
|
| return get_json_result(data=False, retmsg=f'No chunk found!',
|
| retcode=RetCode.DATA_ERROR)
|
| return server_error_response(e)
|
|
|
|
|
| @manager.route('/get', methods=['GET'])
|
| @login_required
|
| def get():
|
| chunk_id = request.args["chunk_id"]
|
| try:
|
| tenants = UserTenantService.query(user_id=current_user.id)
|
| if not tenants:
|
| return get_data_error_result(retmsg="Tenant not found!")
|
| res = ELASTICSEARCH.get(
|
| chunk_id, search.index_name(
|
| tenants[0].tenant_id))
|
| if not res.get("found"):
|
| return server_error_response("Chunk not found")
|
| id = res["_id"]
|
| res = res["_source"]
|
| res["chunk_id"] = id
|
| k = []
|
| for n in res.keys():
|
| if re.search(r"(_vec$|_sm_|_tks|_ltks)", n):
|
| k.append(n)
|
| for n in k:
|
| del res[n]
|
|
|
| return get_json_result(data=res)
|
| except Exception as e:
|
| if str(e).find("NotFoundError") >= 0:
|
| return get_json_result(data=False, retmsg=f'Chunk not found!',
|
| retcode=RetCode.DATA_ERROR)
|
| return server_error_response(e)
|
|
|
|
|
| @manager.route('/set', methods=['POST'])
|
| @login_required
|
| @validate_request("doc_id", "chunk_id", "content_with_weight",
|
| "important_kwd")
|
| def set():
|
| req = request.json
|
| d = {
|
| "id": req["chunk_id"],
|
| "content_with_weight": req["content_with_weight"]}
|
| d["content_ltks"] = rag_tokenizer.tokenize(req["content_with_weight"])
|
| d["content_sm_ltks"] = rag_tokenizer.fine_grained_tokenize(d["content_ltks"])
|
| d["important_kwd"] = req["important_kwd"]
|
| d["important_tks"] = rag_tokenizer.tokenize(" ".join(req["important_kwd"]))
|
| if "available_int" in req:
|
| d["available_int"] = req["available_int"]
|
|
|
| try:
|
| tenant_id = DocumentService.get_tenant_id(req["doc_id"])
|
| if not tenant_id:
|
| return get_data_error_result(retmsg="Tenant not found!")
|
|
|
| embd_id = DocumentService.get_embd_id(req["doc_id"])
|
| embd_mdl = TenantLLMService.model_instance(
|
| tenant_id, LLMType.EMBEDDING.value, embd_id)
|
|
|
| e, doc = DocumentService.get_by_id(req["doc_id"])
|
| if not e:
|
| return get_data_error_result(retmsg="Document not found!")
|
|
|
| if doc.parser_id == ParserType.QA:
|
| arr = [
|
| t for t in re.split(
|
| r"[\n\t]",
|
| req["content_with_weight"]) if len(t) > 1]
|
| if len(arr) != 2:
|
| return get_data_error_result(
|
| retmsg="Q&A must be separated by TAB/ENTER key.")
|
| q, a = rmPrefix(arr[0]), rmPrefix(arr[1])
|
| d = beAdoc(d, arr[0], arr[1], not any(
|
| [rag_tokenizer.is_chinese(t) for t in q + a]))
|
|
|
| v, c = embd_mdl.encode([doc.name, req["content_with_weight"]])
|
| v = 0.1 * v[0] + 0.9 * v[1] if doc.parser_id != ParserType.QA else v[1]
|
| d["q_%d_vec" % len(v)] = v.tolist()
|
| ELASTICSEARCH.upsert([d], search.index_name(tenant_id))
|
| return get_json_result(data=True)
|
| except Exception as e:
|
| return server_error_response(e)
|
|
|
|
|
| @manager.route('/switch', methods=['POST'])
|
| @login_required
|
| @validate_request("chunk_ids", "available_int", "doc_id")
|
| def switch():
|
| req = request.json
|
| try:
|
| tenant_id = DocumentService.get_tenant_id(req["doc_id"])
|
| if not tenant_id:
|
| return get_data_error_result(retmsg="Tenant not found!")
|
| if not ELASTICSEARCH.upsert([{"id": i, "available_int": int(req["available_int"])} for i in req["chunk_ids"]],
|
| search.index_name(tenant_id)):
|
| return get_data_error_result(retmsg="Index updating failure")
|
| return get_json_result(data=True)
|
| except Exception as e:
|
| return server_error_response(e)
|
|
|
|
|
| @manager.route('/rm', methods=['POST'])
|
| @login_required
|
| @validate_request("chunk_ids", "doc_id")
|
| def rm():
|
| req = request.json
|
| try:
|
| if not ELASTICSEARCH.deleteByQuery(
|
| Q("ids", values=req["chunk_ids"]), search.index_name(current_user.id)):
|
| return get_data_error_result(retmsg="Index updating failure")
|
| e, doc = DocumentService.get_by_id(req["doc_id"])
|
| if not e:
|
| return get_data_error_result(retmsg="Document not found!")
|
| deleted_chunk_ids = req["chunk_ids"]
|
| chunk_number = len(deleted_chunk_ids)
|
| DocumentService.decrement_chunk_num(doc.id, doc.kb_id, 1, chunk_number, 0)
|
| return get_json_result(data=True)
|
| except Exception as e:
|
| return server_error_response(e)
|
|
|
|
|
| @manager.route('/create', methods=['POST'])
|
| @login_required
|
| @validate_request("doc_id", "content_with_weight")
|
| def create():
|
| req = request.json
|
| md5 = hashlib.md5()
|
| md5.update((req["content_with_weight"] + req["doc_id"]).encode("utf-8"))
|
| chunck_id = md5.hexdigest()
|
| d = {"id": chunck_id, "content_ltks": rag_tokenizer.tokenize(req["content_with_weight"]),
|
| "content_with_weight": req["content_with_weight"]}
|
| d["content_sm_ltks"] = rag_tokenizer.fine_grained_tokenize(d["content_ltks"])
|
| d["important_kwd"] = req.get("important_kwd", [])
|
| d["important_tks"] = rag_tokenizer.tokenize(" ".join(req.get("important_kwd", [])))
|
| d["create_time"] = str(datetime.datetime.now()).replace("T", " ")[:19]
|
| d["create_timestamp_flt"] = datetime.datetime.now().timestamp()
|
|
|
| try:
|
| e, doc = DocumentService.get_by_id(req["doc_id"])
|
| if not e:
|
| return get_data_error_result(retmsg="Document not found!")
|
| d["kb_id"] = [doc.kb_id]
|
| d["docnm_kwd"] = doc.name
|
| d["doc_id"] = doc.id
|
|
|
| tenant_id = DocumentService.get_tenant_id(req["doc_id"])
|
| if not tenant_id:
|
| return get_data_error_result(retmsg="Tenant not found!")
|
|
|
| embd_id = DocumentService.get_embd_id(req["doc_id"])
|
| embd_mdl = TenantLLMService.model_instance(
|
| tenant_id, LLMType.EMBEDDING.value, embd_id)
|
|
|
| v, c = embd_mdl.encode([doc.name, req["content_with_weight"]])
|
| v = 0.1 * v[0] + 0.9 * v[1]
|
| d["q_%d_vec" % len(v)] = v.tolist()
|
| ELASTICSEARCH.upsert([d], search.index_name(tenant_id))
|
|
|
| DocumentService.increment_chunk_num(
|
| doc.id, doc.kb_id, c, 1, 0)
|
| return get_json_result(data={"chunk_id": chunck_id})
|
| except Exception as e:
|
| return server_error_response(e)
|
|
|
|
|
| @manager.route('/retrieval_test', methods=['POST'])
|
| @login_required
|
| @validate_request("kb_id", "question")
|
| def retrieval_test():
|
| req = request.json
|
| page = int(req.get("page", 1))
|
| size = int(req.get("size", 30))
|
| question = req["question"]
|
| kb_id = req["kb_id"]
|
| doc_ids = req.get("doc_ids", [])
|
| similarity_threshold = float(req.get("similarity_threshold", 0.2))
|
| vector_similarity_weight = float(req.get("vector_similarity_weight", 0.3))
|
| top = int(req.get("top_k", 1024))
|
| try:
|
| e, kb = KnowledgebaseService.get_by_id(kb_id)
|
| if not e:
|
| return get_data_error_result(retmsg="Knowledgebase not found!")
|
|
|
| embd_mdl = TenantLLMService.model_instance(
|
| kb.tenant_id, LLMType.EMBEDDING.value, llm_name=kb.embd_id)
|
|
|
| rerank_mdl = None
|
| if req.get("rerank_id"):
|
| rerank_mdl = TenantLLMService.model_instance(
|
| kb.tenant_id, LLMType.RERANK.value, llm_name=req["rerank_id"])
|
|
|
| if req.get("keyword", False):
|
| chat_mdl = TenantLLMService.model_instance(kb.tenant_id, LLMType.CHAT)
|
| question += keyword_extraction(chat_mdl, question)
|
|
|
| retr = retrievaler if kb.parser_id != ParserType.KG else kg_retrievaler
|
| ranks = retr.retrieval(question, embd_mdl, kb.tenant_id, [kb_id], page, size,
|
| similarity_threshold, vector_similarity_weight, top,
|
| doc_ids, rerank_mdl=rerank_mdl)
|
| for c in ranks["chunks"]:
|
| if "vector" in c:
|
| del c["vector"]
|
|
|
| return get_json_result(data=ranks)
|
| except Exception as e:
|
| if str(e).find("not_found") > 0:
|
| return get_json_result(data=False, retmsg=f'No chunk found! Check the chunk status please!',
|
| retcode=RetCode.DATA_ERROR)
|
| return server_error_response(e)
|
|
|
|
|
| @manager.route('/knowledge_graph', methods=['GET'])
|
| @login_required
|
| def knowledge_graph():
|
| doc_id = request.args["doc_id"]
|
| req = {
|
| "doc_ids":[doc_id],
|
| "knowledge_graph_kwd": ["graph", "mind_map"]
|
| }
|
| tenant_id = DocumentService.get_tenant_id(doc_id)
|
| sres = retrievaler.search(req, search.index_name(tenant_id))
|
| obj = {"graph": {}, "mind_map": {}}
|
| for id in sres.ids[:2]:
|
| ty = sres.field[id]["knowledge_graph_kwd"]
|
| try:
|
| obj[ty] = json.loads(sres.field[id]["content_with_weight"])
|
| except Exception as e:
|
| print(traceback.format_exc(), flush=True)
|
|
|
| return get_json_result(data=obj)
|
|
|
|
|