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### What problem does this PR solve? Add top_k for create_chat and update_chat api #4157 ### Type of change - [x] New Feature (non-breaking change which adds functionality) --------- Co-authored-by: liuhua <10215101452@stu.ecun.edu.cn>
197 lines
8.9 KiB
Python
197 lines
8.9 KiB
Python
#
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# Copyright 2024 The InfiniFlow Authors. All Rights Reserved.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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import requests
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from .modules.chat import Chat
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from .modules.chunk import Chunk
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from .modules.dataset import DataSet
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from .modules.agent import Agent
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class RAGFlow:
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def __init__(self, api_key, base_url, version='v1'):
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"""
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api_url: http://<host_address>/api/v1
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"""
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self.user_key = api_key
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self.api_url = f"{base_url}/api/{version}"
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self.authorization_header = {"Authorization": "{} {}".format("Bearer", self.user_key)}
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def post(self, path, json=None, stream=False, files=None):
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res = requests.post(url=self.api_url + path, json=json, headers=self.authorization_header, stream=stream,files=files)
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return res
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def get(self, path, params=None, json=None):
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res = requests.get(url=self.api_url + path, params=params, headers=self.authorization_header,json=json)
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return res
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def delete(self, path, json):
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res = requests.delete(url=self.api_url + path, json=json, headers=self.authorization_header)
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return res
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def put(self, path, json):
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res = requests.put(url=self.api_url + path, json= json,headers=self.authorization_header)
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return res
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def create_dataset(self, name: str, avatar: str = "", description: str = "", embedding_model:str = "BAAI/bge-large-zh-v1.5",
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language: str = "English",
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permission: str = "me",chunk_method: str = "naive",
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parser_config: DataSet.ParserConfig = None) -> DataSet:
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if parser_config:
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parser_config = parser_config.to_json()
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res = self.post("/datasets",
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{"name": name, "avatar": avatar, "description": description,"embedding_model":embedding_model,
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"language": language,
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"permission": permission, "chunk_method": chunk_method,
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"parser_config": parser_config
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}
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)
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res = res.json()
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if res.get("code") == 0:
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return DataSet(self, res["data"])
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raise Exception(res["message"])
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def delete_datasets(self, ids: list[str] | None = None):
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res = self.delete("/datasets",{"ids": ids})
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res=res.json()
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if res.get("code") != 0:
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raise Exception(res["message"])
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def get_dataset(self,name: str):
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_list = self.list_datasets(name=name)
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if len(_list) > 0:
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return _list[0]
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raise Exception("Dataset %s not found" % name)
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def list_datasets(self, page: int = 1, page_size: int = 30, orderby: str = "create_time", desc: bool = True,
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id: str | None = None, name: str | None = None) -> \
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list[DataSet]:
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res = self.get("/datasets",
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{"page": page, "page_size": page_size, "orderby": orderby, "desc": desc, "id": id, "name": name})
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res = res.json()
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result_list = []
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if res.get("code") == 0:
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for data in res['data']:
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result_list.append(DataSet(self, data))
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return result_list
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raise Exception(res["message"])
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def create_chat(self, name: str, avatar: str = "", dataset_ids=None,
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llm: Chat.LLM | None = None, prompt: Chat.Prompt | None = None) -> Chat:
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if dataset_ids is None:
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dataset_ids = []
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dataset_list = []
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for id in dataset_ids:
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dataset_list.append(id)
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if llm is None:
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llm = Chat.LLM(self, {"model_name": None,
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"temperature": 0.1,
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"top_p": 0.3,
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"presence_penalty": 0.4,
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"frequency_penalty": 0.7,
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"max_tokens": 512, })
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if prompt is None:
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prompt = Chat.Prompt(self, {"similarity_threshold": 0.2,
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"keywords_similarity_weight": 0.7,
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"top_n": 8,
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"top_k": 1024,
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"variables": [{
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"key": "knowledge",
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"optional": True
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}], "rerank_model": "",
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"empty_response": None,
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"opener": None,
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"show_quote": True,
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"prompt": None})
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if prompt.opener is None:
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prompt.opener = "Hi! I'm your assistant, what can I do for you?"
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if prompt.prompt is None:
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prompt.prompt = (
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"You are an intelligent assistant. Please summarize the content of the knowledge base to answer the question. "
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"Please list the data in the knowledge base and answer in detail. When all knowledge base content is irrelevant to the question, "
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"your answer must include the sentence 'The answer you are looking for is not found in the knowledge base!' "
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"Answers need to consider chat history.\nHere is the knowledge base:\n{knowledge}\nThe above is the knowledge base."
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)
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temp_dict = {"name": name,
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"avatar": avatar,
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"dataset_ids": dataset_list,
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"llm": llm.to_json(),
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"prompt": prompt.to_json()}
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res = self.post("/chats", temp_dict)
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res = res.json()
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if res.get("code") == 0:
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return Chat(self, res["data"])
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raise Exception(res["message"])
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def delete_chats(self,ids: list[str] | None = None):
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res = self.delete('/chats',
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{"ids":ids})
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res = res.json()
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if res.get("code") != 0:
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raise Exception(res["message"])
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def list_chats(self, page: int = 1, page_size: int = 30, orderby: str = "create_time", desc: bool = True,
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id: str | None = None, name: str | None = None) -> list[Chat]:
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res = self.get("/chats",{"page": page, "page_size": page_size, "orderby": orderby, "desc": desc, "id": id, "name": name})
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res = res.json()
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result_list = []
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if res.get("code") == 0:
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for data in res['data']:
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result_list.append(Chat(self, data))
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return result_list
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raise Exception(res["message"])
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def retrieve(self, dataset_ids, document_ids=None, question="", page=1, page_size=30, similarity_threshold=0.2, vector_similarity_weight=0.3, top_k=1024, rerank_id: str | None = None, keyword:bool=False, ):
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if document_ids is None:
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document_ids = []
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data_json ={
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"page": page,
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"page_size": page_size,
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"similarity_threshold": similarity_threshold,
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"vector_similarity_weight": vector_similarity_weight,
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"top_k": top_k,
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"rerank_id": rerank_id,
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"keyword": keyword,
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"question": question,
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"dataset_ids": dataset_ids,
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"documents": document_ids
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}
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# Send a POST request to the backend service (using requests library as an example, actual implementation may vary)
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res = self.post('/retrieval',json=data_json)
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res = res.json()
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if res.get("code") ==0:
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chunks=[]
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for chunk_data in res["data"].get("chunks"):
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chunk=Chunk(self,chunk_data)
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chunks.append(chunk)
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return chunks
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raise Exception(res.get("message"))
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def list_agents(self, page: int = 1, page_size: int = 30, orderby: str = "update_time", desc: bool = True,
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id: str | None = None, title: str | None = None) -> list[Agent]:
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res = self.get("/agents",{"page": page, "page_size": page_size, "orderby": orderby, "desc": desc, "id": id, "title": title})
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res = res.json()
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result_list = []
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if res.get("code") == 0:
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for data in res['data']:
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result_list.append(Agent(self, data))
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return result_list
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raise Exception(res["message"])
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