0000sir
Fix keys of Xinference deployed models, especially has the same model name with public hosted models. (#2832)
13b2570
| # | |
| # 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 flask import request | |
| from flask_login import login_required, current_user | |
| from api.db.services.llm_service import LLMFactoriesService, TenantLLMService, LLMService | |
| from api.settings import LIGHTEN | |
| from api.utils.api_utils import server_error_response, get_data_error_result, validate_request | |
| from api.db import StatusEnum, LLMType | |
| from api.db.db_models import TenantLLM | |
| from api.utils.api_utils import get_json_result | |
| from rag.llm import EmbeddingModel, ChatModel, RerankModel, CvModel, TTSModel | |
| import requests | |
| def factories(): | |
| try: | |
| fac = LLMFactoriesService.get_all() | |
| fac = [f.to_dict() for f in fac if f.name not in ["Youdao", "FastEmbed", "BAAI"]] | |
| llms = LLMService.get_all() | |
| mdl_types = {} | |
| for m in llms: | |
| if m.status != StatusEnum.VALID.value: | |
| continue | |
| if m.fid not in mdl_types: | |
| mdl_types[m.fid] = set([]) | |
| mdl_types[m.fid].add(m.model_type) | |
| for f in fac: | |
| f["model_types"] = list(mdl_types.get(f["name"], [LLMType.CHAT, LLMType.EMBEDDING, LLMType.RERANK, | |
| LLMType.IMAGE2TEXT, LLMType.SPEECH2TEXT, LLMType.TTS])) | |
| return get_json_result(data=fac) | |
| except Exception as e: | |
| return server_error_response(e) | |
| def set_api_key(): | |
| req = request.json | |
| # test if api key works | |
| chat_passed, embd_passed, rerank_passed = False, False, False | |
| factory = req["llm_factory"] | |
| msg = "" | |
| for llm in LLMService.query(fid=factory): | |
| if not embd_passed and llm.model_type == LLMType.EMBEDDING.value: | |
| mdl = EmbeddingModel[factory]( | |
| req["api_key"], llm.llm_name, base_url=req.get("base_url")) | |
| try: | |
| arr, tc = mdl.encode(["Test if the api key is available"]) | |
| if len(arr[0]) == 0: | |
| raise Exception("Fail") | |
| embd_passed = True | |
| except Exception as e: | |
| msg += f"\nFail to access embedding model({llm.llm_name}) using this api key." + str(e) | |
| elif not chat_passed and llm.model_type == LLMType.CHAT.value: | |
| mdl = ChatModel[factory]( | |
| req["api_key"], llm.llm_name, base_url=req.get("base_url")) | |
| try: | |
| m, tc = mdl.chat(None, [{"role": "user", "content": "Hello! How are you doing!"}], | |
| {"temperature": 0.9,'max_tokens':50}) | |
| if m.find("**ERROR**") >=0: | |
| raise Exception(m) | |
| chat_passed = True | |
| except Exception as e: | |
| msg += f"\nFail to access model({llm.llm_name}) using this api key." + str( | |
| e) | |
| elif not rerank_passed and llm.model_type == LLMType.RERANK: | |
| mdl = RerankModel[factory]( | |
| req["api_key"], llm.llm_name, base_url=req.get("base_url")) | |
| try: | |
| arr, tc = mdl.similarity("What's the weather?", ["Is it sunny today?"]) | |
| if len(arr) == 0 or tc == 0: | |
| raise Exception("Fail") | |
| rerank_passed = True | |
| print(f'passed model rerank{llm.llm_name}',flush=True) | |
| except Exception as e: | |
| msg += f"\nFail to access model({llm.llm_name}) using this api key." + str( | |
| e) | |
| if any([embd_passed, chat_passed, rerank_passed]): | |
| msg = '' | |
| break | |
| if msg: | |
| return get_data_error_result(retmsg=msg) | |
| llm_config = { | |
| "api_key": req["api_key"], | |
| "api_base": req.get("base_url", "") | |
| } | |
| for n in ["model_type", "llm_name"]: | |
| if n in req: | |
| llm_config[n] = req[n] | |
| for llm in LLMService.query(fid=factory): | |
| if not TenantLLMService.filter_update( | |
| [TenantLLM.tenant_id == current_user.id, | |
| TenantLLM.llm_factory == factory, | |
| TenantLLM.llm_name == llm.llm_name], | |
| llm_config): | |
| TenantLLMService.save( | |
| tenant_id=current_user.id, | |
| llm_factory=factory, | |
| llm_name=llm.llm_name, | |
| model_type=llm.model_type, | |
| api_key=llm_config["api_key"], | |
| api_base=llm_config["api_base"] | |
| ) | |
| return get_json_result(data=True) | |
| def add_llm(): | |
| req = request.json | |
| factory = req["llm_factory"] | |
| def apikey_json(keys): | |
| nonlocal req | |
| return json.dumps({k: req.get(k, "") for k in keys}) | |
| if factory == "VolcEngine": | |
| # For VolcEngine, due to its special authentication method | |
| # Assemble ark_api_key endpoint_id into api_key | |
| llm_name = req["llm_name"] | |
| api_key = apikey_json(["ark_api_key", "endpoint_id"]) | |
| elif factory == "Tencent Hunyuan": | |
| req["api_key"] = apikey_json(["hunyuan_sid", "hunyuan_sk"]) | |
| return set_api_key() | |
| elif factory == "Tencent Cloud": | |
| req["api_key"] = apikey_json(["tencent_cloud_sid", "tencent_cloud_sk"]) | |
| elif factory == "Bedrock": | |
| # For Bedrock, due to its special authentication method | |
| # Assemble bedrock_ak, bedrock_sk, bedrock_region | |
| llm_name = req["llm_name"] | |
| api_key = apikey_json(["bedrock_ak", "bedrock_sk", "bedrock_region"]) | |
| elif factory == "LocalAI": | |
| llm_name = req["llm_name"]+"___LocalAI" | |
| api_key = "xxxxxxxxxxxxxxx" | |
| elif factory == "HuggingFace": | |
| llm_name = req["llm_name"]+"___HuggingFace" | |
| api_key = "xxxxxxxxxxxxxxx" | |
| elif factory == "OpenAI-API-Compatible": | |
| llm_name = req["llm_name"]+"___OpenAI-API" | |
| api_key = req.get("api_key","xxxxxxxxxxxxxxx") | |
| elif factory =="XunFei Spark": | |
| llm_name = req["llm_name"] | |
| if req["model_type"] == "chat": | |
| api_key = req.get("spark_api_password", "xxxxxxxxxxxxxxx") | |
| elif req["model_type"] == "tts": | |
| api_key = apikey_json(["spark_app_id", "spark_api_secret","spark_api_key"]) | |
| elif factory == "BaiduYiyan": | |
| llm_name = req["llm_name"] | |
| api_key = apikey_json(["yiyan_ak", "yiyan_sk"]) | |
| elif factory == "Fish Audio": | |
| llm_name = req["llm_name"] | |
| api_key = apikey_json(["fish_audio_ak", "fish_audio_refid"]) | |
| elif factory == "Google Cloud": | |
| llm_name = req["llm_name"] | |
| api_key = apikey_json(["google_project_id", "google_region", "google_service_account_key"]) | |
| elif factory == "Azure-OpenAI": | |
| llm_name = req["llm_name"] | |
| api_key = apikey_json(["api_key", "api_version"]) | |
| else: | |
| llm_name = req["llm_name"] | |
| api_key = req.get("api_key", "xxxxxxxxxxxxxxx") | |
| llm = { | |
| "tenant_id": current_user.id, | |
| "llm_factory": factory, | |
| "model_type": req["model_type"], | |
| "llm_name": llm_name, | |
| "api_base": req.get("api_base", ""), | |
| "api_key": api_key | |
| } | |
| msg = "" | |
| if llm["model_type"] == LLMType.EMBEDDING.value: | |
| mdl = EmbeddingModel[factory]( | |
| key=llm['api_key'], | |
| model_name=llm["llm_name"], | |
| base_url=llm["api_base"]) | |
| try: | |
| arr, tc = mdl.encode(["Test if the api key is available"]) | |
| if len(arr[0]) == 0 or tc == 0: | |
| raise Exception("Fail") | |
| except Exception as e: | |
| msg += f"\nFail to access embedding model({llm['llm_name']})." + str(e) | |
| elif llm["model_type"] == LLMType.CHAT.value: | |
| mdl = ChatModel[factory]( | |
| key=llm['api_key'], | |
| model_name=llm["llm_name"], | |
| base_url=llm["api_base"] | |
| ) | |
| try: | |
| m, tc = mdl.chat(None, [{"role": "user", "content": "Hello! How are you doing!"}], { | |
| "temperature": 0.9}) | |
| if not tc: | |
| raise Exception(m) | |
| except Exception as e: | |
| msg += f"\nFail to access model({llm['llm_name']})." + str( | |
| e) | |
| elif llm["model_type"] == LLMType.RERANK: | |
| mdl = RerankModel[factory]( | |
| key=llm["api_key"], | |
| model_name=llm["llm_name"], | |
| base_url=llm["api_base"] | |
| ) | |
| try: | |
| arr, tc = mdl.similarity("Hello~ Ragflower!", ["Hi, there!"]) | |
| if len(arr) == 0 or tc == 0: | |
| raise Exception("Not known.") | |
| except Exception as e: | |
| msg += f"\nFail to access model({llm['llm_name']})." + str( | |
| e) | |
| elif llm["model_type"] == LLMType.IMAGE2TEXT.value: | |
| mdl = CvModel[factory]( | |
| key=llm["api_key"], | |
| model_name=llm["llm_name"], | |
| base_url=llm["api_base"] | |
| ) | |
| try: | |
| img_url = ( | |
| "https://upload.wikimedia.org/wikipedia/comm" | |
| "ons/thumb/d/dd/Gfp-wisconsin-madison-the-nature-boardwalk.jpg/256" | |
| "0px-Gfp-wisconsin-madison-the-nature-boardwalk.jpg" | |
| ) | |
| res = requests.get(img_url) | |
| if res.status_code == 200: | |
| m, tc = mdl.describe(res.content) | |
| if not tc: | |
| raise Exception(m) | |
| else: | |
| pass | |
| except Exception as e: | |
| msg += f"\nFail to access model({llm['llm_name']})." + str(e) | |
| elif llm["model_type"] == LLMType.TTS: | |
| mdl = TTSModel[factory]( | |
| key=llm["api_key"], model_name=llm["llm_name"], base_url=llm["api_base"] | |
| ) | |
| try: | |
| for resp in mdl.tts("Hello~ Ragflower!"): | |
| pass | |
| except RuntimeError as e: | |
| msg += f"\nFail to access model({llm['llm_name']})." + str(e) | |
| else: | |
| # TODO: check other type of models | |
| pass | |
| if msg: | |
| return get_data_error_result(retmsg=msg) | |
| if not TenantLLMService.filter_update( | |
| [TenantLLM.tenant_id == current_user.id, TenantLLM.llm_factory == factory, TenantLLM.llm_name == llm["llm_name"]], llm): | |
| TenantLLMService.save(**llm) | |
| return get_json_result(data=True) | |
| def delete_llm(): | |
| req = request.json | |
| TenantLLMService.filter_delete( | |
| [TenantLLM.tenant_id == current_user.id, TenantLLM.llm_factory == req["llm_factory"], TenantLLM.llm_name == req["llm_name"]]) | |
| return get_json_result(data=True) | |
| def delete_factory(): | |
| req = request.json | |
| TenantLLMService.filter_delete( | |
| [TenantLLM.tenant_id == current_user.id, TenantLLM.llm_factory == req["llm_factory"]]) | |
| return get_json_result(data=True) | |
| def my_llms(): | |
| try: | |
| res = {} | |
| for o in TenantLLMService.get_my_llms(current_user.id): | |
| if o["llm_factory"] not in res: | |
| res[o["llm_factory"]] = { | |
| "tags": o["tags"], | |
| "llm": [] | |
| } | |
| res[o["llm_factory"]]["llm"].append({ | |
| "type": o["model_type"], | |
| "name": o["llm_name"], | |
| "used_token": o["used_tokens"] | |
| }) | |
| return get_json_result(data=res) | |
| except Exception as e: | |
| return server_error_response(e) | |
| def list_app(): | |
| self_deploied = ["Youdao","FastEmbed", "BAAI", "Ollama", "Xinference", "LocalAI", "LM-Studio"] | |
| weighted = ["Youdao","FastEmbed", "BAAI"] if LIGHTEN != 0 else [] | |
| model_type = request.args.get("model_type") | |
| try: | |
| objs = TenantLLMService.query(tenant_id=current_user.id) | |
| facts = set([o.to_dict()["llm_factory"] for o in objs if o.api_key]) | |
| llms = LLMService.get_all() | |
| llms = [m.to_dict() | |
| for m in llms if m.status == StatusEnum.VALID.value and m.fid not in weighted] | |
| for m in llms: | |
| m["available"] = m["fid"] in facts or m["llm_name"].lower() == "flag-embedding" or m["fid"] in self_deploied | |
| llm_set = set([m["llm_name"]+"@"+m["fid"] for m in llms]) | |
| for o in objs: | |
| if not o.api_key:continue | |
| if o.llm_name+"@"+o.llm_factory in llm_set:continue | |
| llms.append({"llm_name": o.llm_name, "model_type": o.model_type, "fid": o.llm_factory, "available": True}) | |
| res = {} | |
| for m in llms: | |
| if model_type and m["model_type"].find(model_type)<0: | |
| continue | |
| if m["fid"] not in res: | |
| res[m["fid"]] = [] | |
| res[m["fid"]].append(m) | |
| return get_json_result(data=res) | |
| except Exception as e: | |
| return server_error_response(e) | |