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llm_app.py 13KB

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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 json
  17. from flask import request
  18. from flask_login import login_required, current_user
  19. from api.db.services.llm_service import LLMFactoriesService, TenantLLMService, LLMService
  20. from api.settings import LIGHTEN
  21. from api.utils.api_utils import server_error_response, get_data_error_result, validate_request
  22. from api.db import StatusEnum, LLMType
  23. from api.db.db_models import TenantLLM
  24. from api.utils.api_utils import get_json_result
  25. from rag.llm import EmbeddingModel, ChatModel, RerankModel, CvModel, TTSModel
  26. import requests
  27. @manager.route('/factories', methods=['GET'])
  28. @login_required
  29. def factories():
  30. try:
  31. fac = LLMFactoriesService.get_all()
  32. fac = [f.to_dict() for f in fac if f.name not in ["Youdao", "FastEmbed", "BAAI"]]
  33. llms = LLMService.get_all()
  34. mdl_types = {}
  35. for m in llms:
  36. if m.status != StatusEnum.VALID.value:
  37. continue
  38. if m.fid not in mdl_types:
  39. mdl_types[m.fid] = set([])
  40. mdl_types[m.fid].add(m.model_type)
  41. for f in fac:
  42. f["model_types"] = list(mdl_types.get(f["name"], [LLMType.CHAT, LLMType.EMBEDDING, LLMType.RERANK,
  43. LLMType.IMAGE2TEXT, LLMType.SPEECH2TEXT, LLMType.TTS]))
  44. return get_json_result(data=fac)
  45. except Exception as e:
  46. return server_error_response(e)
  47. @manager.route('/set_api_key', methods=['POST'])
  48. @login_required
  49. @validate_request("llm_factory", "api_key")
  50. def set_api_key():
  51. req = request.json
  52. # test if api key works
  53. chat_passed, embd_passed, rerank_passed = False, False, False
  54. factory = req["llm_factory"]
  55. msg = ""
  56. for llm in LLMService.query(fid=factory):
  57. if not embd_passed and llm.model_type == LLMType.EMBEDDING.value:
  58. mdl = EmbeddingModel[factory](
  59. req["api_key"], llm.llm_name, base_url=req.get("base_url"))
  60. try:
  61. arr, tc = mdl.encode(["Test if the api key is available"])
  62. if len(arr[0]) == 0:
  63. raise Exception("Fail")
  64. embd_passed = True
  65. except Exception as e:
  66. msg += f"\nFail to access embedding model({llm.llm_name}) using this api key." + str(e)
  67. elif not chat_passed and llm.model_type == LLMType.CHAT.value:
  68. mdl = ChatModel[factory](
  69. req["api_key"], llm.llm_name, base_url=req.get("base_url"))
  70. try:
  71. m, tc = mdl.chat(None, [{"role": "user", "content": "Hello! How are you doing!"}],
  72. {"temperature": 0.9,'max_tokens':50})
  73. if m.find("**ERROR**") >=0:
  74. raise Exception(m)
  75. chat_passed = True
  76. except Exception as e:
  77. msg += f"\nFail to access model({llm.llm_name}) using this api key." + str(
  78. e)
  79. elif not rerank_passed and llm.model_type == LLMType.RERANK:
  80. mdl = RerankModel[factory](
  81. req["api_key"], llm.llm_name, base_url=req.get("base_url"))
  82. try:
  83. arr, tc = mdl.similarity("What's the weather?", ["Is it sunny today?"])
  84. if len(arr) == 0 or tc == 0:
  85. raise Exception("Fail")
  86. rerank_passed = True
  87. print(f'passed model rerank{llm.llm_name}',flush=True)
  88. except Exception as e:
  89. msg += f"\nFail to access model({llm.llm_name}) using this api key." + str(
  90. e)
  91. if any([embd_passed, chat_passed, rerank_passed]):
  92. msg = ''
  93. break
  94. if msg:
  95. return get_data_error_result(retmsg=msg)
  96. llm_config = {
  97. "api_key": req["api_key"],
  98. "api_base": req.get("base_url", "")
  99. }
  100. for n in ["model_type", "llm_name"]:
  101. if n in req:
  102. llm_config[n] = req[n]
  103. for llm in LLMService.query(fid=factory):
  104. if not TenantLLMService.filter_update(
  105. [TenantLLM.tenant_id == current_user.id,
  106. TenantLLM.llm_factory == factory,
  107. TenantLLM.llm_name == llm.llm_name],
  108. llm_config):
  109. TenantLLMService.save(
  110. tenant_id=current_user.id,
  111. llm_factory=factory,
  112. llm_name=llm.llm_name,
  113. model_type=llm.model_type,
  114. api_key=llm_config["api_key"],
  115. api_base=llm_config["api_base"]
  116. )
  117. return get_json_result(data=True)
  118. @manager.route('/add_llm', methods=['POST'])
  119. @login_required
  120. @validate_request("llm_factory")
  121. def add_llm():
  122. req = request.json
  123. factory = req["llm_factory"]
  124. def apikey_json(keys):
  125. nonlocal req
  126. return json.dumps({k: req.get(k, "") for k in keys})
  127. if factory == "VolcEngine":
  128. # For VolcEngine, due to its special authentication method
  129. # Assemble ark_api_key endpoint_id into api_key
  130. llm_name = req["llm_name"]
  131. api_key = apikey_json(["ark_api_key", "endpoint_id"])
  132. elif factory == "Tencent Hunyuan":
  133. req["api_key"] = apikey_json(["hunyuan_sid", "hunyuan_sk"])
  134. return set_api_key()
  135. elif factory == "Tencent Cloud":
  136. req["api_key"] = apikey_json(["tencent_cloud_sid", "tencent_cloud_sk"])
  137. elif factory == "Bedrock":
  138. # For Bedrock, due to its special authentication method
  139. # Assemble bedrock_ak, bedrock_sk, bedrock_region
  140. llm_name = req["llm_name"]
  141. api_key = apikey_json(["bedrock_ak", "bedrock_sk", "bedrock_region"])
  142. elif factory == "LocalAI":
  143. llm_name = req["llm_name"]+"___LocalAI"
  144. api_key = "xxxxxxxxxxxxxxx"
  145. elif factory == "HuggingFace":
  146. llm_name = req["llm_name"]+"___HuggingFace"
  147. api_key = "xxxxxxxxxxxxxxx"
  148. elif factory == "OpenAI-API-Compatible":
  149. llm_name = req["llm_name"]+"___OpenAI-API"
  150. api_key = req.get("api_key","xxxxxxxxxxxxxxx")
  151. elif factory =="XunFei Spark":
  152. llm_name = req["llm_name"]
  153. if req["model_type"] == "chat":
  154. api_key = req.get("spark_api_password", "xxxxxxxxxxxxxxx")
  155. elif req["model_type"] == "tts":
  156. api_key = apikey_json(["spark_app_id", "spark_api_secret","spark_api_key"])
  157. elif factory == "BaiduYiyan":
  158. llm_name = req["llm_name"]
  159. api_key = apikey_json(["yiyan_ak", "yiyan_sk"])
  160. elif factory == "Fish Audio":
  161. llm_name = req["llm_name"]
  162. api_key = apikey_json(["fish_audio_ak", "fish_audio_refid"])
  163. elif factory == "Google Cloud":
  164. llm_name = req["llm_name"]
  165. api_key = apikey_json(["google_project_id", "google_region", "google_service_account_key"])
  166. elif factory == "Azure-OpenAI":
  167. llm_name = req["llm_name"]
  168. api_key = apikey_json(["api_key", "api_version"])
  169. else:
  170. llm_name = req["llm_name"]
  171. api_key = req.get("api_key", "xxxxxxxxxxxxxxx")
  172. llm = {
  173. "tenant_id": current_user.id,
  174. "llm_factory": factory,
  175. "model_type": req["model_type"],
  176. "llm_name": llm_name,
  177. "api_base": req.get("api_base", ""),
  178. "api_key": api_key
  179. }
  180. msg = ""
  181. if llm["model_type"] == LLMType.EMBEDDING.value:
  182. mdl = EmbeddingModel[factory](
  183. key=llm['api_key'],
  184. model_name=llm["llm_name"],
  185. base_url=llm["api_base"])
  186. try:
  187. arr, tc = mdl.encode(["Test if the api key is available"])
  188. if len(arr[0]) == 0 or tc == 0:
  189. raise Exception("Fail")
  190. except Exception as e:
  191. msg += f"\nFail to access embedding model({llm['llm_name']})." + str(e)
  192. elif llm["model_type"] == LLMType.CHAT.value:
  193. mdl = ChatModel[factory](
  194. key=llm['api_key'],
  195. model_name=llm["llm_name"],
  196. base_url=llm["api_base"]
  197. )
  198. try:
  199. m, tc = mdl.chat(None, [{"role": "user", "content": "Hello! How are you doing!"}], {
  200. "temperature": 0.9})
  201. if not tc:
  202. raise Exception(m)
  203. except Exception as e:
  204. msg += f"\nFail to access model({llm['llm_name']})." + str(
  205. e)
  206. elif llm["model_type"] == LLMType.RERANK:
  207. mdl = RerankModel[factory](
  208. key=llm["api_key"],
  209. model_name=llm["llm_name"],
  210. base_url=llm["api_base"]
  211. )
  212. try:
  213. arr, tc = mdl.similarity("Hello~ Ragflower!", ["Hi, there!"])
  214. if len(arr) == 0 or tc == 0:
  215. raise Exception("Not known.")
  216. except Exception as e:
  217. msg += f"\nFail to access model({llm['llm_name']})." + str(
  218. e)
  219. elif llm["model_type"] == LLMType.IMAGE2TEXT.value:
  220. mdl = CvModel[factory](
  221. key=llm["api_key"],
  222. model_name=llm["llm_name"],
  223. base_url=llm["api_base"]
  224. )
  225. try:
  226. img_url = (
  227. "https://upload.wikimedia.org/wikipedia/comm"
  228. "ons/thumb/d/dd/Gfp-wisconsin-madison-the-nature-boardwalk.jpg/256"
  229. "0px-Gfp-wisconsin-madison-the-nature-boardwalk.jpg"
  230. )
  231. res = requests.get(img_url)
  232. if res.status_code == 200:
  233. m, tc = mdl.describe(res.content)
  234. if not tc:
  235. raise Exception(m)
  236. else:
  237. pass
  238. except Exception as e:
  239. msg += f"\nFail to access model({llm['llm_name']})." + str(e)
  240. elif llm["model_type"] == LLMType.TTS:
  241. mdl = TTSModel[factory](
  242. key=llm["api_key"], model_name=llm["llm_name"], base_url=llm["api_base"]
  243. )
  244. try:
  245. for resp in mdl.tts("Hello~ Ragflower!"):
  246. pass
  247. except RuntimeError as e:
  248. msg += f"\nFail to access model({llm['llm_name']})." + str(e)
  249. else:
  250. # TODO: check other type of models
  251. pass
  252. if msg:
  253. return get_data_error_result(retmsg=msg)
  254. if not TenantLLMService.filter_update(
  255. [TenantLLM.tenant_id == current_user.id, TenantLLM.llm_factory == factory, TenantLLM.llm_name == llm["llm_name"]], llm):
  256. TenantLLMService.save(**llm)
  257. return get_json_result(data=True)
  258. @manager.route('/delete_llm', methods=['POST'])
  259. @login_required
  260. @validate_request("llm_factory", "llm_name")
  261. def delete_llm():
  262. req = request.json
  263. TenantLLMService.filter_delete(
  264. [TenantLLM.tenant_id == current_user.id, TenantLLM.llm_factory == req["llm_factory"], TenantLLM.llm_name == req["llm_name"]])
  265. return get_json_result(data=True)
  266. @manager.route('/delete_factory', methods=['POST'])
  267. @login_required
  268. @validate_request("llm_factory")
  269. def delete_factory():
  270. req = request.json
  271. TenantLLMService.filter_delete(
  272. [TenantLLM.tenant_id == current_user.id, TenantLLM.llm_factory == req["llm_factory"]])
  273. return get_json_result(data=True)
  274. @manager.route('/my_llms', methods=['GET'])
  275. @login_required
  276. def my_llms():
  277. try:
  278. res = {}
  279. for o in TenantLLMService.get_my_llms(current_user.id):
  280. if o["llm_factory"] not in res:
  281. res[o["llm_factory"]] = {
  282. "tags": o["tags"],
  283. "llm": []
  284. }
  285. res[o["llm_factory"]]["llm"].append({
  286. "type": o["model_type"],
  287. "name": o["llm_name"],
  288. "used_token": o["used_tokens"]
  289. })
  290. return get_json_result(data=res)
  291. except Exception as e:
  292. return server_error_response(e)
  293. @manager.route('/list', methods=['GET'])
  294. @login_required
  295. def list_app():
  296. self_deploied = ["Youdao","FastEmbed", "BAAI", "Ollama", "Xinference", "LocalAI", "LM-Studio"]
  297. weighted = ["Youdao","FastEmbed", "BAAI"] if not LIGHTEN else []
  298. model_type = request.args.get("model_type")
  299. try:
  300. objs = TenantLLMService.query(tenant_id=current_user.id)
  301. facts = set([o.to_dict()["llm_factory"] for o in objs if o.api_key])
  302. llms = LLMService.get_all()
  303. llms = [m.to_dict()
  304. for m in llms if m.status == StatusEnum.VALID.value and m.fid not in weighted]
  305. for m in llms:
  306. m["available"] = m["fid"] in facts or m["llm_name"].lower() == "flag-embedding" or m["fid"] in self_deploied
  307. llm_set = set([m["llm_name"] for m in llms])
  308. for o in objs:
  309. if not o.api_key:continue
  310. if o.llm_name in llm_set:continue
  311. llms.append({"llm_name": o.llm_name, "model_type": o.model_type, "fid": o.llm_factory, "available": True})
  312. res = {}
  313. for m in llms:
  314. if model_type and m["model_type"].find(model_type)<0:
  315. continue
  316. if m["fid"] not in res:
  317. res[m["fid"]] = []
  318. res[m["fid"]].append(m)
  319. return get_json_result(data=res)
  320. except Exception as e:
  321. return server_error_response(e)