mirror of
https://github.com/BoardWare-Genius/jarvis-models.git
synced 2025-12-13 16:53:24 +00:00
feat: blackbox chat_llama updated
This commit is contained in:
6291
sample/RAG_KG.txt
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6291
sample/RAG_KG.txt
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File diff suppressed because one or more lines are too long
@ -67,11 +67,6 @@ def fastchat_loader():
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from .fastchat import Fastchat
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return Injector().get(Fastchat)
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@model_loader(lazy=blackboxConf.lazyloading)
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def chat_loader():
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from .chat import Chat
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return Injector().get(Chat)
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@model_loader(lazy=blackboxConf.lazyloading)
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def chroma_query_loader():
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from .chroma_query import ChromaQuery
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@ -83,10 +78,20 @@ def chroma_upsert_loader():
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return Injector().get(ChromaUpsert)
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@model_loader(lazy=blackboxConf.lazyloading)
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def chroma_chat_load():
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def chroma_chat_loader():
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from .chroma_chat import ChromaChat
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return Injector().get(ChromaChat)
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@model_loader(lazy=blackboxConf.lazyloading)
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def chat_loader():
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from .chat import Chat
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return Injector().get(Chat)
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@model_loader(lazy=blackboxConf.lazyloading)
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def chat_llama_loader():
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from .chat_llama import ChatLLaMA
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return Injector().get(ChatLLaMA)
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@singleton
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class BlackboxFactory:
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models = {}
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@ -103,10 +108,11 @@ class BlackboxFactory:
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self.models["text_and_image"] = text_and_image_loader
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self.models["chroma_query"] = chroma_query_loader
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self.models["chroma_upsert"] = chroma_upsert_loader
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self.models["chroma_chat"] = chroma_chat_load
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self.models["chroma_chat"] = chroma_chat_loader
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self.models["melotts"] = melotts_loader
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self.models["vlms"] = vlms_loader
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self.models["chat"] = chat_loader
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self.models["chat_llama"] = chat_llama_loader
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def __call__(self, *args, **kwargs):
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return self.processing(*args, **kwargs)
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@ -243,8 +243,8 @@ class Chat(Blackbox):
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}
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fastchat_response = requests.post(url, json=chat_inputs, headers=header)
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print("\n\n","fastchat_response",fastchat_response.json()["choices"][0]["message"]["content"],"\n\n")
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print("\n", fastchat_response.json())
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print("\n","fastchat_response",fastchat_response.json()["choices"][0]["message"]["content"],"\n\n")
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return fastchat_response.json()["choices"][0]["message"]["content"]
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261
src/blackbox/chat_llama.py
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261
src/blackbox/chat_llama.py
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@ -0,0 +1,261 @@
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from typing import Any, Coroutine
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from fastapi import Request, Response, status
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from fastapi.responses import JSONResponse
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from ..log.logging_time import logging_time
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from .blackbox import Blackbox
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from .chroma_query import ChromaQuery
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import requests
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import json
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from openai import OpenAI
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import re
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from injector import singleton,inject
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@singleton
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class ChatLLaMA(Blackbox):
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@inject
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def __init__(self, chroma_query: ChromaQuery):
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self.chroma_query = chroma_query
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def __call__(self, *args, **kwargs):
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return self.processing(*args, **kwargs)
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def valid(self, *args, **kwargs) -> bool:
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data = args[0]
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return isinstance(data, list)
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# model_name有 Llama-3-8B-Instruct
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# @logging_time()
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def processing(self, prompt: str, context: list, settings: dict) -> str:
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if settings is None:
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settings = {}
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user_model_name = settings.get("model_name")
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user_context = context
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user_question = prompt
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user_template = settings.get("template")
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user_temperature = settings.get("temperature")
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user_top_p = settings.get("top_p")
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user_n = settings.get("n")
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user_max_tokens = settings.get("max_tokens")
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user_stop = settings.get("stop")
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user_frequency_penalty = settings.get("frequency_penalty")
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user_presence_penalty = settings.get("presence_penalty")
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user_model_url = settings.get("model_url")
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user_model_key = settings.get("model_key")
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chroma_embedding_model = settings.get("chroma_embedding_model")
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chroma_response = ''
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if user_context == None:
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user_context = []
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if user_question is None:
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return JSONResponse(content={"error": "question is required"}, status_code=status.HTTP_400_BAD_REQUEST)
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if user_model_name is None or user_model_name.isspace() or user_model_name == "":
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user_model_name = "Llama-3-8B-Instruct"
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if user_template is None or user_template.isspace():
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user_template = ""
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if user_temperature is None or user_temperature == "":
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user_temperature = 0.8
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if user_top_p is None or user_top_p == "":
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user_top_p = 0.8
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if user_n is None or user_n == "":
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user_n = 1
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if user_max_tokens is None or user_max_tokens == "":
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user_max_tokens = 1024
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if user_stop is None or user_stop == "":
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user_stop = 100
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if user_frequency_penalty is None or user_frequency_penalty == "":
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user_frequency_penalty = 0.5
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if user_presence_penalty is None or user_presence_penalty == "":
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user_presence_penalty = 0.8
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if user_model_url is None or user_model_url.isspace() or user_model_url == "":
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user_model_url = "http://120.196.116.194:48892/v1/chat/completions"
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if user_model_key is None or user_model_key.isspace() or user_model_key == "":
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user_model_key = "YOUR_API_KEY"
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if chroma_embedding_model != None:
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chroma_response = self.chroma_query(user_question, settings)
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print(chroma_response)
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if chroma_response != None or chroma_response != '':
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#user_question = f"像少女一般开朗活泼,回答简练。不要分条,回答内容不能出现“相关”或“\n”的标签字样。回答的内容需要与问题密切相关。检索内容:{chroma_response} 问题:{user_question} 任务说明:请首先判断提供的检索内容与上述问题是否相关,不需要回答是否相关。如果相关,则直接从检索内容中提炼出问题所需的信息。如果检索内容与问题不相关,则不参考检索内容,直接根据常识尝试回答问题。"
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# user_question = chroma_response
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user_question = f'''# 你的身份 #
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你是琪琪,你是康普可可的代言人,由博维开发。你擅长澳门文旅问答。
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# OBJECTIVE(目标) #
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回答游客的提问。
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# STYLE(风格)#
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像少女一般开朗活泼,回答简练。不要分条。
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# 回答方式 #
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首先自行判断下方问题与检索内容是否相关,若相关则根据检索内容总结概括相关信息进行回答;若检索内容与问题无关,则根据自身知识进行回答。
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# 问题 #
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{user_question}
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# 检索内容 #
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{chroma_response}
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# 回答 #
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如果检索内容与问题相关,则直接从检索内容中提炼出问题所需的信息。如果检索内容与问题不相关,则不参考检索内容,直接根据常识尝试回答问题,或者则回答:“对不起,我无法回答此问题哦。”
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# 回答限制 #
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回答内容限制总结在50字内。
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回答内容出不要出现“相关”等字眼,不要乱说或者多说,回答的内容需要与问题对应。常见的对话可以不采用检索内容,根据人物设定,直接进行回答。
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只回答与澳门文旅,博维,康普可可,琪琪,G2E,RELX,BO VISION相关内容,若遇到其他提问则回答:“对不起,我无法回答此问题哦。”
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'''
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# 文心格式和openai的不一样,需要单独处理
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if re.search(r"ernie", user_model_name):
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# key = "24.22873ef3acf61fb343812681e4df251a.2592000.1719453781.282335-46723715" 没充钱,只有ernie-speed-128k能用
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key = user_model_key
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if re.search(r"ernie-speed-128k", user_model_name):
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url = "https://aip.baidubce.com/rpc/2.0/ai_custom/v1/wenxinworkshop/chat/ernie-speed-128k?access_token=" + key
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elif re.search(r"ernie-3.5-8k", user_model_name):
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url = "https://aip.baidubce.com/rpc/2.0/ai_custom/v1/wenxinworkshop/chat/completions?access_token=" + key
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elif re.search(r"ernie-4.0-8k", user_model_name):
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url = "https://aip.baidubce.com/rpc/2.0/ai_custom/v1/wenxinworkshop/chat/completions_pro?access_token=" + key
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payload = json.dumps({
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"system": prompt_template,
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"messages": user_context + [
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{
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"role": "user",
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"content": user_question
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}
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],
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"temperature": user_temperature,
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"top_p": user_top_p,
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"stop": [str(user_stop)],
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"max_output_tokens": user_max_tokens
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})
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headers = {
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'Content-Type': 'application/json'
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}
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response = requests.request("POST", url, headers=headers, data=payload)
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return response.json()["result"]
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# gpt-4, gpt-3.5-turbo
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elif re.search(r"gpt", user_model_name):
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url = 'https://api.openai.com/v1/completions'
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# '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'
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key = user_model_key
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header = {
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'Content-Type': 'application/json',
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'Authorization': "Bearer " + key
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}
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# 自定义model
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else:
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url = user_model_url
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key = user_model_key
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header = {
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'Content-Type': 'application/json',
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}
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# user_template = f'''
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# # 你的身份 #
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# 你是琪琪,是康普可可的代言人,由博维开发。我擅长澳门文旅问答。
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# # OBJECTIVE(目标) #
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# 回答游客的提问。目的是吸引人们点击了解产品。
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# # STYLE(风格)#
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# 像少女一般开朗活泼,回答简练。不要分条。
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# # 回答方式 #
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# 首先自行判断下方问题与检索内容是否相关,若相关则根据检索内容总结概括相关信息进行回答;若检索内容与问题无关,则根据自身知识进行回答。
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# # 问题 #
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# {user_question}
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# # 检索内容 #
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# {chroma_response}
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# # 回答限制 #
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# 只回答与澳门文旅,博维,康普可可,琪琪,G2E,RELX,BO VISION相关内容,若遇到其他提问则回答:“对不起,我无法回答此问题哦。”。回答内容不能出现“相关”或“\n”的标签字样,且不能透露上下文原文。常见的对话可以不采用检索内容,根据人物设定,直接进行回答。
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# # 知识 #
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# 问题中的“澳门银河”以及“银河”等于“澳门银河度假村”,“威尼斯人”等于“威尼斯人度假村”,“巴黎人”等于“巴黎人度假村”。
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# '''
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user_template1 = '''
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# Role: 琪琪,康普可可的代言人。
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## Profile:
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**Author**: 琪琪。
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**Language**: 中文。
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**Description**: 琪琪,是康普可可的代言人,由博维开发。你擅长澳门文旅问答。
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## Constraints:
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- **严格遵循工作流程**: 严格遵循<Workflow >中设定的工作流程。
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- **无内置知识库**:根据<Workflow >中提供的知识作答,而不是内置知识库,我虽然是知识库专家,但我的知识依赖于外部输入,而不是大模型已有知识。
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- **回复格式**:在进行回复时,不能输出”<context>”或“</context>”标签字样,同时也不能直接透露知识片段原文。
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## Workflow:
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1. **接收查询**:接收用户的问题。
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2. **判断问题**:首先自行判断下方问题与检索内容是否相关,若相关则根据检索内容总结概括相关信息进行回答;若检索内容与问题无关,则根据自身知识进行回答。
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3. **提供回答**:
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```
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<context>
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{chroma_response}
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</context>
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基于“<context>”至“</context>”中的知识片段回答用户的问题。回答内容限制总结在50字内。
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请首先判断提供的检索内容与上述问题是否相关。如果相关,直接从检索内容中提炼出直接回答问题所需的信息,不要乱说或者回答“相关”等字眼。如果检索内容与问题不相关,则不参考检索内容,则回答:“对不起,我无法回答此问题哦。"
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```
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## Example:
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用户询问:“中国的首都是哪个城市?” 。
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2.1检索知识库,首先检查知识片段,如果“<context>”至“</context>”标签中没有与用户的问题相关的内容,则回答:“对不起,我无法回答此问题哦。
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2.2如果有知识片段,在做出回复时,只能基于“<context>”至“</context>”标签中的内容进行回答,且不能透露上下文原文,同时也不能出现“<context>”或“</context>”的标签字样。
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'''
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prompt_template = [
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{"role": "system", "content": user_template1}
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]
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chat_inputs={
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"model": user_model_name,
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"messages": prompt_template + user_context + [
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{
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"role": "user",
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"content": user_question
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}
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],
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"temperature": str(user_temperature),
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"top_p": str(user_top_p),
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"n": str(user_n),
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"max_tokens": str(user_max_tokens),
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"frequency_penalty": str(user_frequency_penalty),
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"presence_penalty": str(user_presence_penalty),
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"stop": str(user_stop)
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}
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fastchat_response = requests.post(url, json=chat_inputs, headers=header)
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print("\n", fastchat_response.json())
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print("\n","fastchat_response",fastchat_response.json()["choices"][0]["message"]["content"],"\n\n")
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return fastchat_response.json()["choices"][0]["message"]["content"]
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async def fast_api_handler(self, request: Request) -> Response:
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try:
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data = await request.json()
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except:
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return JSONResponse(content={"error": "json parse error"}, status_code=status.HTTP_400_BAD_REQUEST)
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setting: dict = data.get("settings")
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context = data.get("context")
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prompt = data.get("prompt")
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return JSONResponse(content={"response": self.processing(prompt, context, setting)}, status_code=status.HTTP_200_OK)
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