mirror of
https://github.com/zhayujie/chatgpt-on-wechat.git
synced 2026-04-26 03:24:09 +08:00
feat: 增加智谱chatglm4模型支持
This commit is contained in:
@@ -52,4 +52,8 @@ def create_bot(bot_type):
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from bot.gemini.google_gemini_bot import GoogleGeminiBot
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from bot.gemini.google_gemini_bot import GoogleGeminiBot
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return GoogleGeminiBot()
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return GoogleGeminiBot()
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elif bot_type == const.CHATGLM:
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from bot.zhipu.chat_glm_bot import ChatGLMBot
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return ChatGLMBot()
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raise RuntimeError
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raise RuntimeError
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155
bot/zhipu/chat_glm_bot.py
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155
bot/zhipu/chat_glm_bot.py
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@@ -0,0 +1,155 @@
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# encoding:utf-8
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import time
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import openai
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import openai.error
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import requests
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from bot.bot import Bot
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from bot.zhipu.chat_glm_session import ChatGLMSession
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from bot.openai.open_ai_image import OpenAIImage
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from bot.session_manager import SessionManager
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from bridge.context import ContextType
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from bridge.reply import Reply, ReplyType
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from common.log import logger
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# from common.token_bucket import TokenBucket
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from config import conf, load_config
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from zhipuai import ZhipuAI
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# ZhipuAI对话模型API
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class ChatGLMBot(Bot):
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def __init__(self):
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super().__init__()
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# set the default api_key
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self.api_key = conf().get("zhipu_ai_api_key")
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if conf().get("zhipu_ai_api_base"):
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openai.api_base = conf().get("zhipu_ai_api_base")
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# if conf().get("rate_limit_chatgpt"):
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# self.tb4chatgpt = TokenBucket(conf().get("rate_limit_chatgpt", 20))
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self.sessions = SessionManager(ChatGLMSession, model=conf().get("model") or "chatglm")
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self.args = {
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"model": "glm-4", # 对话模型的名称
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"temperature": conf().get("temperature", 0.9), # 值在[0,1]之间,越大表示回复越具有不确定性
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# "max_tokens":4096, # 回复最大的字符数
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"top_p": conf().get("top_p", 0.7),
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# "frequency_penalty": conf().get("frequency_penalty", 0.0), # [-2,2]之间,该值越大则更倾向于产生不同的内容
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# "presence_penalty": conf().get("presence_penalty", 0.0), # [-2,2]之间,该值越大则更倾向于产生不同的内容
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# "request_timeout": conf().get("request_timeout", None), # 请求超时时间,openai接口默认设置为600,对于难问题一般需要较长时间
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# "timeout": conf().get("request_timeout", None), # 重试超时时间,在这个时间内,将会自动重试
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}
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self.client = ZhipuAI(api_key=self.api_key)
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def reply(self, query, context=None):
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# acquire reply content
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if context.type == ContextType.TEXT:
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logger.info("[CHATGLM] query={}".format(query))
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session_id = context["session_id"]
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reply = None
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clear_memory_commands = conf().get("clear_memory_commands", ["#清除记忆"])
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if query in clear_memory_commands:
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self.sessions.clear_session(session_id)
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reply = Reply(ReplyType.INFO, "记忆已清除")
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elif query == "#清除所有":
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self.sessions.clear_all_session()
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reply = Reply(ReplyType.INFO, "所有人记忆已清除")
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elif query == "#更新配置":
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load_config()
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reply = Reply(ReplyType.INFO, "配置已更新")
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if reply:
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return reply
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session = self.sessions.session_query(query, session_id)
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logger.debug("[CHATGLM] session query={}".format(session.messages))
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api_key = context.get("openai_api_key") or openai.api_key
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model = context.get("gpt_model")
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new_args = None
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if model:
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new_args = self.args.copy()
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new_args["model"] = model
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# if context.get('stream'):
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# # reply in stream
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# return self.reply_text_stream(query, new_query, session_id)
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reply_content = self.reply_text(session, api_key, args=new_args)
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logger.debug(
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"[CHATGLM] new_query={}, session_id={}, reply_cont={}, completion_tokens={}".format(
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session.messages,
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session_id,
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reply_content["content"],
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reply_content["completion_tokens"],
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)
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)
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if reply_content["completion_tokens"] == 0 and len(reply_content["content"]) > 0:
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reply = Reply(ReplyType.ERROR, reply_content["content"])
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elif reply_content["completion_tokens"] > 0:
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self.sessions.session_reply(reply_content["content"], session_id, reply_content["total_tokens"])
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reply = Reply(ReplyType.TEXT, reply_content["content"])
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else:
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reply = Reply(ReplyType.ERROR, reply_content["content"])
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logger.debug("[CHATGLM] reply {} used 0 tokens.".format(reply_content))
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return reply
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else:
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reply = Reply(ReplyType.ERROR, "Bot不支持处理{}类型的消息".format(context.type))
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return reply
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def reply_text(self, session: ChatGLMSession, api_key=None, args=None, retry_count=0) -> dict:
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"""
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call openai's ChatCompletion to get the answer
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:param session: a conversation session
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:param session_id: session id
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:param retry_count: retry count
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:return: {}
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"""
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try:
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# if conf().get("rate_limit_chatgpt") and not self.tb4chatgpt.get_token():
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# raise openai.error.RateLimitError("RateLimitError: rate limit exceeded")
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# if api_key == None, the default openai.api_key will be used
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if args is None:
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args = self.args
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# response = openai.ChatCompletion.create(api_key=api_key, messages=session.messages, **args)
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response = self.client.chat.completions.create(messages=session.messages, **args)
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# logger.debug("[CHATGLM] response={}".format(response))
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# logger.info("[CHATGLM] reply={}, total_tokens={}".format(response.choices[0]['message']['content'], response["usage"]["total_tokens"]))
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return {
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"total_tokens": response.usage.total_tokens,
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"completion_tokens": response.usage.completion_tokens,
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"content": response.choices[0].message.content,
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}
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except Exception as e:
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need_retry = retry_count < 2
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result = {"completion_tokens": 0, "content": "我现在有点累了,等会再来吧"}
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if isinstance(e, openai.error.RateLimitError):
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logger.warn("[CHATGLM] RateLimitError: {}".format(e))
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result["content"] = "提问太快啦,请休息一下再问我吧"
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if need_retry:
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time.sleep(20)
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elif isinstance(e, openai.error.Timeout):
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logger.warn("[CHATGLM] Timeout: {}".format(e))
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result["content"] = "我没有收到你的消息"
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if need_retry:
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time.sleep(5)
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elif isinstance(e, openai.error.APIError):
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logger.warn("[CHATGLM] Bad Gateway: {}".format(e))
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result["content"] = "请再问我一次"
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if need_retry:
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time.sleep(10)
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elif isinstance(e, openai.error.APIConnectionError):
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logger.warn("[CHATGLM] APIConnectionError: {}".format(e))
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result["content"] = "我连接不到你的网络"
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if need_retry:
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time.sleep(5)
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else:
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logger.exception("[CHATGLM] Exception: {}".format(e), e)
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need_retry = False
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self.sessions.clear_session(session.session_id)
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if need_retry:
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logger.warn("[CHATGLM] 第{}次重试".format(retry_count + 1))
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return self.reply_text(session, api_key, args, retry_count + 1)
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else:
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return result
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48
bot/zhipu/chat_glm_session.py
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48
bot/zhipu/chat_glm_session.py
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from bot.session_manager import Session
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from common.log import logger
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class ChatGLMSession(Session):
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def __init__(self, session_id, system_prompt=None, model="glm-4"):
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super().__init__(session_id, system_prompt)
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self.model = model
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self.reset()
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def discard_exceeding(self, max_tokens, cur_tokens=None):
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precise = True
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try:
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cur_tokens = self.calc_tokens()
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except Exception as e:
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precise = False
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if cur_tokens is None:
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raise e
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logger.debug("Exception when counting tokens precisely for query: {}".format(e))
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while cur_tokens > max_tokens:
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if len(self.messages) > 2:
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self.messages.pop(1)
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elif len(self.messages) == 2 and self.messages[1]["role"] == "assistant":
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self.messages.pop(1)
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if precise:
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cur_tokens = self.calc_tokens()
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else:
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cur_tokens = cur_tokens - max_tokens
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break
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elif len(self.messages) == 2 and self.messages[1]["role"] == "user":
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logger.warn("user message exceed max_tokens. total_tokens={}".format(cur_tokens))
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break
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else:
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logger.debug("max_tokens={}, total_tokens={}, len(messages)={}".format(max_tokens, cur_tokens, len(self.messages)))
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break
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if precise:
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cur_tokens = self.calc_tokens()
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else:
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cur_tokens = cur_tokens - max_tokens
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return cur_tokens
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def calc_tokens(self):
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return num_tokens_from_messages(self.messages, self.model)
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def num_tokens_from_messages(messages, model):
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tokens = 0
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for msg in messages:
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tokens += len(msg["content"])
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return tokens
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@@ -31,6 +31,8 @@ class Bridge(object):
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self.btype["chat"] = const.QWEN
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self.btype["chat"] = const.QWEN
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if model_type in [const.GEMINI]:
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if model_type in [const.GEMINI]:
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self.btype["chat"] = const.GEMINI
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self.btype["chat"] = const.GEMINI
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if model_type in [const.CHATGLM]:
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self.btype["chat"] = const.CHATGLM
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if conf().get("use_linkai") and conf().get("linkai_api_key"):
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if conf().get("use_linkai") and conf().get("linkai_api_key"):
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self.btype["chat"] = const.LINKAI
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self.btype["chat"] = const.LINKAI
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@@ -8,6 +8,7 @@ LINKAI = "linkai"
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CLAUDEAI = "claude"
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CLAUDEAI = "claude"
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QWEN = "qwen"
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QWEN = "qwen"
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GEMINI = "gemini"
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GEMINI = "gemini"
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CHATGLM = "chatglm"
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# model
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# model
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GPT35 = "gpt-3.5-turbo"
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GPT35 = "gpt-3.5-turbo"
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@@ -19,7 +20,7 @@ TTS_1 = "tts-1"
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TTS_1_HD = "tts-1-hd"
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TTS_1_HD = "tts-1-hd"
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MODEL_LIST = ["gpt-3.5-turbo", "gpt-3.5-turbo-16k", "gpt-4", "wenxin", "wenxin-4", "xunfei", "claude", "gpt-4-turbo",
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MODEL_LIST = ["gpt-3.5-turbo", "gpt-3.5-turbo-16k", "gpt-4", "wenxin", "wenxin-4", "xunfei", "claude", "gpt-4-turbo",
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"gpt-4-turbo-preview", "gpt-4-1106-preview", GPT4_TURBO_PREVIEW, QWEN, GEMINI]
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"gpt-4-turbo-preview", "gpt-4-1106-preview", GPT4_TURBO_PREVIEW, QWEN, GEMINI, CHATGLM]
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# channel
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# channel
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FEISHU = "feishu"
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FEISHU = "feishu"
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@@ -155,6 +155,10 @@ available_setting = {
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"linkai_api_key": "",
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"linkai_api_key": "",
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"linkai_app_code": "",
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"linkai_app_code": "",
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"linkai_api_base": "https://api.link-ai.chat", # linkAI服务地址,若国内无法访问或延迟较高可改为 https://api.link-ai.tech
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"linkai_api_base": "https://api.link-ai.chat", # linkAI服务地址,若国内无法访问或延迟较高可改为 https://api.link-ai.tech
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# # 智谱AI
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"zhipu_ai_api_key": "",
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"zhipu_ai_api_base": "https://open.bigmodel.cn/api/paas/v4",
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}
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}
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@@ -37,3 +37,6 @@ linkai
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# dingtalk
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# dingtalk
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dingtalk_stream
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dingtalk_stream
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# zhipu
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zhipuai
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Reference in New Issue
Block a user