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refactor: decouple chatgpt session

lanvent il y a 3 ans
Parent
commit
0c9753b7cd
3 fichiers modifiés avec 163 ajouts et 129 suppressions
  1. 10 129
      bot/chatgpt/chat_gpt_bot.py
  2. 76 0
      bot/chatgpt/chat_gpt_session.py
  3. 77 0
      bot/session_manager.py

+ 10 - 129
bot/chatgpt/chat_gpt_bot.py

@@ -1,7 +1,9 @@
 # encoding:utf-8
 
 from bot.bot import Bot
+from bot.chatgpt.chat_gpt_session import ChatGPTSession
 from bot.openai.open_ai_image import OpenAIImage
+from bot.session_manager import Session, SessionManager
 from bridge.context import ContextType
 from bridge.reply import Reply, ReplyType
 from config import conf, load_config
@@ -11,7 +13,6 @@ from common.expired_dict import ExpiredDict
 import openai
 import time
 
-
 # OpenAI对话模型API (可用)
 class ChatGPTBot(Bot,OpenAIImage):
     def __init__(self):
@@ -19,7 +20,7 @@ class ChatGPTBot(Bot,OpenAIImage):
         if conf().get('open_ai_api_base'):
             openai.api_base = conf().get('open_ai_api_base')
         proxy = conf().get('proxy')
-        self.sessions = SessionManager(model= conf().get("model") or "gpt-3.5-turbo")
+        self.sessions = SessionManager(ChatGPTSession, model= conf().get("model") or "gpt-3.5-turbo")
         if proxy:
             openai.proxy = proxy
         if conf().get('rate_limit_chatgpt'):
@@ -44,19 +45,19 @@ class ChatGPTBot(Bot,OpenAIImage):
                 reply = Reply(ReplyType.INFO, '配置已更新')
             if reply:
                 return reply
-            session = self.sessions.build_session_query(query, session_id)
-            logger.debug("[OPEN_AI] session query={}".format(session))
+            session = self.sessions.session_query(query, session_id)
+            logger.debug("[OPEN_AI] session query={}".format(session.messages))
 
             # if context.get('stream'):
             #     # reply in stream
             #     return self.reply_text_stream(query, new_query, session_id)
 
             reply_content = self.reply_text(session, session_id, 0)
-            logger.debug("[OPEN_AI] new_query={}, session_id={}, reply_cont={}, completion_tokens={}".format(session, session_id, reply_content["content"], reply_content["completion_tokens"]))
+            logger.debug("[OPEN_AI] new_query={}, session_id={}, reply_cont={}, completion_tokens={}".format(session.messages, session_id, reply_content["content"], reply_content["completion_tokens"]))
             if reply_content['completion_tokens'] == 0 and len(reply_content['content']) > 0:
                 reply = Reply(ReplyType.ERROR, reply_content['content'])
             elif reply_content["completion_tokens"] > 0:
-                self.sessions.save_session(reply_content["content"], session_id, reply_content["total_tokens"])
+                self.sessions.session_reply(reply_content["content"], session_id, reply_content["total_tokens"])
                 reply = Reply(ReplyType.TEXT, reply_content["content"])
             else:
                 reply = Reply(ReplyType.ERROR, reply_content['content'])
@@ -85,7 +86,7 @@ class ChatGPTBot(Bot,OpenAIImage):
             "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
         }
 
-    def reply_text(self, session, session_id, retry_count=0) -> dict:
+    def reply_text(self, session:ChatGPTSession, session_id, retry_count=0) -> dict:
         '''
         call openai's ChatCompletion to get the answer
         :param session: a conversation session
@@ -97,7 +98,7 @@ class ChatGPTBot(Bot,OpenAIImage):
             if conf().get('rate_limit_chatgpt') and not self.tb4chatgpt.get_token():
                 return {"completion_tokens": 0, "content": "提问太快啦,请休息一下再问我吧"}
             response = openai.ChatCompletion.create(
-                messages=session, **self.compose_args()
+                messages=session.messages, **self.compose_args()
             )
             # logger.info("[ChatGPT] reply={}, total_tokens={}".format(response.choices[0]['message']['content'], response["usage"]["total_tokens"]))
             return {"total_tokens": response["usage"]["total_tokens"],
@@ -128,7 +129,6 @@ class ChatGPTBot(Bot,OpenAIImage):
             return {"completion_tokens": 0, "content": "请再问我一次吧"}
 
 
-
 class AzureChatGPTBot(ChatGPTBot):
     def __init__(self):
         super().__init__()
@@ -139,123 +139,4 @@ class AzureChatGPTBot(ChatGPTBot):
         args = super().compose_args()
         args["engine"] = args["model"]
         del(args["model"])
-        return args
-
-class SessionManager(object):
-    def __init__(self, model = "gpt-3.5-turbo-0301"):
-        if conf().get('expires_in_seconds'):
-            sessions = ExpiredDict(conf().get('expires_in_seconds'))
-        else:
-            sessions = dict()
-        self.sessions = sessions
-        self.model = model
-
-    def build_session(self, session_id, system_prompt=None):
-        session = self.sessions.get(session_id, [])
-        if len(session) == 0:
-            if system_prompt is None:
-                system_prompt = conf().get("character_desc", "")
-            system_item = {'role': 'system', 'content': system_prompt}
-            session.append(system_item)
-            self.sessions[session_id] = session
-        return session
-
-    def build_session_query(self, query, session_id):
-        '''
-        build query with conversation history
-        e.g.  [
-            {"role": "system", "content": "You are a helpful assistant."},
-            {"role": "user", "content": "Who won the world series in 2020?"},
-            {"role": "assistant", "content": "The Los Angeles Dodgers won the World Series in 2020."},
-            {"role": "user", "content": "Where was it played?"}
-        ]
-        :param query: query content
-        :param session_id: session id
-        :return: query content with conversaction
-        '''
-        session = self.build_session(session_id)
-        user_item = {'role': 'user', 'content': query}
-        session.append(user_item)
-        try:
-            total_tokens = num_tokens_from_messages(session, self.model)
-            max_tokens = conf().get("conversation_max_tokens", 1000)
-            total_tokens = self.discard_exceed_conversation(session, max_tokens, total_tokens)
-            logger.debug("prompt tokens used={}".format(total_tokens))
-        except Exception as e:
-            logger.debug("Exception when counting tokens precisely for prompt: {}".format(str(e)))
-
-        return session
-
-    def save_session(self, answer, session_id, total_tokens):
-        max_tokens = conf().get("conversation_max_tokens", 1000)
-        session = self.sessions.get(session_id)
-        if session:
-            # append conversation
-            gpt_item = {'role': 'assistant', 'content': answer}
-            session.append(gpt_item)
-
-        # discard exceed limit conversation
-        tokens_cnt = self.discard_exceed_conversation(session, max_tokens, total_tokens)
-        logger.debug("raw total_tokens={}, savesession tokens={}".format(total_tokens, tokens_cnt))
-
-    def discard_exceed_conversation(self, session, max_tokens, total_tokens):
-        dec_tokens = int(total_tokens)
-        # logger.info("prompt tokens used={},max_tokens={}".format(used_tokens,max_tokens))
-        while dec_tokens > max_tokens:
-            # pop first conversation
-            if len(session) > 2:
-                session.pop(1)
-            elif len(session) == 2 and session[1]["role"] == "assistant":
-                session.pop(1)
-                break
-            elif len(session) == 2 and session[1]["role"] == "user":
-                logger.warn("user message exceed max_tokens. total_tokens={}".format(dec_tokens))
-                break
-            else:
-                logger.debug("max_tokens={}, total_tokens={}, len(sessions)={}".format(max_tokens, dec_tokens, len(session)))
-                break
-            try:
-                cur_tokens = num_tokens_from_messages(session, self.model)
-                dec_tokens = cur_tokens
-            except Exception as e:
-                logger.debug("Exception when counting tokens precisely for query: {}".format(e))
-                dec_tokens = dec_tokens - max_tokens
-        return dec_tokens
-
-    def clear_session(self, session_id):
-        self.sessions[session_id] = []
-
-    def clear_all_session(self):
-        self.sessions.clear()
-
-# refer to https://github.com/openai/openai-cookbook/blob/main/examples/How_to_count_tokens_with_tiktoken.ipynb
-def num_tokens_from_messages(messages, model):
-    """Returns the number of tokens used by a list of messages."""
-    import tiktoken
-    try:
-        encoding = tiktoken.encoding_for_model(model)
-    except KeyError:
-        logger.debug("Warning: model not found. Using cl100k_base encoding.")
-        encoding = tiktoken.get_encoding("cl100k_base")
-    if model == "gpt-3.5-turbo":
-        return num_tokens_from_messages(messages, model="gpt-3.5-turbo-0301")
-    elif model == "gpt-4":
-        return num_tokens_from_messages(messages, model="gpt-4-0314")
-    elif model == "gpt-3.5-turbo-0301":
-        tokens_per_message = 4  # every message follows <|start|>{role/name}\n{content}<|end|>\n
-        tokens_per_name = -1  # if there's a name, the role is omitted
-    elif model == "gpt-4-0314":
-        tokens_per_message = 3
-        tokens_per_name = 1
-    else:
-        logger.warn(f"num_tokens_from_messages() is not implemented for model {model}. Returning num tokens assuming gpt-3.5-turbo-0301.")
-        return num_tokens_from_messages(messages, model="gpt-3.5-turbo-0301")
-    num_tokens = 0
-    for message in messages:
-        num_tokens += tokens_per_message
-        for key, value in message.items():
-            num_tokens += len(encoding.encode(value))
-            if key == "name":
-                num_tokens += tokens_per_name
-    num_tokens += 3  # every reply is primed with <|start|>assistant<|message|>
-    return num_tokens
+        return args

+ 76 - 0
bot/chatgpt/chat_gpt_session.py

@@ -0,0 +1,76 @@
+from bot.session_manager import Session
+from common.log import logger
+class ChatGPTSession(Session):
+    def __init__(self, session_id, system_prompt=None, model= "gpt-3.5-turbo"):
+        super().__init__(session_id, system_prompt)
+        self.messages = []
+        self.model = model
+        self.reset()
+    
+    def reset(self):
+        system_item = {'role': 'system', 'content': self.system_prompt}
+        self.messages = [system_item]
+
+    def add_query(self, query):
+        user_item = {'role': 'user', 'content': query}
+        self.messages.append(user_item)
+
+    def add_reply(self, reply):
+        assistant_item = {'role': 'assistant', 'content': reply}
+        self.messages.append(assistant_item)
+    
+    def discard_exceeding(self, max_tokens, cur_tokens= None):
+        if cur_tokens is None:
+            cur_tokens = num_tokens_from_messages(self.messages, self.model)
+        while cur_tokens > max_tokens:
+            if len(self.messages) > 2:
+                self.messages.pop(1)
+            elif len(self.messages) == 2 and self.messages[1]["role"] == "assistant":
+                self.messages.pop(1)
+                cur_tokens = num_tokens_from_messages(self.messages, self.model)
+                break
+            elif len(self.messages) == 2 and self.messages[1]["role"] == "user":
+                logger.warn("user message exceed max_tokens. total_tokens={}".format(cur_tokens))
+                break
+            else:
+                logger.debug("max_tokens={}, total_tokens={}, len(messages)={}".format(max_tokens, cur_tokens, len(self.messages)))
+                break
+            try:
+                cur_tokens = num_tokens_from_messages(self.messages, self.model)
+            except Exception as e:
+                logger.debug("Exception when counting tokens precisely for query: {}".format(e))
+                cur_tokens = cur_tokens - max_tokens
+        return cur_tokens
+    
+
+# refer to https://github.com/openai/openai-cookbook/blob/main/examples/How_to_count_tokens_with_tiktoken.ipynb
+def num_tokens_from_messages(messages, model):
+    """Returns the number of tokens used by a list of messages."""
+    import tiktoken
+    try:
+        encoding = tiktoken.encoding_for_model(model)
+    except KeyError:
+        logger.debug("Warning: model not found. Using cl100k_base encoding.")
+        encoding = tiktoken.get_encoding("cl100k_base")
+    if model == "gpt-3.5-turbo":
+        return num_tokens_from_messages(messages, model="gpt-3.5-turbo-0301")
+    elif model == "gpt-4":
+        return num_tokens_from_messages(messages, model="gpt-4-0314")
+    elif model == "gpt-3.5-turbo-0301":
+        tokens_per_message = 4  # every message follows <|start|>{role/name}\n{content}<|end|>\n
+        tokens_per_name = -1  # if there's a name, the role is omitted
+    elif model == "gpt-4-0314":
+        tokens_per_message = 3
+        tokens_per_name = 1
+    else:
+        logger.warn(f"num_tokens_from_messages() is not implemented for model {model}. Returning num tokens assuming gpt-3.5-turbo-0301.")
+        return num_tokens_from_messages(messages, model="gpt-3.5-turbo-0301")
+    num_tokens = 0
+    for message in messages:
+        num_tokens += tokens_per_message
+        for key, value in message.items():
+            num_tokens += len(encoding.encode(value))
+            if key == "name":
+                num_tokens += tokens_per_name
+    num_tokens += 3  # every reply is primed with <|start|>assistant<|message|>
+    return num_tokens

+ 77 - 0
bot/session_manager.py

@@ -0,0 +1,77 @@
+from common.expired_dict import ExpiredDict
+from common.log import logger
+from config import conf
+
+class Session(object):
+    def __init__(self, session_id, system_prompt=None):
+        self.session_id = session_id
+        if system_prompt is None:
+            self.system_prompt = conf().get("character_desc", "")
+        else:
+            self.system_prompt = system_prompt
+
+    # 重置会话
+    def reset(self):
+        raise NotImplementedError
+
+    def set_system_prompt(self, system_prompt):
+        self.system_prompt = system_prompt
+        self.reset()
+
+    def add_query(self, query):
+        raise NotImplementedError
+
+    def add_reply(self, reply):
+        raise NotImplementedError
+    
+    def discard_exceeding(self, max_tokens=None, cur_tokens=None):
+        raise NotImplementedError
+
+
+
+class SessionManager(object):
+    def __init__(self, sessioncls, **session_args):
+        if conf().get('expires_in_seconds'):
+            sessions = ExpiredDict(conf().get('expires_in_seconds'))
+        else:
+            sessions = dict()
+        self.sessions = sessions
+        self.sessioncls = sessioncls
+        self.session_args = session_args
+
+    def build_session(self, session_id, system_prompt=None):
+        if session_id not in self.sessions:
+            self.sessions[session_id] = self.sessioncls(session_id, system_prompt, **self.session_args)
+        elif system_prompt is not None: # 如果有新的system_prompt,更新并重置session
+            self.sessions[session_id].set_system_prompt(system_prompt)
+        session = self.sessions[session_id]
+        return session
+    
+    def session_query(self, query, session_id):
+        session = self.build_session(session_id)
+        session.add_query(query)
+        print(session.messages)
+        try:
+            max_tokens = conf().get("conversation_max_tokens", 1000)
+            total_tokens = session.discard_exceeding(max_tokens, None)
+            logger.debug("prompt tokens used={}".format(total_tokens))
+        except Exception as e:
+            logger.debug("Exception when counting tokens precisely for prompt: {}".format(str(e)))
+        return session
+
+    def session_reply(self, reply, session_id, total_tokens = None):
+        session = self.build_session(session_id)
+        session.add_reply(reply)
+        try:
+            max_tokens = conf().get("conversation_max_tokens", 1000)
+            tokens_cnt = session.discard_exceeding(max_tokens, total_tokens)
+            logger.debug("raw total_tokens={}, savesession tokens={}".format(total_tokens, tokens_cnt))
+        except Exception as e:
+            logger.debug("Exception when counting tokens precisely for prompt: {}".format(str(e)))
+        return session
+
+    def clear_session(self, session_id):
+        del(self.sessions[session_id])
+
+    def clear_all_session(self):
+        self.sessions.clear()