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import traceback
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from typing import Optional
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from asyncio import Queue
import asyncio
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import logging
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import uuid
import time
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import json
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import shlex
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import datetime
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import copy
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import sys
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from ..proto.agent_msg import AgentMsg
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from ..proto.ai_function import *
from ..proto.agent_task import *
from ..proto.compute_task import *
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from .agent_base import *
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from .llm_process import *
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from .chatsession import *
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from ..environment.workspace_env import WorkspaceEnvironment , TodoListType
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from ..frame.contact_manager import ContactManager , Contact , FamilyMember
from ..frame.compute_kernel import ComputeKernel
from ..frame.bus import AIBus
from ..environment.environment import *
from ..environment.workspace_env import WorkspaceEnvironment
from ..storage.storage import AIStorage
from ..knowledge import *
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from ..utils import video_utils , image_utils
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from ..proto.compute_task import ComputeTaskResult , ComputeTaskResultCode
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logger = logging . getLogger ( __name__ )
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# DEFAULT_AGENT_READ_REPORT_PROMPT = """
# """
# DEFAULT_AGENT_DO_PROMPT = """
# You are a helpful AI assistant.
# Solve tasks using your coding and language skills.
# In the following cases, suggest python code (in a python coding block) for the user to execute.
# 1. When you need to collect info, use the code to output the info you need, for example, browse or search the web, download/read a file, print the content of a webpage or a file, get the current date/time, check the operating system. After sufficient info is printed and the task is ready to be solved based on your language skill, you can solve the task by yourself.
# 2. When you need to perform some task with code, use the code to perform the task and output the result. Finish the task smartly.
# Solve the task step by step if you need to. If a plan is not provided, explain your plan first. Be clear which step uses code, and which step uses your language skill.
# When using code, you must indicate the script type in the code block. The user cannot provide any other feedback or perform any other action beyond executing the code you suggest. The user can't modify your code. So do not suggest incomplete code which requires users to modify. Don't use a code block if it's not intended to be executed by the user.
# If you want the user to save the code in a file before executing it, put # filename: <filename> inside the code block as the first line. Don't include multiple code blocks in one response. Do not ask users to copy and paste the result. Instead, use 'print' function for the output when relevant. Check the execution result returned by the user.
# If the result indicates there is an error, fix the error and output the code again. Suggest the full code instead of partial code or code changes. If the error can't be fixed or if the task is not solved even after the code is executed successfully, analyze the problem, revisit your assumption, collect additional info you need, and think of a different approach to try.
# When you find an answer, verify the answer carefully. Include verifiable evidence in your response if possible.
# Reply "TERMINATE" in the end when everything is done.
# """
# DEFAULT_AGENT_SELF_CHECK_PROMPT = """
# """
# DEFAULT_AGENT_GOAL_TO_TODO_PROMPT = """
# 我会给你一个目标,你需要结合自己的角色思考如何将其拆解成多个TODO。请直接返回json来表达这些TODO
# """
# DEFAULT_AGENT_LEARN_LONG_CONENT_PROMPT = """
# 我给你一段内容,尝试为期建立目录。目录的标题不能超过16个字,
# 目录要指向正文的位置(用字符偏移即可),整个目录的文本长度不能超过256个字节。并用json表达这个目录
# """
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class AIAgentTemplete :
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def __init__ ( self ) -> None :
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self . llm_model_name : str = "gpt-4-0613"
self . max_token_size : int = 0
self . template_id : str = None
self . introduce : str = None
self . author : str = None
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self . prompt : LLMPrompt = None
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def load_from_config ( self , config : dict ) -> bool :
if config . get ( "llm_model_name" ) is not None :
self . llm_model_name = config [ "llm_model_name" ]
if config . get ( "max_token_size" ) is not None :
self . max_token_size = config [ "max_token_size" ]
if config . get ( "template_id" ) is not None :
self . template_id = config [ "template_id" ]
if config . get ( "prompt" ) is not None :
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self . prompt = LLMPrompt ()
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if self . prompt . load_from_config ( config [ "prompt" ]) is False :
logger . error ( "load prompt from config failed!" )
return False
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class AIAgent ( BaseAIAgent ):
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def __init__ ( self ) -> None :
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self . role_prompt : LLMPrompt = None
self . agent_prompt : LLMPrompt = None
self . agent_think_prompt : LLMPrompt = None
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self . llm_model_name : str = None
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self . max_token_size : int = 128000
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self . agent_energy = 15
self . agent_task = None
self . last_recover_time = time . time ()
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self . enable_thread = False
self . can_do_unassigned_task = True
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self . agent_id : str = None
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self . template_id : str = None
self . fullname : str = None
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self . powerby = None
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self . enable = True
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self . enable_kb = False
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self . enable_timestamp = False
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self . guest_prompt_str = None
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self . owner_promp_str = None
self . contact_prompt_str = None
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self . history_len = 10
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self . read_report_prompt = None
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todo_prompts = {}
todo_prompts [ TodoListType . TO_WORK ] = {
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"do" : None ,
"check" : None ,
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"review" : None ,
}
todo_prompts [ TodoListType . TO_LEARN ] = {
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"do" : None ,
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"check" : None ,
"review" : None ,
}
self . todo_prompts = todo_prompts
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self . chat_db = None
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self . unread_msg = Queue () # msg from other agent
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self . owenr_bus = None
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self . enable_function_list = None
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self . llm_process : Dict [ str , BaseLLMProcess ] = {}
async def initial ( self , params : Dict = None ):
self . memory = AgentMemory ( self . agent_id , self . chat_db )
init_params = {}
init_params [ "memory" ] = self . memory
for process_name in self . llm_process . keys ():
init_result = await self . llm_process [ process_name ] . initial ( init_params )
if init_result is False :
logger . error ( f "llm process { process_name } initial failed! initial return False" )
return False
self . wake_up ()
return True
async def load_from_config ( self , config : dict ) -> bool :
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if config . get ( "instance_id" ) is None :
logger . error ( "agent instance_id is None!" )
return False
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self . agent_id = config [ "instance_id" ]
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self . agent_workspace = config [ "workspace" ]
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if config . get ( "fullname" ) is None :
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logger . error ( f "agent { self . agent_id } fullname is None!" )
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return False
self . fullname = config [ "fullname" ]
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if config . get ( "enable_thread" ) is not None :
self . enable_thread = bool ( config [ "enable_thread" ])
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if config . get ( "prompt" ) is not None :
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self . agent_prompt = LLMPrompt ()
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self . agent_prompt . load_from_config ( config [ "prompt" ])
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if config . get ( "think_prompt" ) is not None :
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self . agent_think_prompt = LLMPrompt ()
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self . agent_think_prompt . load_from_config ( config [ "think_prompt" ])
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def load_todo_config ( todo_type : str ) -> bool :
todo_config = config . get ( todo_type )
if todo_config is not None :
if todo_config . get ( "do" ) is not None :
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prompt = LLMPrompt ()
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prompt . load_from_config ( todo_config [ "do" ])
self . todo_prompts [ todo_type ][ "do" ] = prompt
if todo_config . get ( "check" ) is not None :
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prompt = LLMPrompt ()
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prompt . load_from_config ( todo_config [ "check" ])
self . todo_prompts [ todo_type ][ "check" ] = prompt
if todo_config . get ( "review_prompt" ) is not None :
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prompt = LLMPrompt ()
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prompt . load_from_config ( todo_config [ "review_prompt" ])
self . todo_prompts [ todo_type ][ "review" ] = prompt
load_todo_config ( TodoListType . TO_WORK )
load_todo_config ( TodoListType . TO_LEARN )
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if config . get ( "guest_prompt" ) is not None :
self . guest_prompt_str = config [ "guest_prompt" ]
if config . get ( "owner_prompt" ) is not None :
self . owner_promp_str = config [ "owner_prompt" ]
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if config . get ( "contact_prompt" ) is not None :
self . contact_prompt_str = config [ "contact_prompt" ]
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if config . get ( "powerby" ) is not None :
self . powerby = config [ "powerby" ]
if config . get ( "template_id" ) is not None :
self . template_id = config [ "template_id" ]
if config . get ( "llm_model_name" ) is not None :
self . llm_model_name = config [ "llm_model_name" ]
if config . get ( "max_token_size" ) is not None :
self . max_token_size = config [ "max_token_size" ]
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if config . get ( "enable_function" ) is not None :
self . enable_function_list = config [ "enable_function" ]
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if config . get ( "enable_kb" ) is not None :
self . enable_kb = bool ( config [ "enable_kb" ])
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if config . get ( "enable_timestamp" ) is not None :
self . enable_timestamp = bool ( config [ "enable_timestamp" ])
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if config . get ( "history_len" ):
self . history_len = int ( config . get ( "history_len" ))
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#load all LLMProcess
self . llm_process = {}
LLMProcess = config . get ( "LLMProcess" )
for process_config_name in LLMProcess . keys ():
process_config = LLMProcess [ process_config_name ]
real_config = {}
real_config . update ( config )
real_config . update ( process_config )
load_result = await LLMProcessLoader . get_instance () . load_from_config ( real_config )
if load_result :
self . llm_process [ process_config_name ] = load_result
else :
logger . error ( f "load LLMProcess { process_config_name } failed!" )
return False
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return True
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def get_id ( self ) -> str :
return self . agent_id
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def get_fullname ( self ) -> str :
return self . fullname
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def get_template_id ( self ) -> str :
return self . template_id
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def get_llm_model_name ( self ) -> str :
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if self . llm_model_name is None :
return AIStorage . get_instance () . get_user_config () . get_value ( "llm_model_name" )
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return self . llm_model_name
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def get_max_token_size ( self ) -> int :
return self . max_token_size
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def get_agent_role_prompt ( self ) -> LLMPrompt :
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return self . role_prompt
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def _get_remote_user_prompt ( self , remote_user : str ) -> LLMPrompt :
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cm = ContactManager . get_instance ()
contact = cm . find_contact_by_name ( remote_user )
if contact is None :
#create guest prompt
if self . guest_prompt_str is not None :
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prompt = LLMPrompt ()
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prompt . system_message = { "role" : "system" , "content" : self . guest_prompt_str }
return prompt
return None
else :
if contact . is_family_member :
if self . owner_promp_str is not None :
real_str = self . owner_promp_str . format_map ( contact . to_dict ())
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prompt = LLMPrompt ()
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prompt . system_message = { "role" : "system" , "content" : real_str }
return prompt
else :
if self . contact_prompt_str is not None :
real_str = self . contact_prompt_str . format_map ( contact . to_dict ())
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prompt = LLMPrompt ()
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prompt . system_message = { "role" : "system" , "content" : real_str }
return prompt
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return None
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def get_agent_prompt ( self ) -> LLMPrompt :
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return self . agent_prompt
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async def _get_agent_think_prompt ( self ) -> LLMPrompt :
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return self . agent_think_prompt
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def _format_msg_by_env_value ( self , prompt : LLMPrompt ):
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for msg in prompt . messages :
old_content = msg . get ( "content" )
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msg [ "content" ] = old_content . format_map ( self . agent_workspace )
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async def _handle_event ( self , event ):
if event . type == "AgentThink" :
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return await self . do_self_think ()
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def get_workspace_by_msg ( self , msg : AgentMsg ) -> WorkspaceEnvironment :
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return self . agent_workspace
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def need_session_summmary ( self , msg : AgentMsg , session : AIChatSession ) -> bool :
return False
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async def _create_openai_thread ( self ) -> str :
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return None
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def check_and_to_base64 ( self , image_path : str ) -> str :
if image_utils . is_file ( image_path ):
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return image_utils . to_base64 ( image_path , ( 1024 , 1024 ))
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else :
return image_path
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async def llm_process_msg ( self , msg : AgentMsg ) -> AgentMsg :
need_process : bool = True
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if msg . msg_type == AgentMsgType . TYPE_GROUPMSG :
need_process = False
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session_topic = msg . target + "#" + msg . topic
chatsession = AIChatSession . get_session ( self . agent_id , session_topic , self . chat_db )
if msg . mentions is not None :
if self . agent_id in msg . mentions :
need_process = True
logger . info ( f "agent { self . agent_id } recv a group chat message from { msg . sender } ,but is not mentioned,ignore!" )
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if need_process is not True :
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chatsession . append ( msg )
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resp_msg = msg . create_group_resp_msg ( self . agent_id , "" )
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return resp_msg
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input_parms = {
"msg" : msg
}
msg_process = self . llm_process . get ( "message" )
llm_result : LLMResult = await msg_process . process ( input_parms )
if llm_result . state == LLMResultStates . ERROR :
error_resp = msg . create_error_resp ( llm_result . error_str )
return error_resp
elif llm_result . state == LLMResultStates . IGNORE :
return None
else : # OK
resp_msg = llm_result . raw_result . get ( "resp_msg" )
return resp_msg
async def _process_msg ( self , msg : AgentMsg , workspace = None ) -> AgentMsg :
msg . context_info = {}
msg . context_info [ "location" ] = "SanJose"
msg . context_info [ "now" ] = datetime . datetime . now () . strftime ( "%Y-%m- %d %H:%M:%S" )
msg . context_info [ "weather" ] = "Partly Cloudy, 60°F"
return await self . llm_process_msg ( msg )
msg_prompt = LLMPrompt ()
need_process = True
if msg . msg_type == AgentMsgType . TYPE_GROUPMSG :
need_process = False
session_topic = msg . target + "#" + msg . topic
chatsession = AIChatSession . get_session ( self . agent_id , session_topic , self . chat_db )
if msg . mentions is not None :
if self . agent_id in msg . mentions :
need_process = True
logger . info ( f "agent { self . agent_id } recv a group chat message from { msg . sender } ,but is not mentioned,ignore!" )
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else :
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if msg . is_image_msg ():
image_prompt , images = msg . get_image_body ()
if image_prompt is None :
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msg_prompt . messages = [{ "role" : "user" , "content" : [{ "type" : "image_url" , "image_url" : { "url" : self . check_and_to_base64 ( image )}} for image in images ]}]
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else :
content = [{ "type" : "text" , "text" : image_prompt }]
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content . extend ([{ "type" : "image_url" , "image_url" : { "url" : self . check_and_to_base64 ( image )}} for image in images ])
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msg_prompt . messages = [{ "role" : "user" , "content" : content }]
elif msg . is_video_msg ():
video_prompt , video = msg . get_video_body ()
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frames = video_utils . extract_frames ( video , ( 1024 , 1024 ))
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if video_prompt is None :
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msg_prompt . messages = [{ "role" : "user" , "content" : [{ "type" : "image_url" , "image_url" : { "url" : frame }} for frame in frames ]}]
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else :
content = [{ "type" : "text" , "text" : video_prompt }]
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content . extend ([{ "type" : "image_url" , "image_url" : { "url" : frame }} for frame in frames ])
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msg_prompt . messages = [{ "role" : "user" , "content" : content }]
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elif msg . is_audio_msg ():
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audio_file = msg . body
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resp = await ( ComputeKernel . get_instance () . do_speech_to_text ( audio_file , None , prompt = None , response_format = "text" ))
if resp . result_code != ComputeTaskResultCode . OK :
error_resp = msg . create_error_resp ( resp . error_str )
return error_resp
else :
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msg . body = resp . result_str
msg_prompt . messages = [{ "role" : "user" , "content" : resp . result_str }]
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else :
msg_prompt . messages = [{ "role" : "user" , "content" : msg . body }]
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session_topic = msg . get_sender () + "#" + msg . topic
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chatsession = AIChatSession . get_session ( self . agent_id , session_topic , self . chat_db )
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if self . enable_thread :
need_create_thread = False
if chatsession . openai_thread_id is not None :
if len ( chatsession . openai_thread_id ) < 1 :
need_create_thread = True
else :
need_create_thread = True
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if need_create_thread :
openai_thread_id = await self . _create_openai_thread ()
if openai_thread_id is not None :
chatsession . update_openai_thread_id ( openai_thread_id )
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workspace = self . get_workspace_by_msg ( msg )
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prompt = LLMPrompt ()
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if workspace :
prompt . append ( workspace . get_prompt ())
prompt . append ( workspace . get_role_prompt ( self . agent_id ))
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prompt . append ( self . get_agent_prompt ())
prompt . append ( self . _get_remote_user_prompt ( msg . sender ))
self . _format_msg_by_env_value ( prompt )
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if self . need_session_summmary ( msg , chatsession ):
# get relate session(todos) summary
summary = self . llm_select_session_summary ( msg , chatsession )
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prompt . append ( LLMPrompt ( summary ))
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known_info_str = "# Known information \n "
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have_known_info = False
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todos_str , todo_count = await workspace . todo_list [ TodoListType . TO_WORK ] . get_todo_tree ()
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if todo_count > 0 :
have_known_info = True
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known_info_str += f "## todo \n { todos_str } \n "
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inner_functions , function_token_len = BaseAIAgent . get_inner_functions ( self . agent_workspace )
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system_prompt_len = ComputeKernel . llm_num_tokens ( prompt )
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input_len = len ( msg . body )
if msg . msg_type == AgentMsgType . TYPE_GROUPMSG :
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history_str , history_token_len = await self . _get_prompt_from_session_for_groupchat ( chatsession , system_prompt_len + function_token_len , input_len )
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else :
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history_str , history_token_len = await self . get_prompt_from_session ( chatsession , system_prompt_len + function_token_len , input_len )
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if history_str :
have_known_info = True
known_info_str += history_str
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if have_known_info :
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known_info_prompt = LLMPrompt ( known_info_str )
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prompt . append ( known_info_prompt ) # chat context
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prompt . append ( msg_prompt )
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logger . debug ( f "Agent { self . agent_id } do llm token static system: { system_prompt_len } ,function: { function_token_len } ,history: { history_token_len } ,input: { input_len } , totoal prompt: { system_prompt_len + function_token_len + history_token_len } " )
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task_result = await self . do_llm_complection ( prompt , msg , inner_functions = inner_functions )
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if task_result . result_code != ComputeTaskResultCode . OK :
error_resp = msg . create_error_resp ( task_result . error_str )
return error_resp
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final_result = task_result . result_str
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if final_result is not None :
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llm_result : LLMResult = LLMResult . from_str ( final_result )
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else :
llm_result = LLMResult ()
llm_result . state = "ignore"
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if llm_result . resp is None :
if llm_result . raw_resp :
final_result = json . dumps ( llm_result . raw_resp )
else :
final_result = llm_result . resp
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await workspace . exec_op_list ( llm_result . action_list , self . agent_id )
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is_ignore = False
result_prompt_str = ""
match llm_result . state :
case "ignore" :
is_ignore = True
case "waiting" : # like inner call
for sendmsg in llm_result . send_msgs :
sendmsg . sender = self . agent_id
target = sendmsg . target
sendmsg . topic = msg . topic
sendmsg . prev_msg_id = msg . get_msg_id ()
send_resp = await AIBus . get_default_bus () . send_message ( sendmsg )
if send_resp is not None :
result_prompt_str += f " \n { target } response is : { send_resp . body } "
agent_sesion = AIChatSession . get_session ( self . agent_id , f " { sendmsg . target } # { sendmsg . topic } " , self . chat_db )
agent_sesion . append ( sendmsg )
agent_sesion . append ( send_resp )
final_result = llm_result . resp + result_prompt_str
if is_ignore is not True :
if msg . msg_type == AgentMsgType . TYPE_GROUPMSG :
resp_msg = msg . create_group_resp_msg ( self . agent_id , final_result )
else :
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resp_msg = msg . create_resp_msg ( final_result )
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chatsession . append ( msg )
chatsession . append ( resp_msg )
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return resp_msg
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return None
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async def _get_history_prompt_for_think ( self , chatsession : AIChatSession , summary : str , system_token_len : int , pos : int ) -> ( LLMPrompt , int ):
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history_len = ( self . max_token_size * 0.7 ) - system_token_len
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messages = chatsession . read_history ( self . history_len , pos , "natural" ) # read
result_token_len = 0
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result_prompt = LLMPrompt ()
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have_summary = False
if summary is not None :
if len ( summary ) > 1 :
have_summary = True
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if have_summary :
result_prompt . messages . append ({ "role" : "user" , "content" : summary })
result_token_len -= len ( summary )
else :
result_prompt . messages . append ({ "role" : "user" , "content" : "There is no summary yet." })
result_token_len -= 6
read_history_msg = 0
history_str : str = ""
for msg in messages :
read_history_msg += 1
dt = datetime . datetime . fromtimestamp ( float ( msg . create_time ))
formatted_time = dt . strftime ( '%y-%m- %d %H:%M:%S' )
record_str = f " { msg . sender } ,[ { formatted_time } ] \n { msg . body } \n "
history_str = history_str + record_str
history_len -= len ( msg . body )
result_token_len += len ( msg . body )
if history_len < 0 :
logger . warning ( f "_get_prompt_from_session reach limit of token,just read { read_history_msg } history message." )
break
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result_prompt . messages . append ({ "role" : "user" , "content" : history_str })
return result_prompt , pos + read_history_msg
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async def _get_prompt_from_session_for_groupchat ( self , chatsession : AIChatSession , system_token_len , input_token_len , is_groupchat = False ):
history_len = ( self . max_token_size * 0.7 ) - system_token_len - input_token_len
messages = chatsession . read_history ( self . history_len ) # read
result_token_len = 0
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result_prompt = LLMPrompt ()
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read_history_msg = 0
for msg in reversed ( messages ):
read_history_msg += 1
dt = datetime . datetime . fromtimestamp ( float ( msg . create_time ))
formatted_time = dt . strftime ( '%y-%m- %d %H:%M:%S' )
if msg . sender == self . agent_id :
if self . enable_timestamp :
result_prompt . messages . append ({ "role" : "assistant" , "content" : f "(create on { formatted_time } ) { msg . body } " })
else :
result_prompt . messages . append ({ "role" : "assistant" , "content" : msg . body })
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else :
if self . enable_timestamp :
result_prompt . messages . append ({ "role" : "user" , "content" : f "(create on { formatted_time } ) { msg . body } " })
else :
result_prompt . messages . append ({ "role" : "user" , "content" : f " { msg . sender } : { msg . body } " })
history_len -= len ( msg . body )
result_token_len += len ( msg . body )
if history_len < 0 :
logger . warning ( f "_get_prompt_from_session reach limit of token,just read { read_history_msg } history message." )
break
return result_prompt , result_token_len
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async def _llm_summary_work ( self , workspace : WorkspaceEnvironment ):
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# read report ,and update work summary of
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# build todo list from work summary and goals
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#
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report_list = self . get_unread_reports ()
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for report in report_list :
if self . agent_energy <= 0 :
break
# merge report to work summary
await self . _llm_read_report ( report , workspace )
self . agent_energy -= 1
if workspace . is_mgr ( self . agent_id ):
# manager can do more work
await self . _llm_review_team ( workspace )
self . agent_energy -= 5
await self . _llm_review_unassigned_todos ( workspace )
self . agent_energy -= 5
async def _llm_review_team ( self , workspace : WorkspaceEnvironment ):
pass
async def _llm_review_unassigned_todos ( self , workspace : WorkspaceEnvironment ):
pass
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async def _llm_read_report ( self , report : AgentReport , worksapce : WorkspaceEnvironment ):
work_summary = worksapce . get_work_summary ( self . agent_id )
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prompt : LLMPrompt = LLMPrompt ()
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prompt . append ( self . agent_prompt )
prompt . append ( worksapce . get_role_prompt ( self . agent_id ))
prompt . append ( self . read_report_prompt )
# report is a message from other agent(human) about work
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prompt . append ( LLMPrompt ( work_summary ))
prompt . append ( LLMPrompt ( report . content ))
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task_result : ComputeTaskResult = await self . do_llm_complection ( prompt )
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if task_result . error_str is not None :
logger . error ( f "_llm_read_report compute error: { task_result . error_str } " )
return
worksapce . set_work_summary ( self . agent_id , task_result . result_str )
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async def _llm_run_todo_list ( self , todo_list_type : TodoListType ):
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workspace : WorkspaceEnvironment = self . get_workspace_by_msg ( None )
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logger . info ( f "agent { self . agent_id } do my work start!" )
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# review todolist
#if await self.need_review_todolist():
# await self._llm_review_todolist(workspace)
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todo_list = workspace . todo_list [ todo_list_type ]
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need_todo = await todo_list . get_todo_list ( self . agent_id )
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check_count = 0
do_count = 0
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review_count = 0
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for todo in need_todo :
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if self . agent_energy <= 0 :
break
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do_prompts = self . _can_do_todo ( todo_list_type , todo )
if do_prompts :
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prompt : LLMPrompt = LLMPrompt ()
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prompt . append ( self . agent_prompt )
prompt . append ( workspace . get_role_prompt ( self . agent_id ))
prompt . append ( do_prompts )
prompt . append ( todo . to_prompt ())
do_result : AgentTodoResult = await self . _llm_do_todo ( todo , prompt , workspace )
todo . last_do_time = datetime . datetime . now () . timestamp ()
todo . retry_count += 1
match do_result . result_code :
case AgentTodoResult . TODO_RESULT_CODE_LLM_ERROR :
continue
case AgentTodoResult . TODO_RESULT_CODE_OK :
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todo . result = do_result
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await todo_list . update_todo ( todo . todo_id , AgentTodo . TODO_STATE_WAITING_CHECK )
case AgentTodoResult . TODO_RESULT_CODE_EXEC_OP_ERROR :
await todo_list . update_todo ( todo . todo_id , AgentTodo . TODO_STATE_EXEC_FAILED )
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await todo_list . append_worklog ( todo , do_result )
self . agent_energy -= 2
do_count += 1
# review_result = await self._llm_review_todo(todo,workspace)
# todo.last_review_time = datetime.datetime.now().timestamp()
continue
check_prompts = self . _can_check_todo ( todo_list_type , todo )
if check_prompts :
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prompt : LLMPrompt = LLMPrompt ()
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prompt . append ( self . agent_prompt )
prompt . append ( workspace . get_role_prompt ( self . agent_id ))
prompt . append ( check_prompts )
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if todo . last_check_result :
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prompt . append ( LLMPrompt ( todo . last_check_result ))
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prompt . append ( todo . detail )
prompt . append ( todo . result )
check_result : AgentTodoResult = await self . _llm_check_todo ( todo , prompt , workspace )
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todo . last_check_time = datetime . datetime . now () . timestamp ()
match check_result . result_code :
case AgentTodoResult . TODO_RESULT_CODE_LLM_ERROR :
continue
case AgentTodoResult . TODO_RESULT_CODE_OK :
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await todo_list . update_todo ( todo . todo_id , AgentTodo . TODO_STATE_DONE )
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case AgentTodoResult . TODO_RESULT_CODE_EXEC_OP_ERROR :
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await todo_list . update_todo ( todo . todo_id , AgentTodo . TDDO_STATE_CHECKFAILED )
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await todo_list . append_worklog ( todo , check_result )
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self . agent_energy -= 1
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check_count += 1
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continue
review_prompts = self . _can_review_todo ( todo_list_type , todo )
if review_prompts :
prompt . append ( workspace . get_prompt ())
prompt . append ( workspace . get_role_prompt ( self . agent_id ))
prompt . append ( review_prompts )
todo_tree = todo_list . get_todo_tree ( "/" )
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prompt . append ( LLMPrompt ( todo_tree ))
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do_result : AgentTodoResult = await self . _llm_review_todo ( todo , prompt , workspace )
todo . last_review_time = datetime . datetime . now () . timestamp ()
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match do_result . result_code :
case AgentTodoResult . TODO_RESULT_CODE_LLM_ERROR :
continue
case AgentTodoResult . TODO_RESULT_CODE_EXEC_OP_ERROR :
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continue
case AgentTodoResult . TODO_RESULT_CODE_OK :
await todo_list . update_todo ( todo . todo_id , AgentTodo . TODO_STATE_REVIEWED )
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await todo_list . append_worklog ( todo , do_result )
self . agent_energy -= 1
review_count += 1
continue
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logger . info ( f "agent { self . agent_id } ,check: { check_count } todo,do: { do_count } todo." )
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def _can_review_todo ( self , todo_list_type : TodoListType , todo : AgentTodo ) -> LLMPrompt :
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do_prompts = self . todo_prompts [ todo_list_type ] . get ( "review" )
if not do_prompts :
return None
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if todo . can_review () is False :
return None
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return do_prompts
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def _can_check_todo ( self , todo_list_type : TodoListType , todo : AgentTodo ) -> LLMPrompt :
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do_prompts = self . todo_prompts [ todo_list_type ] . get ( "check" )
if not do_prompts :
return None
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if todo . can_check () is False :
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return None
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if todo . checker is not None :
if todo . checker != self . agent_id :
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return None
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else :
if self . can_do_unassigned_task is False :
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return None
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else :
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todo . checker = self . agent_id
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return do_prompts
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def _can_do_todo ( self , todo_list_type : TodoListType , todo : AgentTodo ) -> LLMPrompt :
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do_prompts = self . todo_prompts [ todo_list_type ] . get ( "do" )
if not do_prompts :
return None
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if todo . can_do () is False :
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return None
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if todo . worker is not None :
if todo . worker != self . agent_id :
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return None
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else :
if self . can_do_unassigned_task is False :
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return None
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else :
todo . worker = self . agent_id
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return do_prompts
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async def _llm_do_todo ( self , todo : AgentTodo , prompt : LLMPrompt , workspace : WorkspaceEnvironment ) -> AgentTodoResult :
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result = AgentTodoResult ()
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task_result : ComputeTaskResult = await self . do_llm_complection ( prompt , is_json_resp = True )
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if task_result . error_str is not None :
logger . error ( f "_llm_do compute error: { task_result . error_str } " )
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result . result_code = AgentTodoResult . TODO_RESULT_CODE_LLM_ERROR
result . error_str = task_result . error_str
return result
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llm_result = LLMResult . from_str ( task_result . result_str )
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# result_str is the explain of how to do this todo
result . result_str = llm_result . resp
result . op_list = llm_result . op_list
if llm_result . post_msgs is not None :
for msg in llm_result . post_msgs :
msg . sender = self . agent_id
msg . topic = f " { todo . title } ## { todo . todo_id } "
#msg.prev_msg_id = todo.todo_id
chatsession = AIChatSession . get_session ( self . agent_id , f " { msg . target } # { msg . topic } " , self . chat_db )
chatsession . append ( msg )
resp = await AIBus . get_default_bus () . post_message ( msg )
logging . info ( f "agent { self . agent_id } send msg to { msg . target } result: { resp } " )
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result_str , have_error = await workspace . exec_op_list ( llm_result . action_list , self . agent_id )
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if have_error :
result . result_code = AgentTodoResult . TODO_RESULT_CODE_EXEC_OP_ERROR
#result.error_str = error_str
return result
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result . result_str = result_str
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return result
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async def _llm_check_todo ( self , todo : AgentTodo , prompt : LLMPrompt , workspace : WorkspaceEnvironment ) -> AgentTodoResult :
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result = AgentTodoResult ()
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inner_functions , _ = BaseAIAgent . get_inner_functions ( workspace )
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task_result : ComputeTaskResult = await self . do_llm_complection ( prompt , inner_functions = inner_functions , is_json_resp = True )
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if task_result . error_str is not None :
logger . error ( f "_llm_do compute error: { task_result . error_str } " )
result . result_code = AgentTodoResult . TODO_RESULT_CODE_LLM_ERROR
result . error_str = task_result . error_str
return result
result . result_str = task_result . result_str
todo . last_check_result = task_result . result_str
return result
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async def _llm_review_todo ( self , todo : AgentTodo , prompt : LLMPrompt , workspace : WorkspaceEnvironment ):
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inner_functions , _ = BaseAIAgent . get_inner_functions ( workspace )
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task_result : ComputeTaskResult = await self . do_llm_complection ( prompt , inner_functions = inner_functions )
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if task_result . result_code != ComputeTaskResultCode . OK :
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logger . error ( f "_llm_review_todos compute error: { task_result . error_str } " )
return
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return
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# async def do_blance_knowledge_base(selft):
# # 整理自己的知识库(让分类更平衡,更由于自己以后的工作),并尝试更新学习目标
# current_path = "/"
# current_list = kb.get_list(current_path)
# self_assessment_with_goal = self.get_self_assessment_with_goal()
# learn_goal = {}
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# llm_blance_knowledge_base(current_path,current_list,self_assessment_with_goal,learn_goal,learn_power)
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# # 主动学习
# # 方法目前只有使用搜索引擎一种?
# for goal in learn_goal.items():
# self.llm_learn_with_search_engine(kb,goal,learn_power)
# if learn_power <= 0:
# break
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async def do_self_think ( self ):
session_id_list = AIChatSession . list_session ( self . agent_id , self . chat_db )
for session_id in session_id_list :
if self . agent_energy <= 0 :
break
used_energy = await self . think_chatsession ( session_id )
self . agent_energy -= used_energy
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# todo_logs = await self.get_todo_logs()
# for todo_log in todo_logs:
# if self.agent_energy <= 0:
# break
# used_energy = await self.think_todo_log(todo_log)
# self.agent_energy -= used_energy
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return
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async def think_todo_log ( self , todo_log : AgentWorkLog ):
pass
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async def think_chatsession ( self , session_id ):
if self . agent_think_prompt is None :
return
logger . info ( f "agent { self . agent_id } think session { session_id } " )
chatsession = AIChatSession . get_session_by_id ( session_id , self . chat_db )
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while True :
cur_pos = chatsession . summarize_pos
summary = chatsession . summary
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prompt : LLMPrompt = LLMPrompt ()
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#prompt.append(self._get_agent_prompt())
prompt . append ( await self . _get_agent_think_prompt ())
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system_prompt_len = ComputeKernel . llm_num_tokens ( prompt )
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#think env?
history_prompt , next_pos = await self . _get_history_prompt_for_think ( chatsession , summary , system_prompt_len , cur_pos )
prompt . append ( history_prompt )
is_finish = next_pos - cur_pos < 2
if is_finish :
logger . info ( f "agent { self . agent_id } think session { session_id } is finished!,no more history" )
break
#3) llm summarize chat history
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task_result : ComputeTaskResult = await self . do_llm_complection ( prompt )
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if task_result . result_code != ComputeTaskResultCode . OK :
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logger . error ( f "think_chatsession llm compute error: { task_result . error_str } " )
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break
else :
new_summary = task_result . result_str
logger . info ( f "agent { self . agent_id } think session { session_id } from { cur_pos } to { next_pos } summary: { new_summary } " )
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chatsession . update_think_progress ( next_pos , new_summary )
return
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async def get_prompt_from_session ( self , chatsession : AIChatSession , system_token_len , input_token_len ) -> LLMPrompt :
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# TODO: get prompt from group chat is different from single chat
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if self . enable_thread :
return None
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history_len = ( self . max_token_size * 0.7 ) - system_token_len - input_token_len
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messages = chatsession . read_history ( self . history_len ) # read
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result_token_len = 0
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read_history_msg = 0
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have_known_info = False
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known_info = ""
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if chatsession . summary is not None :
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if len ( chatsession . summary ) > 1 :
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known_info += f "## Recent conversation summary \n { chatsession . summary } \n "
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result_token_len -= len ( chatsession . summary )
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have_known_info = True
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histroy_str = ""
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for msg in reversed ( messages ):
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read_history_msg += 1
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dt = datetime . datetime . fromtimestamp ( float ( msg . create_time ))
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formatted_time = dt . strftime ( '%y-%m- %d %H:%M:%S' )
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record_str = f " { msg . sender } ,[ { formatted_time } ] \n { msg . body } \n "
have_known_info = True
histroy_str = histroy_str + record_str
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history_len -= len ( msg . body )
result_token_len += len ( msg . body )
if history_len < 0 :
logger . warning ( f "_get_prompt_from_session reach limit of token,just read { read_history_msg } history message." )
break
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known_info += f "## Recent conversation history \n { histroy_str } \n "
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if have_known_info :
return known_info , result_token_len
return None , 0
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def need_self_think ( self ) -> bool :
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return False
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def wake_up ( self ) -> None :
if self . agent_task is None :
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self . agent_task = asyncio . create_task ( self . _on_timer ())
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else :
logger . warning ( f "agent { self . agent_id } is already wake up!" )
# agent loop
async def _on_timer ( self ):
while True :
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await asyncio . sleep ( 15 )
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try :
now = time . time ()
if self . last_recover_time is None :
self . last_recover_time = now
else :
if now - self . last_recover_time > 60 :
self . agent_energy += ( now - self . last_recover_time ) / 60
self . last_recover_time = now
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if self . agent_energy <= 1 :
continue
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# complete & check todo
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await self . _llm_run_todo_list ( TodoListType . TO_WORK )
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await self . _llm_run_todo_list ( TodoListType . TO_LEARN )
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if self . need_self_think ():
await self . do_self_think ()
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# review other's todo
# self.review_other_works()
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except Exception as e :
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tb_str = traceback . format_exc ()
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logger . error ( f "agent { self . agent_id } on timer error: { e } , { tb_str } " )
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continue
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