Files
opendan/src/aios_kernel/agent.py
T
2023-09-18 23:25:44 -07:00

251 lines
9.0 KiB
Python

from typing import Optional
from asyncio import Queue
import asyncio
import logging
import uuid
import time
import json
from .agent_message import AgentMsg, AgentMsgStatus, AgentMsgType
from .chatsession import AIChatSession
from .compute_task import ComputeTaskResult
from .ai_function import AIFunction
from .environment import Environment
logger = logging.getLogger(__name__)
class AgentPrompt:
def __init__(self) -> None:
self.messages = []
def as_str(self)->str:
result_str = ""
if self.messages:
for msg in self.messages:
result_str += msg.get("role") + ":" + msg.get("content") + "\n"
return result_str
def append(self,prompt):
if prompt is None:
return
self.messages.extend(prompt.messages)
def load_from_config(self,config:list) -> bool:
if isinstance(config,list) is not True:
logger.error("prompt is not list!")
return False
self.messages = config
return True
class AIAgentTemplete:
def __init__(self) -> None:
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
self.prompt:AgentPrompt = None
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:
self.prompt = AgentPrompt()
if self.prompt.load_from_config(config["prompt"]) is False:
logger.error("load prompt from config failed!")
return False
return True
class AIAgent:
def __init__(self) -> None:
self.prompt:AgentPrompt = None
self.llm_model_name:str = None
self.max_token_size:int = 3600
self.agent_id:str = None
self.template_id:str = None
self.fullname:str = None
self.powerby = None
self.enable = True
self.chat_db = None
self.unread_msg = Queue() # msg from other agent
self.owner_env : Environment = None
self.owenr_bus = None
@classmethod
def create_from_templete(cls,templete:AIAgentTemplete, fullname:str):
# Agent just inherit from templete on craete,if template changed,agent will not change
result_agent = AIAgent()
result_agent.llm_model_name = templete.llm_model_name
result_agent.max_token_size = templete.max_token_size
result_agent.template_id = templete.template_id
result_agent.agent_id = "agent#" + uuid.uuid4().hex
result_agent.fullname = fullname
result_agent.powerby = templete.author
result_agent.prompt = templete.prompt
return result_agent
def load_from_config(self,config:dict) -> bool:
if config.get("instance_id") is None:
logger.error("agent instance_id is None!")
return False
self.agent_id = config["instance_id"]
if config.get("fullname") is None:
logger.error(f"agent {self.agent_id} fullname is None!")
return False
self.fullname = config["fullname"]
if config.get("prompt") is not None:
self.prompt = AgentPrompt()
self.prompt.load_from_config(config["prompt"])
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"]
return True
def _get_llm_result_type(self,result:str) -> str:
if result == "ignore":
return "ignore"
return "text"
def _get_inner_functions(self) -> dict:
if self.owner_env is None:
return None
all_inner_function = self.owner_env.get_all_ai_functions()
if all_inner_function is None:
return None
result_func = []
for inner_func in all_inner_function:
this_func = {}
this_func["name"] = inner_func.get_name()
this_func["description"] = inner_func.get_description()
this_func["parameters"] = inner_func.get_parameters()
result_func.append(this_func)
return result_func
async def _execute_func(self,inenr_func_call_node:dict,prompt:AgentPrompt,org_msg:AgentMsg) -> str:
from .compute_kernel import ComputeKernel
func_name = inenr_func_call_node.get("name")
arguments = json.loads(inenr_func_call_node.get("arguments"))
func_node : AIFunction = self.owner_env.get_ai_function(func_name)
if func_node is None:
return "execute failed,function not found"
ineternal_call_record = AgentMsg.create_internal_call_msg(func_name,arguments,org_msg.get_msg_id(),org_msg.target)
result_str:str = await func_node.execute(**arguments)
inner_functions = self._get_inner_functions()
prompt.messages.append({"role":"function","content":result_str,"name":func_name})
task_result:ComputeTaskResult = await ComputeKernel.get_instance().do_llm_completion(prompt,self.llm_model_name,self.max_token_size,inner_functions)
ineternal_call_record.result_str = task_result.result_str
ineternal_call_record.done_time = time.time()
org_msg.inner_call_chain.append(ineternal_call_record)
inner_func_call_node = task_result.result_message.get("function_call")
if inner_func_call_node:
return await self._execute_func(inner_func_call_node,prompt,org_msg)
else:
return task_result.result_str
async def _process_msg(self,msg:AgentMsg) -> AgentMsg:
from .compute_kernel import ComputeKernel
session_topic = msg.get_sender() + "#" + msg.topic
chatsession = AIChatSession.get_session(self.agent_id,session_topic,self.chat_db)
if msg.mentions is not None:
if not self.agent_id in msg.mentions:
chatsession.append(msg)
logger.info(f"agent {self.agent_id} recv a group chat message from {msg.sender},but is not mentioned,ignore!")
return None
prompt = AgentPrompt()
prompt.append(self.prompt)
# prompt.append(self._get_knowlege_prompt(the_role.get_name()))
prompt.append(await self._get_prompt_from_session(chatsession)) # chat context
msg_prompt = AgentPrompt()
msg_prompt.messages = [{"role":"user","content":msg.body}]
prompt.append(msg_prompt)
inner_functions = self._get_inner_functions()
task_result:ComputeTaskResult = await ComputeKernel.get_instance().do_llm_completion(prompt,self.llm_model_name,self.max_token_size,inner_functions)
final_result = task_result.result_str
inner_func_call_node = task_result.result_message.get("function_call")
if inner_func_call_node:
#TODO to save more token ,can i use msg_prompt?
final_result = await self._execute_func(inner_func_call_node,prompt,msg)
result_type : str = self._get_llm_result_type(final_result)
is_ignore = False
match result_type:
case "ignore":
is_ignore = True
if is_ignore is not True:
resp_msg = msg.create_resp_msg(final_result)
chatsession.append(msg)
chatsession.append(resp_msg)
return resp_msg
return None
def get_id(self) -> str:
return self.agent_id
def get_fullname(self) -> str:
return self.fullname
def get_template_id(self) -> str:
return self.template_id
def get_llm_model_name(self) -> str:
return self.llm_model_name
def get_max_token_size(self) -> int:
return self.max_token_size
async def _get_prompt_from_session(self,chatsession:AIChatSession,is_groupchat=False) -> AgentPrompt:
# TODO: get prompt from group chat is different from single chat
messages = chatsession.read_history() # read
result_prompt = AgentPrompt()
for msg in reversed(messages):
if msg.sender == self.agent_id:
result_prompt.messages.append({"role":"assistant","content":msg.body})
else:
result_prompt.messages.append({"role":"user","content":msg.body})
return result_prompt