Refactor the code to make it comply with PEP-8 standards:Convert all class definitions to CamelCase style.

(issue 37)
This commit is contained in:
Liu Zhicong
2023-08-23 11:19:16 -07:00
parent 23963adc6e
commit 5454009e7b
21 changed files with 601 additions and 603 deletions
+7 -7
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@@ -1,7 +1,7 @@
from .environment import environment,environment_event
from .agent import agent_msg,ai_agent,ai_agent_templete
from .compute_kernel import compute_kernel,compute_task
from .compute_node import compute_node,local_compute_node
from .open_ai_node import open_ai_compute_node
from .role import ai_role,ai_role_group
from .workflow import ai_workflow
from .environment import Environment,EnvironmentEvent
from .agent import AgentMsg,AIAgent,AIAgentTemplete
from .compute_kernel import ComputeKernel,ComputeTask
from .compute_node import ComputeNode,LocalComputeNode
from .open_ai_node import OpenAI_ComputeNode
from .role import AIRole,AIRoleGroup
from .workflow import Workflow
+9 -9
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@@ -4,7 +4,7 @@ import logging
logger = logging.getLogger(__name__)
class agent_msg:
class AgentMsg:
def __init__(self) -> None:
self.sender = None
self.target = None
@@ -23,7 +23,7 @@ class agent_msg:
def parser_target(self,target:str) -> None:
pass
class agent_prompt:
class AgentPrompt:
def __init__(self) -> None:
pass
@@ -35,18 +35,18 @@ class agent_prompt:
# chat session store the chat history between owner and agent
# chat session might be large, so can read / write at stream mode.
class ai_chat_session:
class AIChatSession:
def __init__(self) -> None:
pass
def get_owner_id(self) -> str:
pass
def append_post(self,msg:agent_msg) -> None:
def append_post(self,msg:AgentMsg) -> None:
"""append msg to session, msg is post from session (owner => msg.target)"""
pass
def append_recv(self,msg:agent_msg) -> None:
def append_recv(self,msg:AgentMsg) -> None:
"""append msg to session, msg is recv from msg'sender (msg.sender => owner)"""
pass
@@ -56,11 +56,11 @@ class ai_chat_session:
#TODO : add iterator interface for read chat history
class ai_agent_templete:
class AIAgentTemplete:
def __init__(self) -> None:
pass
class ai_agent:
class AIAgent:
def __init__(self) -> None:
self.chat_sessions = None
self.llm_model_name = None
@@ -74,10 +74,10 @@ class ai_agent:
def get_template_id(self) -> str:
return self.template_id
def get_chat_session_for_msg(self,msg:agent_msg) -> ai_chat_session:
def get_chat_session_for_msg(self,msg:AgentMsg) -> AIChatSession:
pass
def get_chat_session(self,sender:str,session_id:str) -> ai_chat_session:
def get_chat_session(self,sender:str,session_id:str) -> AIChatSession:
pass
def get_llm_model_name(self) -> str:
+2 -2
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@@ -1,4 +1,4 @@
class ai_function:
class AIFunction:
def __init__(self) -> None:
self.intro : str = None
@@ -21,7 +21,7 @@ class ai_function:
pass
# call chain is a combination of ai_function,group of ai_function.
class call_chain:
class CallChain:
def __init__(self) -> None:
pass
+3 -3
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@@ -1,14 +1,14 @@
# aiso shell like bash of linux
from .workflow import ai_workflow
from .workflow import Workflow
class aios_shell:
class AIOS_Shell:
def __init__(self,username:str) -> None:
pass
async def send_msg(self,msg:str,target_workflow:str) -> str:
pass
async def install_workflow(self,workflow_id:ai_workflow) -> None:
async def install_workflow(self,workflow_id:Workflow) -> None:
pass
+12 -12
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@@ -3,25 +3,25 @@ from typing import Optional
import logging
import asyncio
from .agent import agent_prompt
from .compute_node import compute_node
from .agent import AgentPrompt
from .compute_node import ComputeNode
logger = logging.getLogger(__name__)
# How to dispatch different computing tasks (some tasks may contain a large amount of state for correct execution)
# to suitable computing nodes, achieving a balance of speed, cost, and power consumption,
# is the CORE GOAL of the entire computing task schedule system (aios_kernel).
class compute_task(ABC):
class ComputeTask(ABC):
@abstractmethod
def display(self) -> str:
pass
class compute_kernel:
class ComputeKernel:
_instance = None
def __new__(cls):
if cls._instance is None:
cls._instance = super(compute_kernel, cls).__new__(cls)
cls._instance = super(ComputeKernel, cls).__new__(cls)
return cls._instance
def __init__(self) -> None:
@@ -29,7 +29,7 @@ class compute_kernel:
self.is_start = False
pass
def run(self,task:compute_task) -> None:
def run(self,task:ComputeTask) -> None:
# check there is compute node can support this task
if self.is_task_support(task) is False:
logger.error(f"task {task.display()} is not support by any compute node")
@@ -47,31 +47,31 @@ class compute_kernel:
async def _run_task_loop():
while True:
task = self.task_queue.pop(0)
c_node:compute_node= await self._schedule(task)
c_node:ComputeNode= await self._schedule(task)
c_node.push_task(task)
asyncio.create_task(_run_task_loop())
async def _schedule(self,task) -> compute_node:
async def _schedule(self,task) -> ComputeNode:
pass
def add_compute_node(self,node:compute_node):
def add_compute_node(self,node:ComputeNode):
pass
def disable_compute_node(self,):
pass
def is_task_support(self,task:compute_task) -> bool:
def is_task_support(self,task:ComputeTask) -> bool:
pass
# friendly interface for use:
def llm_completion(self,prompt:agent_prompt,mode_name:Optional[str] = None,max_token:int = 0) -> compute_task:
def llm_completion(self,prompt:AgentPrompt,mode_name:Optional[str] = None,max_token:int = 0) -> ComputeTask:
# craete a llm_work_task ,push on queue's end
# then task_schedule would run this task.(might schedule some work_task to another host)
pass
async def do_llm_completion(self,prompt:agent_prompt,mode_name:Optional[str] = None,max_token:int = 0) -> str:
async def do_llm_completion(self,prompt:AgentPrompt,mode_name:Optional[str] = None,max_token:int = 0) -> str:
pass
+4 -4
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@@ -1,9 +1,9 @@
from abc import ABC, abstractmethod
from .compute_kernel import compute_task
from .compute_kernel import ComputeTask
class compute_node(ABC):
class ComputeNode(ABC):
@abstractmethod
async def push_task(self,task:compute_task,proiority:int = 0):
async def push_task(self,task:ComputeTask,proiority:int = 0):
pass
async def remove_task(self,task_id:str):
@@ -38,7 +38,7 @@ class compute_node(ABC):
class local_compute_node(compute_node):
class LocalComputeNode(ComputeNode):
def display(self) -> str:
return super().display()
+3 -3
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@@ -4,14 +4,14 @@
from abc import ABC, abstractmethod
from typing import Callable
from .agent import agent_msg
from .agent import AgentMsg
class environment_event(ABC):
class EnvironmentEvent(ABC):
@abstractmethod
def display(self) -> str:
pass
class environment:
class Environment:
def __init__(self) -> None:
pass
+2 -2
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@@ -1,6 +1,6 @@
from .compute_node import compute_node
from .compute_node import ComputeNode
class open_ai_compute_node(compute_node):
class OpenAI_ComputeNode(ComputeNode):
def display(self) -> str:
return super().display()
+5 -5
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@@ -1,22 +1,22 @@
from .agent import ai_agent
from .agent import AIAgent
class ai_role:
class AIRole:
def __init__(self) -> None:
self.agent_instance_id : str = None
self.role_name : str = None
self.agent : ai_agent = None
self.agent : AIAgent = None
self.introduce : str = None
def load_from_config(self,config:dict) -> bool:
pass
def get_intro(self) -> str:
return self.introduce
def get_name(self) -> str:
return self.role_name
class ai_role_group:
class AIRoleGroup:
def __init__(self) -> None:
self.roles : dict[str,str]= None
pass
+43 -43
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@@ -3,26 +3,26 @@ import logging
import asyncio
from typing import Optional,Tuple
from .environment import environment,environment_event
from .agent import agent_prompt,agent_msg,ai_chat_session
from .role import ai_role
from .ai_function import call_chain
from .compute_kernel import compute_kernel
from .environment import Environment,EnvironmentEvent
from .agent import AgentPrompt,AgentMsg,AIChatSession
from .role import AIRole
from .ai_function import CallChain
from .compute_kernel import ComputeKernel
logger = logging.getLogger(__name__)
class ai_message_filter:
class MessageFilter:
def __init__(self) -> None:
pass
def select(self,msg:agent_msg) -> ai_role:
def select(self,msg:AgentMsg) -> AIRole:
pass
class ai_workflow:
class Workflow:
def __init__(self) -> None:
self.rule_prompt : agent_prompt = None
self.rule_prompt : AgentPrompt = None
self.workflow_config = None
self.role_group = None
self.input_filter : ai_message_filter= None
self.input_filter : MessageFilter= None
self.msg_queue = []
self.connected_environment = {}
@@ -33,70 +33,70 @@ class ai_workflow:
# When processing one message, it can process another message at the same time.
# chatsession is synchronous, it has to wait for the previous message to finish processing before it can process the next message.
# Therefore, post a message needs to specify the session_id explicitly, if not specified it will be automatically created by workflow.
def post_msg(self,msg:agent_msg) -> None:
def post_msg(self,msg:AgentMsg) -> None:
self.msg_queue.append(msg)
return
async def send_msg(self,msg:agent_msg) -> str:
async def send_msg(self,msg:AgentMsg) -> str:
pass
async def run(self):
# TODO add tracking design of msg processing
while True:
the_msg = await self._pop_msg()
chatsession:ai_chat_session = self._get_chat_session_for_msg(the_msg)
chatsession:AIChatSession = self._get_chat_session_for_msg(the_msg)
if chatsession is None:
logger.error(f"get_chat_session_for_msg return None for :{the_msg}")
continue
chatsession.append_recv(the_msg)
async def _process_msg(msg:agent_msg,the_role) -> None:
async def _process_msg(msg:AgentMsg,the_role) -> None:
# prompt generat progress is most important part of workflow(app) develope
prompt = agent_prompt()
prompt = AgentPrompt()
prompt.append(the_role.get_prompt())
prompt.append(self.get_workflow_rule_prompt())
prompt.append(self._get_function_prompt(the_role.get_name()))
prompt.append(self._get_knowlege_prompt(the_role.get_name()))
prompt.append(await self._get_prompt_from_session(chatsession,the_role.get_name())) # chat context
result = await compute_kernel().do_llm_completion(prompt,the_role.agent.get_llm_model_name(),the_role.agent.get_max_token_size())
result = await ComputeKernel().do_llm_completion(prompt,the_role.agent.get_llm_model_name(),the_role.agent.get_max_token_size())
final_result = result
result_type : str = self._get_llm_result_type(result)
is_ignore = False
match result_type:
case "function":
callchain:call_chain = self._parse_function_call_chain(result)
callchain:CallChain = self._parse_function_call_chain(result)
resp = await callchain.exec()
if callchain.have_result():
# generator proc resp prompt with WAITING state
proc_resp_prompt:agent_prompt = self._get_resp_prompt(resp,msg,the_role,prompt,chatsession)
final_result = await compute_kernel().do_llm_completion(proc_resp_prompt,the_role.agent.get_llm_model_name(),the_role.agent.get_max_token_size())
proc_resp_prompt:AgentPrompt = self._get_resp_prompt(resp,msg,the_role,prompt,chatsession)
final_result = await ComputeKernel().do_llm_completion(proc_resp_prompt,the_role.agent.get_llm_model_name(),the_role.agent.get_max_token_size())
return final_result
case "send_message":
# send message to other / sub workflow
next_msg:agent_msg = self._parse_to_msg(result)
next_msg:AgentMsg = self._parse_to_msg(result)
if next_msg is not None:
# TODO: Next Target can be another role in workflow
next_workflow:ai_workflow = self.get_workflow(next_msg.get_target())
next_workflow:Workflow = self.get_workflow(next_msg.get_target())
inner_chat_session = the_role.agent.get_chat_session(next_msg.get_target(),next_msg.get_session_id())
inner_chat_session.append_post(next_msg)
resp = await next_workflow.send_msg(next_msg)
inner_chat_session.append_recv(resp)
# generator proc resp prompt with WAITING state
proc_resp_prompt:agent_prompt = self._get_resp_prompt(resp,msg,the_role,prompt,chatsession)
final_result = await compute_kernel().do_llm_completion(proc_resp_prompt,the_role.agent.get_llm_model_name(),the_role.agent.get_max_token_size())
proc_resp_prompt:AgentPrompt = self._get_resp_prompt(resp,msg,the_role,prompt,chatsession)
final_result = await ComputeKernel().do_llm_completion(proc_resp_prompt,the_role.agent.get_llm_model_name(),the_role.agent.get_max_token_size())
return final_result
case "post_message":
# post message to other / sub workflow
next_msg:agent_msg = self._parse_to_msg(result)
next_msg:AgentMsg = self._parse_to_msg(result)
if next_msg is not None:
next_workflow:ai_workflow = self.get_workflow(next_msg.get_target())
next_workflow:Workflow = self.get_workflow(next_msg.get_target())
inner_chat_session = the_role.agent.get_chat_session(next_msg.get_target(),next_msg.get_session_id())
inner_chat_session.append_post(next_msg)
next_workflow.post_msg(next_msg)
@@ -113,7 +113,7 @@ class ai_workflow:
return result
async def _workflow_process_msg(msg:agent_msg) -> None:
async def _workflow_process_msg(msg:AgentMsg) -> None:
final_result = None
if self.input_filter is not None:
select_role = self.input_filter.select(msg)
@@ -134,7 +134,7 @@ class ai_workflow:
# merge result from all roles
# TODO: one input msg can have multiple result msg, at this while ,we only support one result msg
final_result:agent_msg = self._merge_msg_result(results)
final_result:AgentMsg = self._merge_msg_result(results)
if chatsession is not None:
chatsession.append_post(final_result)
@@ -144,59 +144,59 @@ class ai_workflow:
asyncio.create_task(_workflow_process_msg(the_msg))
async def _pop_msg(self) -> agent_msg:
async def _pop_msg(self) -> AgentMsg:
pass
def _get_chat_session_for_msg(self,msg:agent_msg) -> ai_chat_session:
def _get_chat_session_for_msg(self,msg:AgentMsg) -> AIChatSession:
pass
async def _get_prompt_from_session(self,chatsession:ai_chat_session,role_name:str) -> agent_prompt:
async def _get_prompt_from_session(self,chatsession:AIChatSession,role_name:str) -> AgentPrompt:
pass
def _get_msg_queue(self,session_id:str):
pass
def _merge_msg_result(self,results:dict) -> agent_msg:
def _merge_msg_result(self,results:dict) -> AgentMsg:
pass
def _get_function_prompt(self,role_name:str) -> agent_prompt:
def _get_function_prompt(self,role_name:str) -> AgentPrompt:
pass
def _get_knowlege_prompt(self,role_name:str) -> agent_prompt:
def _get_knowlege_prompt(self,role_name:str) -> AgentPrompt:
pass
def _get_resp_prompt(self,resp:str,msg:agent_msg,role:ai_role,prompt:agent_prompt,chatsession:ai_chat_session) -> agent_prompt:
def _get_resp_prompt(self,resp:str,msg:AgentMsg,role:AIRole,prompt:AgentPrompt,chatsession:AIChatSession) -> AgentPrompt:
pass
def get_workflow_rule_prompt(self) -> agent_prompt:
def get_workflow_rule_prompt(self) -> AgentPrompt:
return self.rule_prompt
def _get_llm_result_type(self,llm_resp_str:str) -> str:
pass
def _parse_function_call_chain(self,llm_resp_str) -> call_chain:
def _parse_function_call_chain(self,llm_resp_str) -> CallChain:
pass
def _parse_to_msg(self,llm_resp_str) -> agent_msg:
def _parse_to_msg(self,llm_resp_str) -> AgentMsg:
pass
def get_workflow(self,workflow_name:str) -> ai_workflow:
def get_workflow(self,workflow_name:str) -> Workflow:
"""get workflow from known workflow list or sub workflow list"""
pass
def _env_event_to_msg(self,env_event:environment_event) -> agent_msg:
def _env_event_to_msg(self,env_event:EnvironmentEvent) -> AgentMsg:
pass
def get_inner_environment(self,env_id:str) -> environment:
def get_inner_environment(self,env_id:str) -> Environment:
pass
def connect_to_environment(self,env:environment) -> None:
def connect_to_environment(self,env:Environment) -> None:
the_env = self.connected_environment.get(env.get_id())
if the_env is None:
self.connected_environment[env.get_id()] = env
def _env_msg_handler(env_event:environment_event) -> None:
the_msg:agent_msg= self._env_event_to_msg(env_event)
def _env_msg_handler(env_event:EnvironmentEvent) -> None:
the_msg:AgentMsg= self._env_event_to_msg(env_event)
self.post_msg(the_msg)
# register all event handler