feat:使用pytantic重写了大部分逻辑

This commit is contained in:
朝夕 2026-03-25 20:23:48 +08:00
parent 7a5170b518
commit c672c60af6
53 changed files with 394 additions and 409 deletions

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class ArchonModelRouter:
def __init__(self):
self.handler = {}

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import asyncio
from archonbot.protocol__plugin.event import ArchonMessageEvent
class ArchonWorker:
def __init__(self):
self.workflow_queue = asyncio.Queue()
self.workflow_router = {}
def add_event(self, event: ArchonMessageEvent):
self.workflow_queue.put(event)
async def run(self):
while True:
try:
event : ArchonMessageEvent = self.workflow_queue.get()
match event.target:
case "plugin":
pass
case _:
pass
except:
pass
finally:
pass

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import json
from pathlib import Path
from loguru import logger
from archonbot.workflow_plugin.workflow import Workflow
from archonbot.core.workflow_manager.workflow_generator.workflow_generator import WorkflowGenerator
#工作流管理器,管理所有的工作流
class WorkflowManager:
def __init__(self):
self.workflow_registry = {}
self._load_workflow_registry()
#_load_workflow_registry(加载工作流登记表),在工作流管理器初始化时将工作流文件加载到工作流管理器
def _load_workflow_registry(self) -> None:
plugin_dir = Path("archonbot/workflow_plugin/workflow_list")
for file_path in plugin_dir.glob("*_workflow.json"):
try:
module_name = file_path.stem.rsplit("_",1)[0]
with file_path.open("r", encoding="utf-8") as file:
workflow = json.load(file)
self.workflow_registry[module_name] = workflow.get("description")
logger.success("已加载工作流{}".format(module_name))
except:
logger.warning("工作流文件{}加载失败".format(file_path))
#init_workflow(初始化工作流),创建一个工作流并且注册到工作流管理器,并且生成对应的工作流文件到对应文件夹
def init_workflow(self, workflow_name : str, description : str, metadata : dict, work_link : list) -> None:
try:
WorkflowGenerator.generate(workflow_name, description, metadata, work_link)
self.workflow_registry[workflow_name] = description
logger.success("已创建{}工作流".format(workflow_name))
except FileExistsError:
logger.warning("{}工作流创建失败,错误原因:文件已存在".format(workflow_name))
except Exception as e:
logger.warning("{}工作流创建失败,错误原因:{}".format(workflow_name,e))
#get_workflow(获取工作流将event对象转化为workflow对象并返回
def get_workflow(self, workflow_title : str, workflow_command: str, workflow_name : str) -> Workflow:
if workflow_name not in self.workflow_registry:
logger.error(f"尝试启动未注册的工作流: {workflow_name}")
raise ValueError(f"Workflow {workflow_name} not found in registry.")
workflow = Workflow()
workflow.create_workflow(workflow_title, workflow_command, workflow_name)
return workflow
#get_workflow_list(获取工作流注册表将工作流管理器中已经注册的工作流转化为格式化的json格式返回给llm
def get_workflow_list(self) -> str:
if not self.workflow_registry:
return "目前暂无可用工作流,请先通过指导文件创建。"
workflow_list = [{"workflow_name": workflow_name, "description": description} for workflow_name, description in self.workflow_registry.items()]
workflow_dict = {"name":"可用工作流表", "workflow_list":workflow_list}
return json.dumps(workflow_dict)

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from pathlib import Path
from jinja2 import Template
class WorkflowGenerator:
@staticmethod
def generate(workflow_name : str, description : str, metadata : dict, work_link : list) -> None:
#检查文件是否存在并生成工作流配置文件
target_path = Path("archonbot/workflow_plugin/workflow_list/")
workflow_file = target_path / "{}_workflow.json".format(workflow_name)
target_path.mkdir(parents=True, exist_ok=True)
if workflow_file.exists():
raise FileExistsError(f"file {workflow_file} already exists")
#加载配置模板
current_dir = Path(__file__).parent
template_file = current_dir / "workflow_json_template.j2"
with open(template_file) as f:
template = Template(f.read())
#渲染并生成配置文件
render_context = template.render(name=workflow_name,
description=description,
metadata=metadata,
works=work_link)
with open(workflow_file, "w", encoding="utf-8") as f:
f.write(render_context)

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{
"name": "{{ name }}",
"version": "1.0",
"description": "{{ description }}"
"metadata": {
"limit": {{ metadata.limit | default(10) }}
},
"work_link": [
{% for work in works %}
{{ work | tojson }}{% if not loop.last %},{% endif %}
{% endfor %}
]
}

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import ray
from archonbot.protocol__plugin.model_protocol.modelbase import ModelBase
@ray.remote
class ConsciousnessNode:
def __init__(self):
self.model_id : str
self.path : str
self.adapter : str
self.name : str
self.model_method : ModelBase
async def get_model(self):
return await self.model_method.get_model
async def post_message(self):
return await self.model_method.post_message

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from ulid import ULID
class ArchonMessageEvent:
def __init__(self):
event_id : ULID
user : str
command : str
target : str
requirement : dict
payload : dict
context : dict

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import docker
import socket
class DockerSandBoxManager():
def __init__(self):
pass

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{
"name": "docker_sandbox",
"desc": "一款通过docker实现环境隔离的沙箱环境实现安全地任务实现",
"command": [
{
"name": "read",
"desc": "浏览文件",
"param": {
"-p $PATH": "浏览$PATH下的文件",
"-h $LINE": "浏览前$LINE行文件"
}
},
{
"name": "write",
"desc": "写入文件",
"param": {
"-p $PATH": "写入$PATH下的文件",
"-t $TEXT": "将$TEXT写入文件"
}
},
{
"name": "ls",
"desc": "获取文件列表",
"param": {
"-l $PATH": "获取$PATH下的文件"
}
},
{
}
],
"specification": ""
}

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import docker
import socket
class SandboxClient:
def __init__(self, sandbox_id : int, ):
self.sandbox_id : int
client = docker.from_env()

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FROM ubuntu:latest
LABEL authors="zhaoxi"
ENTRYPOINT ["top", "-b"]

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class ArchonShell:
@staticmethod
def read():
pass
@staticmethod
def write():
pass
@staticmethod
def ls():
pass
@staticmethod
def mkdir():
pass
@staticmethod
def exec_py():
pass
@staticmethod
def exec_shell():
pass
@staticmethod
def kill():
pass
@staticmethod
def submit():
pass

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import os
import sys
from loguru import logger
import socket
import multiprocessing
class ArchonShellServer:
def __init__(self):
self.workspace_path = os.environ.get("ARCHON_WORKSPACE")
self.socket_path = os.environ.get("ARCHON_SOCKET")
self.signal_path = os.environ.get("ARCHON_SIGNAL")
def run(self):
while True:
pass

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from pathlib import Path
import json
from ulid import ULID
class Workflow:
def __init__(self):
self.workflow_id : str = ""
self.workflow_title: str = ""
self.work_link: list = []
self.workflow_description: str = ""
self.workflow_command: str = ""
self.workflow_output: dict = {}
self.workflow_metadata : dict = {}
self.work_demand: dict = {}
self.status: str = ""
def create_workflow(self, trace_id : str, workflow_title: str, workflow_command: str, workflow_name : str) -> None:
current_dir = Path(__file__).parent
workflow_file = current_dir / "workflow_list" / "{}_workflow.json".format(workflow_name)
with workflow_file.open("r", encoding="utf-8") as json_file:
workflow_json = json.load(json_file)
self.workflow_id = "{}_".format(workflow_name) + trace_id
self.workflow_title = workflow_title
self.work_link = workflow_json.get("work_link")
self.workflow_description = workflow_json.get("workflow_description")
self.workflow_command = workflow_command
self.workflow_metadata = workflow_json.get("metadata")
self.status = "step1"
def get_workflow(self) -> str:
workflow = {
"workflow_id":self.workflow_id,
"workflow_title":self.workflow_title,
"work_link":self.work_link,
"workflow_command":self.workflow_command,
"workflow_output":self.workflow_output,
"workflow_metadata":self.workflow_metadata,
"work_demand":self.work_demand,
"status":self.status,
}
workflow = json.dumps(workflow)
return workflow
def set_output(self, step, output) -> None:
self.workflow_output["step:{}".format(step)] = output
def set_work_link(self, work_link: str) -> None:
work_link = json.loads(work_link)
self.work_link = work_link

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{
"name": "programme",
"version": "1.0",
"description": "编写程序的工作链模版,用于完成一个编程任务",
"metadata": {
},
"work_link": [
{
"step": 1,
"node": "consciousness_node",
"action": "architect",
"desc": "构建程序架构,定义子个体需求与工作链变更",
"output": "arch_spec",
"status": "waiting"
},
{
"step": 2,
"node": "control_node",
"action": "spawn_actors",
"desc": "根据 arch_spec 拉起子个体,挂载对应目录",
"input": "arch_spec",
"status": "waiting"
},
{
"step": 3,
"node": "composite_individual",
"action": "decompose",
"desc": "拆解 arch_spec 为原子任务包 (Task Packets)",
"input": "arch_spec",
"output": "task_packets",
"status": "waiting"
},
{
"step": 4,
"node": "primary_individual",
"action": "execute_code",
"desc": "执行编码任务,写入目标文件",
"input": "task_packets",
"output": "source_code",
"status": "waiting"
},
{
"step": 5,
"node": "composite_individual",
"action": "audit",
"desc": "静态逻辑检查与代码规范审计",
"input": "source_code",
"output": "audit_report",
"status": "waiting"
},
{
"step": 6,
"node": "control_node",
"action": "resource_recycle",
"desc": "暂存编码 Actor 状态,释放非必要显存",
"input": "audit_report",
"status": "waiting"
},
{
"step": 7,
"node": "consciousness_node",
"action": "design_test",
"desc": "基于 source_code 设计测试用例架构 (Test Bench)",
"input": "source_code",
"output": "test_spec",
"status": "waiting"
},
{
"step": 8,
"node": "control_node",
"action": "spawn_test_env",
"desc": "拉起测试专用子个体并分配执行环境",
"input": "test_spec",
"status": "waiting"
},
{
"step": 9,
"node": "primary_individual",
"action": "run_test",
"desc": "运行测试并生成实验报告 (Experiment Report)",
"input": "test_spec",
"output": "test_report",
"status": "waiting"
},
{
"step": 10,
"node": "consciousness_node",
"action": "analyze_report",
"desc": "研究测试报告,决定是否触发迭代循环",
"input": "test_report",
"logic_gate": {
"if_fail": "jump_to_step_1",
"if_pass": "continue"
},
"status": "waiting"
},
{
"step": 11,
"node": "consciousness_node",
"action": "finalize",
"desc": "总结全流程报告,提交归档",
"output": "final_package",
"status": "waiting"
},
{
"step": 12,
"node": "supervisory_node",
"action": "terminate_workflow",
"desc": "核对 final_package关闭工作流并向用户反馈",
"input": "final_package",
"status": "waiting"
}
]
}

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import httpx import httpx
import json import json
from typing import List, Dict, Any, AsyncGenerator from typing import List, Dict, Any, AsyncGenerator
from archonbot.protocol__plugin.model_protocol.modelbase import ModelBase from pretor.protocol_plugin.model_protocol.modelbase import ModelBase
class GeminiAdapter(ModelBase): class GeminiAdapter(ModelBase):
def __init__(self, base_url: str, adapter_title: str, api_key: str): def __init__(self, base_url: str, adapter_title: str, api_key: str):

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import httpx import httpx
from archonbot.protocol__plugin.model_protocol.modelbase import ModelBase from pretor.protocol_plugin.model_protocol.modelbase import ModelBase
class OpenAIAdapter(ModelBase): class OpenAIAdapter(ModelBase):
def __init__(self, base_url: str, adapter_title: str, api_key: str = "archon-local"): def __init__(self, base_url: str, adapter_title: str, api_key: str = "archon-local"):

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import asyncio
import ray
from pretor.core.pipeline.pipeline_router import PipelineRouter
from pretor.core.workflow_manager.workflow import PretorWorkflow
from loguru import logger
@ray.remote
class PretorPipeline:
def __init__(self):
self.pipeline = asyncio.Queue()
self.running =True
self.worker_group = []
async def running(self):
for i in range(10):
self.worker_group.append(await self.worker())
async def worker(self):
while True:
workflow = await self.pipeline.get()
try:
logger.info(f"{workflow.title}开始运行")
for work_item in workflow.work_link:
await PipelineRouter.router(workflow, work_item)
except:
logger.error(f"{workflow.title}遭受致命错误,已结束")
continue
async def submit_workflow(self, workflow: PretorWorkflow):
await self.pipeline.put(workflow)
logger.info(f"任务已进入受理队列,当前排队数: {self.pipeline.qsize()}")

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import asyncio
class PipelineRouter:
@staticmethod
async def router(workflow):
pass

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from typing import List, Optional, Union, Dict, Any, Literal
from pydantic import BaseModel, Field
# --- 1. 给 Individual (LLM/Agent) 的具体需求 ---
class IndividualDemand(BaseModel):
role_prompt: str = Field(..., description="赋予该个体的角色定义")
task_goal: str = Field(..., description="该个体的具体执行目标")
expected_output: str = Field(..., description="期望产出的数据结构或格式描述")
# --- 2. 给 Tool (插件/函数调用) 的具体需求 ---
class ToolDemand(BaseModel):
method: str = Field(..., description="插件调用的具体方法名")
args: Dict[str, Any] = Field(default_factory=dict, description="传递给插件的参数")
# --- 3. 给 System (系统/物理资源) 的具体需求 ---
class SystemDemand(BaseModel):
operation: Literal["allocate_resource", "docker_manage", "file_io", "network"]
params: Dict[str, Any] = Field(..., description="操作所需的物理参数,如 GPU 核心数、路径等")
# --- 4. 统一需求入口 (裁判官协议体) ---
class DemandProtocol(BaseModel):
variety: Literal["individual", "tool", "system"]
name: str = Field(..., description="目标名称python_expert, pytest_tool, docker_engine")
content: Union[IndividualDemand, ToolDemand, SystemDemand] = Field(..., description="需求的具体参数细节")

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from abc import ABC,abstractmethod
from pretor.core.workflow_manager.workflow import PretorWorkflow
class RunnableObject(ABC):
@abstractmethod
def __init__(self, **kwargs):
pass
@abstractmethod
async def run(self, workflow: PretorWorkflow) -> None:
pass

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class ToolManager:
def __init__(self):
pass
def _load_tool_registry(self):
pass
def run_tool(self, tool_name, tool_desc):
pass

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from typing import List, Optional, Union, Literal, Dict, Any
from pydantic import BaseModel, Field, model_validator
from ulid import ULID
from pretor.core.protocol.demand_protocol import DemandProtocol
NodeType = Literal[
"consciousness_node", "control_node", "supervisory_node",
"composite_individual", "primary_individual"
]
class LogicGate(BaseModel):
if_fail: str = Field(..., description="失败跳转目标,如 'jump_to_step_1'")
if_pass: Literal["continue", "exit"] = Field(default="continue", description="成功后的动作")
class WorkStep(BaseModel):
step: int = Field(..., gt=0, description="步骤序号,严格自增")
node: NodeType = Field(..., description="负责执行的节点类型")
action: str = Field(..., description="执行的原子动作")
desc: str = Field(..., description="动作细节的自然语言描述,包含人工规范指导")
input: Optional[Union[str, List[str]]] = Field(default=None, description="前置依赖输出")
output: Optional[str] = Field(default=None, description="当前步骤产出物变量名")
logic_gate: Optional[LogicGate] = Field(default=None, description="逻辑跳转控制")
status: Literal["waiting", "running", "completed", "failed"] = Field(
default="waiting",
description="执行状态 (LLM建议保留默认值)"
)
class WorkerGroup(BaseModel):
name: str = Field(..., description="工作组名称,如 'coding_squad'")
primary_individual: Dict[str, int] = Field(..., description="基础子个体配置,例如 {'coder': 2, 'tester': 1}")
composite_individual: Dict[str, int] = Field(..., description="复合子个体配置,例如 {'code_reviewer': 1}")
class WorkflowStatus(BaseModel):
step: int = Field(default=1, gt=0, description="当前运行到的工作流步数")
status: Literal["waiting_llm_working", "waiting_tool_working", "llm_working", "tool_working"] = Field(
default="waiting_llm_working",
description="当前系统调度状态"
)
demand: DemandProtocol = Field(default=None, description="需要的资源或插件调用请求")
class PretorWorkflow(BaseModel):
title: str = Field(..., description="工作流的标题")
workgroup_list: List[WorkerGroup] = Field(..., description="工作组资源编排列表")
work_link: List[WorkStep] = Field(..., description="工作链逻辑定义")
# ---------------- 以下为系统级管控字段LLM 无需关心 ---------------- #
trace_id: str = Field(default_factory=lambda: str(ULID()), description="系统自动生成的追溯ID")
version: str = Field(default="v1.0", description="系统协议版本号")
command: Optional[str] = Field(default=None, description="触发此工作流的原始命令")
output: Dict[str, Any] = Field(default_factory=dict, description="工作流最终产出结果")
status: WorkflowStatus = Field(default_factory=WorkflowStatus, description="运行时状态对象")
@model_validator(mode='after')
def validate_workflow_integrity(self) -> 'PretorWorkflow':
steps = [s.step for s in self.work_link]
expected = list(range(1, len(steps) + 1))
if steps != expected:
raise ValueError(f"工作链步数不连续!期望 {expected},实际 {steps}")
max_step = len(steps)
for s in self.work_link:
if s.logic_gate and "jump_to_step_" in s.logic_gate.if_fail:
try:
target = int(s.logic_gate.if_fail.split("_")[-1])
if target > max_step or target < 1:
raise ValueError(f"Step {s.step} 的跳转目标 Step {target} 越界了!")
except ValueError as e:
if "越界" in str(e): raise e
raise ValueError(f"LogicGate 格式错误: {s.logic_gate.if_fail}")
return self

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import json
from pretor.core.workflow_manager.workflow_template_generator.workflow_template_generator import WorkflowTemplateGenerator
from pretor.core.workflow_manager.workflow import PretorWorkflow
from pathlib import Path
from loguru import logger
class WorkflowManager:
def __init__(self):
self.workflow_template_generator = WorkflowTemplateGenerator()
self.workflow_templates_registry = {}
self.template_path = Path("pretor/workflow_plugin")
self._load_workflow_template()
def _load_workflow_template(self) -> None:
for workflow_template_file in self.template_path.glob("*_workflow_template.json"):
with workflow_template_file.open("r",encoding="utf-8") as f:
try:
workflow_template = json.load(f)
self.workflow_templates_registry[workflow_template.get("name")] = workflow_template.get("desc")
except json.decoder.JSONDecodeError:
logger.warning(f"{workflow_template_file}不是json文件或格式错误")
except KeyError:
logger.warning(f"{workflow_template_file}不符合workflow_template格式")
def generate_workflow_template(self, name: str, desc: str, steps: list) -> None:
try:
self.workflow_template_generator.generate_workflow_template(name=name, desc=desc, steps=steps)
except:
pass
@staticmethod
def create_workflow(workflow_json: str) -> PretorWorkflow:
workflow = PretorWorkflow.model_validate_json(workflow_json)
return workflow

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# workflow文档
---
- workflow(工作流)是作为pretor中运行任务的基本单位workflow_manager管理整个workflow模块包括生成workflow_template(工作流模板),生成workflow对象和保存整个workflow_template表。
- workflow_template是一个工作流模板旨在由专业人士教导LLM如何编写工作流并进行任务每个workflow_template都应该保存在 **pretor/workflow_pugin/** 文件夹下,保存格式为~_workflow_template.jsonjson格式为:
```json
{
"name": "",
"desc": "",
"work_link": [
{
"step": "",
"node": "",
"action": "",
"desc": "",
"input": [],
"output": [],
"logic_gate": {}
}
]
}
```
- workflow_template将由监管节点挑选交给意识节点意识节点按照参考模板生成标准的workflow对象转交给pipeline开始执行任务链。

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from pydantic import BaseModel, model_validator
from typing import Dict,List
class WorkflowTemplateStep(BaseModel):
step: int
node: str
action: str
desc: str
input: List[str]
output: List[str]
logic_gate: Dict[str, str]
class WorkflowTemplate(BaseModel):
name: str
desc: str
work_link: list[WorkflowTemplateStep]
@model_validator(mode='after')
def validate_steps(self) -> 'WorkflowTemplate':
steps = [s.step for s in self.work_link]
if len(steps) != len(set(steps)):
raise ValueError("Step numbers in work_link must be unique")
return self

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from pathlib import Path
from pretor.core.workflow_manager.workflow_template_generator.workflow_template import WorkflowTemplate
class WorkflowTemplateGenerator:
@staticmethod
def generate_workflow_template(name: str, desc: str, steps: list) -> None:
workflow_template = WorkflowTemplate(name=name, desc=desc, work_link=steps)
output_dir = Path("pretor.workflow_plugin")
if not output_dir.exists():
output_dir.mkdir(parents=True)
output_file = output_dir / f"{name}_workflow_template.json"
with output_file.open("w", encoding="utf-8") as f:
f.write(workflow_template.model_dump_json(indent=4))

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from pretor.core.protocol.runnable_object import RunnableObject
from pretor.core.workflow_manager.workflow import PretorWorkflow
from pretor.adapter_plugin.model_adapter.modelbase import ModelBase
import ray
from typing import Any,Dict
from pretor.individual_plugin.control_node.control_register import ControlRegister
from pretor.utils.inspector import inspector
#control_node 管控节点,掌管系统的全局状态
@ray.remote
class ControlNode(RunnableObject):
def __init__(self, **kwargs: Dict[str: Any]) -> None:
self.model_adapter : ModelBase = kwargs.get("model_adapter")
self.model : str = kwargs.get("model")
self.name : str = kwargs.get("name", "管控节点")
self.control_register = ControlRegister()
def _load_control_register(self) :
pass
@inspector("individual","control_node")
async def run(self, workflow : PretorWorkflow) -> None:
control_register = self.control_register.model_dump_json()
demand = workflow.status.content.demand.model_dump_json()

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from pydantic import BaseModel, Field
from typing import List, Dict, Any, Literal, Union, Optional
class SystemItem(BaseModel):
command_template: str = Field(..., description="底层 shell 命令模板")
args_schema: Dict[str, Any] = Field(default_factory=dict, description="该指令接受的参数约束")
class IndividualItem(BaseModel):
description: str
params: Dict[str: str]
base_prompt: str = Field(..., description="个体的基础人格/背景设定")
class ToolItem(BaseModel):
description: str
plugin_path: str = Field(..., description="插件物理路径或类路径")
class ControlRegister(BaseModel):
# 统一使用 Dict方便通过 name 快速索引:{ "name": ItemObject }
system_registry: Dict[str, SystemItem] = Field(default_factory=dict)
individual_registry: Dict[str, IndividualItem] = Field(default_factory=dict)
tool_registry: Dict[str, ToolItem] = Field(default_factory=dict)
global_information : Dict[str, str] = Field(default_factory=dict)

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2
pretor/utils/error.py Normal file
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class DemandError(Exception):
pass

11
pretor/utils/inspector.py Normal file
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from pretor.utils.error import DemandError
def inspector(variety: str, name: str):
def decorator(func):
def wrapper(*args, **kwargs):
demand = args[1].status.demand
if demand.variety != variety and demand.name != name:
raise DemandError("需求目标对象错误或名称错误!")
return func(*args, **kwargs)
return wrapper
return decorator

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{
"name": "programme",
"desc": "一个示范型的编程工作流",
"work_link": [
{
"step": 1,
"node": "consciousness_node",
"action": "architect",
"desc": "【人类规范】分析用户需求,构建程序整体架构,定义需要拉起的子个体名称与数量。"
},
{
"step": 2,
"node": "control_node",
"action": "spawn_actors",
"desc": "【人类规范】根据架构要求,拉起对应的开发与测试工作组,并挂载 /workspace 目录。"
},
{
"step": 3,
"node": "composite_individual",
"action": "decompose",
"desc": "【人类规范】将整体架构拆解为可独立执行的原子任务包 (Task Packets)。",
"output": "task_packets"
},
{
"step": 4,
"node": "primary_individual",
"action": "execute_code",
"desc": "【人类规范】执行编码任务,必须确保所有代码写入指定的挂载目录。",
"input": "task_packets",
"output": "source_code"
},
{
"step": 5,
"node": "composite_individual",
"action": "audit",
"desc": "【人类规范】对产出的源码进行静态逻辑检查与 PEP8 代码规范审计。",
"input": "source_code",
"output": "audit_report"
},
{
"step": 6,
"node": "control_node",
"action": "resource_recycle",
"desc": "【安全规范】暂存当前编码子个体的状态,释放非必要显存,为测试环境腾出算力。",
"input": "audit_report"
},
{
"step": 7,
"node": "consciousness_node",
"action": "design_test",
"desc": "【人类规范】基于源码设计测试用例架构,覆盖边缘场景。",
"input": "source_code",
"output": "test_spec"
},
{
"step": 8,
"node": "primary_individual",
"action": "run_test",
"desc": "【人类规范】在独立的 Docker 沙箱中运行 test并生成结构化的实验报告。",
"input": "test_spec",
"output": "test_report"
},
{
"step": 9,
"node": "consciousness_node",
"action": "analyze_report",
"desc": "【逻辑网关】研究测试报告。如果存在 Error 或 Fail必须触发逻辑跳转重写代码。",
"input": "test_report",
"logic_gate": {
"if_fail": "jump_to_step_4",
"if_pass": "continue"
}
},
{
"step": 10,
"node": "supervisory_node",
"action": "terminate_workflow",
"desc": "【系统规范】核对所有产出物,关闭工作流管道,向宿主机发送 .done 信号。",
"input": ["source_code", "test_report"]
}
]
}