# Copyright 2026 zhaoxi826 # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. from pydantic_ai import Agent, RunContext from pydantic import Field from pretor.adapter.model_adapter.agent_factory import AgentFactory from pretor.core.global_state_machine.model_provider.base_provider import Provider from pretor.utils.agent_model import ResponseModel, InputModel, DepsModel from pretor.utils.ray_hook import ray_actor_hook from pretor.utils.logger import get_logger logger = get_logger('worker_individual') class WorkerIndividualResponse(ResponseModel): output: str = Field(..., description="Worker执行任务的输出结果") class WorkerIndividualDeps(DepsModel): task_event: dict class WorkerIndividualInput(InputModel): task_event: dict class BaseIndividual: """ Worker Individual 的基类 """ def __init__(self, agent_config: dict): self.agent_config = agent_config self.agent_id = agent_config.get("agent_id") self.agent: Agent | None = None async def _init_agent(self, agent_name: str, system_prompt: str): global_state_machine = ray_actor_hook("global_state_machine").global_state_machine provider_title = self.agent_config.get("provider_title", "openai") # default fallback model_id = self.agent_config.get("model_id", "gpt-4o") # default fallback provider: Provider = await global_state_machine.get_provider.remote( provider_title) agent_factory = AgentFactory() self.agent = agent_factory.create_agent( provider=provider, model_id=model_id, output_type=WorkerIndividualResponse, system_prompt=system_prompt, deps_type=WorkerIndividualDeps, agent_name=agent_name ) @self.agent.system_prompt async def dynamic_prompt(ctx: RunContext[WorkerIndividualDeps]): prompt = system_prompt + "\n\n" prompt += ( f"=== 当前任务上下文 ===\n" f"{ctx.deps.task_event}\n" ) return prompt async def run(self, task_event: dict) -> dict: raise NotImplementedError("子类必须实现 run 方法") class SkillIndividual(BaseIndividual): """ 专家子个体:拥有专业 skill 的 agent。 """ def __init__(self, agent_config: dict): super().__init__(agent_config) async def run(self, task_event: dict) -> dict: if self.agent is None: system_prompt = self.agent_config.get("prompt", "你是一个拥有专业技能的专家级AI助手,请利用你的专业知识完成给定的任务。") await self._init_agent("skill_individual", system_prompt) deps = WorkerIndividualDeps(task_event=task_event) self.agent.retries = 3 # In actual usage, tools could be dynamically loaded here based on agent_config # tool = get_tool("skill_individual") try: result = await self.agent.run( f"请执行以下任务:\n{task_event}", deps=deps # tools=tool ) return {"output": result.data.output} except Exception as e: logger.exception(f"SkillIndividual {self.agent_id} 执行失败: {e}") raise class OrdinaryIndividual(BaseIndividual): """ 普通子个体:普通的 agent。 """ def __init__(self, agent_config: dict): super().__init__(agent_config) async def run(self, task_event: dict) -> dict: if self.agent is None: system_prompt = self.agent_config.get("prompt", "你是一个普通的AI助手,请尽力完成给定的任务。") await self._init_agent("ordinary_individual", system_prompt) deps = WorkerIndividualDeps(task_event=task_event) self.agent.retries = 3 try: result = await self.agent.run( f"请执行以下任务:\n{task_event}", deps=deps ) return {"output": result.data.output} except Exception as e: logger.exception(f"OrdinaryIndividual {self.agent_id} 执行失败: {e}") raise class SpecialIndividual(BaseIndividual): """ 特殊子个体:执行特殊任务的 agent,如生成语音、视频等。 """ def __init__(self, agent_config: dict): super().__init__(agent_config) async def run(self, task_event: dict) -> dict: if self.agent is None: system_prompt = self.agent_config.get("prompt", "你是一个特殊的AI助手,负责处理特殊类型的任务。") await self._init_agent("special_individual", system_prompt) deps = WorkerIndividualDeps(task_event=task_event) self.agent.retries = 3 try: result = await self.agent.run( f"请执行以下任务:\n{task_event}", deps=deps ) return {"output": result.data.output} except Exception as e: logger.exception(f"SpecialIndividual {self.agent_id} 执行失败: {e}") raise