""" 浏览器调研示例 使用 Agent 模式 + 浏览器工具进行网络调研 """ import os import sys import asyncio from pathlib import Path # 添加项目根目录到 Python 路径 sys.path.insert(0, str(Path(__file__).parent.parent.parent)) from dotenv import load_dotenv load_dotenv() from agent.llm.prompts import SimplePrompt from agent.core.runner import AgentRunner from agent.execution import ( FileSystemTraceStore, Trace, Message, ) from agent.llm import create_openrouter_llm_call async def main(): # 路径配置 base_dir = Path(__file__).parent project_root = base_dir.parent.parent prompt_path = base_dir / "test.prompt" output_dir = base_dir / "output" output_dir.mkdir(exist_ok=True) # Skills 目录(可选:用户自定义 skills) # 注意:内置 skills(agent/skills/core.md)会自动加载 skills_dir = None # 或者指定自定义 skills 目录,如: project_root / "skills" print("=" * 60) print("浏览器调研任务 (Agent 模式)") print("=" * 60) print() # 1. 加载 prompt print("1. 加载 prompt...") prompt = SimplePrompt(prompt_path) # 提取配置 system_prompt = prompt._messages.get("system", "") user_task = prompt._messages.get("user", "") model_name = prompt.config.get('model', 'gemini-2.5-flash') temperature = float(prompt.config.get('temperature', 0.3)) print(f" - 任务: {user_task[:80]}...") print(f" - 模型: {model_name}") # 2. 构建消息 print("2. 构建任务消息...") messages = prompt.build_messages() # 3. 创建 Agent Runner(配置 skills 和浏览器工具) print("3. 创建 Agent Runner...") print(f" - Skills 目录: {skills_dir}") print(f" - 模型: {model_name} (via OpenRouter)") # 使用 OpenRouter 的 Gemini 模型 runner = AgentRunner( trace_store=FileSystemTraceStore(base_path=".trace"), llm_call=create_openrouter_llm_call(model=f"google/{model_name}"), skills_dir=skills_dir, debug=True # 启用 debug,输出到 .trace/ ) # 4. Agent 模式执行 print(f"4. 启动 Agent 模式...") print() final_response = "" current_trace_id = None async for item in runner.run( task=user_task, messages=messages, system_prompt=system_prompt, model=f"google/{model_name}", temperature=temperature, max_iterations=20, # 调研任务可能需要更多迭代 ): # 处理 Trace 对象(整体状态变化) if isinstance(item, Trace): current_trace_id = item.trace_id if item.status == "running": print(f"[Trace] 开始: {item.trace_id[:8]}") elif item.status == "completed": print(f"[Trace] 完成") print(f" - Total messages: {item.total_messages}") print(f" - Total tokens: {item.total_tokens}") print(f" - Total cost: ${item.total_cost:.4f}") elif item.status == "failed": print(f"[Trace] 失败: {item.error_message}") # 处理 Message 对象(执行过程) elif isinstance(item, Message): if item.role == "assistant": content = item.content if isinstance(content, dict): text = content.get("text", "") tool_calls = content.get("tool_calls") if text and not tool_calls: # 纯文本回复(最终响应) final_response = text print(f"[Response] Agent 完成") elif text: print(f"[Assistant] {text[:100]}...") if tool_calls: for tc in tool_calls: tool_name = tc.get("function", {}).get("name", "unknown") print(f"[Tool Call] {tool_name}") elif item.role == "tool": content = item.content if isinstance(content, dict): tool_name = content.get("tool_name", "unknown") print(f"[Tool Result] {tool_name}") if item.description: desc = item.description[:80] if len(item.description) > 80 else item.description print(f" {desc}...") # 5. 输出结果 print() print("=" * 60) print("Agent 响应:") print("=" * 60) print(final_response) print("=" * 60) print() # 6. 保存结果 output_file = output_dir / "research_result.txt" with open(output_file, 'w', encoding='utf-8') as f: f.write(final_response) print(f"✓ 结果已保存到: {output_file}") print() # 提示使用 API 可视化 print("=" * 60) print("可视化 Step Tree:") print("=" * 60) print("1. 启动 API Server:") print(" python3 api_server.py") print() print("2. 浏览器访问:") print(" http://localhost:8000/api/traces") print() print(f"3. Trace ID: {current_trace_id}") print("=" * 60) if __name__ == "__main__": asyncio.run(main())