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FiDA_Python/src/server/agent/graph.py

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from typing import Literal
from langchain_core.messages import AIMessage
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from langchain_core.runnables import RunnableConfig
from langchain_qwq import ChatQwen
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from langgraph.graph import StateGraph, END, START
from pydantic import BaseModel
from pymongo import MongoClient
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from src.core.config import MONGO_URI, settings
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from src.server.agent.state import AgentState
from src.server.agent.agents import designer_node, researcher_node, visualizer_node, suggester_node
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from langgraph.checkpoint.mongodb import MongoDBSaver
# --- Supervisor (路由逻辑) ---
# 定义路由的输出结构,强制 LLM 选择一个
class RouteResponse(BaseModel):
# 将 FINISH 替换或增加 Suggester
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next: Literal["Designer", "Researcher", "Visualizer", "Suggester", "FINISH"]
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llm_supervisor = ChatQwen(
model="qwen3.5-flash",
max_tokens=3_000,
timeout=None,
max_retries=2,
api_key=settings.QWEN_API_KEY)
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def supervisor_node(state: AgentState, config: RunnableConfig):
use_report = config["configurable"].get("use_report", False)
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messages = state["messages"]
if not messages:
return {"next": "Suggester"}
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last_message = messages[-1]
# --- 拦截逻辑修改 ---
# 如果专家已经回复完了AIMessage 且无工具调用),则交给 Suggester 生成按钮
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if isinstance(last_message, AIMessage) and not last_message.tool_calls:
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should_go_to_suggester = state.get("require_suggestion", False)
# 如果符合建议条件
if should_go_to_suggester:
return {"next": "Suggester"}
else:
return {"next": "FINISH"}
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system_prompt = """你是家具设计主管。分配任务给专家:
- Designer: 设计建议参数细化
- Visualizer: 绘图需求
- Researcher: 市场报告
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"""
chain = llm_supervisor.with_structured_output(RouteResponse)
decision = chain.invoke([{"role": "system", "content": system_prompt}] + messages)
return {"next": decision.next}
# --- 构建 Graph ---
workflow = StateGraph(AgentState)
workflow.add_node("Supervisor", supervisor_node)
workflow.add_node("Designer", designer_node)
workflow.add_node("Researcher", researcher_node)
workflow.add_node("Visualizer", visualizer_node)
workflow.add_node("Suggester", suggester_node) # 新增节点
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workflow.add_edge(START, "Supervisor")
# 修改条件边映射
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workflow.add_conditional_edges(
"Supervisor",
lambda state: state["next"],
{
"Designer": "Designer",
"Researcher": "Researcher",
"Visualizer": "Visualizer",
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"Suggester": "Suggester", # 原本的 FINISH 现在指向 Suggester
"FINISH": END # 直接结束,不给建议
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}
)
# 专家执行完依然回到 Supervisor
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workflow.add_edge("Designer", "Supervisor")
workflow.add_edge("Researcher", "Supervisor")
workflow.add_edge("Visualizer", "Supervisor")
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# 重点Suggester 可以是整个流程的终点
workflow.add_edge("Suggester", END)
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client = MongoClient(MONGO_URI)
checkpointer = MongoDBSaver(
client=client["furniture_agent_db"],
db_name="langgraph",
collection_name="checkpoints"
)
app = workflow.compile(checkpointer=checkpointer)