refactor: extract process_message orchestration from agent
This commit is contained in:
110
core/message_orchestrator.py
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110
core/message_orchestrator.py
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@@ -0,0 +1,110 @@
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from __future__ import annotations
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import asyncio
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from typing import Any
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from core.ai_reply_flow import execute_ai_turn
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from core.find_image_flow import handle_find_image_batch_flow
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from core.order_flow import handle_order_notification
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from core.prompt_flow import build_prompt_bundle
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from core.reply_finalize_flow import finalize_ai_reply
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from utils.metrics_tracker import emit as metrics_emit
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from utils.observability import build_trace_id
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async def process_incoming_message(agent: Any, message: Any) -> Any:
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"""主消息处理编排:预处理 -> 业务流 -> AI -> 收尾。"""
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trace_id = build_trace_id(message.acc_id, message.from_id, message.msg_id, message.msg[:64])
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agent._activity_log(
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"agent_inbound",
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trace_id=trace_id,
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acc_id=message.acc_id,
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customer_id=message.from_id,
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msg=message.msg,
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msg_type=message.msg_type,
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)
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metrics_emit("inbound_msg", customer_id=message.from_id, acc_id=message.acc_id)
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state = agent._get_conversation_state(message.from_id)
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pre_response = await agent.pre_rule_service.run(message=message, state=state, trace_id=trace_id)
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if pre_response is not None:
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return pre_response
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new_stage = agent._detect_stage(message.msg)
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if new_stage != state.stage:
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state.stage = new_stage
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from datetime import datetime
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state.last_update = datetime.now().isoformat()
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order_response = await handle_order_notification(agent, message=message, state=state)
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if order_response is not None:
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return order_response
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customer_text, _ = agent._split_customer_text(message.msg)
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shop_type = agent._get_shop_type(message.acc_id or "", message.goods_name or "")
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flow_response = await handle_find_image_batch_flow(
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agent,
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message=message,
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state=state,
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customer_text=customer_text,
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shop_type=shop_type,
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)
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if flow_response is not None:
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return flow_response
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prompt_bundle = build_prompt_bundle(agent, message=message, state=state)
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user_prompt = prompt_bundle.user_prompt
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deps = prompt_bundle.deps
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history = prompt_bundle.history
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agent._log_block("PROMPT->AI 前置提示词", user_prompt)
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try:
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reply_text = await execute_ai_turn(
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agent,
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message=message,
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state=state,
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user_prompt=user_prompt,
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deps=deps,
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history=history,
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)
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except Exception as e:
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err_str = str(e)
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print(f"[Agent] AI 调用失败: {e},使用兜底回复")
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agent._activity_log("agent_ai_error", customer_id=message.from_id, acc_id=message.acc_id, error=err_str)
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metrics_emit("ai_call_failed", customer_id=message.from_id, acc_id=message.acc_id)
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if "AccountOverdueError" in err_str or "overdue" in err_str.lower():
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asyncio.create_task(agent._notify_wechat_overdue())
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else:
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asyncio.create_task(
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agent._notify_wechat(
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f"⚠️ **AI调用异常**\n"
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f"客户:{message.from_id}\n"
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f"店铺:{message.acc_id}\n"
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f"错误:{err_str[:200]}",
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tag="AI异常",
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)
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)
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reply_text = None
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else:
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metrics_emit("ai_call_success", customer_id=message.from_id, acc_id=message.acc_id)
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if not reply_text:
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fallback_text = await agent._rewrite_reply_with_ai(
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message=message,
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state=state,
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reply="好嘞,你稍等下,我这边看一下",
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scene="fallback_reply",
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)
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from core.pydantic_ai_agent import AgentResponse
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return AgentResponse(reply=fallback_text, should_reply=True, need_transfer=False)
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return await finalize_ai_reply(
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agent,
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message=message,
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state=state,
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reply_text=reply_text,
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)
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@@ -75,6 +75,7 @@ from core.batch_quote_helpers import (
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)
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from core.prompt_builder import build_prompt as build_agent_prompt, split_customer_text
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from core.image_workflow_router import handle_image_workflow as route_image_workflow
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from core.message_orchestrator import process_incoming_message
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load_dotenv()
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@@ -729,6 +730,9 @@ class CustomerServiceAgent:
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_is_political_inquiry = staticmethod(is_political_inquiry)
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_is_map_inquiry = staticmethod(is_map_inquiry)
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_get_shop_type = staticmethod(_get_shop_type)
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_notify_wechat = staticmethod(_notify_wechat)
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_notify_wechat_overdue = staticmethod(_notify_wechat_overdue)
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_calc_avg_complexity = staticmethod(calc_avg_complexity)
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_get_conversation_context = staticmethod(get_conversation_context)
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@@ -759,101 +763,8 @@ class CustomerServiceAgent:
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return clean in self._COOLDOWN_PATTERNS
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async def process_message(self, message: CustomerMessage) -> AgentResponse:
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"""处理客户消息并生成回复"""
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trace_id = build_trace_id(message.acc_id, message.from_id, message.msg_id, message.msg[:64])
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self._activity_log(
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"agent_inbound",
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trace_id=trace_id,
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acc_id=message.acc_id,
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customer_id=message.from_id,
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msg=message.msg,
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msg_type=message.msg_type,
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)
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metrics_emit("inbound_msg", customer_id=message.from_id, acc_id=message.acc_id)
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# 获取或创建对话状态
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state = self._get_conversation_state(message.from_id)
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pre_response = await self.pre_rule_service.run(message=message, state=state, trace_id=trace_id)
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if isinstance(pre_response, AgentResponse):
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return pre_response
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# 检测售前/售后
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new_stage = self._detect_stage(message.msg)
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if new_stage != state.stage:
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state.stage = new_stage
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state.last_update = datetime.now().isoformat()
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order_response = await handle_order_notification(self, message=message, state=state)
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if isinstance(order_response, AgentResponse):
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return order_response
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customer_text, _ = self._split_customer_text(message.msg)
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shop_type = _get_shop_type(message.acc_id or "", message.goods_name or "")
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flow_response = await handle_find_image_batch_flow(
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self,
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message=message,
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state=state,
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customer_text=customer_text,
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shop_type=shop_type,
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)
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if isinstance(flow_response, AgentResponse):
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return flow_response
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prompt_bundle = build_prompt_bundle(self, message=message, state=state)
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user_prompt = prompt_bundle.user_prompt
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deps = prompt_bundle.deps
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history = prompt_bundle.history
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self._log_block("PROMPT->AI 前置提示词", user_prompt)
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try:
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reply_text = await execute_ai_turn(
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self,
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message=message,
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state=state,
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user_prompt=user_prompt,
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deps=deps,
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history=history,
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)
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except Exception as e:
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err_str = str(e)
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print(f"[Agent] AI 调用失败: {e},使用兜底回复")
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self._activity_log("agent_ai_error", customer_id=message.from_id, acc_id=message.acc_id, error=err_str)
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metrics_emit("ai_call_failed", customer_id=message.from_id, acc_id=message.acc_id)
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if "AccountOverdueError" in err_str or "overdue" in err_str.lower():
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asyncio.create_task(_notify_wechat_overdue())
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else:
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asyncio.create_task(_notify_wechat(
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f"⚠️ **AI调用异常**\n"
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f"客户:{message.from_id}\n"
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f"店铺:{message.acc_id}\n"
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f"错误:{err_str[:200]}",
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tag="AI异常"
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))
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reply_text = None
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else:
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metrics_emit("ai_call_success", customer_id=message.from_id, acc_id=message.acc_id)
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# AI 失败兜底:给一个不出错的万能回复
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if not reply_text:
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fallback_text = await self._rewrite_reply_with_ai(
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message=message,
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state=state,
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reply="好嘞,你稍等下,我这边看一下",
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scene="fallback_reply",
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)
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return AgentResponse(
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reply=fallback_text,
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should_reply=True,
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need_transfer=False
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)
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return await finalize_ai_reply(
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self,
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message=message,
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state=state,
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reply_text=reply_text,
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)
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"""处理客户消息并生成回复。"""
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return await process_incoming_message(self, message)
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async def _check_order_amount(self, customer_id: str, order: dict, acc_id: str):
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"""核查订单实付金额是否与报价一致,异常时企业微信预警"""
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@@ -885,7 +796,7 @@ class CustomerServiceAgent:
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f"差额:{quoted - paid:.1f}元 — 请人工核查"
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)
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print(f"[Agent] {msg}")
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await _notify_wechat(msg)
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await self._notify_wechat(msg)
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except Exception as e:
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print(f"[Agent] 订单金额核查失败: {e}")
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