""" ChatOrchestrator:AI 回复用户模块的编排层 负责路由(Profile vs Interview)、调用 Specialist Agent;持久化由 feature 层 ConversationHistoryStore 完成。 """ from datetime import datetime from typing import TYPE_CHECKING, List, Optional from sqlalchemy.ext.asyncio import AsyncSession from app.agents.chat.agent_turn import AgentChatTurn from app.agents.chat.interview_agent import InterviewAgent from app.agents.chat.profile_agent import ProfileAgent from app.agents.state_schema import MemoirStateSchema from app.core.logging import get_logger from app.features.memoir.state_service import get_or_create_state if TYPE_CHECKING: from app.features.user.models import User logger = get_logger(__name__) _UNAUTH_TURN = AgentChatTurn( messages=["暂时没法继续对话,请先登录后再试。"], skip_tts=True ) class ChatOrchestrator: """ 聊天编排器:根据用户资料完成度路由到 ProfileAgent 或 InterviewAgent。 不直接写入 Redis/DB;由 WS pipeline / ConversationHistoryStore 落库并同步缓存。 """ def __init__(self): self.profile_agent = ProfileAgent() self.interview_agent = InterviewAgent() async def process_user_message( self, conversation_id: str, user_message: str, user: Optional["User"], conversation, # 用于更新 conversation_stage is_from_voice: bool, voice_session_id: Optional[str], db: AsyncSession, apply_extracted_profile_fn, get_missing_profile_fields_fn, get_filled_profile_fields_fn, user_message_timestamp: Optional[datetime] = None, audio_duration_seconds: Optional[int] = None, ) -> AgentChatTurn: """ 处理用户消息,返回 AI 回复(分段 + 是否跳过 TTS)。 根据 missing_fields 路由到 ProfileAgent 或 InterviewAgent。 """ # --- 资料收集模式 --- if user: missing = get_missing_profile_fields_fn(user) if missing: try: extracted = await self.profile_agent.extract_profile_from_message( user_message, missing, conversation_id=conversation_id ) if extracted: await apply_extracted_profile_fn(user, extracted, db) remaining = get_missing_profile_fields_fn(user) filled = get_filled_profile_fields_fn(user) responses = await self.profile_agent.generate_profile_followup( conversation_id=conversation_id, user_message=user_message, missing_fields=remaining, filled_fields=filled, nickname=user.nickname or "", ) return AgentChatTurn(messages=responses, skip_tts=False) except Exception as e: logger.error(f"资料收集处理失败: {e}", exc_info=True) # --- 正式访谈模式 --- user_id = user.id if user else None if not user_id: return _UNAUTH_TURN state = await get_or_create_state(user_id, db) if conversation and conversation.conversation_stage != state.current_stage: conversation.conversation_stage = state.current_stage await db.commit() from app.agents.chat.prompts_profile import format_user_profile_context user_profile_context = "" if user: user_profile_context = format_user_profile_context( birth_year=user.birth_year, birth_place=user.birth_place, grew_up_place=user.grew_up_place, occupation=user.occupation, ) return await self.interview_agent.generate_response_with_state( conversation_id=conversation_id, user_message=user_message, memoir_state=state, user_profile_context=user_profile_context, ) async def extract_profile_from_message( self, user_message: str, missing_fields: List[str], conversation_id: Optional[str] = None, ): """委托 ProfileAgent 提取资料""" return await self.profile_agent.extract_profile_from_message( user_message, missing_fields, conversation_id=conversation_id ) async def generate_profile_followup( self, conversation_id: str, user_message: str, missing_fields: List[str], filled_fields: dict, nickname: str = "", is_from_voice: bool = False, voice_session_id: str | None = None, user_message_timestamp: datetime | None = None, audio_duration_seconds: int | None = None, ) -> List[str]: """委托 ProfileAgent 生成资料追问(持久化由调用方负责)。""" return await self.profile_agent.generate_profile_followup( conversation_id=conversation_id, user_message=user_message, missing_fields=missing_fields, filled_fields=filled_fields, nickname=nickname, ) async def generate_profile_greeting( self, conversation_id: str, missing_fields: List[str], nickname: str = "", ) -> List[str]: """委托 ProfileAgent 生成资料收集开场白(持久化由调用方负责)。""" return await self.profile_agent.generate_profile_greeting( conversation_id=conversation_id, missing_fields=missing_fields, nickname=nickname, ) async def generate_response_with_state( self, conversation_id: str, user_message: str, memoir_state: MemoirStateSchema, user_profile_context: str = "", is_from_voice: bool = False, voice_session_id: str | None = None, user_message_timestamp: datetime | None = None, audio_duration_seconds: int | None = None, ) -> AgentChatTurn: """委托 InterviewAgent 生成访谈回复(持久化由调用方负责)。""" return await self.interview_agent.generate_response_with_state( conversation_id=conversation_id, user_message=user_message, memoir_state=memoir_state, user_profile_context=user_profile_context, ) def detect_user_stage(self, user_message: str) -> str: """委托 InterviewAgent 检测用户阶段""" return self.interview_agent._detect_user_stage(user_message) async def generate_opening_message( self, conversation_id: str, memoir_state: MemoirStateSchema, user_profile_context: str = "", ) -> List[str]: """ 委托 InterviewAgent 生成访谈开场白(持久化由调用方 ConversationHistoryStore 负责)。 """ return await self.interview_agent.generate_opening_message( conversation_id=conversation_id, memoir_state=memoir_state, user_profile_context=user_profile_context, )