Files
life-echo/api/app/agents/chat/orchestrator.py
Kevin 2fded6fbd9 refactor(chat): AI-native prompts, remove interview heuristics
- Drop interview_reply_length and utterance_substance; always run stage LLM
  and memory retrieval when enabled; trim Settings fields and .env.example.
- Replace guided/opening prompts with compact fact blocks plus unified
  behavior guidance; slim background_voice and persona to tone hints.
- InterviewAgent uses fixed chat_interview max_tokens/chars/segments.

Also includes stacked work: profile followup/extract path, evaluation rubric
and judge schema updates, transcript SPLIT handling in execution service,
user export markdown split tests, and golden case fixture.
2026-04-06 22:23:46 +08:00

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"""
ChatOrchestratorAI 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。
"""
import time
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.helpers import get_history_with_window
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.agent_logging import agent_summary_enabled, log_agent_detail
from app.core.logging import get_logger
from app.agents.chat.stage_detection import (
detect_primary_life_stage,
life_stage_display_name,
)
from app.core.config import settings
from app.core.dependencies import get_llm_provider
from app.features.conversation.input_normalize import normalize_chat_input_for_agent
from app.features.memoir.state_service import get_or_create_state, switch_stage
def _llm_for_chat_input_normalize():
try:
p = get_llm_provider()
return getattr(p, "langchain_llm", None)
except Exception:
return None
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
)
async def _fetch_interview_memory_evidence(
db: AsyncSession,
user_id: str,
user_message: str,
) -> str:
"""按本轮用户话检索记忆,格式化为短文本;失败或未启用时返回空串。"""
from app.core.dependencies import get_embedding_provider
from app.features.memory.evidence_format import format_evidence_chunks_for_prompt
from app.features.memory.service import MemoryService
if not settings.chat_memory_retrieval_enabled:
logger.debug(
"event=chat_memory_retrieval_skip reason=disabled user_id={}", user_id
)
return ""
msg = (user_message or "").strip()
if not msg:
logger.debug(
"event=chat_memory_retrieval_skip reason=empty user_id={}", user_id
)
return ""
try:
emb = get_embedding_provider()
ms = MemoryService(db, embedding_provider=emb)
bundle = await ms.retrieve(user_id, msg, top_k=settings.chat_memory_top_k)
bd = bundle.model_dump()
text = format_evidence_chunks_for_prompt(bd)
t = (text or "").strip()
if not t:
logger.debug(
"event=memory_evidence_for_prompt user_id={} formatted_chars=0",
user_id,
)
return ""
max_c = settings.chat_memory_evidence_max_chars
if len(t) > max_c:
t = t[: max_c - 3] + "..."
logger.info(
"event=memory_evidence_for_prompt user_id={} formatted_chars={}",
user_id,
len(t),
)
return t
except Exception as e:
try:
await db.rollback()
except Exception as rollback_error:
logger.warning("访谈记忆检索失败后回滚也失败: {}", rollback_error)
logger.warning("访谈记忆检索失败: {}", e)
return ""
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。
"""
t0 = time.perf_counter()
# --- 资料收集模式 ---
if user:
missing = get_missing_profile_fields_fn(user)
if missing:
hw_profile = await get_history_with_window(
conversation_id,
max_pairs=settings.chat_history_max_pairs,
max_chars=settings.chat_history_max_chars,
)
profile_turn_total = hw_profile.turn_total
if profile_turn_total >= settings.chat_profile_max_turns:
logger.info(
"event=chat_profile_cap_skip conversation_id={} "
"turn_total={} cap={} missing_fields={}",
conversation_id,
profile_turn_total,
settings.chat_profile_max_turns,
missing,
)
else:
try:
log_agent_detail(
logger,
"ChatOrchestrator route=profile conversation_id={} "
"missing_fields={} user_msg_len={} profile_turn_total={}",
conversation_id,
missing,
len(user_message or ""),
profile_turn_total,
)
# Profile 阶段每轮都抽取:短确认语也可能带可推断资料,跳过抽取会导致槽位长期不更新
extracted = (
await self.profile_agent.extract_profile_from_message(
user_message, missing, conversation_id=conversation_id
)
)
logger.info(
"event=chat_profile_extract conversation_id={} "
"extracted_keys={} missing_before={}",
conversation_id,
list(extracted.keys()) if extracted else [],
missing,
)
if extracted:
await apply_extracted_profile_fn(user, extracted, db)
remaining = get_missing_profile_fields_fn(user)
filled = get_filled_profile_fields_fn(user)
interview_stage_hint = ""
if not remaining:
st = await get_or_create_state(user.id, db)
interview_stage_hint = life_stage_display_name(
st.current_stage
)
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 "",
interview_stage_hint=interview_stage_hint,
)
if agent_summary_enabled():
logger.info(
"ChatOrchestrator.process_user_message route=profile "
"duration_ms={:.2f} conversation_id={} response_segments={}",
(time.perf_counter() - t0) * 1000,
conversation_id,
len(responses),
)
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)
return AgentChatTurn(
messages=["不好意思刚才没接住,你再说一遍好吗?"],
skip_tts=False,
)
# --- 正式访谈模式 ---
user_id = user.id if user else None
if not user_id:
if agent_summary_enabled():
logger.info(
"ChatOrchestrator.process_user_message route=unauth "
"duration_ms={:.2f} conversation_id={}",
(time.perf_counter() - t0) * 1000,
conversation_id,
)
return _UNAUTH_TURN
log_agent_detail(
logger,
"ChatOrchestrator route=interview conversation_id={} user_msg_len={}",
conversation_id,
len(user_message or ""),
)
llm_n = None
if settings.chat_input_normalize_enabled and (
(settings.chat_input_normalize_mode or "").strip().lower() == "llm"
):
llm_n = _llm_for_chat_input_normalize()
normalized_user_message = normalize_chat_input_for_agent(
user_message or "",
llm=llm_n,
is_from_voice=is_from_voice,
)
state = await get_or_create_state(user_id, db)
detected = await detect_primary_life_stage(
normalized_user_message,
state.current_stage,
self.interview_agent.llm,
)
if detected != state.current_stage:
state = await switch_stage(user_id, detected, db)
if conversation and conversation.conversation_stage != state.current_stage:
conversation.conversation_stage = state.current_stage
await db.commit()
from app.agents.chat.background_voice import infer_background_voice
from app.agents.chat.prompts_profile import format_user_profile_context
user_profile_context = ""
background_voice = "default"
occupation = ""
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,
)
background_voice = infer_background_voice(user.occupation)
occupation = user.occupation or ""
memory_evidence_text = await _fetch_interview_memory_evidence(
db, user_id, normalized_user_message
)
turn = 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,
detected_user_stage=detected,
memory_evidence_text=memory_evidence_text,
background_voice=background_voice,
normalized_user_message=normalized_user_message,
occupation=occupation,
)
if agent_summary_enabled():
logger.info(
"ChatOrchestrator.process_user_message route=interview "
"duration_ms={:.2f} conversation_id={} stage={} response_segments={} skip_tts={}",
(time.perf_counter() - t0) * 1000,
conversation_id,
state.current_stage,
len(turn.messages),
turn.skip_tts,
)
return turn
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,
detected_user_stage: str | None = None,
memory_evidence_text: str = "",
background_voice: str = "default",
normalized_user_message: str | None = None,
occupation: str = "",
) -> 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,
detected_user_stage=detected_user_stage,
memory_evidence_text=memory_evidence_text,
background_voice=background_voice,
normalized_user_message=normalized_user_message,
occupation=occupation,
)
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 = "",
background_voice: str = "default",
occupation: 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,
background_voice=background_voice,
occupation=occupation,
)