Route all memory ingest/retrieve/enrichment/compaction through async MemoryService. Remove legacy sync memory implementations (ingest/retrieve/compaction); Celery and memoir Phase2 call asyncio.run into MemoryService-backed helpers. Memoir Phase1 batch ingest uses MemoryService.ingest_transcripts_batch; drop chapters. evidence_bundle_json mirror (Alembic 0015). Evaluation uses snapshot/link-only bundles; raise EvidenceClosureMissing instead of partial/fallback lineage tiers. Split memoir state into NarrativeCoverageState and InterviewControlState; delete the _interview_meta_store adapter layer. Remove rolling-query and recent-fact fallback settings from config and evidence assembly. Update judges, docs, tests, and PlaygroundPage alignment. Made-with: Cursor
154 lines
4.6 KiB
Python
154 lines
4.6 KiB
Python
"""
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Memory enrichment Celery task — runs asynchronously after ingest to generate
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summaries, facts, and timeline events without blocking ingest or memoir pipeline.
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Tasks are routed to ``settings.celery_memory_enrichment_queue`` (default ``memory_idle``);
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run workers with ``-Q celery,memory_idle`` or a dedicated low-priority worker for that queue.
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"""
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import asyncio
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import time
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from celery import shared_task
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from app.core.config import settings
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from app.core.db import AsyncSessionLocal
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from app.core.logging import get_logger
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from app.core.memoir_pipeline_progress import merge_fanout_item
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from app.features.memory.service import MemoryService
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logger = get_logger(__name__)
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async def _enrich_memory_source_async(
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user_id: str,
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source_id: str,
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) -> None:
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async with AsyncSessionLocal() as db:
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service = MemoryService(db)
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await service.enrich_source(user_id, source_id, llm=None)
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await db.commit()
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def schedule_memory_enrichment(
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user_id: str,
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source_id: str,
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*,
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memoir_correlation_id: str | None = None,
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) -> str | None:
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"""
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Enqueue post-ingest LLM enrichment on the memory idle queue.
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When ``memoir_correlation_id`` is set, records ``fanout.memory_enrichment`` as enqueued
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for eval / pipeline progress (same as the former Phase1 loop).
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"""
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if not settings.memory_enrichment_enabled:
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return None
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uid = (user_id or "").strip()
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sid = (source_id or "").strip()
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if not uid or not sid:
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return None
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q = (settings.celery_memory_enrichment_queue or "").strip() or "memory_idle"
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try:
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ar = enrich_memory_source.apply_async(
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args=[uid, sid],
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kwargs={"memoir_correlation_id": memoir_correlation_id},
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queue=q,
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)
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enr_id = getattr(ar, "id", None)
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if not enr_id:
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return None
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cid = (memoir_correlation_id or "").strip()
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if cid:
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merge_fanout_item(
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cid,
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list_name="memory_enrichment",
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id_field="source_id",
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item_id=sid,
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task_id=str(enr_id),
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status="enqueued",
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)
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return str(enr_id)
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except Exception as e:
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logger.warning(
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"event=memory_enrichment_schedule_failed user_id={} source_id={} exc={} exc_type={}",
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uid,
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sid,
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e,
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type(e).__name__,
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)
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return None
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@shared_task(bind=True, max_retries=2, default_retry_delay=30)
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def enrich_memory_source(
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self,
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user_id: str,
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source_id: str,
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memoir_correlation_id: str | None = None,
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):
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"""
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Post-ingest enrichment: one LLM call → session summary + structured facts.
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Runs outside the memoir Phase1 hot path so narrative generation isn't blocked.
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"""
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if not settings.memory_enrichment_enabled:
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return {"status": "disabled"}
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tid = str(self.request.id)
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t0 = time.perf_counter()
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logger.info(
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"event=memory_enrichment_start user_id={} source_id={} task_id={} "
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"msg=开始记忆富化(会话摘要+事实)",
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user_id,
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source_id,
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tid,
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)
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merge_fanout_item(
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memoir_correlation_id,
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list_name="memory_enrichment",
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id_field="source_id",
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item_id=source_id,
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task_id=tid,
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status="running",
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)
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try:
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asyncio.run(_enrich_memory_source_async(user_id, source_id))
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ms = (time.perf_counter() - t0) * 1000
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logger.info(
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"event=memory_enrichment_done user_id={} source_id={} duration_ms={:.1f} "
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"msg=记忆富化完成",
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user_id,
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source_id,
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ms,
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)
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merge_fanout_item(
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memoir_correlation_id,
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list_name="memory_enrichment",
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id_field="source_id",
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item_id=source_id,
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task_id=tid,
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status="success",
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)
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return {"status": "success", "source_id": source_id}
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except Exception as e:
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ms = (time.perf_counter() - t0) * 1000
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logger.warning(
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"event=memory_enrichment_failed user_id={} source_id={} duration_ms={:.1f} "
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"exc={} exc_type={} msg=记忆富化失败",
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user_id,
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source_id,
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ms,
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e,
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type(e).__name__,
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)
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merge_fanout_item(
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memoir_correlation_id,
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list_name="memory_enrichment",
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id_field="source_id",
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item_id=source_id,
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task_id=tid,
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status="failure",
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extra={"error": str(e)},
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)
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raise self.retry(exc=e) from e
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