Files
life-echo/api/app/tasks/memory_enrichment_tasks.py
Sully f09ae248f9 feat: OpenTelemetry LGTM observability, dev tooling, and memoir UX fixes (#31) (#32)
* add staging ios app build script

* feat(api): add OpenTelemetry LGTM stack for local observability

Wire OTel traces, metrics, and logs through a collector to Tempo,
Prometheus, and Loki, with custom LLM instrumentation, dev compose overlay,
Grafana provisioning, env templates, and development.sh auto-start.



* feat: expand observability, harden dev tooling, and fix expo staging UX

Add business and LLM Prometheus metrics with Grafana dashboards, alerting,
and a metrics verification script. Wire telemetry through adapters and core
LLM paths, and document the local LGTM workflow.

Fix development.sh for macOS bash 3.2, open Grafana and eval-web in Chrome,
and repair eval-web auto-open (unbound EVAL_WEB_BROWSER_SCHEDULED). Merge
internal-eval into the main dev script with improved compose handling.

Require EXPO_PUBLIC_* at build time, improve iOS HTTP ATS for staging IPs,
show memoir empty state instead of load errors when no chapters exist, and
add jest env setup plus chapter list response normalization.



* chore: enable Grafana Assistant Cursor plugin



* fix: memoir empty state and repair withdrawn 0020_chapters_book_id stamp

Show empty memoir UI when the chapter list succeeds with no items; treat auth/404 as non-fatal. Extend alembic revision repair so local dev DBs stamped with the removed 0020_chapters_book_id migration can roll back and upgrade to 0019.



---------

Co-authored-by: Kevin <kevin@brighteng.org>
Co-authored-by: Cursor <cursoragent@cursor.com>
2026-05-20 15:14:13 +08:00

286 lines
8.5 KiB
Python

"""
Memory pipeline Celery tasks — retry embedding and enrichment after durable ingest.
Tasks are routed to ``settings.celery_memory_enrichment_queue`` (default ``memory_idle``);
run workers with ``-Q celery,memory_idle`` or a dedicated low-priority worker for that queue.
"""
import asyncio
import time
from typing import Any, cast
from celery import shared_task
from app.core.business_telemetry import business_span
from app.core.config import settings
from app.core.db import AsyncSessionLocal
from app.core.dependencies import get_embedding_provider
from app.core.logging import get_logger
from app.core.memoir_pipeline_progress import merge_fanout_item
from app.features.memory.service import MemoryService
logger = get_logger(__name__)
async def _enrich_memory_source_async(
user_id: str,
source_id: str,
) -> None:
async with AsyncSessionLocal() as db:
service = MemoryService(db)
await service.enrich_source(user_id, source_id, llm=None)
await db.commit()
async def _embed_memory_source_async(
user_id: str,
source_id: str,
) -> dict:
async with AsyncSessionLocal() as db:
service = MemoryService(db, embedding_provider=get_embedding_provider())
result = await service.embed_source(
user_id,
source_id,
raise_on_failure=True,
)
await db.commit()
return result
def schedule_memory_embedding(
user_id: str,
source_id: str,
*,
memoir_correlation_id: str | None = None,
) -> str | None:
"""Enqueue embedding retry for a persisted memory source."""
uid = (user_id or "").strip()
sid = (source_id or "").strip()
if not uid or not sid:
return None
q = (settings.celery_memory_enrichment_queue or "").strip() or "memory_idle"
try:
task = cast(Any, embed_memory_source)
ar = task.apply_async(
args=[uid, sid],
kwargs={"memoir_correlation_id": memoir_correlation_id},
queue=q,
)
emb_id = getattr(ar, "id", None)
if not emb_id:
return None
cid = (memoir_correlation_id or "").strip()
if cid:
merge_fanout_item(
cid,
list_name="memory_embedding",
id_field="source_id",
item_id=sid,
task_id=str(emb_id),
status="enqueued",
)
return str(emb_id)
except Exception as e:
logger.warning(
"event=memory_embedding_schedule_failed user_id={} source_id={} exc={} exc_type={}",
uid,
sid,
e,
type(e).__name__,
)
return None
def schedule_memory_enrichment(
user_id: str,
source_id: str,
*,
memoir_correlation_id: str | None = None,
) -> str | None:
"""
Enqueue post-ingest LLM enrichment on the memory idle queue.
When ``memoir_correlation_id`` is set, records ``fanout.memory_enrichment`` as enqueued
for eval / pipeline progress (same as the former Phase1 loop).
"""
if not settings.memory_enrichment_enabled:
return None
uid = (user_id or "").strip()
sid = (source_id or "").strip()
if not uid or not sid:
return None
q = (settings.celery_memory_enrichment_queue or "").strip() or "memory_idle"
try:
task = cast(Any, enrich_memory_source)
ar = task.apply_async(
args=[uid, sid],
kwargs={"memoir_correlation_id": memoir_correlation_id},
queue=q,
)
enr_id = getattr(ar, "id", None)
if not enr_id:
return None
cid = (memoir_correlation_id or "").strip()
if cid:
merge_fanout_item(
cid,
list_name="memory_enrichment",
id_field="source_id",
item_id=sid,
task_id=str(enr_id),
status="enqueued",
)
return str(enr_id)
except Exception as e:
logger.warning(
"event=memory_enrichment_schedule_failed user_id={} source_id={} exc={} exc_type={}",
uid,
sid,
e,
type(e).__name__,
)
return None
@shared_task(bind=True, max_retries=3, default_retry_delay=30)
def embed_memory_source(
self,
user_id: str,
source_id: str,
memoir_correlation_id: str | None = None,
):
"""Post-ingest embedding retry for persisted chunks."""
tid = str(self.request.id)
t0 = time.perf_counter()
logger.info(
"event=memory_embedding_start user_id={} source_id={} task_id={} msg=开始记忆向量化",
user_id,
source_id,
tid,
)
merge_fanout_item(
memoir_correlation_id,
list_name="memory_embedding",
id_field="source_id",
item_id=source_id,
task_id=tid,
status="running",
)
try:
with business_span("memory.embed_source"):
result = asyncio.run(_embed_memory_source_async(user_id, source_id))
ms = (time.perf_counter() - t0) * 1000
logger.info(
"event=memory_embedding_done user_id={} source_id={} duration_ms={:.1f} status={} vectors_written={} msg=记忆向量化完成",
user_id,
source_id,
ms,
result.get("status"),
result.get("vectors_written", 0),
)
merge_fanout_item(
memoir_correlation_id,
list_name="memory_embedding",
id_field="source_id",
item_id=source_id,
task_id=tid,
status="success",
extra=result,
)
return {"source_id": source_id, **result}
except Exception as e:
ms = (time.perf_counter() - t0) * 1000
logger.warning(
"event=memory_embedding_failed user_id={} source_id={} duration_ms={:.1f} "
"exc={} exc_type={} msg=记忆向量化失败",
user_id,
source_id,
ms,
e,
type(e).__name__,
)
merge_fanout_item(
memoir_correlation_id,
list_name="memory_embedding",
id_field="source_id",
item_id=source_id,
task_id=tid,
status="failure",
extra={"error": str(e)},
)
raise self.retry(exc=e) from e
@shared_task(bind=True, max_retries=2, default_retry_delay=30)
def enrich_memory_source(
self,
user_id: str,
source_id: str,
memoir_correlation_id: str | None = None,
):
"""
Post-ingest enrichment: one LLM call → session summary + structured facts.
Runs outside the memoir Phase1 hot path so narrative generation isn't blocked.
"""
if not settings.memory_enrichment_enabled:
return {"status": "disabled"}
tid = str(self.request.id)
t0 = time.perf_counter()
logger.info(
"event=memory_enrichment_start user_id={} source_id={} task_id={} "
"msg=开始记忆富化(会话摘要+事实)",
user_id,
source_id,
tid,
)
merge_fanout_item(
memoir_correlation_id,
list_name="memory_enrichment",
id_field="source_id",
item_id=source_id,
task_id=tid,
status="running",
)
try:
with business_span("memory.enrich_source"):
asyncio.run(_enrich_memory_source_async(user_id, source_id))
ms = (time.perf_counter() - t0) * 1000
logger.info(
"event=memory_enrichment_done user_id={} source_id={} duration_ms={:.1f} "
"msg=记忆富化完成",
user_id,
source_id,
ms,
)
merge_fanout_item(
memoir_correlation_id,
list_name="memory_enrichment",
id_field="source_id",
item_id=source_id,
task_id=tid,
status="success",
)
return {"status": "success", "source_id": source_id}
except Exception as e:
ms = (time.perf_counter() - t0) * 1000
logger.warning(
"event=memory_enrichment_failed user_id={} source_id={} duration_ms={:.1f} "
"exc={} exc_type={} msg=记忆富化失败",
user_id,
source_id,
ms,
e,
type(e).__name__,
)
merge_fanout_item(
memoir_correlation_id,
list_name="memory_enrichment",
id_field="source_id",
item_id=source_id,
task_id=tid,
status="failure",
extra={"error": str(e)},
)
raise self.retry(exc=e) from e