fix(news): digest/briefing 생성 LLM 타임아웃 게이트 단일소스화 + deep_summary 컨슈머 분리

2026-06-11 맥미니 모델 교체(Gemma4 26B→Qwen3.6-27B-6bit, 콜당 ~90~300s)의
타임아웃 상향 sweep 이 config.yaml/synthesis 만 갱신하고 digest/briefing 코드의
하드코딩 LLM_CALL_TIMEOUT=25(빠른 Gemma 기준)를 누락 → digest 600s 하드캡 초과로
06-10 이후 미생성, briefing 4/4 LLM 폴백(status=failed). (적대 리뷰로 블로커 정정:
concurrency=1 사설 세마포로는 digest 44~68 클러스터가 하드캡에 여전히 걸림 + llm_gate
영구 룰 위반.)

- 타임아웃·재시도·하드캡을 config.pipeline 단일소스로 이관(digest_llm_timeout_s=300,
  attempts=2, pipeline_hard_cap_s=3000). 다음 모델 교체 때 재발 차단.
- digest/briefing LLM 호출을 사설 Semaphore 제거하고 전역 MLX gate(BACKGROUND)
  경유로 변경 — llm_gate 영구 룰(같은 endpoint 단일 게이트, 새 Semaphore 금지) 준수 +
  ask/eid(FOREGROUND)와 조율. 동시성 lever = 기존 mlx_gate_concurrency 2→4
  (continuous batching 실측 — 3동시콜 wall 121s ≈ 단일콜, 직렬 대비 ~3배).
- digest/briefing pipeline cluster 루프를 asyncio.gather 동시 실행으로 전환
  (실동시성은 게이트가 제한, rank/순서 보존).
- deep_summary(70~300s)를 메인 consume_queue 에서 분리해 consume_deep_queue 신설
  (markdown/fast split 선례) — 단일 deep 호출이 1분 틱 초과로 메인 큐를 영구 coalesce
  시키던 문제 제거.
- 죽은 PIPELINE_HARD_CAP=600(briefing/pipeline.py) 제거, summarizer docstring 갱신,
  deep 컨슈머 disjoint/hold 테스트 추가.

Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
This commit is contained in:
hyungi
2026-06-14 23:02:39 +00:00
parent b2949d26ff
commit a82b0724df
11 changed files with 151 additions and 34 deletions
+27
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@@ -169,6 +169,14 @@ class Settings(BaseModel):
# 1 = 구 single-inference 동작. 2 = continuous batching 활용 (llm_gate docstring 참조).
mlx_gate_concurrency: int = 1
# digest/briefing 생성 LLM 호출 파라미터 (2026-06-15, 모델 교체 후 타임아웃 단일소스화).
# 구 하드코딩 25s(빠른 Gemma 기준)가 Qwen3.6-27B-6bit(콜당 ~90~300s) 교체 sweep 에서
# 누락돼 digest 600s 하드캡 초과·briefing 4/4 폴백을 유발 → config 단일소스로 이관.
# 동시성은 별 키 아님 — 전역 mlx_gate_concurrency(게이트 단일 budget)가 담당.
digest_llm_timeout_s: int = 200
digest_llm_attempts: int = 2
digest_pipeline_hard_cap_s: int = 1800
# PR-MacMini-Derived-Worker-1: study explanation owner = Mac mini
# GPU 측은 false 로 설정 (.env), explanation 분기 skip guard 트리거.
study_explanation_enabled: bool = True
@@ -257,6 +265,9 @@ def load_settings() -> Settings:
pipeline_held_stages: list[str] = []
mlx_gate_concurrency = 1
digest_llm_timeout_s = 200
digest_llm_attempts = 2
digest_pipeline_hard_cap_s = 1800
if config_path.exists() and raw and "pipeline" in raw:
held_raw = (raw.get("pipeline") or {}).get("held_stages") or []
# 스칼라(문자열) 오기입 시 char-split 방지 — 단일 항목 리스트로 수용.
@@ -269,6 +280,19 @@ def load_settings() -> Settings:
)
except (TypeError, ValueError):
mlx_gate_concurrency = 1
_pl = raw.get("pipeline") or {}
try:
digest_llm_timeout_s = max(1, int(_pl.get("digest_llm_timeout_s", 200)))
except (TypeError, ValueError):
digest_llm_timeout_s = 200
try:
digest_llm_attempts = max(1, int(_pl.get("digest_llm_attempts", 2)))
except (TypeError, ValueError):
digest_llm_attempts = 2
try:
digest_pipeline_hard_cap_s = max(60, int(_pl.get("digest_pipeline_hard_cap_s", 1800)))
except (TypeError, ValueError):
digest_pipeline_hard_cap_s = 1800
taxonomy = raw.get("taxonomy", {}) if config_path.exists() and raw else {}
document_types = raw.get("document_types", []) if config_path.exists() and raw else []
@@ -300,6 +324,9 @@ def load_settings() -> Settings:
internal_worker_token=internal_worker_token,
pipeline_held_stages=pipeline_held_stages,
mlx_gate_concurrency=mlx_gate_concurrency,
digest_llm_timeout_s=digest_llm_timeout_s,
digest_llm_attempts=digest_llm_attempts,
digest_pipeline_hard_cap_s=digest_pipeline_hard_cap_s,
)
+3 -1
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@@ -64,7 +64,7 @@ async def lifespan(app: FastAPI):
from workers.csb_collector import run as csb_collector_run
from workers.api_standards_collector import run as api_standards_run
from workers.ccps_collector import run as ccps_collector_run
from workers.queue_consumer import consume_queue, consume_fast_queue, consume_markdown_queue
from workers.queue_consumer import consume_queue, consume_fast_queue, consume_markdown_queue, consume_deep_queue
from workers.study_queue_consumer import consume_study_queue
from workers.study_session_queue_consumer import consume_study_session_queue
from workers.study_memo_card_jobs_consumer import consume_study_memo_card_queue
@@ -101,6 +101,8 @@ async def lifespan(app: FastAPI):
# 2026-06-12 fast-consumer split: embed/chunk(건당 <1s)를 LLM 사이클에서 분리 —
# classify(~190s×3)가 사이클을 점유해 벡터 적재가 굶던 구조 캡 해소 (markdown 선례).
scheduler.add_job(consume_fast_queue, "interval", minutes=1, id="fast_queue_consumer")
# 2026-06-15 deep-consumer split: deep_summary(70~300s)를 메인 루프에서 분리 (markdown/fast 선례).
scheduler.add_job(consume_deep_queue, "interval", minutes=1, id="deep_queue_consumer")
scheduler.add_job(watch_inbox, "interval", minutes=5, id="file_watcher")
scheduler.add_job(cleanup_orphan_uploads, "interval", minutes=10, id="upload_cleanup")
# PR-4: study_questions 자동 임베딩 (status='none/failed/stale' 행을 batch=10 처리).
+6 -4
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@@ -18,12 +18,14 @@ from typing import Any
import numpy as np
from ai.client import parse_json_response
from core.config import settings
from core.utils import setup_logger
from services.clustering_common import normalize_vector
from services.search.llm_gate import Priority, acquire_mlx_gate
logger = setup_logger("briefing_comparator")
LLM_CALL_TIMEOUT = 25 # 초. Phase 4 와 동일
LLM_CALL_TIMEOUT = settings.digest_llm_timeout_s # 2026-06-15 config 단일소스 (Phase 4 와 동일 키)
HISTORICAL_TOP_K = 5
HISTORICAL_SIMILARITY_MIN = 0.70
HISTORICAL_WINDOW_DAYS = 30
@@ -39,7 +41,6 @@ MAX_ARTICLE_IDS_PER_COUNTRY = 5 # country_perspectives[].article_ids 후
FALLBACK_HEADLINE = "LLM 분석 실패로 원문 기사 묶음만 표시합니다."
FALLBACK_TOPIC_LABEL = "주요 뉴스 묶음"
_llm_sem = asyncio.Semaphore(1)
_PROMPT_PATH = Path(__file__).resolve().parent.parent.parent / "prompts" / "briefing_comparative.txt"
_PROMPT_TEMPLATE: str | None = None
@@ -112,7 +113,8 @@ def retrieve_historical(
async def _try_call_llm(client: Any, prompt: str) -> str:
async with _llm_sem:
# 전역 MLX gate(BACKGROUND) 경유 — 영구 룰(llm_gate): 새 Semaphore 금지, timeout 은 gate 안쪽.
async with acquire_mlx_gate(Priority.BACKGROUND):
return await asyncio.wait_for(
client.call_primary(prompt),
timeout=LLM_CALL_TIMEOUT,
@@ -282,7 +284,7 @@ async def compare_cluster_with_fallback(
historical_docs = historical_docs or []
prompt = build_prompt(selected, historical_docs)
for attempt in range(2):
for attempt in range(settings.digest_llm_attempts): # 2026-06-15 config 단일소스
try:
raw = await _try_call_llm(client, prompt)
except asyncio.TimeoutError:
+15 -3
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@@ -6,6 +6,7 @@
regenerate 정책: briefing_date UNIQUE 충돌 시 transaction 안에서 DELETE+INSERT.
"""
import asyncio
import time
from datetime import date, datetime, timedelta, timezone
from typing import Any
@@ -33,7 +34,6 @@ KST = ZoneInfo("Asia/Seoul")
NIGHT_WINDOW_HOURS = 5 # KST 00:00 ~ 05:00
SELECT_K = 7 # Plan §"Clustering 파라미터" briefing K_PER_CLUSTER=7
SELECT_LAMBDA_MMR = 0.6 # Plan briefing MMR lambda 0.6
PIPELINE_HARD_CAP = 600 # 초. Phase 4 와 동일
def _compute_window(target_date: date | None = None) -> tuple[datetime, datetime, date]:
@@ -206,16 +206,28 @@ async def run_briefing_pipeline(target_date: date | None = None) -> dict[str, An
usable_count = 0
try:
# 2026-06-15: cluster 호출 gather 동시 실행. 실동시성 = 전역 MLX gate
# (config.mlx_gate_concurrency, BACKGROUND 우선순위). rank/순서 보존.
jobs = []
for rank, cluster in enumerate(clusters, start=1):
selected = select_for_llm(cluster, k=SELECT_K, lambda_mmr=SELECT_LAMBDA_MMR)
historical_docs = (
retrieve_historical(cluster, historical_candidates)
if historical_enabled() else []
)
llm_calls += 1
envelope = await compare_cluster_with_fallback(
jobs.append((rank, cluster, selected, historical_docs))
async def _run_one(cluster, selected, historical_docs):
return await compare_cluster_with_fallback(
client, cluster, selected, historical_docs=historical_docs
)
results = await asyncio.gather(
*[_run_one(c, s, h) for (_, c, s, h) in jobs]
)
for (rank, cluster, selected, historical_docs), envelope in zip(jobs, results):
llm_calls += 1
if envelope.get("llm_fallback_used"):
llm_failures += 1
if _is_usable_topic(envelope, envelope["topic_label"]):
+18 -8
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@@ -10,6 +10,7 @@ Step:
7. start/end 로그 + generation_ms + fallback 비율 health metric
"""
import asyncio
import hashlib
import time
from datetime import datetime, timedelta, timezone
@@ -107,20 +108,29 @@ async def run_digest_pipeline() -> dict:
stats = {"llm_calls": 0, "fallback_used": 0}
try:
# 2026-06-15: cluster 호출을 gather 로 동시 실행. 실제 동시성은 전역 MLX gate
# (config.mlx_gate_concurrency, BACKGROUND 우선순위) 가 제한한다. rank/순서 보존.
jobs = []
for country, docs in docs_by_country.items():
clusters = cluster_country(country, docs)
if not clusters:
continue # sparse country 자동 제외
for rank, cluster in enumerate(clusters, start=1):
selected = select_for_llm(cluster)
stats["llm_calls"] += 1
llm_result = await summarize_cluster_with_fallback(client, cluster, selected)
if llm_result["llm_fallback_used"]:
stats["fallback_used"] += 1
all_topic_rows.append(
_build_topic_row(country, rank, cluster, selected, llm_result, primary_model)
)
jobs.append((country, rank, cluster, selected))
async def _run_one(cluster, selected):
return await summarize_cluster_with_fallback(client, cluster, selected)
results = await asyncio.gather(*[_run_one(c, s) for (_, _, c, s) in jobs])
for (country, rank, cluster, selected), llm_result in zip(jobs, results):
stats["llm_calls"] += 1
if llm_result["llm_fallback_used"]:
stats["fallback_used"] += 1
all_topic_rows.append(
_build_topic_row(country, rank, cluster, selected, llm_result, primary_model)
)
finally:
await client.close()
+13 -8
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@@ -2,8 +2,8 @@
핵심 결정:
- AIClient._call_chat 직접 호출 (client.py 수정 회피, fallback 로직 재사용)
- Semaphore(1) MLX 과부하 회피
- Per-call timeout 25 (asyncio.wait_for) MLX hang / fallback Claude API stall 방어
- 전역 MLX gate(BACKGROUND) 경유 동시성 제어 (services.search.llm_gate 단일 게이트)
- Per-call timeout = config.digest_llm_timeout_s (asyncio.wait_for, gate 안쪽)
- JSON 파싱 실패 1 재시도 그래도 실패 minimal fallback (drop 금지)
- fallback: topic_label="주요 뉴스 묶음", summary = top member ai_summary[:200]
"""
@@ -13,15 +13,16 @@ from pathlib import Path
from typing import Any
from ai.client import parse_json_response
from core.config import settings
from core.utils import setup_logger
from services.search.llm_gate import Priority, acquire_mlx_gate
logger = setup_logger("digest_summarizer")
LLM_CALL_TIMEOUT = 25 # 초. MLX 평균 5초 + tail latency 마진
# 2026-06-15: config 단일소스 (구 하드코딩 25s = 빠른 Gemma 기준, Qwen 27B 교체 후 누락).
LLM_CALL_TIMEOUT = settings.digest_llm_timeout_s
FALLBACK_SUMMARY_LIMIT = 200
_llm_sem = asyncio.Semaphore(1)
_PROMPT_PATH = Path(__file__).resolve().parent.parent.parent / "prompts" / "digest_topic.txt"
_PROMPT_TEMPLATE: str | None = None
@@ -48,8 +49,12 @@ def build_prompt(selected: list[dict]) -> str:
async def _try_call_llm(client: Any, prompt: str) -> str:
"""Semaphore + per-call timeout 으로 감싼 단일 호출."""
async with _llm_sem:
"""전역 MLX gate(BACKGROUND) + per-call timeout 으로 감싼 단일 호출.
영구 (llm_gate): Mac mini endpoint 단일 게이트 공유, Semaphore 금지.
동시성 lever = config.mlx_gate_concurrency. timeout gate 안쪽에서만.
"""
async with acquire_mlx_gate(Priority.BACKGROUND):
return await asyncio.wait_for(
client._call_chat(client.ai.primary, prompt),
timeout=LLM_CALL_TIMEOUT,
@@ -86,7 +91,7 @@ async def summarize_cluster_with_fallback(
"""
prompt = build_prompt(selected)
for attempt in range(2): # 1회 재시도 포함
for attempt in range(settings.digest_llm_attempts): # config 단일소스 (기본 2 = 1회 재시도)
try:
raw = await _try_call_llm(client, prompt)
except asyncio.TimeoutError:
+2 -1
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@@ -14,7 +14,8 @@ from services.briefing.pipeline import run_briefing_pipeline
logger = setup_logger("briefing_worker")
PIPELINE_HARD_CAP = 600
# 2026-06-15: config 단일소스 (digest 와 공유 키). 구 600s = 빠른 Gemma 기준.
PIPELINE_HARD_CAP = settings.digest_pipeline_hard_cap_s
async def run(target_date: date | None = None) -> dict | None:
+2 -1
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@@ -16,7 +16,8 @@ from services.digest.pipeline import run_digest_pipeline
logger = setup_logger("digest_worker")
PIPELINE_HARD_CAP = 600 # 10분 hard cap
# 2026-06-15: config 단일소스 (구 600s = 빠른 Gemma 기준, Qwen 27B 교체 후 누락 → 초과).
PIPELINE_HARD_CAP = settings.digest_pipeline_hard_cap_s
async def run() -> None:
+27 -1
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@@ -47,10 +47,15 @@ MARKDOWN_STALE_THRESHOLD_MINUTES = int(os.getenv("MARKDOWN_STALE_MINUTES", "120"
# STT 도 장기 작업 가능성이 있으나 본 PR 범위 밖 — main 에 유지(follow-up).
MAIN_QUEUE_STAGES = [
"extract", "classify", "summarize",
"preview", "stt", "thumbnail", "deep_summary", "fulltext",
"preview", "stt", "thumbnail", "fulltext",
]
MARKDOWN_QUEUE_STAGES = ["markdown"]
# 2026-06-15: deep_summary(26B, 콜당 70~300s)를 메인 루프에서 분리 (markdown/fast 선례).
# 단일 deep 호출이 1분 틱을 초과해 메인 consume_queue 가 영구 coalesce 되고 extract/
# classify 등 경량 stage 까지 굶던 문제 제거. 집합 disjoint(자기 집합만 stale reset).
DEEP_QUEUE_STAGES = ["deep_summary"]
# 고속(비-LLM·경량 GPU) stage — LLM 사이클(분 단위)에서 분리해 1분 잡 전용 소비.
# embed/chunk 는 건당 <1s 라 main 루프에 두면 classify(~190s×3) 뒤에서 굶는다
# (2026-06-12 실측: 적체 3,570 · 4070 가동률 0%). markdown 분리(05-01)와 동일 패턴.
@@ -405,3 +410,24 @@ async def consume_markdown_queue():
for stage in MARKDOWN_QUEUE_STAGES:
await _process_stage(stage, workers[stage])
async def consume_deep_queue():
"""deep_summary 전용 큐 소비자 (2026-06-15) — 26B 심층요약을 메인 파이프라인과 분리.
deep_summary 1콜이 70~300s(맥미니 Qwen 27B 폴백) 메인 consume_queue(1 ) 안에
있으면 틱이 interval 초과해 영구 "maximum running instances" coalesce 되고
extract/classify 경량 stage 까지 함께 굶었다. 분리 = deep 자기 1 잡에서
coalesce, 나머지 메인 루프는 완료. max_instances=1 동시 deep 2건은 방지.
"""
workers = _load_workers()
try:
await reset_stale_items(DEEP_QUEUE_STAGES, STALE_THRESHOLD_MINUTES)
except Exception:
logger.exception("deep stale reset failed, but continuing queue consumption")
for stage in DEEP_QUEUE_STAGES:
if stage in settings.pipeline_held_stages:
continue
await _process_stage(stage, workers[stage])
+11 -5
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@@ -199,8 +199,14 @@ schedule:
# 이력: 2026-06-11 맥미니 모델 확정까지 8키 홀드 → 同日 Qwen3.6-27B-6bit 전환과 함께 해제([]).
pipeline:
held_stages: []
# mlx gate 동시 실행 상한 (2026-06-12 fair-share): 구 "1 고정" 룰의 전제(single-inference
# 서버)가 소멸 — 현 mlx_vlm 은 continuous batching (2026-06-11 밤 6~8 concurrent 실측 정상).
# 2 = 워커 LLM 호출과 인터랙티브(ask/eid)가 서로 안 막힘 + 집계 throughput ~1.8배.
# 게이트(상한+우선순위)는 유지 — thundering herd 방지. 1 로 되돌리면 구 동작.
mlx_gate_concurrency: 2
# mlx gate 동시 실행 상한 (config.mlx_gate_concurrency). 현 mlx_vlm = continuous batching
# (2026-06-11 밤 6~8 concurrent 실측 정상). 2026-06-15: 2→4 — digest/briefing 합성을
# 이 단일 게이트(BACKGROUND 우선순위)로 라우팅하며 digest(클러스터 44~68)가 하드캡 내
# 완료되도록 동시성 확보. ask/eid(FOREGROUND)는 큐 점프라 영향 최소. 되돌리면 구 동작.
mlx_gate_concurrency: 4
# 2026-06-15: digest/briefing 생성 LLM 파라미터 (모델 교체 후 단일소스, 상세 = config.py).
# 구 하드코딩 25s(빠른 Gemma)가 Qwen 27B(콜당 ~90~300s) 교체 sweep 누락 → digest 600s
# 초과·briefing 4/4 폴백. 동시성은 위 mlx_gate_concurrency 가 담당(별 키 없음).
digest_llm_timeout_s: 300
digest_llm_attempts: 2
digest_pipeline_hard_cap_s: 3000
+27 -2
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@@ -26,7 +26,8 @@ def _fake_consumer_env(monkeypatch, held):
lambda: {
s: object()
for s in (queue_consumer.MAIN_QUEUE_STAGES
+ queue_consumer.FAST_QUEUE_STAGES + ["markdown"])
+ queue_consumer.FAST_QUEUE_STAGES
+ queue_consumer.DEEP_QUEUE_STAGES + ["markdown"])
},
)
monkeypatch.setattr(queue_consumer, "_hold_logged", False)
@@ -83,13 +84,37 @@ async def test_fast_consumer_respects_hold(monkeypatch):
assert processed == ["chunk"]
@pytest.mark.asyncio
async def test_deep_consumer_processes_deep_only(monkeypatch):
"""deep 컨슈머(2026-06-15 분리) = deep_summary 전용 (메인 루프와 디커플)."""
processed = _fake_consumer_env(monkeypatch, [])
await queue_consumer.consume_deep_queue()
assert processed == ["deep_summary"]
@pytest.mark.asyncio
async def test_deep_consumer_respects_hold(monkeypatch):
"""deep_summary 홀드 시 deep 컨슈머가 claim 안 함."""
processed = _fake_consumer_env(monkeypatch, ["deep_summary"])
await queue_consumer.consume_deep_queue()
assert processed == []
def test_fast_split_invariants():
""" 컨슈머 stage 집합 disjoint + embed/chunk 배치 상향 회귀 가드."""
""" 컨슈머 stage 집합 disjoint + embed/chunk 배치 상향 + deep split 회귀 가드."""
main = set(queue_consumer.MAIN_QUEUE_STAGES)
fast = set(queue_consumer.FAST_QUEUE_STAGES)
md = set(queue_consumer.MARKDOWN_QUEUE_STAGES)
deep = set(queue_consumer.DEEP_QUEUE_STAGES)
assert not (main & fast) and not (main & md) and not (fast & md)
assert not (main & deep) and not (fast & deep) and not (md & deep)
assert fast == {"embed", "chunk"}
assert deep == {"deep_summary"}
assert "deep_summary" not in main # 2026-06-15 split 회귀 가드
assert queue_consumer.BATCH_SIZE["embed"] >= 10
assert queue_consumer.BATCH_SIZE["chunk"] >= 10