Files
hyungi_document_server/docker-compose.yml
T
hyungi bcf644f893 refactor(search): /api/search/ask dispatcher route via llm-router
PR-2 of DS AI routing policy (2026-05-23, see plan
~/.claude/plans/document-server-ai-cheeky-reddy.md +
memory project_document_server_ai_routing_policy).

DS 의 모든 backend 호출이 llm-router :8890 단일 경유. 정칙 정합:
- 신규 RouterBackend (services/llm/backends.py) — alias 별 router POST
  + requires_gate 분기 (mac-mini-default 만 llm_gate FOREGROUND 보호).
- 기존 GemmaMacMiniBackend + QwenMacBookBackend = legacy 보존
  (DS_BACKENDS_VIA_ROUTER=false rollback safety only). 1주 후 별
  cleanup PR (PR-DS-Backends-Legacy-Cleanup-1) 로 폐기.
- get_backend factory dual-path (env flag) — backward-compat
  (gemma-macmini alias → mac-mini-default 매핑).
- search.py:457 Query pattern 확장: mac-mini-default|claude-cloud|auto
  추가. /ask/react 의 isinstance(QwenMacBookBackend) → hasattr
  duck-typing (RouterBackend + Legacy 모두 generate_with_tools 구현).
- SearchAskBackendConfig 에 router_url 신규 (env LLM_ROUTER_URL 또는
  hardcoded MVP default http://100.76.254.116:8890).
- docker-compose.yml fastapi env 에 LLM_ROUTER_URL +
  DS_BACKENDS_VIA_ROUTER 추가.

AIClient (_call_chat, call_triage, call_primary, call_fallback) 경유
path 는 별 PR (PR-AIClient-Router-Migration-1) — MVP scope C 채택,
회귀 risk 최소화.

Closure (즉시 fixture/matrix):
- factory smoke 6 alias (None/mac-mini-default/gemma-macmini/
  qwen-macbook/claude-cloud/auto) + 1 invalid (nonsense → ValueError).
- live 3 case: mac-mini-default 200 \"pong! 🏓\" + qwen-macbook cold
  502 upstream_502_primary=ConnectError + claude-cloud 503
  provider_not_configured.
- silent fallback 0 + direct M5/Mac mini socket 0
  (RouterBackend 만 router 호출).

Backup: ~/.local/share/ds-routing-pr2-backups/20260523/
(backends.py + config.py + search.py + docker-compose.yml).

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-23 03:41:29 +00:00

251 lines
8.1 KiB
YAML

services:
postgres:
image: pgvector/pgvector:pg16
volumes:
- pgdata:/var/lib/postgresql/data
- ./migrations:/docker-entrypoint-initdb.d
environment:
POSTGRES_DB: pkm
POSTGRES_USER: pkm
POSTGRES_PASSWORD: ${POSTGRES_PASSWORD}
ports:
- "100.110.63.63:15432:5432"
healthcheck:
test: ["CMD-SHELL", "pg_isready -U pkm"]
interval: 5s
timeout: 5s
retries: 5
restart: unless-stopped
kordoc-service:
build: ./services/kordoc
ports:
- "127.0.0.1:3100:3100"
volumes:
- ${NAS_NFS_PATH:-/mnt/nas/Document_Server}:/documents:ro
mem_limit: 4g
memswap_limit: 4g
healthcheck:
test: ["CMD", "node", "-e", "fetch('http://localhost:3100/health').then(r=>{process.exit(r.ok?0:1)}).catch(()=>process.exit(1))"]
interval: 10s
timeout: 5s
retries: 3
restart: unless-stopped
ocr-service:
build: ./services/ocr
expose:
- "3200"
volumes:
- ${NAS_NFS_PATH:-/mnt/nas/Document_Server}:/documents:ro
- ocr_models:/root/.cache
deploy:
resources:
reservations:
devices:
- driver: nvidia
count: 1
capabilities: [gpu]
healthcheck:
test: ["CMD", "python", "-c", "import urllib.request; urllib.request.urlopen('http://localhost:3200/health')"]
interval: 30s
timeout: 10s
retries: 3
start_period: 180s
restart: unless-stopped
# Phase 1B (2026-05-01): PDF → markdown 변환. ocr-service 와 별도 컨테이너 (deps 충돌 회피).
marker-service:
build: ./services/marker
ports:
- "127.0.0.1:3300:3300"
expose:
- "3300"
environment:
- HF_HOME=/models/huggingface
- TORCH_HOME=/models/torch
volumes:
- ${NAS_NFS_PATH:-/mnt/nas/Document_Server}:/documents:ro
- marker_models:/models
deploy:
resources:
reservations:
devices:
- driver: nvidia
count: 1
capabilities: [gpu]
healthcheck:
test: ["CMD", "curl", "-f", "http://localhost:3300/ready"]
interval: 30s
timeout: 10s
retries: 3
start_period: 300s
restart: unless-stopped
stt-service:
# 2026-05-08 (D9 Track B revised): GPU is canonical STT owner.
# 정책: Mac mini = Gemma 26B 전용 우선이므로 STT/Whisper 는 호출량 무관 GPU 서버 소유.
# 이전 "Mac mini 이전본" 주석은 trace 오인 기반이었고 본 revised 결정으로 폐기.
# fastapi 의 STT_ENDPOINT 는 `http://stt-service:3300` (compose 내부 DNS) 사용.
build: ./services/stt
expose:
- "3300"
volumes:
- ${NAS_NFS_PATH:-/mnt/nas/Document_Server}:/documents:ro
- stt_models:/root/.cache
environment:
- WHISPER_MODEL=${WHISPER_MODEL:-large-v3}
- WHISPER_DEVICE=${WHISPER_DEVICE:-cuda}
- WHISPER_COMPUTE_TYPE=${WHISPER_COMPUTE_TYPE:-float16}
deploy:
resources:
reservations:
devices:
- driver: nvidia
count: 1
capabilities: [gpu]
healthcheck:
# /ready: CUDA 디바이스 + 모델 적재 둘 다 확인. ready=true 만 healthy 처리.
# /health 는 단순 liveness 라 모델 미적재 상태도 healthy 로 잡혀 운영 신호로 부적합.
test: ["CMD", "python3", "-c", "import json,urllib.request,sys; r=urllib.request.urlopen('http://localhost:3300/ready'); sys.exit(0 if json.load(r).get('ready') else 1)"]
interval: 30s
timeout: 10s
retries: 3
start_period: 300s
restart: unless-stopped
ollama:
image: ollama/ollama
volumes:
- ollama_data:/root/.ollama
deploy:
resources:
reservations:
devices:
- driver: nvidia
count: 1
capabilities: [gpu]
ports:
- "127.0.0.1:11434:11434"
restart: unless-stopped
# Phase 1.3: bge-reranker-v2-m3 (TEI) — internal only, fastapi에서 reranker:80으로 호출
# fastapi가 depends_on 안 함 → 단독 시작 가능, 없어도 fastapi 동작 (rerank=false fallback)
reranker:
image: ghcr.io/huggingface/text-embeddings-inference:1.7
container_name: hyungi_document_server-reranker-1
expose:
- "80"
environment:
- MODEL_ID=BAAI/bge-reranker-v2-m3
- MAX_BATCH_TOKENS=8192
- MAX_CONCURRENT_REQUESTS=4
volumes:
- reranker_cache:/data
deploy:
resources:
reservations:
devices:
- driver: nvidia
count: 1
capabilities: [gpu]
healthcheck:
test: ["CMD", "curl", "-fsS", "http://localhost/health"]
interval: 30s
timeout: 5s
retries: 3
start_period: 120s
restart: unless-stopped
ai-gateway:
build: ./gpu-server/services/ai-gateway
ports:
- "127.0.0.1:8081:8080"
environment:
- PRIMARY_ENDPOINT=http://100.76.254.116:8801/v1/chat/completions
- FALLBACK_ENDPOINT=http://ollama:11434/v1/chat/completions
- CLAUDE_API_KEY=${CLAUDE_API_KEY:-}
- DAILY_BUDGET_USD=${DAILY_BUDGET_USD:-5.00}
depends_on:
- ollama
restart: unless-stopped
fastapi:
build: ./app
ports:
- "100.110.63.63:8000:8000"
volumes:
- ${NAS_NFS_PATH:-/mnt/nas/Document_Server}:/documents
- ./config.yaml:/app/config.yaml:ro
- ./domain_policy.yaml:/app/domain_policy.yaml:ro
- ./scripts:/app/scripts:ro
- ./logs:/app/logs
- ./migrations:/app/migrations:ro
depends_on:
postgres:
condition: service_healthy
kordoc-service:
condition: service_healthy
marker-service:
condition: service_healthy
env_file:
- credentials.env
environment:
- DATABASE_URL=postgresql+asyncpg://pkm:${POSTGRES_PASSWORD}@postgres:5432/pkm
- KORDOC_ENDPOINT=http://kordoc-service:3100
- OCR_ENDPOINT=http://ocr-service:3200
- MARKER_ENDPOINT=http://marker-service:3300
- MARKER_CONTAINER_PATH_PREFIX=/documents
# 2026-05-08 (D9 Track B revised): GPU stt-service 정식 승격, 내부 DNS 사용.
- STT_ENDPOINT=http://stt-service:3300
# KGS Code 등 외부 학습 자료 추가 스캔 경로 (host .env 에서 주입). 빈 값이면 비활성.
- ADDITIONAL_WATCH_TARGETS=${ADDITIONAL_WATCH_TARGETS:-}
# PR-MacMini-Derived-Worker-1
- STUDY_EXPLANATION_ENABLED=${STUDY_EXPLANATION_ENABLED:-true}
- INTERNAL_WORKER_TOKEN=${INTERNAL_WORKER_TOKEN}
# Voice Memo PoC v1 — bot 계정 한정 long-expiry access token. default false → 일반 운영 영향 0.
# 활성화: host .env 에 VOICE_MEMO_BOT_TOKEN_ENABLED=true. plan: rosy-launching-otter.md
- VOICE_MEMO_BOT_TOKEN_ENABLED=${VOICE_MEMO_BOT_TOKEN_ENABLED:-false}
- VOICE_MEMO_BOT_USERNAME=${VOICE_MEMO_BOT_USERNAME:-voice-memo-bot}
- VOICE_MEMO_BOT_TOKEN_EXPIRE_DAYS=${VOICE_MEMO_BOT_TOKEN_EXPIRE_DAYS:-365}
# PR-Notebook-Client-1 — notebook-client-bot long-expiry token (laptop-worker-bot wrapper 재활용,
# 1B Pilot dormant 후 username rename). default false → 운영 영향 0.
- LAPTOP_WORKER_BOT_TOKEN_ENABLED=${LAPTOP_WORKER_BOT_TOKEN_ENABLED:-false}
- LAPTOP_WORKER_BOT_USERNAME=${LAPTOP_WORKER_BOT_USERNAME:-laptop-worker-bot}
- LAPTOP_WORKER_BOT_TOKEN_EXPIRE_DAYS=${LAPTOP_WORKER_BOT_TOKEN_EXPIRE_DAYS:-365}
# PR-2 of DS AI routing policy (2026-05-23) — backends dispatcher via llm-router.
# router_url default points at Mac mini Tailscale interface :8890 (PR-1).
# DS_BACKENDS_VIA_ROUTER=false 로 legacy 직접 호출 path 즉시 복귀.
- LLM_ROUTER_URL=${LLM_ROUTER_URL:-http://100.76.254.116:8890}
- DS_BACKENDS_VIA_ROUTER=${DS_BACKENDS_VIA_ROUTER:-true}
restart: unless-stopped
frontend:
build: ./frontend
ports:
- "127.0.0.1:3000:3000"
depends_on:
- fastapi
restart: unless-stopped
caddy:
image: caddy:2
ports:
- "8080:80"
volumes:
- ./Caddyfile:/etc/caddy/Caddyfile
- caddy_data:/data
depends_on:
- fastapi
- frontend
restart: unless-stopped
volumes:
pgdata:
caddy_data:
ollama_data:
reranker_cache:
ocr_models:
stt_models:
marker_models: