Files
youlbot/container.py
T
shinalok 0b50444e43 IDEA-2/1/5/7: 스마트 알림, 대화 기반 RAG, CRAG, 파라미터 자동 튜닝
- IDEA-2 스마트 알림: td_reminders 테이블, set_reminder/list_reminders 도구,
  SchedulerService(asyncio 60초 루프, D-7/D-1/D-0 Telegram push),
  FastAPI lifespan 연동, GET /reminders/{user_id} 엔드포인트

- IDEA-1 대화 기반 RAG: IngestionService.store_text() 추가,
  AgentService._maybe_index_conversation() — 응답 후 LLM 판단 → Qdrant 저장
  (CONV_RAG_ENABLED=true 활성화, background task로 응답 속도 무관)

- IDEA-5 CRAG: AgentState에 crag_fallback_used 플래그 추가,
  crag_check LangGraph 노드 — search_documents 결과 없으면 web_search 자동 주입,
  route_after_crag으로 fallback 1회 루프 제어 (CRAG_ENABLED=true 활성화)

- IDEA-7 RAG Auto-Eval: eval/auto_tune.py — API 서버 없이 파라미터 조합별
  context_precision/recall 비교, 최적 설정 추천

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-06-04 10:04:05 +09:00

169 lines
6.4 KiB
Python

from dependency_injector import containers, providers
from config import Config
from services.model.mlx_model import MlxModelService
from services.model.mlx_chat_model import MlxChatModel
from services.chat.history_service import HistoryService
from services.chat.chat_service import ChatService
from services.chat.compact_service import CompactService
from services.db.mysql_service import DatabaseService
from services.db.conversation_repository import ConversationRepository
from services.db.user_profile_repository import UserProfileRepository
from services.db.feedback_repository import FeedbackRepository
from services.db.reminder_repository import ReminderRepository
from services.scheduler_service import SchedulerService
from services.ui.cli_service import CliUiService
from services.events.event_bus import EventBus
from services.events.handlers import StreamTokenHandler, StreamEndHandler
from langchain_huggingface import HuggingFaceEmbeddings
from langchain_qdrant import FastEmbedSparse
from services.rag.ingestion_service import IngestionService
from services.rag.rerank_service import RerankService
from services.rag.retriever_service import RetrieverService
from services.agent.agent_service import AgentService
from services.model.mlx_vision_model import MlxVisionModel
class Container(containers.DeclarativeContainer):
config = providers.Singleton(Config)
event_bus = providers.Singleton(EventBus)
model_service = providers.Singleton(
MlxModelService,
model_id=providers.Callable(lambda c: c.model_id, config),
)
# LangGraph 에이전트용 BaseChatModel (Phase 1)
chat_model = providers.Singleton(
MlxChatModel,
model_id=providers.Callable(lambda c: c.model_id, config),
max_tokens=providers.Callable(lambda c: c.max_tokens, config),
enable_thinking=providers.Callable(lambda c: c.enable_thinking, config),
)
compact_service = providers.Singleton(
CompactService,
model=model_service,
)
db_service = providers.Singleton(
DatabaseService,
host=providers.Callable(lambda c: c.db_host, config),
port=providers.Callable(lambda c: c.db_port, config),
db=providers.Callable(lambda c: c.db_name, config),
user=providers.Callable(lambda c: c.db_user, config),
password=providers.Callable(lambda c: c.db_password, config),
)
conversation_repository = providers.Singleton(
ConversationRepository,
db=db_service,
)
user_profile_repository = providers.Singleton(
UserProfileRepository,
db=db_service,
)
feedback_repository = providers.Singleton(
FeedbackRepository,
db=db_service,
)
reminder_repository = providers.Singleton(
ReminderRepository,
db=db_service,
)
scheduler_service = providers.Singleton(
SchedulerService,
reminder_repo=reminder_repository,
bot_token=providers.Callable(lambda c: c.telegram_bot_token, config),
user_map_json=providers.Callable(lambda c: c.telegram_user_map, config),
)
history_service = providers.Factory(
HistoryService,
system_prompt=providers.Callable(lambda c: c.system_prompt, config),
max_turns=providers.Callable(lambda c: c.max_history_turns, config),
compact_threshold=providers.Callable(lambda c: c.compact_threshold, config),
repository=conversation_repository,
compact_service=compact_service,
)
chat_service = providers.Factory(
ChatService,
model=model_service,
history=history_service,
event_bus=event_bus,
max_tokens=providers.Callable(lambda c: c.max_tokens, config),
)
ui_service = providers.Singleton(CliUiService)
stream_token_handler = providers.Singleton(StreamTokenHandler)
stream_end_handler = providers.Singleton(StreamEndHandler)
# Phase 2 — RAG 파이프라인
embeddings = providers.Singleton(
HuggingFaceEmbeddings,
model_name=providers.Callable(lambda c: c.embedding_model_id, config),
model_kwargs=providers.Callable(lambda c: {"device": c.embedding_device}, config),
)
reranker = providers.Callable(
lambda c: RerankService(c.reranker_model_id) if c.reranker_enabled else None,
config,
)
sparse_embeddings = providers.Singleton(
lambda c: FastEmbedSparse(model_name=c.sparse_model_id) if c.hybrid_search_enabled else None,
config,
)
ingestion_service = providers.Singleton(
IngestionService,
embeddings=embeddings,
qdrant_url=providers.Callable(lambda c: c.qdrant_url, config),
collection_name=providers.Callable(lambda c: c.qdrant_collection, config),
breakpoint_threshold_type=providers.Callable(
lambda c: c.semantic_breakpoint_threshold_type, config
),
buffer_size=providers.Callable(lambda c: c.semantic_buffer_size, config),
sparse_embeddings=sparse_embeddings,
)
retriever_service = providers.Singleton(
RetrieverService,
embeddings=embeddings,
qdrant_url=providers.Callable(lambda c: c.qdrant_url, config),
collection_name=providers.Callable(lambda c: c.qdrant_collection, config),
top_k=providers.Callable(lambda c: c.rag_top_k, config),
reranker=reranker,
rerank_fetch_k=providers.Callable(lambda c: c.reranker_fetch_k, config),
sparse_embeddings=sparse_embeddings,
)
# Phase 17 — Vision Model (lazy load)
vision_model = providers.Singleton(
MlxVisionModel,
model_id=providers.Callable(lambda c: c.vision_model_id, config),
max_tokens=providers.Callable(lambda c: c.vision_max_tokens, config),
)
# Phase 3 — LangGraph Agent
agent_service = providers.Singleton(
AgentService,
chat_model=chat_model,
retriever_service=retriever_service,
system_prompt=providers.Callable(lambda c: c.system_prompt, config),
rag_verbose=providers.Callable(lambda c: c.rag_verbose, config),
rag_show_sources=providers.Callable(lambda c: c.rag_show_sources, config),
langgraph_verbose=providers.Callable(lambda c: c.langgraph_verbose, config),
think_verbose=providers.Callable(lambda c: c.think_verbose, config),
query_rewrite_enabled=providers.Callable(lambda c: c.query_rewrite_enabled, config),
user_profile_repository=user_profile_repository,
conversation_repository=conversation_repository,
)