from django.apps import AppConfig import os import logging logger = logging.getLogger(__name__) class CoreConfig(AppConfig): default_auto_field = "django.db.models.AutoField" name = "hue_portal.core" def ready(self): print('[CoreConfig] 🔔 ready() method called', flush=True) logger.info('[CoreConfig] ready() method called') from . import signals # noqa: F401 # Preload models in worker process (Gunicorn workers are separate processes) # This ensures models are loaded when worker starts, not on first request # Skip preload if running migrations or other management commands import sys if 'migrate' in sys.argv or 'collectstatic' in sys.argv or 'generate_legal_questions' in sys.argv or 'train_intent' in sys.argv or 'populate_legal_tsv' in sys.argv: print('[CoreConfig] ⏭️ Skipping model preload (management command)', flush=True) logger.info('[CoreConfig] Skipping model preload (management command)') return django_settings = os.environ.get('DJANGO_SETTINGS_MODULE') print(f'[CoreConfig] 🔍 DJANGO_SETTINGS_MODULE: {django_settings}', flush=True) logger.info(f'[CoreConfig] DJANGO_SETTINGS_MODULE: {django_settings}') if django_settings: try: print('[CoreConfig] 🔄 Preloading models in worker process...', flush=True) logger.info('[CoreConfig] Preloading models in worker process...') # 1. Preload Embedding Model (BGE-M3) try: print('[CoreConfig] 📦 Preloading embedding model (BGE-M3)...', flush=True) from .embeddings import get_embedding_model embedding_model = get_embedding_model() if embedding_model: print('[CoreConfig] ✅ Embedding model preloaded successfully', flush=True) logger.info('[CoreConfig] Embedding model preloaded successfully') else: print('[CoreConfig] ⚠️ Embedding model not loaded', flush=True) except Exception as e: print(f'[CoreConfig] ⚠️ Embedding model preload failed: {e}', flush=True) logger.warning(f'[CoreConfig] Embedding model preload failed: {e}') # 2. Preload LLM Model (llama.cpp) llm_provider = os.environ.get('DEFAULT_LLM_PROVIDER') or os.environ.get('LLM_PROVIDER', '') if llm_provider.lower() == 'llama_cpp': try: print('[CoreConfig] 📦 Preloading LLM model (llama.cpp)...', flush=True) from hue_portal.chatbot.llm_integration import get_llm_generator llm_gen = get_llm_generator() if llm_gen and hasattr(llm_gen, 'llama_cpp') and llm_gen.llama_cpp: print('[CoreConfig] ✅ LLM model preloaded successfully', flush=True) logger.info('[CoreConfig] LLM model preloaded successfully') else: print('[CoreConfig] ⚠️ LLM model not loaded (may load on first request)', flush=True) except Exception as e: print(f'[CoreConfig] ⚠️ LLM model preload failed: {e} (will load on first request)', flush=True) logger.warning(f'[CoreConfig] LLM model preload failed: {e}') else: print(f'[CoreConfig] ⏭️ Skipping LLM preload (provider is {llm_provider or "not set"}, not llama_cpp)', flush=True) # 3. Preload Reranker Model try: print('[CoreConfig] 📦 Preloading reranker model...', flush=True) from .reranker import get_reranker reranker = get_reranker() if reranker: print('[CoreConfig] ✅ Reranker model preloaded successfully', flush=True) logger.info('[CoreConfig] Reranker model preloaded successfully') else: print('[CoreConfig] ⚠️ Reranker model not loaded (may load on first request)', flush=True) except Exception as e: print(f'[CoreConfig] ⚠️ Reranker preload failed: {e} (will load on first request)', flush=True) logger.warning(f'[CoreConfig] Reranker preload failed: {e}') print('[CoreConfig] ✅ Model preload completed in worker process', flush=True) logger.info('[CoreConfig] Model preload completed in worker process') except Exception as e: print(f'[CoreConfig] ⚠️ Model preload error: {e} (models will load on first request)', flush=True) logger.warning(f'[CoreConfig] Model preload error: {e}')