"""Alembic environment for DeerFlow application tables. ONLY manages DeerFlow's tables (runs, threads_meta, cron_jobs, users). LangGraph's checkpointer tables are managed by LangGraph itself -- they have their own schema lifecycle and must not be touched by Alembic. """ from __future__ import annotations import asyncio import logging from logging.config import fileConfig from alembic import context from sqlalchemy.ext.asyncio import create_async_engine from deerflow.persistence.base import Base # Import all models so metadata is populated. try: import deerflow.persistence.models # noqa: F401 — register ORM models with Base.metadata except ImportError: # Models not available — migration will work with existing metadata only. logging.getLogger(__name__).warning("Could not import deerflow.persistence.models; Alembic may not detect all tables") config = context.config if config.config_file_name is not None: fileConfig(config.config_file_name) target_metadata = Base.metadata def run_migrations_offline() -> None: url = config.get_main_option("sqlalchemy.url") context.configure( url=url, target_metadata=target_metadata, literal_binds=True, render_as_batch=True, ) with context.begin_transaction(): context.run_migrations() def do_run_migrations(connection): context.configure( connection=connection, target_metadata=target_metadata, render_as_batch=True, # Required for SQLite ALTER TABLE support ) with context.begin_transaction(): context.run_migrations() async def run_migrations_online() -> None: connectable = create_async_engine(config.get_main_option("sqlalchemy.url")) async with connectable.connect() as connection: await connection.run_sync(do_run_migrations) await connectable.dispose() if context.is_offline_mode(): run_migrations_offline() else: asyncio.run(run_migrations_online())