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Database schema and migration

Sync schemas and migrate data using official RAGFlow scripts.


RAGFlow handles schema updates and migrations automatically at startup. However, for high-volume environments like Kubernetes, massive datasets can cause initialization to exceed 10 minutes, potentially triggering container timeouts or health check failures. To avoid this, you can disable the built-in auto-initialization and manually run these provided scripts to complete database upgrades before launching the service:

mysql_migration.py

The mysql_migration.py script is a specialized tool for re-organizing RAGFlow’s model-related data. It transitions data from older unified tables into a modern, multi-table structure to support advanced model management.

Key functions

  • Sequential migration: Moves data through three distinct stages—Provider, Instance, and Model—to maintain database integrity and satisfy dependencies.
  • Flexible setup: Connects to MySQL using either a YAML configuration file or direct command-line arguments.
  • Execution control: Offers three specific modes: dry-run (preview), table-only (structural setup), and execute (full data move).
  • Automated mapping: Generates unique IDs and handles complex joins between legacy records and new table structures.
  • Batch logging: Processes records in sets of 100 and provides a final summary of total duration and row counts.

When to use

  • Version upgrades: Essential when moving to RAGFlow v0.25 or later to ensure your models are correctly categorized in the new schema.
  • Data normalization: Necessary when consolidating multiple API keys or LLM providers into the updated system format.
  • Kubernetes deployments: Useful for setting up the database structure independently using the --create-table-only flag before main services start.
  • Migration verification: Used in dry-run mode to identify any legacy records that still need to be moved to the new tables.

db_schema_sync.py

The db_schema_sync.py script is a synchronization utility that ensures your MySQL database structure matches the Peewee ORM models defined in the RAGFlow source code.

Key functions

  • Change detection: Compares Python model definitions in api/db/db_models.py against the live database to identify new tables, added fields, or type mismatches.
  • Migration generation: Automatically creates Python migration files (containing migrate() and rollback() logic) in version-specific directories (e.g., tools/migrate/v0_25_0/).
  • Schema auditing: Provides a --diff command to view structural discrepancies without applying changes.
  • Execution management: Applies pending migrations to the database to bring it up to date with the current software version.
  • Safety controls: Prevents accidental data loss by requiring an explicit --drop flag to generate DROP COLUMN statements for removed fields.

When to use

  • Version upgrades: When moving to a new version of RAGFlow that introduces structural database changes.
  • Development: When modifying db_models.py and needing to update your local database without manual SQL.
  • CI/CD pipelines: To automatically prepare or apply database updates during deployment.
  • Troubleshooting: When the application fails due to "Unknown column" or "Table not found" errors, indicating a desynchronized schema.