Managing database migrations in Python can be efficiently handled using migration tools such as Alembic, Django migrations, or Flask-Migrate. These tools help developers to apply schema changes to the database seamlessly while keeping track of the changes. In this example, we will explore a simple approach to handling database migrations.
# Example using Django Migrations
python manage.py makemigrations
python manage.py migrate
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