Background migrations

Background migrations can be used to perform data migrations that would otherwise take a very long time (hours, days, years, etc) to complete. For example, you can use background migrations to migrate data so that instead of storing data in a single JSON column the data is stored in a separate table.

If the database cluster is considered to be in an unhealthy state, background migrations automatically reschedule themselves for a later point in time.

When To Use Background Migrations

In the vast majority of cases you will want to use a regular Rails migration instead. Background migrations should be used when migrating data in tables that have so many rows this process would take hours when performed in a regular Rails migration.

Background migrations may also be used when executing numerous single-row queries for every item on a large dataset. Typically, for single-record patterns, runtime is largely dependent on the size of the dataset, hence it should be split accordingly and put into background migrations.

Background migrations may not be used to perform schema migrations, they should only be used for data migrations.

Some examples where background migrations can be useful:

  • Migrating events from one table to multiple separate tables.
  • Populating one column based on JSON stored in another column.
  • Migrating data that depends on the output of external services (e.g. an API).

NOTE: Note: If the background migration is part of an important upgrade, make sure it's announced in the release post. Discuss with your Project Manager if you're not sure the migration falls into this category.

Isolation

Background migrations must be isolated and can not use application code (e.g. models defined in app/models). Since these migrations can take a long time to run it's possible for new versions to be deployed while they are still running.

It's also possible for different migrations to be executed at the same time. This means that different background migrations should not migrate data in a way that would cause conflicts.

Idempotence

Background migrations are executed in a context of a Sidekiq process. Usual Sidekiq rules apply, especially the rule that jobs should be small and idempotent.

See Sidekiq best practices guidelines for more details.

Make sure that in case that your migration job is going to be retried data integrity is guaranteed.

Background migrations for EE-only features

All the background migration classes for EE-only features should be present in GitLab CE. For this purpose, an empty class can be created for GitLab CE, and it can be extended for GitLab EE as explained in the guidelines for implementing Enterprise Edition features.

How It Works

Background migrations are simple classes that define a perform method. A Sidekiq worker will then execute such a class, passing any arguments to it. All migration classes must be defined in the namespace Gitlab::BackgroundMigration, the files should be placed in the directory lib/gitlab/background_migration/.

Scheduling

Scheduling a background migration should be done in a post-deployment migration that includes Gitlab::Database::MigrationHelpers To do so, simply use the following code while replacing the class name and arguments with whatever values are necessary for your migration:

migrate_async('BackgroundMigrationClassName', [arg1, arg2, ...])

Usually it's better to enqueue jobs in bulk, for this you can use bulk_migrate_async:

bulk_migrate_async(
  [['BackgroundMigrationClassName', [1]],
   ['BackgroundMigrationClassName', [2]]]
)

Note that this will queue a Sidekiq job immediately: if you have a large number of records, this may not be what you want. You can use the function queue_background_migration_jobs_by_range_at_intervals to split the job into batches:

queue_background_migration_jobs_by_range_at_intervals(
  ClassName,
  BackgroundMigrationClassName,
  2.minutes,
  batch_size: 10_000
  )

You'll also need to make sure that newly created data is either migrated, or saved in both the old and new version upon creation. For complex and time consuming migrations it's best to schedule a background job using an after_create hook so this doesn't affect response timings. The same applies to updates. Removals in turn can be handled by simply defining foreign keys with cascading deletes.

If you would like to schedule jobs in bulk with a delay, you can use BackgroundMigrationWorker.bulk_perform_in:

jobs = [['BackgroundMigrationClassName', [1]],
        ['BackgroundMigrationClassName', [2]]]

bulk_migrate_in(5.minutes, jobs)

Rescheduling background migrations

If one of the background migrations contains a bug that is fixed in a patch release, the background migration needs to be rescheduled so the migration would be repeated on systems that already performed the initial migration.

When you reschedule the background migration, make sure to turn the original scheduling into a no-op by clearing up the #up and #down methods of the migration performing the scheduling. Otherwise the background migration would be scheduled multiple times on systems that are upgrading multiple patch releases at once.

Cleaning Up

NOTE: Note: Cleaning up any remaining background migrations must be done in either a major or minor release, you must not do this in a patch release.

Because background migrations can take a long time you can't immediately clean things up after scheduling them. For example, you can't drop a column that's used in the migration process as this would cause jobs to fail. This means that you'll need to add a separate post deployment migration in a future release that finishes any remaining jobs before cleaning things up (e.g. removing a column).

As an example, say you want to migrate the data from column foo (containing a big JSON blob) to column bar (containing a string). The process for this would roughly be as follows:

  1. Release A:
    1. Create a migration class that perform the migration for a row with a given ID.
    2. Deploy the code for this release, this should include some code that will schedule jobs for newly created data (e.g. using an after_create hook).
    3. Schedule jobs for all existing rows in a post-deployment migration. It's possible some newly created rows may be scheduled twice so your migration should take care of this.
  2. Release B:
    1. Deploy code so that the application starts using the new column and stops scheduling jobs for newly created data.
    2. In a post-deployment migration you'll need to ensure no jobs remain.
      1. Use Gitlab::BackgroundMigration.steal to process any remaining jobs in Sidekiq.
      2. Reschedule the migration to be run directly (i.e. not through Sidekiq) on any rows that weren't migrated by Sidekiq. This can happen if, for instance, Sidekiq received a SIGKILL, or if a particular batch failed enough times to be marked as dead.
    3. Remove the old column.

This may also require a bump to the import/export version, if importing a project from a prior version of GitLab requires the data to be in the new format.

Example

To explain all this, let's use the following example: the table services has a field called properties which is stored in JSON. For all rows you want to extract the url key from this JSON object and store it in the services.url column. There are millions of services and parsing JSON is slow, thus you can't do this in a regular migration.

To do this using a background migration we'll start with defining our migration class:

class Gitlab::BackgroundMigration::ExtractServicesUrl
  class Service < ActiveRecord::Base
    self.table_name = 'services'
  end

  def perform(service_id)
    # A row may be removed between scheduling and starting of a job, thus we
    # need to make sure the data is still present before doing any work.
    service = Service.select(:properties).find_by(id: service_id)

    return unless service

    begin
      json = JSON.load(service.properties)
    rescue JSON::ParserError
      # If the JSON is invalid we don't want to keep the job around forever,
      # instead we'll just leave the "url" field to whatever the default value
      # is.
      return
    end

    service.update(url: json['url']) if json['url']
  end
end

Next we'll need to adjust our code so we schedule the above migration for newly created and updated services. We can do this using something along the lines of the following:

class Service < ActiveRecord::Base
  after_commit :schedule_service_migration, on: :update
  after_commit :schedule_service_migration, on: :create

  def schedule_service_migration
    BackgroundMigrationWorker.perform_async('ExtractServicesUrl', [id])
  end
end

We're using after_commit here to ensure the Sidekiq job is not scheduled before the transaction completes as doing so can lead to race conditions where the changes are not yet visible to the worker.

Next we'll need a post-deployment migration that schedules the migration for existing data. Since we're dealing with a lot of rows we'll schedule jobs in batches instead of doing this one by one:

class ScheduleExtractServicesUrl < ActiveRecord::Migration[4.2]
  disable_ddl_transaction!

  class Service < ActiveRecord::Base
    self.table_name = 'services'
  end

  def up
    Service.select(:id).in_batches do |relation|
      jobs = relation.pluck(:id).map do |id|
        ['ExtractServicesUrl', [id]]
      end

      BackgroundMigrationWorker.bulk_perform_async(jobs)
    end
  end

  def down
  end
end

Once deployed our application will continue using the data as before but at the same time will ensure that both existing and new data is migrated.

In the next release we can remove the after_commit hooks and related code. We will also need to add a post-deployment migration that consumes any remaining jobs and manually run on any un-migrated rows. Such a migration would look like this:

class ConsumeRemainingExtractServicesUrlJobs < ActiveRecord::Migration[4.2]
  disable_ddl_transaction!

  class Service < ActiveRecord::Base
    include ::EachBatch

    self.table_name = 'services'
  end

  def up
    # This must be included
    Gitlab::BackgroundMigration.steal('ExtractServicesUrl')

    # This should be included, but can be skipped - see below
    Service.where(url: nil).each_batch(of: 50) do |batch|
      range = batch.pluck('MIN(id)', 'MAX(id)').first

      Gitlab::BackgroundMigration::ExtractServicesUrl.new.perform(*range)
    end
  end

  def down
  end
end

The final step runs for any un-migrated rows after all of the jobs have been processed. This is in case a Sidekiq process running the background migrations received SIGKILL, leading to the jobs being lost. (See more reliable Sidekiq queue for more information.)

If the application does not depend on the data being 100% migrated (for instance, the data is advisory, and not mission-critical), then this final step can be skipped.

This migration will then process any jobs for the ExtractServicesUrl migration and continue once all jobs have been processed. Once done you can safely remove the services.properties column.

Testing

It is required to write tests for:

  • The background migrations' scheduling migration.
  • The background migration itself.
  • A cleanup migration.

The :migration and schema: :latest RSpec tags are automatically set for background migration specs. See the Testing Rails migrations style guide.

Keep in mind that before and after RSpec hooks are going to migrate you database down and up, which can result in other background migrations being called. That means that using spy test doubles with have_received is encouraged, instead of using regular test doubles, because your expectations defined in a it block can conflict with what is being called in RSpec hooks. See issue #35351 for more details.

Best practices

  1. Make sure to know how much data you're dealing with.

  2. Make sure that background migration jobs are idempotent.

  3. Make sure that tests you write are not false positives.

  4. Make sure that if the data being migrated is critical and cannot be lost, the clean-up migration also checks the final state of the data before completing.

  5. When migrating many columns, make sure it won't generate too many dead tuples in the process (you may need to directly query the number of dead tuples and adjust the scheduling according to this piece of data).

  6. Make sure to discuss the numbers with a database specialist, the migration may add more pressure on DB than you expect (measure on staging, or ask someone to measure on production).

  7. Make sure to know how much time it'll take to run all scheduled migrations.

  8. Provide an estimation section in the description, explaining timings from the linked query plans and batches as described in the migration.

    For example, assuming a migration that deletes data, include information similar to the following section:

    Background Migration Details:
    
    47600 items to delete
    batch size = 1000
    47600 / 1000 = 48 loops
    
    Estimated times per batch:
    - 900ms for select statement with 1000 items
    - 2100ms for delete statement with 1000 items
    Total: ~3sec per batch
    
    2 mins delay per loop (safe for the given total time per batch)
    
    48 * ( 120 + 3)  = ~98.4 mins to run all the scheduled jobs