2017-06-02 11:12:36 -04:00
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# Background Migrations
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Background migrations can be used to perform data migrations that would
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otherwise take a very long time (hours, days, years, etc) to complete. For
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example, you can use background migrations to migrate data so that instead of
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storing data in a single JSON column the data is stored in a separate table.
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## When To Use Background Migrations
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In the vast majority of cases you will want to use a regular Rails migration
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instead. Background migrations should _only_ be used when migrating _data_ in
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tables that have so many rows this process would take hours when performed in a
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regular Rails migration.
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Background migrations _may not_ be used to perform schema migrations, they
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should only be used for data migrations.
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Some examples where background migrations can be useful:
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* Migrating events from one table to multiple separate tables.
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* Populating one column based on JSON stored in another column.
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* Migrating data that depends on the output of exernal services (e.g. an API).
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## Isolation
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Background migrations must be isolated and can not use application code (e.g.
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models defined in `app/models`). Since these migrations can take a long time to
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run it's possible for new versions to be deployed while they are still running.
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It's also possible for different migrations to be executed at the same time.
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This means that different background migrations should not migrate data in a
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way that would cause conflicts.
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2017-07-20 07:45:13 -04:00
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## Idempotence
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Background migrations are executed in a context of a Sidekiq process.
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Usual Sidekiq rules apply, especially the rule that jobs should be small
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and idempotent.
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See [Sidekiq best practices guidelines](https://github.com/mperham/sidekiq/wiki/Best-Practices)
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for more details.
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2017-07-21 05:02:54 -04:00
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Make sure that in case that your migration job is going to be retried data
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integrity is guarateed.
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2017-06-02 11:12:36 -04:00
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## How It Works
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Background migrations are simple classes that define a `perform` method. A
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Sidekiq worker will then execute such a class, passing any arguments to it. All
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migration classes must be defined in the namespace
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`Gitlab::BackgroundMigration`, the files should be placed in the directory
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`lib/gitlab/background_migration/`.
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## Scheduling
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Scheduling a migration can be done in either a regular migration or a
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post-deployment migration. To do so, simply use the following code while
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replacing the class name and arguments with whatever values are necessary for
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your migration:
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```ruby
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BackgroundMigrationWorker.perform_async('BackgroundMigrationClassName', [arg1, arg2, ...])
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```
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2017-06-29 05:41:19 -04:00
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Usually it's better to enqueue jobs in bulk, for this you can use
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2017-06-02 11:12:36 -04:00
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`BackgroundMigrationWorker.perform_bulk`:
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```ruby
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BackgroundMigrationWorker.perform_bulk(
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[['BackgroundMigrationClassName', [1]],
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2017-06-30 06:06:29 -04:00
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['BackgroundMigrationClassName', [2]]]
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2017-06-02 11:12:36 -04:00
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)
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```
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You'll also need to make sure that newly created data is either migrated, or
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saved in both the old and new version upon creation. For complex and time
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consuming migrations it's best to schedule a background job using an
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`after_create` hook so this doesn't affect response timings. The same applies to
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updates. Removals in turn can be handled by simply defining foreign keys with
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cascading deletes.
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2017-06-29 05:41:19 -04:00
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If you would like to schedule jobs in bulk with a delay, you can use
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`BackgroundMigrationWorker.perform_bulk_in`:
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```ruby
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jobs = [['BackgroundMigrationClassName', [1]],
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['BackgroundMigrationClassName', [2]]]
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BackgroundMigrationWorker.perform_bulk_in(5.minutes, jobs)
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```
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2017-06-02 11:12:36 -04:00
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## Cleaning Up
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Because background migrations can take a long time you can't immediately clean
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things up after scheduling them. For example, you can't drop a column that's
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used in the migration process as this would cause jobs to fail. This means that
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you'll need to add a separate _post deployment_ migration in a future release
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that finishes any remaining jobs before cleaning things up (e.g. removing a
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column).
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As an example, say you want to migrate the data from column `foo` (containing a
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big JSON blob) to column `bar` (containing a string). The process for this would
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roughly be as follows:
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1. Release A:
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1. Create a migration class that perform the migration for a row with a given ID.
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1. Deploy the code for this release, this should include some code that will
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schedule jobs for newly created data (e.g. using an `after_create` hook).
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1. Schedule jobs for all existing rows in a post-deployment migration. It's
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possible some newly created rows may be scheduled twice so your migration
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should take care of this.
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1. Release B:
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1. Deploy code so that the application starts using the new column and stops
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scheduling jobs for newly created data.
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1. In a post-deployment migration you'll need to ensure no jobs remain. To do
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so you can use `Gitlab::BackgroundMigration.steal` to process any remaining
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jobs before continueing.
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1. Remove the old column.
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## Example
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To explain all this, let's use the following example: the table `services` has a
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field called `properties` which is stored in JSON. For all rows you want to
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extract the `url` key from this JSON object and store it in the `services.url`
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column. There are millions of services and parsing JSON is slow, thus you can't
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do this in a regular migration.
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To do this using a background migration we'll start with defining our migration
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class:
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```ruby
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class Gitlab::BackgroundMigration::ExtractServicesUrl
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class Service < ActiveRecord::Base
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self.table_name = 'services'
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end
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def perform(service_id)
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# A row may be removed between scheduling and starting of a job, thus we
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# need to make sure the data is still present before doing any work.
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service = Service.select(:properties).find_by(id: service_id)
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return unless service
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begin
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json = JSON.load(service.properties)
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rescue JSON::ParserError
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# If the JSON is invalid we don't want to keep the job around forever,
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# instead we'll just leave the "url" field to whatever the default value
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# is.
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return
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end
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service.update(url: json['url']) if json['url']
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end
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end
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```
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Next we'll need to adjust our code so we schedule the above migration for newly
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created and updated services. We can do this using something along the lines of
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the following:
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```ruby
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class Service < ActiveRecord::Base
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after_commit :schedule_service_migration, on: :update
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after_commit :schedule_service_migration, on: :create
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def schedule_service_migration
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BackgroundMigrationWorker.perform_async('ExtractServicesUrl', [id])
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end
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end
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```
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We're using `after_commit` here to ensure the Sidekiq job is not scheduled
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before the transaction completes as doing so can lead to race conditions where
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the changes are not yet visible to the worker.
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Next we'll need a post-deployment migration that schedules the migration for
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existing data. Since we're dealing with a lot of rows we'll schedule jobs in
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batches instead of doing this one by one:
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```ruby
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class ScheduleExtractServicesUrl < ActiveRecord::Migration
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disable_ddl_transaction!
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class Service < ActiveRecord::Base
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self.table_name = 'services'
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end
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def up
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Service.select(:id).in_batches do |relation|
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jobs = relation.pluck(:id).map do |id|
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['ExtractServicesUrl', [id]]
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end
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BackgroundMigrationWorker.perform_bulk(jobs)
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end
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end
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def down
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end
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end
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```
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Once deployed our application will continue using the data as before but at the
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same time will ensure that both existing and new data is migrated.
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In the next release we can remove the `after_commit` hooks and related code. We
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will also need to add a post-deployment migration that consumes any remaining
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jobs. Such a migration would look like this:
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```ruby
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class ConsumeRemainingExtractServicesUrlJobs < ActiveRecord::Migration
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disable_ddl_transaction!
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def up
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Gitlab::BackgroundMigration.steal('ExtractServicesUrl')
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end
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def down
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end
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end
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```
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This migration will then process any jobs for the ExtractServicesUrl migration
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and continue once all jobs have been processed. Once done you can safely remove
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the `services.properties` column.
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2017-07-20 07:45:13 -04:00
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## Testing
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2017-07-21 05:02:54 -04:00
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It is required to write tests for background migrations' scheduling migration
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(either a regular migration or a post deployment migration), background
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migration itself and a cleanup migration. You can use the `:migration` RSpec
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tag when testing a regular / post deployment migration.
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See [README][migrations-readme].
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When you do that, keep in mind that `before` and `after` RSpec hooks are going
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to migrate you database down and up, which can result in other background
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migrations being called. That means that using `spy` test doubles with
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`have_received` is encouraged, instead of using regular test doubles, because
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your expectations defined in a `it` block can conflict with what is being
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called in RSpec hooks. See [gitlab-org/gitlab-ce#35351][issue-rspec-hooks]
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for more details.
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2017-07-20 07:45:13 -04:00
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## Best practices
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1. Make sure that background migration jobs are idempotent.
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1. Make sure that tests you write are not false positives.
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[migrations-readme]: https://gitlab.com/gitlab-org/gitlab-ce/blob/master/spec/migrations/README.md
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[issue-rspec-hooks]: https://gitlab.com/gitlab-org/gitlab-ce/issues/35351
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