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This document is a work-in-progress and represents a very early state of the Pods design. Significant aspects are not documented, though we expect to add them in the future. This is one possible architecture for Pods, and we intend to contrast this with alternatives before deciding which approach to implement. This documentation will be kept even if we decide not to implement this so that we can document the reasons for not choosing this approach.

Pods: Data migration

It is essential for Pods architecture to provide a way to migrate data out of big Pods into smaller ones. This describes various approaches to provide this type of split.

We also need to handle for cases where data is already violating the expected isolation constraints of Pods (ie. references cannot span multiple organizations). We know that existing features like linked issues allowed users to link issues across any projects regardless of their hierarchy. There are many similar features. All of this data will need to be migrated in some way before it can be split across different pods. This may mean some data needs to be deleted, or the feature changed and modelled slightly differently before we can properly split or migrate the organizations between pods.

Having schema deviations across different Pods, which is a necessary consequence of different databases, will also impact our ability to migrate data between pods. Different schemas impact our ability to reliably replicate data across pods and especially impact our ability to validate that the data is correctly replicated. It might force us to only be able to move data between pods when the schemas are all in sync (slowing down deployments and the rebalancing process) or possibly only migrate from newer to older schemas which would be complex.

1. Definition

2. Data flow

3. Proposal

3.1. Split large Pods

A single Pod can only be divided into many Pods. This is based on principle that it is easier to create exact clone of an existing Pod in many replicas out of which some will be made authoritative once migrated. Keeping those replicas up-to date with Pod 0 is also much easier due to pre-existing replication solutions that can replicate the whole systems: Geo, PostgreSQL physical replication, etc.

  1. All data of an organization needs to not be divided across many Pods.
  2. Split should be doable online.
  3. New Pods cannot contain pre-existing data.
  4. N Pods contain exact replica of Pod 0.
  5. The data of Pod 0 is live replicated to as many Pods it needs to be split.
  6. Once consensus is achieved between Pod 0 and N-Pods the organizations to be migrated away are marked as read-only cluster-wide.
  7. The routes is updated on for all organizations to be split to indicate an authoritative Pod holding the most recent data, like gitlab-org on pod-100.
  8. The data for gitlab-org on Pod 0, and on other non-authoritative N-Pods are dormant and will be removed in the future.
  9. All accesses to gitlab-org on a given Pod are validated about pod_id of routes to ensure that given Pod is authoritative to handle the data.

More challenges of this proposal

  1. There is no streaming replication capability for Elasticsearch, but you could snapshot the whole Elasticsearch index and recreate, but this takes hours. It could be handled by pausing Elasticsearch indexing on the initial pod during the migration as indexing downtime is not a big issue, but this still needs to be coordinated with the migration process
  2. Syncing Redis, Gitaly, CI Postgres, Main Postgres, registry Postgres, other new data stores snapshots in an online system would likely lead to gaps without a long downtime. You need to choose a sync point and at the sync point you need to stop writes to perform the migration. The more data stores there are to migrate at the same time the longer the write downtime for the failover. We would also need to find a reliable place in the application to actually block updates to all these systems with a high degree of confidence. In the past we’ve only been confident by shutting down all rails services because any rails process could write directly to any of these at any time due to async workloads or other surprising code paths.
  3. How to efficiently delete all the orphaned data. Locating all ci_builds associated with half the organizations would be very expensive if we have to do joins. We haven’t yet determined if we’d want to store an organization_id column on every table, but this is the kind of thing it would be helpful for.

3.2. Migrate organization from an existing Pod

This is different to split, as we intend to perform logical and selective replication of data belonging to a single organization.

Today this type of selective replication is only implemented by Gitaly where we can migrate Git repository from a single Gitaly node to another with minimal downtime.

In this model we would require identifying all resources belonging to a given organization: database rows, object storage files, Git repositories, etc. and selectively copy them over to another (likely) existing Pod importing data into it. Ideally ensuring that we can perform logical replication live of all changed data, but change similarly to split which Pod is authoritative for this organization.

  1. It is hard to identify all resources belonging to organization.
  2. It requires either downtime for organization or a robust system to identify live changes made.
  3. It likely will require a full database structure analysis (more robust than project import/export) to perform selective PostgreSQL logical replication.

More challenges of this proposal

  1. Logical replication is still not performant enough to keep up with our scale. Even if we could use logical replication we still don’t have an efficient way to filter data related to a single organization without joining all the way to the organizations table which will slow down logical replication dramatically.

4. Evaluation

4.1. Pros

4.2. Cons