debian-mirror-gitlab/doc/development/adding_database_indexes.md
2022-08-13 15:12:31 +05:30

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Adding Database Indexes

Indexes can be used to speed up database queries, but when should you add a new index? Traditionally the answer to this question has been to add an index for every column used for filtering or joining data. For example, consider the following query:

SELECT *
FROM projects
WHERE user_id = 2;

Here we are filtering by the user_id column and as such a developer may decide to index this column.

While in certain cases indexing columns using the above approach may make sense, it can actually have a negative impact. Whenever you write data to a table, any existing indexes must also be updated. The more indexes there are, the slower this can potentially become. Indexes can also take up significant disk space, depending on the amount of data indexed and the index type. For example, PostgreSQL offers GIN indexes which can be used to index certain data types that cannot be indexed by regular B-tree indexes. These indexes, however, generally take up more data and are slower to update compared to B-tree indexes.

Because of all this, it's important make the following considerations when adding a new index:

  1. Do the new queries re-use as many existing indexes as possible?
  2. Is there enough data that using an index is faster than iterating over rows in the table?
  3. Is the overhead of maintaining the index worth the reduction in query timings?

Re-using Queries

The first step is to make sure your query re-uses as many existing indexes as possible. For example, consider the following query:

SELECT *
FROM todos
WHERE user_id = 123
AND state = 'open';

Now imagine we already have an index on the user_id column but not on the state column. One may think this query performs badly due to state being unindexed. In reality the query may perform just fine given the index on user_id can filter out enough rows.

The best way to determine if indexes are re-used is to run your query using EXPLAIN ANALYZE. Depending on the joined tables and the columns being used for filtering, you may find an extra index doesn't make much, if any, difference.

In short:

  1. Try to write your query in such a way that it re-uses as many existing indexes as possible.
  2. Run the query using EXPLAIN ANALYZE and study the output to find the most ideal query.

Data Size

A database may not use an index even when a regular sequence scan (iterating over all rows) is faster, especially for small tables.

Consider adding an index if a table is expected to grow, and your query has to filter a lot of rows. You may not want to add an index if the table size is small (<1,000 records), or if existing indexes already filter out enough rows.

Maintenance Overhead

Indexes have to be updated on every table write. In the case of PostgreSQL, all existing indexes are updated whenever data is written to a table. As a result, having many indexes on the same table slows down writes. It's therefore important to balance query performance with the overhead of maintaining an extra index.

Let's say that adding an index reduces SELECT timings by 5 milliseconds but increases INSERT/UPDATE/DELETE timings by 10 milliseconds. In this case, the new index may not be worth it. A new index is more valuable when SELECT timings are reduced and INSERT/UPDATE/DELETE timings are unaffected.

Finding Unused Indexes

To see which indexes are unused you can run the following query:

SELECT relname as table_name, indexrelname as index_name, idx_scan, idx_tup_read, idx_tup_fetch, pg_size_pretty(pg_relation_size(indexrelname::regclass))
FROM pg_stat_all_indexes
WHERE schemaname = 'public'
AND idx_scan = 0
AND idx_tup_read = 0
AND idx_tup_fetch = 0
ORDER BY pg_relation_size(indexrelname::regclass) desc;

This query outputs a list containing all indexes that are never used and sorts them by indexes sizes in descending order. This query helps in determining whether existing indexes are still required. More information on the meaning of the various columns can be found at https://www.postgresql.org/docs/current/monitoring-stats.html.

To determine if an index is still being used on production, use the following Thanos query with your index name:

sum(rate(pg_stat_user_indexes_idx_tup_read{env="gprd", indexrelname="index_ci_name", type="patroni-ci"}[5m]))

Because the query output relies on the actual usage of your database, it may be affected by factors such as:

  • Certain queries never being executed, thus not being able to use certain indexes.
  • Certain tables having little data, resulting in PostgreSQL using sequence scans instead of index scans.

This data is only reliable for a frequently used database with plenty of data, and using as many GitLab features as possible.

Requirements for naming indexes

Indexes with complex definitions must be explicitly named rather than relying on the implicit naming behavior of migration methods. In short, that means you must provide an explicit name argument for an index created with one or more of the following options:

  • where
  • using
  • order
  • length
  • type
  • opclass

Considerations for index names

Check our Constraints naming conventions page.

Why explicit names are required

As Rails is database agnostic, it generates an index name only from the required options of all indexes: table name and column names. For example, imagine the following two indexes are created in a migration:

def up
  add_index :my_table, :my_column

  add_index :my_table, :my_column, where: 'my_column IS NOT NULL'
end

Creation of the second index would fail, because Rails would generate the same name for both indexes.

This naming issue is further complicated by the behavior of the index_exists? method. It considers only the table name, column names, and uniqueness specification of the index when making a comparison. Consider:

def up
  unless index_exists?(:my_table, :my_column, where: 'my_column IS NOT NULL')
    add_index :my_table, :my_column, where: 'my_column IS NOT NULL'
  end
end

The call to index_exists? returns true if any index exists on :my_table and :my_column, and index creation is bypassed.

The add_concurrent_index helper is a requirement for creating indexes on populated tables. Because it cannot be used inside a transactional migration, it has a built-in check that detects if the index already exists. In the event a match is found, index creation is skipped. Without an explicit name argument, Rails can return a false positive for index_exists?, causing a required index to not be created properly. By always requiring a name for certain types of indexes, the chance of error is greatly reduced.

Temporary indexes

There may be times when an index is only needed temporarily.

For example, in a migration, a column of a table might be conditionally updated. To query which columns must be updated in the query performance guidelines, an index is needed that would otherwise not be used.

In these cases, consider a temporary index. To specify a temporary index:

  1. Prefix the index name with tmp_ and follow the naming conventions.
  2. Create a follow-up issue to remove the index in the next (or future) milestone.
  3. Add a comment in the migration mentioning the removal issue.

A temporary migration would look like:

INDEX_NAME = 'tmp_index_projects_on_owner_where_emails_disabled'

def up
  # Temporary index to be removed in 13.9 https://gitlab.com/gitlab-org/gitlab/-/issues/1234
  add_concurrent_index :projects, :creator_id, where: 'emails_disabled = false', name: INDEX_NAME
end

def down
  remove_concurrent_index_by_name :projects, INDEX_NAME
end

Create indexes asynchronously

For very large tables, index creation can be a challenge to manage. While add_concurrent_index creates indexes in a way that does not block normal traffic, it can still be problematic when index creation runs for many hours. Necessary database operations like autovacuum cannot run, and on GitLab.com, the deployment process is blocked waiting for index creation to finish.

To limit impact on GitLab.com, a process exists to create indexes asynchronously during weekend hours. Due to generally lower traffic and fewer deployments, index creation can proceed at a lower level of risk.

Schedule index creation for a low-impact time

  1. Schedule the index to be created.
  2. Verify the MR was deployed and the index exists in production.
  3. Add a migration to create the index synchronously.

Schedule the index to be created

Create an MR with a post-deployment migration which prepares the index for asynchronous creation. An example of creating an index using the asynchronous index helpers can be seen in the block below. This migration enters the index name and definition into the postgres_async_indexes table. The process that runs on weekends pulls indexes from this table and attempt to create them.

# in db/post_migrate/

INDEX_NAME = 'index_ci_builds_on_some_column'

def up
  prepare_async_index :ci_builds, :some_column, name: INDEX_NAME
end

def down
  unprepare_async_index :ci_builds, :some_column, name: INDEX_NAME
end

Verify the MR was deployed and the index exists in production

You can verify if the MR was deployed to GitLab.com by executing /chatops run auto_deploy status <merge_sha>. To verify existence of the index, you can:

  • Use a meta-command in #database-lab, such as: \d <index_name>.
    • Ensure that the index is not invalid.
  • Ask someone in #database to check if the index exists.
  • With proper access, you can also verify directly on production or in a production clone.

Add a migration to create the index synchronously

After the index is verified to exist on the production database, create a second merge request that adds the index synchronously. The schema changes must be updated and committed to structure.sql in this second merge request. The synchronous migration results in a no-op on GitLab.com, but you should still add the migration as expected for other installations. The below block demonstrates how to create the second migration for the previous asynchronous example.

WARNING: Verify that the index exists in production before merging a second migration with add_concurrent_index. If the second migration is deployed before the index has been created, the index is created synchronously when the second migration executes.

# in db/post_migrate/

INDEX_NAME = 'index_ci_builds_on_some_column'

disable_ddl_transaction!

def up
  add_concurrent_index :ci_builds, :some_column, name: INDEX_NAME
end

def down
  remove_concurrent_index_by_name :ci_builds, INDEX_NAME
end

Test database index changes locally

You must test the database index changes locally before creating a merge request.

Verify indexes created asynchronously

Use the asynchronous index helpers on your local environment to test changes for creating an index:

  1. Enable the feature flags by running Feature.enable(:database_async_index_creation) and Feature.enable(:database_reindexing) in the Rails console.
  2. Run bundle exec rails db:migrate so that it creates an entry in the postgres_async_indexes table.
  3. Run bundle exec rails gitlab:db:reindex so that the index is created asynchronously.
  4. To verify the index, open the PostgreSQL console using the GDK command gdk psql and run the command \d <index_name> to check that your newly created index exists.