Pagination performance guidelines

The following document gives a few ideas for improving the pagination (sorting) performance. These apply both on offset and keyset pagination.

Tie-breaker column

When ordering the columns it’s advised to order by distinct columns only. Consider the following example:

id created_at
1 2021-01-04 14:13:43
2 2021-01-05 19:03:12
3 2021-01-05 19:03:12

If we order by created_at, the result would likely depend on how the records are located on the disk.

Using the tie-breaker column is advised when the data is exposed via a well defined interface and its consumed by an automated process, such as an API. Without the tie-breaker column, the order of the rows could change (data is re-imported) which could cause problems that are hard to debug, such as:

  • An integration comparing the rows to determine changes breaks.
  • E-tag cache values change, which requires a complete re-download.
SELECT issues.* FROM issues ORDER BY created_at;

We can fix this by adding a second column to ORDER BY:

SELECT issues.* FROM issues ORDER BY created_at, id;

This change makes the order distinct so we have “stable” sorting.

note
To make the query efficient, we need an index covering both columns: (created_at, id). The order of the columns should match the columns in the ORDER BY clause.

Incremental sorting

In PostgreSQL 13 incremental sorting was added which can help introducing a tie-breaker column to the ORDER BY clause without adding or replacing an index. Also, with incremental sorting, introducing a new keyset-paginated database query can happen before the new index is built (async indexes). Incremental sorting is enabled by default.

Consider the following database query:

SELECT *
FROM merge_requests
WHERE author_id = 1
ORDER BY created_at ASC
LIMIT 20

The query will read 20 rows using the following index:

"index_merge_requests_on_author_id_and_created_at" btree (author_id, created_at)

Using this query with keyset pagination is not possible because the created_at column is not unique. Let’s add a tie-breaker column:

SELECT *
FROM merge_requests
WHERE author_id = 1
ORDER BY created_at ASC, id ASC
LIMIT 20

Execution plan:

 Limit  (cost=1.99..30.97 rows=20 width=910) (actual time=1.217..1.220 rows=20 loops=1)
   Buffers: shared hit=33 read=2
   I/O Timings: read=0.983 write=0.000
   ->  Incremental Sort  (cost=1.99..919.33 rows=633 width=910) (actual time=1.215..1.216 rows=20 loops=1)
         Sort Key: merge_requests.created_at, merge_requests.id
         Buffers: shared hit=33 read=2
         I/O Timings: read=0.983 write=0.000
         ->  Index Scan using index_merge_requests_on_author_id_and_created_at on public.merge_requests  (cost=0.57..890.84 rows=633 width=910) (actual time=0.038..1.139 rows=22 loops=1)
               Index Cond: (merge_requests.author_id = 1)
               Buffers: shared hit=24 read=2
               I/O Timings: read=0.983 write=0.000

As you can see the query read 22 rows using the same index. The database compared the 20th, 21th and 22th value of the created_at column and determined that the 22th value differ thus checking the next record is not needed. In this example the 20th and 21th column had the same created_at value.

Incremental sorting works well with timestamp columns where duplicated values are unlikely hence the incremental sorting will perform badly or won’t be used at all when the column has very few distinct values (like an enum).

As an example, when incremental sorting is disabled, the database reads all merge requests records by the author and sorts data in memory.

set enable_incremental_sort=off;
 Limit  (cost=907.69..907.74 rows=20 width=910) (actual time=2.911..2.917 rows=20 loops=1)
   Buffers: shared hit=1004
   ->  Sort  (cost=907.69..909.27 rows=633 width=910) (actual time=2.908..2.911 rows=20 loops=1)
         Sort Key: created_at, id
         Sort Method: top-N heapsort  Memory: 52kB
         Buffers: shared hit=1004
         ->  Index Scan using index_merge_requests_on_author_id_and_created_at on merge_requests  (cost=0.57..890.84 rows=633 width=910) (actual time=0.042..1.974 rows=1111 loops=1)
               Index Cond: (author_id = 1)
               Buffers: shared hit=1111
 Planning Time: 0.386 ms
 Execution Time: 3.000 ms
(11 rows)

In this example the database read 1111 rows and sorted the rows in memory.

Ordering by joined table column

Oftentimes, we want to order the data by a column on a joined database table. The following example orders issues records by the first_mentioned_in_commit_at metric column:

SELECT issues.* FROM issues
INNER JOIN issue_metrics on issue_metrics.issue_id=issues.id
WHERE issues.project_id = 2
ORDER BY issue_metrics.first_mentioned_in_commit_at DESC, issues.id DESC
LIMIT 20
OFFSET 0

With PostgreSQL version 11, the planner first looks up all issues matching the project_id filter and then join all issue_metrics rows. The ordering of rows happens in memory. In case the joined relation is always present (1:1 relationship), the database reads N * 2 rows where N is the number of rows matching the project_id filter.

For performance reasons, we should avoid mixing columns from different tables when specifying the ORDER BY clause.

In this particular case there is no simple way (like index creation) to improve the query. We might think that changing the issues.id column to issue_metrics.issue_id helps, however, this likely makes the query perform worse because it might force the database to process all rows in the issue_metrics table.

One idea to address this problem is denormalization. Adding the project_id column to the issue_metrics table makes the filtering and sorting efficient:

SELECT issues.* FROM issues
INNER JOIN issue_metrics on issue_metrics.issue_id=issues.id
WHERE issue_metrics.project_id = 2
ORDER BY issue_metrics.first_mentioned_in_commit_at DESC, issue_metrics.issue_id DESC
LIMIT 20
OFFSET 0
note
The query requires an index on issue_metrics table with the following column configuration: (project_id, first_mentioned_in_commit_at DESC, issue_id DESC).

Filtering

By project

Filtering by a project is a very common use case since we have many features on the project level. Examples: merge requests, issues, boards, iterations.

These features have a filter on project_id in their base query. Loading issues for a project:

project = Project.find(5)

# order by internal id
issues = project.issues.order(:iid).page(1).per(20)

To make the base query efficient, there is usually a database index covering the project_id column. This significantly reduces the number of rows the database needs to scan. Without the index, the whole issues table would be read (full table scan) by the database.

Since project_id is a foreign key, we might have the following index available:

"index_issues_on_project_id" btree (project_id)

By group

Unfortunately, there is no efficient way to sort and paginate on the group level. The database query execution time increases based on the number of records in the group.

Things get worse when group level actually means group and its subgroups. To load the first page, the database looks up the group hierarchy, finds all projects, and then looks up all issues.

The main reason behind the inefficient queries on the group level is the way our database schema is designed; our core domain models are associated with a project, and projects are associated with groups. This doesn’t mean that the database structure is bad, it’s just in a well-normalized form that is not optimized for efficient group level queries. We might need to look into denormalization in the long term.

Example: List issues in a group

group = Group.find(9970)

Issue.where(project_id: group.projects).order(:iid).page(1).per(20)

The generated SQL query:

SELECT "issues".*
FROM "issues"
WHERE "issues"."project_id" IN
    (SELECT "projects"."id"
     FROM "projects"
     WHERE "projects"."namespace_id" = 5)
ORDER BY "issues"."iid" ASC
LIMIT 20
OFFSET 0

The execution plan shows that we read significantly more rows than requested (20), and the rows are sorted in memory:

 Limit  (cost=10716.87..10716.92 rows=20 width=1300) (actual time=1472.305..1472.308 rows=20 loops=1)
   ->  Sort  (cost=10716.87..10717.03 rows=61 width=1300) (actual time=1472.303..1472.305 rows=20 loops=1)
         Sort Key: issues.iid
         Sort Method: top-N heapsort  Memory: 41kB
         ->  Nested Loop  (cost=1.00..10715.25 rows=61 width=1300) (actual time=0.215..1331.647 rows=177267 loops=1)
               ->  Index Only Scan using index_projects_on_namespace_id_and_id on projects  (cost=0.44..3.77 rows=19 width=4) (actual time=0.077..1.057 rows=270 loops=1)
                     Index Cond: (namespace_id = 9970)
                     Heap Fetches: 25
               ->  Index Scan using index_issues_on_project_id_and_iid on issues  (cost=0.56..559.28 rows=448 width=1300) (actual time=0.101..4.781 rows=657 loops=270)
                     Index Cond: (project_id = projects.id)
 Planning Time: 12.281 ms
 Execution Time: 1472.391 ms
(12 rows)

Columns in the same database table

Filtering by columns located in the same database table can be improved with an index. In case we want to support filtering by the state_id column, we can add the following index:

"index_issues_on_project_id_and_state_id_and_iid" UNIQUE, btree (project_id, state_id, iid)

Example query in Rails:

project = Project.find(5)

# order by internal id
issues = project.issues.opened.order(:iid).page(1).per(20)

SQL query:

SELECT "issues".*
FROM "issues"
WHERE
  "issues"."project_id" = 5
  AND ("issues"."state_id" IN (1))
ORDER BY "issues"."iid" ASC
LIMIT 20
OFFSET 0

The index above does not support the following project level query:

SELECT "issues".*
FROM "issues"
WHERE "issues"."project_id" = 5
ORDER BY "issues"."iid" ASC
LIMIT 20
OFFSET 0

Special case: confidential flag

In the issues table, we have a boolean field (confidential) that marks an issue confidential. This makes the issue invisible (filtered out) for non-member users.

Example SQL query:

SELECT "issues".*
FROM "issues"
WHERE "issues"."project_id" = 5
AND "issues"."confidential" = FALSE
ORDER BY "issues"."iid" ASC
LIMIT 20
OFFSET 0

We might be tempted to add an index on project_id, confidential, and iid to improve the database query, however, in this case it’s probably unnecessary. Based on the data distribution in the table, confidential issues are rare. Filtering them out does not make the database query significantly slower. The database might read a few extra rows, the performance difference might not even be visible to the end-user.

On the other hand, if we implemented a special filter where we only show confidential issues, we need the index. Finding 20 confidential issues might require the database to scan hundreds of rows or, in the worst case, all issues in the project.

note
Be aware of the data distribution and the table access patterns (how features work) when introducing a new database index. Sampling production data might be necessary to make the right decision.

Columns in a different database table

Example: filtering issues in a project by an assignee

project = Project.find(5)

project
  .issues
  .joins(:issue_assignees)
  .where(issue_assignees: { user_id: 10 })
  .order(:iid)
  .page(1)
  .per(20)
SELECT "issues".*
FROM "issues"
INNER JOIN "issue_assignees" ON "issue_assignees"."issue_id" = "issues"."id"
WHERE "issues"."project_id" = 5
  AND "issue_assignees"."user_id" = 10
ORDER BY "issues"."iid" ASC
LIMIT 20
OFFSET 0

Example database (oversimplified) execution plan:

  1. The database parses the SQL query and detects the JOIN.
  2. The database splits the query into two subqueries.
    • SELECT "issue_assignees".* FROM "issue_assignees" WHERE "issue_assignees"."user_id" = 10
    • SELECT "issues".* FROM "issues" WHERE "issues"."project_id" = 5
  3. The database estimates the number of rows and the costs to run these queries.
  4. The database executes the cheapest query first.
  5. Using the query result, load the rows from the other table (from the other query) using the JOIN column and filter the rows further.

In this particular example, the issue_assignees query would likely be executed first.

Running the query in production for the GitLab project produces the following execution plan:

 Limit  (cost=411.20..411.21 rows=1 width=1300) (actual time=24.071..24.077 rows=20 loops=1)
   ->  Sort  (cost=411.20..411.21 rows=1 width=1300) (actual time=24.070..24.073 rows=20 loops=1)
         Sort Key: issues.iid
         Sort Method: top-N heapsort  Memory: 91kB
         ->  Nested Loop  (cost=1.00..411.19 rows=1 width=1300) (actual time=0.826..23.705 rows=190 loops=1)
               ->  Index Scan using index_issue_assignees_on_user_id on issue_assignees  (cost=0.44..81.37 rows=92 width=4) (actual time=0.741..13.202 rows=215 loops=1)
                     Index Cond: (user_id = 4156052)
               ->  Index Scan using issues_pkey on issues  (cost=0.56..3.58 rows=1 width=1300) (actual time=0.048..0.048 rows=1 loops=215)
                     Index Cond: (id = issue_assignees.issue_id)
                     Filter: (project_id = 278964)
                     Rows Removed by Filter: 0
 Planning Time: 1.141 ms
 Execution Time: 24.170 ms
(13 rows)

The query looks up the assignees first, filtered by the user_id (user_id = 4156052) and it finds 215 rows. Using those 215 rows, the database looks up the 215 associated issue rows by the primary key. Notice that the filter on the project_id column is not backed by an index.

In most cases, we are lucky that the joined relation does not return too many rows, therefore, we end up with a relatively efficient database query that accesses a small number of rows. As the database grows, these queries might start to behave differently. Let’s say the number issue_assignees records for a particular user is very high, in the millions. This join query does not perform well, and it likely times out.

A similar problem could be a double join, where the filter exists in the 2nd JOIN query. Example: Issue -> LabelLink -> Label(name=bug).

There is no easy way to fix these problems. Denormalization of data could help significantly, however, it has also negative effects (data duplication and keeping the data up to date).

Ideas for improving the issue_assignees filter:

  • Add project_id column to the issue_assignees table so when performing the JOIN, the extra project_id filter further filters the rows. The sorting likely happens in memory:

    SELECT "issues".*
    FROM "issues"
    INNER JOIN "issue_assignees" ON "issue_assignees"."issue_id" = "issues"."id"
    WHERE "issues"."project_id" = 5
      AND "issue_assignees"."user_id" = 10
      AND "issue_assignees"."project_id" = 5
    ORDER BY "issues"."iid" ASC
    LIMIT 20
    OFFSET 0
    
  • Add the iid column to the issue_assignees table. Notice that the ORDER BY column is different and the project_id filter is gone from the issues table:

    SELECT "issues".*
    FROM "issues"
    INNER JOIN "issue_assignees" ON "issue_assignees"."issue_id" = "issues"."id"
    WHERE "issue_assignees"."user_id" = 10
      AND "issue_assignees"."project_id" = 5
    ORDER BY "issue_assignees"."iid" ASC
    LIMIT 20
    OFFSET 0
    

The query now performs well for any number of issue_assignees records, however, we pay a very high price for it:

  • Two columns are duplicated which increases the database size.
  • We need to keep the two columns in sync.
  • We need more indexes on the issue_assignees table to support the query.
  • The new database query is very specific to the assignee search and needs complex backend code to build it.
    • If the assignee is filtered by the user, then order by a different column, remove the project_id filter, etc.
note
Currently we’re not doing these kinds of denormalization at GitLab.