- Motivation
-
Optimizing ordered
IN
queries -
The
InOperatorOptimization
module -
Generalized
IN
optimization technique
Efficient IN
operator queries
This document describes a technique for building efficient ordered database queries with the IN
SQL operator and the usage of a GitLab utility module to help apply the technique.
Motivation
In GitLab, many domain objects like Issue
live under nested hierarchies of projects and groups.
To fetch nested database records for domain objects at the group-level,
we often perform queries with the IN
SQL operator.
We are usually interested in ordering the records by some attributes
and limiting the number of records using ORDER BY
and LIMIT
clauses for performance.
Pagination may be used to fetch subsequent records.
Example tasks requiring querying nested domain objects from the group level:
- Show first 20 issues by creation date or due date from the group
gitlab-org
. - Show first 20 merge requests by merged at date from the group
gitlab-com
.
Unfortunately, ordered group-level queries typically perform badly as their executions require heavy I/O, memory, and computations. Let’s do an in-depth examination of executing one such query.
Performance problems with IN
queries
Consider the task of fetching the twenty oldest created issues
from the group gitlab-org
with the following query:
SELECT "issues".*
FROM "issues"
WHERE "issues"."project_id" IN
(SELECT "projects"."id"
FROM "projects"
WHERE "projects"."namespace_id" IN
(SELECT traversal_ids[array_length(traversal_ids, 1)] AS id
FROM "namespaces"
WHERE (traversal_ids @> ('{9970}'))))
ORDER BY "issues"."created_at" ASC,
"issues"."id" ASC
LIMIT 20
created_at
column is not enough,
we must add the id
column as a
tie-breaker.The execution of the query can be largely broken down into three steps:
- The database accesses both
namespaces
andprojects
tables to find all projects from all groups in the group hierarchy. - The database retrieves
issues
records for each project causing heavy disk I/O. Ideally, an appropriate index configuration should optimize this process. - The database sorts the
issues
rows in memory bycreated_at
and returnsLIMIT 20
rows to the end-user. For large groups, this final step requires both large memory and CPU resources.
Execution plan for this DB query:
Limit (cost=90170.07..90170.12 rows=20 width=1329) (actual time=967.597..967.607 rows=20 loops=1)
Buffers: shared hit=239127 read=3060
I/O Timings: read=336.879
-> Sort (cost=90170.07..90224.02 rows=21578 width=1329) (actual time=967.596..967.603 rows=20 loops=1)
Sort Key: issues.created_at, issues.id
Sort Method: top-N heapsort Memory: 74kB
Buffers: shared hit=239127 read=3060
I/O Timings: read=336.879
-> Nested Loop (cost=1305.66..89595.89 rows=21578 width=1329) (actual time=4.709..797.659 rows=241534 loops=1)
Buffers: shared hit=239121 read=3060
I/O Timings: read=336.879
-> HashAggregate (cost=1305.10..1360.22 rows=5512 width=4) (actual time=4.657..5.370 rows=1528 loops=1)
Group Key: projects.id
Buffers: shared hit=2597
-> Nested Loop (cost=576.76..1291.32 rows=5512 width=4) (actual time=2.427..4.244 rows=1528 loops=1)
Buffers: shared hit=2597
-> HashAggregate (cost=576.32..579.06 rows=274 width=25) (actual time=2.406..2.447 rows=265 loops=1)
Group Key: namespaces.traversal_ids[array_length(namespaces.traversal_ids, 1)]
Buffers: shared hit=334
-> Bitmap Heap Scan on namespaces (cost=141.62..575.63 rows=274 width=25) (actual time=1.933..2.330 rows=265 loops=1)
Recheck Cond: (traversal_ids @> '{9970}'::integer[])
Heap Blocks: exact=243
Buffers: shared hit=334
-> Bitmap Index Scan on index_namespaces_on_traversal_ids (cost=0.00..141.55 rows=274 width=0) (actual time=1.897..1.898 rows=265 loops=1)
Index Cond: (traversal_ids @> '{9970}'::integer[])
Buffers: shared hit=91
-> Index Only Scan using index_projects_on_namespace_id_and_id on projects (cost=0.44..2.40 rows=20 width=8) (actual time=0.004..0.006 rows=6 loops=265)
Index Cond: (namespace_id = (namespaces.traversal_ids)[array_length(namespaces.traversal_ids, 1)])
Heap Fetches: 51
Buffers: shared hit=2263
-> Index Scan using index_issues_on_project_id_and_iid on issues (cost=0.57..10.57 rows=544 width=1329) (actual time=0.114..0.484 rows=158 loops=1528)
Index Cond: (project_id = projects.id)
Buffers: shared hit=236524 read=3060
I/O Timings: read=336.879
Planning Time: 7.750 ms
Execution Time: 967.973 ms
(36 rows)
The performance of the query depends on the number of rows in the database. On average, we can say the following:
- Number of groups in the group-hierarchy: less than 1 000
- Number of projects: less than 5 000
- Number of issues: less than 100 000
From the list, it’s apparent that the number of issues
records has
the largest impact on the performance.
As per typical usage, we can say that the number of issue records grows
at a faster rate than the namespaces
and the projects
records.
This problem affects most of our group-level features where records are listed in a specific order, such as group-level issues, merge requests pages, and APIs. For very large groups the database queries can easily time out, causing HTTP 500 errors.
Optimizing ordered IN
queries
In the talk “How to teach an elephant to dance rock and roll”,
Maxim Boguk demonstrated a technique to optimize a special class of ordered IN
queries,
such as our ordered group-level queries.
A typical ordered IN
query may look like this:
SELECT t.* FROM t
WHERE t.fkey IN (value_set)
ORDER BY t.pkey
LIMIT N;
Here’s the key insight used in the technique: we need at most |value_set| + N
record lookups,
rather than retrieving all records satisfying the condition t.fkey IN value_set
(|value_set|
is the number of values in value_set
).
We adopted and generalized the technique for use in GitLab by implementing utilities in the
Gitlab::Pagination::Keyset::InOperatorOptimization
class to facilitate building efficient IN
queries.
Requirements
The technique is not a drop-in replacement for the existing group-level queries using IN
operator.
The technique can only optimize IN
queries that satisfy the following requirements:
-
LIMIT
is present, which usually means that the query is paginated (offset or keyset pagination). - The column used with the
IN
query and the columns in theORDER BY
clause are covered with a database index. The columns in the index must be in the following order:column_for_the_in_query
,order by column 1
, andorder by column 2
. - The columns in the
ORDER BY
clause are distinct (the combination of the columns uniquely identifies one particular row in the table).
COUNT(*)
queries.The InOperatorOptimization
module
Introduced in GitLab 14.3.
The Gitlab::Pagination::Keyset::InOperatorOptimization
module implements utilities for applying a generalized version of
the efficient IN
query technique described in the previous section.
To build optimized, ordered IN
queries that meet the requirements,
use the utility class QueryBuilder
from the module.
Gitlab::Pagination::Keyset::InOperatorOptimization
.Basic usage of QueryBuilder
To illustrate a basic usage, we build a query that
fetches 20 issues with the oldest created_at
from the group gitlab-org
.
The following ActiveRecord query would produce a query similar to the unoptimized query that we examined earlier:
scope = Issue
.where(project_id: Group.find(9970).all_projects.select(:id)) # `gitlab-org` group and its subgroups
.order(:created_at, :id)
.limit(20)
Instead, use the query builder InOperatorOptimization::QueryBuilder
to produce an optimized
version:
scope = Issue.order(:created_at, :id)
array_scope = Group.find(9970).all_projects.select(:id)
array_mapping_scope = -> (id_expression) { Issue.where(Issue.arel_table[:project_id].eq(id_expression)) }
finder_query = -> (created_at_expression, id_expression) { Issue.where(Issue.arel_table[:id].eq(id_expression)) }
Gitlab::Pagination::Keyset::InOperatorOptimization::QueryBuilder.new(
scope: scope,
array_scope: array_scope,
array_mapping_scope: array_mapping_scope,
finder_query: finder_query
).execute.limit(20)
-
scope
represents the originalActiveRecord::Relation
object without theIN
query. The relation should define an order which must be supported by the keyset pagination library. -
array_scope
contains theActiveRecord::Relation
object, which represents the originalIN (subquery)
. The select values must contain the columns by which the subquery is “connected” to the main query: theid
of the project record. -
array_mapping_scope
defines a lambda returning anActiveRecord::Relation
object. The lambda matches (=
) single select values from thearray_scope
. The lambda yields as many arguments as the select values defined in thearray_scope
. The arguments are Arel SQL expressions. -
finder_query
loads the actual record row from the database. It must also be a lambda, where the order by column expressions is available for locating the record. In this example, the yielded values arecreated_at
andid
SQL expressions. Finding a record is very fast via the primary key, so we don’t use thecreated_at
value. Providing thefinder_query
lambda is optional. If it’s not given, theIN
operator optimization only makes theORDER BY
columns available to the end-user and not the full database row.
The following database index on the issues
table must be present
to make the query execute efficiently:
"idx_issues_on_project_id_and_created_at_and_id" btree (project_id, created_at, id)
The SQL query:
SELECT "issues".*
FROM
(WITH RECURSIVE "array_cte" AS MATERIALIZED
(SELECT "projects"."id"
FROM "projects"
WHERE "projects"."namespace_id" IN
(SELECT traversal_ids[array_length(traversal_ids, 1)] AS id
FROM "namespaces"
WHERE (traversal_ids @> ('{9970}')))),
"recursive_keyset_cte" AS ( -- initializer row start
(SELECT NULL::issues AS records,
array_cte_id_array,
issues_created_at_array,
issues_id_array,
0::bigint AS COUNT
FROM
(SELECT ARRAY_AGG("array_cte"."id") AS array_cte_id_array,
ARRAY_AGG("issues"."created_at") AS issues_created_at_array,
ARRAY_AGG("issues"."id") AS issues_id_array
FROM
(SELECT "array_cte"."id"
FROM array_cte) array_cte
LEFT JOIN LATERAL
(SELECT "issues"."created_at",
"issues"."id"
FROM "issues"
WHERE "issues"."project_id" = "array_cte"."id"
ORDER BY "issues"."created_at" ASC, "issues"."id" ASC
LIMIT 1) issues ON TRUE
WHERE "issues"."created_at" IS NOT NULL
AND "issues"."id" IS NOT NULL) array_scope_lateral_query
LIMIT 1)
-- initializer row finished
UNION ALL
(SELECT
-- result row start
(SELECT issues -- record finder query as the first column
FROM "issues"
WHERE "issues"."id" = recursive_keyset_cte.issues_id_array[position]
LIMIT 1),
array_cte_id_array,
recursive_keyset_cte.issues_created_at_array[:position_query.position-1]||next_cursor_values.created_at||recursive_keyset_cte.issues_created_at_array[position_query.position+1:],
recursive_keyset_cte.issues_id_array[:position_query.position-1]||next_cursor_values.id||recursive_keyset_cte.issues_id_array[position_query.position+1:],
recursive_keyset_cte.count + 1
-- result row finished
FROM recursive_keyset_cte,
LATERAL
-- finding the cursor values of the next record start
(SELECT created_at,
id,
position
FROM UNNEST(issues_created_at_array, issues_id_array) WITH
ORDINALITY AS u(created_at, id, position)
WHERE created_at IS NOT NULL
AND id IS NOT NULL
ORDER BY "created_at" ASC, "id" ASC
LIMIT 1) AS position_query,
-- finding the cursor values of the next record end
-- finding the next cursor values (next_cursor_values_query) start
LATERAL
(SELECT "record"."created_at",
"record"."id"
FROM (
VALUES (NULL,
NULL)) AS nulls
LEFT JOIN
(SELECT "issues"."created_at",
"issues"."id"
FROM (
(SELECT "issues"."created_at",
"issues"."id"
FROM "issues"
WHERE "issues"."project_id" = recursive_keyset_cte.array_cte_id_array[position]
AND recursive_keyset_cte.issues_created_at_array[position] IS NULL
AND "issues"."created_at" IS NULL
AND "issues"."id" > recursive_keyset_cte.issues_id_array[position]
ORDER BY "issues"."created_at" ASC, "issues"."id" ASC)
UNION ALL
(SELECT "issues"."created_at",
"issues"."id"
FROM "issues"
WHERE "issues"."project_id" = recursive_keyset_cte.array_cte_id_array[position]
AND recursive_keyset_cte.issues_created_at_array[position] IS NOT NULL
AND "issues"."created_at" IS NULL
ORDER BY "issues"."created_at" ASC, "issues"."id" ASC)
UNION ALL
(SELECT "issues"."created_at",
"issues"."id"
FROM "issues"
WHERE "issues"."project_id" = recursive_keyset_cte.array_cte_id_array[position]
AND recursive_keyset_cte.issues_created_at_array[position] IS NOT NULL
AND "issues"."created_at" > recursive_keyset_cte.issues_created_at_array[position]
ORDER BY "issues"."created_at" ASC, "issues"."id" ASC)
UNION ALL
(SELECT "issues"."created_at",
"issues"."id"
FROM "issues"
WHERE "issues"."project_id" = recursive_keyset_cte.array_cte_id_array[position]
AND recursive_keyset_cte.issues_created_at_array[position] IS NOT NULL
AND "issues"."created_at" = recursive_keyset_cte.issues_created_at_array[position]
AND "issues"."id" > recursive_keyset_cte.issues_id_array[position]
ORDER BY "issues"."created_at" ASC, "issues"."id" ASC)) issues
ORDER BY "issues"."created_at" ASC, "issues"."id" ASC
LIMIT 1) record ON TRUE
LIMIT 1) AS next_cursor_values))
-- finding the next cursor values (next_cursor_values_query) END
SELECT (records).*
FROM "recursive_keyset_cte" AS "issues"
WHERE (COUNT <> 0)) issues -- filtering out the initializer row
LIMIT 20
Using the IN
query optimization
Adding more filters
In this example, let’s add an extra filter by milestone_id
.
Be careful when adding extra filters to the query. If the column is not covered by the same index,
then the query might perform worse than the non-optimized query. The milestone_id
column in the
issues
table is currently covered by a different index:
"index_issues_on_milestone_id" btree (milestone_id)
Adding the milestone_id = X
filter to the scope
argument or to the optimized scope causes bad performance.
Example (bad):
Gitlab::Pagination::Keyset::InOperatorOptimization::QueryBuilder.new(
scope: scope,
array_scope: array_scope,
array_mapping_scope: array_mapping_scope,
finder_query: finder_query
).execute
.where(milestone_id: 5)
.limit(20)
To address this concern, we could define another index:
"idx_issues_on_project_id_and_milestone_id_and_created_at_and_id" btree (project_id, milestone_id, created_at, id)
Adding more indexes to the issues
table could significantly affect the performance of
the UPDATE
queries. In this case, it’s better to rely on the original query. It means that if we
want to use the optimization for the unfiltered page we need to add extra logic in the application code:
if optimization_possible? # no extra params or params covered with the same index as the ORDER BY clause
run_optimized_query
else
run_normal_in_query
end
Multiple IN
queries
Let’s assume that we want to extend the group-level queries to include only incident and test case issue types.
The original ActiveRecord query would look like this:
scope = Issue
.where(project_id: Group.find(9970).all_projects.select(:id)) # `gitlab-org` group and its subgroups
.where(issue_type: [:incident, :test_case]) # 1, 2
.order(:created_at, :id)
.limit(20)
To construct the array scope, we need to take the Cartesian product of the project_id IN
and
the issue_type IN
queries. issue_type
is an ActiveRecord enum, so we need to
construct the following table:
project_id | issue_type_value |
---|---|
2 | 1 |
2 | 2 |
5 | 1 |
5 | 2 |
10 | 1 |
10 | 2 |
9 | 1 |
9 | 2 |
For the issue_types
query we can construct a value list without querying a table:
value_list = Arel::Nodes::ValuesList.new([[WorkItems::Type.base_types[:incident]],[WorkItems::Type.base_types[:test_case]]])
issue_type_values = Arel::Nodes::Grouping.new(value_list).as('issue_type_values (value)').to_sql
array_scope = Group
.find(9970)
.all_projects
.from("#{Project.table_name}, #{issue_type_values}")
.select(:id, :value)
Building the array_mapping_scope
query requires two arguments: id
and issue_type_value
:
array_mapping_scope = -> (id_expression, issue_type_value_expression) { Issue.where(Issue.arel_table[:project_id].eq(id_expression)).where(Issue.arel_table[:issue_type].eq(issue_type_value_expression)) }
The scope
and the finder
queries don’t change:
scope = Issue.order(:created_at, :id)
finder_query = -> (created_at_expression, id_expression) { Issue.where(Issue.arel_table[:id].eq(id_expression)) }
Gitlab::Pagination::Keyset::InOperatorOptimization::QueryBuilder.new(
scope: scope,
array_scope: array_scope,
array_mapping_scope: array_mapping_scope,
finder_query: finder_query
).execute.limit(20)
The SQL query:
SELECT "issues".*
FROM
(WITH RECURSIVE "array_cte" AS MATERIALIZED
(SELECT "projects"."id", "value"
FROM projects, (
VALUES (1), (2)) AS issue_type_values (value)
WHERE "projects"."namespace_id" IN
(WITH RECURSIVE "base_and_descendants" AS (
(SELECT "namespaces".*
FROM "namespaces"
WHERE "namespaces"."type" = 'Group'
AND "namespaces"."id" = 9970)
UNION
(SELECT "namespaces".*
FROM "namespaces", "base_and_descendants"
WHERE "namespaces"."type" = 'Group'
AND "namespaces"."parent_id" = "base_and_descendants"."id")) SELECT "id"
FROM "base_and_descendants" AS "namespaces")),
"recursive_keyset_cte" AS (
(SELECT NULL::issues AS records,
array_cte_id_array,
array_cte_value_array,
issues_created_at_array,
issues_id_array,
0::bigint AS COUNT
FROM
(SELECT ARRAY_AGG("array_cte"."id") AS array_cte_id_array,
ARRAY_AGG("array_cte"."value") AS array_cte_value_array,
ARRAY_AGG("issues"."created_at") AS issues_created_at_array,
ARRAY_AGG("issues"."id") AS issues_id_array
FROM
(SELECT "array_cte"."id",
"array_cte"."value"
FROM array_cte) array_cte
LEFT JOIN LATERAL
(SELECT "issues"."created_at",
"issues"."id"
FROM "issues"
WHERE "issues"."project_id" = "array_cte"."id"
AND "issues"."issue_type" = "array_cte"."value"
ORDER BY "issues"."created_at" ASC, "issues"."id" ASC
LIMIT 1) issues ON TRUE
WHERE "issues"."created_at" IS NOT NULL
AND "issues"."id" IS NOT NULL) array_scope_lateral_query
LIMIT 1)
UNION ALL
(SELECT
(SELECT issues
FROM "issues"
WHERE "issues"."id" = recursive_keyset_cte.issues_id_array[POSITION]
LIMIT 1), array_cte_id_array,
array_cte_value_array,
recursive_keyset_cte.issues_created_at_array[:position_query.position-1]||next_cursor_values.created_at||recursive_keyset_cte.issues_created_at_array[position_query.position+1:], recursive_keyset_cte.issues_id_array[:position_query.position-1]||next_cursor_values.id||recursive_keyset_cte.issues_id_array[position_query.position+1:], recursive_keyset_cte.count + 1
FROM recursive_keyset_cte,
LATERAL
(SELECT created_at,
id,
POSITION
FROM UNNEST(issues_created_at_array, issues_id_array) WITH
ORDINALITY AS u(created_at, id, POSITION)
WHERE created_at IS NOT NULL
AND id IS NOT NULL
ORDER BY "created_at" ASC, "id" ASC
LIMIT 1) AS position_query,
LATERAL
(SELECT "record"."created_at",
"record"."id"
FROM (
VALUES (NULL,
NULL)) AS nulls
LEFT JOIN
(SELECT "issues"."created_at",
"issues"."id"
FROM (
(SELECT "issues"."created_at",
"issues"."id"
FROM "issues"
WHERE "issues"."project_id" = recursive_keyset_cte.array_cte_id_array[POSITION]
AND "issues"."issue_type" = recursive_keyset_cte.array_cte_value_array[POSITION]
AND recursive_keyset_cte.issues_created_at_array[POSITION] IS NULL
AND "issues"."created_at" IS NULL
AND "issues"."id" > recursive_keyset_cte.issues_id_array[POSITION]
ORDER BY "issues"."created_at" ASC, "issues"."id" ASC)
UNION ALL
(SELECT "issues"."created_at",
"issues"."id"
FROM "issues"
WHERE "issues"."project_id" = recursive_keyset_cte.array_cte_id_array[POSITION]
AND "issues"."issue_type" = recursive_keyset_cte.array_cte_value_array[POSITION]
AND recursive_keyset_cte.issues_created_at_array[POSITION] IS NOT NULL
AND "issues"."created_at" IS NULL
ORDER BY "issues"."created_at" ASC, "issues"."id" ASC)
UNION ALL
(SELECT "issues"."created_at",
"issues"."id"
FROM "issues"
WHERE "issues"."project_id" = recursive_keyset_cte.array_cte_id_array[POSITION]
AND "issues"."issue_type" = recursive_keyset_cte.array_cte_value_array[POSITION]
AND recursive_keyset_cte.issues_created_at_array[POSITION] IS NOT NULL
AND "issues"."created_at" > recursive_keyset_cte.issues_created_at_array[POSITION]
ORDER BY "issues"."created_at" ASC, "issues"."id" ASC)
UNION ALL
(SELECT "issues"."created_at",
"issues"."id"
FROM "issues"
WHERE "issues"."project_id" = recursive_keyset_cte.array_cte_id_array[POSITION]
AND "issues"."issue_type" = recursive_keyset_cte.array_cte_value_array[POSITION]
AND recursive_keyset_cte.issues_created_at_array[POSITION] IS NOT NULL
AND "issues"."created_at" = recursive_keyset_cte.issues_created_at_array[POSITION]
AND "issues"."id" > recursive_keyset_cte.issues_id_array[POSITION]
ORDER BY "issues"."created_at" ASC, "issues"."id" ASC)) issues
ORDER BY "issues"."created_at" ASC, "issues"."id" ASC
LIMIT 1) record ON TRUE
LIMIT 1) AS next_cursor_values)) SELECT (records).*
FROM "recursive_keyset_cte" AS "issues"
WHERE (COUNT <> 0)) issues
LIMIT 20
project_id
, issue_type
, created_at
, and id
.Using calculated ORDER BY
expression
The following example orders epic records by the duration between the creation time and closed time. It is calculated with the following formula:
SELECT EXTRACT('epoch' FROM epics.closed_at - epics.created_at) FROM epics
The query above returns the duration in seconds (double precision
) between the two timestamp
columns in seconds. To order the records by this expression, you must reference it
in the ORDER BY
clause:
SELECT EXTRACT('epoch' FROM epics.closed_at - epics.created_at)
FROM epics
ORDER BY EXTRACT('epoch' FROM epics.closed_at - epics.created_at) DESC
To make this ordering efficient on the group-level with the in-operator optimization, use a
custom ORDER BY
configuration. Since the duration is not a distinct value (no unique index
present), you must add a tie-breaker column (id
).
The following example shows the final ORDER BY
clause:
ORDER BY extract('epoch' FROM epics.closed_at - epics.created_at) DESC, epics.id DESC
Snippet for loading records ordered by the calculated duration:
arel_table = Epic.arel_table
order = Gitlab::Pagination::Keyset::Order.build([
Gitlab::Pagination::Keyset::ColumnOrderDefinition.new(
attribute_name: 'duration_in_seconds',
order_expression: Arel.sql('EXTRACT(EPOCH FROM epics.closed_at - epics.created_at)').desc,
distinct: false,
sql_type: 'double precision' # important for calculated SQL expressions
),
Gitlab::Pagination::Keyset::ColumnOrderDefinition.new(
attribute_name: 'id',
order_expression: arel_table[:id].desc
)
])
records = Gitlab::Pagination::Keyset::InOperatorOptimization::QueryBuilder.new(
scope: Epic.where.not(closed_at: nil).reorder(order), # filter out NULL values
array_scope: Group.find(9970).self_and_descendants.select(:id),
array_mapping_scope: -> (id_expression) { Epic.where(Epic.arel_table[:group_id].eq(id_expression)) }
).execute.limit(20)
puts records.pluck(:duration_in_seconds, :id) # other columns are not available
Building the query requires quite a bit of configuration. For the order configuration you can find more information within the complex order configuration section for keyset paginated database queries.
The query requires a specialized database index:
CREATE INDEX index_epics_on_duration ON epics USING btree (group_id, EXTRACT(EPOCH FROM epics.closed_at - epics.created_at) DESC, id DESC) WHERE (closed_at IS NOT NULL);
Notice that the finder_query
parameter is not used. The query only returns the ORDER BY
columns
which are the duration_in_seconds
(calculated column) and the id
columns. This is a limitation
of the feature, defining the finder_query
with calculated ORDER BY
expressions is not supported.
To get the complete database records, an extra query can be invoked by the returned id
column:
records_by_id = records.index_by(&:id)
complete_records = Epic.where(id: records_by_id.keys).index_by(&:id)
# Printing the complete records according to the `ORDER BY` clause
records_by_id.each do |id, _|
puts complete_records[id].attributes
end
Ordering by JOIN
columns
Ordering records by mixed columns where one or more columns are coming from JOIN
tables
works with limitations. It requires extra configuration via Common Table Expression (CTE). The trick is to use a
non-materialized CTE to act as a “fake” table which exposes all required columns.
IN
query. Always
check the query plan.Example: order issues by projects.name, issues.id
within the group hierarchy
The first step is to create a CTE, where all required columns are collected in the SELECT
clause.
cte_query = Issue
.select('issues.id AS id', 'issues.project_id AS project_id', 'projects.name AS projects_name')
.joins(:project)
cte = Gitlab::SQL::CTE.new(:issue_with_projects, cte_query, materialized: false)
Custom order object configuration:
order = Gitlab::Pagination::Keyset::Order.build([
Gitlab::Pagination::Keyset::ColumnOrderDefinition.new(
attribute_name: 'projects_name',
order_expression: Issue.arel_table[:projects_name].asc,
sql_type: 'character varying',
nullable: :nulls_last,
distinct: false
),
Gitlab::Pagination::Keyset::ColumnOrderDefinition.new(
attribute_name: :id,
order_expression: Issue.arel_table[:id].asc
)
])
Generate the query:
scope = cte.apply_to(Issue.where({}).reorder(order))
opts = {
scope: scope,
array_scope: Project.where(namespace_id: top_level_group.self_and_descendants.select(:id)).select(:id),
array_mapping_scope: -> (id_expression) { Issue.where(Issue.arel_table[:project_id].eq(id_expression)) }
}
records = Gitlab::Pagination::Keyset::InOperatorOptimization::QueryBuilder
.new(**opts)
.execute
.limit(20)
Batch iteration
Batch iteration over the records is possible via the keyset Iterator
class.
scope = Issue.order(:created_at, :id)
array_scope = Group.find(9970).all_projects.select(:id)
array_mapping_scope = -> (id_expression) { Issue.where(Issue.arel_table[:project_id].eq(id_expression)) }
finder_query = -> (created_at_expression, id_expression) { Issue.where(Issue.arel_table[:id].eq(id_expression)) }
opts = {
in_operator_optimization_options: {
array_scope: array_scope,
array_mapping_scope: array_mapping_scope,
finder_query: finder_query
}
}
Gitlab::Pagination::Keyset::Iterator.new(scope: scope, **opts).each_batch(of: 100) do |records|
puts records.select(:id).map { |r| [r.id] }
end
UPDATE
or DELETE
. The
id
column is included in the ORDER BY
columns (created_at
and id
) and is already
loaded. In this case, you can omit the finder_query
parameter.Example for loading the ORDER BY
columns only:
scope = Issue.order(:created_at, :id)
array_scope = Group.find(9970).all_projects.select(:id)
array_mapping_scope = -> (id_expression) { Issue.where(Issue.arel_table[:project_id].eq(id_expression)) }
opts = {
in_operator_optimization_options: {
array_scope: array_scope,
array_mapping_scope: array_mapping_scope
}
}
Gitlab::Pagination::Keyset::Iterator.new(scope: scope, **opts).each_batch(of: 100) do |records|
puts records.select(:id).map { |r| [r.id] } # only id and created_at are available
end
Keyset pagination
The optimization works out of the box with GraphQL and the keyset_paginate
helper method.
Read more about keyset pagination.
array_scope = Group.find(9970).all_projects.select(:id)
array_mapping_scope = -> (id_expression) { Issue.where(Issue.arel_table[:project_id].eq(id_expression)) }
finder_query = -> (created_at_expression, id_expression) { Issue.where(Issue.arel_table[:id].eq(id_expression)) }
opts = {
in_operator_optimization_options: {
array_scope: array_scope,
array_mapping_scope: array_mapping_scope,
finder_query: finder_query
}
}
issues = Issue
.order(:created_at, :id)
.keyset_paginate(per_page: 20, keyset_order_options: opts)
.records
Offset pagination with Kaminari
The ActiveRecord
scope produced by the InOperatorOptimization
class can be used in
offset-paginated
queries.
Gitlab::Pagination::Keyset::InOperatorOptimization::QueryBuilder
.new(...)
.execute
.page(1)
.per(20)
.without_count
Generalized IN
optimization technique
Let’s dive into how QueryBuilder
builds the optimized query
to fetch the twenty oldest created issues from the group gitlab-org
using the generalized IN
optimization technique.
Array CTE
As the first step, we use a Common Table Expression (CTE) for collecting the projects.id
values.
This is done by wrapping the incoming array_scope
ActiveRecord relation parameter with a CTE.
WITH array_cte AS MATERIALIZED (
SELECT "projects"."id"
FROM "projects"
WHERE "projects"."namespace_id" IN
(SELECT traversal_ids[array_length(traversal_ids, 1)] AS id
FROM "namespaces"
WHERE (traversal_ids @> ('{9970}')))
)
This query produces the following result set with only one column (projects.id
):
ID |
---|
9 |
2 |
5 |
10 |
Array mapping
For each project (that is, each record storing a project ID in array_cte
),
we fetch the cursor value identifying the first issue respecting the ORDER BY
clause.
As an example, let’s pick the first record ID=9
from array_cte
.
The following query should fetch the cursor value (created_at, id)
identifying
the first issue record respecting the ORDER BY
clause for the project with ID=9
:
SELECT "issues"."created_at", "issues"."id"
FROM "issues"."project_id"=9
ORDER BY "issues"."created_at" ASC, "issues"."id" ASC
LIMIT 1;
We use LATERAL JOIN
to loop over the records in the array_cte
and find the
cursor value for each project. The query would be built using the array_mapping_scope
lambda
function.
SELECT ARRAY_AGG("array_cte"."id") AS array_cte_id_array,
ARRAY_AGG("issues"."created_at") AS issues_created_at_array,
ARRAY_AGG("issues"."id") AS issues_id_array
FROM (
SELECT "array_cte"."id" FROM array_cte
) array_cte
LEFT JOIN LATERAL
(
SELECT "issues"."created_at", "issues"."id"
FROM "issues"
WHERE "issues"."project_id" = "array_cte"."id"
ORDER BY "issues"."created_at" ASC, "issues"."id" ASC
LIMIT 1
) issues ON TRUE
Since we have an index on project_id
, created_at
, and id
,
index-only scans should quickly locate all the cursor values.
This is how the query could be translated to Ruby:
created_at_values = []
id_values = []
project_ids.map do |project_id|
created_at, id = Issue.select(:created_at, :id).where(project_id: project_id).order(:created_at, :id).limit(1).first # N+1 but it's fast
created_at_values << created_at
id_values << id
end
This is what the result set would look like:
project_ids | created_at_values | id_values |
---|---|---|
2 | 2020-01-10 | 5 |
5 | 2020-01-05 | 4 |
10 | 2020-01-15 | 7 |
9 | 2020-01-05 | 3 |
The table shows the cursor values (created_at, id
) of the first record for each project
respecting the ORDER BY
clause.
At this point, we have the initial data. To start collecting the actual records from the database,
we use a recursive CTE query where each recursion locates one row until
the LIMIT
is reached or no more data can be found.
Here’s an outline of the steps we take in the recursive CTE query (expressing the steps in SQL is non-trivial but is explained next):
- Sort the initial
resultset
according to theORDER BY
clause. - Pick the top cursor to fetch the record, this is our first record. In the example,
this cursor would be (
2020-01-05
,3
) forproject_id=9
. - We can use (
2020-01-05
,3
) to fetch the next issue respecting theORDER BY
clauseproject_id=9
filter. This produces an updatedresultset
.
project_ids | created_at_values | id_values |
---|---|---|
2 | 2020-01-10 | 5 |
5 | 2020-01-05 | 4 |
10 | 2020-01-15 | 7 |
9 | 2020-01-06 | 6 |
- Repeat 1 to 3 with the updated
resultset
until we have fetchedN=20
records.
Initializing the recursive CTE query
For the initial recursive query, we need to produce exactly one row, we call this the
initializer query (initializer_query
).
Use ARRAY_AGG
function to compact the initial result set into a single row
and use the row as the initial value for the recursive CTE query:
Example initializer row:
records | project_ids | created_at_values | id_values | Count | Position |
---|---|---|---|---|---|
NULL::issues | [9, 2, 5, 10] | [...] | [...] | 0 | NULL |
- The
records
column contains our sorted database records, and the initializer query sets the first value toNULL
, which is filtered out later. - The
count
column tracks the number of records found. We use this column to filter out the initializer row from the result set.
Recursive portion of the CTE query
The result row is produced with the following steps:
Order the keyset arrays
Order the keyset arrays according to the original ORDER BY
clause with LIMIT 1
using the
UNNEST [] WITH ORDINALITY
table function. The function locates the “lowest” keyset cursor
values and gives us the array position. These cursor values are used to locate the record.
project_ids | created_at_values | id_values |
---|---|---|
2 | 2020-01-10 | 5 |
5 | 2020-01-05 | 4 |
10 | 2020-01-15 | 7 |
9 | 2020-01-05 | 3 |
The first row is the 4th one (position = 4
), because it has the lowest created_at
and
id
values. The UNNEST
function also exposes the position using an extra column (note:
PostgreSQL uses 1-based index).
Demonstration of the UNNEST [] WITH ORDINALITY
table function:
SELECT position FROM unnest('{2020-01-10, 2020-01-05, 2020-01-15, 2020-01-05}'::timestamp[], '{5, 4, 7, 3}'::int[])
WITH ORDINALITY AS t(created_at, id, position) ORDER BY created_at ASC, id ASC LIMIT 1;
Result:
position
----------
4
(1 row)
Find the next cursor
Now, let’s find the next cursor values (next_cursor_values_query
) for the project with id = 9
.
To do that, we build a keyset pagination SQL query. Find the next row after
created_at = 2020-01-05
and id = 3
. Because we order by two database columns, there can be two
cases:
- There are rows with
created_at = 2020-01-05
andid > 3
. - There are rows with
created_at > 2020-01-05
.
Generating this query is done by the generic keyset pagination library. After the query is done, we have a temporary table with the next cursor values:
created_at | ID |
---|---|
2020-01-06 | 6 |
Produce a new row
As the final step, we need to produce a new row by manipulating the initializer row
(data_collector_query
method). Two things happen here:
- Read the full row from the DB and return it in the
records
columns. (result_collector_columns
method) - Replace the cursor values at the current position with the results from the keyset query.
Reading the full row from the database is only one index scan by the primary key. We use the
ActiveRecord query passed as the finder_query
:
(SELECT "issues".* FROM issues WHERE id = id_values[position] LIMIT 1)
By adding parentheses, the result row can be put into the records
column.
Replacing the cursor values at position
can be done via standard PostgreSQL array operators:
-- created_at_values column value
created_at_values[:position-1]||next_cursor_values.created_at||created_at_values[position+1:]
-- id_values column value
id_values[:position-1]||next_cursor_values.id||id_values[position+1:]
The Ruby equivalent would be the following:
id_values[0..(position - 1)] + [next_cursor_values.id] + id_values[(position + 1)..-1]
After this, the recursion starts again by finding the next lowest cursor value.
Finalizing the query
For producing the final issues
rows, we wrap the query with another SELECT
statement:
SELECT "issues".*
FROM (
SELECT (records).* -- similar to ruby splat operator
FROM recursive_keyset_cte
WHERE recursive_keyset_cte.count <> 0 -- filter out the initializer row
) AS issues
Performance comparison
Assuming that we have the correct database index in place, we can compare the query performance by looking at the number of database rows accessed by the query.
- Number of groups: 100
- Number of projects: 500
- Number of issues (in the group hierarchy): 50 000
Standard IN
query:
Query | Entries read from index | Rows read from the table | Rows sorted in memory |
---|---|---|---|
group hierarchy subquery | 100 | 0 | 0 |
project lookup query | 500 | 0 | 0 |
issue lookup query | 50 000 | 20 | 50 000 |
Optimized IN
query:
Query | Entries read from index | Rows read from the table | Rows sorted in memory |
---|---|---|---|
group hierarchy subquery | 100 | 0 | 0 |
project lookup query | 500 | 0 | 0 |
issue lookup query | 519 | 20 | 10 000 |
The group and project queries are not using sorting, the necessary columns are read from database indexes. These values are accessed frequently so it’s very likely that most of the data is in the PostgreSQL’s buffer cache.
The optimized IN
query reads maximum 519 entries (cursor values) from the index:
- 500 index-only scans for populating the arrays for each project. The cursor values of the first record is here.
- Maximum 19 additional index-only scans for the consecutive records.
The optimized IN
query sorts the array (cursor values per project array) 20 times, which
means we sort 20 x 500 rows. However, this might be a less memory-intensive task than
sorting 10 000 rows at once.
Performance comparison for the gitlab-org
group:
Query | Number of 8K Buffers involved | Uncached execution time | Cached execution time |
---|---|---|---|
IN query | 240833 | 1.2s | 660ms |
Optimized IN query | 9783 | 450ms | 22ms |