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Elasticsearch knowledge (PREMIUM SELF)
This area is to maintain a compendium of useful information when working with Elasticsearch.
Information on how to enable Elasticsearch and perform the initial indexing is in the Elasticsearch integration documentation.
Deep Dive
In June 2019, Mario de la Ossa hosted a Deep Dive (GitLab team members only: https://gitlab.com/gitlab-org/create-stage/issues/1
) on the GitLab Elasticsearch integration to share his domain specific knowledge with anyone who may work in this part of the codebase in the future. You can find the recording on YouTube, and the slides on Google Slides and in PDF. Everything covered in this deep dive was accurate as of GitLab 12.0, and while specific details may have changed since then, it should still serve as a good introduction.
In August 2020, a second Deep Dive was hosted, focusing on GitLab-specific architecture for multi-indices support. The recording on YouTube and the slides are available. Everything covered in this deep dive was accurate as of GitLab 13.3.
Supported Versions
See Version Requirements.
Developers making significant changes to Elasticsearch queries should test their features against all our supported versions.
Setting up development environment
See the Elasticsearch GDK setup instructions
Helpful Rake tasks
gitlab:elastic:test:index_size
: Tells you how much space the current index is using, as well as how many documents are in the index.gitlab:elastic:test:index_size_change
: Outputs index size, reindexes, and outputs index size again. Useful when testing improvements to indexing size.
Additionally, if you need large repositories or multiple forks for testing, please consider following these instructions
How does it work?
The Elasticsearch integration depends on an external indexer. We ship an indexer written in Go. The user must trigger the initial indexing via a Rake task but, after this is done, GitLab itself will trigger reindexing when required via after_
callbacks on create, update, and destroy that are inherited from /ee/app/models/concerns/elastic/application_versioned_search.rb
.
After initial indexing is complete, create, update, and delete operations for all models except projects (see #207494) are tracked in a Redis ZSET
. A regular sidekiq-cron
ElasticIndexBulkCronWorker
processes this queue, updating many Elasticsearch documents at a time with the Bulk Request API.
Search queries are generated by the concerns found in ee/app/models/concerns/elastic
. These concerns are also in charge of access control, and have been a historic source of security bugs so please pay close attention to them!
Existing Analyzers/Tokenizers/Filters
These are all defined in ee/lib/elastic/latest/config.rb
Analyzers
path_analyzer
Used when indexing blobs' paths. Uses the path_tokenizer
and the lowercase
and asciifolding
filters.
Please see the path_tokenizer
explanation below for an example.
sha_analyzer
Used in blobs and commits. Uses the sha_tokenizer
and the lowercase
and asciifolding
filters.
Please see the sha_tokenizer
explanation later below for an example.
code_analyzer
Used when indexing a blob's filename and content. Uses the whitespace
tokenizer and the filters: code
, lowercase
, and asciifolding
The whitespace
tokenizer was selected in order to have more control over how tokens are split. For example the string Foo::bar(4)
needs to generate tokens like Foo
and bar(4)
in order to be properly searched.
Please see the code
filter for an explanation on how tokens are split.
NOTE: The Elasticsearch code_analyzer doesn't account for all code cases.
code_search_analyzer
Not directly used for indexing, but rather used to transform a search input. Uses the whitespace
tokenizer and the lowercase
and asciifolding
filters.
Tokenizers
sha_tokenizer
This is a custom tokenizer that uses the edgeNGram
tokenizer to allow SHAs to be searchable by any sub-set of it (minimum of 5 chars).
Example:
240c29dc7e
becomes:
240c2
240c29
240c29d
240c29dc
240c29dc7
240c29dc7e
path_tokenizer
This is a custom tokenizer that uses the path_hierarchy
tokenizer with reverse: true
in order to allow searches to find paths no matter how much or how little of the path is given as input.
Example:
'/some/path/application.js'
becomes:
'/some/path/application.js'
'some/path/application.js'
'path/application.js'
'application.js'
Filters
code
Uses a Pattern Capture token filter to split tokens into more easily searched versions of themselves.
Patterns:
"(\\p{Ll}+|\\p{Lu}\\p{Ll}+|\\p{Lu}+)"
: captures CamelCased and lowedCameCased strings as separate tokens"(\\d+)"
: extracts digits"(?=([\\p{Lu}]+[\\p{L}]+))"
: captures CamelCased strings recursively. Ex:ThisIsATest
=>[ThisIsATest, IsATest, ATest, Test]
'"((?:\\"|[^"]|\\")*)"'
: captures terms inside quotes, removing the quotes"'((?:\\'|[^']|\\')*)'"
: same as above, for single-quotes'\.([^.]+)(?=\.|\s|\Z)'
: separate terms with periods in-between'([\p{L}_.-]+)'
: some common chars in file names to keep the whole filename intact (for examplemy_file-ñame.txt
)'([\p{L}\d_]+)'
: letters, numbers and underscores are the most common tokens in programming. Always capture them greedily regardless of context.
Gotchas
- Searches can have their own analyzers. Remember to check when editing analyzers
Character
filters (as opposed to token filters) always replace the original character, so they're not a good choice as they can hinder exact searches
Zero downtime reindexing with multiple indices
NOTE: This is not applicable yet as multiple indices functionality is not fully implemented.
Currently GitLab can only handle a single version of setting. Any setting/schema changes would require reindexing everything from scratch. Since reindexing can take a long time, this can cause search functionality downtime.
To avoid downtime, GitLab is working to support multiple indices that can function at the same time. Whenever the schema changes, the admin will be able to create a new index and reindex to it, while searches continue to go to the older, stable index. Any data updates will be forwarded to both indices. Once the new index is ready, an admin can mark it active, which will direct all searches to it, and remove the old index.
This is also helpful for migrating to new servers, e.g. moving to/from AWS.
Currently we are on the process of migrating to this new design. Everything is hardwired to work with one single version for now.
Architecture
The traditional setup, provided by elasticsearch-rails
, is to communicate through its internal proxy classes. Developers would write model-specific logic in a module for the model to include in (e.g. SnippetsSearch
). The __elasticsearch__
methods would return a proxy object, e.g.:
Issue.__elasticsearch__
returns an instance ofElasticsearch::Model::Proxy::ClassMethodsProxy
Issue.first.__elasticsearch__
returns an instance ofElasticsearch::Model::Proxy::InstanceMethodsProxy
.
These proxy objects would talk to Elasticsearch server directly (see top half of the diagram).
In the planned new design, each model would have a pair of corresponding sub-classed proxy objects, in which model-specific logic is located. For example, Snippet
would have SnippetClassProxy
and SnippetInstanceProxy
(being subclass of Elasticsearch::Model::Proxy::ClassMethodsProxy
and Elasticsearch::Model::Proxy::InstanceMethodsProxy
, respectively).
__elasticsearch__
would represent another layer of proxy object, keeping track of multiple actual proxy objects. It would forward method calls to the appropriate index. For example:
model.__elasticsearch__.search
would be forwarded to the one stable index, since it is a read operation.model.__elasticsearch__.update_document
would be forwarded to all indices, to keep all indices up-to-date.
The global configurations per version are now in the Elastic::(Version)::Config
class. You can change mappings there.
Creating new version of schema
NOTE: This is not applicable yet as multiple indices functionality is not fully implemented.
Folders like ee/lib/elastic/v12p1
contain snapshots of search logic from different versions. To keep a continuous Git history, the latest version lives under ee/lib/elastic/latest
, but its classes are aliased under an actual version (e.g. ee/lib/elastic/v12p3
). When referencing these classes, never use the Latest
namespace directly, but use the actual version (e.g. V12p3
).
The version name basically follows the GitLab release version. If setting is changed in 12.3, we will create a new namespace called V12p3
(p stands for "point"). Raise an issue if there is a need to name a version differently.
If the current version is v12p1
, and we need to create a new version for v12p3
, the steps are as follows:
- Copy the entire folder of
v12p1
asv12p3
- Change the namespace for files under
v12p3
folder fromV12p1
toV12p3
(which are still aliased toLatest
) - Delete
v12p1
folder - Copy the entire folder of
latest
asv12p1
- Change the namespace for files under
v12p1
folder fromLatest
toV12p1
- Make changes to files under the
latest
folder as needed
Creating a new Global Search migration
This functionality was introduced by #234046.
NOTE: This only supported for indices created with GitLab 13.0 or greater.
Migrations are stored in the ee/elastic/migrate/
folder with YYYYMMDDHHMMSS_migration_name.rb
filename format, which is similar to Rails database migrations:
# frozen_string_literal: true
class MigrationName < Elastic::Migration
# Important: Any update to the Elastic index mappings should be replicated in Elastic::Latest::Config
def migrate
end
# Check if the migration has completed
# Return true if completed, otherwise return false
def completed?
end
end
Applied migrations are stored in gitlab-#{RAILS_ENV}-migrations
index. All migrations not executed
are applied by the Elastic::MigrationWorker
cron worker sequentially.
Any update to the Elastic index mappings should be replicated in Elastic::Latest::Config
.
Migrations can be built with a retry limit and have the ability to be failed and marked as halted. Any data or index cleanup needed to support migration retries should be handled within the migration.
Migration options supported by the Elastic::MigrationWorker
Elastic::MigrationWorker
supports the following migration options:
-
batched!
- Allow the migration to run in batches. If set, theElastic::MigrationWorker
will re-enqueue itself with a delay which is set using thethrottle_delay
option described below. The batching must be handled within themigrate
method, this setting controls the re-enqueuing only. -
throttle_delay
- Sets the wait time in between batch runs. This time should be set high enough to allow each migration batch enough time to finish. Additionally, the time should be less than 30 minutes since that is how often theElastic::MigrationWorker
cron worker runs. Default value is 5 minutes. -
pause_indexing!
- Pause indexing while the migration runs. This setting will record the indexing setting before the migration runs and set it back to that value when the migration is completed.
# frozen_string_literal: true
class BatchedMigrationName < Elastic::Migration
# Declares a migration should be run in batches
batched!
throttle_delay 10.minutes
# ...
end
Multi-version compatibility
These Elasticsearch migrations, like any other GitLab changes, need to support the case where multiple versions of the application are running at the same time.
Depending on the order of deployment, it's possible that the migration has started or finished and there's still a server running the application code from before the migration. We need to take this into consideration until we can ensure all Elasticsearch migrations start after the deployment has finished.
Reverting a migration
Because Elasticsearch does not support transactions, we always need to design our migrations to accommodate a situation where the application code is reverted after the migration has started or after it is finished.
For this reason we generally defer destructive actions (for example, deletions after some data is moved) to a later merge request after the migrations have completed successfully. To be safe, for self-managed customers we should also defer it to another release if there is risk of important data loss.
Best practices for Elasticsearch migrations
Follow these best practices for best results:
- When working in batches, keep the batch size under 9,000 documents
and
throttle_delay
over 3 minutes. The bulk indexer is set to run every 1 minute and process a batch of 10,000 documents. These limits allow the bulk indexer time to process records before another migration batch is attempted. - To ensure that document counts are up to date, it is recommended to refresh the index before checking if a migration is completed.
- Add logging statements to each migration when the migration starts, when a completion check occurs, and when the migration is completed. These logs are helpful when debugging issues with migrations.
- Pause indexing if you're using any Elasticsearch Reindex API operations.
- Consider adding a retry limit if there is potential for the migration to fail. This ensures that migrations can be halted if an issue occurs.
Performance Monitoring
Prometheus
GitLab exports Prometheus metrics relating to the number of requests and timing for all web/API requests and Sidekiq jobs, which can help diagnose performance trends and compare how Elasticsearch timing is impacting overall performance relative to the time spent doing other things.
Indexing queues
GitLab also exports Prometheus metrics for indexing queues, which can help diagnose performance bottlenecks and determine whether or not your GitLab instance or Elasticsearch server can keep up with the volume of updates.
Logs
All of the indexing happens in Sidekiq, so much of the relevant logs for the
Elasticsearch integration can be found in
sidekiq.log
. In particular, all
Sidekiq workers that make requests to Elasticsearch in any way will log the
number of requests and time taken querying/writing to Elasticsearch. This can
be useful to understand whether or not your cluster is keeping up with
indexing.
Searching Elasticsearch is done via ordinary web workers handling requests. Any
requests to load a page or make an API request, which then make requests to
Elasticsearch, will log the number of requests and the time taken to
production_json.log
. These
logs will also include the time spent on Database and Gitaly requests, which
may help to diagnose which part of the search is performing poorly.
There are additional logs specific to Elasticsearch that are sent to
elasticsearch.log
that may contain information to help diagnose performance issues.
Performance Bar
Elasticsearch requests will be displayed in the Performance Bar
, which can
be used both locally in development and on any deployed GitLab instance to
diagnose poor search performance. This will show the exact queries being made,
which is useful to diagnose why a search might be slow.
Correlation ID and X-Opaque-Id
Our correlation
ID
is forwarded by all requests from Rails to Elasticsearch as the
X-Opaque-Id
header which allows us to track any
tasks
in the cluster back the request in GitLab.
Troubleshooting
Getting flood stage disk watermark [95%] exceeded
You might get an error such as
[2018-10-31T15:54:19,762][WARN ][o.e.c.r.a.DiskThresholdMonitor] [pval5Ct]
flood stage disk watermark [95%] exceeded on
[pval5Ct7SieH90t5MykM5w][pval5Ct][/usr/local/var/lib/elasticsearch/nodes/0] free: 56.2gb[3%],
all indices on this node will be marked read-only
This is because you've exceeded the disk space threshold - it thinks you don't have enough disk space left, based on the default 95% threshold.
In addition, the read_only_allow_delete
setting will be set to true
. It will block indexing, forcemerge
, etc
curl "http://localhost:9200/gitlab-development/_settings?pretty"
Add this to your elasticsearch.yml
file:
# turn off the disk allocator
cluster.routing.allocation.disk.threshold_enabled: false
or
# set your own limits
cluster.routing.allocation.disk.threshold_enabled: true
cluster.routing.allocation.disk.watermark.flood_stage: 5gb # ES 6.x only
cluster.routing.allocation.disk.watermark.low: 15gb
cluster.routing.allocation.disk.watermark.high: 10gb
Restart Elasticsearch, and the read_only_allow_delete
will clear on its own.
from "Disk-based Shard Allocation | Elasticsearch Reference" 5.6 and 6.x
Disaster recovery/data loss/backups
The use of Elasticsearch in GitLab is only ever as a secondary data store. This means that all of the data stored in Elasticsearch can always be derived again from other data sources, specifically PostgreSQL and Gitaly. Therefore if the Elasticsearch data store is ever corrupted for whatever reason you can simply reindex everything from scratch.
If your Elasticsearch index is incredibly large it may be too time consuming or cause too much downtime to reindex from scratch. There aren't any built in mechanisms for automatically finding discrepancies and resyncing an Elasticsearch index if it gets out of sync but one tool that may be useful is looking at the logs for all the updates that occurred in a time range you believe may have been missed. This information is very low level and only useful for operators that are familiar with the GitLab codebase. It is documented here in case it is useful for others. The relevant logs that could theoretically be used to figure out what needs to be replayed are:
- All non-repository updates that were synced can be found in
elasticsearch.log
by searching fortrack_items
and these can be replayed by sending these items again through::Elastic::ProcessBookkeepingService.track!
- All repository updates that occurred can be found in
elasticsearch.log
by searching forindexing_commit_range
. Replaying these requires resetting theIndexStatus#last_commit/last_wiki_commit
to the oldestfrom_sha
in the logs and then triggering another index of the project usingElasticCommitIndexerWorker
- All project deletes that occurred can be found in
sidekiq.log
by searching forElasticDeleteProjectWorker
. These updates can be replayed by triggering anotherElasticDeleteProjectWorker
.
With the above methods and taking regular Elasticsearch snapshots we should be able to recover from different kinds of data loss issues in a relatively short period of time compared to indexing everything from scratch.