- Job artifacts using too much disk space
- Job artifact upload fails with error 500
-
Job artifact upload fails with
500 Internal Server Error (Missing file)
-
Job artifacts fail to upload with
FATAL: invalid argument
when using Windows mount - Usage quota shows incorrect artifact storage usage
- Artifact download flow diagrams
-
413 Request Entity Too Large
error
Job artifact troubleshooting for administrators
When administering job artifacts, you might encounter the following issues.
Job artifacts using too much disk space
Job artifacts can fill up your disk space quicker than expected. Some possible reasons are:
- Users have configured job artifacts expiration to be longer than necessary.
- The number of jobs run, and hence artifacts generated, is higher than expected.
- Job logs are larger than expected, and have accumulated over time.
- The file system might run out of inodes because empty directories are left behind by artifact housekeeping. The Rake task for orphaned artifact files removes these.
- Artifact files might be left on disk and not deleted by housekeeping. Run the Rake task for orphaned artifact files to remove these. This script should always find work to do, as it also removes empty directories (see above).
- Artifact housekeeping was changed significantly, and you might need to enable a feature flag to use the updated system.
- The keep latest artifacts from most recent success jobs feature is enabled.
In these and other cases, identify the projects most responsible for disk space usage, figure out what types of artifacts are using the most space, and in some cases, manually delete job artifacts to reclaim disk space.
Artifacts housekeeping
Artifacts housekeeping is the process that identifies which artifacts are expired and can be deleted.
Housekeeping disabled in GitLab 15.0 to 15.2
Artifact housekeeping was significantly improved in GitLab 15.0, introduced behind feature flags disabled by default. The flags were enabled by default in GitLab 15.3.
If artifacts housekeeping does not seem to be working in GitLab 15.0 to GitLab 15.2, you should check if the feature flags are enabled.
To check if the feature flags are enabled:
-
Start a Rails console.
-
Check if the feature flags are enabled.
Feature.enabled?(:ci_detect_wrongly_expired_artifacts) Feature.enabled?(:ci_update_unlocked_job_artifacts) Feature.enabled?(:ci_job_artifacts_backlog_work)
-
If any of the feature flags are disabled, enable them:
Feature.enable(:ci_detect_wrongly_expired_artifacts) Feature.enable(:ci_update_unlocked_job_artifacts) Feature.enable(:ci_job_artifacts_backlog_work)
These changes include switching artifacts from unlocked
to locked
if
they should be retained.
Artifacts with unknown
status
Artifacts created before housekeeping was updated have a status of unknown
. After they expire,
these artifacts are not processed by the new housekeeping.
You can check the database to confirm if your instance has artifacts with the unknown
status:
-
Start a database console:
Linux package (Omnibus)sudo gitlab-psql
Helm chart (Kubernetes)# Find the toolbox pod kubectl --namespace <namespace> get pods -lapp=toolbox # Connect to the PostgreSQL console kubectl exec -it <toolbox-pod-name> -- /srv/gitlab/bin/rails dbconsole --include-password --database main
Dockersudo docker exec -it <container_name> /bin/bash gitlab-psql
Self-compiled (source)sudo -u git -H psql -d gitlabhq_production
-
Run the following query:
select expire_at, file_type, locked, count(*) from ci_job_artifacts where expire_at is not null and file_type != 3 group by expire_at, file_type, locked having count(*) > 1;
If records are returned, then there are artifacts which the housekeeping job is unable to process. For example:
expire_at | file_type | locked | count
-------------------------------+-----------+--------+--------
2021-06-21 22:00:00+00 | 1 | 2 | 73614
2021-06-21 22:00:00+00 | 2 | 2 | 73614
2021-06-21 22:00:00+00 | 4 | 2 | 3522
2021-06-21 22:00:00+00 | 9 | 2 | 32
2021-06-21 22:00:00+00 | 12 | 2 | 163
Artifacts with locked status 2
are unknown
. Check
issue #346261
for more details.
Clean up unknown
artifacts
The Sidekiq worker that processes all unknown
artifacts is enabled by default in
GitLab 15.3 and later. It analyzes the artifacts returned by the above database query and
determines which should be locked
or unlocked
. Artifacts are then deleted
by that worker if needed.
The worker can be enabled on self-managed instances:
-
Start a Rails console.
-
Check if the feature is enabled.
Feature.enabled?(:ci_job_artifacts_backlog_work)
-
Enable the feature, if needed:
Feature.enable(:ci_job_artifacts_backlog_work)
The worker processes 10,000 unknown
artifacts every seven minutes, or roughly two million
in 24 hours.
There is a related ci_job_artifacts_backlog_large_loop_limit
feature flag
which causes the worker to process unknown
artifacts
in batches that are five times larger.
This flag is not recommended for use on self-managed instances.
List projects and builds with artifacts with a specific expiration (or no expiration)
Using a Rails console, you can find projects that have job artifacts with either:
- No expiration date.
- An expiration date more than 7 days in the future.
Similar to deleting artifacts, use the following example time frames and alter them as needed:
-
7.days.from_now
-
10.days.from_now
-
2.weeks.from_now
-
3.months.from_now
-
1.year.from_now
Each of the following scripts also limits the search to 50 results with .limit(50)
, but this number can also be changed as needed:
# Find builds & projects with artifacts that never expire
builds_with_artifacts_that_never_expire = Ci::Build.with_downloadable_artifacts.where(artifacts_expire_at: nil).limit(50)
builds_with_artifacts_that_never_expire.find_each do |build|
puts "Build with id #{build.id} has artifacts that don't expire and belongs to project #{build.project.full_path}"
end
# Find builds & projects with artifacts that expire after 7 days from today
builds_with_artifacts_that_expire_in_a_week = Ci::Build.with_downloadable_artifacts.where('artifacts_expire_at > ?', 7.days.from_now).limit(50)
builds_with_artifacts_that_expire_in_a_week.find_each do |build|
puts "Build with id #{build.id} has artifacts that expire at #{build.artifacts_expire_at} and belongs to project #{build.project.full_path}"
end
List projects by total size of job artifacts stored
List the top 20 projects, sorted by the total size of job artifacts stored, by running the following code in the Rails console:
include ActionView::Helpers::NumberHelper
ProjectStatistics.order(build_artifacts_size: :desc).limit(20).each do |s|
puts "#{number_to_human_size(s.build_artifacts_size)} \t #{s.project.full_path}"
end
You can change the number of projects listed by modifying .limit(20)
to the
number you want.
List largest artifacts in a single project
List the 50 largest job artifacts in a single project by running the following code in the Rails console:
include ActionView::Helpers::NumberHelper
project = Project.find_by_full_path('path/to/project')
Ci::JobArtifact.where(project: project).order(size: :desc).limit(50).map { |a| puts "ID: #{a.id} - #{a.file_type}: #{number_to_human_size(a.size)}" }
You can change the number of job artifacts listed by modifying .limit(50)
to
the number you want.
List artifacts in a single project
List the artifacts for a single project, sorted by artifact size. The output includes the:
- ID of the job that created the artifact
- artifact size
- artifact file type
- artifact creation date
- on-disk location of the artifact
p = Project.find_by_id(<project_id>)
arts = Ci::JobArtifact.where(project: p)
list = arts.order(size: :desc).limit(50).each do |art|
puts "Job ID: #{art.job_id} - Size: #{art.size}b - Type: #{art.file_type} - Created: #{art.created_at} - File loc: #{art.file}"
end
To change the number of job artifacts listed, change the number in limit(50)
.
Delete old builds and artifacts
Delete old artifacts for a project
This step also erases artifacts that users have chosen to keep:
project = Project.find_by_full_path('path/to/project')
builds_with_artifacts = project.builds.with_downloadable_artifacts
builds_with_artifacts.where("finished_at < ?", 1.year.ago).each_batch do |batch|
batch.each do |build|
Ci::JobArtifacts::DeleteService.new(build).execute
end
batch.update_all(artifacts_expire_at: Time.current)
end
In GitLab 15.3 and earlier, use the following instead:
project = Project.find_by_full_path('path/to/project')
builds_with_artifacts = project.builds.with_downloadable_artifacts
builds_with_artifacts.where("finished_at < ?", 1.year.ago).each_batch do |batch|
batch.each do |build|
build.artifacts_expire_at = Time.current
build.erase_erasable_artifacts!
end
end
Delete old artifacts instance wide
This step also erases artifacts that users have chosen to keep:
builds_with_artifacts = Ci::Build.with_downloadable_artifacts
builds_with_artifacts.where("finished_at < ?", 1.year.ago).each_batch do |batch|
batch.each do |build|
Ci::JobArtifacts::DeleteService.new(build).execute
end
batch.update_all(artifacts_expire_at: Time.current)
end
In GitLab 15.3 and earlier, use the following instead:
builds_with_artifacts = Ci::Build.with_downloadable_artifacts
builds_with_artifacts.where("finished_at < ?", 1.year.ago).each_batch do |batch|
batch.each do |build|
build.artifacts_expire_at = Time.current
build.erase_erasable_artifacts!
end
end
Delete old job logs and artifacts for a project
project = Project.find_by_full_path('path/to/project')
builds = project.builds
admin_user = User.find_by(username: 'username')
builds.where("finished_at < ?", 1.year.ago).each_batch do |batch|
batch.each do |build|
print "Ci::Build ID #{build.id}... "
if build.erasable?
Ci::BuildEraseService.new(build, admin_user).execute
puts "Erased"
else
puts "Skipped (Nothing to erase or not erasable)"
end
end
end
Delete old job logs and artifacts instance wide
builds = Ci::Build.all
admin_user = User.find_by(username: 'username')
builds.where("finished_at < ?", 1.year.ago).each_batch do |batch|
batch.each do |build|
print "Ci::Build ID #{build.id}... "
if build.erasable?
Ci::BuildEraseService.new(build, admin_user).execute
puts "Erased"
else
puts "Skipped (Nothing to erase or not erasable)"
end
end
end
In GitLab 15.3 and earlier, replace
Ci::BuildEraseService.new(build, admin_user).execute
with build.erase(erased_by: admin_user)
.
1.year.ago
is a Rails ActiveSupport::Duration
method.
Start with a long duration to reduce the risk of accidentally deleting artifacts that are still in use.
Rerun the deletion with shorter durations as needed, for example 3.months.ago
, 2.weeks.ago
, or 7.days.ago
.
The method erase_erasable_artifacts!
is synchronous, and upon execution the artifacts are immediately removed;
they are not scheduled by a background queue.
Delete old pipelines
Deleting a pipeline also removes that pipeline’s:
- Job artifacts
- Job logs
- Job metadata
- Pipeline metadata
Removing job and pipeline metadata can help reduce the size of the CI tables in the database. The CI tables are usually the largest tables in an instance’s database.
Delete old pipelines for a project
project = Project.find_by_full_path('path/to/project')
user = User.find(1)
project.ci_pipelines.where("finished_at < ?", 1.year.ago).each_batch do |batch|
batch.each do |pipeline|
puts "Erasing pipeline #{pipeline.id}"
::Ci::DestroyPipelineService.new(pipeline.project, user).execute(pipeline)
end
end
Delete old pipelines instance-wide
user = User.find(1)
Ci::Pipeline.where("finished_at < ?", 1.year.ago).each_batch do |batch|
batch.each do |pipeline|
puts "Erasing pipeline #{pipeline.id} for project #{pipeline.project_id}"
::Ci::DestroyPipelineService.new(pipeline.project, user).execute(pipeline)
end
end
Job artifact upload fails with error 500
If you are using object storage for artifacts and a job artifact fails to upload, review:
-
The job log for an error message similar to:
WARNING: Uploading artifacts as "archive" to coordinator... failed id=12345 responseStatus=500 Internal Server Error status=500 token=abcd1234
-
The workhorse log for an error message similar to:
{"error":"MissingRegion: could not find region configuration","level":"error","msg":"error uploading S3 session","time":"2021-03-16T22:10:55-04:00"}
In both cases, you might need to add region
to the job artifact object storage configuration.
Job artifact upload fails with 500 Internal Server Error (Missing file)
Bucket names that include folder paths are not supported with consolidated object storage.
For example, bucket/path
. If a bucket name has a path in it, you might receive an error similar to:
WARNING: Uploading artifacts as "archive" to coordinator... POST https://gitlab.example.com/api/v4/jobs/job_id/artifacts?artifact_format=zip&artifact_type=archive&expire_in=1+day: 500 Internal Server Error (Missing file)
FATAL: invalid argument
If a job artifact fails to upload with the above error when using consolidated object storage, make sure you are using separate buckets for each data type.
Job artifacts fail to upload with FATAL: invalid argument
when using Windows mount
If you are using a Windows mount with CIFS for job artifacts, you may see an
invalid argument
error when the runner attempts to upload artifacts:
WARNING: Uploading artifacts as "dotenv" to coordinator... POST https://<your-gitlab-instance>/api/v4/jobs/<JOB_ID>/artifacts: 500 Internal Server Error id=1296 responseStatus=500 Internal Server Error status=500 token=*****
FATAL: invalid argument
To work around this issue, you can try:
- Switching to an ext4 mount instead of CIFS.
- Upgrading to at least Linux kernel 5.15 which contains a number of important bug fixes relating to CIFS file leases.
- For older kernels, using the
nolease
mount option to disable file leasing.
For more information, see the investigation details.
Usage quota shows incorrect artifact storage usage
Sometimes the artifacts storage usage displays an incorrect value for the total storage space used by artifacts. To recalculate the artifact usage statistics for all projects in the instance, you can run this background script:
gitlab-rake gitlab:refresh_project_statistics_build_artifacts_size[https://example.com/path/file.csv]
The https://example.com/path/file.csv
file must list the project IDs for
all projects for which you want to recalculate artifact storage usage. Use this format for the file:
PROJECT_ID
1
2
The artifact usage value can fluctuate to 0
while the script is running. After
recalculation, usage should display as expected again.
Artifact download flow diagrams
The following flow diagrams illustrate how job artifacts work. These diagrams assume object storage is configured for job artifacts.
Proxy download disabled
With proxy_download
set to false
, GitLab
redirects the runner to download artifacts from object storage with a
pre-signed URL. It is usually faster for runners to fetch from the
source directly so this configuration is generally recommended. It
should also reduce bandwidth usage because the data does not have to be
fetched by GitLab and sent to the runner. However, it does require
giving runners direct access to object storage.
The request flow looks like:
In this diagram:
-
First, the runner attempts to fetch a job artifact by using the
GET /api/v4/jobs/:id/artifacts
endpoint. The runner attaches thedirect_download=true
query parameter on the first attempt to indicate that it is capable of downloading from object storage directly. Direct downloads can be disabled in the runner configuration via theFF_USE_DIRECT_DOWNLOAD
feature flag. This flag is set totrue
by default. -
The runner sends the GET request using HTTP Basic Authentication with the
gitlab-ci-token
username and an auto-generated CI/CD job token as the password. This token is generated by GitLab and given to the runner at the start of a job. -
The GET request gets passed to the GitLab API, which looks up the token in the database and finds the user who triggered the job.
-
In steps 5-8:
-
If the user has access to the build, then GitLab generates a presigned URL and sends a 302 Redirect with the
Location
set to that URL. The runner follows the 302 Redirect and downloads the artifacts. -
If the job cannot be found or the user does not have access to the job, then the API returns 401 Unauthorized.
The runner does not retry if it receives the following HTTP status codes:
- 200 OK
- 401 Unauthorized
- 403 Forbidden
- 404 Not Found
However, if the runner receives any other status code, such as a 500 error, it re-attempts to download the artifacts two more times, sleeping 1 second between each attempt. The subsequent attempts omit
direct_download=true
. -
Proxy download enabled
If proxy_download
is true
, GitLab always fetches the
artifacts from object storage and send the data to the runner, even if
the runner sends the direct_download=true
query parameter. Proxy
downloads might be desirable if runners have restricted network access.
The following diagram is similar to the disabled proxy download example,
except at steps 6-9, GitLab does not send a 302 Redirect to the
runner. Instead, GitLab instructs Workhorse to fetch the data and stream
it back to the runner. From the runner perspective, the original GET
request to /api/v4/jobs/:id/artifacts
returns the binary data
directly.
413 Request Entity Too Large
error
If the artifacts are too large, the job might fail with the following error:
Uploading artifacts as "archive" to coordinator... too large archive <job-id> responseStatus=413 Request Entity Too Large status=413" at end of a build job on pipeline when trying to store artifacts to <object-storage>.
You might need to:
- Increase the maximum artifacts size.
- If you are using NGINX as a proxy server, increase the file upload size limit which is limited to 1 MB by default.
Set a higher value for
client-max-body-size
in the NGINX configuration file.