- Enable MLflow client integration
- Model experiments
- Model registry
- Supported MLflow client methods and caveats
- Limitations
MLflow client compatibility
-
Introduced in GitLab 15.11 as an experiment release with a flag named
ml_experiment_tracking
. Disabled by default.
MLflow is a popular open source tool for Machine Learning experiment tracking. GitLab Model experiment tracking and GitLab Model registry are compatible with the MLflow client. The setup requires minimal changes to existing code.
GitLab plays the role of a MLflow server. Running mlflow server
is not necessary.
Enable MLflow client integration
Prerequisites:
- A personal, project, or group access token with at least the Developer role and the
api
permission. - The project ID. To find the project ID:
- On the left sidebar, select Search or go to and find your project.
- Select Settings > General.
To use MLflow client compatibility from a local environment:
-
Set the tracking URI and token environment variables on the host that runs the code. This can be your local environment, CI pipeline, or remote host. For example:
export MLFLOW_TRACKING_URI="<your gitlab endpoint>/api/v4/projects/<your project id>/ml/mlflow" export MLFLOW_TRACKING_TOKEN="<your_access_token>"
-
If the training code contains the call to
mlflow.set_tracking_uri()
, remove it.
In the model registry, you can copy the tracking URI from the overflow menu in the top right by selecting the vertical ellipsis ().
Model experiments
When running the training code, MLflow client can be used to create experiments, runs, models, model versions, log parameters, metrics, metadata and artifacts on GitLab.
After experiments are logged, they are listed under /<your project>/-/ml/experiments
.
Runs are registered as candidates, which can be explored by selecting an experiment, model, or model version.
Associating a candidate to a CI/CD job
- Introduced in GitLab 16.1.
- Changed to beta in GitLab 17.1.
If your training code is being run from a CI/CD job, GitLab can use that information to enhance candidate metadata. To associate a candidate to a CI/CD job:
- In the Project CI variables, include the following variables:
-
MLFLOW_TRACKING_URI
:"<your gitlab endpoint>/api/v4/projects/<your project id>/ml/mlflow"
-
MLFLOW_TRACKING_TOKEN
:<your_access_token>
-
-
In your training code within the run execution context, add the following code snippet:
with mlflow.start_run(run_name=f"Candidate {index}"): # Your training code # Start of snippet to be included if os.getenv('GITLAB_CI'): mlflow.set_tag('gitlab.CI_JOB_ID', os.getenv('CI_JOB_ID')) # End of snippet to be included
Model registry
You can also manage models and model versions by using the MLflow
client. Models are registered under /<your project>/-/ml/models
.
Models
Creating a model
client = MlflowClient()
model_name = '<your_model_name>'
description = 'Model description'
model = client.create_registered_model(model_name, description=description)
Notes
-
create_registered_model
argumenttags
is ignored. -
name
must be unique within the project. -
name
cannot be the name of an existing experiment.
Fetching a model
client = MlflowClient()
model_name = '<your_model_name>'
model = client.get_registered_model(model_name)
Updating a model
client = MlflowClient()
model_name = '<your_model_name>'
description = 'New description'
client.update_registered_model(model_name, description=description)
Deleting a model
client = MlflowClient()
model_name = '<your_model_name>'
client.delete_registered_model(model_name)
Logging candidates to a model
Every model has an associated experiment with the same name prefixed by [model]
.
To log a candidate/run to the model, use the experiment passing the correct name:
client = MlflowClient()
model_name = '<your_model_name>'
exp = client.get_experiment_by_name(f"[model]{model_name}")
run = client.create_run(exp.experiment_id)
Model version
Creating a model version
client = MlflowClient()
model_name = '<your_model_name>'
description = 'Model version description'
model_version = client.create_model_version(model_name, source="", description=description)
If the version parameter is not passed, it will be auto-incremented from the latest uploaded version. You can set the version by passing a tag during model version creation. The version must follow SemVer format.
client = MlflowClient()
model_name = '<your_model_name>'
version = '<your_version>'
tags = { "gitlab.version": version }
client.create_model_version(model_name, version, description=description, tags=tags)
Notes
- Argument
run_id
is ignored. Every model version behaves as a Candidate/Run. Creating a mode version from a run is not yet supported. - Argument
source
is ignored. GitLab will create a package location for the model version files. - Argument
run_link
is ignored. - Argument
await_creation_for
is ignored.
Updating a model
client = MlflowClient()
model_name = '<your_model_name>'
version = '<your_version>'
description = 'New description'
client.update_model_version(model_name, version, description=description)
Fetching a model version
client = MlflowClient()
model_name = '<your_model_name>'
version = '<your_version>'
client.get_model_version(model_name, version)
Getting latest versions of a model
client = MlflowClient()
model_name = '<your_model_name>'
client.get_latest_versions(model_name)
Notes
- Argument
stages
is ignored. - Versions are ordered by last created.
Logging metrics and parameters to a model version
Every model version is also a candidate/run, allowing users to log parameters and metrics. The run ID can either be found at the Model version page in GitLab, or by using the MLflow client:
client = MlflowClient()
model_name = '<your_model_name>'
version = '<your_version>'
model_version = client.get_model_version(model_name, version)
run_id = model_version.run_id
# Your training code
client.log_metric(run_id, '<metric_name>', '<metric_value>')
client.log_param(run_id, '<param_name>', '<param_value>')
client.log_batch(run_id, metric_list, param_list, tag_list)
Logging artifacts to a model version
GitLab creates a package that can be used by the MLflow client to upload files.
client = MlflowClient()
model_name = '<your_model_name>'
version = '<your_version>'
model_version = client.get_model_version(model_name, version)
run_id = model_version.run_id
# Your training code
client.log_artifact(run_id, '<local/path/to/file.txt>', artifact_path="")
client.log_figure(run_id, figure, artifact_file="my_plot.png")
client.log_dict(run_id, my_dict, artifact_file="my_dict.json")
client.log_image(run_id, image, artifact_file="image.png")
Artifacts will then be available under https/<your project>/-/ml/models/<model_id>/versions/<version_id>
.
Linking a model version to a CI/CD job
Similar to candidates, it is also possible to link a model version to a CI/CD job:
client = MlflowClient()
model_name = '<your_model_name>'
version = '<your_version>'
model_version = client.get_model_version(model_name, version)
run_id = model_version.run_id
# Your training code
if os.getenv('GITLAB_CI'):
client.set_tag(model_version.run_id, 'gitlab.CI_JOB_ID', os.getenv('CI_JOB_ID'))
Supported MLflow client methods and caveats
GitLab supports these methods from the MLflow client. Other methods might be supported but were not tested. More information can be found in the MLflow Documentation. The MlflowClient counterparts of the methods below are also supported with the same caveats.
Method | Supported | Version Added | Comments |
---|---|---|---|
get_experiment
| Yes | 15.11 | |
get_experiment_by_name
| Yes | 15.11 | |
set_experiment
| Yes | 15.11 | |
get_run
| Yes | 15.11 | |
start_run
| Yes | 15.11 | (16.3) If a name is not provided, the candidate receives a random nickname. |
search_runs
| Yes | 15.11 | (16.4) experiment_ids supports only a single experiment ID with order by column or metric.
|
log_artifact
| Yes with caveat | 15.11 | (15.11) artifact_path must be empty. Does not support directories.
|
log_artifacts
| Yes with caveat | 15.11 | (15.11) artifact_path must be empty. Does not support directories.
|
log_batch
| Yes | 15.11 | |
log_metric
| Yes | 15.11 | |
log_metrics
| Yes | 15.11 | |
log_param
| Yes | 15.11 | |
log_params
| Yes | 15.11 | |
log_figure
| Yes | 15.11 | |
log_image
| Yes | 15.11 | |
log_text
| Yes with caveat | 15.11 | (15.11) Does not support directories. |
log_dict
| Yes with caveat | 15.11 | (15.11) Does not support directories. |
set_tag
| Yes | 15.11 | |
set_tags
| Yes | 15.11 | |
set_terminated
| Yes | 15.11 | |
end_run
| Yes | 15.11 | |
update_run
| Yes | 15.11 | |
log_model
| Partial | 15.11 | (15.11) Saves the artifacts, but not the model data. artifact_path must be empty.
|
Other MLflowClient methods:
Method | Supported | Version added | Comments |
---|---|---|---|
create_registered_model
| Yes with caveats | 16.8 | See notes |
get_registered_model
| Yes | 16.8 | |
delete_registered_model
| Yes | 16.8 | |
update_registered_model
| Yes | 16.8 | |
create_model_version
| Yes with caveats | 16.8 | See notes |
get_model_version
| Yes | 16.8 | |
get_latest_versions
| Yes with caveats | 16.8 | See notes |
update_model_version
| Yes | 16.8 | |
create_registered_model
| Yes | 16.8 | |
create_registered_model
| Yes | 16.8 |
Limitations
- The API GitLab supports is the one defined at MLflow version 2.7.1.
- MLflow client methods not listed above are not supported.
- During creation of experiments and runs, ExperimentTags are stored, even though they are not displayed.