Models (Beta)
This is a Beta feature. The page content is subject to change.
Data scientists requires to repeat training models with various combinations of dataset, feature, parameters etc., and conducting experiments on models, furthermore, to register/to version models which have decent performance according to results. Nowadays, this is one part of MLOps.
Regarding managing versioned models, PrimeHub, by integrating well-known MLflow, provides models management feature, Models that scientists can examine the performance of versioned/registered models and deploy a selected model directly as a service by Deployments on PrimeHub.
MLflow is required
A running installed MLflow instance is required and Group Setting has to be configured with relative information.
MLflow setting is not configured yet
Mlflow instance is not reachable/running
Models
The page displays registered models from binding MLflow.
If a loading page displays only, please double check
MLflow Tracking URI
configuration of MLflow setting in Group Setting.
MLflow UI
button: navigate to binding MLflow server in a new tab.
As long as an experimental model is registered on MLflow, it is listed in Models on PrimeHub as well.
Versioned Model List
By clicking each model name, it navigates into the list of versioned models.
Version
: Version numberRegistered At
: The registration date/timeDeployed By
: The deployment name if the model is used for a deployment; click to navigate into the deployment detail page.Deploy
button: Deploying the selected versioned model.
Versioned Model Detail
The page displays the information regarding this version.
Registered At
Last Modified
Source Run
: linking to the run on MLflowParameters
: if anyMetrics
: if anyTags
: if any
Deploy Versioned Model
In order to deploy a certain versioned model, click Deploy
of a versioned model and select + Create new deployment
or update an existing deployment. It will navigate to Deployment page, continue to submit the deployment with mandatory information.
Deployed
The model which is used for the deployment is with the information of the deployment name under Deployed by
column. Click the deployment will navigate into the deployment detail page.
From the deployment information page, Model URI
presents models:/<model_name>/<model_version>
, e.g., models:/tensorflow-model/2
.
models:/
: the model which is tracked by MLflow is deployed from Model Management<model_name>
:the name of the model<model_version
: the version number of the model