Skip to content

Latest commit

 

History

History
80 lines (50 loc) · 3.25 KB

README.md

File metadata and controls

80 lines (50 loc) · 3.25 KB

Build Status CII Best Practices Slack

Machine Learning eXchange (MLX)

Data and AI Assets Catalog and Execution Engine

Allows upload, registration, execution, and deployment of:

  • AI pipelines and pipeline components
  • Models
  • Datasets
  • Notebooks

For more details about the project please follow this announcement blog post.

Additionally it provides:

1. Deployment

For a simple up-and-running MLX with asset catalog only, we created a Quickstart Guide using Docker Compose.

For a full deployment, we use Kubeflow Kfctl tooling.

2. Access the MLX UI

  1. By default the MLX UI is available at :30380/os

To find the public ip of a node of your cluster

kubectl get node -o wide

Look for the ExternalIP column.

  1. If you are on a openshift cluster you can also make use of the IstioIngresGateway Route. You can find it in the OpenShift Console or in the CLI
oc get route -n istio-system

3. Import Data and AI Assets in MLX Catalog

Import data and AI assets using MLX's catalog importer

4. Use MLX

MLX Usage Instructions

5. Troubleshooting

MLX Troubleshooting Instructions

Join the Conversation