-
Notifications
You must be signed in to change notification settings - Fork 45
Description
What you would like to be added?
As part of the centralized experiment tracking initiative, we need to provide experiment tracking APIs to the Kubeflow SDK that enable AI Practitioners to log experiments, runs, metrics, parameters and artifacts directly from Python code.
This would allow users to track experiments from Jupyter notebooks while storing metadata in Kubeflow's centralized Model Registry backend.
Why is this needed?
Providing seamless experiment tracking experience is critical for AI Practitioners who need to log and compare experiments across different stages of the ML lifecycle. Supporting MLflow compatibility makes this functionality accessible to the broader ML community who are already familiar with MLflow APIs, reducing adoption barriers for Kubeflow.
Love this feature?
Give it a 👍 We prioritize the features with most 👍