Red Hat OpenShift AI
OpenShiftAI & MLManaged MLOps platform (formerly Open Data Hub) for training, serving, and monitoring ML models on OpenShift with JupyterHub, KServe, Kubeflow, and PyTorch operators
Sub-services (3)
Notebook Servers
JupyterHub-managed data science notebooks with GPU acceleration
Model Serving
KServe-based inference endpoints with autoscaling and canary rollouts
Data Science Pipelines
Kubeflow Pipelines for reproducible ML workflows
Compliance & Certifications
This service is attested for the following frameworks. Always verify with the provider before relying on a specific compliance posture.
Tags
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