Red Hat OpenShift AI Training (AI267) Learn how to configure OpenShift AI workspaces, notebooks, development environments, and project resources.
Red Hat OpenShift AI Training (AI267)
0% Completed
Module 1: Introduction to Red Hat OpenShift AI
Understand the fundamentals of AI, machine learning, MLOps, and the architecture of Red Hat OpenShift AI Training.
Reading
Module 2: Setting Up the OpenShift AI Environment
Learn how to configure OpenShift AI workspaces, notebooks, development environments, and project resources.
Reading
Module 3: AI & Machine Learning Workflows
Build complete AI pipelines, prepare datasets, train models, and evaluate machine learning performance.
Reading
Module 4: Data Preparation & Model Development
Work with datasets, feature engineering, preprocessing, experimentation, and model optimization techniques.
Reading
Module 5: Model Deployment on OpenShift
Deploy AI models as scalable services using Kubernetes and OpenShift AI.
Reading
Module 6: MLOps Fundamentals
Learn version control, model lifecycle management, continuous deployment, monitoring, and automation.
Reading
Module 7: Monitoring AI Applications
Implement monitoring, logging, performance analysis, model health tracking, and observability.
Reading
Module 8: Scaling AI Workloads
Manage GPU resources, autoscaling, workload optimization, and enterprise AI deployments.
Reading
Module 9: AI Security & Governance
Secure AI workloads using authentication, RBAC, compliance, and responsible AI practices.
Reading
Module 10: Capstone Project & Exam Readiness
Develop, deploy, monitor, and manage an end-to-end AI application using Red Hat OpenShift AI.
Reading
Announcements Reviews Course Info
PreviousNext

Red Hat Learning Subscription

Please fill out the below form to know more about RHLS subscription.

Fill the below form to get started

Book Demo