Course Outline

Foundations of MLOps on Kubernetes

  • Core concepts of MLOps
  • MLOps vs traditional DevOps
  • Key challenges of ML lifecycle management

Containerizing ML Workloads

  • Packaging models and training code
  • Optimizing container images for ML
  • Managing dependencies and reproducibility

CI/CD for Machine Learning

  • Structuring ML repositories for automation
  • Integrating testing and validation steps
  • Triggering pipelines for retraining and updates

GitOps for Model Deployment

  • GitOps principles and workflows
  • Using Argo CD for model deployment
  • Version control of models and configurations

Pipeline Orchestration on Kubernetes

  • Building pipelines with Tekton
  • Managing multi-step ML workflows
  • Scheduling and resource management

Monitoring, Logging, and Rollback Strategies

  • Tracking data drift and model performance
  • Integrating alerting and observability
  • Rollback and failover approaches

Automated Retraining and Continuous Improvement

  • Designing feedback loops
  • Automating scheduled retraining
  • Integrating MLflow for tracking and experiment management

Advanced MLOps Architectures

  • Multi-cluster and hybrid-cloud deployment models
  • Scaling teams with shared infrastructure
  • Security and compliance considerations

Summary and Next Steps

Requirements

  • An understanding of Kubernetes fundamentals
  • Experience with machine learning workflows
  • Knowledge of Git-based development

Audience

  • ML engineers
  • DevOps engineers
  • ML platform teams
 14 Hours

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