Intermediate

Deploying Models with Azure Machine Learning

Online and batch endpoints, scoring scripts, blue/green deployment, AKS and model monitoring on Azure ML.

Training an ML model is only half the work. Production deployment is often the most complex and risky step in the ML lifecycle.

Sign in to read this course

A free account unlocks all 514 courses. 20 are readable without one.

What's inside

20 sections
  1. 1 Table of Contents
  2. 2 Introduction to ML Deployment
  3. 3 Model Catalog and Fine-tuning
  4. 4 Online Endpoints – Real-time Inference
  5. 5 Scoring Script – The Core of Deployment
  6. 6 Blue/Green Deployment and Traffic Splitting
  7. 7 Batch Endpoints – Batch Inference
  8. 8 Deployment on AKS (Kubernetes)
  9. 9 Model Monitoring and Surveillance
  10. 10 CI/CD for ML Deployment
  11. 11 Complete Implementation with the SDK
  12. 12 Patterns and Best Practices
  13. 13 Summary and Key Points
  14. 14 Glossary
  15. 15 Model Catalog and Fine-tuning
  16. 16 Online Endpoints – Real-time Inference
  17. 17 CLI Commands for Deployment
  18. 18 Deployment on AKS
  19. 19 Key Points Summary
  20. 20 Review Questions

Interested in this course?

Contact us to book it or get a custom training plan for your team.