The Motivation for MLOps - Architectural Perspective

The Motivation for MLOps - Architectural Perspective

MLOps.community via YouTube Direct link

[] What is the framework?

11 of 24

11 of 24

[] What is the framework?

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The Motivation for MLOps - Architectural Perspective

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  1. 1 [] Introduction to Steven Fines
  2. 2 [] Highlight
  3. 3 [] Motivating to MLOps
  4. 4 [] Machine Learning in the wild
  5. 5 [] Compliance challenges
  6. 6 [] Model Management
  7. 7 [] Operational concerns
  8. 8 [] MLOps: Definition from the Architectural viewpoint
  9. 9 [] MLOps and DevOps
  10. 10 [] Do I need to do this?
  11. 11 [] What is the framework?
  12. 12 [] Prerequisites
  13. 13 [] Foundational Components
  14. 14 [] Scaling the process
  15. 15 [] Fully mature
  16. 16 [] Implementing MLOps
  17. 17 [] Standardize
  18. 18 [] Move model execution to pipelines
  19. 19 [] Monitor the results
  20. 20 [] Scales Steven worked with before
  21. 21 [] When to create a data catalog or a feature store
  22. 22 [] Data catalogueing
  23. 23 [] Classic obstacles in ML that doesn't present in classical or traditional software
  24. 24 [] Wrap up

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