The Next Frontier - Observability in ML Systems

The Next Frontier - Observability in ML Systems

Conf42 via YouTube Direct link

intro

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1 of 21

intro

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The Next Frontier - Observability in ML Systems

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  1. 1 intro
  2. 2 preamble
  3. 3 who am i?
  4. 4 what is model observability?
  5. 5 how is model observability different from model monitoring?
  6. 6 why is model observability important?
  7. 7 how ml observability helps
  8. 8 key components of ml observability
  9. 9 key challenges: data drift
  10. 10 key challenges: performance degradation
  11. 11 key challenges: data quality
  12. 12 model observability challenges in llms
  13. 13 evaluation techniques for llms
  14. 14 challenges in computer vision
  15. 15 components to address challenges in computer vision
  16. 16 monitoring techniques in ml observability
  17. 17 explainability techniques in standard ml systems
  18. 18 explainability techniques in llms
  19. 19 explainability techniques in cv
  20. 20 future trends in model observability
  21. 21 thanks for attention

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