Privacy Governance and Explainability in ML - AI

Privacy Governance and Explainability in ML - AI

Strange Loop Conference via YouTube Direct link

Privacy by design in retrospect

12 of 25

12 of 25

Privacy by design in retrospect

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Privacy Governance and Explainability in ML - AI

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  1. 1 Introduction
  2. 2 Agenda
  3. 3 Why does it matter
  4. 4 Landscape of privacy risk
  5. 5 Privacy is more than security
  6. 6 Fundamental right to privacy
  7. 7 Trust context
  8. 8 Transparency consumer trust
  9. 9 Contextbased privacy
  10. 10 Privacy by design
  11. 11 Governance data optimization maturity
  12. 12 Privacy by design in retrospect
  13. 13 Current state of privacy
  14. 14 Machine learning and AI
  15. 15 Algorithmal fairness
  16. 16 Role of developers engineers
  17. 17 Seeking out risk
  18. 18 Types of data
  19. 19 Methods
  20. 20 Model Prediction Risk
  21. 21 Dynamic Sampling
  22. 22 Differential Privacy
  23. 23 Multidimensional Privacy Analytics
  24. 24 Life Cycle
  25. 25 Conclusion

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