Generalization and Personalization in Federated Learning - Karan Singhal

Generalization and Personalization in Federated Learning - Karan Singhal

Stanford MedAI via YouTube Direct link

MNIST

19 of 43

19 of 43

MNIST

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Generalization and Personalization in Federated Learning - Karan Singhal

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  1. 1 Introduction
  2. 2 Outline
  3. 3 Federated Learning
  4. 4 Client Devices
  5. 5 Federal Learning
  6. 6 Validation
  7. 7 Example
  8. 8 Characteristics of Federated Learning
  9. 9 Questions
  10. 10 Generalization
  11. 11 Generalization Gaps
  12. 12 Participation Gaps
  13. 13 Does Participation Gap exist
  14. 14 Different ways of making federated data sets
  15. 15 Natural vs labelbased partitioning
  16. 16 Semantic partitioning
  17. 17 Intuition
  18. 18 Results
  19. 19 MNIST
  20. 20 Generalization in MedAI
  21. 21 Distribution of Medical Data
  22. 22 Hospitals and Patients
  23. 23 Conclusions
  24. 24 Extending the 3way split
  25. 25 Takeaways
  26. 26 Next Part
  27. 27 Recap
  28. 28 Can we do better
  29. 29 Use case
  30. 30 Factorization
  31. 31 ClientSpecific Embedding
  32. 32 Local Stateful Embedding
  33. 33 Problems with Statefulness
  34. 34 Generalization in Federated Learning
  35. 35 Federal Reconstruction
  36. 36 Metal Learning
  37. 37 Next Word Prediction
  38. 38 Deployment
  39. 39 Takeaway
  40. 40 Preliminary results
  41. 41 Multilevel assumptions
  42. 42 Resources
  43. 43 Audience Questions

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