KDD 2020: Physics Inspired Models in Artificial Intelligence

KDD 2020: Physics Inspired Models in Artificial Intelligence

Association for Computing Machinery (ACM) via YouTube Direct link

Statistical physics theory of Deep Learning?

28 of 31

28 of 31

Statistical physics theory of Deep Learning?

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

KDD 2020: Physics Inspired Models in Artificial Intelligence

Automatically move to the next video in the Classroom when playback concludes

  1. 1 Intro
  2. 2 Terminology
  3. 3 Motivation: Why Physics & AI?
  4. 4 Why this Tutorial?
  5. 5 Tutorial Goals
  6. 6 Interplay of Physics and Al
  7. 7 The Four Paradigms
  8. 8 Theory vs. Data?
  9. 9 Limitations of the 4th Paradigm
  10. 10 Cautionary Tale: Problems with Big Data
  11. 11 Parameters Galore!
  12. 12 Physics: Tycho Brahe to Kepler to Newton
  13. 13 A Brief History of Physics & Al
  14. 14 Generalization in Physics & Al
  15. 15 Generalization in Neural Nets
  16. 16 Generalization: Observations
  17. 17 Computational Complexity, Al & Physics
  18. 18 Complexity Classes
  19. 19 3-SAT and Phase Transitions
  20. 20 Problems: Complexity
  21. 21 Interpretability & Explainability in Al/ML
  22. 22 Properties of XAI
  23. 23 Physics Informed Neural Nets (PINN)
  24. 24 Physics-guided Neural Network (PGNN)
  25. 25 Physics & Explainable Al: An Illustration
  26. 26 Results Summary
  27. 27 Open Questions in Neural Networks
  28. 28 Statistical physics theory of Deep Learning?
  29. 29 Information Bottleneck & Neural Nets
  30. 30 Information Bottlenecks & Physics
  31. 31 The Committee Machine

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.