Deep Learning for Scientific Computing - Two Stories on the Gap Between Theory & Practice - Ben Adcock

Deep Learning for Scientific Computing - Two Stories on the Gap Between Theory & Practice - Ben Adcock

Alan Turing Institute via YouTube Direct link

Main collaborators

2 of 24

2 of 24

Main collaborators

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Deep Learning for Scientific Computing - Two Stories on the Gap Between Theory & Practice - Ben Adcock

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  1. 1 Intro
  2. 2 Main collaborators
  3. 3 Deep Learning (DL) for scientific computing
  4. 4 This talk two stories on the theory-practice gap
  5. 5 Parametric modelling
  6. 6 Challenges
  7. 7 MLFA: examining the practical performance of DNNS
  8. 8 Limited performance for smooth, univariate approximation
  9. 9 Balancing architecture size
  10. 10 Smooth, multivariate functions
  11. 11 Piecewise smooth function approximation
  12. 12 Theoretical insights
  13. 13 DNN existence theory for holomorphic functions
  14. 14 Practical DNN existence theorem: Hilbert-valued case
  15. 15 Discussion
  16. 16 Deep learning for inverse problems
  17. 17 Further examples
  18. 18 These are not rare events
  19. 19 Unpredictable generalization
  20. 20 The universal instability theorem
  21. 21 Hallucinations in practice
  22. 22 Construction: unravelling and restarts
  23. 23 FIRENETS example
  24. 24 Conclusions

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