Uncertainty-Aware Machine Learning Models of Many-Body Atomic Interactions

Uncertainty-Aware Machine Learning Models of Many-Body Atomic Interactions

Institute for Pure & Applied Mathematics (IPAM) via YouTube Direct link

Intro

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1 of 23

Intro

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Uncertainty-Aware Machine Learning Models of Many-Body Atomic Interactions

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  1. 1 Intro
  2. 2 Machine learning for understanding dynamics
  3. 3 Atomistic modeling methods evolution
  4. 4 Limitations of Current ML Functionals
  5. 5 Nonlocal Features for Exchange Energy
  6. 6 Model and Training Details
  7. 7 What is the derivative discontinuity?
  8. 8 Dynamic problems require dynamic solutions
  9. 9 Computing forces for molecular dynamics
  10. 10 Symmetry-Aware Machine Learning Force Fields
  11. 11 E(3) equivariance allows to capture 3D geometry
  12. 12 NequIP: E(3)-equivariant Neural Interatomic Potentials
  13. 13 Long MD simulation stability
  14. 14 Allegro's two-track architecture
  15. 15 Allegro accuracy and scalability
  16. 16 Allegro: Large-scale dynamics
  17. 17 Selecting optimal training sets
  18. 18 FLARE Bayesian Force Fields
  19. 19 FLARE on the fly active learning
  20. 20 Phase transitions in 2D stanene
  21. 21 ML force fields for transition metals
  22. 22 Micron-scale heterogeneous reaction dynamics
  23. 23 Evolution of Li anode-electrolyte interface

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