Physics Informed Machine Learning - Embedding Physics in AI and Discovering New Physics with ML

Physics Informed Machine Learning - Embedding Physics in AI and Discovering New Physics with ML

Steve Brunton via YouTube Direct link

Discrepancy Modeling with Physics Informed Machine Learning

15 of 24

15 of 24

Discrepancy Modeling with Physics Informed Machine Learning

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Physics Informed Machine Learning - Embedding Physics in AI and Discovering New Physics with ML

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  1. 1 Physics Informed Machine Learning: High Level Overview of AI and ML in Science and Engineering
  2. 2 AI/ML+Physics Part 1: Choosing what to model [Physics Informed Machine Learning]
  3. 3 AI/ML+Physics Part 2: Curating Training Data [Physics Informed Machine Learning]
  4. 4 AI/ML+Physics Part 3: Designing an Architecture [Physics Informed Machine Learning]
  5. 5 AI/ML+Physics Part 4: Crafting a Loss Function [Physics Informed Machine Learning]
  6. 6 AI/ML+Physics Part 5: Employing an Optimization Algorithm [Physics Informed Machine Learning]
  7. 7 AI/ML+Physics: Recap and Summary [Physics Informed Machine Learning]
  8. 8 AI/ML+Physics: Preview of Upcoming Modules and Bootcamps [Physics Informed Machine Learning]
  9. 9 Deep Learning to Discover Coordinates for Dynamics: Autoencoders & Physics Informed Machine Learning
  10. 10 Sparse Identification of Nonlinear Dynamics (SINDy): Sparse Machine Learning Models 5 Years Later!
  11. 11 Sparse Nonlinear Dynamics Models with SINDy, Part 2: Training Data & Disambiguating Models
  12. 12 Sparse Nonlinear Dynamics Models with SINDy, Part 3: Effective Coordinates for Parsimonious Models
  13. 13 Sparse Nonlinear Dynamics Models with SINDy, Part 4: The Library of Candidate Nonlinearities
  14. 14 Sparse Nonlinear Dynamics Models with SINDy, Part 5: The Optimization Algorithms
  15. 15 Discrepancy Modeling with Physics Informed Machine Learning
  16. 16 Hamiltonian Neural Networks (HNN) [Physics Informed Machine Learning]
  17. 17 Lagrangian Neural Network (LNN) [Physics Informed Machine Learning]
  18. 18 Neural Implicit Flow (NIF) [Physics Informed Machine Learning]
  19. 19 Neural ODEs (NODEs) [Physics Informed Machine Learning]
  20. 20 Python Symbolic Regression (PySR) [Physics Informed Machine Learning]
  21. 21 Residual Networks (ResNet) [Physics Informed Machine Learning]
  22. 22 Fourier Neural Operator (FNO) [Physics Informed Machine Learning]
  23. 23 Deep Operator Networks (DeepONet) [Physics Informed Machine Learning]
  24. 24 Physics Informed Neural Networks (PINNs) [Physics Informed Machine Learning]

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