Autodiff and Adjoints for Differentiable Physics

This is a recording of a lecture for our TUM Master Course "Advanced Deep Learning for Physics". You can find the lecture slides here: fkoehler.site/files/autodiff_...
Lecture script: physicsbaseddeeplearning.org/...
Course website: www.cs.cit.tum.de/cg/teaching...
This module is hosted by the Thuerey group at TUM (which I am PhD student in): ge.in.tum.de/
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Пікірлер: 6

  • @MachineLearningSimulation
    @MachineLearningSimulation24 күн бұрын

    Errata: 33:30: The pullback/vJp rule for the matrix-vector product should use A (not W, which was never introduced), hence \bar{x} = A^T \bar{y}

  • @howwway4999
    @howwway499922 күн бұрын

    huge fan, thanks for sharing the great lecture

  • @MachineLearningSimulation

    @MachineLearningSimulation

    11 күн бұрын

    Thanks :) You're very welcome!

  • @DrSimulate
    @DrSimulate24 күн бұрын

    Nice lecture! Thanks for sharing this!

  • @JousefMuradAPEX
    @JousefMuradAPEX15 күн бұрын

    Good one, Felix!!

  • @MachineLearningSimulation

    @MachineLearningSimulation

    11 күн бұрын

    Thanks jousef 😊