Fourier Neural Operator (FNO) [Physics Informed Machine Learning]

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  • Опубликовано: 10 сен 2024

Комментарии • 27

  • @psychii678
    @psychii678 25 дней назад +6

    I had a thesis on this for applying to conjugate heat transfer problems. This family of models is surprisingly easy to train both computationally and architecturally. Definitely the easiest to start with from an operator standpoint imo

  • @LordMichaelRahl
    @LordMichaelRahl 24 дня назад +1

    Fantastic as always. Looking forward the code in the description.

  • @hola-kx1gn
    @hola-kx1gn 26 дней назад +1

    Very interesting. Please make more videos with the FNO!

  • @MrHaggyy
    @MrHaggyy 25 дней назад

    This could be very interesting from a computational standpoint. A full analytic computation is usually expensive, so we derive setpoints around them. As the mesh is variable we have a tradeoff of detail and compute. Sounds promising to update setpoints, or as part of a controller.

  • @laurentthowai3359
    @laurentthowai3359 25 дней назад +1

    Thanks Mr Brunton, i follow you since 2020, always interesting …

  • @lgl_137noname6
    @lgl_137noname6 26 дней назад +1

    1:41
    @eigensteve
    Are those resources whic are mentioned still available ?
    They could not be found in the description.
    thanks.

  • @maxkaibarreto
    @maxkaibarreto 9 дней назад

    Lovely pictures. The sample-est edge still isn’t there so maybe the sample’s relevant state is not yet fully spanned

  • @hillwin10
    @hillwin10 14 дней назад

    Cool! Great job

  • @anonym9323
    @anonym9323 26 дней назад

    Did not knew that boeing is the Sponsor of this video:)

  • @sohamroykarmokar3071
    @sohamroykarmokar3071 21 день назад

    Great content!

  • @ahmedaburas8696
    @ahmedaburas8696 22 дня назад

    I read more about the neural operators. Can neural operators be used for inverse problems in image processing? Especially when we have clear physical understanding of the model? For example, MRI image restoration

  • @shoopinc
    @shoopinc 26 дней назад +1

    Awesome! Would you cover the Laplace neural operator at a high level like this too?

    • @adamkucera9094
      @adamkucera9094 25 дней назад +1

      You can use this one, just rotate it 90 degrees. 😎

    • @shoopinc
      @shoopinc 23 дня назад

      @@adamkucera9094 hmmm, good idea that might just work

  • @drskelebone
    @drskelebone 25 дней назад

    Are these figures (@6:53 * Zero-shot Super Resolution) calculated on a torus? Maybe you mention the topology later, but I'm curious as to boundary conditions and such.

    • @drskelebone
      @drskelebone 25 дней назад

      "Periodic boundary conditions" @10:04. Ok, thanks, nevermind, thanks for the video!

  • @rito_ghosh
    @rito_ghosh 23 дня назад

    Where are the code and tutorials links?

  • @bobgriffith4352
    @bobgriffith4352 3 месяца назад +2

    FYI, I think that around video 16-24 are in reverse order in the playlist. In particular video 22 (Fourier Neural Op) mentions that it follows 23 (Deep Operator Networks). Great series, though. I find all your work very interesting.

    • @dapper-alien
      @dapper-alien 26 дней назад

      there is some joke flying around having to do with convolutions in the frequency domain and reversing order of your signal here, but im not nerdy enough to catch it.

  • @anonym9323
    @anonym9323 26 дней назад

    But as always great vid ❤ the question for me is where i can try this is there any space were a example is coded?

  • @johnnyt5514
    @johnnyt5514 26 дней назад +1

    Would be very interesting to see if Wavelets could be utilized in that context 🤔.

    • @adamkucera9094
      @adamkucera9094 25 дней назад +1

      Same thought here.

    • @psychii678
      @psychii678 25 дней назад +2

      there exists a paper that had similar SOTA performance using wavelet compression actually. It's just way harder to train and use

  • @chayanontpotawananont9317
    @chayanontpotawananont9317 25 дней назад +1

    Im thinking how this can be applied to LLM research

  • @יעקבמישייב
    @יעקבמישייב 25 дней назад

    I would like to see a network about KAN-kolmogorov-Arnolnd nn

  • @omeadpooladzandi3366
    @omeadpooladzandi3366 22 дня назад

    These don't work well unfortunately. XD nets' work way better.

    • @brianwilfley3567
      @brianwilfley3567 15 дней назад

      Can you provide a reference or repo? Thanks.