Tutorial: CUDA programming in Python with numba and cupy

Поділитися
Вставка
  • Опубліковано 20 сер 2024

КОМЕНТАРІ • 77

  • @ErolErten
    @ErolErten 2 роки тому +12

    I have been looking into gpu programming using numba and python for a while, this seems to be the best tutorial I was able to find so far.. . thank you

  • @taj-ulislam6902
    @taj-ulislam6902 4 місяці тому +1

    Definitely a lot of new material not seen else where - not a run-of-the-mill video. Great job on originality.

  • @Omgtired
    @Omgtired 2 роки тому +14

    Thank you so much. Probably the best introdution to CUDA with Python. The example you use, while very basic, touches on usage of blocks, which is usually omitted in other introduction-level tutorials. Great stuff! Hope you return with some more videos. I have subscribed!

    • @kayakMike1000
      @kayakMike1000 Рік тому

      Cuda is bullshit closed source. Just wait for Tenstorrent, it's gonna be HUGE.

  • @andrjo
    @andrjo 3 роки тому +8

    wanted to comment that the information in this presentation is very well structured and the flow is excellent.

  • @kineticraft6977
    @kineticraft6977 Рік тому +1

    This reminds me a lot of the mindset you need to program in assembly.

  • @______373
    @______373 2 роки тому +9

    wait i tought that this made by some popular channel, done pretty well and then saw, 29 subscribers

    • @nickcorn93
      @nickcorn93  2 роки тому +8

      you would be surprised what powerpoint can do. To be honest I don't enjoy making videos that much, it's a lot of work, it always turns out kind of shit (especially audio and webcam quality), and I get nothing in return. But when I encounter a really niche topic that I struggled with myself and I don't find many resources for it I figure I make it myself hopefully such that it may be useful to someone else.

    • @______373
      @______373 2 роки тому

      @@nickcorn93 "nickcorn93
      nickcorn93
      2 hours ago
      you would be surprised what powerpoint can do." not only powerpoint))))))

  • @vallurirajesh
    @vallurirajesh 2 роки тому +11

    Thank you so very much. This is the exact kind of material I was looking for on this very specific subject. Kudos.

  • @sciencewolf963
    @sciencewolf963 2 роки тому +14

    Excellent explanation, keep going with this content man ;)

  • @prietjepruck
    @prietjepruck Рік тому +1

    Really great introduction to GPU programming. I hope you make a new one soon.

  • @ouaililydia3835
    @ouaililydia3835 Рік тому +1

    thank you so much, it is the best explaination i found. Please keep going and give us more information and examples on that

  • @plumberski8854
    @plumberski8854 Рік тому +1

    Great intro for me. Waiting for my new GPU (likely 4060 Ti) for me to dig deeper into Python, CUDA, deep learning ...

  • @shaheeng8034
    @shaheeng8034 5 місяців тому

    Thanks a lot! Still the best guide I could find.

  • @LoneXeaglE
    @LoneXeaglE 2 роки тому +1

    Thank you so much sir, you are an amazing human being !

  • @jakob3267
    @jakob3267 2 роки тому +2

    Really nice video, thank you for sharing!

  • @silkworm6861
    @silkworm6861 2 роки тому +5

    This is a great video!

  • @thousandTabs
    @thousandTabs 2 роки тому +1

    this was such an excellent video, thank you so much!

  • @Shoz_
    @Shoz_ Рік тому +2

    Thank you, this is gold

  • @PhoenixReflex
    @PhoenixReflex 9 місяців тому

    Thank you so much. Keep up the hard work. Just hoping that more and more libraries in python will support GPU computations soon.

  • @terriplays1726
    @terriplays1726 2 роки тому +2

    Thanks for the video, I found the first half and the wrap up really excellent.

  • @leaodev
    @leaodev 2 роки тому +2

    Great video, nick!

  • @ArijitBhattacharya971
    @ArijitBhattacharya971 2 роки тому +1

    wold love to see a video on what are a few CUDA programming challenges

  • @dfrank5157
    @dfrank5157 2 роки тому +3

    This is really helpful for my computing. Thank you.

  • @Zysperro
    @Zysperro 2 роки тому +1

    Just what I needed! Thanks!

  • @therealbatman664
    @therealbatman664 2 роки тому +1

    Thanks a lot really got me started .

  • @localhost_mds
    @localhost_mds Рік тому +1

    thank you. good video!!! it was very helpful

  • @duongkstn
    @duongkstn Рік тому +2

    great tut ! thanks

  • @srepmub
    @srepmub 2 роки тому +2

    fantastic video.

  • @mfatihaydogdu7
    @mfatihaydogdu7 2 роки тому +1

    Very helpful, thank you.

  • @tooniatoonia2830
    @tooniatoonia2830 Рік тому

    Really learnt a lot here, thanks!💪

  • @lfmtube
    @lfmtube 2 роки тому +1

    Perfect Video! Saw was revealing to me to understand how it works. Thank you! I am a new subscriber of your channel. Regards from Buenos Aires, Argentina

  • @user-tx1we1hw8b
    @user-tx1we1hw8b Рік тому +1

    thank you! super helpful

  • @timharris72
    @timharris72 2 роки тому +1

    This was really good. Thanks for posting this!

  • @bitcode_
    @bitcode_ 21 день тому

    quality education

  • @rezidwipradana495
    @rezidwipradana495 2 роки тому +1

    Thank you very much

  • @mattiskardell
    @mattiskardell 7 місяців тому

    Thank you so much

  • @niffoxichere8394
    @niffoxichere8394 2 роки тому

    is it only me or the cooling fan going brrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrr.

  • @taiman9423
    @taiman9423 26 днів тому

    masterclass

  • @nucspartan321
    @nucspartan321 Рік тому +1

    Great video

  • @glenneric1
    @glenneric1 2 роки тому +2

    You say ARRay, I say arRAY. Let's call the whole thing off. But seriously, good stuff.

    • @Julian-tf8nj
      @Julian-tf8nj 2 роки тому

      I kept thinking, "huh? what is he talking about?? Oh, he meant an ARRay!" lol
      Other than that, awesome vid!

    • @nickcorn93
      @nickcorn93  2 роки тому +2

      Interesting, so I've basically been pronouncing array incorrectly my whole life. Will try to watch out for that in the future.

    • @glenneric1
      @glenneric1 Рік тому

      @@nickcorn93 I've heard other people saying it your way too.

    • @rweaver6
      @rweaver6 Рік тому

      ​@@nickcorn93 it was very distracting. Work on it google it and use the pronunciation feature.
      Otherwise outstanding and very useful tutorial.

  • @Khaled_Elsadani
    @Khaled_Elsadani 9 місяців тому

    Thanks for sharing INFO

  • @garywilliams4214
    @garywilliams4214 11 місяців тому

    Great tutorial, Nick! One minor critique: your pronunciation of ‘array’ was confusing…a more standard pronunciation is “uh-RAY”.

  • @user-um9sl1kj6u
    @user-um9sl1kj6u Рік тому +1

    What about if you want to develop a library for neural net work?
    A highly specialized library

  • @svart-rav8072
    @svart-rav8072 16 днів тому

    Hey everyone,
    I followed the code 1 to 1 - and then also then checked with the notebook provided in the video description to make sure it's no mistake in my code-along version
    And the calculation times for the custom code is always significantly slower, then in the video
    Did someone eventually did encounter the same problem or has an explanation for that?

  • @Julian-tf8nj
    @Julian-tf8nj 2 роки тому +1

    VERY helpful, thank you!!!!

  • @AngeloHafner
    @AngeloHafner 9 місяців тому

    Muito bom...

  • @HectorHernandez-ws3el
    @HectorHernandez-ws3el 2 роки тому +1

    Thanks for the video, it isn´t very information about, sorry for my english

  • @wrcz
    @wrcz 2 місяці тому

    all these tutorials using light mode while I learn at night... I'm gonna go blind :X

  • @1Eagler
    @1Eagler 2 роки тому +1

    Very educational. One thing I've missed: The function matmul is running on the PC or the GPU?

  • @zaharkohut7881
    @zaharkohut7881 Рік тому

    Thank you for this tutorial, it has been very helpful! But since it is only an introduction could anyone tell me what I should watch or read next on this topic? Thanks in advance for the advice!

  • @0Clappy
    @0Clappy Рік тому +2

    Can you do a tutorial series on how to accelerate things using cuda python?

    • @nickcorn93
      @nickcorn93  Рік тому

      I've thought about it but it's a lot of work to make and edit a silly video like this, and at the moment I really don't have the time. I don't get anything for making these videos.

  • @richardbennett4365
    @richardbennett4365 Рік тому +1

    Wait. At 12:10, the narrator says the timeit magic function reports a duration of 5 ms, but the number is 0.01 ms from 6 ms. The number us far away from 5 compared to 6. It shoukd be 6 ms if he's rounding, not 5 ms. He's truncating the decimals to arrive at an integer.

    • @nickcorn93
      @nickcorn93  Рік тому +1

      Congratulations, you have invalidated the entire video by spotting this massive mistake ;) !

    • @richardbennett4365
      @richardbennett4365 Рік тому

      @@nickcorn93 🆗.

  • @jakubkahoun8383
    @jakubkahoun8383 2 роки тому +1

    Hi, I m trying this on my local computer, but cannot install Cupy, I have NVida geforece RTX 3060. EDIT: Installed CUDA 11.6 toolkit and it works now.

    • @nickcorn93
      @nickcorn93  2 роки тому

      What is your OS? You may be having issues if you are using windows and pip. Easiest to install cupy in a conda virtual environment, as it will also install the cuda toolkit.

    • @jakubkahoun8383
      @jakubkahoun8383 2 роки тому

      @@nickcorn93 Sorry for bother you, the problem was not installing Cuda Toolkit, srly I hate people who doesnt watch full video closely and ask stupid questions....and now I m one of them :D. Thx alot for this tutorial in 2 months i will try write my own GPU operator for my program, would be interting if this will be faster than CPU. (Btw using normal Visual code in python 3.10 env. on win 11, so far so good. (Altrough i have some code output delay problem when using openCV for some strange reason)

  • @kayakMike1000
    @kayakMike1000 Рік тому +1

    GPUs aren't general purpose... sigh... They are really good at specific executing the same operation on many data banks. It just happens to be similair type of needs for graphics an machine learning

    • @nickcorn93
      @nickcorn93  Рік тому

      Isn't that what I say in this video? Did you even watch it?

  • @gauravdeshpande4298
    @gauravdeshpande4298 Рік тому

    I am unable to install cupyx from pip any help

  • @mateuszanuszewski69
    @mateuszanuszewski69 Місяць тому

    i never really understood how to use numba, the basic explainations in docs didn't help. Good that we have mojo now

  • @jesusmtz29
    @jesusmtz29 6 місяців тому

    Approximate arbitrary function? There are caveats.

  • @billyblackburn864
    @billyblackburn864 2 роки тому +1

    hi, I have a program that I want to translate to numba. could you help me?

    • @nickcorn93
      @nickcorn93  2 роки тому

      - what should the program do?
      - who is the program for?
      - what is it currently written in?

  • @nigmaxus
    @nigmaxus Рік тому

    Cupy does not install well through the use of pip

    • @nickcorn93
      @nickcorn93  Рік тому

      typically it is easier via conda yes.

  • @TheAIEpiphany
    @TheAIEpiphany Рік тому

    Something is seriously off with your fast matmul implementation, it's 3 orders of magnitude slower than the built-in method (12.5 ms vs 8.82 us)?
    You probably have some host-device copying going on?

    • @nickcorn93
      @nickcorn93  Рік тому

      The matmul example shown is the example from the numba documentation so I don't think it's wrong. It's (relatively) slow because matrix multiplication is something that is so common, it is insanely optimized in available implementations. You won't write a matrix multiplication implementation with numba that's faster than cupy. But if you have something custom you need to do, a custom kernel can be faster than a combination of cupy operations.

  • @snapo1750
    @snapo1750 Рік тому +1

    There is a python opencl package (pyopencl)
    a = pyopencl.array.arange(queue, 400, dtype=numpy.float32)
    b = pyopencl.array.arange(queue, 400, dtype=numpy.float32)
    krnl = ReductionKernel(ctx, numpy.float32, neutral="0",
    reduce_expr="a+b", map_expr="x[i]*y[i]",
    arguments="__global float *x, __global float *y")
    my_dot_prod = krnl(a, b).get()
    🙂 Benefit is it works on ALL GPU's not only Nvidia, (works on intel built in cpu gpu's and on amd gpus)