Pytorch tutorial for beginners | Pytorch neural network tutorial | Pytorch course

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  • Опубліковано 17 вер 2024
  • Pytorch tutorial for beginners | Pytorch neural network tutorial | Pytorch course
    #pytorch #ai #machinelearning #chatgpt #businessanalysis
    Hello,
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    Pytorch tutorial for beginners
    Pytorch neural network tutorial
    Pytorch course
    Pytorch vs tensorflow
    Pytorch lightning tutorial
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КОМЕНТАРІ • 15

  • @girish-kr
    @girish-kr 2 місяці тому +2

    Good to start from here. Please make some more videos on PyTorch.

  • @geekyprogrammer4831
    @geekyprogrammer4831 9 місяців тому +3

    Please make more videos on PyTorch. You did brilliant job!

  • @thangammarriage3509
    @thangammarriage3509 3 місяці тому

    why do we use test method which has model.eval() within the for loop (epochs)
    epochs = 5
    for t in range(epochs):
    print(f"Epoch {t+1}
    -------------------------------")
    train(train_dataloader, model, loss_fn, optimizer)
    test(test_dataloader, model, loss_fn)
    print("Done!")

  • @ramashishyadav8923
    @ramashishyadav8923 4 місяці тому

    Please make more videos on pytorch

  • @scottsara123
    @scottsara123 10 місяців тому

    Hi Aman. Its interested. please share more vodeos on putorch. Thanks

  • @smdhen9419
    @smdhen9419 10 місяців тому

    Great explanation thanks 🙏

  • @squadgang1678
    @squadgang1678 10 місяців тому

    Thanks bro needed this😅

  • @tvssarkar9568
    @tvssarkar9568 10 місяців тому

    Hi sir,please make video series on dataiku end to end

  • @aadilraf
    @aadilraf 2 місяці тому

    can you please share the link to the ipynb . I dont see it in the link you shared.

  • @atulpurohit638
    @atulpurohit638 12 днів тому

    Sir why we have taken op size 512 here , please reply

  • @Afrin1618
    @Afrin1618 Місяць тому

    I feel pytorch is complicated compared to keras.

  • @Mrroy08657
    @Mrroy08657 10 місяців тому

    Sir for Projects Guidence , how to contact you pls inform me .

    • @UnfoldDataScience
      @UnfoldDataScience  10 місяців тому

      Pls mail me. unfolddatascience@gmail.com

    • @Mrroy08657
      @Mrroy08657 10 місяців тому

      @@UnfoldDataScience
      Thanks Sir.