Known Unknown
Known Unknown
  • Видео 5
  • Просмотров 837
Neural net in PyTorch - Backprop (code)
This video contains the implementation part of the backpropagation algorithm in PyTorch. We will be coding the derivatives and then running the full-fledged neural network on the MNIST dataset to calculate the accuracy.
Please do watch the previous derivation video, to make sense of what we are actually coding over here.
Hope you all like it. 😁😁
#education #pytorch #computerscience #machinelearning #coding #programming #maths #python
Просмотров: 105

Видео

Neural net in PyTorch - Backprop (Theory)
Просмотров 46Месяц назад
This video includes an depth explanation of the backpropagation algorithm and its working. Here we compute all the derivatives of the loss used in backprop, from scratch. Computing the derivatives from scratch helps to understand how the machine learning model actually learns by minimizing the loss. This video includes the under-the-hood working of PyTorch neural net layers. Hope you all enjoy ...
Neural nets from scratch in PyTorch - Part 1 (Forward prop)
Просмотров 2162 месяца назад
This video contains an implementation of a simple fully connected neural net (FCNN) from scratch in PyTorch without the use of any in-built functions. This part contains the implementation of the first half of neural networks ie. forward propagation and loss calculation. Feedback is much welcome. Hope you all like it. 😁
Activation Functions - Basics
Просмотров 1626 месяцев назад
This video summarises the whats and whys of the activation function. Activation functions form one of the pillars of the Deep Learning framework. Going over this video will help you understand one of the fundamentals of deep learning. Hope you enjoy the content. Do let me know your feedback in the comment section.
In's and Out's of attention
Просмотров 3087 месяцев назад
This video covers Attention models more intuitively and practically including minute details that are either left out or forgotten. Attention forms the core of transformers which are currently everywhere. I have tried to cover the heart of transformers both mathematically, and conceptually. Let me know if the code and the slides are required in the comment sections. Feedback is always welcome. 😁😁

Комментарии

  • @100MsGaming
    @100MsGaming Месяц назад

    Hi When are you planning to upload new video

  • @UsernameDisplay
    @UsernameDisplay Месяц назад

    It would be helpful if you mention the prerequisite and target audience for these videos in the description. or if you even mention it in the start of the video.

  • @harshitverma1444
    @harshitverma1444 2 месяца назад

    Insightful 🤯

  • @ShreyaSingh-wj8ie
    @ShreyaSingh-wj8ie 2 месяца назад

    Well-explained!

  • @inugr8
    @inugr8 2 месяца назад

    intriguing :)

  • @anujshukla104
    @anujshukla104 6 месяцев назад

    Good work....keep making such videos .💯💯

  • @prashantkulkarni6344
    @prashantkulkarni6344 6 месяцев назад

    Thanks a ton for breaking down transformer implementation!!

  • @prashantkulkarni6344
    @prashantkulkarni6344 6 месяцев назад

    Amazing video..I've watched several videos on activation functions before, but yours is by far the most understandable.

  • @mrrock7229
    @mrrock7229 7 месяцев назад

    perfect explaintion

  • @not_amanullah
    @not_amanullah 7 месяцев назад

    Thanks ❤

  • @sneakpeakt22108
    @sneakpeakt22108 7 месяцев назад

    Nice explanation ❤

  • @anujshukla104
    @anujshukla104 7 месяцев назад

    Good work....keep making videos..❤❤❤❤

  • @inugr8
    @inugr8 7 месяцев назад

    Wow, this is incredibly captivating!

  • @RakhiPandey-sm6cc
    @RakhiPandey-sm6cc 7 месяцев назад

    All the best👍

  • @ShreyaSingh-wj8ie
    @ShreyaSingh-wj8ie 7 месяцев назад

    Keep Growing✨ All the best.