
Data Science and Machine Learning (Theory and Projects) A to Z - RNN Implementation: Automatic Differentiation PyTorch
Interactive Video
•
Computers
•
11th - 12th Grade
•
Hard
Wayground Content
FREE Resource
The video tutorial introduces automatic differentiation in PyTorch, focusing on defining and optimizing loss functions. It explains manual gradient computation and demonstrates how PyTorch automates this process using tensors and the backward method. The tutorial covers setting up parameters for gradient computation and highlights the simplicity of using PyTorch for complex neural network architectures. The video concludes with a brief overview of building neural networks using automatic differentiation.
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