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importantSYS.SOURCE: Orazio Rillo Home Projects Blog2026-07-11T16:05:56Z

Mechanics of loss.backward() in Neural Network Training

The article explains the inner workings of loss.backward() in PyTorch, focusing on automatic differentiation and backpropagation. It highlights reverse-mode AD's efficiency for neural networks with many parameters.

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