miguelvanegas-c/NeuralNetworks
Neural networks and CNNs implemented from scratch. Covers backpropagation, activation functions, loss optimization and convolutional architectures with inductive bias analysis. Trained on MNIST and CIFAR-10 datasets.
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Feb 10, 2026
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