BackpropNeuralNet.jl

BackpropNeuralNet.jl

BackpropNeuralNet.jl is a robust deep learning software developed in Julia, featuring a customizable neural network architecture. Users can effortlessly initialize networks with various configurations, such as 2 inputs, 3 neurons in a hidden layer, and 2 outputs. It integrates feedback-driven improvements, ensuring an adaptive and user-centric experience.

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