4.5.2: Multi-layer perceptrons - Deep neural networks for non linear data

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In this video you will go beyond the single perceptron (neuron) and combine multiple such that they can find patterns in more complex input training data that may be non linear. Learn about layers of neurons and how they can be combined into multi layer perceptrons or deep neural networks along with the tradeoffs of doing so. Learn through actual exercises to find the sweet spot that provides a good balance between minimizing loss and computational complexity of the network to give you the best results.

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