Essential Differentiation Rules for Neural Networks
The essential differentiation rules are a handful of formulas that turn any function into its derivative: the power rule, the product and quotient rules, and the rules for the exponential and the logarithm. With them, plus the chain rule, a neural network computes gradients and learns by adjusting its weights.