A network of "neurons" on different layers, where each neuron is a function of the neurons in the previous layer.
The input is any set of numbers, and the output is usually a classification, the
percentage chance that is each of various categories.
The way the coefficients of a function are set is by training the neural network with training data, basically questions you know the answers to. Uses a loss function to determine how far off the answer the AI comes up with are from the real answer, and using gradient descent (goes down the path of the function with the steepest partial
derivative) to find the minimum value of the loss function (most correct answers) to find the coefficients of the function that lead
to the highest accuracy
I made this epic AI
project that does censored- cant share future startup secrets
Why are people so scared of AI? it is
literally just y = mx + b but it decides the m and b