# Usage In this visualizer you can visualize gaussian processes with different kernels on different datasets. --- ### Dataset Generate or upload a dataset to train on. If generating, enter a function and the visualizer will sample points uniformly in the domain based on the settings. --- ### Model Here you can specify the gaussian process kernel, and whether to use the prior or posterior. For specifying kernels, you must use the sci-kit Learn API - see --- ### Kernel examples * RBF() * RBF(length_scale=1, length_scale_bounds="fixed") * RBF(length_scale=100, length_scale_bounds="fixed") + WhiteKernel() * ConstantKernel()*DotProduct(sigma_0=0, sigma_0_bounds="fixed") + WhiteKernel()