import tensorflow as tf from ..inducing_variables import InducingPoints, Multiscale, InducingPatches from ..kernels import Kernel, SquaredExponential, Convolutional from .dispatch import Kuu from ..config import default_float @Kuu.register(InducingPoints, Kernel) def _Kuu(inducing_variable: InducingPoints, kernel: Kernel, *, jitter=0.0): Kzz = kernel(inducing_variable.Z) Kzz += jitter * tf.eye(len(inducing_variable), dtype=Kzz.dtype) return Kzz @Kuu.register(Multiscale, SquaredExponential) def _Kuu(inducing_variable: Multiscale, kernel: SquaredExponential, *, jitter=0.0): Zmu, Zlen = kernel.slice(inducing_variable.Z, inducing_variable.scales) idlengthscale2 = tf.square(kernel.lengthscale + Zlen) sc = tf.sqrt(idlengthscale2[None, ...] + idlengthscale2[:, None, ...] - kernel.lengthscale ** 2) d = inducing_variable._cust_square_dist(Zmu, Zmu, sc) Kzz = kernel.variance * tf.exp(-d / 2) * tf.reduce_prod( kernel.lengthscale / sc, 2) Kzz += jitter * tf.eye(len(inducing_variable), dtype=Kzz.dtype) return Kzz @Kuu.register(InducingPatches, Convolutional) def _Kuu(feat, kern, jitter=0.0): return kern.basekern.K(feat.Z) + jitter * tf.eye(len(feat), dtype=default_float())