import tensorflow as tf from ..base import TensorLike from ..inducing_variables import InducingPoints, Multiscale, InducingPatches from ..kernels import Kernel, SquaredExponential, Convolutional from .dispatch import Kuf @Kuf.register(InducingPoints, Kernel, TensorLike) def Kuf_kernel_inducingpoints(inducing_variable: InducingPoints, kernel: Kernel, Xnew): return kernel(inducing_variable.Z, Xnew) @Kuf.register(Multiscale, SquaredExponential, TensorLike) def Kuf_sqexp_multiscale(inducing_variable: Multiscale, kernel: SquaredExponential, Xnew): Xnew, _ = kernel.slice(Xnew, None) Zmu, Zlen = kernel.slice(inducing_variable.Z, inducing_variable.scales) idlengthscales = kernel.lengthscales + Zlen d = inducing_variable._cust_square_dist(Xnew, Zmu, idlengthscales) lengthscales = tf.reduce_prod(kernel.lengthscales / idlengthscales, 1) lengthscales = tf.reshape(lengthscales, (1, -1)) return tf.transpose(kernel.variance * tf.exp(-0.5 * d) * lengthscales) @Kuf.register(InducingPatches, Convolutional, object) def Kuf_conv_patch(feat, kern, Xnew): Xp = kern.get_patches(Xnew) # [N, num_patches, patch_len] bigKzx = kern.base_kernel.K(feat.Z, Xp) # [M, N, P] -- thanks to broadcasting of kernels Kzx = tf.reduce_sum(bigKzx * kern.weights if hasattr(kern, "weights") else bigKzx, [2]) return Kzx / kern.num_patches