py311-GPy
1.13.2_1Gaussian process toolbox
GPy is a Gaussian Process (GP) framework written in python, from the Sheffield machine learning group. Gaussian processes underpin range of modern machine learning algorithms. In GPy, we've used python to implement a range of machine learning algorithms based on GPs.
Origin: science/py-GPy
Category: science
Size: 15.2MiB
License: BSD3CLAUSE
Maintainer: yuri@FreeBSD.org
Dependencies: 5 packages
Required by: 1 packages
Website: sheffieldml.github.io/GPy
$
pkg install py311-GPyDependencies (5)
Required By (1 packages)
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