py311-GPyOpt
1.2.6_2Bayesian optimization toolbox based on GPy
GPyOpt is a Python open-source library for Bayesian Optimization developed by the Machine Learning group of the University of Sheffield. It is based on GPy, a Python framework for Gaussian process modelling. With GPyOpt you can: * Automatically configure your models and Machine Learning algorithms. * Design your wet-lab experiments saving time and money. Among other functionalities, with GPyOpt you can design experiments in parallel, use cost models and mix different types of variables in your designs. Many users already use GpyOpt for research purposes.
Origin: science/py-GPyOpt
Category: science
Size: 906KiB
License: BSD3CLAUSE
Maintainer: yuri@FreeBSD.org
Dependencies: 4 packages
Required by: 0 packages
Website: sheffieldml.github.io/GPyOpt
$
pkg install py311-GPyOptDependencies (4)
More in science
py311-scipy1.11.1_4,1
Scientific tools for Pythonhdf51.12.2_2,1
Hierarchical Data Format library (from NCSA) (latest)py311-scikit-learn1.7.2
Machine learning algorithms for pythonlibaec1.1.4
Adaptive entropy coding librarynetcdf4.9.3
C library for machine-independent, array-oriented data accesspy311-h5py3.15.1
General-purpose Python interface to the HDF5 libraryp5-Chemistry-Mol0.40
Perl toolkit to describe moleculeslibxc6.2.2
Library of exchange-correlation functionals for DFTpy311-libpysal4.13.0
Core components of PySAL A library of spatial analysis functionspy311-dimod0.12.21
DWave: Shared API for QUBO/Ising samplers