python-bayesian-optimization-doc - 2.0.3-1 main

Pure Python implementation of bayesian global optimization
with gaussian processes. This is a constrained global
optimization package built upon bayesian inference and
gaussian process, that attempts to find the maximum value
of an unknown function in as few iterations as possible.
This technique is particularly suited for optimization of
high cost functions, situations where the balance between
exploration and exploitation is important.
.
This package contains documentation for bayesian-optimization.

Priority: optional
Section: doc
Suites: landing 
Maintainer: Debian Python Team <team+python [꩜] tracker.debian.org>
 
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Installed Size: 28.1 MB
Architectures: all 

 

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2.0.3-1 all