How to Install and Uninstall root-tmva.x86_64 Package on Fedora 38
Last updated: November 20,2024
1. Install "root-tmva.x86_64" package
This tutorial shows how to install root-tmva.x86_64 on Fedora 38
$
sudo dnf update
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$
sudo dnf install
root-tmva.x86_64
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2. Uninstall "root-tmva.x86_64" package
Here is a brief guide to show you how to uninstall root-tmva.x86_64 on Fedora 38:
$
sudo dnf remove
root-tmva.x86_64
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$
sudo dnf autoremove
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3. Information about the root-tmva.x86_64 package on Fedora 38
Last metadata expiration check: 0:31:45 ago on Sat Mar 16 16:59:57 2024.
Available Packages
Name : root-tmva
Version : 6.30.04
Release : 1.fc38
Architecture : x86_64
Size : 2.1 M
Source : root-6.30.04-1.fc38.src.rpm
Repository : updates
Summary : Toolkit for multivariate data analysis
URL : https://root.cern/
License : BSD-3-Clause
Description : The Toolkit for Multivariate Analysis (TMVA) provides a
: ROOT-integrated environment for the parallel processing and
: evaluation of MVA techniques to discriminate signal from background
: samples. It presently includes (ranked by complexity):
:
: * Rectangular cut optimization
: * Correlated likelihood estimator (PDE approach)
: * Multi-dimensional likelihood estimator (PDE - range-search approach)
: * Fisher (and Mahalanobis) discriminant
: * H-Matrix (chi-squared) estimator
: * Artificial Neural Network (two different implementations)
: * Boosted Decision Trees
:
: The TMVA package includes an implementation for each of these
: discrimination techniques, their training and testing (performance
: evaluation). In addition all these methods can be tested in parallel,
: and hence their performance on a particular data set may easily be
: compared.
Available Packages
Name : root-tmva
Version : 6.30.04
Release : 1.fc38
Architecture : x86_64
Size : 2.1 M
Source : root-6.30.04-1.fc38.src.rpm
Repository : updates
Summary : Toolkit for multivariate data analysis
URL : https://root.cern/
License : BSD-3-Clause
Description : The Toolkit for Multivariate Analysis (TMVA) provides a
: ROOT-integrated environment for the parallel processing and
: evaluation of MVA techniques to discriminate signal from background
: samples. It presently includes (ranked by complexity):
:
: * Rectangular cut optimization
: * Correlated likelihood estimator (PDE approach)
: * Multi-dimensional likelihood estimator (PDE - range-search approach)
: * Fisher (and Mahalanobis) discriminant
: * H-Matrix (chi-squared) estimator
: * Artificial Neural Network (two different implementations)
: * Boosted Decision Trees
:
: The TMVA package includes an implementation for each of these
: discrimination techniques, their training and testing (performance
: evaluation). In addition all these methods can be tested in parallel,
: and hence their performance on a particular data set may easily be
: compared.