How to Install and Uninstall metslib-devel.noarch Package on AlmaLinux 9
Last updated: November 28,2024
1. Install "metslib-devel.noarch" package
Please follow the guidance below to install metslib-devel.noarch on AlmaLinux 9
$
sudo dnf update
Copied
$
sudo dnf install
metslib-devel.noarch
Copied
2. Uninstall "metslib-devel.noarch" package
Learn how to uninstall metslib-devel.noarch on AlmaLinux 9:
$
sudo dnf remove
metslib-devel.noarch
Copied
$
sudo dnf autoremove
Copied
3. Information about the metslib-devel.noarch package on AlmaLinux 9
Last metadata expiration check: 1:52:40 ago on Wed Mar 13 07:41:12 2024.
Available Packages
Name : metslib-devel
Version : 0.5.3
Release : 26.el9
Architecture : noarch
Size : 39 k
Source : metslib-0.5.3-26.el9.src.rpm
Repository : epel
Summary : Metaheuristic modeling framework and optimization toolkit in modern C++
URL : https://projects.coin-or.org/metslib
License : GPLv3+ or CPL
Description : METSlib is a metaheuristic modeling framework and optimization toolkit in
: modern C++ released as Free/Libre/Open Source Software.
:
: Model and algorithms are modular: any search algorithm can be applied to the
: same model. On the other hand no assumption is made on the model, you can
: work on any problem type: timetabling, assignment problems, vehicle routing,
: bin-packing and so on.
:
: Once you have implemented your model in the problem framework, the library
: makes easy testing different Tabu Search strategies or even different
: algorithms (Simulated Annealing or other local search based algorithms) with
: a few lines of code.
Available Packages
Name : metslib-devel
Version : 0.5.3
Release : 26.el9
Architecture : noarch
Size : 39 k
Source : metslib-0.5.3-26.el9.src.rpm
Repository : epel
Summary : Metaheuristic modeling framework and optimization toolkit in modern C++
URL : https://projects.coin-or.org/metslib
License : GPLv3+ or CPL
Description : METSlib is a metaheuristic modeling framework and optimization toolkit in
: modern C++ released as Free/Libre/Open Source Software.
:
: Model and algorithms are modular: any search algorithm can be applied to the
: same model. On the other hand no assumption is made on the model, you can
: work on any problem type: timetabling, assignment problems, vehicle routing,
: bin-packing and so on.
:
: Once you have implemented your model in the problem framework, the library
: makes easy testing different Tabu Search strategies or even different
: algorithms (Simulated Annealing or other local search based algorithms) with
: a few lines of code.