This article has two main objectives: one is to describe some extensions of an adaptive Algebraic Multigrid (AMG) method of the form previously proposed by the first and third authors, and a second one is to present a new software framework, named BootCMatch, which implements all the components needed to build and apply the described adaptive AMG both as a stand-alone solver and as a preconditioner in a Krylov method. The adaptive AMG presented is meant to handle general symmetric and positive definite (SPD) sparse linear systems, without assuming any a priori information of the problem and its origin; the goal of adaptivity is to achieve a method with a prescribed convergence rate. The presented method exploits a general coarsening process...
Many scientific applications require the solution of large and sparse linear systems of equations us...
We focus on the extension of the MLD2P4 package of parallel Algebraic MultiGrid (AMG) preconditioner...
Multigrid methods are often the most efficient approaches for solving the very large linear systems...
This article has two main objectives: one is to describe some extensions of an adaptive Algebraic Mu...
This article has two main objectives: one is to describe some extensions of an adaptive Algebraic Mu...
We describe main issues and design principles of an efficient implementation, tailored to recent gen...
Linear solvers for large and sparse systems are a key element of scientific applications, and their ...
Linear solvers for large and sparse systems are a key element of scientific applications, and their ...
In the last two decades, substantial effort has been devoted to solve large systems of linear equati...
thesisThe algebraic multigrid (AMG) method is often used as a preconditioner in Krylov subspace solv...
In modern large-scale supercomputing applications, Algebraic Multigrid (AMG) is a leading choice for...
This is an original software publication. The software is certified by Ocean Code and is freely avai...
Algebraic multigrid (AMG) is a popular iterative solver and preconditioner for large sparse linear s...
Algebraic multigrid (AMG) solves linear systems based on multigrid principles, but in a way that onl...
Many scientific applications require the solution of large and sparse linear systems of equations us...
We focus on the extension of the MLD2P4 package of parallel Algebraic MultiGrid (AMG) preconditioner...
Multigrid methods are often the most efficient approaches for solving the very large linear systems...
This article has two main objectives: one is to describe some extensions of an adaptive Algebraic Mu...
This article has two main objectives: one is to describe some extensions of an adaptive Algebraic Mu...
We describe main issues and design principles of an efficient implementation, tailored to recent gen...
Linear solvers for large and sparse systems are a key element of scientific applications, and their ...
Linear solvers for large and sparse systems are a key element of scientific applications, and their ...
In the last two decades, substantial effort has been devoted to solve large systems of linear equati...
thesisThe algebraic multigrid (AMG) method is often used as a preconditioner in Krylov subspace solv...
In modern large-scale supercomputing applications, Algebraic Multigrid (AMG) is a leading choice for...
This is an original software publication. The software is certified by Ocean Code and is freely avai...
Algebraic multigrid (AMG) is a popular iterative solver and preconditioner for large sparse linear s...
Algebraic multigrid (AMG) solves linear systems based on multigrid principles, but in a way that onl...
Many scientific applications require the solution of large and sparse linear systems of equations us...
We focus on the extension of the MLD2P4 package of parallel Algebraic MultiGrid (AMG) preconditioner...
Multigrid methods are often the most efficient approaches for solving the very large linear systems...