The paper proposes a combination of the subdomain deflation method and local algebraic multigrid as a scalable distributed memory preconditioner that is able to solve large linear systems of equations. The implementation of the algorithm is made available for the community as part of an open source AMGCL library. The solution targets both homogeneous (CPU-only) and heterogeneous (CPU/GPU) systems, employing hybrid MPI/OpenMP approach in the former and a combination of MPI, OpenMP, and CUDA in the latter cases. The use of OpenMP minimizes the number of MPI processes, thus reducing the communication overhead of the deflation method and improving both weak and strong scalability of the preconditioner. The examples of scalar (single degree of f...
Linear solvers for large and sparse systems are a key element of scientific applications, and their ...
The development of high performance, massively parallel computers and the increasing demands of comp...
Algebraic multigrid (AMG) solvers have proven to be extremely efficient on distributed-memory archit...
The final publication is available at Springer via http://dx.doi.org/10.1134/S1995080220040071The pa...
The algebraic multigrid (AMG) approach provides a purely algebraic means to tackle the efficient sol...
Many scientific applications require the solution of large and sparse linear systems of equations us...
The Algebraic Multigrid (AMG) method has over the years developed into an ecient tool for solving un...
This paper deals with the implementation and performance analysis of a parallel Algebraic Multigrid ...
Algebraic multigrid (AMG) is one of the most effective iterative methods for the solution of large, ...
In this work we study the implementations of deflation and preconditioning techniques for solving il...
Fully implicit petroleum reservoir simulations result in huge, often very ill-conditioned linear sys...
This thesis introduces the AscAMG preconditioner, a parallel Algebraic Multigrid Preconditioner for ...
In modern large-scale supercomputing applications, Algebraic Multigrid (AMG) is a leading choice for...
International audienceWe illustrate how the distributed parallel Algebraic Recursive Multilevel Solv...
This work presents a parallel Navier-Stokes solver for the large-scale direct numerical simulation (...
Linear solvers for large and sparse systems are a key element of scientific applications, and their ...
The development of high performance, massively parallel computers and the increasing demands of comp...
Algebraic multigrid (AMG) solvers have proven to be extremely efficient on distributed-memory archit...
The final publication is available at Springer via http://dx.doi.org/10.1134/S1995080220040071The pa...
The algebraic multigrid (AMG) approach provides a purely algebraic means to tackle the efficient sol...
Many scientific applications require the solution of large and sparse linear systems of equations us...
The Algebraic Multigrid (AMG) method has over the years developed into an ecient tool for solving un...
This paper deals with the implementation and performance analysis of a parallel Algebraic Multigrid ...
Algebraic multigrid (AMG) is one of the most effective iterative methods for the solution of large, ...
In this work we study the implementations of deflation and preconditioning techniques for solving il...
Fully implicit petroleum reservoir simulations result in huge, often very ill-conditioned linear sys...
This thesis introduces the AscAMG preconditioner, a parallel Algebraic Multigrid Preconditioner for ...
In modern large-scale supercomputing applications, Algebraic Multigrid (AMG) is a leading choice for...
International audienceWe illustrate how the distributed parallel Algebraic Recursive Multilevel Solv...
This work presents a parallel Navier-Stokes solver for the large-scale direct numerical simulation (...
Linear solvers for large and sparse systems are a key element of scientific applications, and their ...
The development of high performance, massively parallel computers and the increasing demands of comp...
Algebraic multigrid (AMG) solvers have proven to be extremely efficient on distributed-memory archit...