Many scientific applications require the solution of large and sparse linear systems of equations using Krylov subspace methods; in this case, the choice of an effective preconditioner may be crucial for the convergence of the Krylov solver. Algebraic MultiGrid (AMG) methods are widely used as preconditioners, because of their optimal computational cost and their algorithmic scalability. The wide availability of GPUs, now found in many of the fastest supercomputers, poses the problem of implementing efficiently these methods on high-throughput processors. In this work we focus on the application phase of AMG preconditioners, and in particular on the choice and implementation of smoothers and coarsest-level solvers capable of exploiting the ...
This contribution outlines an approach that draws on general purpose graphics processing unit (GPGPU...
Abstract. Algebraic multigrid methods for large, sparse linear systems are a necessity in many compu...
The Algebraic Multigrid (AMG) method has over the years developed into an ecient tool for solving un...
Many scientific applications require the solution of large and sparse linear systems of equations us...
Many scientific applications require the solution of large and sparse linear systems of equations us...
We describe main issues and design principles of an efficient implementation, tailored to recent gen...
Abstract. Linear systems are required to solve in many scientific applications and the solution of t...
We present an efficient, robust and fully GPU-accelerated aggregation-based al-gebraic multigrid pre...
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 ...
Simulation with models based on partial differential equations often requires the solution of (seque...
In modern large-scale supercomputing applications, Algebraic Multigrid (AMG) is a leading choice for...
Fully implicit petroleum reservoir simulations result in huge, often very ill-conditioned linear sys...
The numerical simulations of real-world engineering problems create models with several millions or ...
Algebraic multigrid (AMG) is one of the most effective iterative methods for the solution of large, ...
This contribution outlines an approach that draws on general purpose graphics processing unit (GPGPU...
Abstract. Algebraic multigrid methods for large, sparse linear systems are a necessity in many compu...
The Algebraic Multigrid (AMG) method has over the years developed into an ecient tool for solving un...
Many scientific applications require the solution of large and sparse linear systems of equations us...
Many scientific applications require the solution of large and sparse linear systems of equations us...
We describe main issues and design principles of an efficient implementation, tailored to recent gen...
Abstract. Linear systems are required to solve in many scientific applications and the solution of t...
We present an efficient, robust and fully GPU-accelerated aggregation-based al-gebraic multigrid pre...
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 ...
Simulation with models based on partial differential equations often requires the solution of (seque...
In modern large-scale supercomputing applications, Algebraic Multigrid (AMG) is a leading choice for...
Fully implicit petroleum reservoir simulations result in huge, often very ill-conditioned linear sys...
The numerical simulations of real-world engineering problems create models with several millions or ...
Algebraic multigrid (AMG) is one of the most effective iterative methods for the solution of large, ...
This contribution outlines an approach that draws on general purpose graphics processing unit (GPGPU...
Abstract. Algebraic multigrid methods for large, sparse linear systems are a necessity in many compu...
The Algebraic Multigrid (AMG) method has over the years developed into an ecient tool for solving un...