The concept of supernodes, originally developed to accelerate direct solution methods for linear systems, is generalized to block factorized sparse approximate inverse (Block FSAI) preconditioning of non-symmetric linear systems. It is shown that aggregating the unknowns in clusters that are processed together is particularly useful both to reduce the cost for the preconditioner setup and accelerate the convergence of the iterative solver. A set of numerical experiments performed on matrices arising from the meshfree discretization of 2D and 3D potential problems, where a very large number of nodal contacts is usually found, shows that the supernodal Block FSAI preconditioner outperforms the native algorithm and exhibits a much more stable ...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
AbstractKrylov methods preconditioned by Factorized Sparse Approximate Inverses (FSAI) are an effici...
Krylov methods preconditioned by Factorized Sparse Approximate Inverses (FSAI) are an efficient appr...
The efficient solution to nonsymmetric linear systems is still an open issue, especially on parallel...
AbstractKrylov methods preconditioned by Factorized Sparse Approximate Inverses (FSAI) are an effici...
This paper is concerned with a new approach to preconditioning for large, sparse linear systems. A p...
The efficient solution to non-symmetric linear systems is still an open issue on parallel computers....
The efficient solution to non-symmetric linear systems is still an open issue on parallel computers....
. This paper is concerned with a new approach to preconditioning for large, sparse linear systems. A...
Abstract. Motivated by the paper [16], where the authors proposed a method to solve a symmet-ric pos...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
AbstractKrylov methods preconditioned by Factorized Sparse Approximate Inverses (FSAI) are an effici...
Krylov methods preconditioned by Factorized Sparse Approximate Inverses (FSAI) are an efficient appr...
The efficient solution to nonsymmetric linear systems is still an open issue, especially on parallel...
AbstractKrylov methods preconditioned by Factorized Sparse Approximate Inverses (FSAI) are an effici...
This paper is concerned with a new approach to preconditioning for large, sparse linear systems. A p...
The efficient solution to non-symmetric linear systems is still an open issue on parallel computers....
The efficient solution to non-symmetric linear systems is still an open issue on parallel computers....
. This paper is concerned with a new approach to preconditioning for large, sparse linear systems. A...
Abstract. Motivated by the paper [16], where the authors proposed a method to solve a symmet-ric pos...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...
The Factorized Sparse Approximate Inverse (FSAI) is an efficient technique for preconditioning paral...