In this paper, we present the main algorithmic features in the software package SuperLU{_}DIST, a distributed-memory sparse direct solver for large sets of linear equations. We give in detail our parallelization strategies, with focus on scalability issues, and demonstrate the parallel performance and scalability on current machines. The solver is based on sparse Gaussian elimination, with an innovative static pivoting strategy proposed earlier by the authors. The main advantage of static pivoting over classical partial pivoting is that it permits a priori determination of data structures and communication pattern for sparse Gaussian elimination, which makes it more scalable on distributed memory machines. Based on this a priori knowledge, ...
This thesis presents a parallel algorithm for the direct LU factorization of general unsymmetric spa...
This thesis presents a parallel algorithm for the direct LU factorization of general unsymmetric spa...
International audienceDirect methods for the solution of sparse systems of linear equations of the f...
In this paper, we present the main algorithmic features in the software package SuperLU_DIST, a dis...
In this paper, we present the main algorithmic features in the software package SuperLU DIST, a dis...
The need to solve large sparse linear systems of equations efficiently lies at the heart of many app...
This paper provides a comprehensive study and comparison of two state-of-the-art direct solvers for ...
We give an overview of the algorithms, design philosophy, and implementation techniques in the soft...
The paper deals with parallel approach for the numerical solution of large, sparse, non-symmetric sy...
It is important to have a fast, robust and scalable algorithm to solve a sparse linear system AX=B. ...
We propose several techniques as alternatives to partial pivoting to stabilize sparse Gaussian elimi...
. Solving large nonsymmetric sparse linear systems on distributed memory multiprocessors is an activ...
The paper deals with parallel approach for the numerical solution of large, sparse, non-symmetric sy...
. Solving large nonsymmetric sparse linear systems on distributed memory multiprocessors is an activ...
In this paper we present a new parallel algorithm for the LU decomposition of a general sparse matri...
This thesis presents a parallel algorithm for the direct LU factorization of general unsymmetric spa...
This thesis presents a parallel algorithm for the direct LU factorization of general unsymmetric spa...
International audienceDirect methods for the solution of sparse systems of linear equations of the f...
In this paper, we present the main algorithmic features in the software package SuperLU_DIST, a dis...
In this paper, we present the main algorithmic features in the software package SuperLU DIST, a dis...
The need to solve large sparse linear systems of equations efficiently lies at the heart of many app...
This paper provides a comprehensive study and comparison of two state-of-the-art direct solvers for ...
We give an overview of the algorithms, design philosophy, and implementation techniques in the soft...
The paper deals with parallel approach for the numerical solution of large, sparse, non-symmetric sy...
It is important to have a fast, robust and scalable algorithm to solve a sparse linear system AX=B. ...
We propose several techniques as alternatives to partial pivoting to stabilize sparse Gaussian elimi...
. Solving large nonsymmetric sparse linear systems on distributed memory multiprocessors is an activ...
The paper deals with parallel approach for the numerical solution of large, sparse, non-symmetric sy...
. Solving large nonsymmetric sparse linear systems on distributed memory multiprocessors is an activ...
In this paper we present a new parallel algorithm for the LU decomposition of a general sparse matri...
This thesis presents a parallel algorithm for the direct LU factorization of general unsymmetric spa...
This thesis presents a parallel algorithm for the direct LU factorization of general unsymmetric spa...
International audienceDirect methods for the solution of sparse systems of linear equations of the f...