AbstractThe solution of linear systems continues to play an important role in scientific computing. The problems to be solved often are of very large size, so that solving them requires large computer resources. To solve these problems, at least supercomputers with large shared memory or massive parallel computer systems with distributed memory are needed.This paper gives a survey of research on parallel implementation of various direct methods to solve dense linear systems. In particular are considered: Gaussian elimination, Gauss-Jordan elimination and a variant due to Huard (1979), and an algorithm due to Enright (1978), designed in relation to solving (stiff) ODEs, such that stepsize and other method parameters can easily be varied.Some...
AbstractThis paper gives a classification for the triangular factorization of square matrices. These...
This dissertation proposes a new technique for efficient parallel solution of very large linear syst...
In practice, many large-scale linear programming problems are too large to be solved effectively due...
AbstractThe solution of linear systems continues to play an important role in scientific computing. ...
[[abstract]]In this paper we use hypercube computers for solving linear systems. First, the pivoting...
This paper provides an introduction to algorithms for fundamental linear algebra problems on various...
A new family of parallel schemes for directly solving linear systems is presented and analyzed. It i...
AbstractIn this paper we present two efficient algorithms for the parallel solution of n × n dense l...
AbstractIn this paper, a variant of Gaussian Elimination (GE) called Successive Gaussian Elimination...
The need to solve large sparse linear systems of equations efficiently lies at the heart of many app...
This paper provides an introduction to algorithms for fundamental linear algebra problems on various...
AbstractWe propose several implementations of Gaussian elimination for solving banded linear systems...
this paper, we give a block algorithm for the Gauss-Huard elimination. For distributed memory system...
Solving linear systems with multiple variables is at the core of many scienti…c problems. Parallel p...
In this paper, we present the main algorithmic features in the software package SuperLU_DIST, a dis...
AbstractThis paper gives a classification for the triangular factorization of square matrices. These...
This dissertation proposes a new technique for efficient parallel solution of very large linear syst...
In practice, many large-scale linear programming problems are too large to be solved effectively due...
AbstractThe solution of linear systems continues to play an important role in scientific computing. ...
[[abstract]]In this paper we use hypercube computers for solving linear systems. First, the pivoting...
This paper provides an introduction to algorithms for fundamental linear algebra problems on various...
A new family of parallel schemes for directly solving linear systems is presented and analyzed. It i...
AbstractIn this paper we present two efficient algorithms for the parallel solution of n × n dense l...
AbstractIn this paper, a variant of Gaussian Elimination (GE) called Successive Gaussian Elimination...
The need to solve large sparse linear systems of equations efficiently lies at the heart of many app...
This paper provides an introduction to algorithms for fundamental linear algebra problems on various...
AbstractWe propose several implementations of Gaussian elimination for solving banded linear systems...
this paper, we give a block algorithm for the Gauss-Huard elimination. For distributed memory system...
Solving linear systems with multiple variables is at the core of many scienti…c problems. Parallel p...
In this paper, we present the main algorithmic features in the software package SuperLU_DIST, a dis...
AbstractThis paper gives a classification for the triangular factorization of square matrices. These...
This dissertation proposes a new technique for efficient parallel solution of very large linear syst...
In practice, many large-scale linear programming problems are too large to be solved effectively due...