Efficient iterative solution of large linear systems on grid computers is a complex problem. The induced heterogeneity and volatile nature of the aggregated computational resources present numerous algorithmic challenges. This paper describes a case study regarding iterative solution of large sparse linear systems on grid computers within the software constraints of the grid middleware GridSolve and within the algorithmic constraints of preconditioned Conjugate Gradient (CG) type methods. We identify the various bottlenecks induced by the middleware and the iterative algorithm. We consider the standard CG algorithm of Hestenes and Stiefel, and as an alternative the Chronopoulos/Gear variant, a formulation that is potentially better suited f...
For the solution of discretized ordinary or partial differential equations it is necessary to solve ...
© 2014 Technical University of Munich (TUM).The conjugate gradient (CG) is one of the most widely us...
This paper deals with background and practical experience with preconditioned gradient methods for s...
This dissertation deals mainly with the design, implementation, and analysis of efficient iterative ...
In this paper we describe an efficient iterative algorithm for solving large sparse linear systems o...
Parallel asynchronous iterative algorithms exhibit features that are extremely well–suited for Grid ...
A frequently used iterative algorithm for solving large, sparse, symmetric and positiv definite syst...
Conjugate gradient (CG) methods to solve sparse systems of linear equations play an important role i...
International audienceWhereas most today parallel High Performance Computing (HPC) software is writt...
International audienceThis paper illustrates how GPU computing can be used to accelerate computation...
International audienceWhereas most parallel High Performance Computing (HPC) numerical libaries hav...
Includes bibliographical references (page 62)A new iterative method for the solution of large, spars...
This report presents preconditioning techniques for the conjugate gradient method (CG), an iterative...
The conjugate gradient method is an iterative technique used to solve systems of linear equations. T...
-Abstract. We consider few different implementations of classical itertive methods on parallel proce...
For the solution of discretized ordinary or partial differential equations it is necessary to solve ...
© 2014 Technical University of Munich (TUM).The conjugate gradient (CG) is one of the most widely us...
This paper deals with background and practical experience with preconditioned gradient methods for s...
This dissertation deals mainly with the design, implementation, and analysis of efficient iterative ...
In this paper we describe an efficient iterative algorithm for solving large sparse linear systems o...
Parallel asynchronous iterative algorithms exhibit features that are extremely well–suited for Grid ...
A frequently used iterative algorithm for solving large, sparse, symmetric and positiv definite syst...
Conjugate gradient (CG) methods to solve sparse systems of linear equations play an important role i...
International audienceWhereas most today parallel High Performance Computing (HPC) software is writt...
International audienceThis paper illustrates how GPU computing can be used to accelerate computation...
International audienceWhereas most parallel High Performance Computing (HPC) numerical libaries hav...
Includes bibliographical references (page 62)A new iterative method for the solution of large, spars...
This report presents preconditioning techniques for the conjugate gradient method (CG), an iterative...
The conjugate gradient method is an iterative technique used to solve systems of linear equations. T...
-Abstract. We consider few different implementations of classical itertive methods on parallel proce...
For the solution of discretized ordinary or partial differential equations it is necessary to solve ...
© 2014 Technical University of Munich (TUM).The conjugate gradient (CG) is one of the most widely us...
This paper deals with background and practical experience with preconditioned gradient methods for s...