It is anticipated that in order to make effective use of many future high performance architectures, programs will have to exhibit at least a medium grained parallelism. A framework is presented for partitioning very sparse triangular systems of linear equations that is designed to produce favorable preformance results in a wide variety of parallel architectures. Efficient methods for solving these systems are of interest because: (1) they provide a useful model problem for use in exploring heuristics for the aggregation, mapping and scheduling of relatively fine grained computations whose data dependencies are specified by directed acrylic graphs, and (2) because such efficient methods can find direct application in the development of para...
International audienceSolving large sparse systems of linear equations is a crucial and time-consumi...
The ongoing hardware evolution exhibits an escalation in the number, as well as in the heterogeneity...
AbstractIn this paper we present two efficient algorithms for the parallel solution of n × n dense l...
It is anticipated that in order to make effective use of many future high performance architectures,...
Abstract. The last decade has seen rapid growth of single-chip multi-processors (CMPs), which have b...
Problems in the class of unstructured sparse matrix computations are characterized by highly irregul...
A model of a general class of asynchronous, iterative solution methods for linear systems is develop...
Different approaches are discussed for exploiting parallelism in the ICCG (Incomplete Cholesky Conju...
Solving large, sparse, linear systems of equations is one of the fundamental problems in large scale...
AbstractWe have recently multiprocessed a code for the direct solution of sparse linear equations on...
Several fine grained parallel algorithms were developed and compared to compute the Cholesky factori...
La résolution de grands systèmes linéaires creux est un élément essentiel des simulations numériques...
Automatic scheduling for directed acyclic graphs (DAG) and its applications for coarsegrained irregu...
One of the most important issues in parallel processing is the mapping of workload to processors. Th...
International audienceDirect methods for the solution of sparse systems of linear equations of the f...
International audienceSolving large sparse systems of linear equations is a crucial and time-consumi...
The ongoing hardware evolution exhibits an escalation in the number, as well as in the heterogeneity...
AbstractIn this paper we present two efficient algorithms for the parallel solution of n × n dense l...
It is anticipated that in order to make effective use of many future high performance architectures,...
Abstract. The last decade has seen rapid growth of single-chip multi-processors (CMPs), which have b...
Problems in the class of unstructured sparse matrix computations are characterized by highly irregul...
A model of a general class of asynchronous, iterative solution methods for linear systems is develop...
Different approaches are discussed for exploiting parallelism in the ICCG (Incomplete Cholesky Conju...
Solving large, sparse, linear systems of equations is one of the fundamental problems in large scale...
AbstractWe have recently multiprocessed a code for the direct solution of sparse linear equations on...
Several fine grained parallel algorithms were developed and compared to compute the Cholesky factori...
La résolution de grands systèmes linéaires creux est un élément essentiel des simulations numériques...
Automatic scheduling for directed acyclic graphs (DAG) and its applications for coarsegrained irregu...
One of the most important issues in parallel processing is the mapping of workload to processors. Th...
International audienceDirect methods for the solution of sparse systems of linear equations of the f...
International audienceSolving large sparse systems of linear equations is a crucial and time-consumi...
The ongoing hardware evolution exhibits an escalation in the number, as well as in the heterogeneity...
AbstractIn this paper we present two efficient algorithms for the parallel solution of n × n dense l...