Graph partitioning is a fundamental problem in several scientific and engineering applications. In this paper, we describe heuristics that improve the state-of-the-art practical algorithms used in graph-partitioning software in terms of both partitioning speed and quality. An important use of graph-partitioning is in ordering sparse matrices for obtaining direct solutions to sparse systems of linear equations arising in engineering and optimization applications. The experiments reported in this paper show that the use of these heuristics results in a considerable improvement in the quality of sparse-matrix orderings over conventional ordering methods, especially for sparse matrices arising in linear programming problems. In addition, our gr...
International audienceWe investigate one dimensional partitioning of sparse matrices under a given o...
A typical first step of a direct solver for the lin ear system Mx = b is reordering of the symmetric...
We present a novel method for graph partitioning, based on reinforcement learning and graph convolut...
In this paper we present a parallel formulation of the multilevel graph partitioning and sparse matr...
In this paper we present a parallel formulation of the multilevel graph partitioning and sparse matr...
The solution of large-scale chemical process simulation and optimization problems using parallel com...
International audienceWe investigate one dimensional partitioning of sparse matrices under a given o...
Abstract. We present a recursive way to partition hypergraphs which creates and exploits hypergraph ...
Graph partitioning is an ubiquitous technique which has applications in many fields of computer scie...
Many problems appearing in scientific computing and other areas can be formulated as a graph parti...
Many problems appearing in scientific computing and other areas can be formulated as a graph parti...
When performing sparse matrix factorization, the ordering of matrix rows and columns has a dramatic ...
Sparse matrix-vector multiplication is the kernel for many scientific computations. Parallelizing th...
Cataloged from PDF version of article.A typical first step of a direct solver for the linear system ...
. Computing a fill-reducing ordering of a sparse matrix is a central problem in the solution of spar...
International audienceWe investigate one dimensional partitioning of sparse matrices under a given o...
A typical first step of a direct solver for the lin ear system Mx = b is reordering of the symmetric...
We present a novel method for graph partitioning, based on reinforcement learning and graph convolut...
In this paper we present a parallel formulation of the multilevel graph partitioning and sparse matr...
In this paper we present a parallel formulation of the multilevel graph partitioning and sparse matr...
The solution of large-scale chemical process simulation and optimization problems using parallel com...
International audienceWe investigate one dimensional partitioning of sparse matrices under a given o...
Abstract. We present a recursive way to partition hypergraphs which creates and exploits hypergraph ...
Graph partitioning is an ubiquitous technique which has applications in many fields of computer scie...
Many problems appearing in scientific computing and other areas can be formulated as a graph parti...
Many problems appearing in scientific computing and other areas can be formulated as a graph parti...
When performing sparse matrix factorization, the ordering of matrix rows and columns has a dramatic ...
Sparse matrix-vector multiplication is the kernel for many scientific computations. Parallelizing th...
Cataloged from PDF version of article.A typical first step of a direct solver for the linear system ...
. Computing a fill-reducing ordering of a sparse matrix is a central problem in the solution of spar...
International audienceWe investigate one dimensional partitioning of sparse matrices under a given o...
A typical first step of a direct solver for the lin ear system Mx = b is reordering of the symmetric...
We present a novel method for graph partitioning, based on reinforcement learning and graph convolut...