We consider two-dimensional partitioning of general sparse matrices for parallel sparse matrix-vector multiply operation. We present three hypergraph-partitioning-based methods, each having unique advantages. The first one treats the nonzeros of the matrix individually and hence produces fine-grain partitions. The other two produce coarser partitions, where one of them imposes a limit on the number of messages sent and received by a single processor, and the other trades that limit for a lower communication volume. We also present a thorough experimental evaluation of the proposed two-dimensional partitioning methods together with the hypergraph-based one-dimensional partitioning methods, using an extensive set of public domain matrices. Fu...
A new method is presented for distributing data in sparse matrix-vector multiplication. The method i...
8 pagesInternational audienceWe investigate the scalability of the hypergraph-based sparse matrix pa...
In this work, we show that the standard graph-partitioning based decomposition of sparse matrices do...
We consider two-dimensional partitioning of general sparse matrices for parallel sparse matrix-vecto...
International audienceWe propose a novel sparse matrix partitioning scheme, called semi-two-dimensio...
8 pagesInternational audienceWe investigate the scalability of the hypergraph-based sparse matrix pa...
We present a new hyper graph-based method, the medium-grain method, for solving the sparse matrix pa...
We present a new hyper graph-based method, the medium-grain method, for solving the sparse matrix pa...
We propose a new two-phase method for the coarse-grain decomposition of irregular computational doma...
One-dimensional (1D) partitioning of sparse matrices results in lower quality partitioning than two-...
International audienceThere are three common parallel sparse matrix-vector multiply algorithms: 1D 3...
International audienceWe investigate one dimensional partitioning of sparse matrices under a given o...
8 pagesInternational audienceWe investigate the scalability of the hypergraph-based sparse matrix pa...
8 pagesInternational audienceWe investigate the scalability of the hypergraph-based sparse matrix pa...
8 pagesInternational audienceWe investigate the scalability of the hypergraph-based sparse matrix pa...
A new method is presented for distributing data in sparse matrix-vector multiplication. The method i...
8 pagesInternational audienceWe investigate the scalability of the hypergraph-based sparse matrix pa...
In this work, we show that the standard graph-partitioning based decomposition of sparse matrices do...
We consider two-dimensional partitioning of general sparse matrices for parallel sparse matrix-vecto...
International audienceWe propose a novel sparse matrix partitioning scheme, called semi-two-dimensio...
8 pagesInternational audienceWe investigate the scalability of the hypergraph-based sparse matrix pa...
We present a new hyper graph-based method, the medium-grain method, for solving the sparse matrix pa...
We present a new hyper graph-based method, the medium-grain method, for solving the sparse matrix pa...
We propose a new two-phase method for the coarse-grain decomposition of irregular computational doma...
One-dimensional (1D) partitioning of sparse matrices results in lower quality partitioning than two-...
International audienceThere are three common parallel sparse matrix-vector multiply algorithms: 1D 3...
International audienceWe investigate one dimensional partitioning of sparse matrices under a given o...
8 pagesInternational audienceWe investigate the scalability of the hypergraph-based sparse matrix pa...
8 pagesInternational audienceWe investigate the scalability of the hypergraph-based sparse matrix pa...
8 pagesInternational audienceWe investigate the scalability of the hypergraph-based sparse matrix pa...
A new method is presented for distributing data in sparse matrix-vector multiplication. The method i...
8 pagesInternational audienceWe investigate the scalability of the hypergraph-based sparse matrix pa...
In this work, we show that the standard graph-partitioning based decomposition of sparse matrices do...