Published December 1, 2013 | Version v1
Journal article Open

Sparse matrix–vector multiplication on the Single-Chip Cloud Computer many-core processor

Description

It is well-known that reordering techniques applied to sparse matrices are common strategies to improve the performance of sparse matrix operations, and particularly, the sparse matrix vector multiplication (SpMV) on CPUs. In this paper, we have evaluated some of the most successful reordering techniques on two different GPUs. In addition, in our study a number of sparse matrix storage formats were con- sidered. Executions for both single and double precision arithmetics were also performed. We have found that SpMV is very sensitive to the application of reordering techniques on GPUs. In particular, several characteristics of the reordered matrices that have a big impact on the SpMV performance have been detected. In most of the cases, reordered matrices outperform the original ones, showing noticeable speedups up to 2.6×. We have also observed that there is no one storage format preferred over the others.

Files

article.pdf

Files (836.5 kB)

Name Size Download all
md5:0e87334ef16ad0591afb68ea45a666fd
836.5 kB Preview Download