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arxiv: 1004.3719 · v1 · pith:XT2VL3ICnew · submitted 2010-04-21 · 💻 cs.DC · cs.MS· cs.SC

Exact Sparse Matrix-Vector Multiplication on GPU's and Multicore Architectures

classification 💻 cs.DC cs.MScs.SC
keywords architecturesfieldsfinitemultiplicationsparsespeedspmvadvantage
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We propose different implementations of the sparse matrix--dense vector multiplication (\spmv{}) for finite fields and rings $\Zb/m\Zb$. We take advantage of graphic card processors (GPU) and multi-core architectures. Our aim is to improve the speed of \spmv{} in the \linbox library, and henceforth the speed of its black box algorithms. Besides, we use this and a new parallelization of the sigma-basis algorithm in a parallel block Wiedemann rank implementation over finite fields.

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