Sparse direct solvers with accelerators over DAG runtimes - Archive ouverte HAL Access content directly
Reports (Research Report) Year : 2012

Sparse direct solvers with accelerators over DAG runtimes

(1) , (1, 2) , (3) , (3) , (3)
1
2
3

Abstract

The current trend in the high performance computing shows a dramatic increase in the number of cores on the shared memory compute nodes. Algorithms, especially those related to linear algebra, need to be adapted to these new computer architectures in order to be efficient. PASTIX is a sparse parallel direct solver, that incorporates a dynamic scheduler for strongly hierarchical modern architectures. In this paper, we study the replacement of this internal highly integrated scheduling strategy by two generic runtime frameworks: DAGUE and STARPU. Those runtimes will give the opportunity to execute the factorization tasks graph on emerging computers equipped with accelerators. As for previous work done in dense linear algebra, we present the kernels used for GPU computations inspired by the MAGMA library and the DAG algorithm used with those two runtimes. A comparative study of the performances of the supernodal solver with the three different schedulers is performed on manycore architectures and the improvements obtained with accelerators are presented with the STARPU runtime. These results demonstrate that these DAG runtimes provide uniform programming interfaces to obtain high performance on different architectures on irregular problems as sparse direct factorizations.
Fichier principal
Vignette du fichier
RR-7972.pdf (590.55 Ko) Télécharger le fichier
Origin : Files produced by the author(s)
Loading...

Dates and versions

hal-00700066 , version 1 (22-05-2012)
hal-00700066 , version 2 (24-05-2012)

Identifiers

  • HAL Id : hal-00700066 , version 2

Cite

Xavier Lacoste, Pierre Ramet, Mathieu Faverge, Yamazaki Ichitaro, Jack Dongarra. Sparse direct solvers with accelerators over DAG runtimes. [Research Report] RR-7972, INRIA. 2012, pp.11. ⟨hal-00700066v2⟩
752 View
325 Download

Share

Gmail Facebook Twitter LinkedIn More