Back to Search Start Over

GPU Algorithms for Efficient Exascale Discretizations

Authors :
Abdelfattah, Ahmad
Barra, Valeria
Beams, Natalie
Bleile, Ryan
Brown, Jed
Camier, Jean-Sylvain
Carson, Robert
Chalmers, Noel
Dobrev, Veselin
Dudouit, Yohann
Fischer, Paul
Karakus, Ali
Kerkemeier, Stefan
Kolev, Tzanio
Lan, Yu-Hsiang
Merzari, Elia
Min, Misun
Phillips, Malachi
Rathnayake, Thilina
Rieben, Robert
Stitt, Thomas
Tomboulides, Ananias
Tomov, Stanimire
Tomov, Vladimir
Vargas, Arturo
Warburton, Tim
Weiss, Kenneth
Publication Year :
2021

Abstract

In this paper we describe the research and development activities in the Center for Efficient Exascale Discretization within the US Exascale Computing Project, targeting state-of-the-art high-order finite-element algorithms for high-order applications on GPU-accelerated platforms. We discuss the GPU developments in several components of the CEED software stack, including the libCEED, MAGMA, MFEM, libParanumal, and Nek projects. We report performance and capability improvements in several CEED-enabled applications on both NVIDIA and AMD GPU systems.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2109.05072
Document Type :
Working Paper