English

Efficient Exascale Discretizations: High-Order Finite Element Methods

Distributed, Parallel, and Cluster Computing 2021-09-13 v1 Mathematical Software Numerical Analysis Numerical Analysis

Abstract

Efficient exploitation of exascale architectures requires rethinking of the numerical algorithms used in many large-scale applications. These architectures favor algorithms that expose ultra fine-grain parallelism and maximize the ratio of floating point operations to energy intensive data movement. One of the few viable approaches to achieve high efficiency in the area of PDE discretizations on unstructured grids is to use matrix-free/partially-assembled high-order finite element methods, since these methods can increase the accuracy and/or lower the computational time due to reduced data motion. In this paper we provide an overview of the research and development activities in the Center for Efficient Exascale Discretizations (CEED), a co-design center in the Exascale Computing Project that is focused on the development of next-generation discretization software and algorithms to enable a wide range of finite element applications to run efficiently on future hardware. CEED is a research partnership involving more than 30 computational scientists from two US national labs and five universities, including members of the Nek5000, MFEM, MAGMA and PETSc projects. We discuss the CEED co-design activities based on targeted benchmarks, miniapps and discretization libraries and our work on performance optimizations for large-scale GPU architectures. We also provide a broad overview of research and development activities in areas such as unstructured adaptive mesh refinement algorithms, matrix-free linear solvers, high-order data visualization, and list examples of collaborations with several ECP and external applications.

Keywords

Cite

@article{arxiv.2109.04996,
  title  = {Efficient Exascale Discretizations: High-Order Finite Element Methods},
  author = {Tzanio Kolev and Paul Fischer and Misun Min and Jack Dongarra and Jed Brown and Veselin Dobrev and Tim Warburton and Stanimire Tomov and Mark S. Shephard and Ahmad Abdelfattah and Valeria Barra and Natalie Beams and Jean-Sylvain Camier and Noel Chalmers and Yohann Dudouit and Ali Karakus and Ian Karlin and Stefan Kerkemeier and Yu-Hsiang Lan and David Medina and Elia Merzari and Aleksandr Obabko and Will Pazner and Thilina Rathnayake and Cameron W. Smith and Lukas Spies and Kasia Swirydowicz and Jeremy Thompson and Ananias Tomboulides and Vladimir Tomov},
  journal= {arXiv preprint arXiv:2109.04996},
  year   = {2021}
}

Comments

22 pages, 18 figures

R2 v1 2026-06-24T05:52:02.923Z