EXAGRAPH: Graph and combinatorial methods for enabling exascale applications

Author:

Acer Seher1,Azad Ariful2,Boman Erik G1,Buluç Aydın3,Devine Karen D.1,Ferdous SM4,Gawande Nitin56ORCID,Ghosh Sayan6,Halappanavar Mahantesh67ORCID,Kalyanaraman Ananth67,Khan Arif6,Minutoli Marco6,Pothen Alex4,Rajamanickam Sivasankaran1,Selvitopi Oguz3,Tallent Nathan R6ORCID,Tumeo Antonino6

Affiliation:

1. Sandia National Laboratories, Albuquerque, NM, USA

2. Indiana University, Bloomington, IN, USA

3. Lawrence Berkeley National Laboratory, Berkeley, CA, USA

4. Purdue University, West Lafayette, IN, USA

5. Intel Corporation, Santa Clara, CA, USA

6. Pacific Northwest National Laboratory, Richland, WA, USA

7. Washington State University, Pullman, WA, USA

Abstract

Combinatorial algorithms in general and graph algorithms in particular play a critical enabling role in numerous scientific applications. However, the irregular memory access nature of these algorithms makes them one of the hardest algorithmic kernels to implement on parallel systems. With tens of billions of hardware threads and deep memory hierarchies, the exascale computing systems in particular pose extreme challenges in scaling graph algorithms. The codesign center on combinatorial algorithms, ExaGraph, was established to design and develop methods and techniques for efficient implementation of key combinatorial (graph) algorithms chosen from a diverse set of exascale applications. Algebraic and combinatorial methods have a complementary role in the advancement of computational science and engineering, including playing an enabling role on each other. In this paper, we survey the algorithmic and software development activities performed under the auspices of ExaGraph from both a combinatorial and an algebraic perspective. In particular, we detail our recent efforts in porting the algorithms to manycore accelerator (GPU) architectures. We also provide a brief survey of the applications that have benefited from the scalable implementations of different combinatorial algorithms to enable scientific discovery at scale. We believe that several applications will benefit from the algorithmic and software tools developed by the ExaGraph team.

Funder

Exascale Computing Project

Oak Ridge National Laboratory

Argonne National Laboratory

National Energy Research Scientific Computing Center

Battelle Memorial Institute

U.S. Department of Energy’s National Nuclear Security Administration

Publisher

SAGE Publications

Subject

Hardware and Architecture,Theoretical Computer Science,Software

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