Title
Implementing molecular dynamics on hybrid high performance computers – short range forces
Abstract
The use of accelerators such as graphics processing units (GPUs) has become popular in scientific computing applications due to their low cost, impressive floating-point capabilities, high memory bandwidth, and low electrical power requirements. Hybrid high-performance computers, machines with more than one type of floating-point processor, are now becoming more prevalent due to these advantages. In this work, we discuss several important issues in porting a large molecular dynamics code for use on parallel hybrid machines – (1) choosing a hybrid parallel decomposition that works on central processing units (CPUs) with distributed memory and accelerator cores with shared memory, (2) minimizing the amount of code that must be ported for efficient acceleration, (3) utilizing the available processing power from both multi-core CPUs and accelerators, and (4) choosing a programming model for acceleration. We present our solution to each of these issues for short-range force calculation in the molecular dynamics package LAMMPS, however, the methods can be applied in many molecular dynamics codes. Specifically, we describe algorithms for efficient short range force calculation on hybrid high-performance machines. We describe an approach for dynamic load balancing of work between CPU and accelerator cores. We describe the Geryon library that allows a single code to compile with both CUDA and OpenCL for use on a variety of accelerators. Finally, we present results on a parallel test cluster containing 32 Fermi GPUs and 180 CPU cores.
Year
DOI
Venue
2011
10.1016/j.cpc.2010.12.021
Computer Physics Communications
Keywords
Field
DocType
Molecular dynamics,GPU,Hybrid parallel computing
Shared memory,GPU cluster,Programming paradigm,CUDA,Computer science,Parallel computing,Distributed memory,Compiler,Porting,Multi-core processor
Journal
Volume
Issue
ISSN
182
4
0010-4655
Citations 
PageRank 
References 
35
3.64
9
Authors
4
Name
Order
Citations
PageRank
W. Michael Brown118116.09
Peng Wang216911.22
Steven J. Plimpton326422.82
Arnold N. Tharrington4777.25