Litcius/Paper detail

GPU acceleration of local and semilocal density functional calculations in the SPARC electronic structure code

Abhiraj Sharma, Alfredo Metere, Phanish Suryanarayana, Lucas Erlandson, Edmond Chow, John E. Pask

2023The Journal of Chemical Physics15 citationsDOIOpen Access PDF

Abstract

We present a Graphics Processing Unit (GPU)-accelerated version of the real-space SPARC electronic structure code for performing Kohn-Sham density functional theory calculations within the local density and generalized gradient approximations. In particular, we develop a modular math-kernel based implementation for NVIDIA architectures wherein the computationally expensive operations are carried out on the GPUs, with the remainder of the workload retained on the central processing units (CPUs). Using representative bulk and slab examples, we show that relative to CPU-only execution, GPUs enable speedups of up to 6× and 60× in node and core hours, respectively, bringing time to solution down to less than 30 s for a metallic system with over 14 000 electrons and enabling significant reductions in computational resources required for a given wall time.

Topics & Concepts

Computer scienceComputational scienceGraphics processing unitParallel computingGraphicsDensity functional theoryCode (set theory)Electronic structureAccelerationKernel (algebra)Central processing unitMulti-core processorPhysicsComputer graphics (images)Computational chemistryMathematicsChemistryComputer hardwareProgramming languageCombinatoricsSet (abstract data type)Classical mechanicsAdvanced Condensed Matter PhysicsMachine Learning in Materials ScienceCatalytic Processes in Materials Science
GPU acceleration of local and semilocal density functional calculations in the SPARC electronic structure code | Litcius