Reconfigurable Hardware Generation of Multigrid Solvers with Conjugate Gradient Coarse-Grid Solution

Schmitt C, Schmid M, Kuckuk S, Köstler H, Teich J, Hannig F (2018)


Publication Status: Published

Publication Type: Journal article, Original article

Future Publication Type: Journal article

Publication year: 2018

Journal

Publisher: World Scientific

Edited Volumes: Parallel Processing Letters

Book Volume: 28

Article Number: 1850016

Journal Issue: 4

DOI: 10.1142/S0129626418500160

Abstract

Not only in the field of high-performance computing, field-programmable gate arrays (FPGAs) are a soaringly popular accelerator technology. However, they use a completely different programming paradigm and tool set compared to CPUs or even GPUs, adding extra development steps and requiring special knowledge, hindering widespread use in scientific computing. To bridge this programmability gap, domain-specific languages are a popular choice to generate low-level implementations from an abstract algorithm description. In this work, we demonstrate our approach for the generation of numerical solver implementations based on the multigrid method for FPGAs from the same code base that is also used to generate code for CPUs using a hybrid parallelization of MPI and OpenMP. Our approach yields in a hardware design that can compute up to 11 V-cycles per second with an input grid size of 4096x4096 and solution on the coarsest using the conjugate gradient method on a mid-range FPGA, beating vectorized, multi-threaded execution on an Intel Xeon processor.

Authors with CRIS profile

Related research project(s)

How to cite

APA:

Schmitt, C., Schmid, M., Kuckuk, S., Köstler, H., Teich, J., & Hannig, F. (2018). Reconfigurable Hardware Generation of Multigrid Solvers with Conjugate Gradient Coarse-Grid Solution. Parallel Processing Letters, 28(4). https://dx.doi.org/10.1142/S0129626418500160

MLA:

Schmitt, Christian, et al. "Reconfigurable Hardware Generation of Multigrid Solvers with Conjugate Gradient Coarse-Grid Solution." Parallel Processing Letters 28.4 (2018).

BibTeX: Download