HPL-MxP benchmark: Mixed-precision algorithms, iterative refinement, and scalable data generation

TitleHPL-MxP benchmark: Mixed-precision algorithms, iterative refinement, and scalable data generation
Publication TypeJournal Article
Year of Publication2025
AuthorsDongarra, J., and P. Luszczek
JournalThe International Journal of High Performance Computing Applications
Date Published2025-09
ISSN1094-3420
Abstract

We present a mixed-precision benchmark called HPL-MxP that uses both a lower-precision LU factorization with a non-stationary iterative refinement based on GMRES. We evaluate the numerical stability of one of the methods of generating the input matrix in a scalable fashion and show how the diagonal scaling affects the solution quality in terms of the backward-error. Some of the performance results at large scale supercomputing installations produced Exascale-level compute throughput numbers thus proving the viability of the proposed benchmark for evaluating such machines. We also present the potential of the benchmark to continue increasing its use with proliferation of hardware accelerators for AI workloads whose reliable evaluation continues to pose a particular challenge for the users.

URLhttps://journals.sagepub.com/doi/10.1177/10943420251382476
DOI10.1177/10943420251382476
Short TitleThe International Journal of High Performance Computing Applications
Project Tags: 
External Publication Flag: