Skip to main content
U.S. Department of Energy
Office of Scientific and Technical Information

Performance Analysis of Memory Transfers and GEMM Subroutines on NVIDIA Tesla GPU Cluster

Conference ·
OSTI ID:965387

Commodity clusters augmented with application accelerators are evolving as competitive high performance computing systems. The Graphical Processing Unit (GPU) with a very high arithmetic density and performance per price ratio is a good platform for the scientific application acceleration. In addition to the interconnect bottlenecks among the cluster compute nodes, the cost of memory copies between the host and the GPU device have to be carefully amortized to improve the overall efficiency of the application. Scientific applications also rely on efficient implementation of the BAsic Linear Algebra Subroutines (BLAS), among which the General Matrix Multiply (GEMM) is considered as the workhorse subroutine. In this paper, they study the performance of the memory copies and GEMM subroutines that are critical to port the computational chemistry algorithms to the GPU clusters. To that end, a benchmark based on the NetPIPE framework is developed to evaluate the latency and bandwidth of the memory copies between the host and the GPU device. The performance of the single and double precision GEMM subroutines from the NVIDIA CUBLAS 2.0 library are studied. The results have been compared with that of the BLAS routines from the Intel Math Kernel Library (MKL) to understand the computational trade-offs. The test bed is a Intel Xeon cluster equipped with NVIDIA Tesla GPUs.

Research Organization:
Ames Laboratory (AMES), Ames, IA (United States)
Sponsoring Organization:
USDOE Office of Science (SC)
DOE Contract Number:
AC02-07CH11358
OSTI ID:
965387
Report Number(s):
IS-M 954
Country of Publication:
United States
Language:
English

Similar Records

Threaded Multi-Core GEMM with MoA and Cache-Blocking: Preprint
Conference · Mon Feb 28 23:00:00 EST 2022 · OSTI ID:1848079

Kernel fusion in atomistic spin dynamics simulations on Nvidia GPUs using tensor core
Journal Article · Tue Jun 11 00:00:00 EDT 2024 · Journal of Computational Science · OSTI ID:2446864

An efficient tensor transpose algorithm for multicore CPU, Intel Xeon Phi, and NVidia Tesla GPU
Journal Article · Sun Jan 04 23:00:00 EST 2015 · Computer Physics Communications · OSTI ID:1185465