Main Memory in HPC

Author:

Zivanovic Darko1ORCID,Pavlovic Milan1,Radulovic Milan1,Shin Hyunsung2,Son Jongpil2,Mckee Sally A.3ORCID,Carpenter Paul M.4,Radojković Petar4,Ayguadé Eduard1

Affiliation:

1. Barcelona Supercomputing Center (BSC), Universitat Politècnica de Catalunya, Barcelona, Spain

2. Samsung Electronics Co., Ltd., Memory Division, Gyeonggi-do, Korea

3. Chalmers University of Technology, Göteborg, Sweden

4. Barcelona Supercomputing Center (BSC), Barcelona, Spain

Abstract

An important aspect of High-Performance Computing (HPC) system design is the choice of main memory capacity. This choice becomes increasingly important now that 3D-stacked memories are entering the market. Compared with conventional Dual In-line Memory Modules (DIMMs), 3D memory chiplets provide better performance and energy efficiency but lower memory capacities. Therefore, the adoption of 3D-stacked memories in the HPC domain depends on whether we can find use cases that require much less memory than is available now. This study analyzes the memory capacity requirements of important HPC benchmarks and applications. We find that the High-Performance Conjugate Gradients (HPCG) benchmark could be an important success story for 3D-stacked memories in HPC, but High-Performance Linpack (HPL) is likely to be constrained by 3D memory capacity. The study also emphasizes that the analysis of memory footprints of production HPC applications is complex and that it requires an understanding of application scalability and target category, i.e., whether the users target capability or capacity computing. The results show that most of the HPC applications under study have per-core memory footprints in the range of hundreds of megabytes, but we also detect applications and use cases that require gigabytes per core. Overall, the study identifies the HPC applications and use cases with memory footprints that could be provided by 3D-stacked memory chiplets, making a first step toward adoption of this novel technology in the HPC domain.

Funder

Spanish Ministry of Science and Technology

Collaboration Agreement between Samsung Electronics Co., Ltd.

BSC, Spanish Government through Severo Ochoa programme

Generalitat de Catalunya

Darko Zivanovic holds the Severo Ochoa

Ministry of Economy and Competitiveness of Spain

European Union’s Horizon 2020 research and innovation programme under ExaNoDe

Publisher

Association for Computing Machinery (ACM)

Subject

Hardware and Architecture,Information Systems,Software

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