DRAM Errors and Cosmic Rays: Space Invaders or Science Fiction?
July 23, 2024 Β· Declared Dead Β· π Symposium on Computer Architecture and High Performance Computing
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Authors
Isaac Boixaderas, Jorge Amaya, Sergi MorΓ©, Javier Bartolome, David Vicente, Osman Unsal, Dimitris Gizopoulos, Paul M. Carpenter, Petar RadojkoviΔ, Eduard AyguadΓ©
arXiv ID
2407.16487
Category
cs.DC: Distributed Computing
Citations
0
Venue
Symposium on Computer Architecture and High Performance Computing
Last Checked
4 months ago
Abstract
It is widely accepted that cosmic rays are a plausible cause of DRAM errors in high-performance computing (HPC) systems, and various studies suggest that they could explain some aspects of the observed DRAM error behavior. However, this phenomenon is insufficiently studied in production environments. We analyze the correlations between cosmic rays and DRAM errors on two HPC clusters: a production supercomputer with server-class DDR3-1600 and a prototype with LPDDR3-1600 and no hardware error correction. Our error logs cover 2000 billion MB-hours for the MareNostrum 3 supercomputer and 135 million MB-hours for the Mont-Blanc prototype. Our analysis combines quantitative analysis, formal statistical methods and machine learning. We detect no indications that cosmic rays have any influence on the DRAM errors. To understand whether the findings are specific to systems under study, located at 100 meters above the sea level, the analysis should be repeated on other HPC clusters, especially the ones located on higher altitudes. Also, analysis can (and should) be applied to revisit and extend numerous previous studies which use cosmic rays as a hypothetical explanation for some aspects of the observed DRAM error behaviors.
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