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Investigating Memory Failure Prediction Across CPU Architectures

Authors :
Yu, Qiao
Zhang, Wengui
Zhou, Min
Yu, Jialiang
Sheng, Zhenli
Bogatinovski, Jasmin
Cardoso, Jorge
Kao, Odej
Publication Year :
2024

Abstract

Large-scale datacenters often experience memory failures, where Uncorrectable Errors (UEs) highlight critical malfunction in Dual Inline Memory Modules (DIMMs). Existing approaches primarily utilize Correctable Errors (CEs) to predict UEs, yet they typically neglect how these errors vary between different CPU architectures, especially in terms of Error Correction Code (ECC) applicability. In this paper, we investigate the correlation between CEs and UEs across different CPU architectures, including X86 and ARM. Our analysis identifies unique patterns of memory failure associated with each processor platform. Leveraging Machine Learning (ML) techniques on production datasets, we conduct the memory failure prediction in different processors' platforms, achieving up to 15% improvements in F1-score compared to the existing algorithm. Finally, an MLOps (Machine Learning Operations) framework is provided to consistently improve the failure prediction in the production environment.<br />Comment: Accepted by 2024 54th Annual IEEE/IFIP International Conference on Dependable Systems and Networks (DSN), Industry Track

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.05354
Document Type :
Working Paper