预测大规模数据中心硬件故障的补救措施

Fred Lin, A. Davoli, I. Akbar, Sukumar Kalmanje, Leandro Silva, J. Stamford, Yanai S. Golany, Jim Piazza, S. Sankar
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引用次数: 1

摘要

大规模服务环境依赖于自治系统来有效地修复硬件故障。在生产中,自治系统根据主题专家在系统中设置的规则诊断硬件故障。由于新的故障类型和硬件和软件配置的复杂性增加,这个过程变得越来越复杂。在本文中,我们提出了一个机器学习框架,该框架基于过去关闭的类似修理单来预测未诊断故障所需的修复。我们详细解释了建立机器学习模型的方法,将其部署到生产环境中,并使用必要的指标监控其性能。我们还演示了对一些修复动作的预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Remediations for Hardware Failures in Large-Scale Datacenters
Large-scale service environments rely on autonomous systems for remediating hardware failures efficiently. In production, the autonomous system diagnoses hardware failures based on the rules that the subject matter experts put in the system. This process is increasingly complex given new types of failures and the increasing complexity in the hardware and software configurations. In this paper, we present a machine learning framework that predicts the required remediations for undiagnosed failures, based on the similar repair tickets closed in the past. We explain the methodology in detail for setting up a machine learning model, deploying it in a production environment, and monitoring its performance with the necessary metrics. We also demonstrate the prediction performance on some of the repair actions.
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