高性能计算系统中的在线异常检测

Andrea Borghesi, Antonio Libri, L. Benini, Andrea Bartolini
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引用次数: 24

摘要

可靠性是高性能计算系统和数据中心发展中的一个棘手问题。在操作过程中,可能会出现几种类型的故障情况或异常,从硬件故障到配置不当或软件不完善。目前需要系统管理员和最终用户手工发现。显然,这种方法不适用于大型超级计算机和设备:需要自动检测故障和不健康状况的方法。我们的方法使用一种被称为自动编码器的神经网络来学习真实的、生产中的高性能计算系统的正常行为,并将其部署在每个计算节点的边缘。我们获得了非常好的精度(值范围在90%到95%之间),并且我们还证明了该方法可以部署在超级计算机节点上,而不会对计算单元的性能产生负面影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online Anomaly Detection in HPC Systems
Reliability is a cumbersome problem in High Performance Computing Systems and Data Centers evolution. During operation, several types of fault conditions or anomalies can arise, ranging from malfunctioning hardware to improper configurations or imperfect software. Currently, system administrator and final users have to discover it manually. Clearly this approach does not scale to large scale supercomputers and facilities: automated methods to detect faults and unhealthy conditions is needed. Our method uses a type of neural network called autoncoder trained to learn the normal behavior of a real, in-production HPC system and it is deployed on the edge of each computing node. We obtain a very good accuracy (values ranging between 90% and 95%) and we also demonstrate that the approach can be deployed on the supercomputer nodes without negatively affecting the computing units performance.
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