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A Multi-label Classification Approach to Localization of Multiple Node Failures in Local DC Networks

机译:一种多标签分类方法,可以在本地直流网络中定位多节点故障的定位

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The wide adoption of network based IT services to support operations and services have driven organizations to deploy local data center (DC) infrastructure and networks. Monitoring the proper functioning of such networks is of critical importance, specially in the event of failures. Timely detection and localization of the failed devices shorten the repair times and guarantee normal operation of infrastructure and services. In this work we propose a data-driven multiple failure localization approach based on device features obtained through passive monitoring. Namely, we set the localization problem as one of multi-label classification using high dimensional and high resolution data that is increasingly available with modern devices. Our results show that using simple base classifiers, the proposed methodology can yield high Hamming accuracy and acceptable compromise on false alarms, without relying on active monitoring.
机译:基于网络的IT服务的广泛采用支持运营和服务具有驱动组织来部署本地数据中心(DC)基础架构和网络。监视这种网络的正常运行是至关重要的,特别是在发生故障时。及时检测和定位失败的设备缩短了修复时间并保证了基础设施和服务的正常运行。在这项工作中,我们提出了一种基于通过被动监控获得的设备特征的数据驱动的多个故障本地化方法。即,我们将本地化问题设置为使用现代设备越来越多的高分辨率和高分辨率数据的多标签分类之一。我们的结果表明,使用简单的基础分类器,所提出的方法可以在误报上产生高汉明准确度和可接受的折衷,而无需依赖主动监测。

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