Machine Learning Approaches to Early Fault Detection and Identification in NFV Architectures

Arij Elmajed, A. Aghasaryan, É. Fabre
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引用次数: 6

Abstract

Virtualization technologies become pervasive in networking, as a way to better exploit hardware capabilities and to quickly deploy tailored networking solutions for customers. But these new programmability abilities of networks also come with new management challenges: it is critical to quickly detect performance degradation, before they impact Quality of Service (QoS) or produce outages and alarms, as this takes part in the closed loop that adapts resources to services. This paper addresses the early detection, localization and identification of faults, before alarms are produced. We rely on the abundance of metrics available on virtualized networks, and explore various data preprocessing and classification techniques. As all Machine Learning approaches must be fed with large datasets, we turn to our advantage the softwarization of networks: one can easily deploy in a cloud the very same software that is used in production, and analyze its behaviour under stress, by fault injection.
NFV架构中早期故障检测与识别的机器学习方法
作为一种更好地利用硬件功能并为客户快速部署定制的网络解决方案的方法,虚拟化技术在网络中变得非常普遍。但是,网络的这些新的可编程能力也带来了新的管理挑战:在性能下降影响服务质量(QoS)或产生中断和警报之前,快速检测性能下降是至关重要的,因为这是使资源适应服务的闭环的一部分。本文讨论了在产生告警之前,对故障的早期检测、定位和识别。我们依赖于虚拟化网络上可用的大量指标,并探索各种数据预处理和分类技术。由于所有机器学习方法都必须使用大型数据集,我们将网络的软件化转化为我们的优势:人们可以轻松地在云中部署生产中使用的相同软件,并通过故障注入分析其在压力下的行为。
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