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Performance Anomaly Detection Models of Virtual Machines for Network Function Virtualization Infrastructure with Machine Learning

机译:具有机器学习功能的网络功能虚拟化基础架构的虚拟机性能异常检测模型

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Networking Function Virtualization (NFV) technology has become a new solution for running network applications. It proposes a new paradigm for network function management and has brought much innovation space for the network technology. However, the complexity of the NFV Infrastructure (NFVI) impose hard-to-predict relationship between Virtualized Network Function (VNF) performance metrics (e.g., latency, throughput), the underlying allocated resources (e.g., load of vCPU), and the overall system workload, thus the evolving scenario of NFV calls for adequate performance analysis methodologies, early detection of performance anomalies plays a significant role in providing high-quality network services. In this paper, we have proposed a novel method for detecting the performance anomalies in NFV infrastructure with machine learning methods. We present a case study on the open source NFV-oriented project, namely Clearwater, which is an IP Multimedia Subsystem (IMS) NFV application. Several classical classifiers are applied and compared empirically on the anomaly dataset which is built by ourselves. Considering the risk of over-fitting issue, the experimental results show that neutral networks is the best anomaly detection model with the accuracy over 94%.
机译:网络功能虚拟化(NFV)技术已成为运行网络应用程序的新解决方案。它为网络功能管理提出了一种新的范例,为网络技术带来了很大的创新空间。但是,NFV基础结构(NFVI)的复杂性在虚拟化网络功能(VNF)性能指标(例如,延迟,吞吐量),基础分配的资源(例如,vCPU的负载)与总体之间形成了难以预测的关系。系统工作负载,因此不断发展的NFV场景要求适当的性能分析方法,性能异常的早期检测在提供高质量网络服务中起着重要作用。在本文中,我们提出了一种使用机器学习方法检测NFV基础结构中性能异常的新方法。我们以开放源码的面向NFV的项目(即Clearwater)为例,该项目是IP多媒体子系统(IMS)NFV应用程序。在我们自己建立的异常数据集上应用了几种经典分类器,并进行了经验比较。考虑到过拟合问题的风险,实验结果表明,中性网络是最好的异常检测模型,其准确度超过94%。

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