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Forecasting Operation Metrics for Virtualized Network Functions

机译:预测虚拟化网络函数的操作指标

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Network Function Virtualization (NFV) is the key technology that allows modern network operators to provide flexible and efficient services, by leveraging on general-purpose private cloud infrastructures. In this work, we investigate the performance of a number of metric forecasting techniques based on machine learning and artificial intelligence, and provide insights on how they can support the decisions of NFV operation teams. Our analysis focuses on both infrastructure-level and service-level metrics. The former can be fetched directly from the monitoring system of an NFV infrastructure, whereas the latter are typically provided by the monitoring components of the individual virtualized network functions. Our selected forecasting techniques are experimentally evaluated using real-life data, exported from a production environment deployed within some Vodafone NFV data centers. The results show what the compared techniques can achieve in terms of the forecasting accuracy and computational cost required to train them on production data.
机译:网络功能虚拟化(NFV)是允许现代网络运营商提供灵活高效的服务的关键技术,通过利用通用私有云基础架构。在这项工作中,我们研究了基于机器学习和人工智能的许多公制预测技术的性能,并提供了对如何支持NFV运营团队的决策的洞察。我们的分析侧重于基础架构级和服务级度量标准。前者可以直接从NFV基础设施的监测系统获取,而后者通常由各个虚拟化网络功能的监视组件提供。我们所选择的预测技术是使用现实生活数据进行实验评估的,从一些沃达丰NFV数据中心部署的生产环境导出。结果显示了比较技术可以在预测准确性和培训生产数据上培训时所需的计算成本来实现的。

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