Predicting VNF Deployment Decisions under Dynamically Changing Network Conditions

Stanislav Lange, Heegon Kim, Seyeon Jeong, Heeyoul Choi, Jae-Hyung Yoo, J. W. Hong
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引用次数: 22

Abstract

In addition to providing network operators with benefits in terms of flexibility and cost efficiency, softwarization paradigms like SDN and NFV are key enablers for the concept of Service Function Chaining (SFC). The corresponding networks need to support a wide range of services and applications with highly heterogeneous requirements that change dynamically during the network’s lifetime. Hence, efficient management and operation of such networks requires a high degree of automation that is paired with fast and proactive decisions in order to cope with these phenomena.In particular, determining the optimal number of VNF instances that is required for accommodating current and upcoming demands is a crucial task that also affects subsequent management decisions. To enable fast and proactive decisions in this context, we propose a machine learning-based approach that uses recent monitoring data to predict whether to adapt the current number of VNF instances of a given type. Furthermore, we present a methodology for generating labeled training data that reflects temporal dynamics and heterogeneous demands of real world networks. We demonstrate the feasibility of the approach using two different network topologies that represent WAN and mobile edge computing use cases, respectively. Additionally, we investigate how well the models generalize among networks and provide guidelines regarding the prediction horizon, i.e., how far ahead predictions can be performed in a reliable manner.
在动态变化的网络条件下预测VNF部署决策
除了为网络运营商提供灵活性和成本效益方面的好处外,SDN和NFV等软件范例是业务功能链(SFC)概念的关键推动者。相应的网络需要支持广泛的服务和应用程序,这些服务和应用程序具有高度异构的需求,这些需求在网络的生命周期内会动态变化。因此,这种网络的有效管理和操作需要高度的自动化,以及快速和主动的决策,以应对这些现象。特别是,确定满足当前和未来需求所需的VNF实例的最佳数量是一项关键任务,它也会影响后续的管理决策。为了在这种情况下实现快速和主动的决策,我们提出了一种基于机器学习的方法,该方法使用最近的监测数据来预测是否适应给定类型的VNF实例的当前数量。此外,我们提出了一种生成标记训练数据的方法,该方法反映了现实世界网络的时间动态和异构需求。我们使用两种不同的网络拓扑来演示该方法的可行性,这两种网络拓扑分别代表WAN和移动边缘计算用例。此外,我们研究了模型在网络中的泛化程度,并提供了关于预测范围的指导方针,即,预测可以以可靠的方式进行多远的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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