On Control and Data Plane Programmability for Data-Driven Networking

Alessio Sacco, Flavio Esposito, G. Marchetto
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引用次数: 3

Abstract

The soaring complexity of networks has led to more and more complex methods to manage and orchestrate efficiently the multitude of network environments. Several solutions exist, such as OpenFlow, NetConf, P4, DPDK, etc., that allow net-work programmability at both control and data plane level, driving innovation in many focused high-performance networked applications. However, with the increase of strict requirements in critical applications, also the networking architecture and its operations should be redesigned. In particular, recent advances in machine learning have opened new opportunities to the automation of network management, exploiting existing advances in software-defined infrastructures. We argue that the design of effective data-driven network management solutions needs to collect, merge, and process states from both data and control planes. This paper sheds light upon the benefits of utilizing such an approach to support feature extraction and data collection for network automation.
数据驱动网络的控制和数据平面可编程性
随着网络复杂性的不断增长,需要越来越多的复杂方法来有效地管理和协调众多的网络环境。现有的几种解决方案,如OpenFlow、NetConf、P4、DPDK等,都允许在控制和数据平面级别实现网络可编程性,从而推动了许多高性能网络应用的创新。然而,随着关键应用的严格要求的增加,网络体系结构及其操作也需要重新设计。特别是,机器学习的最新进展利用软件定义基础设施的现有进展,为网络管理自动化开辟了新的机会。我们认为,有效的数据驱动网络管理解决方案的设计需要收集、合并和处理来自数据和控制平面的状态。本文阐明了利用这种方法支持网络自动化的特征提取和数据收集的好处。
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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