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Machine Learning and Deep Learning Based Traffic Classification and Prediction in Software Defined Networking

机译:基于机器学习和基于深度学习的流量分类和预测软件定义网络

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The Internet is constantly growing in size and becoming more complex. The field of networking is thus continuously progressing to cope with this monumental growth of network traffic. While approaches such as Software Defined Networking (SDN) can provide a centralized control mechanism for network traffic measurement, control, and prediction, still the amount of data received by the SDN controller is huge. To process that data, it has recently been suggested to use Machine Learning (ML). In this paper, we review existing proposal for using ML in an SDN context for traffic measurement (specifically, classification) and traffic prediction. We will especially focus on approaches that use Deep learning (DL) in traffic prediction, which seems to have been mostly untapped by existing surveys. Furthermore, we discuss remaining challenges and suggest future research directions.
机译:互联网规模不断增长,变得更加复杂。因此,网络领域不断地逐步应对这种网络流量的巨大增长。虽然诸如软件定义的网络(SDN)的方法可以提供用于网络流量测量,控制和预测的集中控制机制,但是SDN控制器接收的数据量仍然是巨大的。要处理数据,最近已建议使用机器学习(ML)。在本文中,我们在SDN上下文中查看了现有提案,用于交通测量(具体,分类)和流量预测。我们将特别关注在交通预测中使用深度学习(DL)的方法,这似乎主要被现有的调查尚未开发。此外,我们讨论了剩下的挑战,并建议未来的研究方向。

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