用于软件定义数据中心网络带宽预测的深度递归神经网络

Naina Kumari, Parvathi M H, Siva Kumar Gangarapu, K. Subramaniam
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引用次数: 1

摘要

随着5G SDN(软件定义网络)的出现,对SDN控制设备之间不间断数据流的需求大幅增长。这是由于高带宽消耗的应用程序,如在线游戏,现场电视广播/广播,视频会议等,需要持续的可用带宽。确保这些应用程序的带宽可用性和无缝服务交付构成了巨大的挑战。网络监控和负载预测将在有效分配可用带宽方面发挥重要作用。然而,现有的图像缺乏预测能力,并且在sdn中使用时在时间方面有很大的开销。在本文中,我们提出了一种使用长短期记忆(LSTM)的深度学习模型,以最小的开销灌输预测能力。利用这种内置的路由智能,可以有效地分配网络和计算资源。我们的解决方案可以根据来自数据中心交换机(如cisco nexus 9000、juniper、arista等)的遥测数据,预测网络中链路上的平均Tx和Rx负载。我们使用的遥测方案是基于推送的流遥测,开销几乎可以忽略不计。该模型预测带宽利用率的准确率约为90%。服务提供商可以利用网络中的这种预测能力,从而为最终用户提供具有更高体验质量(QoE)的应用程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Recurrent Neural Network for Bandwidth Prediction in Software Defined Data Center Networks
With the advent of 5G SDN (Software-defined networking), there has been a huge growth in demand for uninterrupted flow of data across SDN controlled devices. This is due to high bandwidth consuming applications like online games, live telecast/broadcast, video conferencing, etc., which requires continuous available bandwidth. Ensuring bandwidth availability and seamless service delivery of these applications pose great challenges. Network monitoring and load prediction would play an important role in allocating available bandwidth efficiently. However, existing art lacks prediction capability and has a significant overhead in terms of time when used in SDNs. In this paper, we propose a deep learning model using Long Short Term Memory (LSTM) to inculcate prediction capability with minimal overhead. With this built-in intelligence in routing, network and computation resources can be allocated efficiently. Our solution can predict average Tx and Rx load across a link in network based on telemetry data from data center switches like cisco nexus 9000, juniper, arista, etc. The telemetry scheme we used is push based streaming telemetry with almost negligible overhead. The proposed model predicts utilized bandwidth with about 90% accuracy. This prediction capability in networks can be exploited by service provider who in turn provides applications with higher Quality of Experience (QoE) to the end-users.
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