Empowering Sketches with Machine Learning for Network Measurements

Tong Yang, Lun Wang, Yulong Shen, Muhammad Shahzad, Qun Huang, Xiaohong Jiang, Kun Tan, Xiaoming Li
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引用次数: 24

Abstract

Network monitoring and management require accurate statistics of a variety of flow-level metrics, such as flow sizes, top-k flows, and number of flows. Arguably, the most commonly used data structure to record and measure these metrics is the sketch. While a significant amount of work has already been done on sketching techniques, there is still a lot of room for improvement because the accuracy of existing sketches depends a lot on the nature of network traffic and varies significantly as the network traffic characteristics change. In this paper, we propose the idea of employing machine learning to reduce this dependence of the accuracy of sketches on network traffic characteristics and present a generalized machine learning framework that increases the accuracy of sketches significantly. We further present three case studies, where we applied our framework on sketches for measuring three well-known flow-level network metrics. Experimental results show that machine learning helps decrease the error rates of existing sketches by up to 202 times.
授权草图与机器学习网络测量
网络监控和管理需要准确统计各种流量级指标,如流量大小、top-k流量和流量数量。可以说,最常用的记录和度量这些指标的数据结构是草图。虽然在草图技术上已经做了大量的工作,但仍然有很大的改进空间,因为现有草图的准确性在很大程度上取决于网络流量的性质,并且随着网络流量特征的变化而变化很大。在本文中,我们提出了使用机器学习来减少草图准确性对网络流量特征的依赖的想法,并提出了一个广义的机器学习框架,可以显着提高草图的准确性。我们进一步提出了三个案例研究,其中我们将我们的框架应用于测量三个众所周知的流量级网络指标的草图。实验结果表明,机器学习将现有草图的错误率降低了202倍。
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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