CELL: Counter Estimation for Per-flow Traffic in Streams and Sliding Windows

Rana Shahout, R. Friedman, Dolev Adas
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引用次数: 3

Abstract

Measurement capabilities are fundamental for a variety of network applications. Typically, recent data items are more relevant than old ones, a notion we can capture through a sliding window abstraction. These capabilities require a large number of counters in order to monitor the traffic of all network flows. However, SRAM memories are too small to contain these counters. Previous works suggested replacing counters with small estimators, trading accuracy for reduced space. But these estimators only focus on the counters’ size, whereas often flow ids consume more space than their respective counters. In this work, we present the CELL algorithm that combines estimators with efficient flow representation for superior memory reduction.We also extend CELL to the sliding window model, which prioritizes the recent data, by presenting two variants named RAND-CELL and SHIFT-CELL. We formally analyze the error and memory consumption of our algorithms and compare their performance against competing approaches using real-world Internet traces. These measurements exhibit the benefits of our work and show that CELL consumes at least 30% less space than the best-known alternative. The code is available in open source.
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CELL:流和滑动窗口中每流流量的计数器估计
测量能力是各种网络应用的基础。通常,最近的数据项比旧的数据项更相关,我们可以通过滑动窗口抽象来捕捉这个概念。这些功能需要大量的计数器来监视所有网络流的流量。然而,SRAM存储器太小,无法容纳这些计数器。以前的工作建议用小型估算器代替计数器,以减少空间来换取准确性。但是这些估计器只关注计数器的大小,而流id通常比它们各自的计数器消耗更多的空间。在这项工作中,我们提出了CELL算法,该算法将估计器与有效的流表示相结合,以获得更好的内存减少。我们还将CELL扩展到滑动窗口模型,通过提出两个名为RAND-CELL和SHIFT-CELL的变体,该模型优先考虑最近的数据。我们正式分析了我们的算法的错误和内存消耗,并使用真实的互联网痕迹将它们与竞争方法的性能进行了比较。这些测量显示了我们工作的好处,并表明CELL比最知名的替代方案至少节省30%的空间。该代码是开源的。
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