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Probabilistic parallel measurement of network traffic at multiple locations

机译:多个位置的网络流量的概率并行测量

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摘要

Measuring the per-flow traffic in large networks is very challenging due to the high performance requirements. In addition to that, if traffic is measured at multiple points in the network at the same time, it becomes necessary to merge the observations in order to obtain network-wide statistics. When doing so, packets must be accounted for only once, even if they traverse more than one measurement point. Today??s standard technique, sampling-based traffic accounting, results in large approximation errors. Here, we describe an approach named Distributed Probabilistic Counting (DPC). DPC is based on a probabilistic data representation. It provides accurate traffic statistics at very low per-packet effort, and is able to merge measurement from multiple network locations while counting each distinct packet only once.
机译:由于高性能要求,在大型网络中测量每流流量非常具有挑战性。除此之外,如果同时在网络中的多个点测量流量,则有必要合并观测值以获得网络范围的统计信息。这样做时,即使数据包经过一个以上的测量点,也只能计算一次。如今,基于采样的流量统计的标准技术导致了较大的近似误差。在这里,我们描述了一种称为分布式概率计数(DPC)的方法。 DPC基于概率数据表示。它以非常低的每个数据包工作量提供准确的流量统计信息,并且能够合并来自多个网络位置的测量结果,同时仅对每个不同的数据包计数一次。

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