High-Speed Per-Flow Traffic Measurement with Probabilistic Multiplicity Counting

Peter Lieven, B. Scheuermann
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引用次数: 43

Abstract

On today's high-speed backbone network links, measuring per-flow traffic information has become very challenging. Maintaining exact per-flow packet counters on OC-192 or OC-768 links is not practically feasible due to computational and cost constrains. Packet sampling as implemented in today's routers results in large approximation errors. Here, we present Probabilistic Multiplicity Counting (PMC), a novel data structure that is capable of accounting traffic per flow probabilistically. The PMC algorithm is very simple and highly parallelizable, and therefore allows for efficient implementations in software and hardware. At the same time, it provides very accurate traffic statistics. We evaluate PMC with both artificial and real-world traffic data, demonstrating that it outperforms other approaches.
基于概率多重计数的高速逐流流量测量
在今天的高速骨干网链路上,测量低流量信息变得非常具有挑战性。由于计算和成本的限制,在OC-192或OC-768链路上保持精确的per- low数据包计数器实际上是不可行的。在今天的路由器中实现的包采样会导致很大的近似误差。在这里,我们提出了概率多重计数(PMC),这是一种新的数据结构,能够以低概率的方式计算交通流量。PMC算法非常简单且具有高度并行性,因此允许在软件和硬件上实现客户端。同时,它提供了非常准确的交通统计数据。我们用人工和真实世界的交通数据来评估PMC,证明它优于其他方法。
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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