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Clustering-preserving Network Flow Sketching

机译:保持群集的网络流草图

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Network monitoring is vital in modern clouds and data center networks that need diverse traffic statistics ranging from flow size distributions to heavy hitters. To cope with increasing network rates and massive traffic volumes, sketch based approximate measurement has been extensively studied to trade the accuracy for memory and computation cost, which unfortunately, is sensitive to hash collisions.This paper presents a clustering-preserving sketch method to be resilient to hash collisions. We provide an equivalence analysis of the sketch in terms of the K-means clustering. Based on the analysis result, we cluster similar network flows to the same bucket array to reduce the estimation variance and use the average to obtain unbiased estimation. Testbed shows that the framework adapts to line rates and provides accurate query results. Real-world trace-driven simulations show that LSS remains stable performance under wide ranges of parameters and dramatically outperforms state-of-the-art sketching structures, with over 103 to 105 times reduction in relative errors for per-flow queries as the ratio of the number of buckets to the number of network flows reduces from 10% to 0.1%.
机译:网络监控在现代云和数据中心网络中至关重要,而现代云和数据中心网络需要从流量大小分布到沉重打击者等各种流量统计信息。为了应对不断增长的网络速率和庞大的通信量,已广泛研究了基于草图的近似测量,以换取存储和计算成本的准确性,但不幸的是,此方法对哈希冲突敏感。哈希冲突。我们根据K均值聚类提供草图的等效分析。根据分析结果,我们将相似的网络流聚类到同一存储桶阵列,以减少估计方差,并使用平均值获得无偏估计。测试平台表明,该框架可以适应线路速率并提供准确的查询结果。现实世界中的跟踪驱动仿真表明,LSS在各种参数下均保持稳定的性能,并且性能远远超过了最先进的草图绘制结构,超过10种 3 至10 5 桶数量与网络流量数量的比率从10%降低到0.1%,从而使每流查询的相对错误减少了2倍。

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