Impact of Segment Size and Parallel Streams on TCP BBR

J. Crichigno, Zoltan Csibi, E. Bou-Harb, N. Ghani
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引用次数: 8

Abstract

TCP BBR has been recently proposed as a congestion control algorithm. BBR represents a disruption from the window-based loss-based congestion control used during the last 30 years. While BBR has been tested for trivial applications (e.g., browsing, YouTube), its use for moving big data has not been extensively studied yet. Features that largely impact the efficiency of transporting big flows are the use of parallel streams and the maximum segment size (MSS). This paper studies the impact of these two features on big flows, in the presence of packet losses and latency. Empirical results demonstrate that BBR reacts better than window-based loss-based algorithms (Cubic, Reno, HTCP) to large MSS. Similarly, as the number of parallel streams used in a data transfer increases, the performance gap between BBR and Cubic, Reno, and HTCP increases in favor of BBR. For example, in a 20-millisecond RTT, 10 Gbps network with high corruption rate (0.01%), BBR's average improvement factor from using multiple streams is almost 4. In contrast, HTCP's, Cubic's, and Reno's improvement factors are below 2. Using large MSS and parallel streams permit BBR to sustain high throughput, even in the presence of a significant corruption rate.
段大小和并行流对TCP BBR的影响
TCP BBR是最近提出的一种拥塞控制算法。BBR代表了对过去30年使用的基于窗口的基于损失的拥塞控制的颠覆。虽然BBR已经在一些琐碎的应用(例如,浏览,YouTube)中进行了测试,但它在移动大数据方面的应用还没有得到广泛的研究。在很大程度上影响输送大流量效率的特征是平行流的使用和最大分段大小(MSS)。本文研究了在存在丢包和延迟的情况下,这两个特征对大流量的影响。实证结果表明,BBR比基于窗口的损失算法(Cubic, Reno, HTCP)对大MSS的反应更好。同样,随着数据传输中使用的并行流数量的增加,BBR与Cubic、Reno和HTCP之间的性能差距也会增加,从而有利于BBR。例如,在20毫秒RTT、高损坏率(0.01%)的10gbps网络中,使用多个流的BBR的平均改进因子几乎是4。相比之下,HTCP、Cubic和Reno的改进系数均低于2。使用大型MSS和并行流允许BBR保持高吞吐量,即使存在显着的损坏率。
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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