Fine-grained load balancing with proactive prediction and adaptive rerouting in data center

IF 0.7 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Weimin Gao, Jiaming Zhong, Caihong Peng, Xinlong Li, Xiangbai Liao
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引用次数: 0

Abstract

Though the existing load balancing designs successfully make full use of available parallel paths and attain high bisection network bandwidth, they reroute flows regardless of their dissimilar performance requirements. But traffic in modern data center networks exhibits short bursts characteristic, which can easily lead to network congestion. The short flows suffer from the problems of large queuing delay and packet reordering, while the long flows fail to obtain high throughput due to low link utilization and packet reordering. In order to solve these inefficiency, we designed a fine-grained load balancing method (FLB), which uses an active monitoring mechanism to split traffic, and flexibly transfers flowlet to non-congested path, effectively reducing the negative impact of burst flow on network performance. Besides, to avoid packet reordering, FLB leverages the probe packets to estimate the end-to-end delay, thus excluding paths that potentially cause packet reordering. The test results of NS2 simulation show that FLB significantly reduces the average and tail flow completion time of flows by up to 59% and 56% compared to the state-of-the-art multi-path transmission scheme with less computational overhead, as well as increases the throughput of long flow.
数据中心中具有主动预测和自适应重路由的细粒度负载平衡
虽然现有的负载均衡设计成功地充分利用了可用的并行路径并获得了较高的平分网络带宽,但它们不考虑不同的性能要求而重新路由流。但现代数据中心网络的流量呈现出短突发的特点,容易导致网络拥塞。短流存在排队延迟大、数据包重排序等问题,长流存在链路利用率低、数据包重排序等问题,无法获得高吞吐量。为了解决这些低效率问题,我们设计了一种细粒度负载均衡方法(FLB),该方法利用主动监控机制对流量进行分流,并将流量灵活地转移到非拥塞路径上,有效降低突发流量对网络性能的负面影响。此外,为了避免数据包重排序,FLB利用探测数据包来估计端到端延迟,从而排除可能导致数据包重排序的路径。NS2仿真的测试结果表明,与目前最先进的多路径传输方案相比,FLB在计算开销更小的情况下显著减少了流的平均完成时间和尾流完成时间,分别减少了59%和56%,并提高了长流的吞吐量。
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来源期刊
Journal of High Speed Networks
Journal of High Speed Networks Computer Science-Computer Networks and Communications
CiteScore
1.80
自引率
11.10%
发文量
26
期刊介绍: The Journal of High Speed Networks is an international archival journal, active since 1992, providing a publication vehicle for covering a large number of topics of interest in the high performance networking and communication area. Its audience includes researchers, managers as well as network designers and operators. The main goal will be to provide timely dissemination of information and scientific knowledge. The journal will publish contributed papers on novel research, survey and position papers on topics of current interest, technical notes, and short communications to report progress on long-term projects. Submissions to the Journal will be refereed consistently with the review process of leading technical journals, based on originality, significance, quality, and clarity. The journal will publish papers on a number of topics ranging from design to practical experiences with operational high performance/speed networks.
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