数据中心网络中的快速收敛拥塞控制

Yukun Zhou, Dezun Dong, Zhengbin Pang, Junhong Ye, Feng Jin
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引用次数: 0

摘要

RDMA (Remote Direct Memory Access)技术在数据中心网络中的广泛应用,提高了在发生拥塞时收敛速度的严密性。快速收敛显著减少了缓冲区占用,从而降低了触发基于优先级的流量控制(PFC)的概率。此外,随着链路速度的快速增长,传播延迟变得越来越短,相应地,排队延迟成为端到端延迟的主要部分。快速收敛和低缓冲区占用对于降低队列延迟和流完成时间至关重要。我们提出了一种快速收敛的拥塞控制方案DQCC (Double-Q拥塞控制),它由两个基本组成部分组成:(i)基于ecn标记比率的队列缓冲区占用估计(QBOE)解决方案和(ii)实现快速收敛的队列构建速率驱动的速率调整(QDRA)机制。我们进行了大量的实验来评估DQCC的性能,结果表明DQCC大大加快了收敛过程。DQCC同时实现了低尾延迟和低缓冲区占用。
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Fast-Converging Congestion Control in Datacenter Networks
The widespread deployment of Remote Direct Memory Access (RDMA) in datacenter networks increases the stringency for convergence speed when congestion occurs. Fast convergence significantly reduces buffer occupancy, which in turn lessens the probability of triggering Priority-based Flow Control (PFC). Besides, the propagation delay becomes shorter with rapidly growing link speed, which correspondingly makes the queueing delay a major part of end-to-end latency. Fast convergence and low buffer occupancy become more essential for lowering queue delay and flow complete time. We present DQCC (Double-Q Congestion Control), a fast-converging congestion control scheme, which consists of two fundamental components: (i) an ECN-marking-ratio-based queue buffer occupancy estimating (QBOE) solution and (ii) a queue-building-rate driven rate adjustment (QDRA) mechanism to achieve fast convergence. We conduct extensive experiments to evaluate the performance of DQCC, and the results show that DQCC greatly accelerates the convergence process. DQCC achieves low tail latency and low buffer occupancy simultaneously.
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