Optimal Rate-Matrix Pruning For Heterogeneous Systems

Q4 Computer Science
Zhisheng Zhao, Debankur Mukherjee
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引用次数: 0

Abstract

We consider large-scale load balancing systems where processing time distribution of tasks depend on both task and server types. We analyze the system in the asymptotic regime where both the number of task and server types tend proportionally to infinity. In such heterogeneous setting, popular policies like Join Fastest Idle Queue (JFIQ), Join Fastest Shortest Queue (JFSQ) are known to perform poorly and they even shrink the stability region. Moreover, to the best of our knowledge, in this setup, finding a scalable policy with provable performance guarantee has been an open question prior to this work. In this paper, we propose and analyze two asymptotically delay-optimal dynamic load balancing policies: (a) one that efficiently reserves the processing capacity of each server for "good" tasks and route tasks under the Join Idle Queue policy; and (b) a speed-priority policy that increases the probability of servers processing tasks at a high speed. Leveraging a framework inspired by the graphon literature and using the mean-field method and stochastic coupling arguments, we prove that both policies above achieve asymptotic zero queueing, whereby the probability that a typical task is assigned to an idle server tends to 1 as the system scales.
异构系统的最优率矩阵剪枝
我们考虑大规模负载平衡系统,其中任务的处理时间分布取决于任务和服务器类型。我们分析了系统在任务和服务器类型的数量都成比例趋于无穷大的渐近区域。在这种异构设置中,众所周知,诸如加入最快空闲队列(JFIQ)、加入最快最短队列(JFSQ)等流行策略的性能很差,甚至会缩小稳定区域。此外,据我们所知,在此设置中,找到具有可证明性能保证的可扩展策略在此工作之前一直是一个悬而未决的问题。本文提出并分析了两种渐近延迟最优动态负载均衡策略:(a)在加入空闲队列策略下,有效地为“好”任务和路由任务保留每个服务器的处理能力;(b)速度优先级策略,增加服务器高速处理任务的可能性。利用图形文献启发的框架,并使用平均场方法和随机耦合参数,我们证明了上述两种策略都实现了渐近零排队,即随着系统规模的扩大,一个典型任务分配给空闲服务器的概率趋于1。
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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来源期刊
Performance Evaluation Review
Performance Evaluation Review Computer Science-Computer Networks and Communications
CiteScore
1.00
自引率
0.00%
发文量
193
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