Asymptotically Optimal Approximation Algorithms for Coflow Scheduling

Hamidreza Jahanjou, Erez Kantor, R. Rajaraman
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引用次数: 18

Abstract

Many modern datacenter applications involve large-scale computations composed of multiple data flows that need to be completed over a shared set of distributed resources. Such a computation completes when all of its flows complete. A useful abstraction for modeling such scenarios is a coflow, which is a collection of flows (e.g., tasks, packets, data transmissions) that all share the same performance goal. In this paper, we present the first approximation algorithms for scheduling coflows over general network topologies with the objective of minimizing total weighted completion time. We consider two different models for coflows based on the nature of individual flows: circuits, and packets. We design constant-factor polynomial-time approximation algorithms for scheduling packet-based coflows with or without given flow paths, and circuit-based coflows with given flow paths. Furthermore, we give an O(log n/log log n)-approximation polynomial time algorithm for scheduling circuit-based coflows without given flow paths (here n is the number of network edges). We obtain our results by developing a general framework for coflow schedules, based on interval-indexed linear programs, which may extend to other coflow models and objective functions and may also yield improved approximation bounds for specific network scenarios. We also present an experimental evaluation of our approach for circuit-based coflows that show a performance improvement of at least %22 on average over competing heuristics.
Coflow调度的渐近最优逼近算法
许多现代数据中心应用程序涉及由多个数据流组成的大规模计算,这些数据流需要在一组共享的分布式资源上完成。这样的计算在其所有流完成时完成。对这种场景进行建模的一个有用的抽象是coflow,它是共享相同性能目标的流(例如,任务、数据包、数据传输)的集合。在本文中,我们提出了在一般网络拓扑上以最小化总加权完成时间为目标的协同流调度的第一个近似算法。我们考虑基于单个流的性质的两种不同的共流模型:电路和分组。我们设计了常因子多项式时间逼近算法来调度有或没有给定流路径的基于分组的共流,以及有给定流路径的基于电路的共流。此外,我们给出了一个O(log n/log log n)近似多项式时间算法,用于调度没有给定流路径的基于电路的共流(这里n是网络边的数量)。我们通过开发基于区间索引线性规划的coflow调度的一般框架获得了我们的结果,该框架可以扩展到其他coflow模型和目标函数,并且还可以为特定的网络场景产生改进的近似边界。我们还对基于电路的共流方法进行了实验评估,结果表明,与竞争启发式方法相比,我们的方法的性能平均提高了至少%22。
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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