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Macroflow: A fine-grained networking abstraction for job completion time oriented scheduling in datacenters

机译:宏流:细粒度的网络抽象,用于数据中心中以作业完成时间为导向的调度

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For a datacenter running a data-parallel analytic framework, minimizing job completion time (JCT) is crucial for application performance. The key observation is that JCT could be improved, if network scheduling can exploit the opportunity of decreasing the amount of occupied machine slot-time spend on communication. We propose Macroflow, a networking abstraction that captures the primitive resource granularity of data-parallel frameworks. We study the inter-macroflow scheduling problem for decreasing application JCT. We propose the Smallest-Macroflow-First (SMF) and Smallest-Average-Macroflow-First (SAMF) heuristics that greedily schedule macroflows based on their network footprint. Trace-driven simulations demonstrate that our algorithms can reduce the average and tail JCT of network-intensive jobs by up to 20% and 25%, respectively; at the same time, the throughput of computation-intensive jobs is increased by up to 2.2×.
机译:对于运行数据并行分析框架的数据中心,最小化作业完成时间(JCT)对于应用程序性能至关重要。关键的观察结果是,如果网络调度可以利用减少通信中占用的计算机时隙时间的机会,则可以改善JCT。我们提出了Macroflow,这是一种网络抽象,可捕获数据并行框架的原始资源粒度。我们研究了减少应用JCT的宏流间调度问题。我们建议最小宏流优先(SMF)和最小平均宏流优先(SAMF)启发式算法,根据它们的网络占用空间贪婪地调度宏流。跟踪驱动的仿真表明,我们的算法可以将网络密集型作业的平均JCT和尾部JCT分别降低20%和25%。同时,计算密集型作业的吞吐量最多提高了2.2倍。

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