面向Ad-Hoc计算的分散低延迟任务调度

Janick Edinger, Mamn Breitbach, Niklas Gabrisch, Dominik Schäfer, Christian Becker, Amr Rizk
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引用次数: 7

摘要

终端用户可以在带有代码卸载的临时计算环境中相互共享其计算资源。这增强了资源受限的移动设备的计算能力,并支持面向用户的交互式应用程序,否则将超出单个设备的能力。然而,ad-hoc计算带来了新的挑战,如设备的异构性和不可靠性。资源消费者必须在不依赖集中式调度器的情况下做出任务调度决策,以便在具有与任务执行时间顺序相同的通信延迟的环境中实现亚秒级响应时间。在本文中,我们提出了一种分散的低延迟任务调度方法,该方法可以最大限度地减少异构ad-hoc环境中的作业执行时间。我们提出了两种分散的任务调度算法,选择强大的计算资源进行并行任务执行,同时避免了设备拥塞造成的延迟。在基于实际应用和实际计算基础设施进行广泛评估之前,我们提供了这些算法性能的分析模型。我们的研究结果表明,分散调度可以动态地适应不同的系统负载,并且在任务和作业执行时间上都优于中央调度程序,从而在临时环境中实现低延迟的任务卸载。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decentralized Low-Latency Task Scheduling for Ad-Hoc Computing
End users can mutually share their computing resources in ad-hoc computing environments with code offloading. This augments the computational power of resource-constrained mobile devices and enables interactive user-facing applications that would otherwise exceed single device capabilities. However, ad-hoc computing comes along with new challenges such as heterogeneity and unreliability of devices. Resource consumers have to make task scheduling decisions without relying on a centralized scheduler to facilitate sub-second response times in environments with communication latencies that are in the order of the task execution times. In this paper, we present a decentralized low-latency task scheduling approach that minimizes job execution times in heterogeneous ad-hoc environments. We propose two decentralized task scheduling algorithms that select powerful computing resources for parallel task execution while avoiding delays that arise from congested devices. We provide an analytical model of the performance of these algorithms before conducting an extensive evaluation based on real-world applications and a realistic computing infrastructure. Our results show that decentralized scheduling can dynamically adapt to varying system load and outperform a central scheduler in both task and job execution times, which enables low-latency task offloading in ad-hoc environments.
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