DCUDA: Dynamic GPU Scheduling with Live Migration Support

Fan Guo, Yongkun Li, John C.S. Lui, Yinlong Xu
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引用次数: 12

Abstract

In clouds and data centers, GPU servers which consist of multiple GPUs are widely deployed. Current state-of-the-art GPU scheduling algorithm are "static" in assigning applications to different GPUs. These algorithms usually ignore the dynamics of the GPU utilization and are often inaccurate in estimating resource demand before assigning/running applications, so there is a large opportunity to further load balance and to improve GPU utilization. Based on CUDA (Compute Unified Device Architecture), we develop a runtime system called DCUDA which supports "dynamic" scheduling of running applications between multiple GPUs. In particular, DCUDA provides a realtime and lightweight method to accurately monitor the resource demand of applications and GPU utilization. Furthermore, it provides a universal migration facility to migrate "running applications" between GPUs with negligible overhead. More importantly, DCUDA transparently supports all CUDA applications without changing their source codes. Experiments with our prototype system show that DCUDA can reduce 78.3% of overloaded time of GPUs on average. As a result, for different workloads consisting of a wide range applications we studied, DCUDA can reduce the average execution time of applications by up to 42.1%. Furthermore, DCUDA also reduces 13.3% energy in the light load scenario.
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DCUDA:支持实时迁移的动态GPU调度
在云和数据中心中,由多个GPU组成的GPU服务器被广泛部署。目前最先进的GPU调度算法在分配应用程序到不同的GPU时是“静态的”。这些算法通常忽略了GPU利用率的动态,并且在分配/运行应用程序之前估计资源需求通常是不准确的,因此有很大的机会进一步平衡负载并提高GPU利用率。基于CUDA(计算统一设备架构),我们开发了一个名为DCUDA的运行时系统,它支持在多个gpu之间运行应用程序的“动态”调度。特别是,DCUDA提供了一种实时和轻量级的方法来准确监控应用程序的资源需求和GPU利用率。此外,它提供了一个通用的迁移工具,可以在gpu之间迁移“正在运行的应用程序”,开销可以忽略不计。更重要的是,DCUDA透明地支持所有CUDA应用程序,而无需更改其源代码。在我们的原型系统上进行的实验表明,DCUDA可以平均减少gpu的过载时间78.3%。因此,对于由我们研究的广泛应用程序组成的不同工作负载,DCUDA可以将应用程序的平均执行时间减少42.1%。此外,DCUDA还可以在轻负载情况下减少13.3%的能量。
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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