基于QoS约束的云数据中心绿色计算能耗感知任务调度策略

Xing Liu, Panwen Liu, Hongjing Li, Zheng Li, Chengming Zou, Haiying Zhou, Xin Yan, Ruoshi Xia
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引用次数: 5

摘要

具有服务质量(QoS)约束的能源优化已成为云数据中心面临的一个及时而重大的挑战。在满足云计算数据中心时间约束的前提下,实现了一种软硬件协同优化策略,使能源成本最小化。硬件方面,构建了支持dvfs的CPU/GPU/FPGA异构云基础架构。该基础架构具有很高的灵活性,可以根据软件运行时环境动态调整其硬件特性,从而构建与软件相匹配的硬件平台。基于该硬件平台,云应用程序可以以更低的能源成本更有效地执行。在软件方面,研究了可感知截止时间的节能任务调度算法。不同于传统的用启发式方法寻找最优调度解的方法,本文研究了一种基于改进数学形态学(MM)算法的调度方法。为了评估我们工作的性能,我们分别通过应用GA和MM算法计算了同构和异构云计算平台上傅里叶变换(FT)和高斯消去(GE)应用的能量成本。结果表明,在支持dvfs的异构云基础设施上运行的MM算法与在不支持dvfs的同构云基础设施上运行的GA算法相比,可以分别降低FT应用和GE应用的能源成本24.7%和37.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy-aware task scheduling strategies with QoS constraint for green computing in cloud data centers
Energy optimization with Quality-of-Service (QoS) constraint has become a timely and significant challenge for the cloud datacenters. In this paper, a hardware and software collaborative optimization strategy is implemented to minimize the energy cost while satisfying the time constraint of the cloud-computing datacenters. In the hardware aspect, a DVFS-capable CPU/GPU/FPGA heterogeneous cloud infrastructure is built. This infrastructure has high flexibility, and can adjust its hardware characteristics dynamically in terms of the software run-time contexts, so that a hardware platform which matches the software can be built. Based on this hardware platform, the cloud applications can be executed more efficiently with less energy cost. In the software aspect, the deadline-aware energy-efficient task scheduling algorithms are investigated. Different from the traditional approaches which search for the optimal scheduling solution by the heuristic approaches, a new scheduling approach based on the improved Mathematical Morphology (MM) algorithm is investigated in this paper. To evaluate the performance of our work, we calculated the energy cost of the Fourier transform (FT) and Gaussian elimination (GE) applications on the homogeneous and heterogeneous cloud computing platforms by applying the GA and MM algorithms, respectively. The results proved the MM algorithms running on the DVFS-capable heterogeneous cloud infrastructure could decrease the energy cost of the FT application and GE application respectively by 24.7% and 37.8%, if compared with the GA algorithm running on the DVFS-incapable homogeneous cloud infrastructure.
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