异构云计算环境下的缓存感知任务调度算法

S. Nagendra Prasad, Subhash Kulkarni, Prasanth Venkatareddy
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引用次数: 2

摘要

异构多核计算环境越来越多地被用于执行科学工作负载。异构计算框架通过采用动态电源管理(DPM)和动态电压频率缩放(DVFS)来减少执行实时数据密集型工作负载的能量消耗。然而,在异构计算环境下,降低能耗和提高性能已成为构建工作负载调度模型的主要制约因素。为了构建折衷模型,本工作假定不同的任务将具有不同的执行路径、I/O访问、内存、活动处理和缓存需求。考虑到这一假设,本文提出了最小化能量消耗和更有效利用缓存资源的缓存感知工作负载调度算法。与现有的基于多目标和基于dvfs的工作负载调度算法相比,CATS模型的执行时间和能耗明显降低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cache Aware Task Scheduling Algorithm for Heterogeneous Cloud Computing Environment
heterogeneous multicore computational environment are increasingly being used for executing scientific workload. Heterogeneous computational framework aid is reducing energy dissipation for executing real-time data intensive workload by employing Dynamic Power Management (DPM) and Dynamic Voltage and Frequency Scaling (DVFS). However, reducing energy and improving performance is becoming major constraint in modelling workload scheduling model in heterogeneous computational environment. For building tradeoffs model this work assume that different task will have different execution path, I/O access, memory, active processing, and cache requirement. Considering such assumption this paper present cache aware workload scheduling (CATS) algorithm by minimizing energy dissipation and utilizing cache resource more efficiently. The CATS model achieves much lesser execution time and energy consumption when compared with existing multiobjective based and DVFS-based workload scheduling algorithm.
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