分布式实时系统中满足端到端截止日期的计算效率驱动的作业移除策略

Miao Song, Shuhui Li, Shangping Ren, S. Hong, X. Hu
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引用次数: 0

摘要

在分布式实时系统中,当资源不能满足工作负载需求时,一些作业必须从进一步的执行中删除。删除哪个作业的决策直接影响系统的计算效率,即成功完成实时作业的计算量与执行可能完成或可能不完成的作业的总计算量之比。针对分布式实时应用需要保证端到端截止时间的情况,提出了两种以最大化系统计算效率为目标的作业移除策略。基于TGFF[1]生成的基准应用程序进行了实验,并与最近的文献工作进行了比较。结果显示了所开发方法的明显优势-它们可以实现多达20%的计算效率提高。
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Computation efficiency driven job removal policies for meeting end-to-end deadlines in distributed real-time systems
In distributed real-time systems, when resource cannot meet workload demand, some jobs have to be removed from further execution. The decision as to which job to remove directly influences the system computation efficiency, i.e., the ratio between computation contributed to successful completions of real-time jobs and total computation contributed to the execution of jobs that may or may not be completed. The paper presents two job removal policies which aim at maximizing system's computation efficiency for distributed real-time applications where the applications' end-to-end deadlines must be guaranteed. Experiments based on benchmark applications generated by TGFF [1] are conducted and compared with recent work in the literature. The results show clear benefits of the developed approaches - they can achieve as much as 20% computation efficiency improvement.
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