一种提高移动计算环境下自适应应用分区效率的混合粒度图

E. Abebe, C. Ryan
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引用次数: 17

摘要

采用自适应对象迁移实现在普适环境中执行繁重应用的可行性取决于自适应算法的计算效率及其决策的有效性。这两个因素在很大程度上是由设备的资源约束来预测的,它们在很大程度上受到执行适配决策的粒度的影响。本文提出了一种将粗粒度方法的效率与细粒度方法的效率相结合的新型自适应粒度。本文提出了一种通过动态分解运行时类图来实现这种粒度级别的新方法,并在实际应用程序的语料库上进行了经验评估。研究表明,该方法通过将网络开销降低至少17%至99%来提高适应决策的效率,同时保持与类水平适应相当的决策效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hybrid Granularity Graph for Improving Adaptive Application Partitioning Efficacy in Mobile Computing Environments
The feasibility of using adaptive object migration to enable the execution of heavy applications in pervasive environments, is determined by the computational efficiency of adaptation algorithms and the efficacy of their decisions. These two factors, which are largely predicated by the resource constraints of devices, are heavily influenced by the granularity at which adaptation decisions are performed. This paper proposes a new type of adaptation granularity which combines the efficiency of coarse level approaches with the efficacy of fine-grained adaptation. A novel approach for achieving this level of granularity through the dynamic decomposition of runtime class graphs is presented and empirically evaluated on a corpus of real world applications. It is shown that the approach improves the efficacy of adaptation decisions by reducing network overheads by a minimum of 17% to as much 99%, while maintaining comparable decision making efficiency to class level adaptation.
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