在移动环境中使用分布式抽象类图改进自适应卸载

E. Abebe, C. Ryan
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引用次数: 2

摘要

自适应卸载动态地将计算量大的应用程序的部分分配给远程设备,以实现特定于上下文的优化。然而,由于现有的最先进的方法会在存储、更新和分区应用程序图方面产生巨大的开销,因此本文提出了一种新的分布式方法来减轻这种开销。具体来说,每个设备在自己的内存空间中维护一个仅由组件组成的图,同时维护远程设备中组件的抽象元素。这种方法消除了在每个设备上存储和更新完整应用程序图的需要,并降低了在适应过程中对应用程序进行分区的成本。一项涉及在异构协作中适应计算量大的开源应用程序的评估表明,新方法将图更新网络成本降低了100%,协作范围内的内存成本降低了37%到50%,电池使用量降低了63%到93%,适应时间降低了19%到98%,同时对两个考虑的应用程序的适应效率提高了12%和34%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Adaptive Offloading Using Distributed Abstract Class Graphs in Mobile Environments
Adaptive offloading dynamically distributes portions of a computationally heavy application to remote devices to achieve context specific optimisations. However, since existing state-of-the-art approaches incur significant overhead from storing, updating and partitioning application graphs this paper proposes a novel distributed approach to alleviate much of this overhead. Specifically, each device maintains a graph consisting only of components in its own memory space, while maintaining abstraction elements for components in remote devices. This approach removes the need to store and update complete application graphs on each device and reduces the cost of partitioning an application during adaptation. An evaluation involving computationally heavy open-source applications adapting in a heterogeneous collaboration showed that the new approach reduced graph update network cost by 100%, collaboration-wide memory cost by between 37% and 50%, battery usage by between 63% and 93%, and adaptation time by between 19% and 98%, while improving efficacy of adaptation by 12% and 34% for two of the considered applications.
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