Adaptive code offloading for mobile cloud applications: exploiting fuzzy sets and evidence-based learning

Huber Flores, S. Srirama
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引用次数: 106

Abstract

Mobile cloud computing is arising as a prominent domain that is seeking to bring the massive advantages of the cloud to the resource constrained smartphones, by following a delegation or offloading criteria. In a delegation model, a mobile device consumes services from multiple clouds by efficiently utilizing solutions like middleware. In the offloading model, a mobile application is partitioned and analyzed so that the most computational expensive operations at code level can be identified and offloaded for remote processing. While code offloading is studied extensively for the development of mobile cloud applications, much of the advantages of cloud computing are still left unexploited and poorly considered in these approaches. Cloud computing may introduce many other dynamic variables like performance metrics, parallelization of tasks, elasticity etc., to current code offloading models that could affect the overall offloading decision process. To address this, we propose a fuzzy decision engine for code offloading, that considers both mobile and cloud variables. The cloud parameters and rules are introduced asynchronously to the mobile, using notification services. The paper also proposes a strategy to enrich the offloading decision process with evidence-based learning methods, by exploiting cloud processing capabilities over code offloading traces.
移动云应用程序的自适应代码卸载:利用模糊集和循证学习
移动云计算作为一个突出的领域正在兴起,它试图通过遵循委托或卸载标准,将云的巨大优势带到资源有限的智能手机上。在委托模型中,移动设备通过有效地利用中间件等解决方案来使用来自多个云的服务。在卸载模型中,对移动应用程序进行分区和分析,以便可以识别代码级别上计算成本最高的操作并卸载以进行远程处理。虽然代码卸载在移动云应用程序的开发中得到了广泛的研究,但在这些方法中,云计算的许多优势仍然没有得到充分利用和考虑。云计算可能会向当前的代码卸载模型引入许多其他动态变量,如性能指标、任务并行化、弹性等,这些变量可能会影响整个卸载决策过程。为了解决这个问题,我们提出了一个用于代码卸载的模糊决策引擎,它同时考虑了移动和云变量。使用通知服务将云参数和规则异步地引入移动设备。本文还提出了一种策略,通过利用代码卸载轨迹上的云处理能力,以基于证据的学习方法丰富卸载决策过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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