Framework for Adaptive Computation Offloading in IoT Applications

Shihong Chen, B. Liu, Xing Chen, Ying Zhang, Gang Huang
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引用次数: 7

Abstract

The internet of things (IoT) attracts great interest in many application domains concerned with monitoring and control of physical phenomena. IoT applications try to provide more and more functionality and then they inevitably become so complex as to make the limits of devices worse, which may lead to poor performance of applications. Computation offloading is a promising way to improve the performance of an IoT application by executing some parts of the application on remote devices or servers. However, supporting such capability is not easy for application developers due to (1) adaptability: IoT applications often face changes of runtime environments so that the adaptation on offloading is needed. (2) effectiveness: when the device context changes, it needs to dynamically decide the deployment plan of computation tasks, and the reduced execution time must be greater than the network delay and extra overheads caused by offloading. This paper proposes a framework which supports IoT applications with adaptive computation offloading capability. First, a design pattern is proposed to enable an application to be computation offloaded on-demand. Second, an estimation model is presented to automatically decide the deployment plan for offloading. Third, a framework is implemented to support the design pattern and the estimation model. A thorough evaluation on the real-world application is proposed, and the results show that our approach can help reduce execution time by over 45% in most scenarios.
物联网应用中自适应计算卸载框架
物联网(IoT)在许多涉及物理现象监测和控制的应用领域引起了人们的极大兴趣。物联网应用程序试图提供越来越多的功能,然后它们不可避免地变得如此复杂,以至于使设备的限制变得更糟,这可能导致应用程序性能不佳。通过在远程设备或服务器上执行应用程序的某些部分,计算卸载是提高物联网应用程序性能的一种很有前途的方法。然而,对于应用程序开发人员来说,支持这种能力并不容易,因为(1)适应性:物联网应用程序经常面临运行时环境的变化,因此需要在卸载时进行适应。(2)有效性:当设备上下文发生变化时,需要动态决定计算任务的部署计划,减少的执行时间必须大于网络延迟和卸载带来的额外开销。本文提出了一个具有自适应计算卸载能力的支持物联网应用的框架。首先,提出了一种设计模式,使应用程序能够按需卸载计算。其次,提出了一种自动确定卸载部署计划的估计模型。第三,实现一个框架来支持设计模式和评估模型。对实际应用程序进行了全面的评估,结果表明,我们的方法在大多数情况下可以帮助减少45%以上的执行时间。
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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