移动边缘计算的智能高效任务缓存

Amir Moradi, Fatemeh Rezaei
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引用次数: 0

摘要

鉴于集中式云计算存在的问题、超低延迟应用的出现以及物联网(IoT)的需求,人们发现需要新的方法来支持集中式云计算技术。移动边缘计算是缓解这些挑战的解决方案之一。本文研究了设备到设备(D2D)辅助网络边缘的任务缓存。在提出的方案中,我们使用卷积神经网络(CNN)预测了未来重新请求任务的可能性。除了任务本身的特性(包括所需的缓存容量和处理资源)外,我们还根据这种预测可能性、上次请求的数量、邻域中该任务类型的缓存版本数量,使用所提出的使用预测请求的多标准任务排序(MCTRP)方案对任务进行排序,并在每个移动用户设备(MUE)的缓存中选择最佳替换选项。事实证明,建议的方案在减少延迟和能源消耗以及提高 MUE 的效用方面具有相当大的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Intelligent and efficient task caching for mobile edge computing

Intelligent and efficient task caching for mobile edge computing

Given the problems with a centralized cloud and the emergence of ultra-low latency applications, and the needs of the Internet of Things (IoT), it has been found that novel methods are needed to support centralized cloud technology. Mobile edge computing is one of the solutions to mitigate these challenges. In this paper, we study task caching at Device to Device (D2D)-assisted network edge. In the proposed scheme, we predict the possibility of re-requesting tasks in the future using convolutional neural networks (CNN). Based on this predicted possibility, the number of last requests, and the number of cached versions of this task type in the neighbors, in addition to the characteristics of a task itself, including the required cache volume and processing resources, we rank the tasks using the proposed Multi-Criteria Task Ranking using Predicted requests (MCTRP) scheme and select the best replacement option in the cache of each Mobile User Equipment (MUE). The proposed scheme has proved to be of considerable benefit in terms of reducing delay and energy consumption and improving the utility of MUEs.

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