用于移动边缘/云计算的轻量级节能卸载框架

Akhmed Sakip, Ramazan Yersainov, Mokhira Atashikova, Timur Rakhimzhan, Dinh-Mao Bui, E. Huh, Sungyoung Lee
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引用次数: 0

摘要

能源效率是现代计算范式(如边缘计算和云计算)最关键的方面之一,因为它可以最大限度地减少碳足迹并降低运营成本。为了提高计算效率,必须解决计算节点的能耗问题。通常,可以通过各种虚拟机整合技术减少未充分利用的资源,从而节省边缘/云范式中的功率。如果资源管理组件获得了系统工作负载的一些知识,则可以更有效地执行此操作。在本文中,我们希望展示我们对开发节能框架的研究,以优化和卸载计算密集型任务到边缘/云系统。这一目标是在双重努力的基础上实现的。首先,对卸载框架进行了调整和修改,使其能够在异构边缘/云系统中工作。此修改包括资源分配和控制功能。随后,开发了一种轻量级资源调度算法,即基于最小边际的调度算法,以协调卸载任务到最适合的容器的部署。之后,对实际设备进行了广泛的评估,以确认该建议的有效性。实际实验结果表明,所开发的框架和算法能够有效地管理计算节点,以应对工作量的变化,降低能耗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lightweight energy-efficient offloading framework for mobile edge/cloud computing
Energy efficiency is one of the most critical aspects of the modern computing paradigm, such as edge and cloud computing, due to minimizing carbon footprint and lowering operational costs. In order to achieve efficiency, it is essential to address the energy consumption problem of the computing nodes. Conventionally, power in the edge/cloud paradigm could be conserved by diminishing under-utilized resources through various virtual machine consolidation techniques. This operation can be performed more effectively if the resource management component acquires some knowledge of the system workload. In this paper, we would like to present our research on developing an energy-efficient framework to optimize and offload computationally intensive tasks to the edge/cloud system. This objective was achieved based on a two-fold effort. Firstly, an adaptation and modification were introduced to an offloading framework to make it work with heterogeneous edge/cloud systems. This modification consists of the functionalities of resource allocation and control. Subsequently, a lightweight resource scheduling algorithm, namely the Minimal Margin-Based Scheduling Algorithm, was developed to orchestrate the deployment of offloaded tasks to the best-suited container. After that, an extensive evaluation of real equipment was conducted to confirm the proposal's effectiveness. In fact, the results of practical experiments showed that the developed framework and algorithm could efficiently manage computing nodes in response to the change in the workload and reduce energy consumption.
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