在具有能量感知调度功能的移动设备中优化浏览器的能源效率

Yonghun Choi, Seonghoon Park, H. Cha
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引用次数: 12

摘要

以前为桌面环境优化的网页浏览,现在正在为移动设备的节能使用进行微调。虽然已经做出了积极的尝试来减少能源消耗,但在最近的设备中集成的能源感知调度(EAS)的出现表明了优化浏览器能源使用的新方法的可能性。我们的初步分析表明,现有的支持easa的系统对性能进行了过度优化,导致在web浏览器运行时能源效率低下。在本文中,我们分析了web浏览器的特点,并调查了在支持easa的移动设备中能源效率低下的原因。然后,我们提出了一个名为WebTune的系统,以提高移动浏览器的能源效率。WebTune利用强化学习技术,学习web浏览器进程的最佳执行速度,并在运行时调整速度,从而节省能源并保证服务质量(QoS)。WebTune在最新的基于android的智能手机上实现,并与Alexa的前200个网站进行了评估。实验结果表明,WebTune在不降低QoS的情况下,将谷歌Pixel 2 XL和三星Galaxy S9 Plus智能手机的设备级能耗分别降低了18.7-22.0%和13.7-16.1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing Energy Efficiency of Browsers in Energy-Aware Scheduling-enabled Mobile Devices
Web browsing, previously optimized for the desktop environment, is being fine-tuned for energy-efficient use on mobile devices. Although active attempts have been made to reduce energy consumption, the advent of energy-aware scheduling (EAS) integrated in the recent devices suggests the possibility of a new approach for optimizing energy use by browsers. Our preliminary analysis showed that the existing EAS-enabled system is overly optimized for performance, leading to energy inefficiencies while a web browser is running. In this paper, we analyze the characteristics of web browsers, and investigate the cause of energy inefficiency in EAS-enabled mobile devices. We then propose a system, called WebTune, to improve the energy efficiency of mobile browsers. Exploiting the reinforcement learning technique, WebTune learns the optimal execution speed of the web browser's processes, and adjusts the speed at runtime, thus saving energy and ensuring the quality of service (QoS). WebTune is implemented on the latest Android-based smartphones, and evaluated with Alexa's top 200 websites. The experimental results show that WebTune reduced the device-level energy consumption of the Google Pixel 2 XL and Samsung Galaxy S9 Plus smartphones by 18.7-22.0% and 13.7-16.1%, respectively, without degrading the QoS.
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