Energy-aware Web Browsing on Heterogeneous Mobile Platforms
Jie Ren, Ling Gao, Hai Wang, Zheng Wang

TL;DR
This paper presents a machine learning-based method to optimize web browsing energy efficiency on heterogeneous mobile platforms by predicting processor configurations, significantly improving load time and energy consumption.
Contribution
It introduces an automatic, machine learning-driven approach to dynamically select processor configurations for mobile web rendering, enhancing energy efficiency and performance.
Findings
Achieves 80% of ideal predictor performance.
Reduces energy consumption by 63.5%.
Improves load time by 45%.
Abstract
Web browsing is an activity that billions of mobile users perform on a daily basis. Battery life is a primary concern to many mobile users who often find their phone has died at most inconvenient times. The heterogeneous multi-core architecture is a solution for energy-efficient processing. However, the current mobile web browsers rely on the operating system to exploit the underlying hardware, which has no knowledge of individual web contents and often leads to poor energy efficiency. This paper describes an automatic approach to render mobile web workloads for performance and energy efficiency. It achieves this by developing a machine learning based approach to predict which processor to use to run the web rendering engine and at what frequencies the processors should operate. Our predictor learns offline from a set of training web workloads. The built predictor is then integrated…
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Taxonomy
TopicsCaching and Content Delivery · Green IT and Sustainability · Peer-to-Peer Network Technologies
