Using Automatic Refactoring to Improve Energy Efficiency of Android Apps
March 15, 2018 Β· Declared Dead Β· π Conferencia Iberoamericana de Software Engineering
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Authors
Luis Cruz, Rui Abreu
arXiv ID
1803.05889
Category
cs.SE: Software Engineering
Citations
36
Venue
Conferencia Iberoamericana de Software Engineering
Last Checked
4 months ago
Abstract
The ever-growing popularity of mobile phones has brought additional challenges to the software development lifecycle. Mobile applications (apps, for short) ought to provide the same set of features as conventional software, with limited resources: such as, limited processing capabilities, storage, screen and, not less important, power source. Although energy efficiency is a valuable requirement, developers often lack knowledge of best practices. In this paper, we study whether or not automatic refactoring can aid developers ship energy efficient apps. We leverage a tool, Leafactor, with five energy code smells that tend to go unnoticed. We use Leafactor to analyze code smells in 140 free and open source apps. As a result, we detected and fixed code smells in 45 apps, from which 40% have successfully merged our changes into the official repository.
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