Blogs (1) >>
ICSE 2019
Sat 25 - Fri 31 May 2019 Montreal, QC, Canada
Fri 31 May 2019 16:50 - 17:00 at St-Denis / Notre-Dame - Energy Consumption in Mobile Apps Chair(s): Grace Lewis

Machine learning is a popular method of learning functions from data to represent and to classify sensor inputs, multimedia, emails, and calendar events. Smartphone applications have been integrating more and more intelligence in the form of machine learning. Machine learning functionality now appears on most smartphones as voice recognition, spell checking, word disambiguation, face recognition, translation, spatial reasoning, and even natural language summarization. Excited app developers who want to use machine learning on mobile devices face one serious constraint that they did not face on desktop computers or cloud virtual machines: the end-user’s mobile device has limited battery life, thus computationally intensive tasks can harm end users’ phone availability by draining batteries of their stored energy. Currently, there are few guidelines for developers who want to employ machine learning on mobile devices yet are concerned about software energy consumption of their applications. In this paper, we combine empirical measurements of different machine learning algorithm implementations with complexity theory to provide concrete and theoretically grounded recommendations to developers who want to employ machine learning on smartphones. We conclude that some implementations of algorithms, such as J48, MLP, and SMO, do generally perform better than others in terms of energy consumption and accuracy, and that energy consumption is well-correlated to algorithmic complexity. However, to achieve optimal results a developer must consider their specific application as many factors — dataset size, number of data attributes, whether the model will require updating, etc. — affect which machine learning algorithm and implementation will provide the best results.

Fri 31 May

Displayed time zone: Eastern Time (US & Canada) change

16:00 - 17:20
Energy Consumption in Mobile AppsPapers / Journal-First Papers / Technical Track / New Ideas and Emerging Results at St-Denis / Notre-Dame
Chair(s): Grace Lewis Carnegie Mellon Software Engineering Institute
16:00
20m
Talk
GreenBundle: An Empirical Study on the Energy Impact of Bundled ProcessingTechnical Track
Technical Track
Shaiful Chowdhury University of Alberta, Abram Hindle University of Alberta, Rick Kazman University of Hawai‘i at Mānoa, Takumi Shuto Kyushu University, Ken Matsui Kyushu University, Yasutaka Kamei Kyushu University
Pre-print
16:20
20m
Talk
Search-Based Energy Testing of AndroidTechnical TrackIndustry Program
Technical Track
Reyhaneh Jabbarvand University of California, Irvine, Jun-Wei Lin University of California, Irvine, Sam Malek University of California, Irvine
16:40
10m
Talk
EMaaS: Energy Measurements as a Service for Mobile ApplicationsNIER
New Ideas and Emerging Results
Luís Cruz University of Porto, Rui Abreu Instituto Superior Técnico, U. Lisboa & INESC-ID
Pre-print
16:50
10m
Talk
What can Android mobile app developers do about the energy consumption of machine learning?Journal-First
Journal-First Papers
Andrea McIntosh University of Alberta, Safwat Hassan Queens University, Kingston, Canada, Abram Hindle University of Alberta
Pre-print
17:00
10m
Talk
GreenScaler: Training Software Energy Models with Automatic Test GenerationJournal-First
Journal-First Papers
Shaiful Chowdhury University of Alberta, Stephanie Borle University of Alberta, Stephen Romansky University of Alberta, Abram Hindle University of Alberta
Pre-print
17:10
10m
Talk
Discussion Period
Papers