Authors
Adam J Oliner, Anand P Iyer, Ion Stoica, Eemil Lagerspetz, Sasu Tarkoma
Publication date
2013/11/11
Book
Proceedings of the 11th ACM conference on embedded networked sensor systems
Pages
1-14
Description
We aim to detect and diagnose energy anomalies, abnormally heavy battery use. This paper describes a collaborative black-box method, and an implementation called Carat, for diagnosing anomalies on mobile devices. A client app sends intermittent, coarse-grained measurements to a server, which correlates higher expected energy use with client properties like the running apps, device model, and operating system. The analysis quantifies the error and confidence associated with a diagnosis, suggests actions the user could take to improve battery life, and projects the amount of improvement. During a deployment to a community of more than 500,000 devices, Carat diagnosed thousands of energy anomalies in the wild. Carat detected all synthetically injected anomalies, produced no known instances of false positives, projected the battery impact of anomalies with 95% accuracy, and, on average, increased a …
Total citations
2013201420152016201720182019202020212022202320242143145251815181713132
Scholar articles
AJ Oliner, AP Iyer, I Stoica, E Lagerspetz, S Tarkoma - Proceedings of the 11th ACM conference on …, 2013