Share on Facebook Tweet on Twitter Share on LinkedIn Share by email
Improving Energy Efficiency of Personal Sensing Applications with Heterogeneous Multi-Processors

Moo-Ryong Ra, Bodhi Priyantha, Aman Kansal, and Jie Liu

Abstract

The availability of multiple sensors on mobile devices offers a significant new capability to enable rich user and context aware applications. Many of these applications run in the background to continuously sense user context. However, running these applications on mobile devices can impose a significant stress on the battery life and the use of supplementary low-power processors has been proposed on mobile devices for continuous background activities. In this paper, we experimentally and analytically investigate the design considerations that arise in the efficient use of the low power processor and provide a thorough understanding of the problem space. We answer fundamental questions such as which segments of the application are most efficient to be hosted on the low power processor, and how to select an appropriate low power processor. We discuss our measurements, analysis, and results using multiple low power processors and existing phone platforms.

Details

Publication typeInproceedings
Published inThe 14th International Conference on Ubiquitous Computing (Ubicomp 2012)
PublisherACM
> Publications > Improving Energy Efficiency of Personal Sensing Applications with Heterogeneous Multi-Processors