Title :
Towards scalable graph computation on mobile devices
Author :
Yiqi Chen ; Zhiyuan Lin ; Pienta, Robert ; Minsuk Kahng ; Duen Horng Chau
Author_Institution :
Coll. of Comput., Georgia Tech, Atlanta, GA, USA
Abstract :
Mobile devices have become increasingly central to our everyday activities, due to their portability, multi-touch capabilities, and ever-improving computational power. Such attractive features have spurred research interest in leveraging mobile devices for computation. We explore a novel approach that aims to use a single mobile device to perform scalable graph computation on large graphs that do not fit in the device´s limited main memory, opening up the possibility of performing on-device analysis of large datasets, without relying on the cloud. Based on the familiar memory mapping capability provided by today´s mobile operating systems, our approach to scale up computation is powerful and intentionally kept simple to maximize its applicability across the iOS and Android platforms. Our experiments demonstrate that an iPad mini can perform fast computation on large real graphs with as many as 272 million edges (Google+ social graph), at a speed that is only a few times slower than a 13” Macbook Pro. Through creating a real world iOS app with this technique, we demonstrate the strong potential application for scalable graph computation on a single mobile device using our approach.
Keywords :
Android (operating system); graph theory; iOS (operating system); mobile computing; mobile handsets; touch sensitive screens; Android platforms; Macbook Pro; computational power; iOS app; iPad mini; memory mapping capability; mobile devices; mobile operating systems; multitouch capabilities; on-device analysis; scalable graph computation; Mobile communication; Mobile handsets; Motion pictures; Performance evaluation; Random access memory; Runtime; Tablet computers; graph mining; memory mapping; mobile device; scalable algorithms;
Conference_Titel :
Big Data (Big Data), 2014 IEEE International Conference on
Conference_Location :
Washington, DC
DOI :
10.1109/BigData.2014.7004353