Title :
M2C: Energy efficient mobile cloud system for deep learning
Author :
Kai Sun ; Zhikui Chen ; Jiankang Ren ; Song Yang ; Jing Li
Author_Institution :
Sch. of Software Technol., Dalian Univ. of Technol., Dalian, China
fDate :
April 27 2014-May 2 2014
Abstract :
With the number increasing of applications and services that are available on mobile devices, mobile cloud computing has drawn a substantial amount of attention by academia and industry in the past several years. When facing the most exciting machine learning applications such as deep learning, the computing requirement is intensive. For the purpose of improving energy efficiency of mobile device and enhancing the performance of applications through reducing execution time, M2C offloads computation of its machine learning application to the cloud side. We propose the prototype of M2C with the mobile side on Android, iPad and with the cloud side on the open source cloud: Spark, a part of the Berkeley Data Analytics Stack with NVIDA GPU. M2C´s distinct set of varying computational tools and mobile nodes allows for thorough implementing distributed machine learning algorithm and innovative wireless protocols with energy efficiency, verifying the theoretical research and bringing the user extremely fast experience.
Keywords :
cloud computing; learning (artificial intelligence); mobile computing; protocols; smart phones; Android; Berkeley data analytic stack; M2C offload computation; M2C prototype; NVIDA GPU; Spark; deep learning; distributed machine learning algorithm; energy efficient mobile cloud system; iPad; innovative wireless protocols; machine learning applications; mobile cloud computing; mobile devices; open source cloud; Graphics processing units; Mobile handsets; Mobile nodes; Protocols; Sparks;
Conference_Titel :
Computer Communications Workshops (INFOCOM WKSHPS), 2014 IEEE Conference on
Conference_Location :
Toronto, ON
DOI :
10.1109/INFCOMW.2014.6849208