DocumentCode :
129512
Title :
Energy efficient neural networks for big data analytics
Author :
Yu Wang ; Boxun Li ; Rong Luo ; Yiran Chen ; Ningyi Xu ; Huazhong Yang
Author_Institution :
Dept. of E.E., Tsinghua Univ., Beijing, China
fYear :
2014
fDate :
24-28 March 2014
Firstpage :
1
Lastpage :
2
Abstract :
The world is experiencing a data revolution to discover knowledge in big data. Large scale neural networks are one of the mainstream tools of big data analytics. Processing big data with large scale neural networks includes two phases: the training phase and the operation phase. Huge computing power is required to support the training phase. And the energy efficiency (power efficiency) is one of the major considerations of the operation phase. We first explore the computing power of GPUs for big data analytics and demonstrate an efficient GPU implementation of the training phase of large scale recurrent neural networks (RNNs). We then introduce a promising ultrahigh energy efficient implementation of neural networks´ operation phase by taking advantage of the emerging memristor technique. Experiment results show that the proposed GPU implementation of RNNs is able to achieve 2 ~ 11× speed-up compared with the basic CPU implementation. And the scaled-up recurrent neural network trained with GPUs realizes an accuracy of 47% on the Microsoft Research Sentence Completion Challenge, the best result achieved by a single RNN on the same dataset. In addition, the proposed memristor-based implementation of neural networks demonstrates power efficiency of > 400 GFLOPS/W and achieves energy savings of 22× on the HMAX model compared with its pure digital implementation counterpart.
Keywords :
data analysis; electronic engineering computing; graphics processing units; memristors; recurrent neural nets; CPU implementation; GPU implementation; HMAX model; RNNs; big data analytics; energy efficient neural networks; large scale recurrent neural networks; memristor technique; neural networks operation phase; neural networks training phase; power efficiency; Data handling; Data storage systems; Information management; Memristors; Recurrent neural networks; Training;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Design, Automation and Test in Europe Conference and Exhibition (DATE), 2014
Conference_Location :
Dresden
Type :
conf
DOI :
10.7873/DATE.2014.358
Filename :
6800559
Link To Document :
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