Title :
A power-aware digital feedforward neural network platform with backpropagation driven approximate synapses
Author :
Jaeha Kung;Duckhwan Kim;Saibal Mukhopadhyay
Author_Institution :
Department of Electrical and Computer Engineering, Georgia Institute of Technology, 266 Ferst Drive, Atlanta, 30332, USA
fDate :
7/1/2015 12:00:00 AM
Abstract :
This paper proposes a power-aware digital feedforward neural network platform that utilizes the backpropagation algorithm during training to enable energy-quality trade-off. Given a quality constraint, the proposed approach identifies a set of synaptic weights for approximation in a neural network. The approach selects synapses with small impact on output error, estimated by the backpropagation algorithm, for approximation. The approximations are achieved by a coupled software (reduced bit-width) and hardware (approximate multiplication in the processing engine) based design approaches. The full-chip design in 130nm CMOS shows, compared to a baseline accurate design, the proposed approach reduces system power by ~38% with 0.4% lower recognition accuracy in a classification problem.
Keywords :
"Approximation methods","Artificial neural networks","Feedforward neural networks","Hardware","Neurons","Power demand","Sensitivity"
Conference_Titel :
Low Power Electronics and Design (ISLPED), 2015 IEEE/ACM International Symposium on
DOI :
10.1109/ISLPED.2015.7273495