DocumentCode
245494
Title
Advanced technologies for brain-inspired computing
Author
Clermidy, F. ; Heliot, R. ; Valentian, Alexandre ; Gamrat, Christian ; Bichler, Olivier ; Duranton, Marc ; Blehadj, Bilel ; Temam, Olivier
Author_Institution
CEA-LETI, Grenoble, France
fYear
2014
fDate
20-23 Jan. 2014
Firstpage
563
Lastpage
569
Abstract
This paper aims at presenting how new technologies can overcome classical implementation issues of Neural Networks. Resistive memories such as Phase Change Memories and Conductive-Bridge RAM can be used for obtaining low-area synapses thanks to programmable resistance also called Memristors. Similarly, the high capacitance of Through Silicon Vias can be used to greatly improve analog neurons and reduce their area. The very same devices can also be used for improving connectivity of Neural Networks as demonstrated by an application. Finally, some perspectives are given on the usage of 3D monolithic integration for better exploiting the third dimension and thus obtaining systems closer to the brain.
Keywords
capacitance; memristors; neural chips; phase change memories; three-dimensional integrated circuits; 3D monolithic integration; analog neurons; brain-inspired computing; capacitance; conductive-bridge RAM; low-area synapses; memristors; neural network connectivity; phase change memories; programmable resistance; resistive memories; through silicon vias; Biological neural networks; Capacitance; Neurons; Switches; Three-dimensional displays; Through-silicon vias; Transistors;
fLanguage
English
Publisher
ieee
Conference_Titel
Design Automation Conference (ASP-DAC), 2014 19th Asia and South Pacific
Conference_Location
Singapore
Type
conf
DOI
10.1109/ASPDAC.2014.6742951
Filename
6742951
Link To Document