DocumentCode
671735
Title
Cognitive computing building block: A versatile and efficient digital neuron model for neurosynaptic cores
Author
Cassidy, Andrew S. ; Merolla, P. ; Arthur, John V. ; Esser, Steven K. ; Jackson, Brian ; Alvarez-Icaza, Rodrigo ; Datta, Piyali ; Sawada, Jun ; Wong, Theodore M. ; Feldman, Vitaly ; Amir, Arnon ; Rubin, Daniel Ben-Dayan ; Akopyan, Filipp ; McQuinn, Emmett
Author_Institution
Cognitive Comput. Group, IBM Res. - Almaden, San Jose, CA, USA
fYear
2013
fDate
4-9 Aug. 2013
Firstpage
1
Lastpage
10
Abstract
Marching along the DARPA SyNAPSE roadmap, IBM unveils a trilogy of innovations towards the TrueNorth cognitive computing system inspired by the brain´s function and efficiency. Judiciously balancing the dual objectives of functional capability and implementation/operational cost, we develop a simple, digital, reconfigurable, versatile spiking neuron model that supports one-to-one equivalence between hardware and simulation and is implementable using only 1272 ASIC gates. Starting with the classic leaky integrate-and-fire neuron, we add: (a) configurable and reproducible stochasticity to the input, the state, and the output; (b) four leak modes that bias the internal state dynamics; (c) deterministic and stochastic thresholds; and (d) six reset modes for rich finite-state behavior. The model supports a wide variety of computational functions and neural codes. We capture 50+ neuron behaviors in a library for hierarchical composition of complex computations and behaviors. Although designed with cognitive algorithms and applications in mind, serendipitously, the neuron model can qualitatively replicate the 20 biologically-relevant behaviors of a dynamical neuron model.
Keywords
application specific integrated circuits; cognition; logic gates; neural chips; stochastic processes; ASIC gates; DARPA SyNAPSE roadmap; IBM; TrueNorth cognitive computing system; biologically-relevant behaviors; brain efficiency; brain function; cognitive computing building block; configurable stochasticity; deterministic thresholds; digital neuron model; digital spiking neuron model; dynamical neuron model; finite-state behavior; hierarchical composition; internal state dynamics; leak modes; leaky integrate-and-fire neuron; neural codes; neuron behaviors; neurosynaptic cores; one-to-one equivalence; reconfigurable spiking neuron model; reproducible stochasticity; reset modes; stochastic thresholds; versatile spiking neuron model; Computational modeling; Electric potential; Libraries; Mathematical model; Nerve fibers; Stochastic processes;
fLanguage
English
Publisher
ieee
Conference_Titel
Neural Networks (IJCNN), The 2013 International Joint Conference on
Conference_Location
Dallas, TX
ISSN
2161-4393
Print_ISBN
978-1-4673-6128-6
Type
conf
DOI
10.1109/IJCNN.2013.6707077
Filename
6707077
Link To Document