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Approximate computation of post-synaptic spikes reduces bandwidth to synaptic storage in a model of cortex

Authors :
Stathis, Dimitrios
Yang, Yu
Hemani, Ahmed
Lansner, Anders
Stathis, Dimitrios
Yang, Yu
Hemani, Ahmed
Lansner, Anders
Publication Year :
2021

Abstract

The Bayesian Confidence Propagation Neural Network (BCPNN) is a spiking model of the cortex. The synaptic weights of BCPNN are organized as matrices. They require substantial synaptic storage and a large bandwidth to it. The algorithm requires a dual access pattern to these matrices, both row-wise and column-wise, to access its synaptic weights. In this work, we exploit an algorithmic optimization that eliminates the column-wise accesses. The new computation model approximates the post-synaptic spikes computation with the use of a predictor. We have adopted this approximate computational model to improve upon the previously reported ASIC implementation, called eBrainII. We also present the error analysis of the approximation to show that it is negligible. The reduction in storage and bandwidth to the synaptic storage results in a 48% reduction in energy compared to eBrainII. The reported approximation method also applies to other neural network models based on a Hebbian learning rule.<br />Part of proceedings ISBN: 978-3-9819263-5-4QC 20220413

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1312826496
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.23919.DATE51398.2021.9474192