A nonlinear and statistical physics approach to machine learning electronic hardware
ORAL
Abstract
As the uses of machine learning continue to grow in science and industry, there is a need to reduce power and increase processing speed. As has been done before, hardware co-processors can take over some tasks. We present research developing novel machine learning hardware that relies on a large network of nonlinear electronic nodes to instantiate a reservoir computer. We characterize the behaviors of these networks and find a critical point as we adjust their sensitivity. Moreover, we find that their machine learning performance, in terms of accuracy, depends on the sensitivity of the network.
*This material is based in part uponwork supported by the National Science Foundation (EAR 1417148 and 1909055), as well as the NSF Graduate Research Fellowship Program under Grant No. 1322106. Our research was partially supported through a DoD contract under the Laboratory of Telecommunication Sciences Partnership with the University of Maryland. We would also like to thank the Maryland Innovation Initiate for their support.
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Presenters
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Daniel Lathrop
- University of Maryland, College Park