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arxiv: 1709.10211 · v1 · pith:LCCOSOMRnew · submitted 2017-09-29 · 💻 cs.ET · cond-mat.mes-hall· cs.NE

Reservoir Computing using Stochastic p-Bits

classification 💻 cs.ET cond-mat.mes-hallcs.NE
keywords networkshardwarereservoircomputingimplementneuraltemporalautomotives
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We present a general hardware framework for building networks that directly implement Reservoir Computing, a popular software method for implementing and training Recurrent Neural Networks and are particularly suited for temporal inferencing and pattern recognition. We provide a specific example of a candidate hardware unit based on a combination of soft-magnets, spin-orbit materials and CMOS transistors that can implement these networks. Efficient non von-Neumann hardware implementation of reservoir computers can open up a pathway for integration of temporal Neural Networks in a wide variety of emerging systems such as Internet of Things (IoTs), industrial controls, bio- and photo-sensors, and self-driving automotives.

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