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arxiv: 1206.3227 · v4 · pith:KDKH7SQ6new · submitted 2012-06-14 · ❄️ cond-mat.dis-nn · cs.ET

Proposal For Neuromorphic Hardware Using Spin Devices

classification ❄️ cond-mat.dis-nn cs.ET
keywords neuromorphicdesignsapplicationscmoscomputationdevicesdifferentenergy
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We present a design-scheme for ultra-low power neuromorphic hardware using emerging spin-devices. We propose device models for 'neuron', based on lateral spin valves and domain wall magnets that can operate at ultra-low terminal voltage of ~20 mV, resulting in small computation energy. Magnetic tunnel junctions are employed for interfacing the spin-neurons with charge-based devices like CMOS, for large-scale networks. Device-circuit co-simulation-framework is used for simulating such hybrid designs, in order to evaluate system-level performance. We present the design of different classes of neuromorphic architectures using the proposed scheme that can be suitable for different applications like, analog-data-sensing, data-conversion, cognitive-computing, associative memory, programmable-logic and analog and digital signal processing. We show that the spin-based neuromorphic designs can achieve 15X-300X lower computation energy for these applications; as compared to state of art CMOS designs.

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