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THOR -- A Neuromorphic Processor with 7.29G TSOP2^22/mm2^22Js Energy-Throughput Efficiency

3 December 2022
Mayank Senapati
M. Gomony
S. Eissa
Charlotte Frenkel
Henk Corporaal
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Abstract

Neuromorphic computing using biologically inspired Spiking Neural Networks (SNNs) is a promising solution to meet Energy-Throughput (ET) efficiency needed for edge computing devices. Neuromorphic hardware architectures that emulate SNNs in analog/mixed-signal domains have been proposed to achieve order-of-magnitude higher energy efficiency than all-digital architectures, however at the expense of limited scalability, susceptibility to noise, complex verification, and poor flexibility. On the other hand, state-of-the-art digital neuromorphic architectures focus either on achieving high energy efficiency (Joules/synaptic operation (SOP)) or throughput efficiency (SOPs/second/area), resulting in poor ET efficiency. In this work, we present THOR, an all-digital neuromorphic processor with a novel memory hierarchy and neuron update architecture that addresses both energy consumption and throughput bottlenecks. We implemented THOR in 28nm FDSOI CMOS technology and our post-layout results demonstrate an ET efficiency of 7.29G TSOP2/mm2Js\text{TSOP}^2/\text{mm}^2\text{Js}TSOP2/mm2Js at 0.9V, 400 MHz, which represents a 3X improvement over state-of-the-art digital neuromorphic processors.

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