Abstract
A liquid state machine (LSM) is a powerful recurrent spiking neural network shown to be effective in various learning tasks including speech recognition. In this work, we investigate design and architectural co-optimization to further improve the area-energy efficiency of LSM-based speech recognition processors with monolithic 3D IC (M3D) technology. We conduct fine-grained tier partitioning, where individual neurons are folded, and explore the impact of shared memory architecture and synaptic model complexity on the power-performance-area-accuracy (PPAA) benefit of M3D LSMbased speech recognition. In training and classification tasks using spoken English letters, we obtain up to 70.0% PPAA savings over 2D ICs.
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Ku, B. W., Liu, Y., Jin, Y., Samal, S., Li, P., & Lim, S. K. (2018). Design and architectural co-optimization of monolithic 3D liquid state machine-based neuromorphic processor. In Proceedings - Design Automation Conference (Vol. Part F137710). Institute of Electrical and Electronics Engineers Inc. https://doi.org/10.1145/3195970.3196024
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