Towards energy-efficient, low-latency and accurate spiking LSTMs

G Datta, H Deng, R Aviles, PA Beerel - arXiv preprint arXiv:2210.12613, 2022 - arxiv.org
arXiv preprint arXiv:2210.12613, 2022arxiv.org
Spiking Neural Networks (SNNs) have emerged as an attractive spatio-temporal computing
paradigm for complex vision tasks. However, most existing works yield models that require
many time steps and do not leverage the inherent temporal dynamics of spiking neural
networks, even for sequential tasks. Motivated by this observation, we propose an\rev
{optimized spiking long short-term memory networks (LSTM) training framework that
involves a novel ANN-to-SNN conversion framework, followed by SNN training}. In …
Spiking Neural Networks (SNNs) have emerged as an attractive spatio-temporal computing paradigm for complex vision tasks. However, most existing works yield models that require many time steps and do not leverage the inherent temporal dynamics of spiking neural networks, even for sequential tasks. Motivated by this observation, we propose an \rev{optimized spiking long short-term memory networks (LSTM) training framework that involves a novel ANN-to-SNN conversion framework, followed by SNN training}. In particular, we propose novel activation functions in the source LSTM architecture and judiciously select a subset of them for conversion to integrate-and-fire (IF) activations with optimal bias shifts. Additionally, we derive the leaky-integrate-and-fire (LIF) activation functions converted from their non-spiking LSTM counterparts which justifies the need to jointly optimize the weights, threshold, and leak parameter. We also propose a pipelined parallel processing scheme which hides the SNN time steps, significantly improving system latency, especially for long sequences. The resulting SNNs have high activation sparsity and require only accumulate operations (AC), in contrast to expensive multiply-and-accumulates (MAC) needed for ANNs, except for the input layer when using direct encoding, yielding significant improvements in energy efficiency. We evaluate our framework on sequential learning tasks including temporal MNIST, Google Speech Commands (GSC), and UCI Smartphone datasets on different LSTM architectures. We obtain test accuracy of 94.75% with only 2 time steps with direct encoding on the GSC dataset with 4.1x lower energy than an iso-architecture standard LSTM.
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