Exploiting deep learning accelerators for neuromorphic workloads

Author:

Sun Pao-Sheng VincentORCID,Titterton Alexander,Gopiani Anjlee,Santos Tim,Basu Arindam,Lu Wei D,Eshraghian Jason K

Abstract

Abstract Spiking neural networks (SNNs) have achieved orders of magnitude improvement in terms of energy consumption and latency when performing inference with deep learning workloads. Error backpropagation is presently regarded as the most effective method for training SNNs, but in a twist of irony, when training on modern graphics processing units this becomes more expensive than non-spiking networks. The emergence of Graphcore’s intelligence processing units (IPUs) balances the parallelized nature of deep learning workloads with the sequential, reusable, and sparsified nature of operations prevalent when training SNNs. IPUs adopt multi-instruction multi-data parallelism by running individual processing threads on smaller data blocks, which is a natural fit for the sequential, non-vectorized steps required to solve spiking neuron dynamical state equations. We present an IPU-optimized release of our custom SNN Python package, snnTorch, which exploits fine-grained parallelism by utilizing low-level, pre-compiled custom operations to accelerate irregular and sparse data access patterns that are characteristic of training SNN workloads. We provide a rigorous performance assessment across a suite of commonly used spiking neuron models, and propose methods to further reduce training run-time via half-precision training. By amortizing the cost of sequential processing into vectorizable population codes, we ultimately demonstrate the potential for integrating domain-specific accelerators with the next generation of neural networks.

Publisher

IOP Publishing

Reference73 articles.

1. High performance convolutional neural networks for document processing;Chellapilla,2006

2. GPU implementation of neural networks;Oh;Pattern Recognit.,2004

3. Understanding the efficiency of GPU algorithms for matrix-matrix multiplication;Fatahalian,2004

4. Flexible, high performance convolutional neural networks for image classification;Ciresan,2011

5. Imagenet classification with deep convolutional neural networks;Krizhevsky,2012

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