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Inference with Artificial Neural Networks on Analog Neuromorphic Hardware

Authors :
Weis, Johannes
Spilger, Philipp
Billaudelle, Sebastian
Stradmann, Yannik
Emmel, Arne
Müller, Eric
Breitwieser, Oliver
Grübl, Andreas
Ilmberger, Joscha
Karasenko, Vitali
Kleider, Mitja
Mauch, Christian
Schreiber, Korbinian
Schemmel, Johannes
Publication Year :
2020

Abstract

The neuromorphic BrainScaleS-2 ASIC comprises mixed-signal neurons and synapse circuits as well as two versatile digital microprocessors. Primarily designed to emulate spiking neural networks, the system can also operate in a vector-matrix multiplication and accumulation mode for artificial neural networks. Analog multiplication is carried out in the synapse circuits, while the results are accumulated on the neurons' membrane capacitors. Designed as an analog, in-memory computing device, it promises high energy efficiency. Fixed-pattern noise and trial-to-trial variations, however, require the implemented networks to cope with a certain level of perturbations. Further limitations are imposed by the digital resolution of the input values (5 bit), matrix weights (6 bit) and resulting neuron activations (8 bit). In this paper, we discuss BrainScaleS-2 as an analog inference accelerator and present calibration as well as optimization strategies, highlighting the advantages of training with hardware in the loop. Among other benchmarks, we classify the MNIST handwritten digits dataset using a two-dimensional convolution and two dense layers. We reach 98.0% test accuracy, closely matching the performance of the same network evaluated in software.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2006.13177
Document Type :
Working Paper
Full Text :
https://doi.org/10.1007/978-3-030-66770-2_15