Demonstrating Analog Inference on the BrainScaleS-2 Mobile System
Stradmann, Yannik, Billaudelle, Sebastian, Breitwieser, Oliver, Ebert, Falk Leonard, Emmel, Arne, Husmann, Dan, Ilmberger, Joscha, Müller, Eric, Spilger, Philipp, Weis, Johannes, Schemmel, Johannes
–arXiv.org Artificial Intelligence
We present the BrainScaleS-2 mobile system as a compact analog inference engine based on the BrainScaleS-2 ASIC and demonstrate its capabilities at classifying a medical electrocardiogram dataset. The analog network core of the ASIC is utilized to perform the multiply-accumulate operations of a convolutional deep neural network. At a system power consumption of 5.6 W, we measure a total energy consumption of 192 µJ for the ASIC and achieve a classification time of 276 µs per electrocardiographic patient sample. Patients with atrial fibrillation are correctly identified with a detection rate of (93.7 0.7) % at (14.0 1.0) % false positives. The system is directly applicable to edge inference applications due to its small size, power envelope, and flexible I/O capabilities. It has enabled the BrainScaleS-2 ASIC to be operated reliably outside a specialized lab setting. In future applications, the system allows for a combination of conventional machine learning layers with online learning in spiking neural networks on a single neuromorphic platform.
arXiv.org Artificial Intelligence
Oct-27-2022
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