Published September 8, 2022 | Version v1
Conference paper Open

Prediction of the Impact of Approximate Computing on Spiking Neural Networks via Interval Arithmetic

  • 1. politecnico di torino

Description

Approximate Computing (AxC) techniques allow trade-off accuracy for performance, energy, and area reduction gains. One of the applications suitable for using AxC techniques are the Spiking Neural Networks (SNNs). SNNs are the new frontier for artificial intelligence since they allow for a more reliable hardware design. Unfortunately, this design requires some area minimization strategies when the target hardware reaches the edge of computing. In this work, we first extract the computation flow of an SNN, then employ Interval Arithmetic (IA) to model the propagation of the approximation error. This enables a quick evaluation of the impact of approximation. Experimental results confirm the model’s adherence and the capability of reducing the exploration time.

Files

Prediction of the Impact of Approximate Computing on Spiking Neural Networks via Interval Arithmetic.pdf

Additional details

Funding

APROPOS – Approximate Computing for Power and Energy Optimisation 956090
European Commission