This paper investigates the combined potential of neuromorphic and edge computing to develop a flexible machine learning (ML) system designed for processing data from dynamic vision sensors. We build and train hybrid models that integrate spiking neural networks (SNNs) and artificial neural networks (ANNs) using the PyTorch and Lava frameworks. We explore the effects of quantization on ANN models to assess its impact on both accuracy and energy efficiency. Additionally, we address the challenges
Integrated algorithm and hardware design for hybrid neuromorphic systems
Tags
Advanced Memory and Neural ComputingElectrical and Electronic EngineeringNeuromorphic engineeringComputer scienceSpiking neural networkEfficient energy useEnergy consumptionComputer architectureBoosting (machine learning)Artificial neural networkArtificial intelligenceEdge deviceComputer engineeringCloud computingEngineering
