2024
DOI: 10.3389/fnins.2024.1335422
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Optimizing event-based neural networks on digital neuromorphic architecture: a comprehensive design space exploration

Yingfu Xu,
Kevin Shidqi,
Gert-Jan van Schaik
et al.

Abstract: Neuromorphic processors promise low-latency and energy-efficient processing by adopting novel brain-inspired design methodologies. Yet, current neuromorphic solutions still struggle to rival conventional deep learning accelerators' performance and area efficiency in practical applications. Event-driven data-flow processing and near/in-memory computing are the two dominant design trends of neuromorphic processors. However, there remain challenges in reducing the overhead of event-driven processing and increasin… Show more

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Cited by 3 publications
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