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Seminar✓ Recording AvailableNeuroscience

Beyond Biologically Plausible Spiking Networks for Neuromorphic Computing

A. Subramoney

University of Bochum

Schedule
Wednesday, November 9, 2022

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Schedule

Wednesday, November 9, 2022

5:50 PM Europe/Berlin

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Host: SNUFA

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Event Information

Domain

Neuroscience

Original Event

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Host

SNUFA

Duration

20 minutes

Abstract

Biologically plausible spiking neural networks (SNNs) are an emerging architecture for deep learning tasks due to their energy efficiency when implemented on neuromorphic hardware. However, many of the biological features are at best irrelevant and at worst counterproductive when evaluated in the context of task performance and suitability for neuromorphic hardware. In this talk, I will present an alternative paradigm to design deep learning architectures with good task performance in real-world benchmarks while maintaining all the advantages of SNNs. We do this by focusing on two main features – event-based computation and activity sparsity. Starting from the performant gated recurrent unit (GRU) deep learning architecture, we modify it to make it event-based and activity-sparse. The resulting event-based GRU (EGRU) is extremely efficient for both training and inference. At the same time, it achieves performance close to conventional deep learning architectures in challenging tasks such as language modelling, gesture recognition and sequential MNIST.

Topics

EGRUactivity sparsitydeep learningevent-based computationgated recurrent unitgesture recognitionlanguage modelingneuromorphic computingspiking neural networks

About the Speaker

A. Subramoney

University of Bochum

Contact & Resources

No additional contact information available

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