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arxiv 2309.10823 v1 pith:FS7SZEZ3 submitted 2023-08-29 q-bio.NC cs.NE

Gradient-based methods for spiking physical systems

classification q-bio.NC cs.NE
keywords spikingtowardsapproachesbrainscales-2comparativecomparisondeepdifferent
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Recent efforts have fostered significant progress towards deep learning in spiking networks, both theoretical and in silico. Here, we discuss several different approaches, including a tentative comparison of the results on BrainScaleS-2, and hint towards future such comparative studies.

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