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Title: An introduction to training algorithms for neuromorphic computing and on-line learning Abstract: Training neural networks implemented in neuromorphic hardware is challenging due to the dynamic, sparse, and local nature of the computations. This tutorial will describe some established gradient-based solutions to address these challenges in the context of real-valued recurrent neural networks and spiking neural networks. Insights into gradient-based training algorithms and associated autodifferentiation methods lead to online synaptic plasticity rules and the necessary assumptions to implement them in in-memory computing devices. The tutorial will conclude with methods that can be used to improve and optimize learning algorithms using meta-learning and other meta-optimization approaches.
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Vitaliy Pipich / qtisas
GNU General Public License v3.0 onlyUpdated -
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Konstantin Kholostov / qtisas
GNU General Public License v3.0 onlyUpdated -
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Vitaliy Pipich / qwt
GNU Lesser General Public License v2.1 onlyUpdated -
Martino Calzavara / linear_map
MIT LicenseUpdated -
aiida / Masci Tools
MIT LicenseUpdated -
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Georg Brandl / vitess
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