jaxsnn: Event-driven Gradient Estimation for Analog Neuromorphic Hardware
January 30, 2024 ยท Declared Dead ยท ๐ Neuro Inspired Computational Elements Workshop
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Authors
Eric Mรผller, Moritz Althaus, Elias Arnold, Philipp Spilger, Christian Pehle, Johannes Schemmel
arXiv ID
2401.16841
Category
cs.NE: Neural & Evolutionary
Citations
9
Venue
Neuro Inspired Computational Elements Workshop
Last Checked
4 months ago
Abstract
Traditional neuromorphic hardware architectures rely on event-driven computation, where the asynchronous transmission of events, such as spikes, triggers local computations within synapses and neurons. While machine learning frameworks are commonly used for gradient-based training, their emphasis on dense data structures poses challenges for processing asynchronous data such as spike trains. This problem is particularly pronounced for typical tensor data structures. In this context, we present a novel library (jaxsnn) built on top of JAX, that departs from conventional machine learning frameworks by providing flexibility in the data structures used and the handling of time, while maintaining Autograd functionality and composability. Our library facilitates the simulation of spiking neural networks and gradient estimation, with a focus on compatibility with time-continuous neuromorphic backends, such as the BrainScaleS-2 system, during the forward pass. This approach opens avenues for more efficient and flexible training of spiking neural networks, bridging the gap between traditional neuromorphic architectures and contemporary machine learning frameworks.
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