Contribution to a conference proceedings FZJ-2025-01175

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A Truly Sparse and General Implementation ofGradient-Based Synaptic Plasticity

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2025

Neuro-Inspired Computational Elements, NICE, HeidelbergHeidelberg, Germany, 25 Mar 2025 - 28 Mar 20252025-03-252025-03-28 n/a () [10.34734/FZJ-2025-01175]

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Abstract: Online synaptic plasticity rules derived from gradi-ent descent achieve high accuracy on a wide range of practicaltasks. However, their software implementation often requirestediously hand-derived gradients or using gradient backprop-agation which sacrifices the online capability of the rules. Inthis work, we present a custom automatic differentiation (AD)pipeline for sparse and online implementation of gradient-based synaptic plasticity rules that generalizes to arbitraryneuron models. Our work combines the programming easeof backpropagation-type methods for forward AD while beingmemory-efficient. To achieve this, we exploit the advantageouscompute and memory scaling of online synaptic plasticity byproviding an inherently sparse implementation of AD whereexpensive tensor contractions are replaced with simple element-wise multiplications if the tensors are diagonal. Gradient-basedsynaptic plasticity rules such as eligibility propagation (e-prop)have exactly this property and thus profit immensely from thisfeature. We demonstrate the alignment of our gradients withrespect to gradient backpropagation on an synthetic task wheree-prop gradients are exact, as well as audio speech classificationbenchmarks. We demonstrate how memory utilization scales withnetwork size without dependence on the sequence length, asexpected from forward AD methods.


Note: Accepted as an oral presentation.

Contributing Institute(s):
  1. Neuromorphic Software Eco System (PGI-15)
Research Program(s):
  1. 5234 - Emerging NC Architectures (POF4-523) (POF4-523)
  2. BMBF 16ME0400 - Verbundprojekt: Neuro-inspirierte Technologien der künstlichen Intelligenz für die Elektronik der Zukunft - NEUROTEC II - (16ME0400) (16ME0400)
  3. GREENEDGE - Taming the environmental impact of mobile networks through GREEN EDGE computing platforms (953775) (953775)

Appears in the scientific report 2025
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 Record created 2025-01-27, last modified 2025-01-30


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