NELGNCOct 17, 2025

SpikeFit: Towards Optimal Deployment of Spiking Networks on Neuromorphic Hardware

arXiv:2510.15542v22 citationsh-index: 1
Originality Highly original
AI Analysis

This work addresses deployment challenges for SNNs on neuromorphic hardware, offering a more complete solution than existing compression methods, though it is incremental in improving efficiency and compatibility.

The paper tackles the problem of deploying Spiking Neural Networks (SNNs) efficiently on neuromorphic hardware by introducing SpikeFit, a training method that co-optimizes discrete weight values with hardware constraints, resulting in higher compression efficiency and lower energy use, outperforming state-of-the-art methods with only four unique synaptic weight values.

This paper introduces SpikeFit, a novel training method for Spiking Neural Networks (SNNs) that enables efficient inference on neuromorphic hardware, considering all its stringent requirements: the number of neurons and synapses that can fit on a single device, and lower bit-width representations (e.g., 4-bit, 8-bit). Unlike conventional compressing approaches that address only a subset of these requirements (limited numerical precision and limited number of neurons in the network), SpikeFit treats the allowed weights' discrete values themselves as learnable parameters co-optimized with the model, allowing for optimal Clusterization-Aware Training (CAT) of the model's weights at low precision (2-, 4-, or 8-bit) which results in higher network compression efficiency, as well as limiting the number of unique synaptic connections to a value required by neuromorphic processor. This joint optimization allows SpikeFit to find a discrete weight set aligned with hardware constraints, enabling the most complete deployment across a broader range of neuromorphic processors than existing methods of SNN compression support. Moreover, SpikeFit introduces a new hardware-friendly Fisher Spike Contribution (FSC) pruning method showing the state-of-the-art performance. We demonstrate that for spiking neural networks constrained to only four unique synaptic weight values (M = 4), our SpikeFit method not only outperforms state-of-the-art SNNs compression methods and conventional baselines combining extreme quantization schemes and clustering algorithms, but also meets a wider range of neuromorphic hardware requirements and provides the lowest energy use in experiments.

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