View a PDF of the paper titled Spark: Modular Spiking Neural Networks, by Mario Franco and Carlos Gershenson
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Abstract:Nowadays, neural networks act as a synonym for artificial intelligence. Present neural network models, although remarkably powerful, are inefficient both in terms of data and energy. Several alternative forms of neural networks have been proposed to address some of these problems. Specifically, spiking neural networks are suitable for efficient hardware implementations. However, effective learning algorithms for spiking networks remain elusive, although it is suspected that effective plasticity mechanisms could alleviate the problem of data efficiency. Here, we present a new framework for spiking neural networks – Spark – built upon the idea of modular design, from simple components to entire models. The aim of this framework is to provide an efficient and streamlined pipeline for spiking neural networks. We showcase this framework by solving the sparse-reward cartpole problem with simple plasticity mechanisms. We hope that a framework compatible with traditional ML pipelines may accelerate research in the area, specifically for continuous and unbatched learning, akin to the one animals exhibit.
Submission history
From: Mario Oscar Franco Méndez [view email]
[v1]
Mon, 2 Feb 2026 16:36:58 UTC (4,820 KB)
[v2]
Tue, 10 Feb 2026 16:45:44 UTC (4,873 KB)
[v3]
Wed, 25 Feb 2026 19:38:12 UTC (4,916 KB)


![[2602.02306] Spark: Modular Spiking Neural Networks Measuring Intelligence Efficiency of Local AI](https://skytik.cc/wp-content/uploads/2025/11/Measuring-Intelligence-Efficiency-of-Local-AI-768x448.png)