Enabling Scalable Online Learning for Brain Dynamics.
Project description
BrainTrace
Eligibility Trace-based Online Learning for Brain Dynamics
braintrace provides online learning algorithms for biological neural networks.
It has been integrated into our establishing brain modeling ecosystem.
Installation
braintrace can run on Python 3.10+ installed on Linux, MacOS, and Windows. You can install braintrace via pip:
pip install braintrace --upgrade
Alternatively, you can install BrainX, which bundles braintrace with other compatible packages for a comprehensive brain modeling ecosystem:
pip install BrainX -U
Documentation
The official documentation is hosted on Read the Docs: https://brainx.chaobrain.com/braintrace
Citation
If you use this package in your research, please cite:
@Article{Wang2026,
author={Wang, Chaoming
and Dong, Xingsi
and Ji, Zilong
and Xiao, Mingqing
and Jiang, Jiedong
and Liu, Xiao
and Huan, Yuxiang
and Wu, Si},
title={Model-agnostic linear-memory online learning in spiking neural networks},
journal={Nature Communications},
year={2026},
month={Jan},
day={19},
abstract={Spiking neural networks (SNNs) offer a promising paradigm for modeling brain dynamics and developing neuromorphic intelligence, yet an online learning system capable of training rich spiking dynamics over long horizons with low memory footprints has been missing. Existing online approaches either incur quadratic memory growth, sacrifice biological fidelity through oversimplified models, or lack end-to-end automated tooling. Here, we introduce BrainTrace, a model-agnostic, linear-memory, and automated online learning system for spiking neural networks. BrainTrace standardizes model specification to encompass diverse neuronal and synaptic dynamics; implements a linear-memory online learning rule by exploiting intrinsic properties of spiking dynamics; and provides a compiler that automatically generates optimized online-learning code for arbitrary user-defined models. Across diverse dynamics and tasks, BrainTrace achieves strong learning performance with a low memory footprint and high computational throughput. Critically, these properties enable online fitting of a whole-brain-scale Drosophila SNN that recapitulates region-level functional activity. By reconciling generality, efficiency, and usability, BrainTrace establishes a foundation for spiking network modeling at scale.},
issn={2041-1723},
doi={10.1038/s41467-026-68453-w},
url={https://doi.org/10.1038/s41467-026-68453-w},
publisher={Nature Publishing Group UK London}
}
See also the ecosystem
braintrace is one part of our brain simulation ecosystem: https://brainx.chaobrain.com/
Project details
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