arXiv Open Access 2026

BrainFuse: a unified infrastructure integrating realistic biological modeling and core AI methodology

Baiyu Chen Yujie Wu Siyuan Xu Peng Qu Dehua Wu +7 lainnya
Lihat Sumber

Abstrak

Neuroscience and artificial intelligence represent distinct yet complementary pathways to general intelligence. However, amid the ongoing boom in AI research and applications, the translational synergy between these two fields has grown increasingly elusive-hampered by a widening infrastructural incompatibility: modern AI frameworks lack native support for biophysical realism, while neural simulation tools are poorly suited for gradient-based optimization and neuromorphic hardware deployment. To bridge this gap, we introduce BrainFuse, a unified infrastructure that provides comprehensive support for biophysical neural simulation and gradient-based learning. By addressing algorithmic, computational, and deployment challenges, BrainFuse exhibits three core capabilities: (1) algorithmic integration of detailed neuronal dynamics into a differentiable learning framework; (2) system-level optimization that accelerates customizable ion-channel dynamics by up to 3,000x on GPUs; and (3) scalable computation with highly compatible pipelines for neuromorphic hardware deployment. We demonstrate this full-stack design through both AI and neuroscience tasks, from foundational neuron simulation and functional cylinder modeling to real-world deployment and application scenarios. For neuroscience, BrainFuse supports multiscale biological modeling, enabling the deployment of approximately 38,000 Hodgkin-Huxley neurons with 100 million synapses on a single neuromorphic chip while consuming as low as 1.98 W. For AI, BrainFuse facilitates the synergistic application of realistic biological neuron models, demonstrating enhanced robustness to input noise and improved temporal processing endowed by complex HH dynamics. BrainFuse therefore serves as a foundational engine to facilitate cross-disciplinary research and accelerate the development of next-generation bio-inspired intelligent systems.

Topik & Kata Kunci

Penulis (12)

B

Baiyu Chen

Y

Yujie Wu

S

Siyuan Xu

P

Peng Qu

D

Dehua Wu

X

Xu Chu

H

Haodong Bian

S

Shuo Zhang

B

Bo Xu

Y

Youhui Zhang

Z

Zhengyu Ma

G

Guoqi Li

Format Sitasi

Chen, B., Wu, Y., Xu, S., Qu, P., Wu, D., Chu, X. et al. (2026). BrainFuse: a unified infrastructure integrating realistic biological modeling and core AI methodology. https://arxiv.org/abs/2601.21407

Akses Cepat

Lihat di Sumber
Informasi Jurnal
Tahun Terbit
2026
Bahasa
en
Sumber Database
arXiv
Akses
Open Access ✓