Real-time cortical simulation on neuromorphic hardware

Author:

Rhodes Oliver1ORCID,Peres Luca1ORCID,Rowley Andrew G. D.1,Gait Andrew1,Plana Luis A.1ORCID,Brenninkmeijer Christian1,Furber Steve B.1ORCID

Affiliation:

1. Department of Computer Science, University of Manchester, Manchester, UK

Abstract

Real-time simulation of a large-scale biologically representative spiking neural network is presented, through the use of a heterogeneous parallelization scheme and SpiNNaker neuromorphic hardware. A published cortical microcircuit model is used as a benchmark test case, representing ≈1 mm 2 of early sensory cortex, containing 77 k neurons and 0.3 billion synapses. This is the first hard real-time simulation of this model, with 10 s of biological simulation time executed in 10 s wall-clock time. This surpasses best-published efforts on HPC neural simulators (3 × slowdown) and GPUs running optimized spiking neural network (SNN) libraries (2 × slowdown). Furthermore, the presented approach indicates that real-time processing can be maintained with increasing SNN size, breaking the communication barrier incurred by traditional computing machinery. Model results are compared to an established HPC simulator baseline to verify simulation correctness, comparing well across a range of statistical measures. Energy to solution and energy per synaptic event are also reported, demonstrating that the relatively low-tech SpiNNaker processors achieve a 10 × reduction in energy relative to modern HPC systems, and comparable energy consumption to modern GPUs. Finally, system robustness is demonstrated through multiple 12 h simulations of the cortical microcircuit, each simulating 12 h of biological time, and demonstrating the potential of neuromorphic hardware as a neuroscience research tool for studying complex spiking neural networks over extended time periods. This article is part of the theme issue ‘Harmonizing energy-autonomous computing and intelligence’.

Funder

Engineering and Physical Sciences Research Council

H2020 Future and Emerging Technologies

Helmholtz Association

Publisher

The Royal Society

Subject

General Physics and Astronomy,General Engineering,General Mathematics

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1. CorTile: A Scalable Neuromorphic Processing Core for Cortical Simulation With Hybrid-Mode Router and TCAM;IEEE Transactions on Circuits and Systems I: Regular Papers;2024

2. NoisyDECOLLE: Robust Local Learning for SNNs on Neuromorphic Hardware;2023 International Conference on Machine Learning and Applications (ICMLA);2023-12-15

3. Digital neuromorphic technology: current and future prospects;National Science Review;2023-11-03

4. neuroAIx: FPGA Cluster for Reproducible and Accelerated Neuroscience Simulations of SNNs;2023 IEEE Nordic Circuits and Systems Conference (NorCAS);2023-10-31

5. Runtime Construction of Large-Scale Spiking Neuronal Network Models on GPU Devices;Applied Sciences;2023-08-24

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