Efficient parameter calibration and real-time simulation of large-scale spiking neural networks with GeNN and NEST

被引:1
作者
Schmitt, Felix Johannes [1 ]
Rostami, Vahid [1 ]
Nawrot, Martin Paul [1 ]
机构
[1] Univ Cologne, Inst Zool, Computat Syst Neurosci, Cologne, Germany
关键词
computational neuroscience; attractor neural network; metastability; real-time simulation; computational neuroethology; spiking neural network (SNN); NERVOUS-SYSTEM; NEURONS; DYNAMICS; CONNECTIVITY; DIVERSITY; MEMORY; BRAIN; MODEL; INTEGRATION; CIRCUITS;
D O I
10.3389/fninf.2023.941696
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Spiking neural networks (SNNs) represent the state-of-the-art approach to the biologically realistic modeling of nervous system function. The systematic calibration for multiple free model parameters is necessary to achieve robust network function and demands high computing power and large memory resources. Special requirements arise from closed-loop model simulation in virtual environments and from real-time simulation in robotic application. Here, we compare two complementary approaches to efficient large-scale and real-time SNN simulation. The widely used NEural Simulation Tool (NEST) parallelizes simulation across multiple CPU cores. The GPU-enhanced Neural Network (GeNN) simulator uses the highly parallel GPU-based architecture to gain simulation speed. We quantify fixed and variable simulation costs on single machines with different hardware configurations. As a benchmark model, we use a spiking cortical attractor network with a topology of densely connected excitatory and inhibitory neuron clusters with homogeneous or distributed synaptic time constants and in comparison to the random balanced network. We show that simulation time scales linearly with the simulated biological model time and, for large networks, approximately linearly with the model size as dominated by the number of synaptic connections. Additional fixed costs with GeNN are almost independent of model size, while fixed costs with NEST increase linearly with model size. We demonstrate how GeNN can be used for simulating networks with up to 3.5 center dot 10(6) neurons (> 3 center dot 10(12)synapses) on a high-end GPU, and up to 250, 000 neurons (25 center dot 10(9) synapses) on a low-cost GPU. Real-time simulation was achieved for networks with 100, 000 neurons. Network calibration and parameter grid search can be efficiently achieved using batch processing. We discuss the advantages and disadvantages of both approaches for different use cases.
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页数:18
相关论文
共 132 条
[21]   Stable propagation of synchronous spiking in cortical neural networks [J].
Diesmann, M ;
Gewaltig, MO ;
Aertsen, A .
NATURE, 1999, 402 (6761) :529-533
[22]  
Diesmann M., 1995, SYNOD ENV NEURAL SYS
[23]  
Diesmann M., 2002, FORSCHUNG WISSCHENSC
[24]  
Eliasmith C., 2003, Neural Engineering: Computation, Representation and Dynamics in Neurobiological Systems
[25]   The use and abuse of large-scale brain models [J].
Eliasmith, Chris ;
Trujillo, Oliver .
CURRENT OPINION IN NEUROBIOLOGY, 2014, 25 :1-6
[26]   A Large-Scale Model of the Functioning Brain [J].
Eliasmith, Chris ;
Stewart, Terrence C. ;
Choo, Xuan ;
Bekolay, Trevor ;
DeWolf, Travis ;
Tang, Charlie ;
Rasmussen, Daniel .
SCIENCE, 2012, 338 (6111) :1202-1205
[27]  
Eppler Jochen Martin, 2008, Front Neuroinform, V2, P12, DOI 10.3389/neuro.11.012.2008
[28]   Useful road maps: studying Drosophila larva's central nervous system with the help of connectomics [J].
Eschbach, Claire ;
Zlatic, Marta .
CURRENT OPINION IN NEUROBIOLOGY, 2020, 65 :129-137
[29]   Deploying and Optimizing Embodied Simulations of Large-Scale Spiking Neural Networks on HPC Infrastructure [J].
Feldotto, Benedikt ;
Eppler, Jochen Martin ;
Jimenez-Romero, Cristian ;
Bignamini, Christopher ;
Gutierrez, Carlos Enrique ;
Albanese, Ugo ;
Retamino, Eloy ;
Vorobev, Viktor ;
Zolfaghari, Vahid ;
Upton, Alex ;
Sun, Zhe ;
Yamaura, Hiroshi ;
Heidarinejad, Morteza ;
Klijn, Wouter ;
Morrison, Abigail ;
Cruz, Felipe ;
McMurtrie, Colin ;
Knoll, Alois C. ;
Igarashi, Jun ;
Yamazaki, Tadashi ;
Doya, Kenji ;
Morin, Fabrice O. .
FRONTIERS IN NEUROINFORMATICS, 2022, 16
[30]  
Feurer M, 2019, SPRING SER CHALLENGE, P3, DOI 10.1007/978-3-030-05318-5_1