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Simulation of large neuronal networks with biophysically accurate models on graphics processors

机译:基于图形处理器的生物物理准确模型的大型神经元网络模拟

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Efficient simulation of large-scale mammalian brain models provides a crucial computational means for understanding complex brain functions and neuronal dynamics. However, such tasks are hindered by significant computational complexities. In this work, we attempt to address the significant computational challenge in simulating large-scale neural networks based on biophysically plausible Hodgkin-Huxley (HH) neuron models. Unlike simpler phenomenological spiking models, the use of HH models allows one to directly associate the observed network dynamics with the underlying biological and physiological causes, but at a significantly higher computational cost. We exploit recent commodity massively parallel graphics processors (GPUs) to alleviate the significant computational cost in HH model based neural network simulation. We develop look-up table based HH model evaluation and efficient parallel implementation strategies geared towards higher arithmetic intensity and minimum thread divergence. Furthermore, we adopt and develop advanced multi-level numerical integration techniques well suited for intricate dynamical and stability characteristics of HH models. On a commodity GPU card with 240 streaming processors, for a neural network with one million neurons and 200 million synaptic connections, the presented GPU neural network simulator is about 600X faster than a basic serial CPU based simulator, 28X faster than the CPU implementation of the proposed techniques, and only two to three times slower than the GPU based simulation using simpler phenomenological spiking models.
机译:大型哺乳动物的大脑模型模拟效率为了解复杂的脑功能和神经动力学的关键计算方式。然而,这些任务由显著计算复杂度阻碍。在这项工作中,我们试图解决在模拟基于生物物理学合理霍奇赫胥黎(HH)神经元模型的大型神经网络的显著计算的挑战。不同于简单的唯象尖峰型号,采用HH模型允许一个直接观察到的网络动态与底层生物和生理原因相关联,但在更高的显著计算成本。我们利用近期大宗商品大规模并行图形处理器(GPU)的,以纾缓HH模型显著计算成本基于神经网络模拟。我们开发查表基于HH模型评估和朝着更高的计算密度和最小线程发散面向高效的并行执行战略。此外,我们采用和发展以及适用于HH模型的复杂动态性和稳定性的特点先进的多级数字集成技术。在商品GPU卡,240个处理器,支持一节百万的神经元和2个亿的突触连接的神经网络,所提出的GPU神经网络模拟器约600X比基本串行CPU基于模拟器快,28X比CPU实现的更快提出的技术,并且比使用简单的现象扣球模型基于GPU的模拟慢了两到三倍。

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