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Extremely Scalable Spiking Neuronal Network Simulation Code: From Laptops to Exascale Computers

机译:极可扩展的尖峰神经网络仿真代码:从便携式计算机到百亿亿次计算机

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摘要

State-of-the-art software tools for neuronal network simulations scale to the largest computing systems available today and enable investigations of large-scale networks of up to 10 % of the human cortex at a resolution of individual neurons and synapses. Due to an upper limit on the number of incoming connections of a single neuron, network connectivity becomes extremely sparse at this scale. To manage computational costs, simulation software ultimately targeting the brain scale needs to fully exploit this sparsity. Here we present a two-tier connection infrastructure and a framework for directed communication among compute nodes accounting for the sparsity of brain-scale networks. We demonstrate the feasibility of this approach by implementing the technology in the NEST simulation code and we investigate its performance in different scaling scenarios of typical network simulations. Our results show that the new data structures and communication scheme prepare the simulation kernel for post-petascale high-performance computing facilities without sacrificing performance in smaller systems.
机译:用于神经元网络仿真的最先进软件工具可扩展到当今可用的最大计算系统,并能够以单个神经元和突触的分辨率研究高达10%的人类皮层的大规模网络。由于单个神经元的传入连接数上限,网络连接在这种规模下变得极为稀疏。为了管理计算成本,最终针对大脑规模的仿真软件需要充分利用这种稀疏性。在这里,我们提出了两层连接基础结构和用于计算节点之间的定向通信的框架,这说明了脑规模网络的稀疏性。我们通过在NEST仿真代码中实施该技术来证明此方法的可行性,并研究其在典型网络仿真的不同扩展方案中的性能。我们的结果表明,新的数据结构和通信方案为千万亿次规模的高性能计算设施准备了仿真内核,而不会牺牲较小系统的性能。

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