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Efficient Parallel Simulation of Large-Scale Neuronal Networks on Clusters of Multiprocessor Computers

机译:大规模神经网络在多处理器计算机集群上的高效平行模拟

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To understand the principles of information processing in the brain, we depend on models with more than 105 neurons and 109 connections. These networks can be described as graphs of threshold elements that exchange point events over their connections. From the computer science perspective, the key challenges are to represent the connections succinctly; to transmit events and update neuron states efficiently; and to provide a comfortable user interface. We present here the neural simulation tool NEST, a neuronal network simulator which addresses all these requirements. To simulate very large networks with acceptable time and memory requirements, NEST uses a hybrid strategy, combining distributed simulation across cluster nodes (MPI) with thread-based simulation on each computer. Benchmark simulations of a computationally hard biological neuronal network model demonstrate that hybrid parallelization yields significant performance benefits on clusters of multi-core computers, compared to purely MPI-based distributed simulation.
机译:要了解大脑中信息处理的原则,我们依靠超过105个神经元和109个连接的模型。这些网络可以描述为阈值元素的图表,该阈值元素通过它们的连接交换点事件。从计算机科学的角度来看,关键挑战是表示简洁地代表联系;要有效地传输事件并更新神经元状态;并提供舒适的用户界面。我们在这里介绍神经模拟工具巢,一个神经元网络模拟器,它解决了所有这些要求。为了模拟具有可接受的时间和内存要求的非常大的网络,Nest使用混合策略,在每台计算机上使用基于线程的仿真组合跨群集节点(MPI)的分布式模拟。与纯MPI的分布式仿真相比,计算硬生物神经元网络模型的基准模拟表明混合并行化对多核计算机集群产生了显着的性能益处。

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