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Mapping Spiking Neural Networks on Multi-core Neuromorphic Platforms: Problem Formulation and Performance Analysis

机译:映射尖峰神经网络对多核神经形态平台:问题配方和性能分析

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In this paper, we propose a methodology for efficiently mapping concurrent applications over a globally asynchronous locally synchronous (GALS) multi-core architecture designed for simulating a Spiking Neural Network (SNN) in real-time. The problem of neuron-to-core mapping is relevant as a non-efficient allocation may impact real-time and reliability of the SNN execution. We designed a task placement pipeline capable of analysing the network of neurons and producing a placement configuration that enables a reduction of communication between computational nodes. We compared four Placement techniques by evaluating the overall post-placement synaptic elongation that represents the cumulative distance that spikes generated by neurons running on a core have to travel to reach their destination core. Results point out that mapping solutions taking into account the directionality of the SNN application provide a better placement configuration.
机译:在本文中,我们提出了一种在全局异步地局部同步(GALS)多核架构上有效地映射并发应用的方法,该多核架构实时地模拟尖刺神经网络(SNN)。神经元到核心映射的问题与非有效分配有关可能影响SNN执行的实时和可靠性。我们设计了一种任务放置管道,能够分析神经元网络并产生一种放置配置,该配置能够减少计算节点之间的通信。我们通过评估整体展示突触伸长率来比较四种放置技术,该突触突触伸长率表示代表在核心上运行的神经元产生的峰值产生的巨型距离,必须前往其目的地核心。结果指出,考虑SNN应用的方向性的映射解决方案提供了更好的放置配置。

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