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Efficient Deployment of Spiking Neural Networks on SpiNNaker Neuromorphic Platform

机译:在纺纱机神经晶平台上有效地部署尖刺神经网络

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Spiking Neural Networks (SNNs) have emerged as serious competitors of the traditional Convolutional Neural Networks (CNNs), as they unlock new potential of implementing less complex and more energy efficient neural networks. Current deep CNNs can be converted to SNNs for fast deployment on neuromorphic devices, however existing methods do not investigate the impact of hardware-related parameters that directly affect the accuracy of an SNN. In this brief, we target the SpiNNaker neuromorphic platform and we demonstrate a fast exploration framework that effectively decides the configuration of the target board, in order to achieve the highest possible accuracy. Experimental results show that our method reaches 98.85% SNN accuracy on MNIST dataset, while reducing the exploration time by a factor of 3x compared to exhaustive search.
机译:尖刺神经网络(SNNS)已成为传统卷积神经网络(CNNS)的严重竞争对手,因为它们解锁了实施更较为复杂和更节能的神经网络的新潜力。 电流深度CNN可以转换为SNN,以便在神经晶体器件上进行快速部署,但现有方法没有调查与硬件相关参数的影响直接影响SNN的精度。 在此简介中,我们针对Spinnaker神经形态平台,我们展示了一种快速的探索框架,有效地确定了目标板的配置,以达到最高的精度。 实验结果表明,与穷举搜索相比,我们的方法在Mnist DataSet上达到了98.85%的SNN精度,同时将勘探时间减少了3倍。

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