基于TrueNorth系统的脉冲神经网络资产配置

C. Yakopcic, Nayim Rahman, Tanvir Atahary, Md. Zahangir Alom, T. Taha, Alex Beigh, Scott Douglass
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引用次数: 0

摘要

资产配置是一个计算密集型的组合优化问题,通常用于自主决策系统。然而,认知代理与环境实时交互,通常受到严重的功率限制。因此,迫切需要在低功耗计算平台上运行实时资产分配代理,以确保效率和可移植性。作为传统技术的替代方案,本文介绍的工作描述了如何使用尖峰神经元算法进行资产配置。我们表明,如果用户愿意接受使用我们的尖峰神经元方法的接近最优解,则可以显著减少计算时间。最近,在某些应用中,与传统处理技术相比,专门的神经形态脉冲处理器已经证明可以显著降低功耗。效率的提高主要是由于独特的算法处理,减少了数据移动,增加了并行计算。在这项工作中,我们使用TrueNorth峰值神经网络处理器来实现我们的资产分配算法。在工作功率约为50 mW的情况下,我们展示了在尖峰神经形态处理器上执行便携式低功耗任务分配的可行性。
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Spiking Neural Network for Asset Allocation Implemented Using the TrueNorth System
Asset allocation is a compute intensive combinatorial optimization problem commonly tasked to autonomous decision making systems. However, cognitive agents interact in real time with their environment and are generally heavily power constrained. Thus, there is strong need for a real time asset allocation agent running on a low power computing platform to ensure efficiency and portability. As an alternative to traditional techniques, work presented in this paper describes how spiking neuron algorithms can be used to carry out asset allocation. We show that a significant reduction in computation time can be gained if the user is willing to accept a near optimal solution using our spiking neuron approach. As of late, specialized neuromorphic spiking processors have demonstrated a dramatic reduction in power consumption relative to traditional processing techniques for certain applications. Improved efficiencies are primarily due to unique algorithmic processing that produces a reduction in data movement and an increase in parallel computation. In this work, we use the TrueNorth spiking neural network processor to implement our asset allocation algorithm. With an operating power of approximately 50 mW, we show the feasibility of performing portable low-power task allocation on a spiking neuromorphic processor.
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