An efficient SpiNNaker implementation of the Neural Engineering Framework

Andrew Mundy, James C. Knight, T. Stewart, S. Furber
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引用次数: 53

Abstract

By building and simulating neural systems we hope to understand how the brain may work and use this knowledge to build neural and cognitive systems to tackle engineering problems. The Neural Engineering Framework (NEF) is a hypothesis about how such systems may be constructed and has recently been used to build the world's first functional brain model, Spaun. However, while the NEF simplifies the design of neural networks, simulating them using standard computer hardware is still computationally expensive - often running far slower than biological real-time and scaling very poorly: problems the SpiNNaker neuromorphic simulator was designed to solve. In this paper we (1) argue that employing the same model of computation used for simulating general purpose spiking neural networks on SpiNNaker for NEF models results in suboptimal use of the architecture, and (2) provide and evaluate an alternative simulation scheme which overcomes the memory and compute challenges posed by the NEF. This proposed method uses factored weight matrices to reduce memory usage by around 90% and, in some cases, simulate 2000 neurons on a processing core - double the SpiNNaker architectural target.
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神经工程框架的高效SpiNNaker实现
通过建立和模拟神经系统,我们希望了解大脑是如何工作的,并利用这些知识来建立神经和认知系统来解决工程问题。神经工程框架(NEF)是一个关于如何构建这样的系统的假设,最近被用来建立世界上第一个功能性大脑模型,Spaun。然而,虽然NEF简化了神经网络的设计,但使用标准计算机硬件模拟它们在计算上仍然是昂贵的——通常比生物实时运行慢得多,而且可扩展性很差:SpiNNaker神经形态模拟器旨在解决这些问题。在本文中,我们(1)认为,在SpiNNaker上为NEF模型使用用于模拟通用脉冲神经网络的相同计算模型会导致该架构的次优使用,并且(2)提供并评估了一种替代模拟方案,该方案克服了NEF带来的内存和计算挑战。该方法使用因子权重矩阵来减少约90%的内存使用,在某些情况下,在一个处理核心上模拟2000个神经元——是SpiNNaker架构目标的两倍。
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