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分析神经形态硬件和神经网络模型中连接性的标度。

Analyzing the scaling of connectivity in neuromorphic hardware and in models of neural networks.

作者信息

Partzsch Johannes, Schüffny René

机构信息

Chair for Parallel VLSI Systems and Neuro-Microelectronics, Department of Electrical Engineering and Information Technology, University of Technology Dresden, Saxony, Germany.

出版信息

IEEE Trans Neural Netw. 2011 Jun;22(6):919-35. doi: 10.1109/TNN.2011.2134109. Epub 2011 May 12.

Abstract

In recent years, neuromorphic hardware systems have significantly grown in size. With more and more neurons and synapses integrated in such systems, the neural connectivity and its configurability have become crucial design constraints. To tackle this problem, we introduce a generic extended graph description of connection topologies that allows a systematical analysis of connectivity in both neuromorphic hardware and neural network models. The unifying nature of our approach enables a close exchange between hardware and models. For an existing hardware system, the optimally matched network model can be extracted. Inversely, a hardware architecture may be fitted to a particular model network topology with our description method. As a further strength, the extended graph can be used to quantify the amount of configurability for a certain network topology. This is a hardware design variable that has widely been neglected, mainly because of a missing analysis method. To condense our analysis results, we develop a classification for the scaling complexity of network models and neuromorphic hardware, based on the total number of connections and the configurability. We find a gap between several models and existing hardware, making these hardware systems either impossible or inefficient to use for scaled-up network models. In this respect, our analysis results suggest models with locality in their connections as promising approach for tackling this scaling gap.

摘要

近年来,神经形态硬件系统的规模显著增大。随着越来越多的神经元和突触集成到此类系统中,神经连接及其可配置性已成为关键的设计约束。为了解决这个问题,我们引入了一种通用的扩展图来描述连接拓扑,它能够对神经形态硬件和神经网络模型中的连接性进行系统分析。我们方法的统一特性使得硬件和模型之间能够进行紧密的交流。对于现有的硬件系统,可以提取出最优匹配的网络模型。反之,利用我们的描述方法,可以使硬件架构适配特定的模型网络拓扑。进一步来说,扩展图可用于量化特定网络拓扑的可配置性。这是一个在硬件设计中广泛被忽视的变量,主要是因为缺乏分析方法。为了总结我们的分析结果,我们基于连接总数和可配置性,对网络模型和神经形态硬件的缩放复杂性进行了分类。我们发现几种模型与现有硬件之间存在差距,这使得这些硬件系统要么无法用于扩展网络模型,要么使用起来效率低下。在这方面,我们的分析结果表明,连接具有局部性的模型是解决这种缩放差距的一种有前景的方法。

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