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Understanding the interconnection network of SpiNNaker

机译:了解SpiNNaker的互连网络

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SpiNNaker is a massively parallel architecture designed to model large-scale spiking neural networks in (biological) real-time. Its design is based around ad-hoc multi-core System-on-Chips which are interconnected using a two-dimensional toroidal triangular mesh. Neurons are modeled in software and their spikes generate packets that propagate through the on- and inter-chip communication fabric relying on custom-made on-chip multicast routers. This paper models and evaluates large-scale instances of its novel interconnect (more than 65 thousand nodes, or over one million computing cores), focusing on real-time features and fault-tolerance. The key contribution can be summarized as understanding the properties of the feasible topologies and establishing the stable operation of the SpiNNaker under different levels of degradation. First we derive analytically the topological characteristics of the network, which are later confirmed by experimental work. With the computational model developed, we investigate the topology of SpiNNaker, and compare it with a standard 3-dimensional torus. The novel emergency routing mechanism, implemented within the routers, allows the topology of SpiNNaker to be more robust than the 3-dimensional torus, regardless of the latter having better topological characteristics. Furthermore, we obtain optimal values of two router parameters related with livelock and deadlock avoidance mechanisms.
机译:SpiNNaker是一个大规模并行体系结构,旨在实时(生物)建模大型尖峰神经网络。它的设计基于临时多核片上系统,该系统使用二维环形三角形网格互连。神经元在软件中建模,其尖峰生成数据包,这些数据包依靠定制的芯片上多播路由器通过芯片上和芯片间通信结构传播。本文针对实时互连特性和容错特性,对新型互连的大型实例(超过65,000个节点,或超过一百万个计算核心)进行建模和评估。关键的贡献可以概括为了解可行拓扑的属性并建立SpiNNaker在不同退化水平下的稳定运行。首先,我们分析得出网络的拓扑特征,随后通过实验工作予以确认。通过开发计算模型,我们研究了SpiNNaker的拓扑,并将其与标准3维环面进行比较。在路由器内实现的新颖的紧急路由机制使SpiNNaker的拓扑比3维环面更健壮,而无需考虑3D环面的拓扑特性。此外,我们获得与活锁和死锁避免机制相关的两个路由器参数的最佳值。

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