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Gaussian and exponential lateral connectivity on distributed spiking neural network simulation

23 March 2018
E. Pastorelli
P. Paolucci
F. Simula
A. Biagioni
F. Capuani
P. Cretaro
G. Bonis
F. L. Cicero
A. Lonardo
Michele Martinelli
L. Pontisso
P. Vicini
R. Ammendola
ArXiv (abs)PDFHTML
Abstract

We measured the impact of long-range exponentially decaying intra-areal lateral connectivity on the scaling and memory occupation of a distributed spiking neural network simulator compared to that of short-range Gaussian decays. While previous studies adopted short-range connectivity, recent experimental neurosciences studies are pointing out the role of longer-range intra-areal connectivity with implications on neural simulation platforms. Two-dimensional grids of cortical columns composed by up to 11 M point-like spiking neurons with spike frequency adaption were connected by up to 30 G synapses using short- and long-range connectivity models. The MPI processes composing the distributed simulator were run on up to 1024 hardware cores, hosted on a 64 nodes server platform. The hardware platform was a cluster of IBM NX360 M5 16-core compute nodes, each one containing two Intel Xeon Haswell 8-core E5-2630 v3 processors, with a clock of 2.40 G Hz, interconnected through an InfiniBand network, equipped with 4x QDR switches.

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