Simulation of spiking neural networks on different hardware platforms

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Abstract

Substantial evidence indicates that the time structure of neuronal spike trains is relevant in neuronal signal processing. Bio-inspired spiking neural networks are taking these results into account. Applications of these networks to low vision problems, e.g. segmentation, requires that the simulation of large-scale networks must be performed in a reasonable time. On this basis, we investigated the achievable performance of existing hardware platforms for the simulation of spiking neural networks with sizes from 8k neurons up to 512k neurons/50M synapses. We present results for workstations (Sparc-Ultra), digital signal processors (TMS-C8x), neuro computers (CNAPS, SYNAPSE), small-and large-scale parallel-computers (4xPentium, CM-2, SP2) and discuss the specific implementation issues. According to our investigation, only supercomputers like CM-2 can match the performance requirements for the simulation of very large-scale spiking neural networks. Therefore, there is still the need for low-cost hardware accelerators.

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APA

Jahnke, A., Schönauer, T., Roth, U., Mohraz, K., & Klar, H. (1997). Simulation of spiking neural networks on different hardware platforms. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 1327, pp. 1187–1192). Springer Verlag. https://doi.org/10.1007/bfb0020312

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