Abstract

Cortical synapse organization supports a range of dynamic states on multiple spatial and temporal scales, from synchronous slow wave activity (SWA), characteristic of deep sleep or anesthesia, to fluctuating, asynchronous activity during wakefulness (AW). Such dynamic diversity poses a challenge for producing efficient large-scale simulations that embody realistic metaphors of short- and long-range synaptic connectivity. In fact, during SWA and AW different spatial extents of the cortical tissue are active in a given timespan and at different firing rates, which implies a wide variety of loads of local computation and communication. A balanced evaluation of simulation performance and robustness should therefore include tests of a variety of cortical dynamic states. Here, we demonstrate performance scaling of our proprietary Distributed and Plastic Spiking Neural Networks (DPSNN) simulation engine in both SWA and AW for bidimensional grids of neural populations, which reflects the modular organization of the cortex. We explored networks up to 192 × 192 modules, each composed of 1,250 integrate-and-fire neurons with spike-frequency adaptation, and exponentially decaying inter-modular synaptic connectivity with varying spatial decay constant. For the largest networks the total number of synapses was over 70 billion. The execution platform included up to 64 dual-socket nodes, each socket mounting 8 Intel Xeon Haswell processor cores @ 2.40 GHz clock rate. Network initialization time, memory usage, and execution time showed good scaling performances from 1 to 1,024 processes, implemented using the standard Message Passing Interface (MPI) protocol. We achieved simulation speeds of between 2.3 × 109 and 4.1 × 109 synaptic events per second for both cortical states in the explored range of inter-modular interconnections.

Highlights

  • At the large scale, the neural dynamics of the cerebral cortex result from an interplay between local excitability and the pattern of synaptic connectivity

  • Distributed and Plastic Spiking Neural Networks (DPSNN) was extended to incorporate the event-driven approach of Mattia and Del Giudice (2000), implementing a mixed timedriven and event-driven strategy similar to the one introduced in Morrison et al (2005)

  • The full neural system is represented in DPSNN by a network of C++ processes equipped with an agnostic communication infrastructure, designed to be interfaced with both Message Passing Interface (MPI) and other software/hardware communication systems

Read more

Summary

Introduction

The neural dynamics of the cerebral cortex result from an interplay between local excitability and the pattern of synaptic connectivity. To help determine the mechanism of this transition, it may be of interest to identify the factors enabling the same nervous tissue to express global activity regimes as diverse as SWA and AW. Understanding this repertoire of global dynamics requires high-resolution numerical simulations of large-scale networks of neurons which, while keeping a manageable level of simplification, should be realistic with respect to both non-linear excitable local dynamics and to the spatial dependence of the synaptic connectivity (as well as the layered structure of the cortex) (Bazhenov et al, 2002; Hill and Tononi, 2005; Potjans and Diesmann, 2014; Krishnan et al, 2016)

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call