Computational neuroscience has produced a diversity of software for simulations of networks of spiking neurons, with both negative and positive consequences. On the one hand, each simulator uses its own programming or confi guration language, leading to considerable diffi culty in porting models from one simulator to another. This impedes communication between investigators and makes it harder to reproduce and build on the work of others. On the other hand, simulation results can be cross-checked between different simulators, giving greater confi dence in their correctness, and each simulator has different optimizations, so the most appropriate simulator can be chosen for a given modelling task. A common programming interface to multiple simulators would reduce or eliminate the problems of simulator diversity while retaining the benefi ts. PyNN is such an interface, making it possible to write a simulation script once, using the Python programming language, and run it without modifi cation on any supported simulator (currently NEURON, NEST, PCSIM, Brian and the Heidelberg VLSI neuromorphic hardware). PyNN increases the productivity of neuronal network modelling by providing high-level abstraction, by promoting code sharing and reuse, and by providing a foundation for simulator-agnostic analysis, visualization and data-management tools. PyNN increases the reliability of modelling studies by making it much easier to check results on multiple simulators. © 2009 Davison, Brüderle, Eppler, Kremkow, Muller, Pecevski, Perrinet and Yger.
CITATION STYLE
Davison, A. P., Brüderle, D., Eppler, J., Kremkow, J., Muller, E., Pecevski, D., … Yger, P. (2009). PyNN: A common interface for neuronal network simulators. Frontiers in Neuroinformatics, 2(JAN). https://doi.org/10.3389/neuro.11.011.2008
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