Collaborative modelling: the future of computational neuroscience?

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Davison, Andrew P.

Edité par CCSD ; Taylor & Francis -

International audience. Given the complexity of biological neural circuits and of their component cells and synapses, building and simulating robust, well-validated, detailed models increasingly surpasses the resources of an individual researcher or small research group. In this article, I will briefly review possible solutions to this problem, argue for open, collaborative modelling as the optimal solution for advancing neuroscience knowledge, and identify potential bottlenecks and possible solutions.

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