SimulationTutorials - Public tutorials around electrophysiological simulations

  •        16

On November 10th 2017, we present a breakout session "Data-Driven Neurophysiology and Neuronal Modelling". It is part of the Society for Neuroscience (SfN) Annual Meeting Preconference Sessions, SHORT COURSE 2: Neuroinformatics in the Age of Big Data: Working With the Right Data and Tools. The content of this tutorial is located here.



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