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Data_Sheet_2_Scaling and Benchmarking an Evolutionary Algorithm for Constructing Biophysical Neuronal Models.xlsx

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https://figshare.com/articles/dataset/Data_Sheet_2_Scaling_and_Benchmarking_an_Evolutionary_Algorithm_for_Constructing_Biophysical_Neuronal_Models_xlsx/20088647
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资源简介:
Single neuron models are fundamental for computational modeling of the brain's neuronal networks, and understanding how ion channel dynamics mediate neural function. A challenge in defining such models is determining biophysically realistic channel distributions. Here, we present an efficient, highly parallel evolutionary algorithm for developing such models, named NeuroGPU-EA. NeuroGPU-EA uses CPUs and GPUs concurrently to simulate and evaluate neuron membrane potentials with respect to multiple stimuli. We demonstrate a logarithmic cost for scaling the stimuli used in the fitting procedure. NeuroGPU-EA outperforms the typically used CPU based evolutionary algorithm by a factor of 10 on a series of scaling benchmarks. We report observed performance bottlenecks and propose mitigation strategies. Finally, we also discuss the potential of this method for efficient simulation and evaluation of electrophysiological waveforms.
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2022-06-17
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