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Python Scripting in the Nengo Simulator

机译:Nengo Simulator中的Python脚本编写

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摘要

Nengo (http://nengo.ca) is an open-source neural simulator that has been greatly enhanced by the recent addition of a Python script interface. Nengo provides a wide range of features that are useful for physiological simulations, including unique features that facilitate development of population-coding models using the neural engineering framework (NEF). This framework uses information theory, signal processing, and control theory to formalize the development of large-scale neural circuit models. Notably, it can also be used to determine the synaptic weights that underlie observed network dynamics and transformations of represented variables. Nengo provides rich NEF support, and includes customizable models of spike generation, muscle dynamics, synaptic plasticity, and synaptic integration, as well as an intuitive graphical user interface. All aspects of Nengo models are accessible via the Python interface, allowing for programmatic creation of models, inspection and modification of neural parameters, and automation of model evaluation. Since Nengo combines Python and Java, it can also be integrated with any existing Java or 100% Python code libraries. Current work includes connecting neural models in Nengo with existing symbolic cognitive models, creating hybrid systems that combine detailed neural models of specific brain regions with higher-level models of remaining brain areas. Such hybrid models can provide (1) more realistic boundary conditions for the neural components, and (2) more realistic sub-components for the larger cognitive models.
机译:Nengo(http://nengo.ca)是一个开放源代码的神经模拟器,最近添加了Python脚本界面,从而大大增强了它的功能。 Nengo提供了许多可用于生理模拟的功能,包括有助于使用神经工程框架(NEF)开发人口编码模型的独特功能。该框架使用信息论,信号处理和控制理论来规范大规模神经电路模型的开发。值得注意的是,它还可用于确定作为观察到的网络动态和代表变量转换基础的突触权重。 Nengo提供了丰富的NEF支持,并包括可定制的峰值生成,肌肉动力学,突触可塑性和突触整合模型,以及直观的图形用户界面。 Nengo模型的所有方面都可以通过Python界面访问,从而允许以编程方式创建模型,检查和修改神经参数以及自动进行模型评估。由于Nengo结合了Python和Java,因此它也可以与任何现有的Java或100%Python代码库集成。当前的工作包括将Nengo中的神经模型与现有的符号认知模型联系起来,创建混合系统,将特定大脑区域的详细神经模型与其余大脑区域的高级模型相结合。这样的混合模型可以为神经成分提供(1)更现实的边界条件,以及为较大的认知模型提供(2)更现实的子成分。

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