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Integrating Visualizations into Modeling NEST Simulations

机译:将可视化集成到建模NEST仿真中

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摘要

Modeling large-scale spiking neural networks showing realistic biological behavior in their dynamics is a complex and tedious task. Since these networks consist of millions of interconnected neurons, their simulation produces an immense amount of data. In recent years it has become possible to simulate even larger networks. However, solutions to assist researchers in understanding the simulation's complex emergent behavior by means of visualization are still lacking. While developing tools to partially fill this gap, we encountered the challenge to integrate these tools easily into the neuroscientists' daily workflow. To understand what makes this so challenging, we looked into the workflows of our collaborators and analyzed how they use the visualizations to solve their daily problems. We identified two major issues: first, the analysis process can rapidly change focus which requires to switch the visualization tool that assists in the current problem domain. Second, because of the heterogeneous data that results from simulations, researchers want to relate data to investigate these effectively. Since a monolithic application model, processing and visualizing all data modalities and reflecting all combinations of possible workflows in a holistic way, is most likely impossible to develop and to maintain, a software architecture that offers specialized visualization tools that run simultaneously and can be linked together to reflect the current workflow, is a more feasible approach. To this end, we have developed a software architecture that allows neuroscientists to integrate visualization tools more closely into the modeling tasks. In addition, it forms the basis for semantic linking of different visualizations to reflect the current workflow. In this paper, we present this architecture and substantiate the usefulness of our approach by common use cases we encountered in our collaborative work.
机译:对大型尖峰神经网络进行建模,以显示其动力学中的实际生物行为是一项复杂而繁琐的任务。由于这些网络由数百万个相互连接的神经元组成,因此它们的仿真产生了大量数据。近年来,模拟更大的网络已经成为可能。但是,仍然缺少帮助研究人员通过可视化手段了解模拟的复杂紧急情况的解决方案。在开发工具以部分填补这一空白的同时,我们遇到了将这些工具轻松集成到神经科学家的日常工作流程中的挑战。为了了解是什么使它如此具有挑战性,我们调查了合作者的工作流程,并分析了他们如何使用可视化解决日常问题。我们确定了两个主要问题:首先,分析过程可以快速改变重点,这需要切换可帮助解决当前问题领域的可视化工具。其次,由于模拟产生的异构数据,研究人员希望关联数据以有效地调查这些数据。由于单片应用程序模型极不可能开发和维护,即以整体方式处理和可视化所有数据模式并反映所有可能的工作流组合,因此该软件体系结构提供了可同时运行并可以链接在一起的专用可视化工具。反映当前的工作流程,是一种更可行的方法。为此,我们开发了一种软件体系结构,使神经科学家可以将可视化工具更紧密地集成到建模任务中。此外,它构成了不同可视化内容进行语义链接以反映当前工作流的基础。在本文中,我们介绍了这种体系结构,并通过在协作工作中遇到的常见用例来证实我们方法的有效性。

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