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Learning from the unexpected: Statistics and uncertainty in massively scalable online laboratories (MSOL)

机译:从意外地学习:大型可扩展在线实验室(MSOL)的统计和不确定性

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Reasoning about unexpected outcomes is crucial to scientific exploration and STEM education. To stimulate conversations about these outcomes, we integrated noise characteristics and uncertainty into the framework of Massively Scalable Online Laboratories (MSOLs), which provide a collaborative and interactive online environment for education. The MSOL approach reduces a physical experiment to a set of states and displays it in an interactive environment. With the approach described here, those stages exhibit noise characteristics and nondeterministic outcomes. As a demonstration, we successfully recorded and displayed an example experiment, which contains quantum noise and limited repeatability. We thus display experiments more realistically and lead students towards a deeper understanding of the physical reality by evoking their curiosity about the variation of the displayed outcomes.
机译:关于意外结果的推理对于科学勘探和茎教育至关重要。为了激发关于这些结果的对话,我们将噪声特征和不确定性纳入大规模可扩展的在线实验室(MSOLS)的框架,这为教育提供了协作和互动的在线环境。 MSOL方法将物理实验减少到一组状态,并在交互式环境中显示它。利用此处描述的方法,这些阶段表现出噪声特征和非法术结果。作为演示,我们成功地记录并显示了一个示例实验,其中包含量子噪声和可重复性有限。因此,我们更现实地展示实验,并通过唤起他们对所显示结果的变化的好奇心来更深入地了解物理现实。

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