计算模型敏感性分析的无服务器方法

P. Kica, Magdalena Otta, K. Czechowicz, Karol Zajac, P. Nowakowski, A. Narracott, I. Halliday, M. Malawski
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引用次数: 0

摘要

数字孪生是用于分析目的的物理对象或系统的虚拟表示,通常通过计算机模拟,在许多工程和科学学科中。最近,这种方法已被引入计算医学,在医疗保健中的数字孪生(DTH)的概念。这种研究需要对其模型进行验证和验证,以及相应的敏感性分析和不确定度量化(VVUQ)。从计算的角度来看,VVUQ是一个计算密集型的过程,因为它需要多次运行输入参数的变化。研究人员经常使用高性能计算(HPC)解决方案来运行VVUQ研究,其中参数组合的数量很容易达到数万。然而,对于相当一部分计算模型来说,有一个可行的HPC替代方案——无服务器计算。在本文中,我们假设使用无服务器计算模型可以是一种实用和有效的方法来运行VVUQ计算的选定情况。我们在EasyVVUQ库的示例中展示了这一点,我们通过提供对许多无服务器服务的支持来扩展该库。生成的库——CloudVVUQ——使用来自计算医学领域的两个适用于无服务器执行的实际应用程序进行评估。我们的实验证明了该方法的可扩展性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Serverless Approach to Sensitivity Analysis of Computational Models
Digital twins are virtual representations of physical objects or systems used for the purpose of analysis, most often via computer simulations, in many engineering and scientific disciplines. Recently, this approach has been introduced to computational medicine, within the concept of Digital Twin in Healthcare (DTH). Such research requires verification and validation of its models, as well as the corresponding sensitivity analysis and uncertainty quantification (VVUQ). From the computing perspective, VVUQ is a computationally intensive process, as it requires numerous runs with variations of input parameters. Researchers often use high-performance computing (HPC) solutions to run VVUQ studies where the number of parameter combinations can easily reach tens of thousands. However, there is a viable alternative to HPC for a substantial subset of computational models - serverless computing. In this paper we hypothesize that using the serverless computing model can be a practical and efficient approach to selected cases of running VVUQ calculations. We show this on the example of the EasyVVUQ library, which we extend by providing support for many serverless services. The resulting library - CloudVVUQ - is evaluated using two real-world applications from the computational medicine domain adapted for serverless execution. Our experiments demonstrate the scalability of the proposed approach.
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