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The Parallel C++ Statistical Library 'QUESO': Quantification of Uncertainty for Estimation, Simulation and Optimization

机译:并行C ++统计库“Queso”:量化估计,仿真和优化的不确定性

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QUESO is a collection of statistical algorithms and programming constructs supporting research into the uncertainty quantification (UQ) of models and their predictions. It has been designed with three objectives: it should (a) be sufficiently abstract in order to handle a large spectrum of models, (b) be algorithmically extensible, allowing an easy insertion of new and improved algorithms, and (c) take advantage of parallel computing, in order to handle realistic models. Such objectives demand a combination of an object-oriented design with robust software engineering practices. QUESO is written in C++, uses MPI, and leverages libraries already available to the scientific community. We describe some UQ concepts, present QUESO, and list planned enhancements.
机译:Queso是一系列统计算法和编程构建,支持研究模型的不确定量化(UQ)及其预测。它设计有三个目标:它应该是(a)足够摘要,以处理大谱的模型,(b)是算法的可扩展,允许简单地插入新的和改进的算法,(c)利用并行计算,以处理现实模型。这种目标需要具有强大的软件工程实践的面向对象设计的组合。 Queso是用C ++编写的,使用MPI,并利用科学界已经提供的库。我们描述了一些UQ概念,目前的queso和列表计划增强功能。

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