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CUQIpy: I. Computational uncertainty quantification for inverse problems in Python

Nicolai A. B. Riis, Amal Alghamdi, Felipe Uribe, Silja Westphal Christensen, Babak Maboudi Afkham, Per Christian Hansen, Jakob Sauer Jørgensen

2024Inverse Problems11 citationsDOIOpen Access PDF

Abstract

Abstract This paper introduces CUQIpy , a versatile open-source Python package for computational uncertainty quantification (UQ) in inverse problems, presented as Part I of a two-part series. CUQIpy employs a Bayesian framework, integrating prior knowledge with observed data to produce posterior probability distributions that characterize the uncertainty in computed solutions to inverse problems. The package offers a high-level modeling framework with concise syntax, allowing users to easily specify their inverse problems, prior information, and statistical assumptions. CUQIpy supports a range of efficient sampling strategies and is designed to handle large-scale problems. Notably, the automatic sampler selection feature analyzes the problem structure and chooses a suitable sampler without user intervention, streamlining the process. With a selection of probability distributions, test problems, computational methods, and visualization tools, CUQIpy serves as a powerful, flexible, and adaptable tool for UQ in a wide selection of inverse problems. Part II of the series focuses on the use of CUQIpy for UQ in inverse problems with partial differential equations.

Topics & Concepts

Python (programming language)Uncertainty quantificationComputer scienceBayesian probabilityInverse problemInversePosterior probabilityMathematicsAlgorithmMathematical optimizationData miningTheoretical computer scienceMachine learningArtificial intelligenceProgramming languageGeometryMathematical analysisGaussian Processes and Bayesian InferenceProbabilistic and Robust Engineering DesignModel Reduction and Neural Networks