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Data-Driven Inference Design for the Bayesian Uncertainty Quantification of the Reactive Shock-Bubble Interaction

2022-06-06
0 min read
Conference Talk
#Uncertainty Quantification #Reinforcement Learning #Design of Inference #Multifidelity Monte Carlo

Ludger Paehler

Nikolaus A. Adams

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See Also

Inference Design for the Uncertainty Quantification of Extreme-Scale Fluid Dynamics Simulations
Inference Design for the Uncertainty Quantification of the Reactive Shock-Bubble Interaction
Multifidelity and Machine Learning for Turbulent Flows

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