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CEE 362A: Uncertainty Quantification (ME 470)

Uncertainty analysis in computational science. Probabilistic data representation, propagation techniques and validation under uncertainty. Mathematical and statistical foundations of random variables and processes for uncertainty modeling. Focus is on state-of-the-art propagation schemes, sampling techniques, and stochastic Galerkin methods. The concept of model validation under uncertainty and the determination of confidence bounds estimates. Prerequisite: basic probability and statistics at the level of CME 106 or equivalent.
Terms: Win | Units: 3 | Grading: Letter (ABCD/NP)
Instructors: ; Gorle, C. (PI)
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