Degrees:
Ph.D., Dartmouth College
A.M., Dartmouth College
M.S., New York Univ.
B.A., Boston College
Dr. Victor Churchill is a computational mathematician working in the areas of scientific machine learning and image reconstruction. His Ph.D., which focused on a Bayesian uncertainty quantification framework for synthetic aperture radar imaging, was supervised by Dr. Anne Gelb at Dartmouth College. His post-doctoral study was supervised by Dr. Dongbin Xiu at The Ohio State University and concentrated on learning the evolution of unknown dynamical systems using neural networks.
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Machine Learning
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Probability and Statistics
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Scientific Computing
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Scientific Machine Learning
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Dynamical Systems
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Imaging Science
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Computational Mathematics and Statistics
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- Churchill, V., Manns, S., Chen, Z., and Xiu, D. (2023). Robust Modeling of Unknown Dynamical Systems via Ensemble Averaged Learning, Journal of Computational Physics, 474, 111842.
- Churchill, V., and Gelb, A. (2023). Sub-Aperture SAR Imaging with Uncertainty Quantification, Inverse Problems, 39(5), 05400
- Chen, Z., Churchill, V., Wu, K., and Xiu, D. (2022). Deep Neural Network Modeling of Unknown Partial Differential Equations in Nodal Space, Journal of Computational Physics, 449, 110782.
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- SIAM Science Policy Fellow, 2023-2024.
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