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Piyush Pandita

Interpretable Multi-Source Data Fusion Through Latent Variable Gaussian Process

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Feb 16, 2024
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Application of probabilistic modeling and automated machine learning framework for high-dimensional stress field

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Mar 15, 2023
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Reinforcement Learning based Sequential Batch-sampling for Bayesian Optimal Experimental Design

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Dec 23, 2021
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Inverse Aerodynamic Design of Gas Turbine Blades using Probabilistic Machine Learning

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Aug 17, 2021
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Data-based Discovery of Governing Equations

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Dec 21, 2020
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Data-Informed Decomposition for Localized Uncertainty Quantification of Dynamical Systems

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Aug 14, 2020
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A Fully Bayesian Gradient-Free Supervised Dimension Reduction Method using Gaussian Processes

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Aug 08, 2020
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Bayesian learning of orthogonal embeddings for multi-fidelity Gaussian Processes

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Aug 05, 2020
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Advances in Bayesian Probabilistic Modeling for Industrial Applications

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Mar 26, 2020
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Learning Arbitrary Quantities of Interest from Expensive Black-Box Functions through Bayesian Sequential Optimal Design

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Dec 16, 2019
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