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National Technical University of Athens
2023
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Chemistry – A European Journal
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Computational Mechanics
2023
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Application of Machine Learning Algorithms to Metadynamics for the Elucidation of the Binding Modes and Free Energy Landscape of Drug/Target Interactions: a Case Study
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A generalized probabilistic learning approach for multi-fidelity uncertainty quantification in complex physical simulations
Computer Methods in Applied Mechanics and Engineering
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14th WCCM-ECCOMAS Congress
CIMNE
2021
A generalized probabilistic learning approach for multi-fidelity uncertainty quantification in complex physical simulations
Computer Methods in Applied Mechanics and Engineering
2022
400
115600