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chemical reactivity of hybrid clusters. Ongoing projects include the interaction of hydrogen with gas phase carbon-metal clusters and carbon dioxide reduction using fullerene-transition metal hybrids as
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inverse problems. The team aims at developing Bayesian computational methods for such (ill-posed) inverse problems and aims both at increasing their validity and at reducing their computational cost. In
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or morphodynamic applications in estuarine and coastal environments.. Proven experience in scientific programming of numerical methods (the finite element method in particular) is a strong asset. Please submit any
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interdisciplinary framework that advances theory and method in understanding carceral ageing. This PhD position offers a rare opportunity to contribute to cutting-edge research at the intersection of ageing studies
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mechanisms and pathways behind – multiple exposures pathogenesis and disease is not yet fully understood. In the EXPOSIM project, a large-scale EU project, we aim to unravel the complexity of the association
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elements of public space. The project has two core research pillars: 1. Spatial, Architectural, and Human-Space Analysis You will investigate how people use, move through, and experience wireless systems in
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monitoring and health monitoring of the different machine components. To this end, multiple dedicated measurement campaigns have been performed throughout the Belgian offshore zone. Project detail The European
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multiple NCDs across the Brussels Capital Region. It is a collaboration between VUB (including UZB and VUB ETRO), Université Libre de Bruxelles (ULB), and Sciensano. A central innovation is the BEE server
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and characterization of chiral metal nanoclusters, as well as their applications in catalysis and biosensing. CHIRALNANOMAT's will train 13 Doctoral Candidates who will become experts in chiral
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, boosted by AI-data augmentation for extrapolating spectrum patterns from multiple sources. To design a scalable computing framework using a physics-informed neural network for distributed spectrum analysis