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-driven approaches to health, society, and policy. BISI combines expertise in epidemiology, biostatistics, health economics, and machine learning to tackle complex societal challenges. BISI is actively
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problems in biology by combining machine learning with in-depth knowledge of biological processes. Who we are looking for You have a Master in Science (Bioengineering, Biochemistry-Biotechnology, Biomedical
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that disability needs healing. In so doing, it innovatively combines the two usually unconnected research fields medical history and disability history, while also integrating body history and the history
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of these materials.State-of-the-art characterization techniques such as DSC, DMA, DTMA, micro-Computed Tomography (micro-CT), optical microscopy and Scanning Electron Microscopy (SEM) are combined with advanced numerical
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spectroscopy. You will solve and refine crystal structures from electron diffraction data. You will investigate structure-property relationships by combining your TEM results with catalytic performance data
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cell cycle machinery. This project will combine live-cell imaging, phosphoproteomics, and metabolite profiling to unravel the complexity of phytohormonal regulation at the cellular level. Profile
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2023 as the 10th VIB center, with the core mission to study fundamental problems in biology by combining machine learning with in-depth knowledge of biological processes. We aim to work towards
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community. See Ingels J et al. Cytotherapy 2022 for an examples of such a study. This PhD project may be particularly relevant for pharmacist that will specialize as qualified person. The combined experience
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modeling into modern causal inference by combining its strengths with innovations in debiased machine learning, as well as to improve both the statistical efficiency and robustness of debiased machine
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, including tropical and temperate forests, drylands, peatlands and urban ecosystems. Our strength lies in a unique combination of methodologies, ranging from empirical in-situ observations and experiments