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variation in Dutch. You teach Dutch Linguistics I in Kortrijk, formal linguistics in the third Bachelor year in Leuven, and a Master’s course in formal morphology in Leuven. You take an active role in
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to use qualitative and quantitative tools to measure technological competition, as well as markets and patent databases, which will then be analysed using network analysis and machine learning. Empirically
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Educational Master – and conducts research across a wide variety of domains in each of these fields. The faculty’s vision can be summarized as: “With trust, in connection, through continuous learning.” The FPPW
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biochemistry, and translational research, in a stimulating international environment with strong collaborative networks. PhD in molecular and cellular biology, biochemistry, pharmacy or equivalent Experience
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months. The candidate will hold a PhD in physics, geosciences, mathematics, or an equivalent field. Previous experience or demonstrated knowledge in palaeoclimate dynamics and climate modelling will be
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be analysed using network analysis and machine learning. Empirically, the project aims to understand what China, the US and Europe are doing to compete in semiconductors, cloud computing and space
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currently exploring a range of exciting topics at the intersection between computational neuroscience and probabilistic machine learning, in particular, to derive mechanistic insights from neural data. We
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objective of this project is to compare the modern philosophy of Bildung and the contemporary paradigm of the Learning Society (LS) by systematically analyzing their homological structures. Through
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. The candidates have a PhD degree in Arts, Philosophy, or another relevant subject, concluded with excellent results (or will have it before the start of the employment), and meet the requirements for recruitment
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currently exploring a range of exciting topics at the intersection between computational neuroscience and probabilistic machine learning, in particular, to derive mechanistic insights from neural data. We