13 phd-mathematical-modelling-ecological-modelling PhD positions at Radboud University
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development schemes. Where you will be working This PhD position is embedded in the High-Energy Physics Department at the Institute for Mathematics, Astrophysics and Particle Physics (IMAPP) at Radboud
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development schemes. Where you will be working This PhD position is embedded in the High-Energy Physics Department at the Institute for Mathematics, Astrophysics and Particle Physics (IMAPP) at Radboud
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-throughput experiments to train AI tools to predict properties of complex mixtures? Then join our team as a PhD candidate! Chemistry is a science of mixtures. Whether you think of complex formulations for drug
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team as a PhD candidate! Chemistry is a science of mixtures. Whether you think of complex formulations for drug delivery to the foam on your cappuccino: the properties of small molecules, polymers and
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to play as a PhD candidate in our research team! As a PhD candidate, you will be involved in the research and development of instruments based on the latest ultrabroadband mid-infrared intrapulse
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the other SPINES PhD projects on (a) ‘Infrastructure Managers as Institutional Entrepreneurs’ (University of Groningen), and (b) ‘Modelling Shared Pathways and Tipping Dynamics’ (University of Twente
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at the intersection of cognitive neuroscience and developmental psychology. We are looking for a PhD candidate to join the BabyBRAIN lab . In this position, you will conduct cross-sectional and longitudinal research
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later skill acquisition. This research is located at the intersection of cognitive neuroscience and developmental psychology. We are looking for a PhD candidate to join the BabyBRAIN lab . In
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you like to contribute to an increased understanding of carbon cycle feedbacks in the climate system? Do you thrive in the dynamic blend of seagoing fieldwork, laboratory experiments and modelling? As a
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you eager to make AI more sustainable? As a PhD Candidate, you will develop innovative methods for predicting and reducing the energy consumption of large-scale AI systems during their design phase