26 algorithm-development-"Multiple"-"Prof"-"UNIS"-"DIFFER" PhD positions at Utrecht University in Netherlands
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/or data processing and develop your academic teaching skills (during your project). The project will be carried out at the Institute for Language Sciences (ILS), at Utrecht University, the Netherlands
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Application deadline: 5 January 2026 Apply now Do you want to develop predictive models that integrate omics and environmental data, advancing the field of precision prevention? Join the Institute for Risk
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unique opportunity to contribute to the technological foundations for tomorrow’s machine learning. Your job In the ERC project FoRECAST, we aim to develop theory (e.g., new probabilistic and differential
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the restoration of peatland and coastal ecosystems? As one of the two 4-year PhD positions in the NWO funded project ‘Bioprime: applying biomimicry to produce restoration designs for multiple ecosystems’ at Utrecht
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: collaborate with the group of Dr Arnold Boersma at the Bijvoet Centre to develop novel sensors for measuring macromolecular crowding in C. elegans; use advanced fluorescence microscopy techniques, complemented
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aggregation in vivo, using the nematode C. elegans as a multicellular model organism. In this PhD position, you will: collaborate with the group of Dr Arnold Boersma at the Bijvoet Centre to develop novel
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Hz using piezoelectric actuators. We also showed a proof-of-concept of 30× enhanced catalytic performance in the hydrogen evolution reaction. However, the mechanism behind this effect remains unclear
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predict the clogging evolution in a range of geological media by: Quantifying physical and chemical clogging dynamics across a spectrum of rock types (porous sedimentary, porous volcanic, altered
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× enhanced catalytic performance in the hydrogen evolution reaction. However, the mechanism behind this effect remains unclear, and the influence of dynamic stress on selectivity and stability is unknown. As a
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experiments and numerical simulations to understand and predict the clogging evolution in a range of geological media by: Quantifying physical and chemical clogging dynamics across a spectrum of rock types