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: 12 September 2025 Apply now Are you a data scientist interested in designing and implementing process-informed machine learning and uncertainties quantification methods? Join us as a postdoc and work
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Postdoc: Hybrid Geospatial Modelling and Scenario Development of Biomass Faculty: Faculty of Geosciences Department: Department of Physical Geography Hours per week: 32 to 40 Application deadline
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to join our team as a Postdoc in Process Intensification for Cellular Agriculture, with a focus on Bioprocess design of a Scale-out Production Methodology. As a postdoc you will be responsible
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Vacancies Postdoc Position: Design and Manufacturing of Adaptive Winglets using Shape Memory Alloys Key takeaways Project overview This project aims to revolutionize aircraft winglet design by
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across domains. The research unit Intelligent Systems (IS) in Computer Science is focused on the development of Data Science, Pattern Recognition and Machine Learning algorithms for interdisciplinary data
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ambition can acquire the right part of a specific course in a cost-efficient way. This postdoc position is part of the research project "Educational logistics for secondary education". In the next phase of
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-derived organoid models. You will work closely with in-house technology platforms, including the Single Cell Genomics Facility, Big Data Core and High Throughput Screening Facility. Our research is embedded
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of advanced materials. Information and application Are you interested in this position? Please send your application via the 'Apply now' button below before September 30. About the department The Interfaces and
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Vacancies Postdoc position for Multi-scale process modelling Key takeaways At the CPM chair we are looking for a postdoctoral researcher to join the EU-funded FASTER project, which aims to enable
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across domains. The research unit Intelligent Systems (IS) in Computer Science is focused on the development of Data Science, Pattern Recognition and Machine Learning algorithms for interdisciplinary data