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Applications are invited for a position in the rapidly expanding data analytics run by Prof Adam Dubis. The main focus of the team is to develop deep learning tools for prediction of disease progression
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conducted according to national guidelines for University and Technical College PhD scholars. For further information, please contact Prof. Egil Prestløkken (main supervisor), E-mail: egil.prestlokken@nmbu.no
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. At NTNU, 9,000 employees and 43,000 students work to create knowledge for a better world. You will find more information about working at NTNU and the application process here. ... (Video unable to load
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(crowding, concentration of nutrients, size of liposome, etc.) with gene expression levels across a synthetic genome. To achieve this aim, you will use VASA-seq and Ribo-Seq to generate large data sets
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media literacy skills to cope with wartime information challenges. The project will involve ethnographic (including traditional and digital ethnography) work with Ukrainian refugees in The Netherlands
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teaching skills. You will work with the following supervisory team: Dr Smith Mehta (co-supervisor) Dr Stacey Copeland (co-supervisor) Prof dr Susan Aasman (promoter) The PhD Project This PhD project
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. The PhD thesis has to be completed within four years. You will also have the opportunity to (further) develop your teaching skills. You will work with the following supervisory team: Prof. Dr. Marianne
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Dickenson (Archaeology, Ancient History) and Leanne Jansen (Classics), with Prof. Dr Onno van Nijf as promotor, the candidate will develop their personal research project along the lines of inquiry stated
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Philosophy), with Prof Felix Budelmann as promotor. You will be asked to: Complete the PhD in the specified timeframe (4 years) Conduct a total of 0.4 FTE teaching spread over the second, third and fourth year
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hierarchies during cardiac, endothelial and hematopoietic development. Responsibility: * Develop or integrate novel statistical methods and algorithms for analyzing large-scale -omics data, including gene