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competences of the Selmer Center in the mathematical aspects of information security. The successful candidate must be an expert in Information Security and/or Applied Cryptography, with good experience in
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collaboration with the department of mathematics and bioinformatics at UiB. About the project/work tasks: Diabetes is a substantial health burden. The disease can develop and progress in different ways in
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to complications in patients with Diabetes”, financed by Trond Mohn Research Foundation. The project is a collaboration with the department of mathematics and bioinformatics at UiB. About the project/work tasks
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collaboration with the department of mathematics and bioinformatics at UiB. About the project/work tasks: Diabetes is a substantial health burden. The disease can develop and progress in different ways in
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. The deadline for applying for admission to the PhD programme at The Faculty of Mathematics and Natural Sciences is 2 months after you start your position or after the start of the research project that will lead
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PhD degree within a period of 3 years. The deadline for applying for admission to the PhD programme at The Faculty of Mathematics and Natural Sciences is 2 months after you start your position or after
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PhD: Development and application of Machine Learning for downscaling climate predictions/projections
12 Mar 2024 Job Information Organisation/Company University of Bergen Department Geophysical Institute Research Field Physics » Metrology Computer science Mathematics » Applied mathematics
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or several of the following different aspects of Reeb graph learning: mathematical foundations, (probabilistic) learning algorithms, performance measures, metrics, visualization, statistics, downstream tasks
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equivalent degree within Computer Science, AI or Mathematics, or must have submitted his/her doctoral thesis for assessment prior to the application deadline. It is a condition of employment that the PhD has
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learning: mathematical foundations, (probabilistic) learning algorithms, performance measures, metrics, visualization, statistics, downstream tasks such as dimensionality reduction or generative modelling