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for Biodiversity is situated in Aarhus and employs about 25 staff members. For more information on the Department see: http://ecos.au.dk/en/ What we offer Excellent research infrastructure with access to state
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Join us at the Department of Electrical and Computer Engineering at Aarhus University for a postdoctoral position focused on deep learning based analysis of remote sensing data for groundwater
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" at the PhD Programme Economics and Business Economics. You can read more about both the 3 and 4-year scheme here . The position is available from 1 September 2026 (or as soon as possible thereafter
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affiliated with the Novo Nordisk Foundation CO₂ Research Center (CORC) , where the successful candidate will manage and coordinate projects within the CO2-to-protein program, which is a part of the CO2
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? Then the Department of Electrical and Computer Engineering invites you to apply for a 2 year postdoc position bridging research with industrial implementation and innovation. Expected start date and
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description You will be contributing to developing and implementing novel algorithms at the intersection of computational physics and machine learning for the data-driven discovery of physical models. You will
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, understanding hydrate formation and dissociation mechanisms, and advancing experimental methods, process design, and equipment development. The position also includes participation in broader CCUS research
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in addressing complex organizational and societal challenges. The successful applicants will be expected to teach and supervise students across all levels. Our study programme portfolio includes an MSc
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using advanced analytical techniques, rheological analyses, as well as more general within biochemistry, food chemistry and/or food physical techniques Documented expertise in isolating and analyzing
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-year extension. The project is fully funded by the Independent Research Fund Denmark (DFF). The main objective of this project is to develop physics-constrained, data-driven turbulence models