40 algorithm-development-"Prof"-"Prof" Postdoctoral positions at Nature Careers in Denmark
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developing countries, and a potential for a new future crop in Scandinavia. Using sweet potato as a physiological model, the research will identify key metabolic bottlenecks in the plant’s source–sink
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Are you motivated by unravelling how fundamental cellular processes are regulated? Do you want to pioneer the discovery and development of innovative tools and methodologies to decode poorly
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. Expected start date and duration of employment This is a 3-year position available from 1 April 2026. Job description Our team investigates the molecular mechanisms that govern the development and
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Aarhus University’s Department of Ecoscience invites applications for a 2-year postdoc to co-develop a spatially-explicit individual-based dynamic energy budget model (DEB-IBM) for high-Arctic
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Are you interested in neuromorphic spintronic and can you contribute to the development of the project? Then the Department of Electrical and Computer Engineering invites you to apply for a one year
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Monitoring and Conservation Genetics. Expected start date and duration of employment This is a 2–year position from 1 February 2026 or as soon possible. Job description The position will focus on developing
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of root hair infection and root nodule development and a strong background in plant-microbe interactions is expected. Applicants must have a relevant PhD and additional experience from postdoctoral
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of Professional Associations. Aarhus University’s ambition is to be an attractive and inspiring workplace for all and to foster a culture in which each individual has opportunities to thrive, achieve and develop
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Are you a chemist or chemical engineer interested in biofuels and process development? The Department of Biological and Chemical Engineering invites you to apply for a two year position to
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biology, epidimological data and AI-driven systems modeling. The successful candidate will develop and apply computational and machine learning approaches to decode the molecular and epigenetic mechanisms