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taxation aspects of international researchers’ employment by AU . Please find more information about entering and working in Denmark here: http://international.au.dk/research/ An appointee who does not speak
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to communicate effectively in English Research experience on process-based and ML models to simulate nutrient flows in agro-ecosystems Strong skills with scripting (R, Python) and programming Ability
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see our webpage at https://kea.au.dk/ . You will report to the Head of Department, Professor Henrik Toft Sørensen. Your competences You have academic qualifications at PhD/DSc level, and/or can document
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read more about the Department of Agroecology at: http://agro.au.dk . Application procedure Short-listing is used. This means that after the deadline for applications – and with the assistance from
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. For more information about the department’s strategic priorities, please refer to: https://math.au.dk/en/about/strategy Profile and responsibilities We are looking for a candidate who can provide scientific
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. in R and Python) Support/manage data collection pipeline from instruments in the lab & field (including visualisation of data in e.g. Origin) Establish, maintain, and refine documentation regarding all
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, 8000 Aarhus C and the Aarhus University Energy Research Facility located at AU Campus Viborg (https://dca.au.dk/en/about-dca/au-foulum). Who we are The Department of Biological and Chemical Engineering
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for international researchers and accompanying families, including relocation service and career counselling to expat partners. Please find more information here: https://internationalstaff.au.dk/relocationservice
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Genetics or Population Genetics. Proficient in R and Python programming is essential. Familiar with breeding programs and breeding goals. A collaborative colleague and a good communicator. Experience in
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candidate who has: A PhD in hydrology, environmental engineering, environmental science, geography, ecology, or a related field Strong experience in hydrological modelling Proficiency in R and/or Python