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Assistant professor in Analysis and Modelling of Nitrogen Cycling, Losses and Emissions in Croppi...
experimentally with new and established field experiments, including long term experiments, which involve cover crops, reduced tillage, and different fertilizer application amounts and methods, among other things
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formal qualification you must hold a PhD degree (or equivalent). You will be assessed against the responsibilities and qualifications stated above and the following general criteria: Experience and quality
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The successful candidate should be highly ambitious as well as open minded, culturally adaptable, and willing and able to work as part of a team. As a formal qualification, you must hold a PhD degree (or
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part of the focus of your PhD studies. As a formal qualification, you must hold a relevant PhD degree. We offer DTU is a leading technical university globally recognized for the excellence of its
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The Department of Ecoscience, Section for Wildlife Ecology at Aarhus University is seeking a postdoc (2 years) to develop and apply camera-based methods for population monitoring of bats
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otolith-based method and relate FMR to oceanographic and ecological conditions along north-south and fjord-offshore gradients in East Greenland. Experience with isotope analyses and arctic field work
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components of Land-CRAFT. We have a team of researchers working at field, farm and landscape scales. The postdoctoral researcher specializing in wetland biogeochemistry will use advanced biogeochemical methods
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University. You will have many opportunities to connect with other research partners, and collaborate with PhD and other postdoctoral fellows, in cross-disciplinary collaborations with other research groups
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University. You will have many opportunities to connect with other research partners, and collaborate with PhD and other postdoctoral fellows, in cross-disciplinary collaborations with other research groups
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be working primarily with scientific machine learning methods, including symbolic regression and neural networks. You will apply the algorithms to the discovery of new models in different fields