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technologies Who we are At the Department of Agroecology, our main goal is to contribute to sustainable solutions to some of the world’s biggest problems within the areas of soil, plants, animals, humans, and
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of high international quality. In your daily work, you will work closely with colleagues on your project, where you will receive supervision and guidance. Your main tasks will consist of: Independent
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main tasks will consist of: Independent research of high international quality, including publication. Establishing and refining multi-modal workflows for integrating and analyzing spatial datasets with
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of Agroecology, our main goal is to contribute to sustainable solutions to some of the world’s biggest problems within the areas of soil, plants, animals, humans, and the environment. We want to make a difference
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main tasks will consist of: Independent research of high international quality, including publication. Strong interest in cancer biology. A desire to work with in vivo models. Additional specific tasks
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are At the Department of Agroecology, our main goal is to contribute to sustainable solutions to some of the world’s biggest problems within the areas of soil, plants, animals, humans, and the environment. We want
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healthy work-life balance. Place of work and area of employment Main campus of Aarhus University at C.F. Møllers Allé 3, 8000 Aarhus C, Denmark Contact information For further information, please contact
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research of high international quality. In your daily work, you will work closely with colleagues on your project, where you will receive supervision and guidance. Your main tasks will consist
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design and scaling for electromethanogenesis. The position is based at the main campus at Aarhus University and is expected to begin on 1 May 2026, or as soon as possible thereafter. The postdoc will be
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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