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-morbidity and rehabilitation) that shape our vision for sustainable and healthy and sustainable future. We educate bachelors and masters of science within biomedical engineering, medicine, medicine with
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especially critical given the increased pressure from human activities that push species to extinction and potentially disrupts ecosystem functionality. Our interdisciplinary lab will develop novel Graph
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Foundation Data Science Collaborative Programme, “Synthetic health data: ethical development and deployment via deep learning approaches (SE3D),” which is a cross-disciplinary collaboration between Aalborg
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Copenhagen. We have more than 250 employees and approximately 1,200 students across the two cities. Our research and study programmes are rooted in sustainability and the green transition. This means we
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2025 or soon hereafter. The position is available for a period of 24 months. The Department of Sustainability and Planning (PLAN) was established in 1975. Today, we are located in both Aalborg and
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Copenhagen South Harbor campus. The stipend is available within the doctoral program Clinical Science, Laboratory and Translational Medicine, and is open for appointment from 1st of September 2025, or soon
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At the Technical Faculty of IT and Design, Department of Sustainability and Planning, a PhD stipend is available within the general study programme in Development and Planning. The stipend is open
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within the general study program “Electrical and Electronic Engineering”. The stipend is open for appointment from 1 August 2025, or as soon as possible thereafter. The duration of the position is three
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locations in Aalborg and Copenhagen. We have more than 250 employees and approximately 1,160 students. Our research and study programmes are rooted in sustainability and the green transition. This means we
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at the intersection of advanced probabilistic machine learning and microbial bioscience. This position offers a unique opportunity for developing novel probabilistic ML methods with a view towards