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chemistry, designing and testing porous composite materials for advanced water remediation. What We Offer: Access to world-class facilities at DTU Nanolab, including cutting-edge electron microscopy
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–microstructure–property–performance simulation platform, and (iii) a theoretical framework for design of AM-defect tolerant microstructures. The focus of the current postdoc position will be on applying all
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to join our group. The candidates will join an ambitious international research and innovation project focused on silicon quantum photonics. The overarching goal of this newly funded project is to realize
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. Responsibilities and qualifications You will join the Section of Design for Sustainability at DTU Construct, working within a multidisciplinary, international, and diverse team. In a world where circular economy and
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area is modeling and decision making based on electric brain waves (EEG). Responsibilities and qualifications Your main tasks will be design, implementation and analysis of AI experiments. You should
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associated with a research project jointly funded by the European Commission and Innovation Fund Denmark (IFD). It is a large European project with a consortium of 68 partners that aims at giving
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, education, innovation and scientific advice. We offer a rewarding and challenging job in an international environment. We strive for academic excellence in an environment characterized by collegial respect
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-funded by the Innovation Fund Denmark. The PhD student will be working in the framework of the ongoing collaboration between DTU Construct, and Danish companies with interest in implementing solutions
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professionals with the digital skills needed for the future of wind and energy systems. Learn more about the project at https://digiwind.org/ Position 1: Communications & Design Student Assistant In this role
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-based simulation model for assessing future mobility technologies in the Greater Copenhagen region. Explore the development of machine-learning based scenario discovery for future mobility policy design