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. The candidate should demonstrate research on emerging technologies for collaborative learning, including areas such as video-based competence development, digital mediation of learning processes, and the use
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interactions, experience and expertise in psychometrics and scale development is highly valued. The planned starting date is July 1, 2026, or as soon as possible thereafter. The successful candidate will work as
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development of inclusive practices in educational and welfare contexts. Practice-oriented and collaborative research methodologies, that support innovation and intervention in educational psychology practice
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. Furthermore, the PhD candidate will engineer complex genotypes and perform adaptive laboratory evolution experiments. The candidate will work in an international team and is expected to contribute creatively
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opportunity to explore and develop the academic intersections where new insights and solutions emerge. Read more about our vision here. About the department FKF is one of four departments at the Faculty
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and technological adaptation in research, funding development and dissemination. About the research program The Danish healthcare system is facing a historical reorganization. Demographic changes
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of computational chemistry and develop new methodologies that push simulations into length- and time-scales that traditional methods cannot reach. You will be embedded in the Pioneer Center CAPeX, an
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). The successful PhD candidate will use a combination of adaptive laboratory evolution and rational metabolic engineering to achieve these goals. In addition, they will develop growth‑coupled selection strategies
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for an Associate Professor for the Section for Thermal Engineering who can strengthen and further develop our activities within carbon capture and related thermal energy systems. The position includes research
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Are you an established researcher in probabilistic machine learning, with a passion for developing robust, trustworthy, and explainable AI methods for applications in science and engineering? Then