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microbes in the human gut – and the development of cardiometabolic diseases (CMD) such as obesity, type 2 diabetes, and cardiovascular disease. The goal is to generate knowledge that can lead to new
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independently and in teams and who have successfully navigated the challenges posed by working across different cultures and working environments. Your working language will be English, but knowledge
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’ responses to these market changes focusing on the GPs’ financial and altruistic motivations (survey data) and their impact on patient care (register data). This project contributes with important knowledge
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techniques to monitor protein-protein interactions and prior knowledge of these is an advantage. Your profile The applicant must have a relevant PhD in structural biology or protein biochemistry. Who we
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knowledge about basic scientific problems and to conduct research oriented towards use in societies and companies. Technology for people DTU develops technology for people. With our international elite
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per 1 April 2026 or as soon as possible thereafter. The position is a fixed-term full-time position for 36 months. Research at The Department of Biomedicine aims to expand knowledge in diverse areas
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with negative ion mode proteomics Knowledge of gas-phase chemistry of peptide ions Familiarity with advanced MS platforms (Orbitrap, TIMSTOF, multi-mode traps) Interest in collaborating with
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, synthetic biology, yeast genetics, or related fields. Strong knowledge of heterologous protein expression and optimization. Experience with high-throughput screening and genetic-engineering technology is
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research. In a diverse and international research environment, dedicated employees are looking to generate new knowledge within biomedical research areas such as infection and inflammation, membranes
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the comprehensive benchmarking dataset spanning laboratory to field. Your responsibilities Facilitating knowledge exchange, supporting collaborative progress, and ensuring integration across experimental and data