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Are you interested in optical characterization and can you contribute to the development of the project with instrumentation of Terahertz Time-Domain Spectroscopy for the plastic sorting industry
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ambition is therefore to recruit, develop, and retain talented scholars committed to both academic excellence and departmental development. Furthermore, the department wishes our staff to reflect
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stimulating and inspiring environment for both faculty members and students. The department's ambition is therefore to recruit, develop, and retain talented scholars committed to both academic excellence and
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development activities. The 2-year position will be vacant from 1 February 2026, or as soon as possible thereafter. Main work location is Odense/Denmark at SDU location in Odense Havn (Odense Port), with a
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digestibility are central areas. We are seeking a skilled, motivated, and successful candidate to develop and support this research project at the intersection of recombinant food proteins and their molecular and
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contaminant profiles, supporting national and international food safety monitoring and policy development. Responsibilities and qualifications Your primary responsibilities will be to: Collect and process
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: • Develop AI-driven control strategies for grid-forming inverters to enhance grid flexibility, reliability and stability. • Apply machine learning and AI tools for the battery system health estimation
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contribute to a sustainable future. We do this by cultivating talents and creating the best environments for research and learning. It is therefore crucial that SDU retains, develops and recruits talent
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the mechanisms underlying inflammatory diseases and their role in tissue damage and disease development. The research is characterized by close integration of basic and translational approaches, as well as well
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description You will be contributing to developing and implementing novel algorithms at the intersection of computational physics and machine learning for the data-driven discovery of physical models. You will