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evaluation using nasal epithelial models and tissue Contribute to in vivo validation in an established mouse model of acute seizures Analyze pharmacokinetics, biodistribution, and therapeutic efficacy data Co
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industry-facing research collaboration and coordinate cross-partner workflows in planning, data-sharing, and iterative decision-making across industrial and academic stakeholders. Teach and supervise PhD
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interactions that is able to solve problems independently and enjoys working at the interface between biology and data science in collaborative projects. Fluency in spoken and written English is required
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research sections with around 350 highly skilled employees, of which approximately 50% are scientific staff. More information can be found here . We believe in encouraging inclusion, acceptance, and
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to be able to work independently in the lab and take decisions on experimental setup and data treatment in relation to the overall goals of the project considering also the present state-of-the art. You
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manufacturing processes for construction, including data-driven, sensing, and behaviour-informed robotic workflows. • AREA 3: Low-carbon 3D concrete printing, including computational design, process optimisation
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finite fields. The position (2 years, starting in April 2026) is part of the 5 years project CREATE “Algebraic curves in information theory: a treasure yet to discover” financed by the Villum Foundation
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The project may address national or international problems, and should do so using appropriate methods, qualitative and/or quantitative. Access to Danish data sources, such as registry data, respondents
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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
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, high-throughput screening, and state-of-the-art carbohydrate analysis, to validate computational designs and generate data that advances our knowledge of enzymatic carbohydrate synthesis towards