38 density-functional-theory-molecular-dynamics Postdoctoral research jobs at Aarhus University in Denmark
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: Probability Theory, Geometry and Analysis Appl Deadline: 2025/09/25 11:59PM (posted 2025/08/25, listed until 2025/09/25) Position Description: Apply Position Description The Department of Mathematics
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probability theory, analysis, or related areas. Ability to work independently and collaboratively in an international team. Place of work Place of employment is Aarhus University, and place of work is
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to investigate the molecular mechanisms of plant hormone transport. The position offers the opportunity to work within an international, interdisciplinary environment, combining structural biology, biophysics, and
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systemic immune responses and explore the potential role of the tumor-associated microbiome in shaping treatment outcomes and immune evasion. The postdoctoral researcher will join a dynamic and
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to work independently with an outreaching and problem-solving mindset. As a person, you are structured, have good interpersonal skills, you function well within a dynamic group environment, you are friendly
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understanding of fundamental principles behind brain functioning in general. With a strong foundation in music practice and theory at the highest level and a focus on the clinical application of music, MIB
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at the Department of Clinical Medicine, you will be part of what is probably the largest health science research department in Denmark. Our clinical research covers all the medical specialities and
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models Who we are The Department of Molecular Biology and Genetics is part of the Faculty of Natural Sciences, Aarhus University and comprises research within the areas of Plant Molecular Biology
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The research group of Mikkel Heide Schierup at the Bioinformatics Research Centre at the Department of Molecular Biology and Genetics, Aarhus University, invites applications for a 3-year
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operational in only a handful of labs worldwide. In this project, you will work with large-scale genomic datasets – generated in part using human kidney slices – to uncover key molecular pathways driving renal