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In the Leibniz Institute of Plant Biochemistry, the independent research group Receptor Biochemistry invites applications for a PhD position in (bio)chemistry (m/f/d) (Salary group E13 TV-L, part
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for research and employees from all over the world. We are looking for a PhD position on studying intrinsically disordered proteins by NMR and single molecule FRET (f/m/d) (Ref. 09/2025) to join the group
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Leibniz Association. The following position is available at the Institute subject to approval by the funding organization from October 1, 2025, for a fixed term of three years, in the program area "Next
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tissue tropism, and mechanisms of immune evasion. Human cytomegalovirus is the leading cause of congenital infection worldwide. The Department is currently accepting applications for a PhD student (f/m/x
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which are funded by the federal and state governments. The research institutes belong to the Leibniz Association. WIAS invites applications as PhD Student Position (f/m/d) (Ref. 25/11) in the Leibniz
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to develop long term, quantitative strategic plans that emphasize sustainable agribusiness enhancement. This PhD position is carried out in collaboration with the Doctoral Program in Agricultural and Forestry
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microorganisms catalyze the freezing of cloud droplets. These substances are a significant source of so-called ice-nucleating particles, particularly over remote marine regions. The aim of the advertised PhD
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for applying living therapeutic materias. The PhD thesis will be embedded in the Leibniz Science Campus on Living Therapeutic Materials (https://www.lsclifemat.de ), an interdisciplinary consortium aiming
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the following publication: J. S. Seidel, A. A. Kiselev, A. Keinert, F. Stratmann, T. Leisner, S. Hartmann, Secondary ice production – no evidence of efficient rime-splintering mechanism. Atmos. Chem. Phys.24
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Leibniz Institute of Plant Biochemistry (IPB) in Halle (Saale), Germany, where we are offering a fully-funded PhD position within the DFG Priority Programme SPP2363: “Molecular Machine Learning”. About the