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the Department of Biomedicine, headed by Professor Jan Niess, is planning to open a PhD position in early Autumn of 2025. The Gastroenterology Research Group investigates barrier tissues, particularly focusing
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quantum sensing techniques to probe these emergent states. The successful candidate will join a small, collaborative team and be involved in all stages of the research cycle: design and operation of
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foundation. Candidates are also expected to have strong coding and implementation skills, with the ability to run large-scale experiments. While research experience is advantageous for PhD applicants, it is
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: design and operation of scanning probe instrumentation fabrication of van der Waals heterostructures transport, optical spectroscopy, and quantum sensing experiments data analysis, modeling, and scientific
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novel methods of enzymatic nitrogen fixation by repurposing natural metalloenzymes. To achieve this ambitious goal, we will combine computational work (focused on computing electric fields within enzyme
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recruitments (summer and winter) and work closely with the Biozentrum group leaders to maintain and further develop the high-quality standards of our PhD program. You will independently organize and oversee
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Your position The successful applicant will work under the supervision of the Principal Investigator (Prof. Dr. Maria Katapodi) and collaborate with members of the CASCADE Consortium, a
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discipline Strong interest in experimental quantum science and nanotechnology Keen to gain hands-on experience in laboratory research Analytical thinking, motivation, and the ability to work both independently
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function. Single-molecule FRET is an established technique, unique in its capacity to resolve nanometer small conformational changes within single biomolecules (proteins, DNA, RNA), without suffering from
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reasoning domains. This work will blend cutting-edge experimentation - spanning RL, few-shot learning, meta-learning, etc. - with formal analysis to push the boundaries of what modern AI systems can reliably