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Our research: Self-Organization in Soft Matter Beyond Amphiphilicity The Research Training Group (in German: Graduiertenkolleg, GRK) RTG2670 “Beyond Amphiphilicity: Self-Organization of Soft Matter
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responsible for nanoimprint lithography (NIL) to ensure smooth integration of the developed nanomaterials into structured coatings. The project’s ambition is to realize retrofittable multilayered films
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electron-beam lithography (EBL) methods that will redefine what is achievable in quantum device fabrication. You will push lithography resolution limits down to the quantum regime, demonstrating
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manner. It is complemented by regular seminars, workshops and soft-skill courses, thereby providing excellent future perspectives for the students. Working contracts are based on the German federal pay
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curiosity, innovation and entrepreneurship in all areas Personalized learning programme to foster our staff’s soft and technical skills Multicultural and international work environment with more than 50
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5,000 square metres, including innovations in all that we do An environment encouraging curiosity, innovation and entrepreneurship in all areas Personalized learning programme to foster our staff’s soft
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modelling, multi-disciplinary optimization or AI-based surrogate modelling techniques. · Soft skills: o Strong analytical and problem-solving abilities. o Excellent communication and technical
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qualification (usually PhD). Tasks: The aim of the project is to design, model, fabricate and test a wireless micro-sensor which uses magnetic fields for sensing in biological soft tissues. For further
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background in biomaterials, soft matter physics, biophysics or active matter physics will be given preference. Experience or knowledge in quantitative imaging and image analysis (MATLAB or Python), machine
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Environmental behaviour o Spatial analysis applied to territorial/regional planning Technical and soft skills · Basic computer skills (Word, Excel etc.) · Proficiency in statistical analysis