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, conference presentations) A statement from your supervisor committing to support your finalization phase Compliance with the CoBeNe regulations for PhD candidates (agreement to the Code of Good Practice, FÖP
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of Social Sciences, whose teaching and research focuses on the transdisciplinary analysis and critical reflection of global inequalities. At the core of teaching and research are theories and approaches
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. We expect expertise in the area of bioorganic chemistry, peptide synthesis and protein engineering as well as experience with peptide and protein purification, analysis and preferably also with
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the network architecture need to be to capture the solution accurately? In essence, we’re exploring the frontier between modern machine learning and classical mathematical theory—where neural networks meet some
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working in the research group “Theory and Applications of Algorithms” at the Faculty of Computer Science. The position is limited to six months and is planned to be filled from 01.10.2025. Your future tasks
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group “Foundations of Cryptography” within the research group “Theory and Applications of Algorithms” at the department of Computer Science focuses on provable security of cryptographic schemes. We
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to tackle this ambitious challenge by developing and applying new software tools that combine machine learning methodology, electronic structure theory, and molecular dynamics methodology to simulate
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part of a dissertation project. The topic of such a research project should preferably be in the field of coordination between state and religious law, the theory of Canon law, fundamental rights
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scientists postdoctoral) increases, if we can credit professional experience. Equal opportunities for all: We welcome every additional/new personality to the team! It is that easy to apply: • With your
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flows such as entropy dissipation. This is a chance to tackle cutting-edge mathematical and computational problems with real-world relevance, using modern approximation theory and machine learning