37 parallel-computing-numerical-methods positions at Free University of Berlin in Germany
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fields. The program has already prepared numerous generations of students for careers in law firms, companies, government agencies, and other organizations. Further information about the program can be
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The planetary geodynamics group led by Prof. Dr. Lena Noack uses computational models to characterize planetary processes that impact the long-term evolution of the planetary interior coupled
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Bewerbungsende: 15.09.2025 The AI4Science Group (former Computational Molecular Biology - head: Frank Noé) is an interdisciplinary research unit active in the development of machine learning methods
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language doctoral programme at the BGTS provides state-of-the-art theory classes, solid training in research methods and research design, soft skills courses, and individual supervision. The programme focuses
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conditions. By combining spectroscopic techniques (e.g., UV-vis, HERFD-XANES, EXAFS, Raman, Mössbauer, and EPR) with microscopic methods (TEM, SEM/EDX) the project will provide novel insights into the redox
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complex biophysical processes on long timescales. We use data-driven methods for systematic coarse-graining of macromolecular systems, to bridge molecular and cellular scales. We work on a theoretical
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. Our program focuses on understanding hostpathogen interactions across species (mice, chickens, pigs, dogs) using well-established viral (e.g., Marek's disease virus, Theiler virus, Hepatitis E
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program, which includes tailored training, workshops, retreats, and conference travel. You will have access to cutting-edge laboratories and theoretical methods, individual supervision, and a wide range of
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(Methods for Active Informed Machine Learning). This project is a close collaboration with the Hasso Plattner Institute. We are developing and improving machine learning methods by integrating domain
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. Numerical models of varying complexity and different observational data sets are used to study atmospheric processes and phenomena on time scales ranging from single weather events to long term climate change