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electron dynamics. Applications will involve real-time dynamics of chiral molecules, and the generation of reference data for density functional inversion. Additional applications are possible on quasi-exact
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, use of microscopes, data acquisition, inverse problems in imaging, optimization methods and image estimation and in particular knowledge in methods for super resolution structured illumination
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observing systems Apply for this job See advertisement About the position Position as Postdoctoral Research Fellow available at the Department of Geosciences. Starting date is preferably no later than 01
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optimization Understanding of statistical modeling and inverse problems is desirable Experience with programming languages like Python, MATLAB, or C++ Joy in dealing with challenging and interdisciplinary
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networks for solving inverse problems, learning robust models from few and noisy samples, and DNA data storage. The position is in the area of machine learning, with a focus on deep learning for inverse