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courses in fundamentals in system theory and control sciences, especially also for bachelor students. Qualifications
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substrates while advancing our understanding of deep learning through dynamical systems theory. You will work with two cutting-edge experimental systems: (1) light-controlled active particle ensembles
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interdisciplinary team. Applicants with strong background in the following fields are preferred: Dynamical Systems Control Theory Formal Methods Machine Learning Context The applicant will be directly advised by Prof
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field (e.g., psychology, empirical educational research, or statistics) Doctoral degree or finishing of a doctoral study in the near future Very good knowledge on test theory and test construction as
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Design and implement optimization techniques for full-stack improvement of quantum algorithms Model major sources of experimental error for control theory or for error mitigation techniques Scientific
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Research Assistant (m/f/d) in the field of Theoretical Ecology and Evolution or Computational Biolog
of the working group Ability to conduct independent scientific research Excellent proficiency in the field of mathematical modeling Solid knowledge of statistical analysis methods Very good command
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English round off your profile Optional: You have already worked with simulation environments such as Mujoco or IsaacSim Manipulation: Experience with MoveIt, control theory, inverse kinematics, kinematic
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. The successful candidate is also expected to have strong expertise in empirical research methods, as well as a very good command of theory. We particularly welcome candidates who are interested in contributing
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a doctorate. We are looking for: candidates with a Master’s degree in mathematics or a closely related field and with a strong background in probability theory. Prior knowledge in spatial stochastic
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a doctorate. We are looking for: candidates with a Master’s degree in mathematics or a closely related field and with a strong background in probability theory. Prior knowledge in spatial stochastic