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spoken. Why Join Us? Conduct pioneering research in Human-AI Interaction and Computational Interaction. Work in a dynamic, collaborative environment with leading experts. Access state-of-the-art facilities
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Pharmakologie (FMP) in Berlin is a non-university research institute that conducts basic research in molecular pharmacology and provides a vibrant and collaborative environment with state-of-the-art facilities
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of deformable objects Simulation and reality gap bridging for deformable object interaction (using environments such as MuJoCo, PyBullet, or NVIDIA Isaac Sim) Adaptive feedback control using learned and
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of the Microverse” (https://www.microverse-cluster.de/en/# ), the CRC/Transregio 124 “Pathogenic Fungi and Their Human Host: Networks of Interaction” (https://www.funginet.de/willkommen.html# ) funded by the Deutsche
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“Equilibrium Learning, Uncertainty, and Dynamics.” About the Project Market interaction is increasingly automated by artificial learning agents. Examples include pricing agents in electronic retail or bidding
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related discipline. Strong publication record in telerobotics, shared control, or human-robot interaction, particularly under network constraints. Proficiency in working with hardware such as robot arms and
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electrophysiological and optical recordings and manipulations to record and manipulate neural activity in the behaving mouse. The MDC provides state of the art research facilities, a lively neuroscience cluster and the
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and reality gap bridging for deformable object interaction (e.g., MuJoCo, PyBullet, NVIDIA Isaac Sim) Adaptive feedback control using learned and analytical models Physics-informed machine learning
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-inspired approach and combines cutting-edge technologies from the area of mass spectrometry and genomics, together with bioinformatics to understand the molecular interactions between RNA viruses and their
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the protective and harmful effects of the environment, genes, and lifestyle on human health and disease using population-based epidemiology approaches. Knowledge of these interactions leads to novel targeted