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functionality and control Employing advanced control strategies and machine learning approaches, including imitation learning, for effective manipulation You will closely collaborate with other PhD students
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in the field of production engineering. A further research focus is on novel topics such as additive manufacturing, Artificial Intelligence (AI), Machine Learning (ML), Big Data Analysis or Industry
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simulations, laboratory experiments, and field analyses. Our aim is to gain fundamental insights and develop sustainable technologies to address societal needs. Fluid injection or production induces changes in
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100%, Zurich, fixed-term The Sensing, Interaction & Perception Lab is looking for a PhD student in physiological sensing. This job ad is intentionally short and only complete applications will be
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are lookingfor outstanding, highly motivated individuals interested in pursuing a PhD in the multidisciplinary and important research area of modelling and optimisation of magnetic components and electric machines
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100%, Zurich, fixed-term Thesolid-state NMR research group in the Departement of Chemistry and Applied Biosciences is looking for a PhD student on the topic of pulse-sequence optimization based
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We offer SAR fellows are provided with a desk, access to IT and library infrastructure as well as a computer, if required. Associate fellows may agree to integrate fellows into their group part-time
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projects or employment). Profile You have outstanding experience in Machine Learning with a PhD degree from a university in Computer Science, or related fields, with a proven track record in machine learning
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include international collaborations with academia and industry, mentoring MSc, and PhD students, and the potential for transitioning to work with our robotics industrial partner. Dr Diego Paez-Granados in
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100%, Zurich, fixed-term The Sensing, Interaction & Perception Lab at ETH Zurich is looking for another PhD student. Our research will be focused on multi-modal signal processing for learning-based