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of the University of Groningen in The Netherlands. The position is available within the research project "Aggregating Safety Prefer-ences for AI Systems: A Social Choice Approach." The project aims to develop formal
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of the University of Groningen in The Netherlands. The position is available within the research project "Aggregating Safety Prefer-ences for AI Systems: A Social Choice Approach." The project aims to develop formal
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insights to predict such attitudes. This project investigates drawbacks and potentials of Big Data in SAE to measure attitudes towards LGBTQ+. Your job The Department of Methodology & Statistics invites
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spacecraft data management; monitoring and control systems, including for pre-launch, and testing procedures; electrical ground support equipment and system checkout equipment. In the context of digital twin
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and Behavioural Sciences (ESSB) Erasmus School of Philosophy (ESPhil) Rotterdam School of Management (RSM) International Institute of Social Studies (ISS) Erasmus School of Health Policy & Management
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kinematics in the residual limb of an amputee. If you’re excited by the idea of translating cutting-edge neuromechanical research into tangible clinical solutions, we encourage you to apply. Project Objectives
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partners to reduce CO2 emissions in steel production using machine learning. You can find more information here . You will work on a theoretical and an applied project on data-enhanced physical reduced order
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individuals with impairments such as stroke. In this project, we aim to: Leverage the lab’s expertise in real-time decomposition of high-density EMG (HD-EMG) to decode individual muscle motor unit activity
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Intelligence and Machine Learning into key processes, shifting from manual oversight to real-time anomaly detection and predictive maintenance. This approach reduces downtime and defects. This project will not
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Intelligence and Machine Learning into key processes, shifting from manual oversight to real-time anomaly detection and predictive maintenance. This approach reduces downtime and defects. This project will not