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in the last 1-3 years, in a quantitative discipline, such as Computational Biology, Computer Science, Biomedical Engineering, Electrical Engineering, Data science, Physics, Mathematics, Bioinformatics
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based in the Department of Informatics within the Faculty of Natural, Mathematical & Engineering Sciences (NMES), an internationally recognised centre for research in robotics, artificial intelligence
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students. The group is led by Professor Ilkka Tittonen. Your experience and ambitions Applicants are expected to hold a Master’s degree and excellent study records in theoretical physics, mathematics
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corresponding to a master’s degree related to the subject area of the project (e.g., Economics, Environmental and Resource Economics or Applied Mathematics). Please note that your master’s degree must be
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Manufacturing and/or AI Robotics. Focus areas include: yield/defect causal analysis and XAI; process-variation monitoring and root-cause analysis; intelligent scheduling/dispatching for WIP/throughput (multi