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., neural networks) in a meaningful way, we need innovative, scalable methodologies that efficiently and accurately capture, represent, and reason about uncertainties within principled frameworks. You will
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autonomous systems, complex networks, data-driven modeling, learning control, optimization, and sensor fusion. The division has extensive collaborations both with industry and other research groups around the
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Infrastructure of Supercomputing in Sweden, NAISS, which includes the Swedish node of the EuroHPC-funded network of European AI Factories in collaboration with RISE The research institute of Sweden . The AI
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well as postgraduate and undergraduate education within areas such as autonomous systems, complex networks, data-driven modeling, learning control, optimization, and sensor fusion. The division has extensive
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Sklodowska-Curie Doctoral Network FADOS. The successful candidate will join a cohort of 17 doctoral students based at 16 research groups in Europe and the UK. About FADOS FADOS, Fundamentals and Applications
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Communications in Networked Systems: A Data Significance Perspective” published in IEEE Network, vol. 36, July/August 2022. The project is part of a collaboration between Linköping University and Lund University
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of Communication Systems carries out research, undergraduate and postgraduate education. We conduct research and education in communications engineering, statistical signal processing, network science, and
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of infrastructure and trusted execution environments. More information is available at https://www.naiss.se . The position As technical operations director you will be part of (the central) NAISS management team and
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are understood and analysed regarding structural and institutional changes in terms of shifts in work, social networks, the everyday lives and health of older people, and with consideration to new social and
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well as postgraduate and undergraduate education within areas such as autonomous systems, complex networks, data-driven modeling, learning control, optimization, and sensor fusion. The division has extensive