137 parallel-and-distributed-computing-phd-"Multiple" positions at University of Luxembourg
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This position is inside the SPETRA doctoral training unit which investigates new materials, methods and concepts for converting sunlight into usable energy sources. Inorganic Chalcogenide Perovskite materials are earth abundant, non-toxic and extremely stable making them ideal candidates for...
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peristaltic vasculature that can remove the growth limits of lab-grown organs, or smart threads that give doctors critical feedback on suture tension when conducting robotic surgery. The PhD candidate will
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will contribute to teaching activities and common projects of the research group in IP law. The doctoral researcher will join a collegial research group comprising several PhD candidates and one
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diverse backgrounds (e.g., economics, engineering, computer science, information systems, etc.), united in pursuit of sustainable solutions that positively impact and shape a low-carbon economy and society
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Researcher Job Reference: UOL07452 The yearly gross salary for every PhD at the UL is EUR 41976 (full time).
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-creating an ambitious research program. It will utilize a data-driven approach to support decision-making for an optimal energy system, with specific focus on cost-effectiveness, emission reduction, and
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to international standardisation efforts. As a part of this collaborative research programme, you will join as one of three PhD candidates working on interconnected projects in Quantum Optimisation, People-Centred
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on multiscale analysis of brain disorders with a focus on Parkinson’s and Alzheimer’s disease, and epilepsy by combining experimental and computational approaches. For a collaborative project within the Institute
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models of the human mind. Your main tasks, as a PhD candidate, are the following: Conduct rigorous, state-of-the-art, innovative research in Computational Cognitive Sciences Review the scientific and
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an ambitious research program. It will utilize a data-driven approach to support decision-making for an optimal energy system, with specific focus on cost-effectiveness, emission reduction, and social