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Grant project led by Professor Vili Lehdonvirta. The project investigates how states and firms shape the geography of cloud infrastructure in an era of geopolitical tension and digital interdependence
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the next generation of researchers in molecular medicine by implementing joint postdoctoral research projects to nurture strong competences and research excellence. More information about the Nordic EMBL
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for a fixed term period for the duration of 1.10.2025-31.08.2029 or as agreed. This position is linked to the Research Council of Finland fellowship project MARBLOOM (More-than-human Aquatic Relations
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. The Postdoctoral Researcher will be a full-time contract for the maximum duration of 2 years. Position description The successful candidate will work within the research project “Structural correctness in
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of the Urban Environmental Policy Group , a multidisciplinary research environment with focus on urban sustainability. The position is part of the Research Council of Finland funded project titled
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physics. Our experimental responsibilities include trigger algorithms and performance, detector calibration, and jet energy corrections. The two appointed candidates will work within the research project
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project CONFSTAT – Conformally invariant and near critical models in statistical field theory. The work of the postdoctoral researcher will focus on studying conformally invariant models of statistical
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This project explores how mutations in chromatin-modifying genes disrupt early neurodevelopment by systematically profiling in vitro neurons using multimodal single-cell and spatial profiling. By
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has been appointed). There might be a possibility for an extension of the contract depending on the project. The position is opened at the Department of Agricultural Sciences, Faculty of Agriculture and
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(FIMM) , University of Helsinki, is currently seeking a highly-motivated postdoctoral researcher to join our interdisciplinary team. Project overview This project aims to develop machine learning models