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program based in Sweden that been systematically mapping the localization of human proteins in cells, tissues and organs during the past 20 years. For this project, we map the subcellular distribution
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works with the rapidly growing area of developing conditions and techniques to protect future AI-based systems. The center is led by Linköping University with Lund University as a partner. Work duties
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can also vary among healthy individuals. We still have limited insights into the factors that promote and constrain brain plasticity. This project will contribute new insights by developing and using
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, graph theory and more to characterize biomolecular systems. The project is predominantly an applied project focusing on protein characterization; however, there is a possibility for method development
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for external research funding with the support of a dedicated development program contributing to shaping HLK's long-term research profile in global studies We offer a structured research support environment
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independently using the right methods, and to develop an awareness of research ethics. In addition, you will have the opportunity to work on projects, to develop your leadership and pedagogical skills. Throughout
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development. Work responsibilities The candidate will lead a multidisciplinary research program investigating the genotoxic and epigenetic effects of NPs. Responsibilities include developing mutagenesis assays
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. The postdoctoral scholar will take a leading role in the the BeeSYNC project, focusing specifically on: Computational Natural History. The researcher will develop deep learning models to predict individual bee age
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central toolbox for understanding, analyzing, and controlling complex systems. These fields span deep mathematical theory and algorithm development as well as engineering methods that enable robust and
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on the ecology and evolution of generalized pollination systems. The project assistants will assist with field studies of plants and pollinators in southern Sweden, preparation for such work, and processing