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for advanced courses, international research visits, and networking across Sweden’s top universities. Information about the research group The Computer Vision Group at the division of Signal processing and
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Linköping University and has 12 partner universities across Sweden. This recruitment includes the Swedish node of the EuroHPC-funded network of European AI Factories in collaboration with RISE AB. The AI
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Linköping University and has 12 partner universities across Sweden. This recruitment includes the Swedish node of the EuroHPC-funded network of European AI Factories in collaboration with RISE AB. The AI
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that supports fusion research across major European experiments and ITER. The work will be performed in a collaborative, international environment, with opportunities to engage with a wide network of researchers
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experience with interdisciplinary research networks, and a record of successfully attracting external funding for interdisciplinary research projects. To be able to use computationally intensive methods
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modeling. Experience in cell culture, molecular cloning, and bioinformatics analyses is required. Proficiency in statistics and programming are highly meriting, especially in gene regulatory networks
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will have access to a range of tailored resources and support, including programs & opportunities for mentoring, professional development, leadership training, and networking, as well as access
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partial differential equations (PDEs) using deep kernel learning, which integrates deep neural networks into Gaussian processes constrained by PDEs. Drawing on tools from numerical analysis and reproducing
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related to the planning, design and management of landscapes across all categories and levels of scale. The department is part of SLU Landscape, a cross-institutional network for collaboration and joint
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relevant duties/assignments within the subject area. Other merits The scientific work is conducted within the research group as well as in association with a larger collaborative scientific network, and good