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Field
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application! Work assignments Subject area: Computational studies of the influence of microstructural features on the structural integrity of metallic materials using machine learning Subject area description
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well as integration of carbon cycling data with complementary ecophysiology and/or soils data from the sites. Field visits to the site are not essential, but are possible if they can be explicitly motivated
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., phylogenetic analysis) You have personal integrity and take initiative. You are resilient, and do not give up easily. You are well structured as a professional and driven to achieve a high level of quality
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to integrate functional measurements from live human pancreatic tissue with multiomic measurements to identify key factors driving diabetes. To achieve this, we are employing a broad array of
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traffic, including hydrogen and electric aircraft Integration of AI techniques into a multidisciplinary framework for aircraft and air traffic system modeling You will build on an existing in-house modeling
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propagation problems, stochastic partial differential equations, geometric numerical integration, optimization, biomathematics, biostatistics, spatial modeling, Bayesian inference, high-dimensional data, large
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photonics integration. If you're passionate about advancing optical technology, do not hesitate to apply! Information about the division and the department An optical frequency comb is a laser source with
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The Department of Molecular Biosciences, Wenner-Gren Institute (MBW) conducts experimental basic research in molecular cell biology, integrative biology and infection and immune biology. The
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datasets. By integrating data-driven insights with innovative modeling, this interdisciplinary project aims to enhance our understanding of vulnerability, resilience, and adaptation, ultimately informing
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new method for lncRNA gene identification from whole genome sequences. Collaborating with experimental researchers to integrate computational findings/tools with functional investigation. Scientific