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application! We are looking for a PhD student in Statistics with placement at the Division of Statistics and Machine Learning, Department of Computer and Information Science. Your work assignments As a PhD
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otherwise agreed. Application Applications must be submitted electronically using the e-recruitment system of Umeå University. A complete application should contain the following documents: A cover letter
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requirement. A very good command of the English language, both written and spoken, is a key requirement. Experience in Federated Learning, Computer Vision, Image Analysis, Mathematics, and Mathematical
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or current superior. Attach all the documents and publications you wish to be considered to the electronic application (do not just provide links). Name each uploaded document to clearly indicate its content
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and electronic interactions between magnetic nanoparticles and a degenerated semiconductor matrix. The proposed synthesis route, based entirely on physical vapor deposition—a highly non-equilibrium
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or current superior. Attach all the documents and publications you wish to be considered to the electronic application (do not just provide links). Name each uploaded document to clearly indicate its content
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complex systems. Development and application of theoretical tools that combine experimental data and atomistic computer simulations to provide a comprehensive picture that is difficult to achieve through
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that support the unit for area protection and marine spatial planning, as well as operations at SLU Aqua. Your profile You have documented expertise in marine ecology and computer vision and machine learning
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) scientific studies Experience with relevant field data collection methods (e.g. chamber- or eddy covariance-based C flux measurements, biodiversity sampling methods) Computer programming skills (e.g. Matlab, R
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electron transfer (PCET) and photoredox catalysis. The goal is to understand and exploit multi-site concerted electron-proton transfer (MS-CEPT) mechanisms to selectively activate thermodynamically