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education to enable regions to expand quickly and sustainably. In fact, the future is made here. The Department of Physics is looking for a PhD student in computational physics with a focus on understanding
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, their achievements and productivity to the success of the whole institution. At the Faculty of Mathematics, Institute of Scientific Computing, within the Dresden Center for Computational Materials Science (DCMS
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Cell Signaling” research unit. The “Bioanalytics and intermediary Metabolism” group, headed by Marcel Kwiatkowski, is specialised in mass spectrometric cross-OMICs to investigate molecular mechanisms
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peptides, including the design of de novo sequences based on the elucidated mechanism. The first step will be to develop a computational approach to determine the critical peptide properties required
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university tuition fees. How to Apply: All applications should be made online . Under ‘Campus’, please select ‘Loughborough’ and select ‘Mechanical and Manufacturing Engineering’ under ‘Programme’. Please
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Applied mathematics, fluid mechanics, high-performance computer simulations. Full time, fixed term position (3 years) at Hawthorn campus $34,700 per annum (2025 rate) About the Scholarship Higher
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therapeutic product. The PhD project is centred on understanding the biological mechanisms of selective interaction with cancer cells, uptake of NK-EVs into cancer cells, potential endosomal escape, and how
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of Rock Engineering. The prospective candidate will be part of the Engineering Geology and Rock Mechanics research group at IGV but will also collaborate with other NTNU departments and societal
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PhD fellowship in Experimental Quantum Physics PhD Project in Spin-Mechanics Niels Bohr Institute Faculty of Science University of Copenhagen The Niels Bohr Institute invites applicants for a PhD
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One Research Associate position exists in the data-driven mechanics Laboratory at the Department of Engineering. The role is to set up a machine learning framework to predict the plastic behaviour