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opportunities and advantages. FERMAT (Fundamental Educational Research in Mathematics at Twente) is a new research group within the Applied Mathematics department with a mission to engage in practice-led research
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staff position within a Research Infrastructure? No Offer Description This PhD project is part of the ERC Consolidator Grant project WINDFLOW, which strives to develop groundbreaking large-eddy simulation
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staff position within a Research Infrastructure? No Offer Description This PhD project is part of the ERC Consolidator Grant project WINDFLOW, which strives to develop groundbreaking large-eddy simulation
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education within the Twente Graduate School and within various graduate education programmes in the NL, such as the J.M. Burgerscentrum for Fluid Mechanics. Furthermore, you may actively contribute
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in fluid dynamics, mechanical engineering, computational physics, applied physics, mathematics, geophysics, or related subject areas. Proficiency in programming languages such as Fortran, C/C++, MATLAB
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Engineering innovates in this field. We develop and leverage flexible multibody dynamics software to create models that enable design optimization and motion control of these systems. In particular, we
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Technologies for river and coasts, in which 4 universities and over 30 industry/governmental partners collaborate. Teaching: The new Postdoc will be invited to assist in teaching tasks of the group, e.g
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on calibration in deep learning at the Pervasive Systems Research group, Department of Computer Science, Faculty of Electrical Engineering, Mathematics and Computer Science (EEMCS) at the University of Twente in
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candidate who is driven by curiosity and has: -or will shortly acquire-, a Master degree, or equivalent, in Technical Medicine, Biomedical Engineering, (applied) Mathematics, Computer Science or a related
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to staff position within a Research Infrastructure? No Offer Description The main goals of this PhD project are: Develop novel sparse training algorithms that improve the scalability and energy