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, and contribute to identifying tumor vulnerabilities that may become future therapeutic targets. What we offer: A dynamic and interdisciplinary research team with expertise in cancer biology, statistics
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-in time of new infrastructure is years, if not decades. The combination of conventional linear optimization energy models, which cover for the major part of the system, and the inclusion of partial
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structures, etc to solve challenging problems is required (there will be a practical coding assessment during recruitment) A solid mathematical foundation is required (multivariable calculus, linear algebra
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of technologically relevant oxide thin films. In particular, the combination of state of the art non-linear optics monitoring and electron spectroscopy in situ allows investigating the dynamics
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the effects of local policies such as building refurbishment strategies, and examining the role of hydrogen in facilitating sustainable energy transitions in cities. Join our dynamic institute to tackle climate
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, or similar. Familiarity with linear algebra libraries and high-performance computing is a merit, but not a requirement. About the position The position provides you with the opportunity to pursue PhD studies
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Principal Investigator (PI) or Co-Principal Investigator (Co-PI) on research studies. Perform non-linear, dynamic, finite element analysis (FEA) and design for various research studies involving low- to high
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of the structural performance, and they should be able to accommodate dimensionality and complexity reduction of their associated non-linear time-variant nature. (ii) And there is a need of developing measures
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understanding of deep neural networks by exploring the human-understandable meanings of learnt features, the evolutionary dynamics of these features across network layers, and the architectural designs