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interoception science Downloading a copy of our Job Description Full details of the role and the skills, knowledge and experience required can be found in the Job Description document, provided at the bottom
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combination of in vivo, in vitro and analytical methods. Downloading a copy of our Job Description Full details of the role and the skills, knowledge and experience required can be found in the Job Description
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that undermine antimicrobial efficacy. One major driver of resistance is the repeated use of antibiotics to treat relapsing infections. In such cases, antibiotics initially appear to clear the infection, but it
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involves computer simulations of catalytic and environmental interfaces, aiming at reaching fundamental new understanding of elementary processes at such interfaces. As part of our work, we also seek
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always include a copy of original diploma/certificates. We only accept files in pdf-format no more than 10 MB per file. In case you have more than one file per field you need to combine the pdf-files
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behaviour of so-called yield stress fluids, which keep their shape like solids at low loads, yet flow like a liquid at larger loads. One possible focus could be on the dynamical process whereby a material in
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process, it is our aim to develop candidate pools that include applicants from all backgrounds and communities. We ask all candidates to submit a copy of their CV, and a supporting statement, detailing how
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project is to develop a series of surrogate models focusing notably on Physics-Informed Neural Networks to emulate the process of sediment deposition, diagenesis, and potentially fracturing, working closely
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learning, at the intersection of reinforcement learning, deep learning and computer vision, in order to train effective robotic agents in simulation. You should hold a relevant PhD/DPhil (or near completion
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the successful software package VASP (Vienna ab-initio Simulation Package). Currently, the group consists of two full professors, one associate professor, several postdocs and about 10 PhD and master students