89 condition-monitoring-machine-learning-"Multiple" Postdoctoral positions at University of Oxford
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and molecular mechanisms that act within these sites, and to determine how these events lead to a balanced immune response in different conditions and physical constrains imposed by each organ
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to the smooth running of the wider group. The post-holder will have the opportunity to teach. Applicants should hold, or be very close to obtaining, a doctorate in physics or a related field, and ideally possess
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environment to its 38,000 students (FTEs) and 8,300 employees, and has an annual revenues of EUR 935 million. Learn more at www.international.au.dk/
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study the mechanical behaviour of materials important to the aerospace industry. You will utilise a wide-range of mechanical loading and conditioning platforms to deduce the effects of strain, strain-rate
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-range of mechanical loading and conditioning platforms to deduce the effects of strain, strain-rate and temperature on overall mechanical response, and will have the opportunity to field high-speed
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project will likely use a combination of single particle cryoEM, cryoET, and X-ray crystallography, you should be an expert in at least one of those techniques and keen to learn the others. You also should
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being able to learn and apply specialist knowledge in parasitology, structural biology, cell biology or molecular biochemistry. You should be interested in an interdisciplinary research project involving
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signalling and alleviate dementia-related symptoms in patients with Parkinson’s disease and other neurological conditions. The post-holder will play a key role in leading research using transcranial ultrasound
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projects the Centre will be undertaking. This is an excellent opportunity to gain academic research experience and to learn from leading academics. The ideal candidate for this role will have a background in
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We are seeking a full-time Postdoctoral Research Assistant to join a cross disciplinary research project to improve our understanding of colorectal cancer. Deep learning has revolutionised image