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Postdoctoral Research Assistant in Design for Behaviour Change: Circular Economy for Medical Devices
remanufacturing of injection devices that embed Design for Behaviour Change principles and to evaluate the stakeholder adoption potential of these solutions. 4. Developing design, policy and regulatory
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, including discounted membership of the university sports centre on the Iffley Road Personal and professional development - We actively encourage all staff to participate in planning their personal and
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mechanisms by which FAT protocadherins contribute to chromosomal instability and eventually shape cancer evolution. We are seeking a highly motivated and ambitious Postdoctoral Researcher to join our team
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engineering, materials science, spectroscopy or fluorescent systems. Candidates with prior experience in the design, development and engineering of luminescent sensors and pressure sensitive paints are strongly
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and manipulation and a knowledge of relevant statistical methods. You will possess exceptional organisational skills, an ability to work efficiently with collaborators and to supervise and educate
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12 months. The project involves developing nanopore sensing technologies for functional biomolecules and is funded by Bill and Melinda Gates Foundation. Find out more about the research and group
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University of Oxford. The Centre aims to develop the first therapies to stimulate heart repair and regeneration in patients with heart failure, for which there are currently no effective treatments. REACT is a
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in the Department of Chemistry, University of Oxford, for a period of up to 3 years. The project involves the development of methods to use light to regulate transport of amino acids and to engineer
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organisational skills that might include, sample management, electronic lab books, working with collaborators. Ability to work supportively in a laboratory environment, and to supervise and educate junior co
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with the possibility of renewal. This project addresses the high computational and energy costs of Large Language Models (LLMs) by developing more efficient training and inference methods, particularly