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tokomaks. The RAs will work in the CAPE building which is part of the Electrical Engineering Division of the University of Cambridge. The role of the RAs in the project is to help develop the PSALM low loss
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the Department of Chemistry on a project funded by UKRI through the Horizon Europe Guarantee Scheme. The project concerns the development of new catalytic approaches to enantioselective radical reactions
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their expertise and strengthen their competencies in this exciting interdisciplinary field. What you will need Applicants must hold (or be close to completing) a PhD, in the social sciences (sociology, sociology
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science and exploration. A unique feature of the Institute is that the range of expertise of its researchers includes and bridges the human and natural sciences. The Institute is comprised of a Museum, a
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involve the development of engineering principles for dynamic Power-to-X chemical process, considering reactor, separation and heat integration units. Research will be focused on green ammonia production
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in our publication list. Applicants must have (or be about to receive) a PhD in Physics, Chemistry, Materials Science, or a related subject. The ideal candidate will have experience in code development
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We invite applications for a Post-Doctoral Research Assistant/Associate (PDRA) with expertise in the general field of mineral magnetism and/or prebiotic chemistry. The post is funded through
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algorithms for infinite-dimensional spectra, control, and data science with Dr. Matthew Colbrook to start in October 2024 or earlier/later by negotiation. The successful candidate will work on developing
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A position exists, for a Research Assistant/Associate in the Department of Engineering, to work on Batteries. The post holder will be located in Central Cambridge Cambridgeshire, UK. Energy
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fundamental science under the Woolgar QQ. The ideal post holder will have prior experience with acquisition of fMRI and MEG data, strong coding and analysis skills including using multivariate pattern analysis