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of the fingers, and the positions of tactile sensors), and the control policy for that hand, when given a particular task or set of tasks. Through this, we aim to develop a framework that can automatically
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. This post is responsible for the organisation, logistics and internal communications which underpin our programmes and are fundamental to their success. Join our friendly and busy team in this central role
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the highly successful, multi-disciplinary team. This unique opportunity will enable you to contribute to the development of the magnetometer onboard European Space Agency’s new space weather monitoring
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University of Michigan, with partners at University of Wisconsin and Texas A & M University. Using novel satellite observations in combination with new modelling developments and cutting-edge hyperspectral
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well as the extensive staff development programme offered by the University, CLCC staff, their family and friends can also make use of a generous fee discount for our adult education courses. This is a part time
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independent and original research, submit publications to refereed journals and support the activities of the research group. You will have the freedom to develop your own research program alongside other
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science Experience in the development of collaborative research programmes in field A track record in attracting research funding Experience of training students at undergraduate and postgraduate levels. A
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Project Manager to lead this transformation, overseeing a programme with an initial capital investment of £3 million in 2025/26 and a total estimated value of £12 million over five years. In this role, you
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significant balance sheet with assets of £2.5bn and we are embarking on a 10-year, £2bn+ capital infrastructure programme to ensure that it has the research and education facilities it requires to maintain its
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The main objective of this post-doctoral research associate position is to develop and implement advanced machine learning methods for constructing latent spaces for multi-modal data integration