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. The successful candidate will become an active member of the Energy, Power and Intelligent Control (EPIC) research centre within the School of Electronics, Electrical Engineering and Computer Science (EEECS
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the essential criteria for the post, which includes: Have or be about to obtain a PhD in computer science, engineering, mathematics or physical sciences area. Recent high quality research experience in
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will hold a good honours degree (2:1 or above) or equivalent in a relevant subject, and will either have a PhD (or equivalent) in a related discipline such as, Chemistry, Chemical Engineering, Materials
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of publications. Criteria Essential or desirable Stage(s) assessed at A PhD (or close to completion of a PhD) in Machine Learning or a similar area (e.g. in Computer Science, Electrical and Electronic Engineering
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. These might include organisation of project meetings and documentation, financial control, risk assessment of research activities, focus groups, consultancy and liaising with intellectual property development
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looking for ambitious, talented academics with a passion for teaching as well as research flair to join its team of science and engineering experts. UNNC is part of the University of Nottingham’s Global
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years contingent upon successfully meeting project milestones. What you should have: PhD (or nearing completion) or equivalent industry experience in Electrical/Electronic/Photonic/Optical Engineering
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Faculty of Engineering In this leadership role, you’ll work in close collaboration with partners to lead the creation of a modular, open exo-atmospheric and re-entry hardware-in-the-loop environment
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us to build/learn generative, probabilistic forward models of users and their physical and computational environments. This will involve modelling sensors, developing dynamic models for control and
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: • PhD (or nearing completion) in optics, photonics, physics, electrical engineering, or a related field. • A record of high-quality publications with evidence of contribution to the writing