461 embedded-system "https:" "https:" "https:" "https:" "UCL" positions at University of Nottingham
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This 18-month post is part of a large pharmaceutical consortium at the interface between academia and industry, where the Fellow will contribute to cutting-edge advancements in reaction
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-mail wont be considered. Our university is a supportive, inclusive, caring and positive community. We welcome those of different cultures, ethnicities and beliefs – indeed this very diversity is vital
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The University of Nottingham has been providing an outstanding student experience for over 140 years and is a leading university of worldwide significance with established campuses in UK, China, and
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We invite applications for a PhD project focused on fundamental research into novel low-emission ammonia combustion/oxidation processes. This position is based within the Faculty of Engineering at
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Join a fully funded, industry-sponsored PhD at the University of Nottingham (Mechanical & Aerospace Systems research group), in partnership with the Manufacturing Technology Centre (MTC). You will
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. Supervisors: Ian Sayers, Cathy Merry (Nottingham), Gleb Yakubov (Leeds), David Thornton (Manchester), Luke Bonser (AstraZeneca) Chronic sputum production is debilitating and a feature shared by several
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This vacancy is open to employees of the University of Nottingham only. Are you passionate about equality, diversity and inclusion for students, about making a difference and empowering our students
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for at least two years of the project. At Diamond, the student will be able to utilise cutting edge equipment to study single atom catalysts anchored on defective graphene substrates. Catalysis is a key
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Clinical Assistant Professor in Veterinary Clinical Pathology Salary: The salary is based on the clinical veterinary assistant professor scale Depending on the individual and their duties
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(CHF), tailored to complex geometries typical of fusion reactor cooling systems. Compile a comprehensive dataset of boiling parameters to support machine learning-based analysis of two-phase flow