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– a £43.6M national programme co-led by Queen Mary University of London. PharosAI is set to revolutionise AI-powered cancer care, accelerating the development of breakthrough therapies, advancing
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– a £43.6M national programme co-led by Queen Mary University of London. PharosAI is set to revolutionise AI-powered cancer care, accelerating the development of breakthrough therapies, advancing
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collaborate with bioinformaticians, experimentalists and clinicians. About You Essential requirements for this post include a PhD in a relevant biological or computational subject and background in
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funded by UK Research and Innovation (UKRI), this programme is part of the government’s strategic effort to position the UK at the forefront of global AI expertise. Our goal is to train PhD researchers
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per week. Main Responsibilities Provide timely and accurate administrative support for all Degree Education and PhD courses offered by the department. Liaise with the Central Services team and Programme
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exciting and dynamic environment, home to 450 staff, 100 PhD students and c500 postgraduate taught students. It harnesses expertise across a wide range of population-based research and education activities
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the School/Department/Institute/Project This post is within the School of Engineering and Materials Science, a large School with 70-80 academics and a similar number of postdoctoral research staff
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population health, the Faculty is ranked 2nd in the 2021 QS World University rankings for research citations and consistently positioned first in London for subject rankings and student satisfaction
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Year 52 Closing Date 23.59 hours BST on Wednesday 16 July 2025 Reference 0625-143 Right to work: Please note that it will not be possible for the University to issue a Certificate of Sponsorship to
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, and contribute to other teaching activities within the Department as needed. The post is based at the Mile End Campus in London. It is full-time, permanent appointment, with an expected start date