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King’s Impact, the King’s Sanctuary Programme, King’s Volunteering, and the Afe Babalola Centre for Transnational Education, among others. Through these initiatives, together with our broader civic and
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recognised by over 100 research awards, and multiple members of staff have been named by Web of Science as amongst the leading researchers in the world in psychiatry/ neuroscience. We have many research
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18 Oct 2025 Job Information Organisation/Company KINGS COLLEGE LONDON Research Field Engineering Computer science Researcher Profile Recognised Researcher (R2) Established Researcher (R3) Country
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computer programs (SPSS, R, Python, etc.) and some experience in quantitative data analysis. Ability to interact appropriately with colleagues and research participants in a patient, diplomatic, professional
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from backgrounds, including computational chemistry, bioinformatics, systems biology, physics and machine learning. The project offers a unique opportunity to collaborate closely with experimental
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project, an ambitious programme developing medical-grade nanoneedle bandages to deliver life-changing gene therapy for patients with recessive dystrophic epidermolysis bullosa (RDEB). This is a unique
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About the role The Research Department of Biomedical Computing, within the School of Biomedical Engineering & Imaging Sciences, develops computational methods and AI technologies for automated
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this role, we are looking for candidates to have the following skills and experience: Essential criteria PhD qualified in Neuroscience, data analytics, computer science or a related discipline Strong
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practitioner able to develop and deliver Design Engineering education for large cohorts in a number of areas such as computer-aided design, design thinking, manufacturing, robotics and student projects
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Engineering, Computer Science, Robotics, AI, or a related field Strong background in machine learning and robotics, with specialisation in one or more of the following areas: generative models, reinforcement