296 computer-science-quantum "https:" "https:" "https:" "https:" "https:" "U.S" positions at University of London
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(PASS) Coordinator and PASS Student Organisers to support the administration of the PASS programme. Provide administrative support relating to the employment of students, including recruitment; organising
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media and communications within higher education, global and public health, or science. Strong website and CMS expertise is essential. Further particulars are included in the job description. The post is
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About the Role The appointed individual will conduct research in collaboration with, and under the supervision of, Dr Karine Rizzoti, contributing to a research programme investigating the dual
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, productivity and growth across the UK’s screen, performance and creative technology sectors. A core responsibility will be the development of a sustainable operating and business model that secures the National
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matters and the capacity to deputise for senior leadership when required. About the CoSTAR National Lab: CoSTAR is the UK’s national research and innovation infrastructure for creative technology, funded by
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must have a postgraduate degree, ideally a doctoral degree, in a relevant topic. The role requires proven expertise in data science or related fields, with strong skills in quantitative analysis applied
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in developing countries through excellence in research, healthcare, and training. Our research programme includes basic scientific investigations, clinical trials, epidemiological studies, intervention
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to demonstrate excellence in teaching practice, curriculum design and delivery in business applications of AI, analytics, and cloud computing. You will have proven expertise in enhancing student employability
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About the Role We are seeking a highly motivated and talented Postdoctoral Research Associate to join an interdisciplinary research programme investigating cellular and molecular interactions
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. The study integrates clinical, microbiological, and data science approaches to generate evidence and tools for safer, more targeted infection management in hospitalised newborns. Key output involves leading