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are looking to recruit a talented, pro-active and enthusiastic Research Associate in Data Science/ Biostatistics to join our program of research funded by the NIHR Imperial Biomedical Research Centre (BRC
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applicant will take a lead role in data science and epidemiology for this newly funded multi-disciplinary project grant for early detection of cancer called the Cancer Loyalty Card Study-2 (CLOCS-2
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evaluation of new AV technology and place great importance on continuous improvement and highly committed to benchmarking and raising service standards Monitor the use of equipment, ensure that adequate
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Manager, the Editorial Copywriter delivers a diverse range of print publications, digital content, marketing material, and event and campaign collateral. They support colleagues across Imperial in their use
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carried out under the Royal Academy of Engineering funded Senior Research Fellowship programme. The Research Associate will join a highly collaborative and multidisciplinary team within the Subsurface CO2
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to the Supervisor and dispose of all waste in the correct way To brief and coordinate all agency staff to deliver a professional and efficient service Assist in identifying areas where improvements can be made and
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dispose of all waste in the correct way To communicate with organisers and guests offering customer friendly service; to be courteous, respectful and welcoming Assist in identifying areas of customer
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to working together to conduct high-quality work that makes a real difference to our clients and stakeholders worldwide. The successful applicant will have an especially strong engineering background
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computer science with previous experience in cardiac image segmentation and motion analysis. This post is part of a 4-year NIH program in a partnership between Imperial College London and Brigham and Women’s
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to data engineering for the deployment of the system in our trial hospitals. The 4 posts are as follows 1. PostDoc advancing off-line Reinforcement Learning and Decision Transformer research that underpins