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politically engaged research, and remains one of the top departments for Geography and Environmental Sciences in the UK (REF 2014). About Queen Mary At Queen Mary University of London, we believe that a
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should have a relevant first degree in a relevant discipline as well as relevant experience in health or social science research. For full details see the job description. The post is part-time 17.5 hours
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or related science and have a strong background in cell biology and cell signalling. Successful candidate should have the ability to work independently and collaboratively within a team. Applicants should
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View All Vacancies Department of Earth Science Location Egham Salary £39,233 to £46,397 per annum - including London Allowance Post Type Full Time Closing Date 23.59 hours BST on Sunday 30 June 2024
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View All Vacancies Department of Non-Communicable Disease Epidemiology Salary: £43,947 to £49,908 per annum, inclusive. Closing Date: Sunday 07 July 2024 Reference: EPH-NCDE-2024-07 The London School of Hygiene & Tropical Medicine (LSHTM) is one of the world’s leading public health...
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could include work on self-directed topics of interest. The post-holder will have a first degree in the field of Public Health Nutrition, Public Health or related field (geospatial sciences, data science
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techniques is essential. Experience in microscopy, immunohistochemistry and microscopy image analysis and appropriate publication records would be an advantage. A demonstrated ability to communicate well
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expertise spanning biostatistics, environmental epidemiology, data science, statistical computing and climatology. Candidates are required to either have an undergraduate degree in statistics or epidemiology
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View All Vacancies Department of Public Health, Environments & Society Salary: £43,947 to £49,908 per annum, inclusive. Closing Date: Friday 05 July 2024 Reference: PHP-PHES-2024-17 The London School of Hygiene & Tropical Medicine (LSHTM) is one of the world’s leading public health...
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analyst to develop models to predict dental disease outcomes from structured and unstructured patient electronic medical and dental records to lead and proactively support the organisation to deliver