Data Scientist – Health Outcomes for UK Biobank

University of Oxford
Oxford
4 days ago
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We are seeking

a Data Scientist to support a programme of work focused on enhancing the classification of health outcome data in the UK Biobank resource. You will be responsible for developing a programme of work to enhance the phenotyping of health outcomes in UK Biobank, investigate new data sources, algorithms and mapping tools. You will also be responsible for writing scientific reports and publishing your work in journals and conferences. To be considered, you must hold a higher degree (e.g. MSc/PhD) in data science, statistics, epidemiology, or a related subject, have significant experience in analysis of large complex epidemiological datasets, using Stata, R or SAS, and have excellent computer skills including knowledge of statistical packages or programming languages. You will have excellent organisational, writing and oral communication skills. This is a full time, fixed term post (part time considered) until 30th June 2028.

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