Hybrid Medical Data Science Research Assistant

University of Oxford
Oxford
1 month ago
Applications closed

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A prestigious university is seeking a Research Assistant in Medical Data Science to join their IMPACT-SMI research programme. This role offers the opportunity to analyze electronic health record data from large mental health systems and contribute to innovative projects aimed at improving patient care. The ideal candidate will possess a relevant degree and experience in coding with R and/or Python. This position supports a flexible hybrid working model, requiring a minimum of 3 days in the office, with a commitment to equality and diversity at the workplace.
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