Computational Biology Data Scientist Apprentice

University of Cambridge
Cambridge
1 day ago
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A prestigious UK university in Cambridge is offering an exciting opportunity for a Data Scientist Degree Apprentice, focusing on computational biology. This full-time role involves working under senior researchers while pursuing a Level 6 Data Scientist degree at Anglia Ruskin University. Responsibilities include analyzing biological datasets, applying computational techniques, and developing statistical models. The apprenticeship lasts 4 years and 6 months, starting in September 2026, providing valuable experience in a supportive research environment.
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