Population Data Science Intern: Project 4

Swansea University / Prifysgol Abertawe
Swansea
23 hours ago
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A leading university in the UK is offering a summer internship in the Population Data Science group. This 3-month paid position is ideal for students interested in data science. Interns will engage in real-world projects, applying their skills in software development, statistics, and epidemiology within a multidisciplinary team. The role emphasizes responsibility and teamwork, contributing to impactful outputs and providing valuable experience for future employment. Flexible working hours and opportunities for Welsh language development are also provided.
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