Population Data Scientist & Research Officer

Career Choices Dewis Gyrfa Ltd
Swansea
4 days ago
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A leading research organization in Swansea is seeking a Research Officer & Data Scientist to contribute to cutting-edge population data science projects. This full-time role involves collaborating with various stakeholders to utilize rich data sources that inform health policy and improve services. Candidates should have experience in routine data analysis and a background in fields like epidemiology or statistics. The position offers a competitive salary and benefits, with a commitment to impactful data science work.
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