Data Science Researcher — Dairy Welfare & Emissions

Newcastle University
Newcastle upon Tyne
2 days ago
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A prestigious educational institution in Newcastle upon Tyne is seeking a Research Assistant or Associate in Data Science to address challenges in animal welfare and agricultural sustainability. The role involves data collection, analysis, and collaboration with an interdisciplinary team. Candidates should possess strong statistical skills and a relevant PhD or submitted PhD. This full-time position offers competitive salaries and excellent benefits, including a generous holiday package. Flexible working options are available.
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