Associate Data Scientist - Hybrid, 6 Month Contract

Kanz
Newport
2 weeks ago
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A public statistics organization is seeking an Associate Data Scientist for a 6-month contract in Newport. This hybrid role involves preparing datasets, conducting exploratory analysis, and building machine learning models. Ideal candidates possess foundational data science skills, a degree in a relevant field, and proficiency in Python or R. Opportunities to learn and contribute to impactful national statistics projects exist. The position is only available for candidates in the UK.
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