Emerging Data Scientist - Hybrid, 6-Month Contract

Public Sector Resourcing
Newport
1 week ago
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A leading public sector organization is seeking an Associate Data Scientist for a 6-month hybrid contract in Newport or Titchfield. This role offers a unique opportunity for early career professionals to build foundational data science skills and contribute to impactful projects in national statistics. Candidates should have experience with Python or R, a solid understanding of statistics, and a passion for analytical work. The organization supports diverse candidates and invites applications from those with disabilities and military connections.
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