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Senior Data Analyst

Spinks HR
Lewes
6 days ago
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Senior Data Analyst - Public Sector | Brighton (Hybrid)

I'm currently partnering with one of our longstanding public sector clients who are looking for a Senior Data Analyst to join their team. This is a unique opportunity requiring a blend of pensions/finance expertise and strong analytical skills, including hands-on experience with statistical and business intelligence tools.

Key Skills:

  • Proficiency in Python, R, and SQL
  • Experience with Microsoft Power BI or similar BI platforms
  • Familiarity with Azure DevOps, Git, etc.
  • Understanding of pension schemes, funding, governance, and the wider pension market.

Role Details:

  • Employment Type: Full-time, Permanent
  • Location: Brighton (Hybrid-1/2 days per week in office)
  • Salary: £38,000- £41,000
  • Benefits: 27% pension contribution, flexible hybrid policy, 25 days annual leave + bank holidays, and more.

If you'd be interested to hear more, and believe you could be a good fit, please apply now for immediate consideration.


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