Data Analyst

Cedar
West Bromwich
3 days ago
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Data Analyst

Sector: Local GovernmentRate: £400-£450 per day Inside IR35

Role Type: Interim

Location: Midlands (Hybrid Working)

We are currently working with a local authority in the Midlands to recruit an interim Data Analyst. This interim assignment offers the chance to make a real impact by contributing to financial and strategic improvements, data analysis, and business monitoring.

Key Responsibilities

  • Lead on corporate data analytics, including the development of a new database.
  • Collate and interpret financial and commercial data across multiple areas.
  • Support effective business monitoring, capital project tracking, and commercial planning.
  • Design and implement improvements to reporting systems and processes.
  • Produce and present insightful performance analysis for senior stakeholders.
  • Ensure the accurate and timely collection of complex data.
  • Promote commercial awareness and support colleagues through training and guidance.
  • Lead and contribute to projects aimed at validating results and standardising data.
  • Provide data-driven insights to inform strategic planning and decision-making.

Essential Experience:

  • Demonstrable experience in data analysis within local government or a large public sector setting is essential.
  • Advanced Excel and data handling skills, with the ability to manage and interpret co...

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