Business Intelligence Developer

Harnham
West Midlands
2 days ago
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Business Intelligence Developer

West Midlands | 3 days in office | Up to £40,000


We’re working with a West Midlands–based business looking to add a Business Intelligence Developer to their reporting team. This role focuses on building high-quality Power BI dashboards and delivering clear, actionable insight to stakeholders across Operations, Sales, Finance and eCommerce.


You’ll join a collaborative Business Reporting team within a wider transformation function, working on shared data models and helping shape a growing Microsoft-based data platform.


What you’ll be doing

  • Building and maintaining Power BI reports (data models, DAX, visuals, RLS)
  • Supporting ad hoc analysis requests with clear, accurate insights
  • Partnering with stakeholders to turn business questions into reporting solutions
  • Contributing to the development of a new data platform using Microsoft Fabric


What we’re looking for

  • Strong SQL and hands-on Power BI experience
  • Confident working with Excel for analysis
  • Clear communicator, comfortable working with non-technical stakeholders
  • Organised and detail-focused


If you’re looking for a hands-on BI role with real stakeholder exposure and room to grow, this could be a great fit.

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