Business Intelligence Developer

Empresaria Group plc
City of London
2 days ago
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Power BI Developer (All Levels)

Location: London, UK (Hybrid)

Project: Sizewell C Nuclear Power Station


Client is looking for Power BI Developers (all levels) to support reporting and analytics across the Sizewell C Nuclear Power Station project, one of the UK’s largest nuclear infrastructure programmes. Working within the Project Controls Centre of Excellence, you will play a key role in delivering high-quality reporting, dashboards, and insights that support project performance and executive decision making.


Key Responsibilities

  • Develop, publish, and maintain Power BI dashboards and reports for project performance monitoring.
  • Translate business requirements into data models aligned with WBS, CBS, and OBS structures.
  • Analyse project data to identify trends, risks, and opportunities.
  • Create clear visualisations and reporting insights for PMO and leadership teams.
  • Support monthly reporting cycles with performance analysis.
  • Deliver digital reporting solutions through the SZC Data Platform.
  • Produce training materials and provide user support for reporting tools.
  • Perform system configuration, testing, and user acceptance activities.
  • Collaborate with project teams, suppliers, and IT to improve reporting processes.


Qualifications & Skills

  • Strong experience developing Power BI dashboards and reports.
  • Advanced knowledge of Power BI (DAX, Power Query/M) and Excel.
  • Experience working with large datasets and reporting environments.
  • Understanding of Project Controls functions such as cost, schedule, and performance reporting.
  • Ability to design insight-driven dashboards and data visualisations.
  • Strong communication and stakeholder management skills.
  • Experience within construction, infrastructure, or nuclear projects is desirable.
  • Exposure to SharePoint, Power Apps, or Power Automate would be beneficial.

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