Senior Business Intelligence Manager

Pearson Whiffin IT & Digital
Gillingham
4 days ago
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Senior Business Intelligence Manager


We are seeking an experienced and strategic Senior Business Intelligence Manager to lead our BI function and drive data-led decision making across the organisation. This is a leadership role suited to someone who combines strong technical expertise with the ability to manage and inspire high-performing data teams.


You will be responsible for shaping the BI strategy, ensuring high-quality data governance, and delivering actionable insights that support business growth and operational excellence.


Key Responsibilities

  • Lead, mentor, and develop a team of BI developers and analysts
  • Define and execute the Business Intelligence roadmap and data strategy
  • Design and oversee scalable data models and reporting frameworks
  • Deliver advanced dashboards and reports using Power BI
  • Write and optimise complex SQL queries for analytics and reporting
  • Ensure compliance with GDPR and best-practice data governance standards
  • Oversee and support implementation of MDM (Master Data Management) tools
  • Work closely with stakeholders across Finance, Operations, IT, and Commercial teams
  • Collaborate on data integration initiatives, including exposure to SAP environments
  • Ensure data quality, integrity, and consistency across systems


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