Head of Business Intelligence & Data Analytics

Spectrum It Recruitment
London
2 days ago
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Head of Business Intelligence & Data Analytics

This is an excellent opportunity for a strategic leader with higher educational experience who will be responsible for delivering business intelligence, analytics, and reporting services that support evidence-based decision-making and institutional performance. You will be required to lead the development of data strategy, governance frameworks, and advanced analytics capabilities to enable data-driven planning and operational excellence across the business.
This is a hybrid role with the expectation to work 2-3 days in the London office. Previous higher education sector experience is required.

Core Skills & Expertise

  • Business Intelligence & Analytics Leadership
  • Data Strategy & Data Governance
  • Power BI (Dashboards, Data Models, Visualisation)
  • Data Transformation & Automation (Alteryx)
  • Cloud Data Platforms (AWS)
  • KPI Development & Performance Analytics
  • Higher Education Data & Regulatory Reporting (OfS, HESA)
  • Strategic Planning, Forecasting & Scenario Analysis
  • Stakeholder Engagement & Executive Communication



Responsibilities:

  • Develop and implement the College's Data Strategy, establishing institution-wide data standards, definitions, and governance frameworks.
  • Champion data quality, records management, and ...

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