Senior Business Intelligence Manager

Rainham, Medway
2 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

Required Skills & Experience

Proven experience in a Senior BI / BI Manager / Data Analytics leadership role

Strong hands-on expertise in Power BI (data modelling, DAX, performance optimisation)

Advanced SQL skills

Demonstrated experience leading and developing technical teams

Strong understanding of GDPR and data governance frameworks

Experience with MDM tools and data management best practices

Exposure to SAP data structures and integration

Excellent data modelling skills (conceptual, logical, physical modelling)

Strong stakeholder management and communication skills

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