Business Intelligence & Reporting Manager

Provallar Executive Search
City of London
1 month ago
Applications closed

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Our client, a global sportswear brand, is looking to strengthen how it uses data — moving beyond reporting into clear, decision-ready insight for senior leadership.


I am looking to speak with a hands-on BI / Power BI professional who enjoys owning reporting end-to-end and working closely with commercial, finance and planning teams.


The Role

This position will take ownership of business intelligence and reporting across the organisation, with a strong focus on Power BI, data modelling, and commercial insight.

You will be responsible for building, maintaining and improving dashboards that support:

  • Trading and performance reviews
  • Demand planning and inventory decisions
  • Financial and commercial analysis
  • Senior leadership reporting

The role suits someone who is commercially minded, technically strong, and comfortable translating complex data into clear narratives.



Key Responsibilities

  • Own and develop Power BI dashboards and reporting frameworks
  • Translate business requirements into clear, intuitive data visualisations
  • Build and maintain data models, measures and DAX calculations
  • Partner with commercial, finance and operations teams on insight and analysis
  • Ensure data accuracy, consistency and reporting governance
  • Reduce manual Excel-heavy processes through automation and standardisation
  • Support and upskill stakeholders in the effective use of BI tools.


Background & Experience

  • Proven experience in BI, reporting or analytics roles
  • Strong hands-on Power BI capability
  • Confident with data modelling, DAX and Excel
  • Experience working in apparel, fashion, retail, e-commerce or consumer-led businesses
  • Comfortable engaging with senior stakeholders
  • Commercially curious and detail-driven


Excellent salary plus bonus. Career growth. Stable and financially strong business. Entrepreneurial business, humble management, collaborative work environment. 25 days holidays plus bank holidays.

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