Business Intelligence Analyst

Reboot Recruit
Slough
3 days ago
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Slough | Up to £45,000 + £6.5k Car + Up to 15% Bonus + Benefits


Join one of the UK’s most established retail organisations, operating nationally with a strong reputation for quality, customer experience, and product design. With a large store footprint and growing online presence, the business continues to invest in data and analytics to drive smarter commercial decisions across the organisation.


This is an opportunity for a Commercial Analyst to play a key role in delivering actionable insights across sales, inventory, and customer performance. Working closely with senior stakeholders, including board-level leadership, you’ll transform complex retail data into clear commercial reporting that supports strategic decision-making.


Why apply

  • Board-level exposure: Deliver reporting and insights that directly support senior leadership decisions.
  • High-impact analytics: Work with large retail datasets covering sales, stock, and customer performance.
  • Modern BI environment: Utilise Microsoft’s BI stack to build dashboards, reporting models, and automated insights.
  • Cross-functional influence: Partner with finance, operations, and marketing teams to improve commercial performance.
  • Strong benefits: Competitive salary, performance bonus, private healthcare, and long-term partnership benefits.
  • Growth opportunity: Develop within a data-driven retail organisation investing in analytics and reporting capability.

What we’re looking for

  • SQL querying and relational database experience
  • Power BI dashboard development and data visualisation
  • Microsoft SQL Server and Microsoft BI stack experience
  • Report development using tools such as Power BI or Report Builder
  • Data modelling, data extraction, and dataset manipulation
  • Experience working with large datasets and automated reporting solutions

If you’re a data-driven analyst with strong BI and SQL skills looking to influence decision-making within a major UK retail business, this role offers the visibility, tools, and commercial impact to take your analytics career to the next level.


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