Commercial Business Intelligence Analyst

Focus Group
Shoreham-by-Sea
2 days ago
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🚀 Commercial BI Analyst

£40,000–£45,000


Hybrid | Shoreham-by-Sea


Are you a data-savvy analyst who loves turning numbers into stories that drive real business decisions? We're looking for a Commercial Business Intelligence Analyst to join Focus Group's growing Data & Analytics team.


About Focus Group

Focus Group is a £300m-revenue, 1,300-person technology services company backed by Hg Capital. Following our $1bn valuation in 2024, we're scaling fast — and data is at the heart of that growth. With 30,000 SME customers and a portfolio expanding through strategic acquisitions, our analytics function sits at the very core of what comes next.


The Role

This is a high-visibility position, working directly with Finance and Sales leaders — and presenting to the Board and Executive Leadership Team. You'll be helping shape the decisions that drive a £300m business forward, using a modern analytics stack including Snowflake, dbt, and Power BI.


📍 Based at our HQ in Shoreham-by-Sea, with 2 days WFH (Wednesday & Friday)


💰 £40,000 – £45,000 depending on experience


What You'll Be Doing

  • ✅ Building dashboards and visualisations that tell the story behind the data
  • ✅ Supporting commercial decision-making across Sales and Finance
  • ✅ Delivering business-critical insight to the Board and ELT
  • ✅ Partnering with Data Engineering on ingestion and modelling projects
  • ✅ Driving the evolution of our analytics capabilities

What We're Looking For

  • 🔹 3–5 years in a commercial analyst role
  • 🔹 Strong SQL skills and experience with Power BI (or similar)
  • 🔹 The ability to communicate complex data clearly to senior stakeholders
  • 🔹 A commercial mindset and a genuine curiosity for problem-solving

Bonus points for experience with Python/R, dbt, Snowflake, or star schema modelling.


Why Join Us?

This isn't just another analyst role. You'll be joining a PE-backed business at a pivotal moment in its growth story, with direct exposure to senior leadership and the opportunity to shape how data is used across the entire organisation.


At Focus Group you can be proud of what you do, how you do it and feel a true part of the team. We work hard to create an inclusive, collaborative and rewarding environment where you are inspired to achieve brilliant things and really make a difference to the future of our business.


We’re proud to have built an outstanding place to work where people thrive and are recognised for their achievements. We’re delighted to have been named one of the UK’s best 100 Companies to Work for 2021 and a British Private Equity & Venture Capital Association (BVCA) 2023 Vision Award Winner for London & South East for our commitment to culture and ESG.


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