Business Intelligence Analyst

Focus Group
Shoreham-by-Sea
1 month ago
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Commercial Business Intelligence Analyst

📍 Shoreham-by-Sea (Hybrid) 🚀 Private Equity Backed Growth


Transform data into decisions that drive commercial success.......


We're building something special at Focus Group. As a fast-growing PE-backed ICT services business, we're at an inflection point where data isn't just supporting our growth—it's powering it.


Our Data and Analytics team sits at the heart of everything we do, spanning all divisions, acquisitions, and products. Now we need a Commercial BI Analyst who's energised by the challenge of turning complex datasets into clear insights that shape business strategy.


What you'll be doing

This isn't a typical "create reports and wait for requests" role. You'll be partnering directly with Finance and Sales leadership to uncover trends, drive performance, and support transformation initiatives that matter.


Your work will directly inform decisions made by our Executive Leadership Team. You'll maintain critical analysis tools, deliver ad-hoc deep dives, and communicate data stories that change how we operate.


Day-to-day, you'll:

  • Translate complex commercial data into actionable insights that drive sales and financial performance
  • Build compelling dashboards and visualisations that tell the story behind the numbers
  • Partner with Data Engineering on ingestion and modelling projects that enhance our capabilities
  • Present business-critical analysis to the Board of Directors
  • Design intuitive, user-facing reports that stakeholders actually want to use
  • Spot trends before others do and surface opportunities for improvement
  • Contribute to the evolution of our analytics function as we scale

What you'll bring

You’re someone who:



  • Solves problems with a commercial lens—you understand that data exists to drive business value
  • Can "translate" between technical complexity and business clarity
  • Has hands-on experience with data visualisation tools (Power BI preferred)
  • Feels comfortable wrangling large, messy datasets into meaningful insights
  • Communicates findings in ways that inspire action, not just understanding
  • Brings genuine curiosity and a "can do" mindset to ambiguous challenges
  • Works collaboratively but can drive projects independently

Technical foundations

  • Strong proficiency in Microsoft Technology (particularly Excel and PowerBI)
  • Experience using data analysis to inform decision-making
  • Meticulous attention to detail

Bonus points for

  • Star schema and multi-dimensional data modelling experience
  • SQL, Python, or other data analysis languages
  • Exposure to predictive analytics or forecasting
  • DBT and/or Snowflake experience

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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