Insights Analyst

Harnham
London
1 month ago
Applications closed

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Insight Analyst - Fintech (BNPL)
📍Location:London/Sheffield (3 days in office, preference for London)
💸Salary:£45,000 - £80,000 + up to 15% annual bonus

About the Company:
A rapidly growingBuy Now Pay Later (BNPL)provider in the automotive sector, offering flexible payment solutions for car servicing and repairs. Partnering with garages and dealerships, the company is expanding into new international markets, including Germany, Netherlands, and Ireland.

The Role:
This is abrand-new positionwhere you'll lead the insights function, working closely with senior stakeholders to:
✅ Identify and segment high-value customers
✅ Analyse online/offline campaign performance
✅ Conduct competitor analysis and understand key growth levers
✅ Drive insights to increase product adoption across UK dealerships
✅ Optimise presence in new international markets

Who You'll Work With:
👥 Chief Growth Officer, CCO & Co-Founder, Head of Product
📊 Data Engineering & BI teams

What You'll Need:
💡 Strong SQL expertise
📈 Google Analytics (GA) experience preferred
🐍 Python/R - nice to have
🧠 Strong analytical and problem-solving skills

Why Join?
✨ Opportunity to build the insights function from scratch
🚀 Work directly with senior leadership, driving impactful decisions
🌍 Play a key role in international market expansion

Benefits:
🎉 Up to 15% annual bonus
🌴 26 days holiday + bank holidays
🏥 Full Vitality PMI & Medicash Cash Plan
🚴‍♂️ Cycle to Work & Electric Car Schemes
👶 Generous parental leave (4 months primary, 1 month secondary)
💻 LinkedIn Learning account & annual company retreat

Interview Process:
📞 Initial 30-min screen with CGO & HR
📊 45-min interview with CGO & Head of Data/Product

Be part of shaping the future of automotive finance-apply now!

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