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Data Analyst - Financial Services

Harnham
Nottingham
1 week ago
Applications closed

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Data Analyst

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Data Analyst

Data Analyst - Financial Services

Location: Remote (occasional office visits in Nottingham, expensed)
Salary: £30,000 - £45,000

About the Role

We're hiring a Data Analyst to join a growing financial services business that is scaling rapidly in the UK lending space. This role sits within the Marketing & Pricing team and will play a key part in driving growth through data insight, lead generation, and pricing strategy.

You'll work on a wide range of projects, from analysing broker and customer data, to optimising lead acquisition channels, to supporting new product launches. This is a broad role with plenty of scope to make it your own and directly impact the direction of the business.

Responsibilities

  • Analyse customer, broker, and loan data to drive growth and improve decision-making

  • Optimise lead generation channels and pricing strategies

  • Provide insights and recommendations through clear reporting and visualisation

  • Support new product development and expansion initiatives

  • Collaborate closely with marketing and pricing teams to meet business targets

What We're Looking For

  • 3+ years' experience in data analytics within financial services

  • Strong skills in SQL and Python (R also considered)

  • Experience with A/B testing and data visualisation

  • Comfortable working with lead generation and third-party data sources

  • Strong communicator, confident in turning analysis into actionable recommendations

Why Join?

  • A fast-growing, well-funded financial services business with ambitious expansion plans

  • Real opportunity to shape the role and carve out your career path

  • Direct impact on growth and new product launches

Find out more and apply via the link below.

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