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Data Analyst (Insurance Technology)

Talent Locker
Altrincham
4 days ago
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Overview

Data Analyst (Insurance Technology)


Location: Manchester (Hybrid - 1 day per week in the office)


Salary: £35,000 - £50,000 + benefits (DOE)


Benefits: 30 days holiday, private medical, enhanced pensioni, discretionary bonus, stock options


Want to do more than just pull data and see how your work shapes real products?


Join a fast-growing InsurTech that's transforming commercial insurance through data, analytics and technology. You\'ll work alongside actuaries, underwriters and developers, turning complex data and pricing rules into real-world solutions that change how brokers and insurers operate.


This is a rare opportunity to join a small, collaborative team where you\'ll be trusted to make an impact instead of being lost in layers of process.


What you'll be doing

  • Build and maintain interactive dashboards and regular business reports.
  • Run SQL queries to extract, analyse and interpret insurance data.
  • Work with actuaries to design, test and implement rating models and rules.
  • Present insights and recommendations to underwriting, sales and finance teams.
  • Support company-wide reporting and data automation projects.
  • Document processes and continuously improve reporting accuracy and efficiency.

What you\'ll bring

  • Insurance experience to hit the ground running with terminology and pricing concepts
  • Strong SQL and Excel skills; experience with visualisation tools
  • Mathematical mindset with strong attention to detail.
  • Exposure to Python for data analysis or automation.
  • Confident communicator who can explain technical insights to non-technical teams.
  • Organised, curious and able to balance independence with collaboration.
  • Bonus: experience with pricing or rating software.

What makes this different

  • Work across data, pricing, and product; genuine variety and visibility.
  • Small, agile team where your ideas get noticed and implemented.
  • Modern tech stack and culture no legacy systems or red tape.
  • A business combining stability with startup energy who are established, profitable, and growing fast.
  • The freedom to learn, experiment, and see your work make a real impact.


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