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Senior Pricing Data Scientist

Harnham
City of London
2 weeks ago
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SENIOR PRICING DATA SCIENTIST


COMPETITIVE SALARY UP TO £80,000


LONDON, HYBRID WORKING (1 DAY PER WEEK IN THE OFFICE)


In this growth role, you’ll be working in a talented team and leading the conversion rate and market modelling function within the team, working on scaling an already fast-growing InsurTech.


THE COMPANY

This InsurTech is a data-driven and innovative organisation that leverages its advanced modelling techniques to provide specialist insurance products. You’ll be working in a close-knit team and joining at the beginning of their expansion.


THE ROLE

  • Understand and analyse price elasticity and competitiveness in the market, implementing enhancements to models where required.
  • Lead the conversion rate model and market model development, working across end-to-end modelling
  • Utilise price comparison data to influence strategic decision-making and model inputs


YOUR SKILLS AND EXPERIENCE

  • Experience developing models in open-source software
  • Python proficiency
  • Home insurance experience is ideal
  • 4 years + experience in the insurance analytics space


THE BENEFITS

  • Competitive salary up to £80,000
  • Hybrid working (1 day in office per week)
  • Bonus scheme
  • Pension scheme
  • Holiday entitlement


HOW TO APPLY

Please register your interest via the apply link on this page, or send your CV directly to

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National AI Awards 2025

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