Lead Price Comparison Analyst

Harnham
Sheffield
11 months ago
Applications closed

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Lead Price Comparison Analyst

Remote (UK-based)

Up to £65,000


This insurance company is seeking a Lead Price Comparison Data Analyst to join the team!


THE ROLE

This is an exciting new role in the Commercial Data team which will look at analysing, optimising, and transforming price comparison data into clear and engaging narratives. You will support on building propensity models, behavioural models, and pricing models and work with the BI and analytics developers to support on data reporting.


SKILLS & EXPERIENCE

  • Experienced in SQL
  • Strong Python or R experience
  • Experience in the insurance industry
  • Experienced working with Price Comparison data


BENEFITS

  • Up to £65,000
  • Opportunity to grow and develop your career


HOW TO APPLY

Please register your interest by sending your CV to Lauren McAlister via the Apply link on this page.

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