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Senior Pricing Analyst (Data Science) - Remote

Arthur Recruitment
Greater London
10 months ago
Applications closed

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Senior Data Analyst - Pricing Data Engineering & Automation, CUO Global Pricing

I am working with a large personal lines insurer who are seeking a Senior Pricing Analyst to join their growing team. This position is important in delivering the strategy for behaviour modelling making sure the pricing capabilities are adequate.

Responsibilities:

Contribute to the implementation of the behaviour modelling strategy Analyse data for modelling using Python and Radar Deploy models into Radar for use in pricing optimisation Mentor junior analysts

Requirements:

3+ years of modelling experience (within personal lines insurance) Experience using predictive modelling techniques i.e GLM's, GBM's, Decision trees Strong coding skills, mainly within Python, SQL and Radar

This role can be fully remote

National AI Awards 2025

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