Lead Technical Pricing Analyst

Ageas Insurance Limited
London
1 year ago
Applications closed

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Lead Technical Pricing Analyst:An opportunity has arisen to join Ageas’s Underwriting department in the Technical Pricing team. Technical Pricing are responsible for the production of risk cost models on our insurance products including Private Car, Van, Bike and Household. The successful applicant can choose to work in our London, Eastleigh or Bournemouth offices or work from home full-time.This exciting role as Lead Technical Pricing Analyst offers the opportunity to explore and use new technologies and be involved in delivering strategic change such as improving the sophistication of models and deploying the latest data science techniques to generate profitable business growth. The Lead Technical Pricing Analyst will support projects, assisting in data preparation, performing, and reviewing actuarial modelling and interpreting results that drives high impact and, intelligent pricing solutions – all of which will help drive our competitive positioning.  This role has a strong research and development focus, so the ideal candidate will be a self-motivated individual with independent research experience and the proven ability to drive complex projects through the complete development cycle, from early conceptualization to implementation.Main responsibilities of the Lead Technical Pricing Analyst:Creating complex, robust statistical models including Machine Learning models and interpreting the results to deliver high impact, innov...

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