Insurance Pricing Analysts

Ageas Insurance Limited
Eastleigh
1 year ago
Applications closed

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Job Title: Insurance Pricing AnalystsContract Type: Permanent (Full-Time, Part-Time, Job-Share, Flexible options available)Salary Range: £40,000 - £84,000Location:Can be based in London, Eastleigh, Bournemouth (Hybrid roles)

Do you have experience in Pricing?Our Pricing department are expanding to deliver exciting new projects, and are looking to bring onboard a range of Personal Lines Pricing Candidates. These will join teams as Senior and Lead Analysts, as well as Pricing Managers, based (on a hybrid basis) in our offices throughout the UK. 

This is a hugely exciting time for Ageas - we are expanding and have a plethora of roles available across Risk and Retail Pricing covering both motor and household product lines!

You will engage with the Underwriting team, Actuarial and Data Science teams, Test Teams and IT Developers, and Trading teams. In these roles, you will be producing and examining pricing data and make recommendations to optimise profitable growth, and help implement pricing structures. Therefore, solid knowledge of the personal lines market, pricing (whether risk or retail), and underwriting fundamentals, along with working knowledge of Excel, a data manipulation tool (e.g. SAS, Databricks, Snowflake) is a must.

The Pricing candidates must have GI experience ideally in Personal Lines, be highly numerate and have an inquisitive nature with a flair for manipula...

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