Pricing Manager (Data Scientist) - Remote

Arthur Recruitment
East London
9 months ago
Applications closed

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I am working with a leading Personal Lines Insurer who are seeking a Technical Pricing Manager. The successful candidate will be responsible for the production of specialist statistical risk models across a range of products.As a Technical Pricing Manager, you’ll drive strategic change by enhancing model sophistication and leveraging the latest data science techniques to support profitable business growth.Key Responsibilities:Develop and refine complex actuarial models to deliver high-impact, innovative pricing solutionsConduct ad-hoc actuarial and statistical analyses, working with stakeholders across the business to address diverse challengesProduce reports, documentation, and presentations to effectively communicate statistical models and insights to key stakeholdersRequirements:Proficiency in data science techniques using Python or RExpertise in statistical analysis software, with knowledge of Willis Towers Watson (Emblem, Radar) being highly desirableStrong understanding of pricing and underwriting principles, preferably within personal or commercial lines at a large business scaleAbility to oversee pricing model development and maintenance while evaluating the profitability and market positioning of new and existing product propositionsProven experience working collaboratively with teams and senior stakeholders, with excellent communication skills to present complex concepts clearly

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