Data Science Lead

Arthur
London
4 days ago
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A globally recognised personal/commercial lines insurer are seeking an experienced Data Scientist to join their established and growing Pricing & Analytics team in London.In this role as a Data Science Lead, you will act as the subject matter expert and technical lead in transitioning GLM pricing models to Python and advancing machine learning capability across the function. Partnering closely with senior performance and analytics leaders, you’ll help shape data science strategy, identify high-value opportunities, and deliver predictive models that support pricing optimisation, fraud detection, retention, renewals, and profitable growth. You’ll collaborate across business functions, ensure strong governance and regulatory compliance, and present clear, actionable insights to senior stakeholders influencing global decision-making.Requirements A hands-on data scientist with strong Python expertise (open to candidates outside of Insurance).Experience working with complex datasets, and the ability to translate analysis into commercial impact. You’re collaborative, proactive, and confident communicating technical concepts to diverse audiences.Comfortable with 2 days per week in London.In addition to a very competitive salary, you will receive a comprehensive benefits package to support your work and personal life, including 30 days’ holiday (with the option to buy more), flexible working options, generous pension contributions (10%), fully funded private medical cover for you and your family, and inclusive family leave of 26 weeks at full pay and remote working abroad! If you’re passionate about embedding analytics into everyday business decisions and solving real-world challenges with data, we’d love to hear from you.

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