Senior Home Pricing & Data Analytics Specialist

Direct Line Group Careers
Bristol
4 days ago
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A leading insurance provider is seeking an analytical professional to join their Risk Modelling team in Bristol. This role involves developing statistical models for predicting claims, utilizing data science techniques for insights, and ensuring regulatory compliance. Ideal candidates have 3+ years of experience in general insurance analytics, strong problem-solving skills, and proficiency in tools like SQL and Python. The position offers a hybrid working model and a comprehensive benefits package, recognizing the need for work-life balance.
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