Hybrid Data Engineer - Insurance Analytics & Lakehouse

Finitas
City of London
1 week ago
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A leading provider of insurance in the City of London is seeking a Data Engineer to develop and maintain strategic data platforms. The role focuses on enhancing underwriting analytics through Data Lakehouse while collaborating with various stakeholders. Candidates should have hands-on experience with Azure services, strong SQL and Python skills, and an insurance background. This position offers a competitive salary of up to £90,000 and requires 3 days in the office per week.
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