Data Architecture Lead – AI-Driven Platform & Strategy

Tesco Insurance
Edinburgh
3 weeks ago
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A leading insurance company is looking for a Lead Data Architect to drive transformative data strategies and oversee the delivery of a new data platform. The role involves collaboration with internal teams, external partners, and key stakeholders to ensure data governance and adherence to architecture standards. The candidate must have proven expertise in Data Architecture and Management, with strong leadership and technical skills. This is a hybrid role requiring office attendance twice a week, offering a competitive salary and numerous benefits supporting employee welfare.
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