Senior VP, Data Governance & Standards Product

00002 Citibank, N.A.
London
5 days ago
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A major global financial institution is seeking an experienced Data Leader in Greater London to drive their data and analytics strategies. This role requires a strong product management background with expertise in data governance and analytics. The Data Leader will interface with multiple stakeholders to enhance data-driven decision-making and implement best practices across the organization. A Bachelor’s degree and over 8 years of experience in a comparable role are essential.
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