Enterprise Data Governance Leader: Build Trust & Compliance

Diageo
London
3 days ago
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A leading global beverage company seeks a Data & Analytics Governance Director to define and enforce its data governance strategy. This role ensures compliance and quality across all data domains by embedding governance practices throughout the organization. Key responsibilities include driving accountability for data ownership and establishing leadership for metadata and stewardship. With over 10 years in data governance and strong leadership skills, the ideal candidate will influence decision-making across the company, ensuring data is treated as a strategic asset.
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