Strategic Leader, Data Governance & Protection (Hybrid)

Agriculture and Horticulture Development Board
Coventry
4 days ago
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A leading public body in agriculture is seeking a Head of Data Governance and Data Protection Officer. This role will involve developing data governance strategies, ensuring data protection compliance with GDPR, and managing a team. Ideal candidates should have strong leadership skills, extensive knowledge of data protection laws, and the ability to foster a culture of data governance. The position offers hybrid working from Coventry and includes multiple employee benefits such as generous leave and a comprehensive pension scheme.
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