Director, Data Governance - Drive Quality & Compliance

Cytiva
Amersham
1 week ago
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A leading life sciences company in Amersham is seeking a Director, Data Governance to establish and execute a data governance strategy. This role is crucial for ensuring data quality and compliance across business systems. The ideal candidate has experience in data governance and data management leadership with a strong understanding of data regulations. This is an on-site position offering an opportunity to make a significant impact in a proactive environment.
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