Global Data Governance & Strategy Lead

Capgemini
Manchester
2 weeks ago
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A global consulting firm in Manchester is seeking a senior Data Management Lead responsible for defining and implementing enterprise-wide data governance and quality strategies. With over 15 years of experience, you will lead large-scale data management implementations, ensuring compliance with regulations and driving business growth through innovative solutions. The role requires strong leadership, communication skills, and proficiency in data management tools. A hybrid working model is expected.
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