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Data Manager, Master Data Governance (12–18m Contract)

Interface Recruitment UK
Leeds
1 day ago
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An established industry player is seeking a Data Manager to lead a critical project involving the transition to a new financial system. This role is pivotal in managing master data and ensuring data quality across business processes. You will collaborate with finance teams and project managers, guiding a team of data stewards while implementing best practices in data management. This contract position offers a unique opportunity to contribute to a major internal project during a period of global expansion. If you thrive in dynamic environments and have a passion for data, this role is perfect for you.
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