Hybrid Asset & Data Governance Manager

Telent Technology Services Limited
Birmingham
3 days ago
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A technology services firm is seeking an Asset Manager to ensure accurate and complete product and configuration data across systems. This role focuses on managing the Product Catalogue, implementing governance processes, and providing analytics for informed decision-making. The successful candidate will collaborate with internal and external stakeholders to drive continuous improvement in asset and data management. A strong background in data quality and analytics tools like Qlik Sense is crucial for success.
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