SAP Master Data Architect: Lead Enterprise Data Strategy

Tata Consultancy Services
Leeds
1 month ago
Applications closed

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A leading global consulting firm in the UK is seeking an experienced SAP Master Data Architect to shape enterprise data strategies. This role involves designing and implementing robust SAP Master Data architecture, contributing to large-scale transformation programs across various industries. Ideal candidates should possess strong communication skills, industry experience, and a proven track record in SAP S4 HANA, procurement, and inventory management. The firm offers a competitive salary package with various benefits for career growth.
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