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SAP EWM Data Architect for Global Warehousing

Lonza
Slough
5 days ago
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A global life sciences leader is seeking a Data & Information Architect to drive master data related to logistics and warehousing. The ideal candidate will design data architecture for SAP S/4HANA and EWM, develop master data processes, and ensure data governance. Strong expertise in EWM and familiarity with S/4 HANA are essential. This opportunity offers an agile and dynamic working culture, as well as career development opportunities.
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