Contract SAP S/4HANA Data Engineer – ERP & Data Warehouse

AND Digital Limited
Manchester
2 weeks ago
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A tech company dedicated to digital delivery seeks a Contract Data Engineer to join their team in Manchester. This role will support the ERP Consolidation programme, focusing on integrating the new SAP S/4HANA ERP solution with the Data Warehouse and other systems. The ideal candidate should have strong SAP S/4HANA experience and the ability to design robust data integration patterns. If you're passionate about closing the digital skills gap, apply now to be part of this innovative firm.
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