Data Engineering Manager — Lead Cloud Data Platform

McGregor Boyall
Manchester
3 days ago
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A global asset management firm is seeking a Data Engineering Manager to lead a team of data engineers in Manchester. You will drive the delivery of scalable, cloud-based data solutions and ensure data quality and governance. The ideal candidate has strong leadership skills, with experience managing teams of 5 or more engineers, and expertise in data modelling and warehousing. This role offers a competitive salary and an extensive package, with a hybrid working arrangement.
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