Data Analytics Engineer: Build a Modern Fabric Platform

Mamas & Papas Limited
Huddersfield
3 weeks ago
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A leading baby and nursery brand in Huddersfield is seeking a Data Analytics Engineer to design and build a new Microsoft Fabric data platform. The ideal candidate will have strong skills in data architecture, data modeling, and SQL. This role involves collaborating with external partners and ensuring best practices in data governance and quality. The opportunity includes hybrid working arrangements and attractive benefits such as 33 days of holiday and employer pension contributions.
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