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Data Engineer - Fabric - Azure - London - Hybrid - 70k

Brentford
1 week ago
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Data Engineer - Microsoft Fabric - Azure - London - Hybrid - 70k

A well-established multinational organisation is undergoing a major data transformation, moving from legacy systems to a modern Microsoft ecosystem built on Azure and Fabric.

We're looking for a Data Engineer with hands-on Microsoft Fabric experience to lead this migration, design scalable architecture, and support analytics, forecasting, and AI enablement.

Key Responsibilities:

Spearhead the migration to Microsoft Fabric
Build robust data pipelines using OneLake, Dataflow and Data Factory
Deliver full-stack data engineering solutionsWhat You'll Bring:

Proven experience in BI or Data Engineering roles
Strong skills in Microsoft Fabric and Azure Data Services
Solid knowledge of SQL and Power BI
Experience with data migration and modern data platformsWhat's on Offer:

Competitive salary up to £70,000 (DOE)
Hybrid working - just 2-4 days per month onsite in London
A pivotal role in a high-impact transformation project
Supportive, flexible, and collaborative team cultureInterviews are happening now - don't miss out

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