Fabric Data Engineer - Hybrid - 75k - Winchester

Winchester
3 months ago
Applications closed

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Fabric Data Engineer - Hybrid - 75k - Winchester

Are you ready to take your data engineering career to the next level?

I'm working with a leading UK consultancy that's driving digital transformation through Microsoft Fabric and the Power Platform. They're looking for a Senior Microsoft Fabric Data Engineer Consultant who's passionate about solving complex challenges and delivering real business impact.

This is an opportunity to join a high-performing team, work on cutting-edge projects, and collaborate with some of the best minds in the industry.

Expert Environment: You'll work alongside accredited specialists and continuously develop your skills in a fast-moving tech landscape.
Impactful Work: Your solutions will automate processes, optimise workflows, and unlock insights that transform businesses.
Agile & Innovative: A culture that values creativity, rapid deployment, and "low-code first" thinking.
Strong Client Base: Exposure to diverse sectors and challenging projects from day one.What You'll Be Doing

Designing end-to-end Microsoft Fabric architectures using the Medallion pattern.
Building metadata-driven ingestion pipelines and optimising Delta Lake performance.
Writing advanced PySpark/Spark SQL notebooks for large-scale transformations.
Developing semantic models for enterprise reporting and enabling Direct Lake.
Leading client workshops and guiding technical decisions.
Implementing CI/CD pipelines with Azure DevOps/GitHub Actions and enforcing governance best practices.Benefits

Competitive salary up to £75,000 plus benefits.
Hybrid flexibility (2-3 days in office).
Work on high-impact projects with cutting-edge Microsoft technologies.

What We're Looking For

Hands-on experience with Microsoft Fabric workloads: Lakehouse, Data Factory, Pipelines, Notebooks, Delta Lake, Eventstreams, Semantic Models.
Advanced PySpark/Spark SQL skills and strong data engineering fundamentals.
Integration experience with Dynamics 365, Dataverse, Business Central.
CI/CD expertise with Azure DevOps/GitHub and Git version control.
Strong Power BI modelling and DAX fundamentals.Certifications

Essential: DP-600, DP-700, DP-203Interviews taking place, if this opportunity interests you. Apply now

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