Senior Data Engineer - Microsoft Fabric

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2 weeks ago
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Senior Data Engineer - Microsoft Fabric

We're looking for an experienced Senior Data Engineer to join a growing team building a modern Microsoft Fabric data platform. This is a hands-on role designing and delivering scalable data pipelines, Lakehouse solutions, and analytics models within the Azure ecosystem.

What You'll Do:

Build and maintain ETL/ELT pipelines and data models in Fabric (Data Factory, Notebooks, Spark)

Write high-performance Spark SQL, T-SQL, Python/PySpark

Manage ingestion, transformation, and loading from multiple sources

Translate stakeholder requirements into scalable technical solutions

Mentor team members and establish engineering standards, security, and governance

Leverage AI-assisted development tools like GitHub Copilot, ChatGPT, and Fabric Copilot

Essential Experience:

Microsoft Fabric & Azure Data ecosystem

Lakehouse architectures & Data Factory

Python, PySpark, Spark SQL

Proven hands-on delivery in this stack

What's on Offer:

Salary: £70,000

Excellent benefits & annual leave package

Strong progression & development opportunities
Opportunity to work on a modern, AI-enabled data platform

Real ownership and influence in a growing, forward-thinking data team

If you're an experienced Data Engineer with solid Microsoft Fabric and Azure experience, we'd love to hear from you

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