Azure Data Engineer

Rugby
3 weeks ago
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Azure Data Engineer - £70K (£5K Car allowance)

Rugby based - Mostly remote with monthly trips to office

I'm supporting a fast-moving organisation undergoing major data transformation, and they're looking for a skilled Azure Data Engineer to help build modern, scalable cloud data solutions. If you thrive on solving complex data challenges and working with the latest Azure technologies, this one's for you.

What You'll Do

Build and optimise data pipelines, databases and cloud data platforms.

Develop AZure Data Factory / Fabric Data Factory pipelines and robust ETL/ELT processes.

Work with SQL, APIs, event streams and diverse data formats.

Contribute to solutions across data warehouses, lakes, lakehouses and semantic models.

Ensure best practice around data governance, security, privacy and lineage.

Support DataOps practices including CI/CD, monitoring and documentation.

Partner with BI teams to deliver clean, accurate and analytics-ready data.

What You'll Bring

Strong experience as a Data Engineer in cloud and on-prem environments.

Hands-on skills with Azure data services (ADF, Fabric, Databricks, Synapse).

Proficiency in T-SQL and modern data modelling techniques.

Understanding of GDPR/ISO27001 and data governance principles.

Experience with Git, CI/CD or DataOps is a bonus.

Please apply asap if interested - GleeIT

At Gleeson Recruitment Group, we embrace inclusivity and welcome applicants of all backgrounds, experiences, and abilities. We are proud to be a disability confident employer.

By applying you will be registered as a candidate with Gleeson Recruitment Limited. Our Privacy Policy is available on our website and explains how we will use your data

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