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Data Engineer (Azure)

Peterborough
3 weeks ago
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A growing data team is looking for a Data Engineer to design and deliver high-quality data pipelines that support analytics, reporting, and operational decision-making.

What you’ll be doing
Building and maintaining ETL pipelines
Orchestrating workflows using Azure Data Factory (ADF)
Developing clean, reliable data models and transformations
Improving data quality, observability, and performance
Working with stakeholders to define data requirementsWhat we’re looking for
Strong ETL development background
Hands-on experience with ADF
Solid SQL (queries, optimisation, stored procedures)
Experience with Azure data services (Data Lake, Databricks, Synapse is a bonus)
Ability to work independently and solve data engineering problems end-to-endNice to have
Python for transformations
CI/CD exposure
Power BI or BI tooling awarenessWhy this role?
Modern Azure data stack
Real ownership of pipelines and design
Supportive team environment with room to grow
HYBRID - NO SPONSORSHIP AVAILABLE

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