Data Engineer

Hydrogen Group
Burton-on-Trent
10 months ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

£50,000-£68,000 per annum

Hybrid role with 3 days per week in Burton-on-Trent office



Seeking a skilled Data Engineer to deliver the data engineering roadmap and help drive data maturity across the organisation. You'll be responsible for the end-to-end data engineering lifecycle from ingestion and transformation to delivery while ensuring data solutions are scalable, secure and aligned with business goals.




Key Responsibilities:

· Design, build and maintain robust data pipelines and transformation logic

· Own data engineering processes across ELT/ETL, batch, streaming, and APIs

· Collaborate with cross-functional teams to understand and deliver on business needs

· Ensure regulatory compliance, data quality, and pipeline documentation

· Optimise the central data platform in partnership with architecture and analytics teams

· Champion best practices in data engineering, MLOps, and cloud environments




What You'll Bring:

· Expert in SQL, Python, and modern data engineering frameworks

· Strong knowledge of Azure, Lakehouse architecture, and Delta/Iceberg formats

· Experience with Azure DevOps, data modelling, and cloud infrastructure

· Excellent communication skills and stakeholder engagement experience

· Proven track record of delivering scalable data solutions in a fast-paced environment

...

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