Senior Data Engineer

Experis UK
Burton-on-Trent
2 months ago
Applications closed

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Job Description

Lead/Senior Data Engineer

Hybrid – Burton-Upon-Trent (1-2 days per week in office)

Salary: Up to £70k + discretionary 10% bonus

Permanent


We are partnering with a leading and innovative organisation to help recruit a Senior Data Engineer to join their evolving data team. This role provides a unique opportunity to work with cutting-edge cloud data platforms, supporting the delivery of high-quality, reliable data solutions while contributing to automation and platform enhancements.


What You’ll Be Doing

As a Senior Data Engineer, you will play a key role in building, optimising, and maintaining cloud-based data solutions. Responsibilities include:

  • Developing and maintaining end-to-end data pipelines using Azure services such as Data Factory, Databricks, Synapse, and Data Lake.
  • Designing and optimising data models, warehouses, and lakehouse architectures to support analytics and reporting requirements.
  • Ensuring data governance, security, and compliance across cloud platforms, implementing access controls, encryption, and monitoring.
  • Monitoring data processes, identifying performance bottlenecks, and delivering improvements to ensure reliable and accurate data availability.
  • Mentoring junior engineers and sharing knowled...

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