Senior Data Engineer (IC)

Harnham - Data & Analytics Recruitment
London
3 days ago
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Senior Data Engineer (IC)

Location: Remote (Office in London and Wiltshire)

Salary: Up to £90,000 + Benefits

This is an exciting opportunity to join a growing organisation and take ownership of a greenfield data platform. You will play a key role in shaping engineering standards, building scalable pipelines, and enabling the analytics and insight capabilities that will underpin the company's next stage of growth.

The Company

They are a well established organisation providing essential services across both public and private sectors. Following significant expansion, they are investing heavily in modern data capabilities to improve operational performance and deliver better outcomes for the communities they support. Their technology function is scaling quickly, giving you the opportunity to make a genuine impact in a developing data environment.

The Role

As a Senior Data Engineer, you will have responsibilities for:

  • Own the delivery of core data products including pipelines, curated datasets, and models.
  • Design and enhance scalable data architecture to improve reliability and performance.
  • Build and maintain ETL and ELT pipelines using SQL, Python, and cloud technologies.
  • Champion engineering best practices including CI/CD, documentation, and observability.
  • Develop trusted datasets ...

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