Lead Data Engineer

Harnham - Data & Analytics Recruitment
Manchester
1 month ago
Applications closed

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£90,000 - £110,000

Remote (UK Only)

This is a standout opportunity to take technical ownership of a modern data engineering function. You will shape data architecture, build high-impact ETL pipelines, and play a key role in developing both the platform and the team as they enter their next phase of growth.

THE COMPANY

They are a high-growth online gambling and sports betting platform backed by significant recent investment and focused on delivering an intuitive, mobile-first user experience. The environment is modern, engineering-driven, and designed for people who enjoy solving complex technical problems in a fast-moving setting.

THE ROLE

As a Lead Data Engineer, you will take charge of a Data Engineering team focused on data ingestion and modelling.

Specifically, you can expect to be involved in the following:

  • Leading the design, build and optimisation of ETL pipelines and ingestion frameworks.
  • Owning core data engineering solutions across modelling, transformation and orchestration.
  • Acting as a technical lead while providing light people leadership to a growing team.
  • Collaborating closely with stakeholders to shape data architecture and best practice.
  • Driving high coding standards and contribute to long-term platform scalability.

SK...

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