Senior Data Engineer

Explore Group
London
5 days ago
Applications closed

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Senior Data Engineer - £90,000 + Benefits – Hybrid – London – Football Analytics



Explore Group has been fortunate enough to partner with a scaling start-up on an exclusive basis to support them with the hire of an experienced Senior Data Engineer. As a brand, my client is working closely with prestigious end customers across the sporting world, with a strong presence more specifically in football, cricket and more, enabling them to develop some of the most cutting-edge AI products to help drive accurate & relevant business decisions.


The Role:


My client is now looking to hire a Senior Data Engineer who has a track record in football data analysis to drive integral data optimisation and models.


Requirements:


  • 4+ years experience in a data engineering or data science positions.
  • Must have commercial experience in football data.
  • Develop and optimise data models, data warehouses, and lakehouse architectures to ensure high data quality, performance, and accessibility.
  • Collaborate with cross-functional teams to gather requirements, implement data integration solutions, and ensure alignment with business objectives.
  • Ensure data governance, security, and compliance standards are met through robust data validation, monitoring, and documentation practices.


If you would like to be considered for this position, please apply directly to this post or send your CV to .

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