Data Engineer

Singular Recruitment Careers
London
7 months ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer


Data Engineer(one day a week in the central London office)

Sports Analytics

This role is a unique opportunity for aData Engineerto combine technical challenges with creativity in a collaborative, high-standard work environment.

By joining this team, youll not only be part of a creative and open work culture focused on innovation and excellence but also have the chance to work with and collaborate with some of the most well-known footballers in the industry.

This position offers significant opportunities for professional growth within sports analytics and the potential to impact sports performance through advanced technology, making it an ideal setting for those passionate about leveraging cutting-edge technology to make meaningful contributions in the world of sports analytics.

Key responsibilities for the role of Data Engineer include:

  • Design, construct, install, test, and maintain highly scalable data management systems.
  • Ensure systems meet requirements and industry practices for data quality and integrity.
  • Integrate data management technologies and software tools into existing structures.
  • Create data tools to support sport dat...

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