Data Engineer

Zealous Agency
Leeds
4 weeks ago
Applications closed

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Data Engineer - AI Analytics and EdTech Developments

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

If you’re looking to join a highly skilled team in a major Leeds consultancy that has had some key client wins then this is the role for you. They are a major UK player with an established data team and several new projects to get stuck into.


You’ll be deployed on to a variety of different and engaging projects with the remit to deliver data focussed solutions. You’ll be part of an ever-expanding team that is becoming a key part of the company’s overall offering. They’re cloud-agnostic and always looking for the right tool to bring the right solution.


If you want to solve complex data problems in a close-knit team, then you’re the right person for this role.


Key skills needed

  • SQL, Python
  • Data warehousing, relational databases, BigQuery
  • Any Kubeflow, Dataflow experience
  • Docker
  • Multi-cloud experience, Azure used mainly, AWS and/or GCP desirable
  • Any ML experience
  • Marketing platform API experience

If you want to find out more and review the full JD then get in touch for more details or drop Ben Greensmith a message on LinkedIn.


Seniority level

Mid-Senior level


Employment type

Full-time


Job function

Information Technology


Industries

Software Development, Data Infrastructure and Analytics, and Marketing Services


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