Lead Data Engineer

S.H.I.F.T
London
19 hours ago
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Job Description

Job description

S.H.I.F.T Talent has partnered with an IT Consultancy looking for Data Engineers.


As a Lead Data Engineer you'll play a pivotal role in helping public sector organisations become truly data-lead, by equipping them with robust data platforms. You'll also join a data team on its mission to get data knowledge and skills out of silos and embedded into delivery teams. You'll also help implement efficient data pipelines & storage.


Key responsibilities

  • Define, shape and perfect data strategies in central and local government.
  • Help public sector teams understand the value of their data, and make the most of it.
  • Establish yourself as a trusted advisor in data driven approaches using public cloud services like AWS, Azure and GCP.
  • As employee growth is a huge focus here, we would expect you to contribute to our recruitment efforts and take on line management responsibilities.


Skills, knowledge and expertise

We are looking for candidates with a range of skills and experience, please apply even if you don’t meet all the criteria as if unsuccessful we can provide you with feedback.


  • Proficiency in Git (inc. Github Actions) and able to explain the benefits of different branch strategies.
  • Strong experience in IaC a...

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