Lead Data Engineer

Synapri
Nottingham
2 weeks ago
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Synapri are working with a financial services client who are kicking off a 2.5-year transformation program and require a Lead Data Engineer to play a key role in a greenfield implementation project which will involve shaping the platform from the ground up.

You will be leading the design and build of the data estate they will be using going forward, working directly with the Head of Data, and partnering across multiple business areas. Strong backend data engineering experience is essential, and experience with Microsoft Fabric and/or Synapse on Azure would be highly desirable.

The role requires 2 days a week on-site in Nottingham. Salary is £70,000–£90,000 depending on experience.

Requirements:

  • Strong backend data engineering experience (essential)

  • Experience with Microsoft Fabric and/or Synapse and/or DataFactory (highly desirable)

  • Proficiency in Python and/or SQL (desirable)

  • Strong stakeholder management skills, with the ability to work across multiple areas of the business

    If this sounds like something you are interested in apply now

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