Senior Data Engineer

Fruition Group
City of London
6 days ago
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Data Engineer

Central London (1 day a month)

Up to £80,000 (depending on experience) + excellent benefits package

My client are a start-up created within and as part of a large wealth management firm, so you have all the benefits of a start-up environment without the instability and inconveniences!

It's an exciting environment where you'll be working with a cutting-edge tech stack creating data-driven fintech software for major financial firms.

What will you do in the role?

You'll be part of a high-quality Data Engineering team working with the latest tech to integrate my client's new, bespoke, in-house wealth management software with a queue of new clients while starting to plan for V2, alongside contributing your own ideas for future functions and improvements.

You'll have a specific focus on CI/CD pipelines and the deployment process, reviewing and improving how code and products go to production.

You'll have experience of working with business stakeholders and business logic - this isn't a straight up Data Engineer position.

What are the key skills / experience you'll already have?

  • 6+ years commercial experience in Data Engineering
  • SQL Server
  • Spark SQL
  • Strong Python coding skills
  • PySpark
  • Azure experience including Azure SQL, Data Fact...

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