Data Engineer

Noir
Newcastle upon Tyne
3 days ago
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Data Engineer - FinTech - Newcastle

(Tech stack: Data Engineer, SQL, Python, AWS, Git, Airflow, Data Pipelines, Data Platforms, Programmer, Developer, Architect, Data Engineer)

Our client is a trailblazer in the FinTech space, known for delivering innovative technology solutions to global financial markets. They are expanding their engineering capability in Newcastle and are looking for a talented Data Engineer to join their team. This role will focus on building and optimising systems that make complex datasets accessible, reliable, and valuable for the business.

As a Data Engineer, you will take responsibility for the development of high-quality pipelines that process and manage large volumes of data from a range of external and internal sources. You'll play a key role in enhancing and maintaining their central data platform, ensuring the smooth delivery of information that supports investment decision-making. Working closely with stakeholders across the business, you'll help shape how data is accessed, tested, and leveraged to maximise value.

The successful candidate will bring:

  • 3-6 years of relevant experience working as a Data Engineer (or in a closely related role).
  • A 2:1 or above in Computer Science (or related field), ideally from a Russell Group university.
  • Direct experience in the hedge fund sector (essential).
  • Strong ability to design and build data pipelines that integrate mul...

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