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Data Engineer

Harrington Starr
Newcastle upon Tyne
2 weeks ago
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This range is provided by Harrington Starr. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.

Business & Recruitment Consultant | Forging World-Class Partnerships With FinTech Companies | Connecting Top Data, AI & ML Engineers Talent Across…

Data Engineer – Newcastle | Finance Sector

I’m currently partnered with a leading financial firm building a new data capability in Newcastle. This is an excellent opportunity to join a high-calibre team at an early stage, helping to shape the data infrastructure behind a world-class investment business.

We’re looking for an experienced Data Engineer who thrives on solving complex problems, building scalable data pipelines, and working in a fast-paced, collaborative environment.

Responsibilities:

  • Design and develop advanced data pipelines from multiple sources
  • Enhance, test, and maintain the central data platform
  • Ensure data accuracy, reliability, and accessibility for investment teams
  • Collaborate with internal stakeholders to drive innovation and efficiency

Requirements:

  • 3–6 years of experience in Data Engineering or a related role
  • Strong skills in Python, SQL, AWS, Git, and Airflow
  • Proven ability to improve data quality and system performance
  • Excellent communication and problem-solving skills
  • Minimum 2:1 degree from a Russell Group or Ivy League university in Computer Science or a related field
  • Experience within a hedge fund or financial data environment is essential

If you’re a motivated Data Engineer looking to make an impact within the financial sector, get in touch to learn more.


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