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Data Engineer Apprentice

QA
Leeds
2 days ago
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Employer description:

TransUnion is a major credit reference agency, and offer specialist services in fraud, identity and risk management, automated decisioning and demographics. We support organisations across a variety of sectors including finance, retail, telecommunications, utilities, gaming, government and insurance. 

Overview:

TransUnion looking for a Data Engineer Apprentice to join their growing Data Bureau team in Leeds. You’ll play a pivotal role in delivering high-impact data solutions that shape the future of credit and financial services in the UK. You’ll work closely with internal teams to coordinate data appends, ensure quality, and drive process improvements that enhance our service delivery. Alongside, you’ll study for the Level 5 Data Engineer Apprenticeship.

Responsibilities:

  • Manage batch appends through the end-to-end cycle, including file appraisal and feedback, processing, quality control and delivery
  • Collaborate with Client Management and Analytics teams to deliver customer value
  • Work closely with teams in other geographical regions
  • Prioritise effectively to meet client SLAs and business objectives
  • Leverage engineering capabilities to champion transformative improvements to batch processes
  • Use collaborative tools and agile techniques to manage...

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