Senior Data Engineer

Yolk Recruitment Careers
Cardiff
3 months ago
Applications closed

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Senior Data Engineer

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Senior Data Engineer

Senior Data Engineer


Senior Data Engineer - Cardiff / Hybrid - £65,000 - £75,000 + benefits

Yolk Recruitment are proud to be supporting a leading global business investing heavily in its data and analytics capabilities. They're looking for a Senior Data Engineer to help shape the next generation of their data platform - leading technical design, mentoring others, and driving best practice.

This is a great opportunity for an experienced data professional who enjoys solving complex challenges, optimising large-scale systems, and influencing strategy within a collaborative, forward-thinking team.

What you'll be doing:

  • Lead the design and implementation of scalable, high-performance data architectures and pipelines.
  • Define and enforce best practices for data engineering, including coding standards, testing, and documentation.
  • Mentor and guide engineers, fostering collaboration and technical excellence.
  • Translate complex business requirements into reliable, well-structured data solutions.
  • Optimise data workflows for performance, reliability, and cost efficiency.
  • Drive adoption of modern data tools and technologies across the organisation.
  • Ensure robust data governance, security, and compliance.
  • Troubleshoot and resolve complex data issues, delivering long-term solutions.
  • Work with analytics, product, and engineering teams to s...

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