SAP Data Engineer

RedRock Resourcing
Worcester
3 months ago
Applications closed

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This range is provided by RedRock Resourcing. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.


Client Delivery Lead at RedRock Resourcing

Worcester | Hybrid


Join a leading non-profit organisation dedicated to making a real difference in people’s lives.


As a Data Engineer, you’ll play a key role in enhancing enterprise data capabilities across a complex SAP and non-SAP landscape.


Working within the Data Management Team, you’ll help design, build, and scale a modern data platform that underpins strategic decision‑making and operational excellence.


This is an exciting opportunity to champion modern data engineering practices, collaborate with a range of technical and business teams, and shape the future of data initiatives across the organisation. You’ll be part of an inclusive, purpose-driven environment where your expertise will have a tangible impact.


Key Skills & Experience:



  • Proven experience managing end-to-end ETL lifecycles in complex environments
  • Strong knowledge of SAP data structures, LSMW uploads, and analytics roadmaps
  • Expertise in modern data engineering frameworks and scalable architectures
  • Excellent organisational, planning, and stakeholder engagement skills
  • A collaborative mindset with a focus on innovation, governance, and performance

Please apply for full details!


Seniority level

  • Mid-Senior level

Employment type

  • Full-time

Job function

  • Information Technology and Engineering

Industries

  • Non-profit Organizations
  • IT Services and IT Consulting


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