SAP BW Data Engineer

Recruit with Purpose
Worcester
2 days ago
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Do you want to work at a purpose driven company and help take their SAP analytics estate to the next level?

If you are a SAP BW Data Engineer who wants complex problems, modern tooling and work that matters, then this would be an excellent opportunity for you.

This role is at a large Housing Association in Worcester, so what you build will help keep people housed and supported. You will join a team where your data engineering expertise won’t just be appreciated, it will shape the ways of working and serve communities.

As SAP BW Data Engineer, you will be part of the Data Management team, playing a key role in developing and managing data engineering capabilities while helping the organisation make the most of its data to support business goals. You will report into the Head of Data Engineering, with a mandate to design, build and modernise SAP-centric data pipelines across BW/4HANA, Datasphere and SAC, while setting the standard for governance, reliability and performance.

You don't need experience in the very latest tech like Datasphere/SAC as the compnay will be able to train you up. This is an excellent opportunity to learn and grow in a role.

In short: you’ll define what good looks like for SAP data engineering.

This is a hands-on, senior engineering role with real influence over:

  • Designing and delivering scalable, secure SAP and non-SAP data pipelines
  • Owning the end-to-end ETL lifecycle
  • Building and optimising solutions across SAP BW ( & Datasphere, SAC and HANA - you will be trained on the latest tech!)
  • Supporting enterprise-grade data modelling and analytics performance
  • Partnering with Architecture, Governance, BI and the wider business
  • Representing Data Engineering in technical and architectural forums

You’ll be a great fit as SAP BW Data Engineer if you have experience in the following:

  • Hands-on experience with SAP BW
  • ABAP Programming
  • Experience integrating SAP and non-SAP data sources.
  • A solid grounding in data governance, security and quality.

Why could this be a great role for you?

  • This role holds genuine real-world impact at national scale
  • A senior, trusted engineering position, not a support role
  • Strong investment in data maturity and capability
  • A genuinely inclusive, purpose-led organisation

This is a hybrid role with some expectation to be on-site at their head office in Worcester.

The SAP BW Data Engineer salary on offer is circa £74,000 with some great benefits.

Please apply to this advert, reach out to me on LinkedIn, or contact me at to learn more.

If you don’t have an updated CV, no problem, send what you have, and we’ll take it from there.


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