GCP Data Engineer - 11 months+, Remote (Europe)

Global Enterprise Partners
Birmingham
1 month ago
Applications closed

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Hi Network!


I have a remote opportunity with one of our leading FMCG clients. We're looking for a Google Cloud Data Engineer who can do much more than just write code—you’ll be solving complex problems and shaping data solutions that drive business decisions.


What we're looking for:

  • Google Cloud Platform expertise
  • Strong skills in Python (data ingestion) and BigQuery
  • Solid understanding of Data Modeling
  • 3-5 years of experience in data engineering
  • Experience with SAP data extraction
  • Ideally, exposure to Supply Chain environments and/or data warehousing
  • A critical thinker and problem solver, not just a coder

Location: Europe (Full Remote)

If you have the technical skills and the ability to understand business requirements, this could be the perfect role for you!


📩 Interested? Send me your updated CV or reach out for more details. And if you know someone who fits this profile, feel free to share this post!


Let op: vacaturefraude

Helaas komt vacaturefraude steeds vaker voor. We waarschuwen je voor mogelijke misleiding:



  • Wij zullen nooit via WhatsApp of in een videogesprek vragen om jouw persoonlijke gegevens (zoals een kopie van je ID, bankgegevens, of BSN).
  • Twijfel je over de echtheid van een vacature of contactpersoon? Neem dan altijd rechtstreeks contact met ons op via de officiële contactgegevens op onze website.

Important: job fraud

Unfortunately, job fraud is becoming more common. Beware of such scams:



  • We will never ask for personal information (such as a copy of your ID, bank details, or social security number) via WhatsApp or during a video call.
  • If you’re unsure whether a vacancy or contact person is legitimate, please reach out to us directly using the official contact details on our website.


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