Data Engineer

WorkGenius Group
Edinburgh
3 weeks ago
Applications closed

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Overview

Onsite: 3 days per week – mandatory / Remote


Start: ASAP


Duration: 12-24 months (extension very likely)


Language: English (must-have)


What you’ll do

  • Build and maintain scalable data pipelines for large, complex datasets
  • Work hands-on with structured & unstructured data across multiple sources
  • Ensure data quality, reliability and performance end-to-end
  • Collaborate closely with AI / ML teams to deliver model-ready datasets
  • Support data governance, lineage and documentation (pragmatic, not bureaucratic)

What you bring

  • Strong Data Engineering background (senior level)
  • Experience with big data environments (e.g. Spark, distributed systems, cloud data platforms)
  • Solid understanding of data modelling, ETL/ELT, pipelines
  • Comfortable working onsite in Edinburgh 3x/week

Nice to have

  • Exposure to ML / AI data workflows
  • Experience with orchestration tools (Airflow / similar)
  • Cloud experience (AWS / Azure / GCP)

What we need

If you are interested and available – or if you know someone you would recommend – I’d be happy to receive your updated CV with a short email incl. contact details to: Joseph@WorkGenius.com.


Please always include:



  • Availability start date
  • Hourly rate (Edinburgh & Remote)
  • A short 2–3 line summary explaining why your background is a good fit for this project


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