Senior Data Engineer

Grupo Orsa
Edinburgh
1 week ago
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Join to apply for the Senior Data Engineer role at Grupo Orsa. Design the future of data with one of Scotland's leading Microsoft Partners.


Location

Edinburgh, Scotland, United Kingdom


Key Responsibilities

  • Working closely with clients to scope, design and deliver data solutions that meet real analytical needs.
  • Designing and building Data Warehouses, Data Lakes and Lakehouse architectures.
  • Developing complex and reliable ETL pipelines.
  • Designing secure, scalable and high-performance data infrastructure.
  • Ensuring solutions are well documented from both a design and support perspective.
  • Acting as a trusted technical voice within the data team and with clients.

What We’re Looking For

  • First-class verbal and written communication skills.
  • Strong interpersonal skills and the ability to work directly with clients.
  • Solid experience with Microsoft technologies — especially Microsoft Fabric, Power BI and SQL Server.
  • The ability to run client workshops, gather requirements and translate them into robust designs.
  • Strong problem‑solving skills and a structured approach to delivery.
  • Coding experience in M, Python or R.
  • A good understanding of SQL and data modelling concepts.

Nice to Have (but Not Essential)

  • Reporting experience with Power BI, Tableau or Qlik.
  • Statistical or analytical modelling experience.

Why Quorum

Quorum is an Employee‑Owned Scottish technology company delivering custom solutions, infrastructure consultancy and managed services to a diverse client base — from financial institutions to fast‑growing businesses. We genuinely invest in our people.


Benefits

  • Highly competitive salary.
  • Contributory pension and private health care.
  • The option to buy and sell holidays.
  • Paid home broadband.
  • An annual personal technical budget.
  • Ongoing training and development, including support from an in‑house Microsoft Certified Trainer.
  • Annual bonuses for Microsoft Accreditations.
  • A collaborative, knowledge‑sharing culture with low staff turnover.
  • Award‑winning family‑friendly working environment.
  • Flexibility that respects life outside of work.

Apply

If you eat, sleep and breathe technology and want to work somewhere your expertise is valued, supported and rewarded — we'd love to hear from you. Apply today and help shape the next generation of data solutions at Quorum.


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