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Lead Data Engineer

Cathcart Technology
City of London
3 days ago
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I'm working with a world‑class technology company in Edinburgh to help them find a Lead Data Engineer who will join their team in a hybrid setting with flexible office days for the right person.


Responsibilities

  • Hands‑on design and build scalable data platforms and pipelines that enable advanced analytics, machine learning and business‑critical insights.
  • Shape the technical vision, set best practices and make key architectural decisions that define how data flows across the organisation.
  • Collaborate closely with engineers, product managers and data scientists to turn ideas into high‑performing, production‑ready systems.
  • Mentor teammates, drive standards across the team and influence the overall data strategy.

Qualifications

  • Strong background in data engineering with experience building modern data solutions.
  • Proficient with technologies such as Kafka, Spark, Databricks, dbt, and Airflow.
  • Experience with cloud platforms (AWS, GCP, or Azure).
  • Confident coding in Python, Java or Scala.
  • Deep understanding of how to design data systems that are scalable, reliable and built for the long haul.

Benefits and Work Environment

  • Competitive salary (exact figure discussed prior to application).
  • Great benefits package including uncapped holidays and multiple bonuses.
  • Central Edinburgh office, short walk from Haymarket train station.
  • Hybrid working model (ideally 1–2 days in office) with flexibility available for the right candidate.

If you are ready to step into a role where your technical leadership will have a visible impact and enable data systems to continue scaling, please apply or contact Matthew MacAlpine at Cathcart Technology.


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