Data Engineer

Denholm Associates
Auchterarder
1 day ago
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Denholm is delighted to be partnering one of Scotland’s leading luxury brands in their search for an experienced Data Engineer on a contract basis to help build a trusted data platform from the ground up.

  • Duration: 12 Months
  • Hybrid – 2-3 days a week onsite in Auchterarder, Perthshire

This is a greenfield opportunity where the platform isn’t yet built. You’ll play a pivotal role in shaping the data roadmap, building strong relationships across the business, and ensuring data is reliable, trusted, and fit for decision-making, right up to Ex-Co level.

What you’ll be doing

  • Executing a clear data roadmap and raising engineering standards
  • Designing and building ELT/ETL pipelines into Snowflake and Oracle using SQL, Python and modern orchestration
  • Delivering well-modelled, business-ready datasets and certified Power BI assets
  • Owning platform operations: monitoring, observability, SLAs, performance tuning and cost optimisation
  • Managing data quality, governance, security and GDPR-aligned controls
  • Partnering closely with business leaders to turn data into measurable outcomes
  • Supporting day-to-day operations: data checks, logs, automations, reporting and communications
  • Managing suppliers and standardising integration patterns
  • Publishing tailored datasets (not raw data) to meet leadership needs

What we’re looking for

  • Strong hands-on engineering skills: advanced SQL (Snowflake & Oracle) and solid Python
  • Experience with dbt, Airflow, ADF, Matillion (or similar) and Git-based CI/CD
  • Deep Power BI experience (semantic models, DAX optimisation, governance)
  • Comfortable across hybrid/on-prem and cloud data estates
  • A solutions-focused, collaborative communicator who takes real pride in their work

This role suits someone who enjoys building from scratch, influencing at all levels, and applying engineering excellence in a customer-centric environment.

Please apply here

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