Data Engineer

Bright Purple
Auchterarder
4 days ago
Create job alert
Data Platform Engineer (12-month contract - Outside IR35) - Hybrid from Auchterarder.

Bright Purple is working with a well-established organisation undergoing a huge data transformation programme. This is a hands-on Data Platform Engineer role where you’ll take ownership of a modern, business‑critical data platform and help turn data into confident, everyday decision‑making. This opportunity suits someone who enjoys building robust platforms, improving standards, and working closely with stakeholders to deliver data that actually gets used.

Role Overview
  • Design, build and operate a scalable enterprise data platform across cloud and on‑prem environments
  • Develop and maintain reliable ETL/ELT pipelines using SQL and Python
  • Own data modelling and delivery of trusted, business‑ready datasets and Power BI assets
  • Ensure platform stability through monitoring, alerting, documentation and run‑books
  • Implement strong security, governance and GDPR‑aligned controls across the data estate
  • Optimise performance and cost while maintaining clear SLAs
  • Work closely with business teams to translate requirements into actionable data products
  • Support analysts and power users through enablement, best practice and optimisation
Essential Skills
  • Strong experience with SQL (including Snowflake and/or Oracle)
  • Solid Python skills for data engineering and automation
  • Experience with modern data tooling such as dbt, Airflow, ADF, Matillion or similar
  • Hands‑on Power BI experience including semantic models, DAX and deployment pipelines
  • Proven experience running production data platforms, including monitoring and incident management
  • Strong understanding of data security, access control and compliance principles
  • Comfortable working across hybrid environments (cloud and on‑prem)
  • Clear communicator who can work effectively with both technical and non‑technical stakeholders

Bright Purple is an equal opportunities employer: we are proud to work with clients who share our values of diversity and inclusion in our industry.

If you are keen APPLY NOW.


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