Data Engineer

Bright Purple Resourcing
Auchterarder
1 week ago
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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 youll 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)
  • ...

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