Data Engineer - Oracle DWH, ETL/ELT tools, Star Schema etc

Mills Goodwin Talent Network
Edinburgh
2 days ago
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Data Engineer - Oracle DWH, ETL/ELT tools, Star Schema etc; Edinburgh (EH12) & home working too; £70-75k + bonus, 15% pension, 28 days holiday etc.

Experienced Data Engineer/Data Warehouse Developer, is sought for this dynamic, finance org with a £4m+ turnover, over 700k external customers & c1400 staff; who, are re-platforming & improving their data assets & developing new ones, as well as transforming how the business uses it's data.

The Data Engineer will be key to the D&A team, able to turn data into insights to flow consistently across the business and shape their customer focused culture & evidence-based decision making.

You have the important task of automating and integrating multiple data systems, and developing solutions for reliable, seamless reporting to serve multiple stakeholders.

Your solutions will underpin data integrity and you will support teams who provide forecast & predictive models, develop customer segmentation, audience personas, and journey maps.

You will have a proven track record of:

  • building a data warehouse using an ETL/ELT tool ideally Oracle ODI
  • Star schema/dimensional modelling ideally familiar with Snowflake
  • Good knowledge of standard data formats (XML, JSON, csv, etc)
  • Proven experience of delivering BI solutions for business requirements

Any experience of building Oracle OBIEE/OAS reports & da...

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