Experienced Data Engineer / BI Developer Prestigious Client / Home

Integrity Recruitment Solutions
Nottingham
2 months ago
Applications closed

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Senior Data Engineer


Experienced Data Engineer / BI Developer Prestigious Client / Home

An innovative business making a significant impact within their sector, my client is going through a major business / systems transformation programme with a core focus of that being centred around their Data and BI / Reporting.

The client is a reputable international brand and this role is integral to the success of their long-term vision for their Data Strategy, Platform and BI reporting.

Forming part of an established Data team, the successful candidate will have a proven background of designing, delivering and maintaining end-to-end BI solutions.

Experience summary includes:

  • Data warehousing, ideally with Azure
  • Analytical cube development
  • Data processing and ETL
  • Data Modelling
  • Data security
  • Azure Data Factory, Data Lake
  • Microsoft Fabric is a bonus, and will be gained

Please forward your most recent CV to be considered and contact Stewart Lloyd at Integrity Recruitment Solutions via Linked-In or our website.

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