Business Intelligence Analyst

FT Recruitment Group
Aberdeen
3 days ago
Create job alert

Our client, a highly acquisitive business in the Energy sector, is seeking to bring on an experienced Power BI professional as a Business Intelligence Analyst. This position works within a function focused on capturing and effectively using all historical and current data from the various business units.


Duties will include:


  • Understand the business services and resources to support integration and collation of historic/current data for data lake inclusion
  • Add additional analysis as required (i.e. excel uploads) until integration is complete.
  • Set up tailored user interfaces for Operations teams, monthly BUR reporting, corporate review and commercial support
  • Provide Monthly Board reporting analysis and business insights as required for commercial and or Corporate purposes

In return, you will be working for a business that will truly allow you to feel like you are playing a key part in their growth. Candidates must have a strong background in front-end development by preparing Power-BI DashBoards.


If you have experience in a similar role and are keen to find out more, then get in touch!

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