Xpertise Recruitment | Senior BI Analyst

Xpertise Recruitment
Birmingham
1 year ago
Applications closed

Senior BI Analyst - Consultancy (In-house) - Up to £50k (Remote but you must be currently living in the United Kingdom)


Xpertise Recruitment is seeking a senior BI analyst to join an established consultancy but not as a consultant. You will be working for their in-house team.


Why should you want to join?

  • They are investing heavily in their internal data function and have recently hired an analytics manager and a BI analyst.
  • Have the opportunity to lead Power BI development and implementation.
  • Mentor junior team members.
  • Use all the latest technology and collaborate with the data science teams to integrate predictive models.
  • Regularly interact with the senior leadership team.
  • Fully remote position.
  • They have all the benefits you would expect from a great company, including a bonus scheme, loads of holidays, a good pension, private medical, workshops and loads more.


For more information, job specs or an initial conversation, please apply with an updated CV.

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