Data Analyst - PE-backed scale-up business

Ethos BeathChapman
London
5 days ago
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Our client is a PE-backed, scale-up business, growing organically and via acquisition.


**Please note visa sponsorship is not/will not be available**. The client will only consider candidates who are eligible to work in the UK on a permanent basis.


They are currently hiring for a Data Analyst to help improve external client reporting - moving them from manual/Excel based reporting to an automated solution using PowerBI.


This role is "behind the scenes" but could evolve to become client facing in due course. Once the initial project is completed, further work could include enhancements via machine learning and AI.


Working as part of a small but growing team, they are looking for someone who:


  • Has experience of automating and streamlining external client reporting
  • Has strong skills in PowerBI and ideally other visualisation/dashboarding tools
  • Has experience of designing & delivering dashboards
  • Has experience of financial reporting - costs, profit etc.
  • Is able to work in a fast-paced environment
  • Is self-motivated and enjoys autonomy
  • Has an understanding of data security concerns


The company is based in central London and has a policy of 4 days per week in the office.

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