Data Analyst

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Job Description

Join a leading telecommunications company as a Data Analyst!


About the role


We are looking for a detail-oriented Data Analyst, to support compliance with the Telecoms Security Act (TSA) by managing and maintaining an accurate asset portfolio. You will be responsible for maintaining asset data, producing Power BI reports, and supporting technical queries. This role requires strong analytical skills, advanced DAX and Power BI expertise, and the ability to communicate effectively with technical and non-technical teams.


Tell me more, tell me more…


Our client is currently looking for a new recruit to join their Risk & Compliance team, please read on! You can also ask our friendly recruitment team any questions you may have about the role, between 8:30am-5:00pm Monday to Friday.


Shifts: Monday – Friday (37.5 hours per week)


Key Responsibilities:

  • Maintain accurate asset information in collaboration with the TSA Programme and CTO stakeholders.
  • Enter and validate asset data in Master Data Management (MDM) systems.
  • Build and manage Power BI data models, including relationships and DAX calculations.
  • Produce reports and dashboards for stakeholders using Power BI...

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