Power BI Reporting Data Analyst (Project Controls) - PACE Global

Jobster
Manchester
1 day ago
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Power BI Reporting Data Analyst (Project Controls)

£55‑65,000


Bring your data storytelling skills to one of the UK’s most critical infrastructure programmes. Join a high-performing Project Controls team where your Power BI expertise will drive clarity, action, and better decision‑making.


Are you confident…

  • Working with complex project data from cost, schedule, and risk?
  • Creating dashboards that cut through the noise and deliver insight?
  • Collaborating with PMO, planners, and execs to shape project performance?

What You’ll Be Doing:

  • Developing interactive Power BI dashboards for cost/schedule/risk reporting.
  • Automating reporting processes across live and portfolio projects.
  • Supporting the Project Controls team with bespoke analysis and performance insight.
  • Helping embed data governance and quality control processes.

What We’re Looking For:

  • Advanced Power BI and DAX skills.
  • Strong data modelling and integration from tools like P6, Excel, SAP, ARM or similar.
  • Experience supporting project delivery teams in infrastructure, energy or defence.
  • Someone who can simplify the complex – and challenge where needed.

This is your chance to shape how performance is tracked and shared on major UK programmes.


Ready to raise the bar in reporting?


Apply now or speak to Marion Keating – the recruiter of choice in Project Controls.


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