Data Analyst

Shurton
1 day ago
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NRL is currently recruiting a Data Analyst to join one of our leading clients in their Nuclear Power Engineering and Technical Services team. This is a fantastic opportunity to be part of a high-performing project team within a critical sector, supporting the delivery of complex engineering works on a key site within the UK’s nuclear fleet.

Role- Data Analyst

Location- Bristol

Salary- £44,000 per annum

Education, Experience and Skills:

Proficiency across Microsoft Office tools. 
Experience with data visualization (Power BI preferred) and working with databases/reporting tools. 
Understanding of linking data sources and reconciliation techniques. 
Strong analytical skills, numeracy, and the ability to communicate findings clearly (written and verbal). 
Ability to work independently, manage multiple priorities, and collaborate effectively with a range of stakeholders. 

What we’re looking for:

Technically competent (Power BI, Excel, basic SQL)
Analytical and detail‑driven
A clear communicator
Reliable, disciplined, and comfortable working independently
Mature enough to handle restricted data and compliance requirements
Able to work with multiple stakeholders in a regulated/complex environment 

The NRL Group connect global companies with the right people to bring engineering projects to life. Supporting contracting companies with energy transition plans and working with our clients to create a cleaner, greener future.
 
We welcome applications from every walk of life and are committed to diversity within the industries we support, as a certified Inclusive Recruiter and Armed Forces friendly employer. You can ensure you stay safe when job searching online by visiting the JobsAware website

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