Data Analyst - Energy & Water

Meritus Talent
Buckley
1 day ago
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Energy & Water Data Analyst

Location: Broughton (with travel to UK sites)Rate: Up to £40 per hour (Umbrella)Clearance: BPSS+ (British Nationals only)Duration: Until 25 November 2026Working Pattern: 35 hours per week, 4.5-day week

We're working to find an experienced Energy & Water Data Analyst to join a Facilities Management & Real Estate (FMRE) Energy & Sustainability team. This specialist role plays a key part in managing the end-to-end Energy and Water data lifecycle across the full UK property portfolio, supporting compliance, reporting, and key sustainability projects.

The Role

You'll act as the UK expert for Energy and Water data systems, ensuring accurate and high-quality information flows from metering and BMS through to dashboards, reports and compliance outputs. You'll analyse consumption data, identify anomalies, highlight opportunities to improve performance, and support the delivery of sustainability targets.

The position also supports Opex and Capex projects, helping to build investment cases for energy and water infrastructure improvements, and ensuring compliance with relevant legislation and environmental standards, including ISO 50001.

This is a highly collaborative role, working with site teams, maintenance providers, senior stakeho...

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