Energy & Water Data Analyst

Broughton
2 months ago
Applications closed

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We're recruiting an Energy & Water Data Analyst on an initial 11-month contract for our client. Based in Broughton, you'll join the FMRE UK Energy & Sustainability team, playing a key role in managing energy and water data across the UK estate. You'll use your analytical and technical skills to improve data quality, ensure compliance, and turn complex consumption information into clear, actionable insights that support the organisation's ambitious 2030 sustainability goals.

Role: Energy & Water Data Analyst
Pay: Up to £40 per hour Via Umbrella
Location: Broughton
Contract: Monday - Friday 35 Hours per week, 11 Months contract
IR35 Status: Inside
Security Clearance: BPSS

Responsibilities

Act as the UK resource data expert, ensuring the Energy Management System (EnMS) and associated platforms are robustly configured to structure and manage
Perform complex data analysis (e.g., regressions, baseload analysis) across the network to identify trends, consumption anomalies, failures, and opportunities for improvement in Energy and Water usage. Support weekly, monthly and annual reporting obligations.
Define, create, and publish meaningful reports for operational use and management review, focusing on the development and monitoring of relevant Energy Performance Indicators (EnPIs) and water-related KPIs.
Continuously monitor and highlight failures or out-of-condition performance, implementing chosen remedial actions to ensure the integrity of the data is available in a timely manner.
Provide specialist Water service management and Energy data advice to FMRE site teams, project teams, and maintenance providers to ensure statutory and company compliance with current legislation, regulations, and best practices.
Support the definition and implementation of Energy and CO2 reduction roadmaps and assist in deploying company-wide water objectives and targets.
Assist in the general preparation for Opex and Capex budgets, providing data and costs to support capital investment cases. Support the delivery of Capital Investment projects (for both Energy and Water) from request to handover, including feasibility options appraisal and tender development.
Requirements

Minimum of 5 years' professional experience in the Energy/Environmental Management field.
Expert knowledge of the end-to-end data lifecycle for Energy (E.g., BMS, metering, data transfer solutions).
Experience structuring data trees and using Energy Management Systems (EMS) such as eSight.
Strong understanding of water systems and networks, including methods to reduce consumption (e.g., closed loop, rainwater/greywater harvesting, etc.).
Experience in identifying water infrastructure improvements.
Proven ability to interpret policy, legislation, regulations, and national codes of practice (Water & Energy).
Experience conducting contractor and compliance audits.

If you are interested in applying for this position and you meet the requirements, please send your updated CV to: Natalie Dalkin at Line Up Aviation

Line Up Aviation has carved its own place in the recruitment of Aviation and Aerospace personnel all over the world for more than 30 years. We work with some of the industry's best known companies who demand the highest standard of applicants.

"Follow @LineUpAviation on Twitter for all of our latest vacancies, news and pictures from our busy UK Head Office. Interact with us using the #LineUpAviation tag at anytime! Thank you for your follow

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