Energy and Water Data Analyst

Bretton, County of Flintshire
3 months ago
Applications closed

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Job title: Energy and Water Data Analyst

Location: Broughton

Job Type: Contract

This dynamic Energy and Water Data Analyst role offers an exciting opportunity to join a leading organisation and make a significant impact on their sustainability initiatives. The Energy and Water Data Analyst will be responsible for managing the company's energy management system, analysing data, and supporting compliance and infrastructure projects.

As the Energy and Water Data Analyst, you will:

  • Act as the UK resource data expert, ensuring the Energy Management System (EnMS) and associated platforms are configured to manage high-quality data.
  • Perform complex data analysis to identify trends, consumption anomalies, and opportunities for improvement in energy and water usage.
  • 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.
  • Provide specialist water service management and energy data advice to site teams, project teams, and maintenance providers to ensure compliance with current legislation, regulations, and best practices.
  • Support the definition and implementation of energy and CO2 reduction roadmaps, as well as the deployment of company-wide water objectives and targets.
  • Assist in the preparation of Opex and Capex budgets, providing data and costs to support capital investment cases, and support the delivery of capital investment projects.
  • Ensure company compliance through regular audits, including contractor audits, and support the maintenance of environmental standards (e.g., ISO 50001).

    To be successful in this role, the ideal candidate will have a minimum of 5 years' professional experience in the energy/environmental management field, with a focus on large, developed sites and facility management environments. Strong technical expertise in energy and water data management, as well as a proven ability to interpret policy, legislation, regulations, and national codes of practice, are essential.

    If you are interested in this position and would like to know more, please apply with an updated CV and one of our consultants will be in touch.

    Guidant, Carbon60, Lorien & SRG - The Impellam Group Portfolio are acting as an Employment Business in relation to this vacancy

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