Data Analyst

York Place
2 weeks ago
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Pertemps are delighted to be working with our public sector client to recruit a Data Analyst on a temporary basis.

Role: Data Analyst
Location: Central Edinburgh (Hybrid)
Hours: Monday to Friday, 36 hours per week
Pay Rate: £20.83 per hour
Duration: Temporary ongoing until July 2026 (with possible extension)
Start Date: Immediate

This is a key analytical role supporting the monitoring, management and reporting of energy and utility data across a large operational estate. You’ll play an important part in ensuring accurate data, robust reporting and effective management of utility consumption and spend.

About the Role
You’ll support the management of utility databases, energy monitoring systems and financial data, helping to identify trends, ensure accuracy and support informed decision-making. Much of the analysis is system-led, with your role focusing on data quality, interpretation and reporting, passing insights to Energy Officers and senior stakeholders.

Key Responsibilities

Maintaining and developing utility and energy databases to ensure accurate monitoring and reporting
Uploading, processing and validating billing and invoice data
Managing and updating meter and site records, identifying data gaps or errors
Coordinating meter reads and contractor appointments
Supporting the management of utility supplies on and off accounts
Operating energy monitoring and targeting systems to analyse consumption trends
Producing reports, graphs and data insights on energy and water usage
Supporting budget monitoring, forecasting and spend tracking
Liaising with suppliers and internal stakeholders to resolve data and invoice queries
Ensuring compliance with relevant energy efficiency and reporting requirements
What We’re Looking For

Strong experience in data analysis or data-focused administrative roles
Excellent Excel skills, including data manipulation, reporting and analysis
Experience working with databases, systems and software platforms
Background in invoice processing or financial data management
Very strong attention to detail and accuracy
Ability to interpret data trends and communicate findings clearly
Confident working independently and managing competing priorities
Strong communication skills with both technical and non-technical stakeholders
Desirable experience includes energy, utilities or sustainability data, reporting or monitoring systems, and exposure to large datasets.

Why Apply?

Opportunity to work in a specialist analytical role with real-world impact
Develop experience in energy monitoring, reporting and compliance
Supportive environment with scope to develop technical and analytical skills
Interested?
If you’re detail-focused, analytical and confident working with data, systems and spreadsheets, apply online today – we’d love to hear from you

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