Metering Data Analyst

Old Birtle
5 days ago
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Metering Data Analyst
Bury (Greater Manchester)

Up to £28,000

We are currently recruiting for a Metering Data Analyst to join a growing and well-established energy supplier based in Bury. This is a fantastic opportunity to join a business with ambitious growth plans, a strong reputation in the market, and a genuinely supportive, people-focused culture.

The Role
This position sits within the metering team and will focus on the management of metering data, industry processes, and stakeholder relationships. You’ll play a key role in ensuring accurate meter data, supporting installations and exchanges, and resolving queries efficiently to maintain a high level of service.

This is a fast-paced, detail-oriented role where strong organisation and communication skills are essential.

Key Responsibilities

Manage meter and AMR installations, exchanges, removals, and associated data flows
Ensure all metering data is accurate and aligned across internal and industry systems
Source and manage Meter Asset Manager (MAM) appointments and updates
Investigate and resolve meter data discrepancies and issues
Handle meter reading rejections and ensure timely resolution
Liaise with customers, suppliers, and third parties to resolve queries
Support AMR and Smart meter rollout initiatives
Ensure meter readings are obtained and submitted within required timeframes
Process industry file flows to maintain accurate supply point data
Produce regular and ad hoc reporting
Deliver a high level of customer service across internal and external stakeholders
About You

Strong verbal and written communication skills
Highly organised with the ability to prioritise workload effectively
Excellent attention to detail and accuracy
Proactive mindset with the confidence to challenge and suggest improvements
Flexible and adaptable approach
Strong relationship-building skills

Desirable Experience

Previous experience within an energy supplier or operations environment
Working knowledge of MS Office, particularly Excel
Experience working with third-party metering agents (e.g. MAM or MOP)
Advanced Excel skills (advantageous)
What’s on Offer

Salary up to £28,000
25 days holiday + bank holidays
Annual bonus scheme
Flexible working hours
Free on-site parking
Wellbeing support
On-site gym
Regular social and team events
If you’re interested in hearing more, please apply or get in touch for a confidential discussion

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