Metering Analyst

Bury
1 week ago
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Due to constant growth, I am looking for an experienced Metering Data Analyst to join a very successful utility organisation in the Bury area. 

What are the responsibilities?

The management of all Meter/Automatic Meter Reader (AMR) installations, exchanges, removal or asset update data flows ensuring all data sources are aligned and maintained
Sourcing key stakeholder details and updating all relevant systems and ensuring all appointments and de-appointments are correct
Resolving any issues that may arise from incorrect meter and/or AMR data in a timely and effective manner
To manage and remedy industry meter reading rejections
Liaise with customers, metering partners, reading agencies, other gas suppliers and internal stakeholders to resolve meter and data queries in a timely and effective manner
To support the business with its AMR and Smart meter roll out strategy
To request, remove or re-synchronize AMR devices with metering agencies within agreed SLAs
Ensure meter readings are obtained and submitted to the industry within a specified timeframe
Process industry file flows that update relevant meter points so that the supply point data held is accurate both at industry and supplier level to allow accurate billing
Maintain and develop high levels of customer services to support Crown Gas & Power’s operational and sales functions
Providing regular and adhoc reports

The perks:

On-site gym and shower
Free parking 
Great culture
Breakfast and lunch provided
Sporting events 
Social and interactive events
Please note, this is a full time role, Monday to Friday in the office. 

Thanks

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