Data Analyst - Water Leakage

RPS Group Plc
Carmarthen
1 month ago
Applications closed

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RPS Tetra Tech, is seeking a skilled Analyst to join our growing and vibrant West Wales AS&I team, supporting data-driven project delivery for a range of clients. This is a key opportunity to contribute to impactful transformation initiatives through intuitive, interactive, and strategic data solutions.

About The Team:

The RPS Asset, Surveying, and Inspection (AS&I) team provides industry leading services to the UK Water Industry and our employees are involved in services supporting Water Networks, Drainage, Surveying, Leakage Consultancy, Water Resources and Efficiency. The team analyse complex data and provide pragmatic solutions. This includes reducing water leakage and preventing flooding and pollution in local communities.

Our Welsh Water's asset management and delivery professionals, develop and deliver industry leading solutions in flooding, pollution, water quality and leakage. Our teams find and repair leaks on the network to minimise water wastage, which is good for Welsh Water customers and the environment.

About You:

As a key member of the Asset, Surveying, and Inspection (AS&I) business, your role as an Analyst is critical to our strategic priorities - to deliver great work for our clients by providing excellent customer service and executing complex operational tasks. Whether you are just starting out or taking the next step in your career,...

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