Data Analyst

rmg digital
Reading
7 months ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Job Description

Data Analyst (FTC – Hybrid, UK-based)


Location:Remote (Hybrid)

Type:Fixed-Term Contract 1 year

Salary:£35,000 with excellent benefits


Shape the future of land and property data across England and Wales.

Are you a data-driven problem-solver with a sharp eye for detail and a passion for complex data transformation? A high-impact opportunity has just opened for a skilled and proactiveData Analystto join a cutting-edge Data Engineering team that’s powering one of the most ambitious digital transformation programmes in the UK.

This is your chance to work at the forefront of a nationally significant data modernisation project—delivering insights, improving data quality, and enabling smarter decisions in one of the country's most crucial data domains.


The Role:

Joining an agile, forward-thinking team, you’ll be embedded in a major programme centralising and transforming land and property data from Local Authorities across England and Wales. With a blend of hands-on data wrangling and strategic analysis, you'll play a pivotal role in shaping how vital geospatial and property data is structured, visualised and applied.


What You’ll Be Doing:

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