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Data Analyst

rmg digital
Reading
1 week ago
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Data Analyst (FTC – Hybrid, UK-based)


Location:Remote / Reading (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:

  • Analyse large-scale, complex datasets to extract insights, trends, and improvement opportunities
  • Create impactful dashboards, reports, and data visualisations to support business and customer decisions
  • Collaborate with Data Engineers, PMs, and stakeholders to support the development of scalable data models and pipelines
  • Monitor and improve data quality, spotting inconsistencies and streamlining manual-to-digital transformations
  • Contribute to the HM Land Registry programme, modernising Local Authority Land Charge registers — a transformation project expected to run through to 2028
  • Work with a range of tools to fix geospatial issues (e.g., dispersed geometries), support automation, and carry out accuracy checks on transformed datasets


What You’ll Bring:

  • Proven experience as a Data Analyst in a data-focused, engineering-led environment
  • Strong SQL skills and a working knowledge of data visualisation platforms (Power BI, Tableau, Looker, etc.)
  • Hands-on experience with large datasets and a strong analytical mindset
  • Familiarity with geospatial data and tools (FME, QGIS, ArcGIS, etc.)
  • Advanced Excel skills; experience with Python or R is a strong plus
  • Strong communicator – able to explain technical insights to non-technical audiences with clarity
  • Understanding of ETL processes, data quality assurance, and working closely with Data Engineers
  • Comfortable operating in agile teams and delivering in iterative cycles
  • Cloud knowledge (especially AWS) is a plus


Why Apply?

This is a rare opportunity to be part of a transformation that truly matters—bringing outdated systems into the digital age and unlocking the full potential of land and property data across the country. You’ll be surrounded by driven professionals in a collaborative, innovative environment that values your expertise and encourages your development.

If you’re looking for more than just another analytics role, if you want to see the real-world impact of your work, this could be the perfect next step.


Apply now and help shape the future of land and property data in the UK.

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