GIS Data Analyst

Euston
1 month ago
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GIS Data Analyst
Location: London
Salary: £36,000 – £48,702 + Benefits

An opportunity has arisen for a GIS Data Analyst to join a Digital Engineering team supporting design, construction, and operations activity across a complex asset environment.
You will act as the subject matter expert for GIS data management, overseeing data production, publishing, and quality assurance. Working closely with delivery teams and suppliers, you will manage GIS data within the Common Data Environment and ensure compliance with data standards, governance, and interoperability requirements.
Key Responsibilities

Manage GIS data and related data exchanges across the project lifecycle
Ensure data quality, assurance, and compliance with agreed standards
Analyse and report data quality issues and root causes to internal teams and suppliers
Support delivery teams through training, guidance, and stakeholder engagement
Contribute to continuous improvement of data processes and systems
Key Skills & Experience

Strong GIS data management and modelling expertise
Experience in data quality, assurance, and interoperability using open formats
Knowledge of BIM processes (ISO 19650), information governance, and data security
Experience working within Digital Engineering environments across the asset lifecycle
Confident communicator with experience supporting and upskilling stakeholders
This role is ideal for a results-driven GIS professional looking to apply their expertise in a collaborative, standards-driven digital engineering environment

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