Asset Data Analyst

CPR
Birmingham
1 day ago
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Asset Data Analyst
Birmingham (Hybrid)
£32,050 – £43,355 + Benefits

A major UK infrastructure programme delivering a world-class transport network is recruiting for a Asset Data Analyst in Birmingham.
We are seeking an Asset Data Analyst to support asset information and data management within the Digital Engineering team. You will act as a subject matter expert, ensuring high-quality, compliant asset data across the full project lifecycle.

Key Responsibilities

Manage asset data production, publishing, and quality assurance
Support design, construction, and operations & maintenance phases
Produce reports and present insights to stakeholders
Work with internal teams and suppliers to promote data quality and interoperability
Support and promote Digital Engineering across the organisation and supply chain
Essential Experience

Strong understanding of infrastructure assets and asset data management
Data quality and assurance experience across full project lifecycles
Knowledge of asset data, ontologies, and data content management
Experience working with open data formats
Good working knowledge of Power BI and Azure
Excellent stakeholder engagement and communication skills
A great opportunity to contribute to a nationally significant infrastructure programme...

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