Data Analyst Rail

Randstad Cpe London
Birmingham
1 day ago
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Are you a Data Analyst that enjoys working with data, assuring quality and turning insight into action?


Are you confident working with contractors and stakeholders to make sure information is right first time?


Salary: £36,857 to £43,355 total package (£32,050 to £37,700 plus a 15% flexible cash fund) Location: Birmingham (3 days per week in the office) Closing Date: 21st January


A major UK infrastructure programme is expanding its Asset Information team and is looking for an Asset Data Coordinator/Data Analyst to focus on data quality, assurance and reporting across a growing asset base.


This is a data-focused analytical role, supporting the assurance of asset information from design and construction through to handover.


You’ll work closely with contractors, internal information managers and technical specialists to ensure asset data is complete, accurate and compliant with defined standards. You’ll analyse submissions, report on data quality, and play a key role in the data acceptance process.


This role sits within a specialist Asset Information team and works in parallel with CAD and GIS colleagues as part of a wider Digital Engineering function.


Essential:



  • Experience in data analysis, data quality and data assurance
  • Confidence using Power BI to analyse and present information
  • Understanding of asset information or infrastructure environments
  • Strong stakeholder engagement and communication skills
  • Ability to explain data issues clearly to non-technical audiences

Nice to have:



  • Experience working on infrastructure or asset-intensive programmes
  • Exposure to asset registers, CMMS or asset information systems
  • Experience across a full project lifecycle (design, build, handover)
  • Familiarity with Microsoft Fabric or data lakes

This role would suit someone who enjoys combining data, process and stakeholder interaction.


If you’re looking to play a key role in assuring data on one of the UK’s most complex infrastructure programmes, we’d love to hear from you.


Get in touch with Emily Atkins at Carrington West to discuss the role in confidence or apply today.


Required Qualifications

  • None


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