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Enterprise Data Architect

iDPP Careers
Bristol
4 weeks ago
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Information Architect

Up to £550 per day outside IR35

6 Months initially

Bristol Area - Hybrid working


A leading global IT Solutions Provider is looking for a highly experienced Information Architect to work with an end client in the utilities/energy sector.

As an Information Architect, youll work alongside the Lead Information Architect and a diverse range of business and technical stakeholders to design and deliver high-level information architectures that meet the complex data needs of major infrastructure projects.

Youll translate business requirements into clear, scalable information structures and contribute to our clients wider enterprise information model ensuring systems, data, and people work seamlessly together.

What Youll Be Doing

  • Develop and maintain high-level information architectures.
  • Collaborate with business, IT, and digital teams to define data and information requirements.
  • Define and mature information modelling and data quality standards.
  • Peer-review project documentation, including data models, information flows, and specifications.
  • Identify and manage risks, dependencies, an...

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