Data Architect

Ubique Systems
Leeds
3 months ago
Applications closed

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Job Description:



  • Able to define Data Product Definition, Architecture and Roadmap.
  • Experience on GCP & Azure, with EDW, ETL, Batch, Kafka etc.
  • Will define, at the logical level, the data interfaces between systems.
  • Will aid in the physical design of any data stores, interface files or services.
  • Ensures that the solution is compliant to the clients Information policies and standards.
  • Lead Architecture Committee governance approvals for artefacts.
  • Define Target Model backlog in collaboration with client stakeholders. Lead deliver a complete Architectural Design.
  • Ensure designs and guidance are aligned with the relevant strategies, roadmaps and policies.
  • UK Mortgages background experience will be good but not mandatory
  • Is able to support the gathering of information requirements from IT and Business stakeholders.
  • Ensures the information requirements are realistic and achievable. Simplify and de-risk information landscape.
  • Model the information requirements in ways that can be understood by different stakeholders.
  • Understands enterprise wide information architecture and can relate the particular information requirements to it.
  • Understands the strengths and weaknesses of the solution and takes the necessary steps to mitigate those weaknesses.
  • Defines the information roadmap for the project and wider programme for the onward development of the solution.
  • Understands the position of the solution within the wider application and information landscape, and works alone or with other architects to define how the solution is to be embedded in the landscape.

Seniority Level
  • Mid‑Senior level

Employment Type
  • Contract

Job Function
  • Information Technology

Industries
  • IT Services and IT Consulting

Location

Leeds, England, United Kingdom


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