Data Architect

SmartSourcing plc
Birmingham
1 month ago
Applications closed

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Data Architect

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Data Architect

Data Architect

Data Architect

Data Architect

Base Locations : Birmingham, Snow Hill or London, Podium – 3 days per week plus travel to the other site


Salary : 71k- 83,500


Technology : Microsoft, Power BI, Dynamics, Sparx, AZURE


The Senior Data Architect is responsible for developing CLIENT’s data architecture and processes to embed the strategic application of data-related change across CLIENT’s systems and solutions. The role owns the data domain architecture and drives the vision for CLIENT’s use of data, through data design, to ensure that data is managed properly and meets the organisation’s needs. The role ensures that data architects understand and implement CLIENT’s vision for data.


Develop and implement enterprise-wide data architecture policies, patterns, processes and guardrails to embed the strategic application of change to ensure effective use of CLIENT’s data.


Establish and manage the Data Architecture practice and capabilities across CLIENT, leading knowledge sharing and skills development efforts and driving consistency across CLIENT


Oversee the development and implementation of appropriate design guardrails, standards, and policies, balancing functional and non-functional requirements, and managing associated risks that guide delivery of CLIENT systems


Lead definition and continued maturity of Data Architecture frameworks which aligns to wider enterprise-wide architecture.


Own and manage the corporate data model an...


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