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Data Architect - Birmingham or London

Birmingham
5 days ago
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Data Architect - Birmingham or London

Salary upto £61,000

Hybrid working - 3 days in the office

A Data Architect is needed for a leading client in Birmingham or London. The role involves designing and building data models, developing the enterprise data model for strategic alignment, and integrating business and technology architectures. Responsibilities include supporting the information and data strategy, overseeing data governance and management, and ensuring safe, secure, and legal information handling in collaboration with IT Security and Assurance teams.

Key skills and responsibilities,

Demonstrated knowledge of agile methodologies and their implications for Data Architecture.
Strong awareness of strategic and emerging technology trends, with a focus on practical applications.
Expertise in defining and constructing information and data models to deliver comprehensive data understanding, identify relevant issues, assess risks, and recognize opportunities.
Proven experience in leading the design of data models and implementing enterprise master data management solutions.
Skilled in defining complex technical data models and effectively communicating these models to stakeholders at all organizational levels.
Proficient in data communication, selecting appropriate mediums to present findings, and tailoring communications to specific audiences.
Experienced in evolving and establishing data governance frameworks, collaborating and contributing to broader governance initiatives, and integrating data services to meet diverse business requirements. Proactive in ensuring architectural designs consider data needs.
Knowledgeable in data innovation, including assessing the impact of emerging trends on data tools, analytical techniques, and data utilization within the organization.
Advanced understanding of data modelling concepts and principles, with the ability to produce relevant models across multiple domains, reverse-engineer models from live systems, and apply industry-recognized data modelling standards and patterns as appropriate. Capable of aligning and comparing various data models.
Successful track record of collaboration with Technical and Enterprise Architects to ensure organizational systems are designed in accordance with established data architecture and governance standards.
Experience utilizing Data Architecture tooling, integration platforms, or modeling notations. Interested? Please submit your updated CV to (url removed) for immediate consideration.

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