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Senior Data Architect - Peterborough - Hybrid

Tech Talent Identified Ltd
London
3 days ago
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Senior Data Architect is required by this leading organisation in their field as they look to improve their enterprise and information architectures, ensuring they are robust, future-ready with a capability to support current and future business needs. The focus will be to empower data-led and AI-enhanced decision making across the organisation. You will be required to deliver a clear, scalable data framework aligned with the overall enterprise data strategy, with an emphasis on data mesh, enabling the use of AI/GenAI within the business.
Responsibilities include -
Communicating the enterprise data strategy and operating model to various teams across the business
Roadmap definition/strategic planning - for AI/GenAI capabilities
Information Architecture development
Team leadership/mentoring
Shaping data standards, patterns, visions.
Thought leadership/stakeholder engagement
Ideally you can demonstrate experience across -
TOGAF/Zachman enterprise architecture frameworks
Cloud native data platforms - Azure/AWS/GCP
Data mesh
Data Governance
Data Lakehouse, warehouse and virtualisation concepts
MDM/Metadata management
ETL/ELT processes and data pipeline builds
Data readiness for AI
Strong understanding of business architecture
Be part of a team shaping the future of data-driven technology within the organisation. Please contact me for a detailed job spec and discussion about the position and how you can contribute to the on going success of the business..* Please note, this does require weekly time on site, only apply if this is something you're comfortable with.*

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