Azure Enterprise Data Architect | London | Insurance

London
2 months ago
Applications closed

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Azure Enterprise Data Architect | London | Insurance 

Lead the Future of Data Architecture

Do you have a deep understanding of modern data infrastructures and cloud-based solutions? Are you an innovative thinker ready to drive large-scale transformation? If your passion lies in utilizing data to enhance decision-making, streamline operations, and ensure regulatory compliance, this opportunity is for you.

About the Organisation

Operating for over a century, this business has evolved into a forward-thinking entity, delivering expertise in financial planning, investments, and risk management. With a customer-centric transformation underway, data and technology are at the heart of its future vision.

Key Responsibilities
Develop and implement a comprehensive data strategy, ensuring alignment with business priorities and technological advancements.
Oversee and maintain enterprise data models, ensuring best practices in management, integration, and security.
Define governance frameworks, data taxonomies, and catalogues to enhance clarity, consistency, and trust in data.
Support AI and machine learning initiatives by structuring high-quality data assets.
Promote data assurance and compliance, ensuring alignment with industry regulations and internal policies.
Collaborate with business leaders, IT architects, and data engineers to establish and maintain world-class data solutions.
Lead innovation efforts, incorporating best practices and industry trends to enhance data capabilities.
Ideal Candidate Profile
Proven expertise in data architecture, cloud platforms (Azure), and governance.
Strong strategic mindset, capable of translating business needs into effective data strategies.
Experience in regulated industries, particularly financial services, is advantageous.
Ability to engage and influence senior stakeholders, working seamlessly across technical and commercial teams.
Deep understanding of data security, integration, and regulatory frameworks.
TOGAF or BCS certification (preferred but not required).

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