Data Architect

Gazelle Global Consulting
Warwick
1 month ago
Applications closed

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Role Principal Data Architect
Contract Inside IR35
Location Warwick UK hybrid
Rate Competitive inside IR35
Duration Initial 6 months with strong extension potential

Overview
We are seeking an experienced Principal Data Architect to define and govern enterprise grade data architecture across complex, large scale data platforms. This role sits at the intersection of architecture, data engineering, analytics, and advanced data science, ensuring data products are secure, scalable, compliant, and commercially valuable.

Key Responsibilities
Own end to end data architecture for enterprise scale data initiatives
Define and govern data architecture standards, patterns, and guardrails
Design cloud based data platforms and integration solutions
Ensure compliance with governance, security, privacy, and regulatory frameworks including GDPR and SoX
Provide architectural leadership across data engineering, analytics, and ML use cases
Guide delivery teams on performance, resilience, scalability, and cost optimisation
Act as the senior data architecture authority and trusted advisor to senior stakeholders
Support agile delivery, prioritisation, and architectural decision making

Essential Skills and Experience
Extensive e...

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