Data Architect

83zero
Manchester
2 months ago
Applications closed

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Role: Data & AI Solution Architect

Package: £60,000 - £80,000 (base) depending on level


We’re partnering with a growing consulting client who are looking for a talented Data & AI Solution Architect to help shape and deliver high-impact solutions across a variety of industries. You’ll lead conversations with clients, understand their challenges, and turn ideas into practical architectures that drive real change.


You’ll bring a strong grasp of the modern data and AI landscape, offer proactive insight, and introduce cutting-edge thinking to help clients move forward with confidence.


The role is client-facing, includes national travel, and SC clearance — or the ability to become SC-cleared — will be a strong advantage.


If this sounds like you, and you’d like more details or a confidential conversation, please drop me your details.

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