Mid-Senior Solution Data Architect – AWS Data Lakes & Governance

Addition
Edinburgh
3 days ago
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A financial services organisation in the UK is looking for a Mid-Senior level architect to lead solution design and governance across multiple channels. The role involves defining end-to-end architectures and providing leadership in regulated environments. Candidates should have strong experience with Snowflake or similar technologies and excellent stakeholder management skills. The position offers a competitive package of up to £95,000, hybrid work options, and strong benefits including medical insurance and a performance bonus.
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