Senior Data Engineer: Cloud, Snowflake & AI Tools

Aberdeen
Edinburgh
3 weeks ago
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A leading wealth & investments group in the UK is seeking a detail-oriented Senior Engineer to join their Data & Analytics team. The role focuses on developing clean and efficient data solutions across cloud-native platforms such as Azure, Snowflake, and DBT. The ideal candidate will have strong programming skills, experience in application modernization, and a background in data warehousing. Join a company committed to an inclusive workplace with excellent benefits such as 40 days' annual leave and a generous pension contribution.
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