SQL Data Engineer — Hybrid 18‑Month Contract

McFall Recruitment Limited
Glasgow
1 week ago
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A recruitment agency is looking for a SQL Data Engineer for an 18-month fixed-term contract in Glasgow or Edinburgh, with hybrid working options. The candidate will build and maintain data pipelines, manage SQL Server databases, and support ETL/ELT processes to ensure data reliability. Required skills include extensive experience in SQL Server, T-SQL, and SSIS, along with strong analytical and problem-solving abilities. Joining this collaborative team, candidates will play a key role in optimizing data solutions within a regulated organization.
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