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Senior Data Engineer - Azure Data - Burton-on-Trent - Hybrid

Crimson
Burton-on-Trent
6 days ago
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Senior Data Engineer - Azure Data - Burton-on-Trent - Permanent - Hybrid

Salary - £60,000 - £67,000 per annum

This role requires 1 day / week in Burton-on-Trent, with hybrid working arrangements.

Our client is seeking a highly skilled Senior Data Engineer to join their dynamic IT team, based in Burton-on-Trent. The Senior Data Engineer will come on board to support the Strategic Data Manager in es...

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