Remote Data Engineer: Cloud Pipelines & Analytics

Alliants
Southampton
1 week ago
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A dynamic technology company in the UK is seeking a Data Engineer to support their growing team. The ideal candidate will have foundational knowledge in data engineering, eagerness to learn about cloud technologies, and strong problem-solving skills. This role offers competitive benefits including a salary of £25,000 to £35,000, remote working options, and a £1,500 training budget. If you're a recent graduate looking to launch your career, this is a great opportunity.
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