Staff Data Engineer - Hybrid/Remote with Impact

RVU Co UK
Cardiff
3 weeks ago
Applications closed

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Staff Data Engineer

Staff Data Engineer

Staff Data Engineer

Staff Data Engineer - Hybrid/Remote with Impact

Staff Data Engineer

Staff Data Engineer

A leading technology company is seeking a Staff Software Engineer - Data in Cardiff. The role involves collaborating in cross-functional teams to enhance data-driven systems and improve platform performance. Ideal candidates should have strong expertise in SQL, Python, and big data technologies while fostering a diverse engineering culture. The position offers a hybrid work environment with competitive benefits including pension matching and health insurance.
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