Hybrid Data Engineering Team Lead - Drive Data Solutions

Lloyd Recruitment
Epsom
1 week ago
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A leading recruitment agency is seeking a Data Engineering Team Lead in Epsom. This role involves leading a team of data engineers, focusing on driving technical delivery and overseeing day-to-day workload. The successful candidate will enjoy a hybrid working model and will be crucial in guiding the team through complex challenges. The ideal candidate is someone with a strong data engineering background who is transitioning or advancing into a leadership role, committed to ensuring the team is aligned with key priorities. The position offers competitive salary and numerous benefits.
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