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Lead Data Engineer - Cloud Data Platform & Team Leadership

PXC
Salford
4 days ago
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A leading data infrastructure firm in England is looking for a Lead Data Engineer to manage a team, design data architectures, and deliver insights that drive business success. Candidates should have strong skills in team management and cloud data platforms. This part-time role offers flexibility with a hybrid working model and numerous benefits including private healthcare, extra leave, and a competitive pension scheme.
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