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Credit Data Engineer: Build Real-Time Lending Pipelines

LemFi
City of London
2 days ago
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A fast-growing fintech company in London is seeking a Credit Data Engineer to join its team. This role involves designing and maintaining robust data pipelines that support credit risk modelling and underwriting. The ideal candidate has 1–3 years of experience in data engineering within UK consumer lending, and is proficient in SQL and Python. This position offers the opportunity to work in a dynamic environment focused on innovation and collaboration.
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