Credit Card ML Data Scientist – Hybrid UK

Datatech Analytics
Edinburgh
2 months ago
Applications closed

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A major financial services group in the South West UK seeks a Data Scientist specializing in Machine Learning and Consumer Lending. This hybrid role offers a strong salary depending on experience and involves end-to-end ownership of ML models in production. The ideal candidate will possess solid Python and SQL skills, experience with statistics and real-world datasets, and insight into using ML for consumer lending improvement. Join a dynamic team dedicated to innovation and growth.
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