Credit Risk Data Scientist: Revenue & Debt Analytics

Thames Water
Swindon, England
3 months ago
Applications closed

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A leading water and wastewater company in the UK is seeking a skilled Portfolio Revenue & Debt Data Scientist to enhance credit risk analytics. This role focuses on developing predictive models and refining data strategies. Applicants should have proven SQL proficiency, experience in financial modeling, and a relevant degree. The company offers competitive salary, a hybrid work environment, and strong benefits including a pension scheme and employee wellness initiatives.
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