Credit Risk Data Analyst - Growth & Insights (SQL)

Billing Finance
Northampton
2 days ago
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A financial services firm based in Northampton is seeking a Credit Risk Analyst to join their dynamic team. The role involves using SQL for data analysis to support lending decisions and optimize credit strategies. Ideal candidates will have experience in credit risk or data analysis and strong communication skills to present findings effectively. This position offers a chance to work in an exciting environment and develop a career within the motor finance sector, supported by a range of benefits including a discretionary bonus and hybrid working.
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