Senior Credit Data Analyst

JSS Search
London
2 days ago
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My client is an established corporate bank, looking to expand their London team with the addition of a Senior Credit Risk Analyst. This role is data-driven and will have clear influence on credit strategy and the bank's risk appetite.


The ideal candidate will have a minimum of 4 years of experience in credit risk, with a particular focus on data/analytics. Experience with SAS, SQL, Python or Tableau is also beneficial.


Responsibilities

  • Analysis of credit risk profile for the bank's property portfolio
  • Development of lending criteria, mortgage affordability model and credit scorecards
  • Development of statistical models to aid own team and others
  • Collaborate with sales, operations and product teams


Requirements

  • 4+ years of credit risk experience in a data-driven role
  • Strong data mining, statistical and data science skills
  • Proficiency with SAS, SQL, Python and/or Tableau
  • Stakeholder engagement skills

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