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Risk Model Validation Quantitative Specialist - London

Jas Gujral
City of London
1 week ago
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Overview

Model Validation Quantitative Specialist - London


Responsibilities

  • Conduct independent model validation and quantification of model risk, including communication of key facts and issues identified through those activities.
  • Validate models in accordance with UK regulations (CRR and SS 11/13) and industry best practice.
  • Work across Retail Banking sectors including Secured, Unsecured and Corporate products.
  • Demonstrate hands-on validation experience and expert knowledge in validation of credit models (IRB) within retail banking.
  • Report model risk to management, with clear verbal and written communications.
  • Interpret CRR and Supervisory Statements (SS 11/13) and IFRS 9 requirements.
  • Have deep understanding of Credit Models, particularly PD, LGD and EAD, with associated data requirements and methodological approaches.
  • Familiar with analytical packages (R, MATLAB, SAS) and the ability to rebuild the model offline to validate outputs.
  • Possess fluent English language skills and effective verbal and written communication.
  • Maintain awareness of upcoming regulatory documents and market trends.

Qualifications & Experience

  • 5 to 7 years of experience in IRB risk model validation.
  • Experience in retail banking credit systems.
  • Track record of validating credit IRB models within retail banking.
  • Experience in reporting of model risk to management.
  • Educated in a finance or mathematical discipline to a post-graduate standard.
  • Preferred professional qualifications such as CFA, PRMIA, etc.
  • Direct regulatory liaison/relationship with the Bank of England PRA on retail model submissions, regulatory developments and capital impact assessments (preferred).
  • Capital analytics experience within retail banking and experience presenting model risk papers to risk oversight committees (preferred).

Notes

  • Investment banking quantitative experience is not relevant for this role.
  • SAS model developers willing to move into validation may be considered for other roles.

Location & How to Apply

The position will be based in the City, London.


Please send your CV to us in Word format along with daily rate and availability.


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