Manager - Credit Risk Modelling - IFRS9

Barclay Simpson
Bristol
1 month ago
Applications closed

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My client is one of the largest banks in the UK, renowned for their flexible working culture, remote working opportunities, excellent benefits and outstanding internal culture and career progression.


As part of a build out of the risk modelling team I am looking for an experienced IFRS 9 modeller to lead a talented team of modellers and data scientists responsible for developing and managing risk and macroeconomic models to forecast the bank’s loss provisions. You’ll have a wide remit that spans all types of models within the IFRS 9 landscape, with exposure to both Retail and Business banking products and customers. Your team will focus on the development, validation, management, and monitoring of models, ensuring they provide exceptional support to key stakeholders across Risk and Finance.


You will lead the design and implementation of credit risk models in line with Bank standards and regulatory compliance requirements. You’ll ensure that the models in operation are robust, fit for purpose, and provide clear insights to stakeholders. You will also deliver high-quality model documentation and support the Bank in model usage and governance, while driving the development of your team.


To succeed in this role, you’ll need significant experience in IFRS9 or econometric model development across Retail or Business credit portfolios and expertise in using statistical analysis software like SAS, Python, or R. Strong communication skills, the ability to influence stakeholders, and experience with decision-making are essential. Bonus points for experience with economic processes and IFRS 9.


Please note, this role does not offer Visa sponsorship.

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