Quantitative Modeller

Hunter Maddison
London
4 months ago
Applications closed

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Are you looking for a fantastic credit modelling role?

Are you interested in an opportunity where you can travel to international locations?

Do you want to work for a client that offers quick promotion?

Do you want to work with industry renowned leaders?

Do you want to work for an organisation that nurtures/develops talent?


Locations:UK, Netherlands, Germany, Austria, Portugal and Spain

Salary:Competitive


My client is a specialised, independent consulting firm with a presence across Vienna, Amsterdam, Frankfurt, Johannesburg, Dubai, London, and Madrid. They are widely renowned in the financial services, risk management, and finance sectors for our deep expertise and innovative approach.


The client stands out from typical consultancies by:


  • Focusing on risk, finance, and strategy as a boutique consultancy. They deliver forward-thinking concepts and methodologies grounded in our specialized expertise and analytical insights.
  • Working across diverse competencies to break down traditional silos, providing client-specific solutions and sustainable development strategies.
  • Cultivating a family environment where team members at all levels actively contribute to the firm’s growth and operations.



Job Requirements


Seeking technically skilled credit risk consultants/Managers with a global perspective to join the team. Ideal candidates will have:


  • Experience in management consulting within the financial services or banking sector, specifically in risk management or credit risk.
  • Hands-on expertise in wholesale/retail IRB credit risk model development (experience in auditing or reviewing is insufficient); wholesale/retail IRB experience is essential.
  • Proficiency in programming languages and data structures, such as SAS, Python, R, MATLAB, etc.
  • A strong understanding of both local and international financial regulations.
  • Exceptional analytical skills and a quantitative background, with a practical focus on risk management in banking.
  • Additional experience in areas like ICAAP/ILAAP, risk appetite/limits, stress testing, capital management, recovery and resolution planning, strategic planning, or pricing (considered an advantage).
  • Strong problem-solving abilities and an aptitude for strategic thinking.
  • A master’s degree in a relevant, quantitative field is required.
  • Fluency in English.

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