Head of Credit Risk Pricing

SitePoint Pty
London
1 year ago
Applications closed

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HEAD OF CREDIT RISK PRICING£100,000-130,000 London

This fast-paced FinTech is looking for an ambitious leader to help them drive growth for 2025.

THE COMPANY

This business boasts a dynamic environment where no two days are the same. They’re very focused on accelerating their position in the market next year, and this role offers the chance to work across core credit risk strategy, pricing, and wider commercial analytics.

THE ROLE

  1. Lead the development of credit risk and lending strategy across the business, with an initial focus on new acquisitions to grow the book.
  2. Own the commercial function of the business, creating and deploying pricing strategies to drive profitability.
  3. Utilise cutting-edge Machine Learning models and collaborate with the Data Science team to implement models across the business.

YOUR SKILLS AND EXPERIENCE

Essential to have experience in BOTH core credit risk strategy development and pricing analytics.

  1. SQL experience is essential; Python is desirable.
  2. Must have experience within Consumer Lending and a strong understanding of the credit lifecycle.
  3. Experience in a fast-paced environment and ability to work across multiple projects, in a FinTech.

SALARY AND BENEFITS

Base salary from £100-130,000 depending on experience.

  1. Private medical care.
  2. 25 days holiday.
  3. Cycle to work scheme.

HOW TO APPLY

Please register your interest by sending your CV to Rosie Walsh through the ‘Apply’ link.

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