Lead Credit Risk Data Scientist
London / £65000 - £110000
£65000 - £110000
LEAD DATA SCIENTIST
Our client is an exciting FinTech who have been recently growing. They are seeking to expand their teams and business significantly over the next couple of years and are looking for a Lead Data Scientist to be part of this growth. As a business, they are forging a new path in the payments industry and offer a unique opportunity to grow with the company and be part of an exciting area that has huge potential in the credit risk space.
This role is technically focused and will see you working on:
- Developing and implementing credit risk models, including scorecards, PD and exposure to fault models
- Liaising and communicating extensively with stakeholders and clients in order to expand the portfolio and drive business performance
- Collaborating with credit reference agencies and other third parties in order to use data within wider modelling
- Collaborating with other teams and colleagues in order to drive model performance and enhance data work more broadly
YOUR SKILLS AND EXPERIENCE
- At least 5 years' experience in developing statistical models, specifically probability of default models
- Previous experience in and knowledge of SQL and Python
- Ideal to have exposure to model monitoring or model drift
- Commercially driven mindset
SALARY AND BENEFITS
- Base salary of up to £110,000
- Remote-based work model
- Pension contribution scheme
- Company equity
- Strong exposure to senior members and opportunities for growth
HOW TO APPLY
Please register your interest by sending your CV to Rosie Walsh through the 'Apply' link
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