Senior Data Scientist (Credit Risk)
City of London, London / £80000 - £95000
£80000 - £95000
City of London, London
SENIOR DATA SCIENTIST - HYBRID
£95,000 + BENEFITS
This is an exciting opportunity to work as a Data Scientist in the credit risk space for a growing start-up! They are looking for a Data Scientist with proven experience in the credit risk space to help grow their Data Science and Machine learning team.
As a Data Scientist working in this company, you will have the following responsibilities:
- Building and validating regulatory-compliant ML models
- Presenting key information to stakeholders and the rest of the team
- Optimising scorecards
- Working on a variety of Credit Risk Data Science techniques using both R and Python
- Conducting experiments to enhance data science techniques
- Guiding and mentoring junior members of the team
Your Skills and Experience
The successful Data Scientist will have the following skills and experience:
- Proven experience and understanding of the credit risk life cycle (consumer or retail)
- Knowledge of Python, R, SQL
- Strong presentation and collaborative skills
- A desire to learn within an expanding Data Science team
- MsC or PhD in a relevant field (Mathematics, Statistics, Computer Science, etc.)
As a Data Scientist, you will receive a salary of up to £90,000 (+bonus, strong healthcare package, and more…!)
How To Apply
Get in touch! Register your interest by sending your CV to Kiran Ramasamy via the Apply link on this page.
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