Data Scientist (Credit Risk) | 12-24 Months | £400 - £500 | Outside IR35 | Remote First

London
1 year ago
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Data Scientist (Credit Risk) | 12-24 Months | £400 - £500 | Outside IR35 | Remote First

Are you an experienced Data Scientist with experience in credit risk modelling and credit scorecard development looking for an exciting greenfield project in the finance sector? Our long-term client is seeking a skilled professional to develop credit scorecards using next-generation software tools. The ideal candidate will have a deep understanding of credit risk modelling and the ability to translate complex data into actionable insights. This is primarily a remote position but given the nature of the role, occasional travel may be required. Outside IR35, this role pays between £400 and £500 per day and offers a 12 - 24-month engagement.
 
Key Requirements

Extensive experience in Python, and R
Strong experience with SAS, SPSS
Previous experience in credit scorecard development
Strong statistical background
Proficiency with Jupyter Notebook
Finance industry experience
Proven track record in mentoring and training team members 
If you feel like this Financial Data Scientist / Credit Scorecard Developer role is a good fit for you and you would like to know more then please apply with your most up to date CV.

Data Scientist (Credit Risk) | 12-24 Months | £400 - £500 | Outside IR35 | Remote First

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