Risk Data Scientist

Peaple Talent
London
1 month ago
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Overview

Peaple Talent have partnered with a leading Automotive business who deliver smart & sustainable solutions that improve customers’ mobility. They\'re the UK’s largest car leasing company and help over 750,000 people get on the road. My client are unique in that they provide comprehensive insurance as part of the overall lease costs. With 815k+ Scheme Customers this is the largest motor fleet policy in the UK.

Role

Data & Engineering Practice Lead | Helping businesses secure the best talent in Data

Responsibilities
  • Senior Data Science Risk Modellers who will be responsible for delivering a strong model risk management framework, and ensuring all forecast models are robustly implemented.
Qualifications
  • A strong background in Statistics, Mathematics, Economics, Data Science, or a related field
  • A number of years of experience working within Risk Modelling, Risk Management, Risk Validation
  • Proven experience with statistical software, ideally in Python or R
  • Experience with advanced analytical techniques, including machine learning and predictive modelling
  • Industry knowledge of forecasting in Automotive/Finance/Manufacturing is highly desirable
What’s in it for you
  • Location: London (3 days a week onsite)
  • Autonomous position with huge development opportunities
Job details
  • Seniority level: Mid-Senior level
  • Employment type: Full-time
  • Job function: Analyst, Engineering, and Information Technology
  • Industries: Retail Motor Vehicles, Financial Services, and Insurance


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