Math, Physics & Engineering Graduates (Insurtech)
Мэтч & Сопровод
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Описание вакансии
TL;DR
Data Scientist (Insurtech): Developing risk and pricing models for motor insurance to optimize competitive edge and sustainability with an accent on machine learning and advanced analytics. Focus on identifying pricing drivers, building real-time pricing models, and translating complex data into strategic business insights.
Location: Hybrid in London, United Kingdom
Salary: £80,000–£160,000
Company
is a leading online motor insurance provider expanding its data-driven approach across Italy, the UK, and Spain.
What you will do
- Identify risks, opportunities, and key pricing drivers to influence strategic decision-making.
- Develop risk and pricing models using Machine Learning to power real-time insurance pricing for millions of customers.
- Drive company growth through innovative modelling, experimentation, and commercially impactful insights.
- Collaborate with cross-functional teams to turn data insights into actionable business value.
Requirements
- Strong academic background in Mathematics, Physics, Engineering, Data Science, or Statistics.
- Solid foundation in statistics, probability, and advanced analytics.
- Fluency in English (spoken and written).
- Strong quantitative, logical, and analytical problem-solving abilities.
Nice to have
- Experience in code development and machine learning, preferably using Python.
- Ability to manipulate and analyze large datasets.
- Strong communication skills to challenge assumptions and drive new ideas.
Culture & Benefits
- Competitive salary range from £80k to £160k.
- Full flexibility: work from home, the office, or a hybrid mix.
- Ability to work from anywhere for up to 30 days per year.
- Private healthcare, gym discounts, and mental health support.
- Tailored growth plans, mentorship, and access to learning resources.
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