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Data Science Actuarial Analyst - Graduate

Swiss Re
London
6 days ago
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About the Role


As a Data Science Actuarial Analyst, you'll work as an internal analytics and technology consultant, collaborating with teams across our global organisation to solve complex challenges through AI-driven approaches and data science methodologies. You'll be at the forefront of implementing cutting-edge actuarial and (generative) AI solutions to transform our business.


Key responsibilities

Upskill users through tailored, hands-on workshops helping actuarial teams implement best practice programming, AI applications, and develop data science skills


Develop and deploy classical and modern AI solutions that enhance actuarial modelling and decision-making processes
Provide strategic consulting on modelling, AI, and data analytics projects, supporting implementation of key technology initiatives
Develop and maintain best practice guidelines for AI use and implementation, programming, statistical modelling, data science, and communication
Build and nurture a collaborative community focused communication, actuarial modelling, data science, and analytics
Coordinate with InfoTech teams on infrastructure and technology projects to maintain and enhance our technical capabilities

About the Team

The AI & Technology team within Model Development & Analytics Team drives Swiss Re's Atelier programme, spearheading generative AI and technology initiatives while empowering teams across the organisation to combine domain knowledge with programming, automation, data science, and communications skills. The team has global reach spanning both Life & Health and Property & Casualty business areas, reporting to the Group Chief Actuary.

About You

You're a curious, tech-savvy person who balances attention to detail with strategic thinking. Your strong communication skills allow you to translate complex modelling and technical concepts into practical solutions that create value. You're excited about the potential of artificial intelligence to advance the insurance industry.

We are looking for candidates who meet these requirements:

A university degree in a quantitative field such as Actuarial Science, Statistics, Mathematics, or a related discipline with quantitative components


Commitment to pursue professional actuarial qualifications such as Fellowship to the Institute and Faculty of Actuaries
Demonstrated ability to quickly grasp new concepts and develop practical solutions
Experience or strong willingness to learn R and other programming languages/frameworks
Understanding of statistical modelling, machine learning principles, and data science methodologies

These are additional nice to haves:

Knowledge of (generative) AI models, natural language processing, or machine learning frameworks


Knowledge of data visualisation techniques and tools
Familiarity with (generative) AI concepts and applications
Experience with collaborative coding and version control systems

The base salary range for this position will be shared with you during the interview process.


The application process is open for at least 2 weeks and if you do not hear from us within this time frame, it does not mean your application is ignored. We will get back to you latest by mid-November.


#LI-Hybrid

About Swiss Re

Swiss Re is one of the world’s leading providers of reinsurance, insurance and other forms of insurance-based risk transfer, working to make the world more resilient. We anticipate and manage a wide variety of risks, from natural catastrophes and climate change to cybercrime. Combining experience with creative thinking and cutting-edge expertise, we create new opportunities and solutions for our clients. This is possible thanks to the collaboration of more than 14,000 employees across the world.

Our success depends on our ability to build an inclusive culture encouraging fresh perspectives and innovative thinking. We embrace a workplace where everyone has equal opportunities to thrive and develop professionally regardless of their age, gender, race, ethnicity, gender identity and/or expression, sexual orientation, physical or mental ability, skillset, thought or other characteristics. In our inclusive and flexible environment everyone can bring their authentic selves to work and their passion for sustainability.

If you are an experienced professional returning to the workforce after a career break, we encourage you to apply for open positions that match your skills and experience.

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