Data Scientist

High Finance (UK) Limited T/A HFG
London
3 months ago
Applications closed

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Data Scientist (Government)

A leading (Re)insurance firm is looking to hire a Data Scientist to join their growing AI & Data Science function. You will play a key role in transforming advanced insights and market intelligence into strategies that protect businesses and drive performance. You will partner with specialists in software engineering, visualisation, and design, applying data science in a high-impact commercial setting. You will maintain legacy R applications whilst transitioning to the company's Python-based tech stack.KEY REQUIREMENTS· Have Financial Services experience, ideally (Re)insurance experience· Highly skilled in R, with strong experience in R Shiny development.· Have strong Python development skills· Desire to learn and apply Azure, Azure DevOps and AI tools· Machine Learning and AI experience is preferred but not essential· Have a high attention to detail, demonstrating thoroughness and accuracy· Ability to thrive in a fast-paced and dynamic environment

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