Data Science Engineer – High-Performance Vehicle AI

Aston Martin F1
Towcester
1 week ago
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A leading Formula One team in Silverstone seeks a Data Science Engineer to elevate performance through advanced modelling and AI. This role involves building robust models, optimizing data pipelines, and collaborating across engineering groups. Ideal candidates hold a master's degree in a relevant field, possess strong analytical and programming skills in Python, and thrive under pressure. Enjoy competitive benefits, including healthcare and learning opportunities, alongside access to state-of-the-art facilities.
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