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Junior AI Data Scientist — Enterprise NLP & ML in Banking

UBS
City of London
1 day ago
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A global wealth manager is seeking a Junior Data Scientist to develop AI solutions and collaborate with business teams. The ideal candidate should have a Master's degree and experience in enterprise-scale AI and NLP solutions. Responsibilities include building high-performance models and supporting AI solution implementation. This role is full-time and based in London, offering opportunities for growth in a collaborative environment.
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