Senior Data Scientist — Asset & Wealth Management

JPMorganChase
City of London
3 days ago
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A leading financial services firm in London is seeking a Data Scientist passionate about applying NLP and ML techniques to enhance investment processes. The ideal candidate has proven experience in deployments, strong analytical skills, and proficiency in Python. Responsibilities include designing advanced ML solutions, collaborating with various business units, and staying updated with emerging technologies. This role offers a dynamic and collaborative work environment, focused on innovative financial solutions.
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