Senior MLOps Engineer: AI-Driven Banking Platform

J.P. MORGAN
City of London
1 week ago
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A global financial services leader in London is seeking a Software Engineer III to design and deploy scalable AI/ML solutions. The role involves collaborating with teams to enhance the banking experience through innovative technology. Ideal candidates will have proficiency in Java and Python, with recent experience in back-end engineering. Join a diverse team and contribute to building secure, intelligent banking solutions.
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