Data Science Engineer Intern — Summer 2026

Bank of New York Mellon Corporation
Manchester
5 days ago
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A leading global financial services company is offering the 2026 Summer Internship Program focused on Engineering, particularly in Data Science. Interns will engage in real-world technical projects using JavaScript, Python, and other technologies. Eligible candidates must be enrolled in a computer science or related degree program, graduating between December 2026 and July 2027, and should not require visa sponsorship. Competitive compensation and extensive career training will be provided.
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