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2026 BNY Analyst Program- Engineering Data Science -Manchester

Latinx in AI (LXAI)
Manchester
2 weeks ago
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2026 BNY Analyst Program- Engineering Data Science -Manchester

Join to apply for the 2026 BNY Analyst Program- Engineering Data Science -Manchester role at Latinx in AI (LXAI).


BNY Mellon – Full-time – On-site – Manchester, United Kingdom – Technology.


Description

We’re seeking a future team member for our Engineering (Data Science) program. This role is located in Manchester. Our 24‑month analyst program is a holistic talent development journey offering rotational experiences designed to prepare you for your future career. Through projects across the specific line of business, you will receive a panoramic view of BNY’s entire global franchise, providing rare insight into the operation of one of the world’s largest banks. In each role, you will work on high‑priority initiatives and develop a comprehensive set of analytical and interpersonal skills. As part of a highly selective program, you will gain unparalleled exposure to senior leadership of BNY and its clients, while receiving personalized guidance and support from a peer mentor. Upon successful completion of the program, you will be considered for high‑impact roles in multiple functions.


Data Science Responsibilities

  • Apply scientific methods to find solutions to real business problems.
  • Perform data analysis, feature engineering, and advanced methods to prepare and develop decisions based on data.
  • Data mining using state‑of‑the‑art methods.
  • Provide insight into observed business outcomes through analytics.
  • Perform data profiling to identify and understand anomalies in data.
  • Automate data analysis and streamline analytical processes.
  • Provide recommendations based on data trends uncovered when possible.
  • Stay abreast of organization and management changes and have in‑depth knowledge of company practices relevant to data science products.
  • Grow and develop skills across the three domain specialties: Machine Learning, Feature Engineering, and Advanced Analytics capabilities.

Program Eligibility

  • Must be enrolled in an accredited university/college pursuing a bachelor’s degree in computer science/engineering or a related technology discipline.
  • Graduating in Dec 2025 or July 2026.
  • Minimum 2:2 degree classification.
  • Does not require sponsorship for employment visa status in the country where applying.

Benefits

BNY offers highly competitive compensation, benefits, and wellbeing programs rooted in a strong culture of excellence, flexible global resources, and support for personal and professional growth.


Equal Opportunity

BNY is an Equal Employment Opportunity/affirmative action employer.


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