2026 BNY Analyst Program - Engineering Data Science (Manchester)

BNY
Manchester
2 months ago
Applications closed

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Overview

2026 BNY Analyst Program - Engineering Data Science is a 24-month program located in Manchester. The program offers rotational experiences designed to prepare you for your future career, with projects across the line of business to provide a panoramic view of BNY’s global franchise. You will work on high-priority initiatives and develop analytical and interpersonal skills, with exposure to senior leadership and a peer mentor. Upon successful completion, 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 data-driven decisions.
  • 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 domain specialties of Machine Learning, Feature Engineering, and Advanced Analytics, with emphasis on Computer Programming, Math & Analytic Methodology, Distributed computing, and communicating complex results.
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 (now or in the future) in the country where applying.
About BNY and Awards

BNY is recognized as a leading global financial services company. The organization emphasizes inclusion and innovation and has been recognized with several awards, including:

  • America’s Most Innovative Companies, Fortune, 2025
  • World’s Most Admired Companies, Fortune 2025
  • Most Just Companies, Just Capital and CNBC, 2025
Benefits and Culture

BNY offers highly competitive compensation, benefits, and wellbeing programs, with a focus on flexibility, health, resilience, and financial goals. The company supports paid leaves, including paid volunteer time, and is an Equal Employment Opportunity/Affirmative Action Employer.

Job Function and Location
  • Engineering and Information Technology
  • Location: Manchester, England, United Kingdom

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