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2026 BNY Analyst Program - Engineering Data Science (Manchester)

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Manchester
1 week ago
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2026 BNY Analyst Program - Engineering Data Science (Manchester)

Be among the first 25 applicants for a 24‑month analyst program designed to develop your career in data science within BNY’s global franchise. The program offers rotational experience across specific business lines, high‑priority initiatives, and exposure to senior leadership.


At BNY, we harness cutting‑edge AI and technology to drive transformative solutions, and we are recognized as a top destination for innovation and inclusion. We empower our employees to grow and succeed in a culture that values bold ideas.


Program Overview

  • Provide panoramic view of BNY’s global operations.
  • Develop analytical, interpersonal, and project‑management skills.
  • Offer mentorship and exposure to multiple functions.
  • Lead to high‑impact roles after successful completion.

Data Science Responsibilities

  • Apply scientific methods to solve real business problems.
  • Perform data analysis, feature engineering, and advanced methods to support decisions.
  • Use state‑of‑the‑art methods for data mining.
  • Provide insights into business outcomes through analytics.
  • Perform data profiling to identify and understand anomalies.
  • Automate data analysis and streamline analytical processes.
  • Recommend actions based on data trends.
  • Stay abreast of organizational changes and maintain knowledge of relevant practices.
  • Grow across machine learning, feature engineering, and advanced analytics; master core areas such as computer programming, math, analytics methodology, and distributed computing.

Program Eligibility

  • Enrolled in an accredited university/college pursuing a bachelor’s degree in computer science, engineering, or related technology discipline.
  • Graduating December 2025 or July 2026.
  • Minimum grade classification 2:2.

Note: This role does not qualify under current UK visa sponsorship criteria.


Benefits & Rewards

BNY offers competitive compensation, comprehensive benefits, and a focus on wellbeing. Benefits include generous paid leave, paid volunteer time, and access to global resources that support health, resilience, and financial goals.


BNY is an Equal Employment Opportunity/Affirmative Action Employer – Underrepresented racial and ethnic groups, Females, Individuals with Disabilities, Protected Veterans.


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