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Associate, Data Management & Quantitative Analysis II

BNY
Manchester
1 week ago
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Associate, Data Management & Quantitative Analysis II

Join BNY as an Associate in the Corporate Trust Operations team in Manchester. This role focuses on building and maintaining critical structured finance waterfall models, ensuring accurate distribution payments, and analyzing legal documents to support model construction.


Responsibilities

  • Build and maintain highly critical structured finance waterfall models and perform model maintenance, distribution payment runs, and reporting.
  • Analyze and interpret legal documents to identify details necessary for model development.
  • Act as a Trustee to ensure accurate payments to investors, mitigating financial and reputational risks.

Qualifications

  • Graduation in any stream (BE/BTech/BCom preferred) + MBA (Finance)/CFA.
  • 3‑5 years of relevant experience in the structured finance domain in an analytical role.
  • Proficiency in Excel formulas and programming languages such as SQL or MS‑Access to perform tasks efficiently.

Benefits & Rewards

BNY offers competitive compensation, benefits, and wellbeing programs rooted in a culture of excellence. Flexible global resources and tools, generous paid leaves, paid volunteer time, and a pay‑for‑performance philosophy support your career growth.


Equal Employment Opportunity

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


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