Senior Associate, Data Management & Quantitative Analysis

BNY
Manchester
2 months ago
Applications closed

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Senior Associate, Data Management & Quantitative Analysis

Join to apply for the Senior Associate, Data Management & Quantitative Analysis role at BNY.


At BNY, our culture allows us to run our company better and enables employees’ growth and success. As a leading global financial services company at the heart of the global financial system, we influence nearly 20% of the world’s investible assets. Every day, our teams harness cutting‑edge AI and breakthrough technologies to collaborate with clients, driving transformative solutions that redefine industries and uplift communities worldwide.


Recognized as a top destination for innovators and champions of inclusion, BNY is where bold ideas meet advanced technology and exceptional talent. Together, we power the future of finance – and this is what it is all about. Join us and be part of something extraordinary.


We’re seeking a future team member for the role of Senior Associate, Data Management & Quantitative Analysis to join our Corporate Trust Analytics team. This role is in Manchester, United Kingdom.


Responsibilities

  • Produce payments on new and existing book of mortgage‑backed security bonds (MBS, RESEC, CMBS, MILN, etc.)
  • Troubleshoot payment results with an independent shadow component and present findings and recommendations to senior analysts
  • Validate third‑party findings and enhance models with changes that are pertinent
  • Review legal deal documents and analyze collateral pools
  • Communicate complex payment methodologies to investors, issuers, and counsel

Qualifications

  • Basic knowledge of mortgage‑backed securities (MBS, RESEC, CMBS, MILN, etc.)
  • Familiarity with basic bond math and waterfall cash‑flow modeling
  • Will and desire to sift through large sets of data and use it quantitatively
  • Willingness to speak up and respectfully offer opposing views
  • Self‑starter mentality is a must
  • Thorough knowledge of Excel is a must

Awards

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

Benefits

BNY offers highly competitive compensation, benefits, and wellbeing programs rooted in a strong culture of excellence and our pay‑for‑performance philosophy. We provide access to flexible global resources and tools for your life’s journey. Focus on your health, foster your personal resilience, and reach your financial goals as a valued member of our team, along with generous paid leaves, including paid volunteer time, that can support you and your family through moments that matter.


Equal Employment Opportunity

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


Seniority Level

Associate


Employment Type

Full‑time


Job Function

Other


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