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Senior Finance Risk Analyst – Hybrid

Senior Finance Risk Analyst – Hybrid

CompanyM&T Bank
LocationBuffalo, NY, USA
Salary$97869.52 – $163115.87
TypeFull-Time
DegreesBachelor’s, MBA
Experience LevelSenior

Requirements

  • MBA with outstanding academic credentials, minimum two years work experience
  • BA/CPA/CFA with three-plus years experience
  • Excellent written and oral communication skills
  • Superior interpersonal and leadership talent
  • Advanced analytical abilities

Responsibilities

  • Support the performance of effective independent review and challenge activities across a wide scope of capital planning, monitoring and governance activities.
  • Collaborate across functions in the compilation and analysis of financial and capital projections both on a business-as-usual (BAU) basis and in connection with stress testing exercises, with a focus on Pre-Provision Net Revenue (PPNR), Credit Losses and Risk-Weighted Assets (RWA).
  • Support the successful completion of projects to enhance the analytical capabilities of the FRRO function along with other strategic initiatives and targeted process improvements.
  • Utilize analytical tools to conduct research and analysis of industry and peer bank data, provide insight on regulatory updates and best practices.
  • Assist with regulatory exams, responses to regulatory requests, feedback and Internal Audit exams/reviews.
  • Adhere to applicable compliance/operational risk controls in accordance with Company or regulatory standards and policies.
  • Maintain M&T internal control standards, including timely implementation of internal and external audit points together with any issues raised by external regulators as applicable.
  • Complete other related duties as assigned

Preferred Qualifications

  • MBA, CPA or CFA with outstanding academic credentials
  • Prior experience in Banking industry Capital Planning, Treasury, Risk Oversight, Regulatory Reporting, CCAR, Stress Testing or other Finance functional role
  • Experience in working with large data sets