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International Banking Client

VP Audit Manager Data Analytics

  • New York, NY
  • Full Time

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Office Status: Hybrid (1-2 days per week in office)

Salary: $165,000 – $185,000 ($30,000 – $40,000 bonus)


  • This individual has a key role in creating a data-led audit department, embedding data-driven techniques into all aspects of our audit processes, creating and strengthening new audit products that drive the department to real-time processes and insights that increase audit’s value.
  • This individual is also responsible for performing data analytics supporting the audit activities for one or more business units. In this capacity the role holder is responsible for an in-depth understanding of the business processes and data sources for the business units that they support, engaging with audit management to ensure the scheduling and prioritization of data analytics needs and executing analytical activities to deliver valued assurance to the audit team and our stakeholders.
  • Collaborates and coordinates with Audit Leaders to understand data analytics opportunities for planned audits, prioritizing and managing data analytics portfolio to ensure DA resources are best utilized.
  • Translates auditor requirements and business processes into the design, development and execution of data analytics solutions in support of audit delivery, with a focus on delivering repeatable and scalable solutions.
  • Drives strategic data sourcing and tooling projects to deliver new capabilities and tools in support of data science into the audit department, building use-cases, and repositories of data sources and re-usable data analytics products for the area of responsibility.
  • Build automation and dashboards in support of Continuous Monitoring, Continuous Auditing products, and the wider audit processes and audit transformation programs.
  • Uses Data Science techniques including supervised and unsupervised learning to identify, categorize and predict risk and audit factors in support of audit operations and processes.
  • Prototypes and continuously improves next-generation audit products and processes through the support of the Audit Transformation agenda, through focusing on both Auditor and Data journeys, and auditor experience.