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Head of Model and AI Risk

LinkedIn The Hartford Hartford, CT
Not Applicable Posted April 17, 2026 Job link
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Requirements
  • Proven leadership skills, experience managing cross-functional teams, strong critical thinking, and the ability to influence senior stakeholders.
  • Proven track record of scaling large, complex AI or technology initiatives from concept through to production and continuous improvement.
  • Proven ability to provide decisive, independent challenge to senior leadership and influence strategic outcomes in a principles-based manner.
  • Demonstrated success leading high-performing, multi-disciplinary teams and driving change in a large complex organizations.
  • A track record of operating effectively in high-pressure, fast-paced environments, demonstrating resilience and sound judgment under ambiguity.
  • Expertise
  • Deep technical fluency in AI/ML and GenAI model development, validation techniques, performance benchmarking, and MLOps tools.
  • Proficiency in programming languages (e.g.
  • Python, R) and relevant data science libraries.
  • Demonstrated deep subject matter expertise in Artificial Intelligence, including current and emerging technologies and their specific risk implications within a financial services context.
  • Extensive experience in model risk management, model validation, or audit within a regulated industry (e.g., financial services, healthcare), with a proven track record of managing risks in emerging technologies.
  • Strong understanding of relevant regulatory guidance and frameworks (e.g., SR 11-7, the NIST AI Risk Management Framework).
  • 15+ years of experience in a large, complex financial institution, regulatory body, or related field, minimum of 10 years in a senior leadership role within risk management, audit, model governance, or technology risk, with direct experience in AI deployment and oversight.
Education
  • (Not required) – A Master's or PhD degree in a quantitative field such as computer science, statistics, engineering, or economics.