VP, AI/ML Model Risk & Governance, Data Management Office

Date:  Apr 9, 2026
Location: 

Singapore

Office Location:  Capital Square, Singapore

Responsibilities

• Provide independent oversight and challenge throughout the model lifecycle, including development, validation, approval and ongoing monitoring.

• Assess model materiality, criticality and alignment with organisational risk appetite.

• Review model documentation, assumptions, methodology, limitations, residual risks and compensating controls.

• Evaluate model monitoring frameworks, including drift detection, performance and stability metrics.

• Ensure compliance with regulatory expectations for AI/ML, including fairness, explainability and accountability.

• Collaborate with data scientists and model developers across departments to understand modelling intent and technical assumptions.

• Support enhancement of governance frameworks, policies and approval processes for statistical, ML and AI models.

• Contribute to AI/ML proofofconcept (POC) initiatives to strengthen governance practices and support innovation.

• Partner with risk, compliance, IT and business teams to embed robust AI governance and Responsible AI principles across the organisation.

• Support AI/ML model governance by managing essential data assets, including maintaining metadata, documenting key datasets, and ensuring clarity of features and data inputs used in models.

• Support data management initiatives for building a robust AI/ML-ready ecosystem.

 

Requirements

• Minimum 7 years of relevant experience in model risk management, model governance, model validation, quantitative analytics or related areas.

• Strong knowledge of model governance frameworks, policies and regulatory expectations for statistical, ML and AI models.

• Understanding of AI/ML concepts including performance evaluation, explainability, drift and monitoring techniques.

• Ability to identify modelling weaknesses, design flaws, performance gaps and potential risks.

• Experience reviewing documentation, assumptions, model logic and validation evidence.

• Strong risk assessment, judgement, analytical and problemsolving skills.

• Excellent documentation and communication skills to support governance decisions.

• Ability to collaborate effectively with data science, engineering, business and risk stakeholders.

• Familiarity with Responsible AI principles such as fairness, transparency and robustness.

• Nice-to-haves: AI Governance Professional (AIGP) certificate or relevant qualifications.