AI Control Manager - Senior Associate

JPMorgan Chase JPMorgan Chase · Banking · Buenos Aires, Argentina · Commercial & Investment Bank

This role focuses on managing AI controls within a financial institution, involving technical risk assessments of AI/ML use cases, evaluating models for bias, fairness, and security, and developing AI governance frameworks. It requires strong Python skills, understanding of ML concepts, and the ability to translate technical AI risks to non-technical stakeholders. The role also involves using advanced analytics and data-based testing to enhance the control environment and supports end-to-end operations.

What you'd actually do

  1. Conduct technical AI risk assessments for AI/ML use cases, evaluating model design, data quality, algorithmic bias, and potential failure modes
  2. Partner with cross-functional teams to develop and implement AI governance frameworks, policies, and control standards
  3. Perform deep-dive technical reviews of AI solutions to identify risks related to accuracy, fairness, explainability, and security
  4. Translate complex AI/ML technical concepts into clear risk assessments and recommendations for non-technical stakeholders
  5. Collaborate with AI developers, data scientists, and technology teams to understand AI system architecture and identify control requirements

Skills

Required

  • Python for data analysis and automation
  • Machine learning concepts, algorithms, and model development lifecycle
  • Evaluate AI/ML models and identify technical risks (e.g., bias, overfitting, data quality issues, model drift)
  • Understanding of how models are trained, validated, and deployed
  • Analytical and problem-solving skills
  • Communication skills to explain technical AI concepts to non-technical audiences

Nice to have

  • GenAI, large language models (LLMs), or agentic AI systems
  • Risk management, controls, compliance, or audit functions
  • Financial services, AML/KYC processes, or regulatory environments
  • Alteryx or other analytics automation tools
  • AI governance frameworks, model risk management, or responsible AI principles
  • Model validation, model monitoring, or AI quality assurance
  • Master's degree in a technical field
  • API integration and data pipeline development

What the JD emphasized

  • Minimum of 5 years of experience working with AI/ML technologies
  • Ability to evaluate AI/ML models and identify technical risks
  • Experience working with or evaluating AI systems
  • GenAI, large language models (LLMs), or agentic AI systems

Other signals

  • AI risk management
  • AI governance
  • technical risk assessments
  • evaluate AI models
  • control gaps
  • AI developers
  • data scientists
  • GenAI/LLM