Lead the execution of Guardian's AI governance program across analytics, AI, and agentic use cases.
Implement enterprise AI governance policies, standards, and guardrails in alignment with defined risk appetite and regulatory expectations.
Ensure governance processes are repeatable, risk ‑ based , and scalable-not bespoke or ad hoc.
Operating Model & Workflow Integration
Own the AI governance operating model, including intake, review, escalation, monitoring, and change management processes.
Govern AI model lifecycles and AI system behaviors across models, copilots, agents, and RAG workflows, including retrieval strategies, tool use, actions, and human ‑ in ‑ the ‑ loop requirements.
Embed AI governance controls into platforms and delivery workflows so controls are observable, durable, and auditable.
Standards, Controls & Risk Management
Operationalize governance standards for AI development, deployment, monitoring, and retirement.
Implement risk ‑ based controls and escalation paths based on use case type, data sensitivity, and impact.
Partner with Risk, Legal, Compliance, and Security teams to ensure AI governance execution meets internal and external requirements.
Cross ‑ Functional Partnership
Serve as the primary AI governance partner to data science, analytics, engineering, and product teams.
Coordinate with Data Management and Data Governance leaders to ensure AI governance aligns with data controls, quality expectations, and AI ‑ readiness requirements.
Support enterprise governance forums by preparing materials, surfacing risks, and enabling timely decision ‑ making .
Measurement & Continuous Improvement
Define and track operational KPIs for AI governance execution, including coverage, exceptions, monitoring effectiveness, and remediation trends.
Identify gaps, inefficiencies, and emerging risks; recommend adjustments to processes, controls, and tooling.
Continuously improve governance mechanisms as AI capabilities and use cases evolve.
Leadership & Influence
Provide leadership to AI governance practitioners and analysts; set priorities, manage workload, and build governance expertise .
Influence senior stakeholders across business, technology, and risk through strong execution, transparency, and practical problem ‑ solving .
Requirements
12+ years of experience in data, analytics, AI, technology risk, or related disciplines.
Demonstrated experience governing AI systems, including models and agentic workflows, at enterprise scale.
Strong understanding of AI lifecycle considerations, data usage patterns, and risk management principles.
Proven ability to develop and tr anslate strategy into executable standards, workflows, and operating models.
Experience influencing senior stakeholders across business, technology, risk, and legal teams.
Excellent communication skills and ability to operate through influence rather than direct control.
Salary Range:
$152,290.00 - $250,195.00
Our Promise
Inspire Well-Being
Equal Employment Opportunity
Guardian is an equal opportunity employer. All qualified applicants will be considered for employment without regard to age, race, color, creed, religion, sex, affectional or sexual orientation, national origin, ancestry
Benefits
Flexible schedule
Additional Information
Role Purpose
Lead the execution of Guardian's AI governance program by operationalizing enterprise policies, standards, and guardrails across AI models, copilots, agents, and RAG ‑ based workflows. This role ensures AI governance is consistently implemented, scalable, and embedded into delivery and platform workflows-enabling responsible AI adoption while managing risk.
The AI Governance Lead partners closely with Data Science, AI Platforms, Data Management, Data Governance, Risk, Legal, and Technology teams to translate enterprise AI governance strategy into practical processes, controls, and day ‑ to ‑ day ways of working.