Director, Data and AI Governance
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About the Role
Role Overview
As the Director of Data & AI Governance, you will establish and lead enterprise-wide data management programs that ensure safe, compliant, high-quality data and AI. You will oversee Data Governance, AI Governance, and Data + AI Stewardship, serving as the central authority on policies, forums, and controls across R&D, Lab Operations, Commercial, and SG&A domains. You will lead the Data & AI Governance Council through advocacy and a well thought data management strategy.
This role goes beyond policies into technical governance — it requires experience of how to build frameworks, deploy controls in code, and integrate governance into engineering delivery. The role spans all dimensions of governance, including: quality, privacy, security, agentic automation, AI risk management, bias/fairness testing, evals, and vendor AI evaluation.
Key Responsibilities
Governance Council & Operating Model
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Define enterprise data management strategy and operating model and ensure that it is executed consistently across the enterprise.
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Chair and operationalize the AI & Data Governance Council, driving decision-making and accountability across legal, regulatory, compliance, IT, security, engineering, and product.
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Lead a federated stewardship model, ensuring business units own data while governance enforces consistency and compliance.
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Establish governance forums (steering committees, working groups, architecture boards) with clear outcomes.
Data Governance & Quality
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Build and drive adoption of 360° master/reference datasets (e.g., Case360, Patient 360, Provider 360, Billing 360) and ensure they are maintained as sources of truth for analytics and AI
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Partner with engineering teams to build interoperable standards that can be used to connect domain datasets to create longitudinal data products
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Define and enforce enterprise data governance policies, ensuring consistency in data definitions, lineage, and stewardship across all domains
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Build and manage enterprise data catalogs and metadata services to make data discoverable, trustworthy, and reusable across the organization.
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Establish and operate data quality frameworks with validation rules, anomaly detection, and automated testing to ensure accuracy, completeness, and timeliness.
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Embed data quality checks and lineage tracking directly into data and AI pipelines so that governance guardrails can be adopted without friction.
AI Policy Engineering & Implementation
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Develop AI use case risk management framework (RMF) to evaluate AI use cases from a governance, regulatory, medical, privacy, security, and risk standpoint
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Build and maintain an AI risk register and incident response plan for all AI use cases
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Develop governance policies (privacy, security, quality, fairness, integrity) aligned to HIPAA, CLIA, FDA, GDPR, and emerging AI regulations.
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Translate policies into technical implementations by embedding controls into:
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ETL pipelines, feature stores, and model registries
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CI/CD workflows for ML/GenAI models
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Prompt orchestration and output logging for LLMs
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Bias/fairness testing, drift detection, explainability dashboards
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AI Risk & Automation
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Build and execute agentic automation processes and associated guardrails to enable business process automation
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Build documentation and process to ensure agent accountability through change history, audit logs, versioning etc.
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Track external regulatory trends and industry standards (e.g., NIST AI RMF, EU AI Act, FDA AI/ML guidance)
AI Change Management & Vendor Governance
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Lead AI change management initiatives, including training programs, awareness campaigns, and a network of governance champions to drive adoption of best practices.
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Partner with Corporate Communications to cascade governance updates, AI guardrails, and usage guidelines across all levels of the organization.
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Develop and enforce vendor and third-party AI evaluation frameworks, assessing external AI tools for governance, data security, model risk, and compliance posture before integration.
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Track and manage vendor AI risks through standardized assessments, approvals, and monitoring processes.
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