Artificial Intelligence

Leveraging Artificial Intelligence to Enroll in Federal and State Benefits

Led by: Alister Martin

  • Understand how AI tools can identify and connect eligible individuals to federal and state benefits
  • Explore case studies of how LINK Health integrates AI into patient care and community outreach
  • Learn practical strategies for applying AI to reduce administrative complexity and improve equity in public benefit enrollment
Alister Martin

Senior Fellow, The Burnes Center for Social Change

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Format: Instructor-led

Date & Time: September 17, 2025, 2:00 PM ET

Duration: 60-minutes

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Millions of Americans who qualify for federal and state benefits—such as health insurance, food assistance, and housing support—never enroll, often due to complex processes and information gaps. In this workshop, Dr. Alister Martin will share how artificial intelligence can help bridge this divide. Participants will learn how AI can streamline enrollment pathways, reduce administrative burdens, and support frontline providers in connecting patients and residents with critical services. We’ll explore lessons from LINK Health’s work at the intersection of health care, technology, and equity, and discuss how public sector leaders can apply these innovations in their own communities.

This workshop has been designed for public sector professionals working in health, human services, social safety net programs, or community engagement—and anyone interested in leveraging AI to improve equitable access to benefits.

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