Operationalizing LLMs & RAG for Public Health: Building Reliable, Deployable Systems

Chairs: Dr. Aisha Abdullah Aldosery & Dr. Fedor Vitiugin

Click here for the CFP and submission guidelines.

Mission and objectives


The objective of this workshop is to explore the practical deployment, infrastructure needs, and operational challenges of using Large Language Models (LLMs) and Retrieval-Augmented Generation (RAG) systems in digital public health. In public-health contexts, the cost of hallucinations, strict data governance requirements, and the need for trustworthy, auditable outputs introduce constraints that are fundamentally different from general-purpose LLM applications. While the main conference track focuses on methodological and ethical advances in AI for health, this workshop specifically targets the engineering, implementation, and real-world integration of RAG-based systems that can support reliable decision-making, surveillance workflows, and field operations under these constraints, with emphasis on robust retrieval pipelines, evaluation frameworks, and deployment in real operational settings.

Target Audience


Submissions and participation are welcome including:

  • Data scientists and ML/LLM practitioners
  • Engineers building LLM/RAG systems
  • Researchers in AI safety and health governance
  • Industry partners in AI for healthcare

Format (proposed)


The workshop will include:

  • A panel discussion chaired by Dr. Aisha Abdullah Aldosery
  • Paper oral presentations selected through a competitive review process
  • A Best Paper Award
  • Fully in-person delivery

Speakers


Dr. Aisha Abdullah Aldosery (Chair)

King Abdulaziz City for Science and Technology (KACST), Saudi Arabia


Dr. Fedor Vitiugin

University of Turku, Finland