ΑΙhub.org
 

AAAI presidential panel – factuality and trustworthiness


by
14 July 2026



share this:

This image shows a pixelated room, it looks like a typical bedroom or office. Most of it is heavily pixelated, but a shelf, table and plant, windows and clock can be recognised. These are all outlined in yellow boxes. Elise Racine / Morning View / Licenced by CC-BY 4.0

The Future of AI Research report, published in March 2025, aims to clearly identify the trajectory of AI research in a structured way. The report was led by outgoing AAAI President Francesca Rossi and covers 17 different AI topics. Members of the report team, and other selected AI practitioners, are taking part in a series of video panel discussions covering selected chapters from the report.

In the sixth discussion in the collection, the three panellists tackle factuality and trustworthiness. Specifically, they cover the following topics:

  • Understanding factuality: why preventing false outputs from large language models remains AI’s toughest problem
  • Beyond accuracy: how trustworthiness encompasses understandability, robustness, and human values—essential for deploying AI in high-stakes environments
  • Practical solutions: explore proven approaches including fine-tuning, retrieval-augmented generation, output verification, and model simplification strategies

Panel Members

  • Oren Etzioni, TrueMedia.org, University of Washington
  • Henry Kautz, University of Virginia at Charlottesville
  • Kush R Varshney, IBM Fellow

Moderator

  • Francesca Rossi, AAAI past president, IBM Fellow and AI Ethics Global Leader


tags: , ,


Lucy Smith is Senior Managing Editor for AIhub.
Lucy Smith is Senior Managing Editor for AIhub.

            AUAI is supported by:



Subscribe to AIhub newsletter on substack



Related posts :

The secret to human ‘brilliance’ that AI just can’t match

  13 Jul 2026
New research reveals how people learn social conventions with minimal data – and why that sets us apart from LLMs.

Pre-training isn’t bitter enough

  10 Jul 2026
Given an unlabeled data stream, and a small set of verifiable downstream examples, can we use those examples during continued pre-training?

Interview with Thi Kieu Khanh Ho: Time-series anomaly detection

  09 Jul 2026
How can we teach AI systems to recognize when something unusual or abnormal is happening in complex, real-world data streams, without relying on large amounts of labeled examples?

#RoboCup2026 social media round-up

  08 Jul 2026
Find out what the teams got up to at this year's RoboCup extravaganza in Incheon.

#RoboCup2026 – humanoid league knockout stages

  06 Jul 2026
Find out who won the small, middle and large divisions in Incheon.

#RoboCup2026 – humanoid league day 2

  03 Jul 2026
Find out the latest from day two of the competition.

#RoboCup2026 – humanoid league day 1

  02 Jul 2026
In the first of our round-ups from the humanoid league we introduce the competition, and report some preliminary results.



AUAI is supported by:







Subscribe to AIhub newsletter on substack




 















©2026.05 - Association for the Understanding of Artificial Intelligence