Dr Simone Stumpf | Interpretability, Fairness, Controllability - Toward Responsible AI | MLiS 2022

preview_player
Показать описание
Machine Learning in Science Conference 2022

Simone Stumpf is Reader in Responsible & Interactive Artificial Intelligence at the School of Computing Science, University of Glasgow.

Interpretability, Fairness, Controllability – and the Process of Getting to Responsible AI

Abstract: "Machine learning holds the promise of transforming our lives for the better, but these systems need to be developed responsibly. There have been many calls that stakeholders and users of these systems need to understand how these systems work so that they are trusted appropriately and used effectively. Explainable AI (XAI) has made great strides towards making these systems more interpretable but so far involvement of stakeholders in fairness and control has lagged behind. In this talk I will cover some of my own work in this area, and the challenges to be overcome to build responsible AI."

0:00 Intro
0:46 Main Talk
15:32 Questions
________________________________________________

Machine Learning in Science is a community of researchers based at the University of Glasgow, showcasing research at the intersection of machine learning and science.

Рекомендации по теме