YoVDO

Towards Causal Foundations of Safe AI - Tutorial

Offered By: Uncertainty in Artificial Intelligence via YouTube

Tags

Causality Courses Fairness Courses

Course Description

Overview

Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Explore a comprehensive tutorial from the Uncertainty in Artificial Intelligence conference that delves into the causal foundations of safe AI. Learn how Pearlian causality provides a formal framework for reasoning about AI risks and mitigation strategies. Discover causal models of agents and methods for uncovering them. Examine causal definitions of key concepts like fairness, intent, harm, and incentives. Investigate potential risks associated with AI systems, including misgeneralization and preference manipulation. Gain insights into mitigation techniques such as impact measures, interpretability, and path-specific objectives. Presented by James Fox and Tom Everitt, this 1 hour 36 minute session offers valuable knowledge for ensuring ethical and beneficial AI development as its capabilities and societal impact continue to grow.

Syllabus

UAI 2023 Tutorial: Towards Causal Foundations of Safe AI


Taught by

Uncertainty in Artificial Intelligence

Related Courses

What is Character? Virtue Ethics in Education
University of Birmingham via FutureLearn
Detect and Mitigate Ethical Risks
CertNexus via Coursera
Identify guiding principles for responsible AI in government
Microsoft via Microsoft Learn
Practicing Fairness as a Manager
LinkedIn Learning
Values and Ethics: Case Studies in Action
LinkedIn Learning