Towards Accountability for Machine Learning Datasets - Practices from Software Engineering and Infrastructure
Offered By: Association for Computing Machinery (ACM) via YouTube
Course Description
Overview
Explore a conference talk that delves into accountability practices for machine learning datasets, drawing insights from software engineering and infrastructure. Examine the research presented by B. Hutchinson, E. Denton, M. Mitchell, A. Hanna, A. Smart, C. Greer, P. Barnes, and O. Kjartansson at the FAccT 2021 virtual conference. Discover how principles from software development can be applied to improve transparency, responsibility, and ethical considerations in the creation and maintenance of ML datasets. Learn about potential strategies for addressing challenges in dataset accountability and their implications for the broader field of artificial intelligence.
Syllabus
Towards Accountability for Machine Learning Datasets: Practices from Software Engineering and Infras
Taught by
ACM FAccT Conference
Related Courses
Translation Tutorial - Thinking Through and Writing About Research Ethics Beyond "Broader Impact"Association for Computing Machinery (ACM) via YouTube Translation Tutorial - Data Externalities
Association for Computing Machinery (ACM) via YouTube Translation Tutorial - Causal Fairness Analysis
Association for Computing Machinery (ACM) via YouTube Implications Tutorial - Using Harms and Benefits to Ground Practical AI Fairness Assessments
Association for Computing Machinery (ACM) via YouTube Responsible AI in Industry - Lessons Learned in Practice
Association for Computing Machinery (ACM) via YouTube