Learners how to conduct audits to quantify unfairness and disparities to uncover bias and develop fairer AI systems.
Overview
Syllabus
Introduction
- Get responsible with AI: Auditing AI systems in Python
- What you should know
- Using the exercise files and datasets
- AI auditing for compliance and fairness
- AI audit stakeholders
- Localized fairness and compliance
- How to collect benchmark datasets
- Ethical and inclusive data collection
- Explore a dataset for representation
- Data auditing example
- Challenge: Audit a dataset
- Solution: Methods for increasing representation in data
- Tools for AI audits
- Scoping an AI audit
- Model audit setup
- Audit your classifier for fairness
- Challenge: Audit a classifier
- Solution: Audit a classifier
- Red teaming
- Error analysis
- Challenge: Error analysis
- Solution: Error analysis
- Making audit recommendations
- Sharing audit results and increasing accountability
- Algorithmic recourse
- Algorithmic design history file
- Thanks for watching
Taught by
Ayodele Odubela