Class Central is learner-supported. When you buy through links on our site, we may earn an affiliate commission.

LinkedIn Learning

Applied AI Auditing in Python

via LinkedIn Learning

Overview

Coursera Plus Annual Sale: All Certificates & Courses 25% Off!
Learners how to conduct audits to quantify unfairness and disparities to uncover bias and develop fairer AI systems.

Syllabus

Introduction
  • Get responsible with AI: Auditing AI systems in Python
  • What you should know
  • Using the exercise files and datasets
1. Introduction to Applied AI Auditing
  • AI auditing for compliance and fairness
  • AI audit stakeholders
  • Localized fairness and compliance
2. Data Auditing
  • 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
3. AI Model Auditing
  • Tools for AI audits
  • Scoping an AI audit
  • Model audit setup
  • Audit your classifier for fairness
  • Challenge: Audit a classifier
  • Solution: Audit a classifier
4. System Audits and Error Analysis
  • Red teaming
  • Error analysis
  • Challenge: Error analysis
  • Solution: Error analysis
5. Audit Artifacts
  • Making audit recommendations
  • Sharing audit results and increasing accountability
  • Algorithmic recourse
  • Algorithmic design history file
Conclusion
  • Thanks for watching

Taught by

Ayodele Odubela

Reviews

Start your review of Applied AI Auditing in Python

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.