Recommendation
Machine learning is becoming ubiquitous. This branch of artificial intelligence works by teaching a computer program what correct output looks like. This powerful method raises questions regarding fair outcomes for the people machine learning (ML) affects. Software engineer and attorney Aileen Nielsen examines different kinds of fairness and how training data and algorithms can promote them. For those developing machine learning models, she provides useful examples in Python.
Summary
About the Author
Software engineer and lawyer Aileen Nielsen combines work at a deep learning start-up with a fellowship in law and technology at ETH Zürich.
Learners who read this summary also read
Related Skills
AI Transformation
Corporate Finances
Develop Your Thinking Skills
Human Resources
Increase Your Cultural Awareness
Leadership
Leverage AI for Finance
Leverage AI for Leadership
Leverage AI in Your Daily Tasks
Soft Skills
Strengthen Your Digital Literacy
Understand AI
Workplace Skills
Promote Diversity, Equity, and Inclusion
Use AI for Credit Scoring
Use AI Ethically
Leverage AI for Compliance
Protect Your Data and Privacy
Mitigate Cognitive Biases
Use AI Ethically as a Leader
Understand AI Ethical Impact
Understand Unconscious Bias
Comment on this summary