Building a Responsible AI Program: Context, Culture, Content, and Commitment
Offered By: LinkedIn Learning
Course Description
Overview
          Organizations who use AI need to ensure they do so in a socially responsible way. Learn how in this course.
        
Syllabus
          Introduction
- Actionable steps to responsible AI
- Moving from principles to practice
- Introducing the Landon Hotel
- Connector: Start with context
- The AI legal landscape
- Understanding ethical AI risks
- Getting clear on organizational values and AI risks
- The AI ethics statement, policies, and metrics
- Documenting AI
- Procurement and Shadow AI
- Connector: From context to culture
- Tone at the top
- Existing roles
- The AI ethics committee
- Diversity and stakeholders
- Connector: From culture to content
- The big three: Privacy, bias, and explainability
- Addressing privacy, bias, and explainability in your AI program
- Data done right
- Document, document, document
- Environmental impacts
- A brief word about cybersecurity
- Connector: Moving to commitment
- Model drift and monitoring
- The role of independent audit
- Nurturing a responsible AI culture
- The journey of responsible AI
Taught by
Katrina Ingram
Related Courses
Data Science EthicsUniversity of Michigan via edX Advanced Generative Art and Computational Creativity
Simon Fraser University via Kadenze AI for Legal Professionals (I): Law and Policy
National Chiao Tung University via FutureLearn Ethical Issues in Data Science
University of Colorado Boulder via Coursera Artificial Intelligence by CrashCourse
CrashCourse via YouTube
