The AI Equity Imperative: Building a More Inclusive Future with AI
.MP4, AVC, 1280x720, 30 fps | English, AAC, 2 Ch | 1h 25m | 217 MB
Instructor: Chinasa Okolo
.MP4, AVC, 1280x720, 30 fps | English, AAC, 2 Ch | 1h 25m | 217 MB
Instructor: Chinasa Okolo
In this course, Chinasa T. Okolo delves into the essential principles of AI equity and provides you with strategies to ensure responsible AI development in your organization. Learn about the importance of ethical oversight and governance frameworks that underpin AI systems. Find out how successful implementations, such as those by IBM and SAP, integrate ethical considerations at every stage of development. Explore the NIST AI Risk Management Framework, a voluntary guidance tool designed to address AI's complex risks while maximizing its benefits. Discover how you can contribute to building technologies that serve diverse global communities fairly and effectively. This course offers valuable insights into creating AI systems that are both innovative and ethical, enabling you to champion AI equity and ensure that AI development is not only technically sound but also socially responsible.
Learning objectives
- Identify the key concepts of AI equity, including fairness, inclusivity, access, and representation, and describe their importance for businesses and society.
- Explore cultural blind spots in AI and explain how cultural assumptions shape AI outcomes and their real-world consequences.
- Analyze regional disparities in AI development and compare the impacts of Western-centric data dominance with the need for investment in the Global South.
- Evaluate the business risks associated with neglecting AI equity and identify strategies to mitigate risks through diverse team building and ethical AI governance.
- Describe successful responsible AI practices from leading companies, including IBM, TetraTech, and SAP.