Artificial Intelligence and You
075 - Guest: Michael Hind, IBM AI Explainability Expert, part 2
22 Nov 2021
This and all episodes at: https://aiandyou.net/ . Training an AI to render accurate decisions for important questions can be useless and dangerous if it cannot tell you why it made those decisions. Enter explainability, a term so new that it isn't in spellcheckers but is critical to the successful future of AI in critical applications. Michael Hind is a Distinguished Research Staff Member in the IBM Research AI department in Yorktown Heights, New York. His current research passion is the area of Trusted AI, focusing on governance, transparency, explainability, and fairness of AI systems. He helped launch several successful open source projects, such as AI Fairness 360 and AI Explainability 360. In part 2, we talk about the Teaching Explainable Decisions project, some of Michael’s experience with Watson, the difference between transparency and explainability, and a lot more. All this plus our usual look at today's AI headlines. Transcript and URLs referenced at HumanCusp Blog.
No persons identified in this episode.
This episode hasn't been transcribed yet
Help us prioritize this episode for transcription by upvoting it.
Popular episodes get transcribed faster
Other recent transcribed episodes
Transcribed and ready to explore now
3ª PARTE | 17 DIC 2025 | EL PARTIDAZO DE COPE
01 Jan 1970
El Partidazo de COPE
TNB Tech Minute: FTC Orders Instacart to Pay $60 Million Over Deceptive Practices
18 Dec 2025
WSJ Tech News Briefing
Hidden Gem Stocks We Love at the End of the Year
18 Dec 2025
Motley Fool Money
Google Undercuts the Field, OpenAI Builds an App OS, and China Accelerates
18 Dec 2025
The Daily AI Show
Lucy Liu
18 Dec 2025
Fresh Air
#2428 - Michael P. Masters
18 Dec 2025
The Joe Rogan Experience