How bad data keeps us from good AI
1,443,803 views |
Mainak Mazumdar |
TED Salon: Dell Technologies
• October 2020
The future economy won't be built by people and factories, but by algorithms and artificial intelligence, says data scientist Mainak Mazumdar. But what happens when these algorithms get trained on biased data? Drawing on examples from Shanghai to New York City, Mazumdar shows how less-than-quality data leads to AI that makes wrong decisions and predictions -- and reveals three infrastructural resets needed to make ethical AI possible.
The future economy won't be built by people and factories, but by algorithms and artificial intelligence, says data scientist Mainak Mazumdar. But what happens when these algorithms get trained on biased data? Drawing on examples from Shanghai to New York City, Mazumdar shows how less-than-quality data leads to AI that makes wrong decisions and predictions -- and reveals three infrastructural resets needed to make ethical AI possible.
This talk was presented at a TED Salon event given in partnership with Dell Technologies. TED's editors chose to feature it for you.
Read more about TED Salons.About the speaker
Mainak Mazumdar is a leading expert of technology-led disruption in media and consumer behavior.
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About TED Salon
TED Salons welcome an intimate audience for an afternoon or evening of highly-curated TED Talks revolving around a globally relevant theme. A condensed version of a TED flagship conference, they are distinct in their brevity, opportunities for conversation, and heightened interaction between the speaker and audience.
This talk was presented at a TED Salon event given in partnership with Dell Technologies. TED's editors chose to feature it for you.
Read more about TED Salons.