Timnit Gebru used to believe it was possible to curb tech giants’ worst impulses from the inside out. She tried it herself at Microsoft, where in 2018 she coauthored a seminal paper that revealed just ...
Years after she was ousted from Google, Timnit Gebru is still exposing the dangers of building language models that are quite so large. Why so many tech whistleblowers are women Women appear more ...
Google employees are searching for answers after a second top researcher into the ethics of artificial intelligence was fired Friday. Margaret Mitchell was co-leader of the company’s ethical AI team ...
On this episode of Tech Won’t Save Us, a discussion on the past year in artificial intelligence. Paris Marx Here's where to find podcasts from The Nation. Political talk without the boring parts, ...
Sam Altman’s ouster from OpenAI was compared to Google's firing of Dr. Timnit Gebru. Following Sam Altman’s ouster from OpenAI and subsequent return to cull the board prompted many, according to ...
Timnit Gebru is shaping the future of tomorrow. Gebru has always loved math, science, and music. She attended Stanford University from 2008 to 2017, earning a bachelor’s, master’s, and Ph.D. in ...
From the San Francisco Business Times. Timnit Gebru is a champion of AI ethics. She's driven groundbreaking research at some of the biggest companies in the world and is uniquely placed to critique ...
Sam Altman's high-profile firing has drawn comparisons to Timnit Gebru's exit from Google. Gebru, a well-respected AI researcher, no longer works at Google after authoring a paper on biases in AI.
Timnit Gebru co-wrote one of the most influential AI ethics papers in recent memory, a journal article arguing that the biases so present in large language models were no accident—but rather the ...
To continue reading this content, please enable JavaScript in your browser settings and refresh this page. Preview this article 1 min "Unfortunately, AI is not magic ...
Some results have been hidden because they may be inaccessible to you
Show inaccessible results