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From shrimp Jesus to fake self-portraits, AI-generated images have become the latest form of social media spam
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June 14, 2011, 6 p.m.

Links on Twitter: Selling mag stories to Hollywood, evolving C4FCM, publishing on Facebook

RT @lheron: Interested in a job at @nytimes? I just heard that our recruiting team tweets: @NYTimesRecruit »

New York mag gets a new Hollywood agent http://nie.mn/luLrQ1 »

"If investigative journalists don’t explain the impact of their work, who will?" http://nie.mn/jwo8HS »

Big congrats to @ProPublica‘s A.C. Thompson, winner of the 2011 I.F. Stone Medal http://nie.mn/lyIEX6 »

.@c4fcm: "On June 22, a lot happens. Don’t freak out." http://nie.mn/mrpmFr »

.@NiemanReports’ latest issue is live, and chock full of wisdom on community engagement http://nie.mn/jjfDaw »

His work with #amina leads to @acarvin getting the Taiwanese CGI treatment http://nie.mn/jfxhy0 »

Iceland is crowdsourcing suggestions for its new constitution. Using Facebook. (via @onthemedia) http://nie.mn/kgJX2x »

3 months ago, Rockville Central went Facebook-only. What it’s learned so far: http://nie.mn/kzCWIs »

"When your boss leaves the room and asks for ideas before he returns, the clock starts ticking." http://nie.mn/mOfTSO »

How to write about slow-moving stories http://nie.mn/izvGt8 »

Is real-time reporting the new "first rough draft of history"? http://nie.mn/jUFgyJ »

 
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From shrimp Jesus to fake self-portraits, AI-generated images have become the latest form of social media spam
Within days of visiting the pages — and without commenting on, liking, or following any of the material — Facebook’s algorithm recommended reams of other AI-generated content.
What journalists and independent creators can learn from each other
“The question is not about the topics but how you approach the topics.”
Deepfake detection improves when using algorithms that are more aware of demographic diversity
“Our research addresses deepfake detection algorithms’ fairness, rather than just attempting to balance the data. It offers a new approach to algorithm design that considers demographic fairness as a core aspect.”