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With Huge Fines, German Law Pushes Social Networks To Delete Abusive Posts

Anas Modamani speaks to the media Feb. 6 in Wuerzburg, Germany, after a court session about his lawsuit against Facebook. Modamani

Social media companies could be penalized by as much as $58.3 million if they don't remove a malicious post from their platforms soon after it is reported — in some cases within 24 hours.

(Image credit: Thomas Lohnes/Getty Images)

News : NPR http://ift.tt/2z7P1Oj October 31, 2017 at 03:44PM

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