Facebook to help in suicide prevention through AI, pattern recognition

This feature is available on Facebook Live, would connect troubled user with an expert in real-time

IANS  |  New York 

facebook, suicide
An example of how the new tools work

With the surge in instances of people using Live to stream suicides, the giant is expanding the portfolio of its prevention tools that use artificial intelligence (AI) and pattern recognition to help troubled users.

The new tools are similar to the ones that launched in 2015, which allowed users' friends to flag a troubling image or status post.

The feature was now this feature is available on Live and would connect a troubled user with an expert in real-time, The Verge reported on Thursday.

The users who reported the video will also get resources to personally reach out and help their friends if they wish to identify his or herself.

has partnered with organisations like the National Prevention Lifeline, the National Eating Disorder Association and the Crisis Text Line so when users' posts are flagged and they opt to speak to someone, they can connect immediately via Messenger.

Using data from reported posts, would use its AI to spot patterns between flagged items, identifying posts that suggest that user may be

"Our Community Operations team will review these posts and, if appropriate, provide resources to the person who posted the content, even if someone on has not reported it yet," was quoted as saying.

Recently, CEO recognised the need to detect signs of users to offer help before it was too late.

"There have been terribly tragic events -- like suicides, some live streamed -- that perhaps could have been prevented if someone had realized what was happening and reported them sooner," he was quoted as saying.

"To prevent harm, we can build social infrastructure to help our community identify problems before they happen," Zuckerberg added.

The new tools were currently being tested in the US and no timeline was given for future rollouts.

Facebook to help in suicide prevention through AI, pattern recognition

This feature is available on Facebook Live, would connect troubled user with an expert in real-time

This feature is available on Facebook Live, would connect troubled user with an expert in real-time

With the surge in instances of people using Live to stream suicides, the giant is expanding the portfolio of its prevention tools that use artificial intelligence (AI) and pattern recognition to help troubled users.

The new tools are similar to the ones that launched in 2015, which allowed users' friends to flag a troubling image or status post.

The feature was now this feature is available on Live and would connect a troubled user with an expert in real-time, The Verge reported on Thursday.

The users who reported the video will also get resources to personally reach out and help their friends if they wish to identify his or herself.

has partnered with organisations like the National Prevention Lifeline, the National Eating Disorder Association and the Crisis Text Line so when users' posts are flagged and they opt to speak to someone, they can connect immediately via Messenger.

Using data from reported posts, would use its AI to spot patterns between flagged items, identifying posts that suggest that user may be

"Our Community Operations team will review these posts and, if appropriate, provide resources to the person who posted the content, even if someone on has not reported it yet," was quoted as saying.

Recently, CEO recognised the need to detect signs of users to offer help before it was too late.

"There have been terribly tragic events -- like suicides, some live streamed -- that perhaps could have been prevented if someone had realized what was happening and reported them sooner," he was quoted as saying.

"To prevent harm, we can build social infrastructure to help our community identify problems before they happen," Zuckerberg added.

The new tools were currently being tested in the US and no timeline was given for future rollouts.

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