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An editor has nominated this article for deletion. You are welcome to participate in the deletion discussion, which will decide whether or not to retain it.Feel free to improve the article, but do not remove this notice before the discussion is closed. For more information, see the guide to deletion. Find sources: "Flipora" – news · newspapers · books · scholar · JSTOR%5B%5BWikipedia%3AArticles+for+deletion%2FFlipora%5D%5DAFD |
This article is an orphan, as no other articles link to it. Please introduce links to this page from related articles; try the Find link tool for suggestions. (June 2014) |
Flipora product logo | |
Founded | 13 June 2012 |
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Headquarters | Sunnyvale , United States |
Website | flipora |
Flipora is a personalized content recommendation service that recommends web content to users on their favorite topics. Flipora’s machine learning algorithm automatically categorizes the web into thousands of interest categories and surfaces content on those topics to its users. Flipora’s users follow topics and other like-minded users to receive a highly personalized feed of content recommendations. Flipora users can upvote content recommendations they enjoy and automatically promote those content recommendations to their followers. Flipora crossed 25 million users worldwide in April 2014.
Flipora also has a content recommendation iPhone app. Flipora's app allows a user to connect their Facebook and Twitter accounts and claims to use a machine learning to infer a user’s interests based on their Facebook and Twitter activity and also activity within the app. The app then allegedly makes recommendations to users on those topics.
References
- ^ "Flipora knows who you are, offers what you want". The Hindu. Apr 20, 2014.
- "The Past, Present, and Future of Content Discovery". Forbes. Sep 12, 2014.
- ^ "Are Interest-Based Networks the Way of the Future?". Forbes. Oct 16, 2014.
- "A.I. Is Helping the Internet Know What You Want Before You Want It". Inc Magazine. Oct 7, 2014.
- "4 Essential iPhone Apps for Late 2014". Inc Magazine. Nov 25, 2014.
- "Five New Apps Challenging Facebook and Twitter for Content Discovery". Forbes. Jan 27, 2015.
- "4 New iPhone Apps Changing the Way We Discover Content". Huffington Post. April 27, 2015.