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Flipora also has a content recommendation ] app. The app allows a user to connect their ] and ] accounts. The app then uses machine learning to infer a user’s interests based on their Facebook and Twitter activity along with the activity within the app. Finally, the app makes recommendations to users based on topics deemed to be within their sphere of interest.<ref name="Forbes03">{{cite news | last =Rampton | first =John | title =Five New Apps Challenging Facebook and Twitter for Content Discovery | newspaper =| location = | pages = | language = | publisher = '']''| date =27 January 2015 | url =http://www.forbes.com/sites/johnrampton/2015/01/27/five-new-apps-challenging-facebook-and-twitter-for-content-discovery/ | accessdate =24 May 2015}}</ref><ref name="Inc02">{{cite news | last =Rampton | first =John | title =4 Essential iPhone Apps for Late 2014 | newspaper =| location = | pages = | language = | publisher = '']''| date =25 November 2014 | url =http://www.inc.com/john-rampton/4-essential-iphone-apps-for-late-2014.html| accessdate =24 May 2015}}</ref><ref name="HuffPo">{{cite news | last =Rampton | first =John | title =4 New iPhone Apps Changing the Way We Discover Content| newspaper =| location = | pages = | language = | publisher = '']''| date =27 April 2015 | url =http://www.huffingtonpost.com/john-rampton/4-new-iphone-apps-changin_b_7149096.html| accessdate =24 May 2015}}</ref> In November 2014, ] classified Flipora's ] software
Flipora also has a content recommendation ] app. The app allows a user to connect their ] and ] accounts. The app then uses machine learning to infer a user’s interests based on their Facebook and Twitter activity along with the activity within the app. Finally, the app makes recommendations to users based on topics deemed to be within their sphere of interest.<ref name="Forbes03">{{cite news | last =Rampton | first =John | title =Five New Apps Challenging Facebook and Twitter for Content Discovery | newspaper =| location = | pages = | language = | publisher = '']''| date =27 January 2015 | url =http://www.forbes.com/sites/johnrampton/2015/01/27/five-new-apps-challenging-facebook-and-twitter-for-content-discovery/ | accessdate =24 May 2015}}</ref><ref name="Inc02">{{cite news | last =Rampton | first =John | title =4 Essential iPhone Apps for Late 2014 | newspaper =| location = | pages = | language = | publisher = '']''| date =25 November 2014 | url =http://www.inc.com/john-rampton/4-essential-iphone-apps-for-late-2014.html| accessdate =24 May 2015}}</ref><ref name="HuffPo">{{cite news | last =Rampton | first =John | title =4 New iPhone Apps Changing the Way We Discover Content| newspaper =| location = | pages = | language = | publisher = '']''| date =27 April 2015 | url =http://www.huffingtonpost.com/john-rampton/4-new-iphone-apps-changin_b_7149096.html| accessdate =24 May 2015}}</ref> In November 2014, ] classified Flipora's ] software
version 2.1.55.0 as a "low-risk adware".<ref name="Symantec">{{cite web |url=http://www.symantec.com/security_response/writeup.jsp?docid=2014-110423-2058-99 |title=Adware.Flipora|author=<!--Staff writer(s); no by-line.--> |website=www.symantec.com |publisher=] |accessdate=24 May 2015}}</ref>
version 2.1.55.0 as a "low-risk adware".<ref name="Symantec">{{cite web |url=http://www.symantec.com/security_response/writeup.jsp?docid=2014-110423-2058-99 |title=Adware.Flipora|author=<!--Staff writer(s); no by-line.--> |website=www.symantec.com |publisher=] |accessdate=24 May 2015}}</ref>
Flipora is a personalizedcontentrecommendation service that recommends web content to users based on their interests and web activity. Flipora’s machine learning algorithm automatically categorizes the web into thousands of interest categories and provides content to users that suits their identified interests. Users can also follow topics and other like-minded users to receive content recommendations that are further personalized. Flipora users can upvote content recommendations they enjoy and automatically promote those content recommendations to their followers. Flipora had amassed 8 million users by June 2012 and crossed 25 million users worldwide in April 2014.
Flipora also has a content recommendation iPhone app. The app allows a user to connect their Facebook and Twitter accounts. The app then uses machine learning to infer a user’s interests based on their Facebook and Twitter activity along with the activity within the app. Finally, the app makes recommendations to users based on topics deemed to be within their sphere of interest. In November 2014, Symantec classified Flipora's Windows software
version 2.1.55.0 as a "low-risk adware".