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Intel Leads Investment in Joyent

Already a Series B investor, Intel led the round with existing investor Greycroft Partners and new investor Liberty Global

Joyent, the Infrastructure-as-a-Service (IaaS), Platform-as-a-Service (PaaS) house, has gotten $15 million in Series C money to expand international operations and build momentum for its PaaS widgetry.

Intel, already a Series B investor, led the round with existing investor Greycroft Partners and new investor Liberty Global kicking in.

Joyent wants to expand its Smart Technologies for cloud computing, including its SmartPlatform open source project and node.js support.

It claims recurring customer revenues have more than doubled since December. It’s pushing into EMEA and has data centers in China and four US sites. Dell is OEMing its private cloud offering. It underrides Kabam, LinkedIn, Country Life and the e-commerce Gilt Group.

More Stories By Maureen O'Gara

Maureen O'Gara the most read technology reporter for the past 20 years, is the Cloud Computing and Virtualization News Desk editor of SYS-CON Media. She is the publisher of famous "Billygrams" and the editor-in-chief of "Client/Server News" for more than a decade. One of the most respected technology reporters in the business, Maureen can be reached by email at maureen(at)sys-con.com or paperboy(at)g2news.com, and by phone at 516 759-7025. Twitter: @MaureenOGara

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