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GovTech Innovator: Kevin Jackson

I am honored to be named a GovTech Innovator by Government Technology

Today I am honored to be named a GovTech Innovator by Government Technology. My personal thanks goes out to Hilton Collins for letting me Hangout with him on Google+.

Govtech.com is the online portal to Government Technology, a division of e.Republic, Inc. Government Technology and its sister publications are an award-winning family of magazines covering information technology's role in state and local governments. Through in-depth coverage of IT case studies, emerging technologies and the implications of digital technology on the policies and management of public sector organizations, Government Technology chronicles the dynamics of governing in the information age. Managers, elected officials, CIOs and technology staff at all levels of government gain IT news and event information from Government Technology magazine.

Check out the post at http://www.govtech.com/e-government/GovTech-Innovators-Kevin-Jackson-Federal-Cloud-Computing-Expert.html

 

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Kevin Jackson, founder of the GovCloud Network, is an independent technology and business consultant specializing in mission critical solutions. He has served in various senior management positions including VP & GM Cloud Services NJVC, Worldwide Sales Executive for IBM and VP Program Management Office at JP Morgan Chase. His formal education includes MSEE (Computer Engineering), MA National Security & Strategic Studies and a BS Aerospace Engineering. Jackson graduated from the United States Naval Academy in 1979 and retired from the US Navy earning specialties in Space Systems Engineering, Airborne Logistics and Airborne Command and Control. He also served with the National Reconnaissance Office, Operational Support Office, providing tactical support to Navy and Marine Corps forces worldwide. Kevin is the founder and author of “Cloud Musings”, a widely followed blog that focuses on the use of cloud computing by the Federal government. He is also the editor and founder of “Government Cloud Computing” electronic magazine, published at Ulitzer.com. To set up an appointment CLICK HERE

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