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Date: 2015-02-27 20:32:26
Graphical Environment Manager
X1
Remote desktop
X1 Technologies
Software
System software
Digital Research software

C USTO M E R CAS E ST U DY Large Federal Government DoD Agency Superior Search Experience in VDI with X1 Search 8 Virtual Edition TM

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