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Application Services

VMware vMotion eliminates the need to schedule application downtime due to scheduled server maintenance through live migration of virtual machines across servers with no disruption to users or loss of service.

VMware High Availability (HA) provides cost effective, automated restart within minutes for all applications in the event of hardware or operating system failures.

Automatic detection of operating system failures. VMware HA detects operating system failures within virtual machines by monitoring heartbeat information. If a failure is detected, the affected virtual machine is automatically restarted on the server.

In the event of physical server failure, affected virtual machines are automatically restarted on other production servers with spare capacity.

In the case of operating system failure, VMware HA restarts the affected virtual machine on the same physical server.


Hot plug virtual storage and network devices to or from virtual machines without disruption or downtime.

Hot extend of virtual disks allows virtual storage to be added to running virtual machines without disruption or downtime.

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