VMware announced the general availability of VMware vSphere 5, delivering nearly 200 new and enhanced capabilities to help customers transform IT by driving greater efficiency from existing investments and improving operational agility.
The foundation of VMware's cloud infrastructure suite, VMware vSphere 5, includes new features and enhancements to deliver better application performance and availability for all business-critical applications. It also introduces advanced automation capabilities to free IT from manual processes and allow it to be more responsive to changing business requirements.
VMware vSphere 5 supports virtual machines (VMs) that are up to four times more powerful than previous versions - VMs can now be configured with up to 1 terabyte of memory and 32 virtual CPUs. When combined with VMware vSphere 5's enhanced High Availability, these gains in VM scalability and performance enable customers to virtualize any business-critical applications with confidence in the application's continued performance and availability.
VMware vSphere 5 also introduces three key new flagship features – Auto-Deploy, Profile-Driven Storage and Storage DRS – that extend the platform's unique datacenter resource management capabilities, delivering intelligent policy management to support an automated "set it and forget it" approach to managing datacenter resources, including server deployment and storage management. Customers can define policies and establish the operating parameters, and VMware vSphere 5 does the rest.
VMware vSphere 5 and the cloud infrastructure suite are supported by more than 25,000 partners, including technology partners, independent software vendors (ISVs), solution providers, service providers, and systems integrators, as well as every major global hardware manufacturer. VMware's partner community continues to mature as the company consistently sets the bar for innovation in virtualization and cloud technologies.
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