
The Opvizor monitoring product has been extended from the data center to support cloud providers Amazon Web Services (AWS) and Microsoft Azure.
Now, Opvizor provides performance and risk monitoring as well as log analysis from the data center to the edge including storage, network, and virtual desktop infrastructures (VDI).
With Opvizor, it’s possible to find performance bottlenecks quickly and easily by using the same dashboard and analytics whether the environment is VMware vSphere, AWS, or Azure. The solution provides deep insights into hybrid and multi-cloud infrastructure to analyze the performance of applications and, where possible, reduce their resource requirements. Opvizor also shows how applications interact with each other to optimize them and save money on infrastructure.
This helps realize maximum operational efficiency from complex hybrid and multi-cloud computing infrastructure by using the same monitoring platform. With its mature and highly graphical monitoring and analysis, Opvizor aggregates data points for more effective and faster root cause analysis of issues and increases overall visibility of IT infrastructure.
Previously, Opvizor was optimized for VMware vSphere running in the data center. Now, by adding AWS and Microsoft Azure, Opvizor helps enterprises deal with the challenges of monitoring performance across different computing platforms while improving their ability to troubleshoot and also track security issues.
Opvizor monitors, analyzes, and tracks virtual and physical IT infrastructure. Whether it's VMware, Microsoft Azure, or AWS, customers get the full freedom of choice and total control over everything in their VDI, cloud, and server infrastructure. Opvizor helps make it possible to shift more time to developing, designing, and implementing solutions to challenging problems while being able to control every detail of the virtualized infrastructure with pinpoint-accuracy, real-time monitoring, troubleshooting, and alerting.
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