Blue Medora announced the availability of its new vRealize Operations Bundle for FlexPod.
The company’s new software management bundle enables customers to monitor their FlexPod environment through Blue Medora endpoint management packs tailored specifically to the Flexpod integrated architecture. Blue Medora’s new bundle provides a comprehensive view of the entire FlexPod environment, which unifies monitoring across all of the components in the FlexPod stack.
With the new Blue Medora management software for FlexPod, IT administrators and application owners can quickly identify any FlexPod virtualization, compute, storage and networking issues before they occur and spread through the enterprise stack. A single console allows administrators to manage, monitor and troubleshoot their entire FlexPod environment within VMware vRealize Operations while reducing the total cost of ownership for FlexPod systems.
“With a single, at-a-glance view into their entire data center, enterprise customers can see the potential risks and improve performance in their FlexPod environments,” said Mike Kelly, Blue Medora CTO. “Through our tight integration with the most critical components in the data center, enterprise IT managers are able to find and correct problems before they occur. Blue Medora is creating the visibility necessary to right-size environments and ensure they are healthy and running at peak performance.”
The new Blue Medora bundle includes three out-of-box dashboards – FlexPod Overview, FlexPod Investigation and FlexPod Alerts – that can monitor the FlexPod environment and depict the overall health of FlexPod resources over heat maps. The dashboards also include graphs and alerts to evaluate the performance metrics for an affected resource.
Other Blue Medora management software features include:
- Machine learning capabilities – extend vRealize Operations’ performance capabilities to FlexPod
- Updated status and awareness checks – stay ahead of issues with vROps predictive analytics. The bundle includes alerts, views and reports to fully exploit vRealize Operations 6.x
- Relationship mapping – instantly view relationships between FlexPod resources
- Alerting and recommendations – view directly within vROps for faster solutions
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