
BigPanda has launched BigPanda Service Health Analytics, new functionality providing customers with the ability to visualize and understand historical incident patterns enabling them to better determine the source, cost and impact of infrastructure issues.
“With the addition of BigPanda Service Health Analytics, IT Infrastructure owners can now make rapid data driven decisions about how to allocate resources based on detailed historical metrics", said BigPanda CEO Assaf Resnick. "Customers have been thrilled at how they can now more effectively prevent incidents and reduce downtime through the enhanced ability to visualize and better understand historical trends.”
Key features include customizable alert trend reports, advanced correlation analytics and MTTR tracking.
With BigPanda Service Health Analytics customers are now able to obtain a deeper understanding of their monitoring effectiveness, understand the sources of infrastructure incidents and costs, and visualize the health of their infrastructure.
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