New Relic added free Server Monitoring as a core capability of its SaaS Application Performance Management (APM) tool, giving organizations visibility into critical resource utilization as well as deeper insight into cloud application performance.
This feature combines with availability monitoring, Real User Monitoring, and Application Monitoring to create an unparalleled solution for ensuring business-critical web applications meet high standards for performance and availability. Other significant features released today include application topology mapping, browser transaction tracing, support for Python and advanced SQL statement analysis.
New Relic Server Monitoring measures critical system metrics for CPU, Memory, Network Activity and Processes, and delivers them in context with application performance and end-user monitoring data in a single user interface. Users can drill down from a specific application performance issue directly to the system-level root cause.
“With Server Monitoring, we’ve expanded our core application performance technology to include another critical capability only six months after our release of real-user monitoring," said Lew Cirne, Founder and CEO of New Relic. "New Relic offers in a single solution what it takes other performance vendors multiple, disparate products to provide.”
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