Aternity announced the general availability of the Aternity Frontline Performance Intelligence Platform (FPI) v5.0.
Equipped with comprehensive application and desktop coverage, advanced, real-time analytics, and massive scalability, the Aternity FPI Platform v5.0 dramatically reduces business disruptions, increases user productivity, and delivers breakthrough optimization of enterprises’ support resources.
Highlights of the new Aternity FPI v5.0 release include:
* Web 2.0, .Net, Java, Thick Client, VDI, Citrix and Enterprise Outlook Monitoring.
* Frontline Performance Intelligence that delivers fast Mean-Time-To-Repair (MTTR) for the toughest desktop application problems.
* Advanced analytics that drives rapid response to performance issues.
* Privacy Compliance and Massive Scalability for ensuring enterprise readiness of your Application Performance Management (APM) strategic initiatives.
“TRAC's research shows that a Web browser is the top blind spot for monitoring application performance,” said Bojan Simic, President & Principal Analyst, TRAC Research. “This survey also revealed that monitoring the impact of performance of user devices on the quality of end-user experience is one of the key challenges for gaining full visibility into the performance of business-critical applications. The new capabilities included in Aternity's FPI v5.0 release enable enterprises to close some of the key visibility gaps for monitoring the quality of end user experience and allows them to proactively identify, troubleshoot, and correct problems before they affect users.”
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