
Goliath Technologies has officially released Goliath IT Analytics for NetScaler 3.5.
Formerly known as Goliath for NetScaler, the technology has been renamed Goliath IT Analytics for NetScaler based on the significant feature enhancements that have been engineered into the technology which allow IT Operations teams to more proactively analyze and manage end user experience.
The new Goliath IT Analytics for NetScaler supports NetScaler 11.0 and is Citrix Ready Verified technology that translates AppFlow data into real-time performance dashboards, historical reports with no timeframe restriction, and threshold-based alerts that can be sent to any enterprise monitoring framework such as CA Spectrum and HP OpenView, or network monitoring software like SolarWinds.
“There isn’t another technology available that provides this functionality out of the box. We have added performance analytics, historical trending, data export capability and threshold based alerting. Really, what we have done is add a new dimension to Citrix NetScaler which allows IT Operations teams to utilize the NetScaler as part of the ongoing Proactive IT Management and troubleshooting process,” said Tom Peck, Goliath’s CTO and VP of Product Development, Goliath for NetScaler Products Group.
Additional new features in Goliath IT Analytics for NetScaler include: NetScaler end user and server data to isolate performance failures and historical reports without limitation for key metrics like Citrix Sessions, Users, Apps, and Web Performance.
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