
SL Corporation announced the latest version of the RTView Enterprise Monitor platform with major enhancements for TIBCO users.
Key to this latest release is the launch of the RTView TIBCO Hawk solution package which integrates seamlessly with SL’s monitoring solutions for TIBCO EMS, BW (BusinessWorks) and BE (BusinessEvents). With enhanced alert filtering by role, TIBCO users can now gain immediate yet tailored visibility across virtually all TIBCO-based infrastructures.
“Finally, our TIBCO-based users can get the visibility they need without a lot of hassle,” said Tom Lubinski, President and CEO of SL Corporation. “Combining all of SL’s RTView TIBCO solutions packages, our customers can quickly deploy end-to-end, out-of-the-box views of their entire TIBCO infrastructure – complete with key metrics, history, role-based alerts and default thresholds – in a matter of days.”
The RTView TIBCO Hawk solution package not only aggregates and correlates infrastructure data across all Hawk hosts into single-pane-of-glass views, it also helps TIBCO Hawk users manage rules and alert thresholds globally, from a centralized display. Users can consolidate alert events, triggered by Hawk alert rule bases, along with performance data relevant to monitored hosts. This enables RTView Enterprise Monitor to serve as an event correlation engine and event management system for alerts that are generated by TIBCO Hawk, RTView Enterprise Monitor, and other monitoring tools such as Oracle Enterprise Manager.
With enhanced alert filtering across the entire RTView Enterprise Monitor product line, users can also be associated with a specific role, and their summary screens will only show the alerts that impact the applications and infrastructure they are responsible for.
Updates to SL’s RTView TIBCO EMS Monitor, BW Monitor and BE Monitor solution packages ensure that all monitoring solutions work seamlessly with the new Hawk solution package to provide the most complete visibility into the health state of TIBCO-based applications and infrastructures.
Leveraging SL’s TIBCO monitoring solutions along with other solutions under the RTView Enterprise Monitor umbrella, users can go further in determining how their TIBCO instances are affecting the critical applications in their enterprise. They can consolidate metrics from existing monitoring solutions and tools in order to provide visibility across an entire application infrastructure, including TIBCO applications and other critical application components. Using RTView Enterprise Monitor’s CMDB functionality, users are able to create service models that allow them to trace service impact and prioritize issues based on their potential affect on the business.
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