
SL Corporation announced the availability of RTView Core version 6.5 with new HTML5 implementations of RTView General and Label objects, as well as enhanced Status History graphs.
The RTView Core Real-Time Data Management System provides the processing engine and presentation capabilities for large-scale distributed monitoring and control applications. It sits at the center of the entire suite of RTView product components, including the RTView® Enterprise Monitor and its many pluggable Solution Packages. Consisting of both a Real-Time Data Engine and a suite of Development Tools, RTView Core provides developers, system integrators, and OEMs with a complete set of capabilities for implementing rich and customized monitoring solutions.
Enhancements to RTView Core version 6.5 include:
- A number of RTView graphical objects including rectangle, circle, checkbox, and label objects, have been enhanced to allow them to be rendered as HTML elements in a Web thin-client deployment. This enhancement can improve performance and also allows the user to copy text strings in the objects to the clipboard.
- Status History graph has been enhanced to support a new property to limit size of label area, mouseover text returns and custom definition of a Right/Double-click context menu.
- TIBCO Hawk data source has been enhanced to include a new column to obtain the amount of time, in milliseconds, that a subscription data process took.
SL Corporation’s flagship monitor products, including RTView Enterprise Monitor, TIBCO EMS Monitor and Oracle Coherence Monitor, are all developed using RTView Core, utilizing the full power and easy development of advanced performance monitoring solutions for application infrastructure, service or business.
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