eG Innovations and Itexis, a provider of application service quality emulation technology, announced a partnership.
The partnership will enable eG Innovations customers to emulate users accessing key web, Citrix, virtual desktop applications in production environments, measure the user experience from one or more locations and proactively alert and diagnose performance issues quickly.
"Performance management today is about monitoring and managing the user experience," said Srinivas Ramanathan, CEO and founder, eG Innovations. "Synthetic, real user emulation and monitoring capability is an integral part of what customers are looking for. The combined eG Innovations / Itexis solution will provide customers with a cost effective and easy way of monitoring the performance of key applications from different locations in the infrastructure."
Using Itexis AppsMon, user actions are recorded to include keystrokes and clicks. These actions are replayed using eG Innovations’ flagship solution, eG Enterprise, at scheduled intervals to emulate user interactions with the applications being monitored. Alerts can be generated whenever application failures or slow response is detected. Web-based applications, Client/Servers as well as Citrix and remote desktop accesses can be monitored using this approach.
The combined eG Enterprise/Itexis solution provides customers a way to simulate user accesses from the actual client applications they use to access key business applications. Customers involved in IT transformation projects such as migration from physical to virtual environments, or upgrades from one application version to another will find this solution particularly useful. They can compare the performance of applications prior to the migration and after the migration and thereby gauge the success of their IT transformation projects.
"We are pleased to be partnering with eG Innovations" said Serge Levi, CEO at Itexis. "Our products are very complementary. While Itexis AppsMon, can be used for synthetic monitoring of user interactions, eG Innovations provides in-depth performance visibility into the IT infrastructure. The combined solution allows companies to deliver top-notch performance for key business applications."
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