Nyansa delivered direct integration of Citrix application data into its Voyance network analytics platform to eliminate performance blind spots inhibiting the efficient delivery of essential healthcare patient services.
Voyance has been certified by Citrix to work with both XenApp and XenDesktop as part of the Citrix Ready certification program.
Citrix solutions for healthcare IT organizations enable digital transformation by providing clinicians with instant access to patient information as they roam across facilities, devices and networks.
With advanced integration of Citrix data into Nyansa’s AI-Based Voyance analytics platform, IT staff now have the ability to automatically identify the culprit performance problems impacting essential Citrix-based EMR /EHR applications, such as EPIC and Allscripts, that have become the defacto standard for real-time delivery of patient-centered records to clinical staff.
Detailed Citrix application data is directly collected, analyzed and correlated with all other data sources across the entire network to help IT staff to quickly find and fix issues impacting the performance of Citrix applications.
IT staff can now have detailed visibility into proprietary Citrix ICA session formation such as session login times, application server resource utilization as well as when and why machine, application and connection failures occur.
Additionally, the company entered into a collaboration agreement with GE Healthcare to provide unparalleled visibility into the health, performance and behavior of network-connected IoT devices, such as bedside monitors and telemetry equipment being introduced within hospitals everywhere.
Working with GE Healthcare, Nyansa has developed the ability to parse the proprietary GE Unity/Carescape network protocol spoken between GE bedside monitors and GE viewers at the central station.
This protocol analysis enables the ability to calculate client experience metrics such as how well the heart rate, oxygen levels and other vitals are being received by the GE viewers. This user experience data is then fed into Voyance, Nyansa’s user management performance platform.
As a new data source into the Voyance platform, all telemetry data analysis is automatically and securely correlated across the full-stack of network data analytics currently available within Voyance. This now gives IT teams a more complete, accurate and contextual picture of the performance of these mission-critical devices on the network.
Armed with this new data, healthcare IT teams immediately gain a variety of insights not previously possible, these include, but are not limited to: the automatic root cause analysis of monitor connectivity issues, problematic monitors, the baseline behavior of bedside monitor performance and the amount of traffic monitors are sending and receiving.
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