ThousandEyes announced the general availability of Device Layer, a new capability that adds network device health context to ThousandEyes Path Visualization, enabling organizations to deliver superior application and service performance.
Device Layer automatically discovers the network devices that matter for business critical applications and services, enabling organizations to deliver a superior digital experience.
Expanding ThousandEyes' Network Intelligence with device data now gives organizations the most accurate and complete understanding of end-to-end application and service delivery from the cloud, to the enterprise wide area network, to endpoint devices.
ThousandEyes Path Visualization with Device Layer provides granular data on the performance of the routers, switches, firewalls and load balancers within an enterprise network and the inter-dependencies of how these devices connect to each other to deliver business critical applications.
ThousandEyes also automatically maps and visualizes the network topology of the Enterprise WAN to identify historical and real-time changes in network infrastructure. By monitoring how each individual device is performing, and integrating and correlating that data with network, application and routing information, ThousandEyes enables network teams to pinpoint issues, from Layer 7 to Layer 2, to rapidly troubleshoot connectivity problems without switching between monitoring tools.
"In today's highly automated and distributed environments, our customers want to focus on innovation and delivering an exceptional customer experience, not managing complexity," said Mohit Lad, CEO and co-founder of ThousandEyes. "Trying to understand network infrastructure without any application context is meaningless. With Device Layer, our Path Visualization now automatically discovers the network devices that business applications depend on. Adding these insights to ThousandEyes Network Intelligence provides the most complete visibility of application delivery so that organizations can deliver a superior digital experience for all users."
ThousandEyes Network Device Insights is now generally available.
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