
Catchpoint announced the release of its new Employee Experience Monitoring solution, allowing companies to proactively identify and fix device, application and network problems encountered by a global and distributed workforce.
Additionally, these new capabilities will help first-level IT staff to quickly troubleshoot individual and enterprise-wide problems without unnecessary ticket escalations and employee frustration.
“The sudden shift to remote work has put huge pressure on IT teams that are now responsible for delivering reliable and consistent experience to employees distributed in home “offices,” with variable and often unstable internet connections. This has amplified the need for more proactive approach to monitoring. By the time an employee has to make a call to complain that they “lost connection to email” or that they “could not connect to video conference with an important client,” is too late. Productivity is gone and employee morale is diminished,” said Mehdi Daoudi, CEO of Catchpoint. “First and foremost, our new Employee Experience Monitoring helps companies proactively identify and resolve issues quickly and before employees are impacted, hence increasing their productivity in this new era of work.”
Catchpoint Employee Experience Monitoring combines real-time endpoint analytics, global user sentiment data and full-stack active (synthetic) monitoring approaches. IT teams now have access to the broadest data set and deeper insights designed to address the challenges and demands of today’s remote workers’ digital experience.
Additionally, Catchpoint offers the end-user self-help to remediate challenges improving the employees’ overall experience with the networks, devices and applications they rely on.
Traditional monitoring solutions attempt to measure end-user experience by collecting data from either the network or the device. Catchpoint monitors end-user experience by starting at the endpoint and then providing in-depth visibility into the application, network and device. Catchpoint Employee Experience Monitoring capabilities:
· Enable end-users to self-remediate with a new desktop application that shows device and network health with recommendations to how to resolve issues
· Empower IT teams to resolve remote employee issues like VPN performance
· Proactively monitor digital employee experience from your end-user devices with expanded synthetic measurements
· Deliver a single platform for proactively solving problems highlighting immediate issues that need attention
The new Employee Experience Monitoring solution is part of Catchpoint’s Digital Experience Monitoring SaaS platform and it is available immediately. It is backed up by Catchpoint’s 24/7 support that is included in the solution for no additional cost.
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