uptime software has released up.time 7, a complete IT dashboard for watching over servers, applications, networks, and IT services.
Designed to help IT managers and network administrators keep networks performing ‘in the green’, up.time 7 now includes a deep suite of network performance management tools that provide visibility across all vendor switches, routers and other network devices – from a single view.
"IT needs to know immediately when problems start, why the network is slow, or if an imminent network failure is coming. Jumping between vendor-specific tools to find answers can waste precious time and be a frustrating experience," says Alex Bewley, CTO of uptime software. "With up.time 7, network performance issues or network devices with faults are highlighted on a single dashboard so you can always see what problems need your attention, all from a quick glance."
The dashboards included in up.time 7 provide complete network monitoring and analysis over the performance and availability of all routers, switches, servers and other SNMP-enabled devices (including Cisco, Dell, HP, IBM, Juniper, and more) right out-of-the-box.
"The ever-changing array of devices in use across enterprise-grade networks has made network monitoring more complex than ever," explains Bewley. "up.time 7 offers enterprise IT departments an easy-to-use, affordable and flexible tool that can handle whatever devices, regardless of vendor, that are thrown at them – with little set-up time."
up.time 7 is a highly scalable and extendable network performance suite that provides detailed bandwidth and bottleneck monitoring, alerting and reporting functions that send alerts on port bandwidth, errors, discards or latency issues directly to a network manager's in-box or mobile device, before they impact mission-critical applications.
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