
ManageEngine announced that NetFlow Analyzer v10, the real-time traffic and security analytics software, can now process up to 100,000 flows per second.
This marks a 10x improvement in scalability for NetFlow Analyzer, which previously handled up to 10,000 flows per second with raw data storage. Without raw data storage, NetFlow Analyzer can now scale up to 250,000 flows per second. In addition, NetFlow Analyzer includes a new Ember.js-based web client and enhanced support for Cisco Application Visibility and Control (AVC) reporting.
ManageEngine is demonstrating the new features of NetFlow Analyzer at Cisco Live 2014 being held May 18-22, 2014, at Moscone Center in San Francisco. A silver sponsor of the event, ManageEngine is in booth 2205.
Due to surging volumes of network traffic caused by bandwidth-intensive applications, a growing number of IT teams need a highly scalable monitoring solution capable of handling high-traffic volume. NetFlow Analyzer’s scalability of up to 250k flows per second will seamlessly solve the scalability issues that arise while monitoring networks with high speed and high flow rates. Perhaps the biggest challenge IT teams face as they try to scale their traffic monitoring solutions is managing the multiple collectors needed to handle the traffic load.
“NetFlow Analyzer now scales up to 100,000 or 250,000 flows per second — depending on raw data storage needs — eliminating the need to have multiple collectors,” said Dev Anand, director of product management at ManageEngine. “Large enterprises and data centers don’t have the time and energy to babysit multiple collectors and would greatly benefit from a single tool that can manage enterprise-grade flow volume. We are glad we have a solution that not only fits their budget but also their load.”
In an attempt to meet the challenge of application visibility in the network and further enhance the ability to monitor and control application-wise bandwidth usage, NetFlow Analyzer has sharpened its Cisco Application Visibility and Control reporting.
“We are glad to be associated with Cisco in the joint development of the AVC management feature,” added Anand. “AVC simplifies a lot of steps for a data center network manager and presents a full solution with control capabilities — and not just a way to look deeper. The ability to restrict bandwidth for social activities such as Facebook, Skype and Torrents versus official activities such as CRM, remote meetings, etc. is a face-saver for any network manager.”
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