iTrinegy has released NE-ONE, a combined solution that enables businesses to understand, predict and manage the performance of applications across today’s diverse networks.
NE-ONE incorporates iTrinegy’s proven technology, network profiling, network emulation and application performance monitoring, unified in a solution that will meet customers’ business application performance management needs.
iTrinegy extends its commitment to helping businesses deal with the complexity of today’s public, private, cloud, mobile, virtual networks through the use of NE-ONE. The real plus here is that we have eliminated the complexity of using this type of technology. You don’t need to be a network specialist to use NE-ONE, it’s very easy to use and due to its modular set-up, you just use whichever solution you need, when you need it. The capability for understanding, predicting and managing all aspects of application performance is especially ideal for SMEs as it gives them 3 capabilities within one solution.
“Application performance must be at the forefront of IT decisions, said Frank Puranik, Product Director at iTrinegy “The increasing demands of users accessing applications across a myriad of different devices and mixed networks needs to be addressed! We developed NE-ONE with this in mind, taking away this pain, making it easier to manage the entire process of application performance across today’s complex networks. In the end it’s about making the business as agile and productive as possible. Solutions like NE-ONE go a long way in making this a reality.”
NE-ONE: 3-in-1 to meet business application performance needs:
- Understand/Profile –NE-ONE enables the discovery, measurement and benchmarking of how network resources are being utilized by users, applications, and servers. Through total network transparency, a full understating of both the current capacity and, by profiling over time, how cyclical and changing user demands impact the network and business. NE-ONE helps find out quickly – without layers of complexity or a host of different tools.
- Predict/Emulate - NE-ONE emulation replicates an existing or proposed new network. For existing networks, the network characteristics are gathered through profiling, while for new networks there is a rich array of built-in scenarios. See how applications behave before they are deployed in a production environment. And the same applies for a host of other projects – like migrating to the Cloud or rolling out a new mobile app.
- Manage/Monitor – Pinpoints network performance issues, identifying when things go wrong, and has the ability to drill down to the root cause. It can identify if it’s the network, server, user or application. Is it a problem of bandwidth, latency or packet loss. Once applications are in the production network, NE-ONE helps manage the performance and can immediately alert when things slow down.
NE-ONE comes in a choice of hardware or software solutions: ‘Edge’ is the ready-to-go hardware-based solution while ‘Flex’ is the agile virtual appliance-based solution that can be quickly deployed wherever it’s needed on to a network. “Customers are free to select the right version for their needs” says Puranik “Gaining the greatest return for their investment”
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