Netuitive has been awarded Enterprise Management Associates’ (EMA) “Market Definer” award for its IT analytics enabling large enterprises to understand the business impact of IT as part of large scale application performance management (APM) initiatives.
The award was given in conjunction with EMA’s Radar Report for Advanced Performance Analytics (APA) Use Cases including Netuitive’s profile which can be accessed here.
Authored by EMA Vice President, Dennis Drogseth, the report is an industry assessment of 22 vendors’ APA solutions including input from 41 customer deployments. According to EMA, “APA has evolved out of classic service performance management, but with a twist – rather than siloed approaches to monitoring and analysis, APA demands more eclectic data collection, huge levels of analytical scalability and strong insights into cross-domain and/or business outcomes.”
EMA evaluated Netuitive’s open predictive IT analytics platform in five key areas: deployment, administration and services; cost advantage; architecture and integration; functionality and vendor strength.
Netuitive demonstrated the capability to monitor across silos, incorporating virtually any performance metric – from customer experience, to IT systems, to business metrics – into a holistic model of application performance. This enables large enterprise customers to easily understand how IT performance is impacting their business in real-time. As part of the evaluation EMA spoke with Netuitive customers including one who reported that Netuitive is collecting a billion metrics a day from established commercial and open-source monitoring tools.
“More than any other vendor in this radar, Netuitive has helped to define the APA market with its versatile capabilities for analytics—long before the term ‘analytics’ or even ‘big data’ got much play,” Drogseth said. “Netuitive’s leadership shows in its solid enterprise and service provider adoption, the maturity and power of its visualization to harvest the raw power of its analytic strengths, and its focus on broadening its integration base and easing the requirements for integration to further strengthen its position as an APA powerhouse.”
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