
AppDynamics has been named to AlwaysOn’s 2015 OnCloud Top 100 Private Companies. The recognition as one of the best-of-breed companies for B2B applications, management tools, security and infrastructure, signifies AppDynamics’ technology leadership and continued disruption of legacy software companies.
The AlwaysOn editorial team, along with partners and industry experts (including Kleiner Perkins Caufield & Byers, Accel Partners, Microsoft, Salesforce.com and Samsung Ventures), analyzed the entrepreneurial ecosystem to select the top 100 companies bringing the cloud to the enterprise and the enterprise to the future.
This year’s OnCloud 100 companies were selected based on five criteria: innovation; market potential; commercialization; stakeholder value; and media buzz. AppDynamics and its cohort of winning companies will be honored at AlwaysOn’s Top Company Showcase on Feb. 26, 2015, at the College of San Mateo.
“It’s truly an honor to be acknowledged by AlwaysOn for the third consecutive year,” said Jyoti Bansal, founder and CEO of AppDynamics. “Since its inception, AppDynamics has been laser-focused on bringing cutting-edge cloud innovations to market that are tightly tailored to the needs of our customers. Our Application Intelligence Platform drives the bottom line by monitoring performance and extracting much more meaningful analytics.”
Today, the B2B cloud infrastructure, SaaS, and on-demand innovation community has taken charge of business infrastructure, pushing and opening up new avenues of technology for global business users. The AppDynamics Application Intelligence Platform helps today's software-defined businesses proactively monitor, manage, and optimize the most complex software environments — from desktop to mobile — all in real time, and all in production.
With cloud, on-premise, and hybrid deployment flexibility, AppDynamics works and partners with many of the world's most innovative companies, including Citrix, Edmunds, Expedia, Fox News, HBO, John Deere, OpenTable, salesforce.com, Sephora, StubHub, Union Pacific Railroad and more.
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