
AppDynamics has been included in the SharesPost 100 List. The SharesPost 100 List recognizes the most innovative, compelling private companies in the United States. SharesPost Investment Management leverages a proprietary multi-factor ranking process that incorporates revenue growth, market potential, product stage, management team and investor quality.
In fiscal Q3 FY15, ending October 31, 2014, the company’s trailing 12-month revenue grew more than 200 percent; trailing 12-month bookings grew more than 115 percent, and the company’s annualized bookings run-rate, based on fiscal Q3 results, surpassed $160 million. Additionally, during the quarter, the company concluded a record number of nine deals greater than one million dollars. By every metric, AppDynamics’ latest results underscore the rapid rise in demand for application intelligence and emergence of AppDynamics as the leader in the category.
With more than 550 employees worldwide, the company continues to expand its international presence with offices in Australia, India and London. Most recently, the company expanded its presence in Texas with a new office in Dallas.
Inclusion in the SharesPost 100 list provides further market validation of AppDynamics Application Intelligence Platform and leadership in technology innovation. The AppDynamics Application Intelligence Platform is a comprehensive solution enabling companies to maximize business performance. The platform embraces three core principles:
- See everything with unified monitoring. AppDynamics enables an integrated view of real-time user experience, application performance and infrastructure capacity.
- Act fast with BizDevOps collaboration. AppDynamics provides the ability to isolate, resolve and automate the resolution of application infrastructure bottlenecks -- in production.
- Know the business impact with application analytics. AppDynamics enables deep real-time analytics to help businesses make better decisions, and create bigger impact -- all with certainty and confidence.
The platform is designed and architected to give business users the certainty that their business is running at its best, to give IT the operational visibility and control they need, and to give end users the great experiences they’ve come to expect and demand.
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