
Dynatrace, (formerly Compuware APM), has been named by Internet Retailer Magazine as the #1 provider of web performance monitoring solutions to the largest and most successful online retailers in the US for another year.
According to the Internet Retailer Top 500 Guide 2014, nearly as many of the top 500 online retailers used Dynatrace web performance monitoring solution as the second and third-place web performance monitoring vendors combined.
Additionally, 17 of the top 20 online retailers claimed to be using Dynatrace - including powerhouse brands such as Amazon, Apple, Staples, Sears, Liberty Interactive Corp., Netflix, Office Depot, Dell, Costco, and Sony.
Dynatrace is a market-leading web and mobile performance solution. It empowers online retailers to deliver the best possible user-experience, and maximize performance and availability of their e-commerce web, mobile, cloud and streaming applications so they can provide fast, successful, reliable online shopping experiences. Driven by end-user experience, Dynatrace monitors and evaluates application performance across the entire e-commerce delivery chain — from mobile shoppers on a smartphone or tablet, through the cloud, and deep into the data center — tracing every transaction from user-click to code-line, ensuring fast, seamless access to applications, regardless of how customers access them.
"This is great honor to once again be the #1 choice of online retailers. Dynatrace has established itself as the go-to web performance monitoring solution for the most successful web and mobile retail sites in the world, enabling them to deliver superior experiences for their users across all channels no matter what challenges arise - from managing huge demands during peak shopping seasons, to delivering new applications faster, and more," said John Van Siclen, GM of Dynatrace. "Our ongoing commitment to innovation and application performance helps our customers achieve new levels of business success."
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