
New Relic Infrastructure is now available on AWS Marketplace.
Amazon Web Services (AWS) customers can purchase New Relic Infrastructure directly through AWS Marketplace, making it easier for operations teams to adopt and monitor the cloud. With more than 100,000 active AWS customers using software from AWS Marketplace, these customers can obtain consolidated billing for all of their AWS services, software and now SaaS subscriptions such as New Relic.
“New Relic provides a leading offering for monitoring the cloud, which is critical for modern operations teams that need to understand the performance of their digital businesses,” said Dave McCann, VP, AWS Marketplace and Catalog Services, Amazon Web Services, Inc. “Our customers want easy-to-use SaaS solutions like New Relic Infrastructure, now available for purchase on AWS Marketplace, with unified billing through their existing AWS account.”
“AWS and New Relic are extremely complementary, with AWS providing a fast, flexible cloud environment, and New Relic delivering real-time analytics to move confidently in the cloud,” said John Gray, SVP Business Development, New Relic. “We are thrilled to launch with this important new AWS Marketplace SaaS Subscriptions offering, making it even easier for AWS customers to start monitoring the cloud with New Relic.”
New Relic helps companies of all sizes across the world monitor their entire application infrastructures, whether they are migrating to AWS, running hybrid architectures or are all-in with AWS. This comprehensive monitoring approach enables greater sharing of information and helps drive consistency across developers and IT operations teams. Additionally, because New Relic is cloud-based and architected to process large analytic data sets, customers are able to take advantage of the dynamic nature of AWS with visibility into application performance and inform how to best allocate resources.
New Relic Infrastructure is generally available and can be accessed on AWS Marketplace.
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