
New Relic announced plans to establish its first European availability zone for its Digital Intelligence Platform located in Germany.
Upon its expected launch in 2018, customers will be able to access the full power of New Relic’s cloud-based platform, while having the confidence that their data remains within Europe.
“Enterprises across Europe are moving to the cloud, adopting DevOps, and creating new digital customer experiences to drive business growth––and they need a single platform to monitor the success of these critical efforts,” said Lew Cirne, CEO and founder, New Relic. “With the announcement of our planned European availability zone in Germany, we are doubling down on our commitment to servicing our customers across Europe, which has so much opportunity.”
New Relic has also expanded its team across Europe to offer increased partnership and support to its growing global customer base. The company has offices focused on sales and service in Dublin, London, Munich, and Zürich. In addition, in 2015 New Relic announced its European Development Center in Barcelona, responsible for creating new platform innovations across the New Relic Digital Intelligence Platform, including recently expanded integrations with Amazon Web Services.
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