
Dynatrace announced the availability of the Dynatrace® platform on Microsoft Azure hosted in the United Arab Emirates (UAE).
The Dynatrace® Software Intelligence Platform combines broad and deep observability and continuous runtime application security with advanced AIOps and automation to provide answers and intelligent automation from data at an enormous scale. As a result of its native availability on Microsoft Azure hosted in the UAE, joint customers will benefit from enhanced performance and data sovereignty. In addition, with just a few clicks, they can deploy Dynatrace through the Azure Marketplace to deliver flawless and secure digital experiences.
“Dynatrace is committed to partnering with customers and partners in the UAE to drive cloud modernization and innovation,” said Michael Allen, VP of Worldwide Partners at Dynatrace. “With the Dynatrace platform now available as native SaaS on Microsoft Azure hosted in the UAE, our joint customers can instantly benefit from seamless access to the platform’s industry-leading observability, AIOps, and application security. This enables them to accelerate innovation and drive consistently better business outcomes.”
Naeem Yazbick, Regional Director UAE at Microsoft, added, “Microsoft and Dynatrace share a vision of assisting the world’s leading organizations in accelerating innovation and driving successful business outcomes...In addition, its native presence in the Azure Marketplace will make it easy for IT professionals to find and realize the benefits of this powerful solution.”
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