
Dynatrace announced the availability of its latest core innovations for customers running the Dynatrace® platform on Microsoft Azure.
These innovations include the following:
- Dynatrace Grail™ data lakehouse unifies the massive volume and variety of observability, security, and business data from cloud-native, hybrid, and multicloud environments while retaining the data’s context to deliver instant, cost-efficient, and precise analytics.
- Dynatrace® AutomationEngine features a no- and low-code toolset and leverages Davis® AI to empower teams to create and extend customized, intelligent, and secure workflow automation across their cloud ecosystem.
- Dynatrace® AppEngine features a no- and low-code toolset and leverages Davis AI to empower teams to easily create and share custom, intelligent, and secure apps that leverage the insights from the data generated by their clouds.
- The new Dynatrace user experience, including powerful dashboarding capabilities and interactive Dynatrace Notebooks, drives tighter cross-team collaboration and enables more people within an organization to make data-backed decisions.
“Thriving in the digital era requires a unified approach to observability, security, and business data analytics,” said Steve Tack, SVP of Product Management at Dynatrace. “Bringing our latest platform technologies to Microsoft Azure enables more customers and teams within organizations to harness our industry-leading AI, analytics, and automation capabilities to modernize cloud operations, expedite releases of high-quality and secure software, and ensure flawless digital experiences for their users.”
“Observability and application security have become essential for organizations as they embrace cloud-native development and migrate more workloads to Microsoft Azure,” said Alvaro Celis, VP of Solutions Areas for ISV Sales at Microsoft. “Dynatrace’s platform delivers precise AI-powered answers and intelligent automation that organizations can use to streamline their cloud operations to innovate faster and more securely.”
The enhanced Dynatrace platform, featuring Grail, AutomationEngine, AppEngine, and the new user experience, will be accessible as a limited availability release for customers running on Microsoft Azure by the end of the calendar year 2023 and generally available for these customers in the first quarter of the calendar year 2024.
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