
Dynatrace achieved Amazon Web Services (AWS) Migration and Modernization Competency status for AWS Partners.
This designation affirms Dynatrace’s demonstrated technical proficiency and proven success helping the world’s largest organizations leverage observability and advanced AIOps to simplify and accelerate their application modernization and cloud migration journeys.
“Customers want migration and modernization solutions together to extract maximum value from their AWS cloud journey, and Dynatrace is critical in helping us meet this need,” said Bill Platt, GM, AWS Migration Services. “The Dynatrace platform delivers end-to-end observability and AI-powered insights for modern cloud environments, which allows customers to simultaneously undertake the modernization and migration journey for every application in their portfolio, while achieving faster, smarter, and more secure innovation.”
Achieving this competency distinguishes Dynatrace as an AWS Partner with deep domain expertise helping customers embrace cloud and application transformation, and improving their overall performance, agility, and resiliency at scale. This is further evidence of Dynatrace’s expertise in modern cloud observability, as well as the company’s extensive collaboration with AWS, reflected by:
- Additional AWS competencies, including the recently awarded AWS Machine Learning Competency in Applied AI and AWS Government Competency, distinguishing Dynatrace as the only observability provider in the AWS partner ecosystem to have achieved all three of these.
- Comprehensive support for all 100+ AWS services, including the latest serverless and container management services, which provides customers with precise insights into their AWS and multicloud environments, driving faster cloud adoption and more effective modernization.
“We built the Dynatrace platform to help the innovators in the world’s largest organizations tame cloud complexity and accelerate digital transformation, and we are proud to partner with AWS to drive this at scale,” said Mike Maciag, CMO at Dynatrace. “Every organization eventually hits a point in their digital transformation journey where old approaches no longer work, and complexity reigns. We built the Dynatrace platform with this exact challenge in mind, embedding AI and automation at the core to help organizations break through this barrier and optimize their clouds with speed, efficiency, and confidence.”
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