
Dynatrace announced the launch of its Services Endorsement Program.
The program provides Dynatrace partners access to new training and exams focusing on unified observability and security, AIOps, and advanced DevSecOps and CloudOps.
Developed by the Dynatrace ACE Services team, the curriculum equips participants with knowledge and skills to architect, implement, and manage Dynatrace solutions that underpin the complex, cloud-native ecosystems the world’s leading organizations depend on to drive digital transformation at scale. Partners who complete the program will become Dynatrace Services-Endorsed Partners, a designation that validates their services capabilities and demonstrates their ability to help customers drive cloud modernization and optimization faster and more securely.
“To achieve scale, we must equip our partners around the globe with the skills to help customers implement and maximize the value of the Dynatrace platform,” said Michael Allen, VP of Worldwide Partners at Dynatrace. “As organizations are increasingly resource-constrained, it has become critical that they accelerate cloud adoption and modernization with AI-powered precise answers and extensive, intelligent automation of manual processes. The Dynatrace Services Endorsement Program allows us to help our customers accomplish this by empowering partners with the skills, resources, and expertise to set them up for success. In addition, the program helps us ensure that our customers always receive consistent, reliable, best-in-class support to innovate with confidence and speed.”
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