
Pyramid Consulting announces a transformative partnership with Dynatrace.
The partnership establishes Pyramid Consulting and its technology division, Celsior, as a premier Global Systems Integrator (GSI) for Dynatrace and enhances their capabilities to drive digital transformation and superior IT performance management for our clients worldwide.
"Our partnership with Dynatrace is all about innovation and efficiency. It is a pivotal step towards enhancing our digital transformation capabilities," said Sanjeev Tirath, CEO and Co-founder of Pyramid Consulting, Inc. "By integrating the AI-powered analytics and automation capabilities from Dynatrace, we are poised to deliver even more robust IT performance management solutions that will drive significant value for our clients."
Dynatrace offers advanced observability, continuous runtime application security, and AIOps to deliver intelligent automation and actionable insights from data. Pyramid Consulting will utilize its team of Dynatrace experts to deliver services, including application assessment, bespoke solution development, and continuous managed services to enhance customers' access to real-time monitoring and cloud-managed services for optimized performance and innovative solutions.
Jay Snyder, SVP, Global Partner and Alliances at Dynatrace, said: "This collaboration will enable teams to unlock the full potential of their IT environments through advanced data insights. Together, we're committed to helping our customers ensure business agility, increase efficiency, and accelerate innovation so they can drive improved business outcomes."
"Teaming up with Dynatrace enhances our ability to offer top-tier digital transformation services," said Vishak Mallya, EVP and COO at Celsior, the technology solutions and services division of Pyramid Consulting. "Our focus will be on leveraging comprehensive observability and automation capabilities from Dynatrace to optimize our clients' applications and infrastructure, ultimately improving their operational resilience."
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