
YASH Technologies announced a partnership with ScienceLogic.
This partnership enables YASH to deliver business service-centric operations aligned with their Intelligent Business Services Monitoring offering, backed by highly differentiated experience-level agreements (XLAs).
“YASH Intelligent Business Services Monitoring (IBSM) will leverage ScienceLogic SL1 AIOps-based Monitoring and Automation platform and assist customers in driving context-based innovation and fostering competitive differentiation,” said Manoj K. Baheti, CEO YASH Technologies. “In the rapidly evolving IT operations scenario, this would address the growing need for autonomous IT operations, enhance customer experience and accelerate digital transformation initiatives.”
SL1 Business Services capabilities add executive-level insights into business service health, availability, and risk. Leveraging this futuristic platform with advanced artificial intelligence, machine learning, and automation capabilities, YASH wants its customers to drive business service-centered operations, eliminate noise, and reduce P1 and P2 incidents by enabling event correlation in complex containerized, cloud-based, and hybrid IT environments.
“Yash is leveraging our AIOps platform to create a family of advanced managed services that go beyond traditional IT outsourcing or generic managed IT services, by focusing on business-centric services rather than managing technology alone. This is a new class of service offering, which differentiates Yash considerably and delivers real business outcomes for enterprises.” Dave Link, CEO and Founder of ScienceLogic.
YASH Technologies is a “Partner of Choice” for Fortune 500 companies globally, providing them with consulting, cloud, IT infrastructure, digital solutions, and services. Leveraging the in-depth experience and domain expertise of YASH’s Global IMS Centre of Excellence (CoE), IBSM offers an approach to the way customers run and manage their enterprise IT. As part of its next-generation Infrastructure portfolio, YASH IBSM offerings brings tangible business value for its customers.
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