
ScienceLogic and LTIMindtree, a global technology consulting and digital solutions company, announced a collaboration on a unified, intelligent platform that will enable organizations to maximize their cloud investments while ensuring reliability, scalability, and efficiency.
“We believe our strategic partnership with LTIMindtree will help organizations harness the power of data and automation to optimize their cloud and IT infrastructure for business success,” said Dave Link, CEO, ScienceLogic. “Working with LTIMindtree, a proven leading innovator in global technology solutions for enterprises, will ultimately provide our customers with more options to maximize their cloud investments and scale for the future.”
“Embracing a synergy of intelligence and innovation, this partnership with ScienceLogic will forge a new era of transformative possibilities,” said Nachiket Deshpande, Chief Operating Officer, and Executive Board Member, LTIMindtree.
ScienceLogic’s platform enables organizations to proactively monitor and manage their IT environments across physical, hybrid, and multi-cloud infrastructures. Leveraging the power of artificial intelligence and machine learning, ScienceLogic offers comprehensive insights into performance, availability, and business service impact, empowering IT teams to identify and resolve issues swiftly before they impact business operations.
LTIMindtree’s cloud and IT infrastructure management solutions offer robust orchestration, automation, and optimization capabilities. By harnessing LTIMindtree’s Canvas CloudXperienz platform, businesses gain greater control and efficiency in managing their cloud resources, ensuring optimal performance, scalability, and cost optimization.
The combined strengths of the ScienceLogic and LTIMindtree platforms will empower organizations to gain end-to-end visibility, proactively resolve issues, optimize cloud operations, scale with confidence, and drive digital transformation.
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