
Nexthink announces a new partnership with Persistent Systems to be a preferred Digital Employee Experience (DEX) vendor to provide digital workplace support to companies around the globe.
The partnership will help businesses drive results through intelligent diagnostics and workflow automation, as well as provide strategic insights that can unlock faster and better digital transformation.
“Persistent has a phenomenal track record in the digital workspace sector,” said Kaushik Shah, Area VP, Global MSP Sales, Nexthink. “That, plus their expertise in everything from AI and machine learning to customer service and business strategy makes them an ideal partner for us as we look to continue expanding all aspects of our digital productivity offerings.”
By partnering with Persistent, Nexthink addresses this gap by making it easier for businesses to deploy AI-powered DEX solutions that provide comprehensive visibility and actionable insights. Nexthink aligns with Persistent’s expertise in digital transformation, IT service management, and workplace modernization.
“This collaboration with Nexthink allows Persistent to offer a differentiated, data-driven approach to IT operations and employee support, enhancing workforce productivity, reducing operational costs, and elevating employee satisfaction,” said Vijay Verma, Chief Revenue Officer – Service Lines, Persistent. “It reinforces our commitment to delivering next-generation technology solutions that unlock measurable business value for clients worldwide”.
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