
Knoa Software and Namos Solutions announced a partnership to provide Global organizations with a comprehensive solution of software and services focused on delivering business value in the areas of cloud migration, help desk efficiencies, user productivity and Oracle Cloud adoption.
Oracle Cloud migration is a significant and strategic investment for organizations, so they require a solution that helps them plan carefully, measure progress for continuous improvement, and ultimately assess the true effectiveness of the project. Knoa User Experience Management (UEM) delivers user analytics that help build the business case for migration to cloud, mitigate risk during migration, maximize adoption of the new system, and measure investment ROI.
Brian Berns, CEO of Knoa Software, said: “Our User Experience Management solution for Oracle Cloud provides unique insights into the lived experience of users allowing Namos to use this data to deliver expert advice on identifying opportunities for digital transformation or improvement. This holistic approach has been broadly missing from standard technically focused transformation programs and so we are excited about our partnership since it will allow both companies to explore new areas of value and improve the employee experience.”
Chris Mason, CEO at Namos, said, “In today’s business world, there has never been a more crucial time for a solution like Knoa UEM. As a result, we’re excited about our new partnership and the ability to provide our clients with this additional out-of-the-box functionality that will help them complete successful migration projects and get the most out of their Oracle Cloud investments.”
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