
Lakeside Software announced the latest availability of its SysTrack platform in the Microsoft Azure Marketplace, an online store providing applications and services built on Azure.
Lakeside customers can continue to take advantage of the Azure cloud platform while enjoying streamlined procurement, deployment, and management.
SysTrack, Lakeside's DEX solution, delivers actionable insights derived from the most accurate, comprehensive, and real-time view of endpoint data. It empowers IT teams to optimize IT operations, proactively enhance efficiency, and ensure a seamless digital experience for employees. By listing SysTrack on the Microsoft Azure Marketplace, Lakeside provides customers with a simple path to streamline the procurement process and deploy its solutions faster and at scale. Microsoft's commitment to working with partners like Lakeside is helping drive digital transformations for people, organizations, and industries around the world.
"Lakeside's technology provides the most robust data collection, processing, and observability on both physical and virtual environments in the industry. With SysTrack available on the marketplace, Microsoft customers can more easily take advantage of the end-to-end visibility only available through Lakeside. Additionally, by transacting for SysTrack via Marketplace, our customers derive added value by drawing down any minimum Azure consumption commitment they may have", said Tyler Winkler, chief commercial officer at Lakeside.
"Through Microsoft Azure Marketplace, customers around the world can easily find, buy, and deploy partner solutions they can trust, all certified and optimized to run on Azure," said Jake Zborowski, General Manager, Microsoft Azure Platform at Microsoft Corp. "We're happy to welcome Lakeside Software to the growing Azure Marketplace ecosystem."
The Azure Marketplace is an online market for buying and selling cloud solutions certified to run on Azure. The Azure Marketplace helps connect companies seeking innovative, cloud-based solutions with partners who have developed solutions that are ready to use.
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