
Automox and Splashtop announced a strategic partnership to bring high-performance remote control capabilities to IT and security teams everywhere.
Through this partnership, Automox customers will gain access to Splashtop’s industry-leading remote control technology, trusted by millions of users worldwide for its efficiency, reliability, and security. Together, Automox and Splashtop are simplifying how IT and security teams manage, access, and support devices across distributed environments.
“Our customers rely on Automox to manage and secure every endpoint, no matter where it is,” said Justin Talerico, Automox CEO. “Partnering with Splashtop allows us to deliver the most reliable, secure, and performant remote control experience possible, eliminating friction and empowering IT teams to resolve issues nearly 50% faster.”
“Splashtop is built to integrate seamlessly with the platforms IT teams depend on, keeping users connected and productive wherever they are,” said Splashtop CEO and Co-founder, Mark Lee. “Partnering with Automox allows us to deliver dependable remote control that helps IT teams spend less time fixing issues and more time advancing the business.”
Splashtop provides industry-leading remote session performance with high throughput, cross-platform support, and enterprise-grade security certifications and features. Its flexible architecture makes it easy to embed secure remote access in Automox, giving IT teams the reliable connectivity they need to support devices at scale, conveniently through their existing stack.
The partnership underscores both companies’ commitment to delivering cloud-first IT operations that scale effortlessly across remote and hybrid workforces. By integrating Splashtop’s best-in-class remote control into Automox’s autonomous endpoint management platform, IT teams can expect faster issue resolution, improved user experiences, and a unified approach to device management and support.
The upcoming integration will provide Automox customers with seamless, Splashtop-powered remote control directly within Automox. The joint solution will be made available to Automox customers early next year.
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