ThousandEyes raised $50 million in a Series D round of funding led by GV (formerly Google Ventures), bringing ThousandEyes' total funding to more than $110 million.
Additionally, Thomvest Ventures joined the round as a new investor alongside existing investors Salesforce Ventures, Sequoia Capital, Sutter Hill Ventures and Tenaya Capital.
The new funds will be used to execute on the company's strategic growth initiatives, including the acceleration of go-to-market activities and expansion of global operations while continuing to invest in digital experience innovations that drive customer success.
"ThousandEyes is seeing remarkable traction with Fortune 500 customers and this sustained growth is a testament to the scope of the network visibility problems they continue to solve," said Dave Munichiello, General Partner at GV. "As enterprises increasingly rely on applications and services in the cloud, their CIOs and CTOs are losing visibility and control of the networks and outages impacting end-user digital experiences. ThousandEyes delivers mission-critical visibility into every network an enterprise relies on, and ultimately has an objective view of enterprise services, clouds, and their performance that is unparalleled in the technology ecosystem."
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