At Structure 2013, ThousandEyes emerged from stealth mode and launched a new product that provides detailed visibility into the performance of cloud applications and helps IT teams resolve problems quickly.
ThousandEyes’ customers include members of the Fortune 500, Evernote, Priceline, ServiceNow, Twitter, Zendesk and Zynga.
“Performance management products have not kept pace with the innovation in cloud services. Legacy products are ineffective in solving problems enterprises face today, creating migraines for IT,” said Mohit Lad, co-founder and CEO of ThousandEyes. “We have built a product from ground up for the cloud era, to help companies get the best performance out of their cloud apps.”
ThousandEyes has developed technology that correlates different layers involved in the delivery of applications, and pinpoints the source of a problem, whether it is inside or outside an organization.
ThousandEyes also makes it easier for people in different places -- or even at different companies -- to work together to fix problems in real time through a built-in collaboration platform that enables issues to be resolved in minutes and eliminates finger-pointing.
ThousandEyes’ core functionality:
- X-Layer which provides deep visibility into each layer of application delivery and a connecting thread between these layers, making it possible to navigate from layer to layer to find the root cause of problems.
- Deep Path Analysis to provides a microscopic view of the end-to-end path between the client and server, including localization of loss per interface, link delays, route changes and measurement of capacity and available bandwidth.
- Interactive Sharing to enable enterprises and application providers to share live data with one another, eliminating ad-hoc tests, reducing manual processes and resolve problems rapidly.
The Latest
In MEAN TIME TO INSIGHT Episode 14, Shamus McGillicuddy, VP of Research, Network Infrastructure and Operations, at EMA discusses hybrid multi-cloud network observability...
While companies adopt AI at a record pace, they also face the challenge of finding a smart and scalable way to manage its rapidly growing costs. This requires balancing the massive possibilities inherent in AI with the need to control cloud costs, aim for long-term profitability and optimize spending ...
Telecommunications is expanding at an unprecedented pace ... But progress brings complexity. As WanAware's 2025 Telecom Observability Benchmark Report reveals, many operators are discovering that modernization requires more than physical build outs and CapEx — it also demands the tools and insights to manage, secure, and optimize this fast-growing infrastructure in real time ...
As businesses increasingly rely on high-performance applications to deliver seamless user experiences, the demand for fast, reliable, and scalable data storage systems has never been greater. Redis — an open-source, in-memory data structure store — has emerged as a popular choice for use cases ranging from caching to real-time analytics. But with great performance comes the need for vigilant monitoring ...
Kubernetes was not initially designed with AI's vast resource variability in mind, and the rapid rise of AI has exposed Kubernetes limitations, particularly when it comes to cost and resource efficiency. Indeed, AI workloads differ from traditional applications in that they require a staggering amount and variety of compute resources, and their consumption is far less consistent than traditional workloads ... Considering the speed of AI innovation, teams cannot afford to be bogged down by these constant infrastructure concerns. A solution is needed ...
AI is the catalyst for significant investment in data teams as enterprises require higher-quality data to power their AI applications, according to the State of Analytics Engineering Report from dbt Labs ...
Misaligned architecture can lead to business consequences, with 93% of respondents reporting negative outcomes such as service disruptions, high operational costs and security challenges ...
A Gartner analyst recently suggested that GenAI tools could create 25% time savings for network operational teams. Where might these time savings come from? How are GenAI tools helping NetOps teams today, and what other tasks might they take on in the future as models continue improving? In general, these savings come from automating or streamlining manual NetOps tasks ...
IT and line-of-business teams are increasingly aligned in their efforts to close the data gap and drive greater collaboration to alleviate IT bottlenecks and offload growing demands on IT teams, according to The 2025 Automation Benchmark Report: Insights from IT Leaders on Enterprise Automation & the Future of AI-Driven Businesses from Jitterbit ...
A large majority (86%) of data management and AI decision makers cite protecting data privacy as a top concern, with 76% of respondents citing ROI on data privacy and AI initiatives across their organization, according to a new Harris Poll from Collibra ...