
Catchpoint announced the launch of a Managed Monitoring Service Provider offering, designed to help organizations get immediate performance improvement while relieving themselves from the burden of planning, executing, and maintaining a fully developed digital experience monitoring strategy.
The Catchpoint Managed Monitoring Service combines synthetic and real user monitoring in a single platform utilizing the world’s largest, most diverse network of monitoring vantage points, deployed and managed by Catchpoint’s expert team. This accelerates the time that it takes a company to plan and deploy its monitoring strategy, as well as improves the speed of its incident management process and overall digital performance. Beta-tested over the last year, including during multiple peak traffic periods such as Black Friday, this service has already provided value to companies including Bose, Autodesk and L'Oréal.
“Just as organizations increasingly outsource their security to managed service providers, we’ve found customers want to place their digital experience monitoring strategy into the hands of our experts,” comments Mehdi Daoudi, CEO and co-founder of Catchpoint. “By getting relief from the burden of 24/7 alert investigation, script maintenance, and strategic planning, they are able to improve performance and availability to meet business objectives, while re-focusing internal IT resources on strategic, longer-term initiatives.”
Digital Complexity = Performance Challenges: As end-user expectations for speed and reliability increase, IT departments strain to keep systems globally available and performant on a 24/7/365 basis. Alert and maintenance fatigue, limited internal resources, lack of expertise in digital experience monitoring disciplines, and de-centralized organizational structures make it difficult to sustain a comprehensive monitoring strategy.
Catchpoint’s Managed Monitoring Service helps enterprises overcome these challenges by providing continual performance monitoring test management (including alert triage and script maintenance) and expert consulting services for the planning and execution of monitoring strategies. By providing a staffed, centralized monitoring hub, Catchpoint improves the speed at which incidents are resolved and reduces their impact by alleviating the delays and communication issues that often arise during the incident management process.
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