
LogicMonitor introduced LM Cloud, a solution for cloud services monitoring.
By providing real-time visibility into the performance of cloud services, LM Cloud enables IT departments to maximize their investments and proactively prevent downtime of critical applications and processes.
LM Cloud makes migrations more manageable and cost-predictable by applying a comprehensive monitoring strategy to overall cloud performance. This new product gives users real-time, data-driven insight into every potentially impactful component of their cloud deployment through three fundamental elements: cloud provider monitoring, resource performance monitoring, and detailed ROI analysis.
Key LM Cloud benefits include:
- Built-in intelligence to enable automated discovery of an organization’s entire cloud environment so users can begin to monitor their cloud deployment within minutes.
- Automatically generated dashboards provide a bird’s-eye-view into every component of an organization’s cloud deployment from provider availability, to resource health and ROI analysis.
- Enhanced visibility into cloud resources and application performance right out-of-the-box so IT teams can quickly troubleshoot issues across hybrid environments to prevent downtime.
The addition of LM Cloud to LogicMonitor’s product suite makes it a comprehensive, SaaS-based monitoring solution for hybrid environments. LM Cloud extends the LogicMonitor core functionality to enable monitoring of services and applications running in the cloud with support for Azure and Amazon Web Services (AWS).
“Hyperscale cloud providers like Microsoft, Amazon, and Google are disrupting the competitive landscape by allowing businesses to innovate and iterate at a pace that is completely unprecedented,” said Kevin McGibben, President and CEO of LogicMonitor. “Making the transition from on-premises to cloud-based infrastructure can lead to destabilizing gaps in visibility so hybrid-ready monitoring has become absolutely mission critical to the process. LM Cloud provides better insight into a cloud deployment, which translates into more control, reduced risk, and the ability to leverage the cloud with greater insights and confidence.”
Andrea Carl, Director, Commercial Communications, Microsoft Corp. said, “We’re pleased to see LogicMonitor’s commitment to Microsoft Azure. The productivity, intelligence and hybrid capabilities of Microsoft Azure, combined with LogicMonitor’s comprehensive monitoring solution, support our customers with a trusted solution as they invest in the cloud."
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