
ScienceLogic announced a multicloud IT monitoring platform with monitoring and dependency mapping for Amazon Web Services (AWS), Microsoft Azure, and VMware vCloud Air as well as on-premises IT elements.
The consolidated multicloud coverage enables enterprises to discover, assess, run and operate their IT resources in multiple clouds, helping them proactively detect performance and business-impacting issues across all clouds from a single pane of glass. As a result, organizations can now accelerate cloud adoption without the concern and risk due to lost visibility of IT assets — and reap the benefits of the cloud sooner — agility, flexibility and cost reduction.
“Our customers have globally distributed infrastructures running on public and private clouds. They needed a simple, consolidated way to evaluate the performance of these investments, to control costs and address those service delivery challenges common to globally distributed infrastructures,” said Dave Link, CEO ScienceLogic. “ScienceLogic now delivers unprecedented coverage across public and private clouds, dramatically simplifying the very complex task of monitoring global IT infrastructures.”
Product functionality includes:
- The only monitoring platform to support all major multicloud environments, including private cloud, from the same software installation
- Visual mapping of dependencies across technologies, regardless of where they reside (public or private cloud)
- Single hybrid IT monitoring platform for the entire IT stack including networks, systems, storage, applications and cloud elements
- Dashboarding, multi-tenancy, high security, reporting, event management, runbook automation, and asset tracking across multiple clouds, from a single code base
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