The Turbonomic Application Resource Management solution is now available through Red Hat Marketplace.
Red Hat Marketplace is an open cloud marketplace for enterprise customers to discover, try, purchase, deploy, and manage certified container-based software across environments — public and private, cloud and on-premises. Through the marketplace, customers can take advantage of responsive support, streamlined billing and contracting, simplified governance, and single-dashboard visibility across clouds.
Turbonomic Application Resource Management (ARM) helps automatically ensure applications get the resources they need to perform, no matter where they run or how they are architected. Application Resource Management continuously and automatically assures performance by eliminating resource congestion at every layer of the application stack, from the business application to the underlying physical hardware. ARM does this while enforcing compliance, availability, and driving resource efficiency across hybrid and multicloud environments.
“The speed and portability that Red Hat OpenShift gives the enterprise is truly a game changer,” said Clinton France, VP of Strategic Alliances, Turbonomic. “When you combine Red Hat OpenShift with Turbonomic ARM, the enterprise gets speed, portability, and application-centric performance assurance. We believe Red Hat OpenShift and ARM will accelerate enterprise-wide adoption of cloud native architecture.”
Built in collaboration with Red Hat and IBM, Red Hat Marketplace delivers a hybrid multicloud trifecta for organizations moving into the modern application era: an ecosystem of partners, a Kubernetes container platform, and commercial support — all on a highly scalable backend powered by IBM. A private, personalized marketplace is also available through Red Hat Marketplace Select, enabling clients to provide their teams with easier access to curated software their organizations have pre-approved
Red Hat Marketplace is designed to meet the unique needs of developers, procurement teams and IT leaders through simplified and streamlined access to popular enterprise software. All solutions available through the marketplace have been tested and certified for Red Hat OpenShift, allowing them to run anywhere OpenShift runs. A containers-based approach helps ensure that applications can be run and managed the exact same way, regardless of the underlying cloud infrastructure. This gives companies the flexibility to run their workloads on-premises or in any public or private cloud with improved portability and confidence that their applications and data are protected against vendor lock-in.
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