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Dynatrace Supports Red Hat OpenShift 4

Dynatrace announced immediate support for Red Hat OpenShift 4, the next generation of Red Hat’s enterprise Kubernetes platform, reengineered to address the complex realities of container orchestration in production systems.

“Red Hat OpenShift 4 is all about enabling enterprises to more quickly develop, deploy and scale cloud native applications by delivering a smarter Kubernetes platform,” said Steve Tack, SVP of Products at Dynatrace. “Through Dynatrace’s native compatibility with OpenShift and Kubernetes, Dynatrace accelerates this digital transformation by providing automatic, AI-powered answers about degradations in service, anomalies in behaviour, and precise user impact where other solutions go blind.”

As enterprises continue to digitally transform their businesses, PaaS application development environments, including container and microservices architectures, enable enterprises to focus more on creating and improving value-add application features and less on managing underlying operating systems and infrastructure. Red Hat OpenShift 4 is designed to make this easier for Kubernetes environments through automated installation, patching, and upgrades for every layer of the container stack from the operating system through application services.

Dynatrace’s Software Intelligence platform automatically monitors and analyzes containers and the microservices running inside of them across the entire Red Hat OpenShift 4 Kubernetes environment and underlying multi-cloud infrastructure with no blind spots. Dynatrace provides automatic visibility into the full cloud native stack. Combined with Dynatrace’s deterministic AI-engine, Davis, this delivers real-time problem identification and end-to-end, actionable insights 24x7 across the full dynamic cloud stack from applications to containers to infrastructure.

“Red Hat OpenShift 4 aims to make the day-to-day of software operations effortless for both operations teams and for developers,” explains Julio Tapia, director, Cloud Platforms Partner Ecosystem, Red Hat. “Dynatrace supports this goal by offering automatic, AI-powered monitoring of the entire OpenShift stack, including applications and containers. Our ongoing collaboration enables customers to benefit from full visibility into application workloads and cluster components, helping them deploy a cloud-native world with greater speed and confidence.”

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Dynatrace Supports Red Hat OpenShift 4

Dynatrace announced immediate support for Red Hat OpenShift 4, the next generation of Red Hat’s enterprise Kubernetes platform, reengineered to address the complex realities of container orchestration in production systems.

“Red Hat OpenShift 4 is all about enabling enterprises to more quickly develop, deploy and scale cloud native applications by delivering a smarter Kubernetes platform,” said Steve Tack, SVP of Products at Dynatrace. “Through Dynatrace’s native compatibility with OpenShift and Kubernetes, Dynatrace accelerates this digital transformation by providing automatic, AI-powered answers about degradations in service, anomalies in behaviour, and precise user impact where other solutions go blind.”

As enterprises continue to digitally transform their businesses, PaaS application development environments, including container and microservices architectures, enable enterprises to focus more on creating and improving value-add application features and less on managing underlying operating systems and infrastructure. Red Hat OpenShift 4 is designed to make this easier for Kubernetes environments through automated installation, patching, and upgrades for every layer of the container stack from the operating system through application services.

Dynatrace’s Software Intelligence platform automatically monitors and analyzes containers and the microservices running inside of them across the entire Red Hat OpenShift 4 Kubernetes environment and underlying multi-cloud infrastructure with no blind spots. Dynatrace provides automatic visibility into the full cloud native stack. Combined with Dynatrace’s deterministic AI-engine, Davis, this delivers real-time problem identification and end-to-end, actionable insights 24x7 across the full dynamic cloud stack from applications to containers to infrastructure.

“Red Hat OpenShift 4 aims to make the day-to-day of software operations effortless for both operations teams and for developers,” explains Julio Tapia, director, Cloud Platforms Partner Ecosystem, Red Hat. “Dynatrace supports this goal by offering automatic, AI-powered monitoring of the entire OpenShift stack, including applications and containers. Our ongoing collaboration enables customers to benefit from full visibility into application workloads and cluster components, helping them deploy a cloud-native world with greater speed and confidence.”

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Enterprises today operate in a real-time environment where uninterrupted access to trusted data has become a baseline expectation for users, applications and automated systems. Traditional DataOps models, built on manual effort and human triage, cannot keep pace with this always active demand. AI agents are emerging as the operational backbone, ensuring consistent data availability, reinforcing trustworthiness and enabling a level of scale that manual processes cannot achieve ...

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New Relic surveyed IT and engineering leaders from the media and entertainment (M&E) sector to understand what's working — and where challenges persist with their observability practices. The findings reveal how M&E organizations are navigating rising platform complexity, audience expectations, and AI-driven change. Below are five takeaways that stand out ...

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In cloud-native systems, scaling is often as simple as moving a slider. For on-premise databases, the stakes are different. Over-provisioning hardware is expensive. Under-provisioning leads to performance bottlenecks that are difficult to fix once the equipment is in the rack ...