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Dynatrace Launches Software Intelligence Hub

Dynatrace announced the launch of its new Software Intelligence Hub, making it easier for Dynatrace customers to leverage out-of-the-box integrations from an extensive array of over 500 technologies, and to create custom Dynatrace integrations without coding.

This allows digital teams to easily extend Dynatrace’s automation and AI-assistance across more environments and use cases to simplify operations, accelerate DevOps innovation, and optimize business outcomes.

The Dynatrace Software Intelligence Hub provides:

- Application coverage, including Java, Node.js, Python, and C++ environments, as well as OpenTelemetry, along with over 100 additional application technologies that are automatically discovered and placed in the context of a customer’s full cloud stack.

- Infrastructure coverage, including AWS Lambda, Kubernetes, Statsd, Telegraf, and Prometheus, as well as many other cloud technologies and more than 200 additional frameworks that are automatically discovered and placed in context.

- Extensions, including Adobe, Atlassian, Jenkins, Forcepoint, and ServiceNow, along with over 150 others to broaden the automatic and intelligent observability of Dynatrace across additional cloud use cases, making the entire cloud ecosystem smarter and more reliable.

- Open APIs and SDK, to easily build additional customizations, and extend automation and intelligence to more technologies without additional code.

- Easy access – the Dynatrace Software Intelligence Hub is open and accessible to customers directly from the Dynatrace Software Intelligence Platform, today.

“Modern, dynamic clouds and the cloud-native applications that run on them are complex and require hundreds of integrated services. It’s challenging for organizations to keep up,” said Steve Tack, SVP of Product Management at Dynatrace. “By launching the Software Intelligence Hub, we are providing customers with easy access to a huge array of technologies that are automatically discovered, and we are constantly adding new ones. We’re also making it easy to create custom extensions to maximize value across many use cases.”

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Dynatrace Launches Software Intelligence Hub

Dynatrace announced the launch of its new Software Intelligence Hub, making it easier for Dynatrace customers to leverage out-of-the-box integrations from an extensive array of over 500 technologies, and to create custom Dynatrace integrations without coding.

This allows digital teams to easily extend Dynatrace’s automation and AI-assistance across more environments and use cases to simplify operations, accelerate DevOps innovation, and optimize business outcomes.

The Dynatrace Software Intelligence Hub provides:

- Application coverage, including Java, Node.js, Python, and C++ environments, as well as OpenTelemetry, along with over 100 additional application technologies that are automatically discovered and placed in the context of a customer’s full cloud stack.

- Infrastructure coverage, including AWS Lambda, Kubernetes, Statsd, Telegraf, and Prometheus, as well as many other cloud technologies and more than 200 additional frameworks that are automatically discovered and placed in context.

- Extensions, including Adobe, Atlassian, Jenkins, Forcepoint, and ServiceNow, along with over 150 others to broaden the automatic and intelligent observability of Dynatrace across additional cloud use cases, making the entire cloud ecosystem smarter and more reliable.

- Open APIs and SDK, to easily build additional customizations, and extend automation and intelligence to more technologies without additional code.

- Easy access – the Dynatrace Software Intelligence Hub is open and accessible to customers directly from the Dynatrace Software Intelligence Platform, today.

“Modern, dynamic clouds and the cloud-native applications that run on them are complex and require hundreds of integrated services. It’s challenging for organizations to keep up,” said Steve Tack, SVP of Product Management at Dynatrace. “By launching the Software Intelligence Hub, we are providing customers with easy access to a huge array of technologies that are automatically discovered, and we are constantly adding new ones. We’re also making it easy to create custom extensions to maximize value across many use cases.”

The Latest

I've spent a lot of time in the channel, and one thing I keep coming back to is this: a partner program is only as good as what it looks like in the field. Many programs look great on paper, but when a partner is in front of a customer navigating a complex hybrid environment or trying to make the case for AI-powered observability, the gap between what a vendor promises and what it actually delivers becomes very clear, very fast ...

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 ...

For decades, trust in the digital workplace rested on familiar signals. We trusted faces on video calls, voices on the phone, and emails that appeared to come from people we knew. These cues felt human and intuitive. They anchored how decisions were made, approvals were granted, and access was authorized. AI-powered deepfakes have quietly broken that model ...

Cloud migration was supposed to be a one-way door. For most enterprises, it turns out it isn't. Cloud data repatriation is a real and growing trend. A new survey ... finds that 89% of organizations plan to expand their on-premises infrastructure footprint over the next two years — and 75% have already moved at least some workloads back from public cloud in the past 24 months. The findings point to a broad rethinking of where data belongs ...

Over the past few years, large language models (LLMs) have revolutionized the software industry. Given their ability to excel at multi-step reasoning, LLMs have helped enterprises streamline workflows and adapt to the unknown. However, employing such models comes with sky-high costs, latency issues, and limited flexibility. In the realm of IT operations, it is generally wiser to employ smaller, domain-specific models instead ...

For years, DevOps teams operated under a simple assumption: collect enough telemetry, and you can find and fix any problem. That assumption is breaking down. Modern enterprises now operate across microservices, hybrid cloud environments, APIs, Kubernetes, and highly automated delivery pipelines. Releases happen continuously, dependencies shift constantly, and failures spread faster than teams can diagnose them ...

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 ...

Let me start with something I've seen play out more times than I can count. A team hits a wall with the cloud. Costs creep up, then spike. Performance starts to feel inconsistent. Someone in finance asks a simple question like "why did this double?" and nobody has a clean answer ... Maybe this isn't the right place for everything. That realization feels like a breakthrough, like you've identified the problem. In reality, you've just identified the starting line ...

In MEAN TIME TO INSIGHT Episode 24, Shamus McGillicuddy, VP of Research, Network Infrastructure and Operations, at EMA discusses network observability tool sprawl ... 

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 ...