Operations | Monitoring | ITSM | DevOps | Cloud

The latest News and Information on DevOps, CI/CD, Automation and related technologies.

Autoscaling Made Easy with Rancher Cluster API

Kubernetes has revolutionized application deployment and management. However, manually adjusting cluster sizes to meet fluctuating workloads, without constantly under- or over-provisioning resources, quickly drains platform teams’ time and energy. While traditional cloud provider autoscaling tools are functional, they often fall short when it comes to truly dynamic, Kubernetes-aware scaling, especially in a world with diverse infrastructure.

Is on-prem the top choice to run AI?

‎‎Subscribe. Fuel your curiosity. In this episode, we break down what we’ve learned from teams running AI at scale, and why on-premises infrastructure is making a strong comeback. We’re seeing a shift: performance, cost control, data sovereignty, and platform flexibility are driving conversations about on-prem strategies for AI. No one-size-fits-all answers, but if you’re building or scaling AI, this might help you think a few steps ahead.

Are you running AI the smart way?

Data locality: AI models often rely on large datasets. Locating compute close to the data reduces transfer times and improves training performance. Latency sensitivity: Real-time AI applications, like recommendation systems or edge analytics, depend on low-latency environments. This can be more easily tuned in private or hybrid setups. Hardware specialization: Some AI workloads benefit from custom hardware like GPUs or TPUs. Private cloud allows more control over this, while public cloud offers broader access but less customization.

Beyond AI hype: put reliability at the forefront

Reliability is a constant for every technology, whether it’s cloud, microservices, or AI. Full transcript:  Just a few years ago everybody was screaming about microservices, "That's the wave of the future," and now everybody's looking at AI. No matter what the change in technology hot topic is, your reliability should still be at the forefront of everything that you're doing.
Sponsored Post

Incident Management Software for 2025: Revolutionizing Efficiency in Crisis Handling

With the growing reliance on technology and complex IT infrastructures, having a robust Incident Management software is no longer a luxury but a necessity. As we step into 2025, organizations are seeking more sophisticated, intuitive, and scalable solutions to streamline their Incident Response Workflows and ensure uninterrupted service delivery.

Netdata Overview: All You Need to Know in Under 3 Minutes

In just a few minutes, this walkthrough will show you how to unlock the full power of Netdata during your trial period. From real-time metrics to AI-powered insights, learn how to get immediate value without any guesswork. Whether you're running a Homelab or managing production systems at scale, this video will help you hit the ground running and make every minute of your trial count. Let’s turn your trial into insight, clarity, and control.

9 Best Incident Response Tools (Plus 4 Open-Source Options)

I’ve curated a list of 9 best incident response tools, plus 4 open-source options for you. But first, a quick note: Many people mix up alerting, monitoring, and incident response. Incident response is what you do after receiving an alert. It includes alert acknowledgment, escalations, incident communication, post-incident analysis, and response automation. Yes, some of these (incident communication and post-incident analysis) overlap with incident management.

Kubernetes Is Powerful-But It's Slowing You Down. Here's How to Fix It.

Ask any SRE what slows them down in a Kubernetes incident, and the answer is usually too much information in too many different places. Kubernetes has changed the way we run software. It’s given us incredible flexibility, scalability, and power. But in the years I’ve worked in cloud operations and platform engineering, I’ve also seen how that power comes at a price: complexity.