Operations | Monitoring | ITSM | DevOps | Cloud

AI Observability in 2026: Why the data layer means everything

If there was ever a year for AI observability, it was 2025. Vendors released assistants to cover a variety of use cases. Coralogix released the first agent (distinct from assistants!), Olly, an autonomous, multi-agent observability platform. The direction of travel is clear, but many vendors and users are about to run into some significant problems with their data layer.

Release Roundup 2025: Reliability across AI, on-prem, and applications

2025 was a stark reminder of why reliability is so critical in the tech sector. The year wrapped up with multiple high-profile outages across several major cloud providers, costing companies around the world billions of dollars. Building resilient systems has never been more of a priority, especially as we move into the era of agentic AI.

Cloud Cost Governance: Architecting Accountability And Business Value

Imagine this. A product team rolls out a change to improve reliability. The deployment succeeds. Traffic grows. Weeks later, cloud costs increase, and the finance team asks what changed. No one can point to a single decision or owner. This situation is common in cloud environments. Infrastructure scales automatically, and costs are shaped by technical choices made across engineering, data, and product teams. Most organizations review cloud spending after it has already occurred. Ownership is unclear.

How agentic IT operations lay the foundations for SRE success at scale

When something breaks in a modern digital service, customers feel it instantly. Pages stall, requests time out, and carts are abandoned, while frustration grows long before a root cause is identified. What the world never sees is the engineering effort required to keep these systems healthy in the first place. Site Reliability Engineers (SREs) carry that responsibility every day.

Accelerating IT Transformation with Agentic AI

As enterprises face increasing pressure to manage vast and complex IT environments, the demand for faster and more efficient IT management is rising. Traditional operating methods are proving insufficient, making the adoption of Agentic AI essential for organizations aiming to achieve truly autonomous IT operations. This innovative technology enhances decision-making and enables businesses to remain agile in a rapidly evolving digital landscape.

From performance to impact: Bridging frontend teams through shared context

Connecting day-to-day development work to real user outcomes can be challenging. As a result, engineers and product teams often struggle to effectively prioritize projects together. While the goal of improving user experience (UX) is the same, each team relies heavily on different—and often siloed—forms of monitoring to understand their app, creating a disconnect in metrics and visualizations that can be hard to communicate.

Monitor your Kubernetes operators to keep applications running smoothly

The performance of your Kubernetes operators often influences the behavior of the applications they manage. Operators automate the day-to-day management of your applications by executing critical activities, which may include scaling replicas, performing upgrades, and recovering from failures. For example, a PostgreSQL operator can ensure that standby servers are always deployed, that the database’s failover is correctly configured, and that data is backed up on schedule.

How to Use MCP to Optimize Your Graylog Security Detections

Security teams face a critical question: “What logs should we collect, and what detections should we enable to protect against threats targeting our industry?” For a bank in the northeast, this isn’t academic. Threat groups like FIN7, Lazarus Group, and Carbanak specifically target financial institutions with sophisticated attacks ranging from SWIFT compromise to ransomware.

Bright Ideas: Measuring the ROI of AI Adoption in Financial Services

If there is one truth I have learned working with financial services firms in 2025, it is this: AI is no longer optional, it is operational. From risk modeling to customer experience, algorithmic trading to automated compliance checks, AI is now embedded into the fabric of modern finance. But there is a second, quieter truth. AI only creates value when it is used responsibly, measurably, and at scale.