Operations | Monitoring | ITSM | DevOps | Cloud

How AI Is Being Used to Fast-Track Patients in Healthcare

Healthcare systems are under growing pressure due to rising patient demand and limited clinical staff. To manage this, hospitals and clinics are increasingly using artificial intelligence to speed up patient flow and reduce waiting times. AI helps by automating triage, improving scheduling, and supporting clinicians with faster decision-making. The result is a more efficient system where patients can be assessed and treated sooner.

New: Save time during incidents with incident templates

Creating incidents often means filling out the same information over and over again. That’s why we’ve added Incident Templates – a faster way to create incidents using pre-configured settings. With templates, you can save commonly used incident details and apply them with a single click whenever you need them.

Analysing Claude Code telemetry with SquaredUp - diving deeper

In our previous article we looked at the basics of: In this article, we are going to take a deeper dive into some of the complexities of configuration as well as some of the nuances of analysing Claude telemetry. Before we dive into the code, let us just remind ourselves that our telemetry pipeline looks like this: That is, we are emitting Claude Code telemetry to an OpenTelemetry Collector. The telemetry is then exported to an Application Insights endpoint and stored in Log Analytics tables.

MSP Summit: Why You Need Effective Documentation & How to Achieve It

Every year, MSP Summit unites some of the brightest minds in managed services. From tackling complex migrations that should have been straightforward to managing thousands of unique client environments, MSPs excel at adapting and rising to challenges, even as industry trends evolve. Even as industry trends evolve, though, one theme consistently comes up year after year: documentation.

Why route diversity is critical to resilient global connectivity

Subsea cables have long been the invisible backbone of the internet, carrying more than 95% of global data traffic beneath the ocean’s surface. Today, they are no longer just background infrastructure, they sit at the centre of an increasingly complex digital and geopolitical landscape. The rise of artificial intelligence, alongside continued cloud expansion and hyperscale data centre growth, is driving unprecedented demand for high-capacity, low-latency connectivity.

Why CI/CD Pipelines Miss Runtime Failures

CI/CD pipelines do four things: it builds code, runs tests against mocked dependencies, lints for style violations, and scans for known vulnerability patterns. What it cannot do is validate how that code behaves under real users, real service responses, and real runtime constraints that staging was never configured to reproduce. That entire class of failure clears every gate cleanly and surfaces only in production.

The bottleneck has moved. AI is rewriting the Software Development Lifecycle

If you've read our previous piece on the 8 stages of AI engineering maturity, you know where your team sits. Turns out adopting AI is the easy part; adapting to its consequences is where most organizations struggle. For more than a decade, software organizations optimized around a single assumption: implementation capacity was scarce.

8 IT Infrastructure Automation Use Cases to Prioritize

IT infrastructure automation sounds simple enough on the surface, right? You take repetitive infrastructure work, turn it into automated workflows, and give engineers more time for higher-value problems. This may seem easy, but in practice, it gets more interesting. Modern IT environments are spread across cloud platforms, legacy systems, identity tools, ITSM platforms, monitoring systems, network devices, and business-critical applications.

AI pricing explained: what AI actually costs and how providers charge for it in 2026

AI pricing covers the cost structures and billing models providers use to charge for AI products: per-token APIs (GPT-4o at $2.50/1M input tokens), per-seat subscriptions (Copilot at $30/user/month), per-conversation billing (Agentforce at $2/conversation), and consumption-based GPU compute (H100 instances at $55.04/hour). There is no standard. The total AI cost is almost always higher than the sticker price.