Operations | Monitoring | ITSM | DevOps | Cloud

From SEO to AEO: Why Web Performance Is the Key to AI Search Success

Search isn’t what it used to be. The way people discover information online is shifting. Instead of clicking through search results, many now ask AI answer engines like ChatGPT and Perplexity to do the research for them. In March 2025, 13.1% of Google desktop searches featured AI Overviews— doubling from over 6% in January, according to Semrush analysis of 10+ million queries.

AI-Driven Application Monitoring with Checkly and Claude Code

In this webinar, Stefan Judis (Developer Relations at Checkly) and Dan Giordano (VP of Marketing at Checkly) dive into how LLMs and AI tools can be used with application monitoring. You’ll see a live demos of integrating Claude Code, Playwright MCP, and Checkly’s Monitoring as Code. ⸻ Timestamps ⸻ Resources & Next Steps ⸻ Subscribe for more sessions on application reliability, testing, and AI-powered DevOps!

How to use AI tools more effectively: Tips from Datadog Engineers

A growing number of engineering organizations have adopted or are trialing agentic AI-based coding tools and LLMs in an effort to increase their teams’ development velocity. If you’re a developer, this means you’ve likely had to try out different agentic tools and models and determine how to best incorporate them into your existing workflows.

How to monitor Claude usage and costs: introducing the Anthropic integration for Grafana Cloud

Generative AI is becoming a core part of modern applications, making it essential to monitor and manage how these services are used. That’s why, today, we’re excited to introduce the Anthropic integration for Grafana Cloud, a new solution that lets you connect directly to the Anthropic Usage and Cost API from within Grafana Cloud.

Stop Asking What AI Costs, Ask If It Is Worth It

AI is surging into products. And the invoices are exploding with it. The key question is no longer, “How much did we spend?” It’s now: “Was it worth it?” That shift, from totals to value, is at the heart of FinOps. The FinOps community defines the practice as bringing financial accountability to the cloud, so teams make tradeoffs with clear business context. In plain English, measure value per dollar, then optimize the system and not just the bill.

How to Spot More Threats in Less Time Using AI

Can AI really help security teams build better threat models? Microsoft's Senior Gaming Security Architect, Audrey Long breaks down the strengths and limits of AI in threat modeling, shows how she uses Azure OpenAI for attack tree automation, and reveals why human review still matters. Includes practical examples and live demos. Git Blog: gitkraken.com/blog.

Honeycomb Launches Integration With the Anthropic Usage and Cost API

If your organization is anything like ours, then you’ve probably embraced using large language models like Claude. Just last week, we gave all Honeycomb employees access to Claude. Now, developers can generate AI-assisted code, product managers can perform analysis on customer usage trends, marketers can test messaging, sales can do customer discovery and we are shipping AI-powered features to improve user experience.

It's Time to Connect Your Islands of Automation With AI Agents

Automation has transformed incident response within individual teams. Diagnostic scripts, runbooks, and alert systems help engineers troubleshoot and resolve issues more efficiently. Translating those gains across the organization remains a challenge. Most automations are built in silos and not designed to work together. The result: disconnected workflows, inconsistent outcomes, and too much manual effort, leaving teams with less time for the strategic work that drives innovation and resilience.

Monitor Claude usage and cost data with Datadog Cloud Cost Management

Managing the cost of foundation models is a critical challenge as AI adoption surges, particularly for teams using powerful models like Anthropic's Claude Opus and Claude Sonnet. Growing teams generate larger prompt volumes and escalating model complexity, making it difficult to have clear visibility, accountability, and control of cloud AI spending.