Systems | Development | Analytics | API | Testing

Everything we announced at our Agentic Quality Engineering Platform launch

Over 1,000 people around the world tuned in as Tricentis CEO Kevin Thompson and VP of AI David Colwell unveiled our new integrated platform, followed by a live demo from Enterprise Solution Architect Matt Serpone. From our headquarters in Austin, Texas, we unveiled a unified solution designed to help enterprises treat quality as a coordinated system rather than a collection of disconnected tools.

Designing MCP Servers for Observability

Observability is the key to understanding and improving MCP servers. These servers connect AI agents to tools, but without visibility, issues like slow responses, errors, or security risks can go undetected. Observability helps track how agents interact with tools, pinpoint failures, and optimize performance.

The quiet crisis in software quality - and what autonomous testing changes

There’s a tension building inside most engineering organizations right now, and not many people are talking about it openly. AI has given development teams an extraordinary gift: the ability to build faster than ever before. Features that once took days can be prototyped in hours. Applications that required large teams can now be scaffolded by a handful of engineers with the right tools. By almost every measure of development velocity, we are living through a remarkable moment.

How SecurityScorecard Put Confluent at the Center of Everything | Life Is But A Stream

What happens when a security intelligence company decides that data contracts aren't optional, they're the foundation? For SecurityScorecard, that decision changed everything: how teams share data, how pipelines are built, and how quickly a new engineer can ship production-grade work on day one.

Five Supply Chain Attacks in Twelve Days: How March 2026 Broke Open-Source Trust and What Comes Next

Between March 19 and March 31, five major open-source projects were compromised in rapid succession: Aqua Security’s Trivy vulnerability scanner, Checkmarx’s AST GitHub Actions, the LiteLLM AI proxy on PyPI, the Telnyx communications library, and Axios—the most downloaded HTTP client in the npm registry. Collectively, these projects serve hundreds of millions of installations across virtually every enterprise software environment on earth.

Turn test data into release insights with AI | SmartBear MCP for Zephyr

Testing teams need to know if they’re ready for a release. Getting answers within Jira, however, often means jumping between multiple screens and reports. In this demo, see how you can query your test data with SmartBear MCP for Zephyr to get insights directly from your testing system of record, so you can make faster, more informed release decisions. From within AI tools like Copilot, Claude, or VS Code, you’ll learn how you can.

Podcast Highlight: AI agents are your new team -- now what? #Cloudera #Short #tech #Fyp

We're witnessing the rise of the multi-sapien workplace with humans working alongside AI agents. Tune into The AI Forecast to hear by agentic AI needs to be managed like human teams. This conversation goes beyond technology; Tatyana also reflects on leadership and representation in tech, challenging assumptions about opportunity, and exhibiting why diverse ways of thinking are critical in an AI-driven world.

How to Differentiate and Scale Your Agency with AI Analytics

Automated reporting saves your team’s time. AI analytics saves your client relationships — and wins you new ones. Automated reporting for clients means your agency pulls performance data from every agreed source through APIs into one system, applies consistent metric definitions and formatting, and delivers the same client-ready view on a schedule — without anyone copying and pasting.

What Breaking AI Applications Taught Us About Building Reliable Ones

The global industry is currently in a feverish rush to "AI-enhance" every facet of the digital landscape. However, a critical distinction has emerged: while building an AI-integrated application is relatively simple, engineering one that maintains operational integrity in a production environment represents a watershed moment for modern engineering teams. BugRaptors spent the last year inside the intricate internal logic and non-deterministic layers of AI application testin g.