Systems | Development | Analytics | API | Testing

ClearML Enterprise v3.29: Fine-grained Control for Enterprise AI Teams

ClearML Enterprise v3.29 builds on the governance and infrastructure foundations introduced in recent releases. This update focuses on giving administrators and AI teams more granular control over resource allocation, gateway access, and pipeline management while delivering a meaningful set of UI quality improvements across the platform.

Why production AI needs a session layer, not just a stream

I spoke at AI Engineer Europe last week, and came away with a clearer picture of where the industry actually is right now. My talk was about why AI user experience breaks at the transport layer. But the bigger takeaway wasn't from my own session. It was from watching what the rest of the room was building, and what problems they were running into.

In performance testing, AI's confidence can be your team's undoing

Quick summary: AI accelerates code creation, but its inherent confidence pushes structural risks downstream, where they surface as costly, release-blocking problems. As code output scales, performance validation that can’t keep pace becomes a headache and a business risk. Agentic performance testing embeds skepticism and performance awareness into the development process before risk can compound. Software development requires specialized expertise for a reason.

AI is writing your code. Is your regression testing keeping up?

AI is now writing more of your code than ever. But the problem is that your test suite was built to catch errors, not to catch the difference between what an AI agent produced and what your original specification actually required. As AI tools accelerate development velocity, the volume of code moving through pipelines is outpacing traditional quality processes.

Agentic Testing and QA: Why Chrome DevTools Still Matters for Modern Testers

Chrome DevTools is the built-in browser inspector and debugger that ships with Google Chrome, giving testers ground-truth visibility into DOM state, network traffic, device rendering, and runtime behavior. In the context of Agentic Testing and QA — the emerging pattern where AI agents draft, execute, and summarize tests with reduced human supervision — DevTools remains the verification layer that confirms what an agent actually did inside the browser.

Meet Katalon AI Assistant: Your Extended QA Team

AI-assisted development means more code, faster release cycles, and a testing surface area that keeps expanding, but QA team size hasn't kept pace. The result is a pressure most QA engineers know well: you're not behind because you're slow. You're behind because the math no longer works. Most tools respond by adding AI at the margins: a suggestion feature here, a copilot shortcut there.

It Took 9 Seconds for an AI Agent to Delete a Production Database. Here's What Should Have Stopped It.

What the PocketOS incident reveals about AI agents, unscopped API tokens, and why enterprise data needs a gateway in front of it. DreamFactory is a secure, self-hosted enterprise data access platform that provides governed API access to any data source, connecting enterprise applications and on-prem LLMs with role-based access and identity passthrough.

How Agentic AI is Transforming Enterprises?

The artificial intelligence landscape has crossed a consequential inflection point. Enterprises that approached AI as an efficiency instrument, deploying it to automate discrete tasks, accelerate content generation, or augment human decision-making at the margins, are now confronting a paradigm of an altogether different magnitude.