As AI scales and workloads become continuous, traditional architectures fall short — making Open Data Infrastructure a critical priority for data leaders.
It’s hard to keep up with how fast artificial intelligence is transforming organizations’ approach software security. Models like Claude Mythos Preview bring impressive new capabilities to the market, offering dynamic threat detection and adaptive learning. These advancements lead many engineering leaders to ask a critical question: Do we still need static analysis? The short answer is a definitive yes.
Eighty-five percent of business leaders have suffered from decision distress — regretting, feeling guilty about, or questioning a decision they made in the past year, according to Oracle’s Decision Dilemma study of 14,000+ leaders and employees across 17 countries.
Over the past decade, the way organizations manage infrastructure has fundamentally changed. Static, manually provisioned resources have given way to dynamic, code-driven environments. Today, Infrastructure as Code (IaC) is the standard approach - but running it securely and efficiently at scale brings its own set of challenges: state management, access control, policy enforcement, and configuration drift are just a few.
New capabilities remove barriers to production-ready AI applications with agent-powered workflows, automated data protection, and private cloud connectivity.
Choosing the right QA test management software is one of the highest-leverage decisions a QA team makes in 2026. If your team is still managing tests through spreadsheets or a tool that doesn't connect to your dev stack, you're leaving real coverage gaps and release time on the table.
Most data warehouse projects fail. Not because the technology is wrong. Because the design is. Three weeks for a number that should take three minutes. AI agents generating plausible reports nobody can trace. Two ERPs naming the same metric differently. The spreadsheet swamp. The fire drill before every audit. These problems live in the warehouse layer, in how data is modeled, governed, and made available to the people and AI agents that read from it.
Not long ago, the answer to who writes tests was simple: the quality assurance (QA) engineer does. They sat downstream of development, received a build, and translated requirements into scripts. It was a defined role with a defined output. That clarity is gone. In 2026, the person or system responsible for test creation might be a business analyst (BA) mapping out a customer journey, an AI agent expanding test coverage overnight, or a QA engineer who hasn’t written a traditional script in months.
You asked for it. We built it. Our new MCP server means you can debug directly inside your AI coding tool using real app data from Bugfender. You can use it to: It works with Cursor, Claude Code, Codex and Gemini CLI. This article will show you how to install the Bugfender MCP server, which tools your agent can access, and how the companion skills help you fix bugs faster.
ClearML is deepening its partnership with Dell Technologies by joining the Dell AI Ecosystem Program, announced at Dell Technologies World 2026. As part of this collaboration, ClearML is launching two pre-validated deployment blueprints — for Kubernetes and OpenShift — available in the Dell Automation Platform catalog, giving enterprises a fast path from bare metal to a full AI stack.