Platform leverages 13 years of crowdsourced testing data to deliver intelligent automation and set new industry standards.

Crowdtesting Meets AI: 5 Platforms That Actually Deliver Results
Traditional crowdsourced testing has always promised scale, but it’s often come with headaches.

Questions We Get Asked About Integrating Crowdtesting
When product teams decide to launch globally, crowdsourced testing is one of the most talked-about approaches. But for many engineering leaders, QA managers, and product owners, the big question is where and how it fits.

The Missing Discipline in AI QA: Verifying “System Prompts,” Not Just User Prompts
Most product teams today are very good at one thing: testing what happens when a user types a prompt.

Cyberweek 2025: Key Trends in Payments Testing
Cyberweek 2025 demonstrated something unmistakable: the way customers shop, choose, and pay has changed permanently.

The Rise of Identity-Verified AI Agents, And the New QA Reality
For a long time, we spoke about “AI agents” like they were a future concept, something that might eventually book flights, run workflows, or make payments on our behalf.

The Unsung Harmony: How Accessibility and Localization Dance Together
Accessibility and localization often seem like separate disciplines, each with its own set of guidelines and goals.
Model Guardrails Are Getting Better. That Doesn’t Mean Your Product Is Safe.
Over the past few years, model providers have invested heavily in “guardrails”: safety layers around large language models that detect risky content, block some harmful queries, and make systems harder to jailbreak.

The New Era of AI Testing Careers: How Roles, Skills, and Opportunities Will Evolve in 2026
AI testing careers are shifting in ways that most people in QA are not fully prepared for, and the changes are creating opportunities that did not exist even a few years ago.

Key Takeaways from Our AI Quality Discussion
AI systems change faster than traditional QA models can react, which means quality risks now emerge in real time rather than at release.
