Systems | Development | Analytics | API | Testing

The latest News and Information on Software Testing and related technologies.

3 Reasons Why Your Business Should Reevaluate Data Governance Procedures

As businesses continue to amass vast amounts of data, the need for robust data governance procedures has become more critical than ever. Examining data governance procedures has long been a crucial practice for businesses that collect data because it ensures that collected data is managed, stored, and utilized in a secure, compliant, and efficient manner. It also enhances data quality, risk mitigation, and better decision-making.

How to Write Maintainable Test Cases with Gherkin Syntax

Writing maintainable Gherkin test cases requires focusing on behavior over implementation while avoiding common pitfalls that create brittle tests. The difference between a valuable test suite and an expensive maintenance burden often comes down to how you structure your Gherkin scenarios from day one.

PHP Support for Enterprise Applications

Building secure and observable systems is essential, but what happens when issues arise in your enterprise applications? In this clip from “How to Build a PHP Security Roadmap,” Zend Principal Product Manager Matthew Weier O’Phinney explores strategies and PHP support options for identifying and resolving issues in your enterprise PHP applications.

Katalon Product Roundup - November 2025

November brings expanded on-premise flexibility, deeper analytics customization, and smoother cross-platform automation. TestOps adds on-prem Jira and GitHub integrations, and custom chart creation for faster insights. Studio introduces new MCP Server tools that automate test object management end-to-end. TestCloud simplifies mobile app version handling with dynamic applications and now supports secure live testing on private environments.

What's the strategic role of Studio in the larger platform?

Studio is the foundation of the entire Katalon platform. Every product, from TrueTest to TestCloud, relies on Studio’s automation capabilities. Because all tests are ultimately Studio tests, it serves as the core engine enabling faster testing and powering execution, reporting, and CI/CD integration across the platform. — Alex Martins, VP of Strategy at Katalon Follow Katalon for more insights in our series!

Continuous Quality Signals: Connecting Jira, Zephyr and BugSnag for Risk-Based Testing

Engineering teams want to understand the real health of their applications – not just what was planned or what was tested, but what is actually happening in production. The challenge is that these signals live in different systems, each optimized for a specific part of the delivery lifecycle. Test execution data, issue tracking, and production monitoring each describe a different aspect of system behavior. On their own, they answer narrow questions about validation, delivery, or stability.

How a 'Safe' D365 Update Paralysed a Tier-1 Hospital

Every business running Dynamics 365 Finance and Operations (D365 F&O) relies on the promise of “Evergreen Updates,” which provide seamless, continuous improvement with zero disruption. For a major hospital which was already stretched thin by rising costs and patient loads, the latest update was supposed to be a lifeline, delivering new financial automation features.

Replit vs Cursor : Which AI Coding Platform Should Developers Choose?

In an age where software developers are speeding up their code development to meet the demand of rapid application deployment, there are new tools being developed based on Artificial Intelligence (AI) technology. Replit and Cursor have received a lot of excitement for both of these platforms due to their use of artificial intelligence in assisting developers with coding.

Accelerate your Releases with AI-Driven Test Prioritization

Testing is changing, and AI is leading the next step Every QA team faces the same pressure: test more, deliver faster, and never miss a defect. But as projects grow and release cycles shorten, running every test in every sprint isn’t always realistic. The challenge isn’t just about automating more, it’s about deciding what to test first. That’s where AI comes in.