Systems | Development | Analytics | API | Testing

Test Parameterization Techniques

Test parameterization allows testers to run the same test case with multiple sets of input data, eliminating the need for duplicate test cases. Instead of hardcoding values, testers define variables that can be dynamically replaced during execution. This approach is essential for testing different scenarios efficiently, such as validating multiple user credentials or input combinations without creating separate test cases for each variation.

20 Automation Testing Best Practices For 2025

I’ve been in the automation testing game long enough to watch trends come and go. The biggest lesson I gained after all those year is how going back to the fundamentals is usually the "best" best practice. Here’s the thing — buzzwords mean nothing if you can’t trust your test suite. At the end of the day, it’s not about chasing hype. It’s about doing the basics really, really well. So here are 20 automation testing best practices for 2025.

How SeatGeek scaled to 86M+ monthly API requests with Kong Konnect

If fragmented APIs are impacting your organization’s agility or developer experience, this quick case study offers valuable insights and actionable solutions. SeatGeek transformed its fragmented API infrastructure with Kong Konnect. In this success story, discover how SeatGeek streamlined API management, enhanced visibility, and scaled effortlessly to handle over 86 million monthly requests.

Drive Governance Without Sacrificing Velocity With Scorecards

Discover how to effectively balance governance and velocity using Kong Konnect's Service Catalog and Scorecards. In this webinar, Alex and Michael from Kong dive deep into strategies for streamlining API governance, enhancing visibility across your services, and automating compliance to accelerate your API lifecycle. Learn how to eliminate shadow APIs, integrate seamlessly with third-party tools, and ensure organizational best practices are consistently met.

What is AI NLQ? Understanding AI-Powered Natural Language Query

The rise of natural language query (NLQ) technology in modern business intelligence (BI) and analytics platforms is empowering many companies to streamline data exploration and analysis, and democratize access to insights for more people - not just data experts. But like any technology, the ongoing challenge is to help stakeholders and customers to see the value in using it.

Yellowfin 9.15 Release Highlights: AI-Powered NLQ, Usability Enhancements & More

Yellowfin 9.15 is a significant version release that introduces a major update to our Yellowfin Guided NLQ feature in the form of AI-enabled Natural Language Query (AI NLQ), as well as a host of general product enhancements, fixes and security updates. In this blog, we will cover what AI NLQ brings to your embedded analytics deployment, as well some of the other highlights arriving in the Yellowfin 9.15 version release. For the full technical list of updates, please visit our release notes page.