Systems | Development | Analytics | API | Testing

RAG for SQL Server, MySQL, Postgres - Best Practices for Secure AI + Database Integration

Retrieval-Augmented Generation (RAG) lets LLMs deliver current, context-rich answers by fetching live data—customer records, knowledge articles, metrics—from SQL Server, MySQL, and PostgreSQL. Reports suggest RAG can boost answer accuracy dramatically (in some cases up to 90%), making it compelling for BI, support, and operations. The challenge: enabling on-the-fly retrieval without opening security, compliance, or scalability risks. Executive takeaway: Don’t let LLMs write SQL.

What Is Random Testing In Software Testing?

Software testing is so crucial in the SDLC. People use many types of testing like API testing, integration testing, unit testing, and so on to check the quality of the software and detect bugs. But one test which people don’t care about is random testing, though it plays a vital role in ensuring software reliability. In this blog, let’s see what random testing is, why you need to perform it, its types, and also how to perform it effectively.

Unlocking API Analytics for Product Managers

Meet Emily. She’s an API product manager at ACME, Inc., an ecommerce company that runs on dozens of APIs. One morning, her team lead asks a simple question: “Who’s our top API consumer, and which of your APIs are causing the most issues right now?” For Emily, that’s not a simple question at all. She doesn’t have direct access to these insights. Instead, she has to reach out to the engineering team.

From Data to Decisions: How AI-Powered Analytics Speeds Up Business Impact

Most organizations are swimming in data, but still struggle to turn it into clear decisions. AI-powered analytics bridges that gap by automating routine analysis, surfacing hidden insights, and making data accessible to everyone through natural language. Instead of just looking at what happened, teams can understand why it happened and what to do next. The result is faster, smarter decision-making and a stronger competitive edge. Provide your users with the latest AI-powered analytics features.

Is Database Subsetting Enough? How to Avoid Test Data Risks and Slowdowns

Many organizations turn to database subsetting for various reasons. For one, cloning entire terabyte datasets could bankrupt your cloud budget. And masked data could leave your teams fumbling with unrealistic test scenarios. Why wouldn't you just grab the data you need? Sometimes, it really is that straightforward. For certain use cases — like lightweight testing scenarios, proof-of-concepts, or applications with simple data structures — subsetting delivers exactly what it promises.

Mastering Kubernetes Testing with Traffic Replay

Kubernetes has become the backbone of many modern application deployment pipelines, and for good reason as a container orchestration platform, Kubernetes automates the scaling, deployment, and management of workloads, allowing developers to make their applications easier to manage and deploy at scale without worrying about their service’s dependencies, their user’s operating system, or the intricacies of their data center or infrastructure provider.

9 Test Automation Best Practices for Browser Testing

Whether you’re new to test automation or you’ve been utilizing it to save time for years, here’s our best advice for maximizing your automation testing productivity and avoiding mistakes. Automated testing entails much more than simply creating tests and enabling them. A “set it and forget it” approach won’t get you very far with automated tests — particularly automated browser tests, which interact with the ever-changing frontend of your application or website.

How to Debug Agentic AI: From Failed Output to Root Cause

In traditional QA, debugging means tracing a failed test step to a broken function, a missed config, or bad data. There's usually a clear defect, a fixable cause, and a predictable outcome. But in agentic AI systems where outputs are shaped by language, memory, tool use, and learned behavior failure is rarely that clean. Instead, it looks like: If Blog 4 taught us how to design tests that stress these systems, this blog is about what to do when those tests fail.