Systems | Development | Analytics | API | Testing

Top Advanced Software Quality Assurance Tools For Modern Teams

Shipping software fast is easy. Shipping it fast without bugs? That’s the real test. Modern systems are API-driven, distributed, and constantly deploying – every release brings new risks. To keep defects out of production, teams rely on software quality assurance tools that automate testing, validate APIs, measure performance, and secure applications across environments.

New Year, New Unit Economics: Konnect Metering & Billing Is Here

If your 2026 resolution is to finally get AI costs under control, we've got you covered. Every January, the same resolutions show up: eat better, exercise more, finally learn that language, finally figure out that production use case for AI agents (OK, this one isn’t so typical unless you operate in our universe). But if you're responsible for your organization's AI strategy, we'd like to suggest a different one for 2026: stop letting AI be a cost center.

The 7 Best QA Tools for Software Testing [2026 Update]

Consider the following: You go to the Apple Store to pick up the latest iPhone. You get home and turn it on, only to find that the screen is defective, the buttons aren’t working, and every one of the built-in apps is glitching. Thanks to QA tools, this is an extremely unlikely scenario. Before the iPhone reaches your hands, both its hardware and software have been tested repeatedly by a Quality Assurance (QA) team.

The Longer You Wait, the More Expensive the Bug Becomes

In September 2015, CareFusion issued emergency Class 1 recalls for its Alaris Syringe pumps. The pump was supposedly programmed to administer scheduled medical infusions to patients. As per official reports, due to a software code error (leading to a malfunction), the infusion pump could (or might already) have wrongly administered the scheduled medication, putting patient lives at risk. In response, the company issued recalls, regulators got involved, and the reputation damage was immediate.

QA trends for 2026: Insights from Tricentis Transform

AI is fundamentally reshaping software quality, and the organizations leading this shift aren’t waiting to adapt. In October 2025, we brought together over 1,000 quality engineering leaders, practitioners, and innovators for Transform, our annual conference exploring what’s next in software delivery.

How Column Sets and Query Sets Simplify Analytics

When you’re building analytics for users, you quickly realize something: not every definition belongs on the Model. A lot of business logic sits in an awkward middle ground, too context-specific to hardcode into the Model but too important to leave scattered across one-off formulas. And in most tools, if the logic doesn’t live on the Model, every team ends up rebuilding the same thing over and over again. That’s where Query Sets and Column Sets in ThoughtSpot come in.

Serverless AI Infrastructure Going into 2026: Sandboxes, GPUs, and More

At Koyeb, we are building high-performance serverless infrastrcture for AI. Run workloads on serverless GPUs, next-generation AI accelerators, and CPUs. Our platform runs fully isolated, secure microVMs on bare-metal servers around the world with autoscaling, scale-to-zero, and cold starts as low as 250ms. Just like everyone building in AI, 2025 was a busy year for us. We shipped a lot of features and improvements designed to make your AI deployments experience faster, smoother, and more cost effective.

Connect Your Database to ChatGPT: Ask Your Data Anything in Plain English

What if you could ask ChatGPT questions about your own company data and get instant answers? No SQL. No waiting for IT. No learning PowerBI. Just type a question like "What were our top 10 customers last quarter?" and get the answer in seconds. This isn't science fiction—it's something you can set up today. And here's the surprising part: this capability is actually more valuable for non-developers than developers.

Avoid Vendor Lock-in With Cloud-Agnostic BI

Many AI analytics platforms force enterprises into an impossible choice: adopt cloud-only solutions that compromise data governance and security policies or forgo AI capabilities entirely. But there’s a significant problem with that: most companies aren’t 100% cloud-based, and those that are vary between whether they operate in the public cloud, private cloud, or a hybrid environment.