Systems | Development | Analytics | API | Testing

What Is an MCP Gateway? Key Features and Benefits

API protocols evolve every few years. We have moved from SOAP to REST, then to GraphQL, gRPC, and AsyncAPI for event-driven systems. Now with the rise of large language models (LLMs) and AI agents, organizations need a new class of interfaces that allow agents to take action across real systems, not just generate text. LLMs are powerful reasoning engines, but they lack context. They cannot perform actions by themselves, see real-time data, private information, or internal systems.

How Functionality Testing Software Improves Product Quality

You may be surprised to learn that more than 70% of software failures due to unaddressed functional issues that could have been caught during testing. Think about it: you release a new app or system, a user clicks their way through a common user flow…and it fails. In our competitive digital economy, we assume performance and intuitiveness—one hiccup, and users will stop using you as a provider, and possibly undermine your credibility.

Our Journey to Revolutionize Autism Care with Appian

Let me introduce you to Jake. He’s four years old, loves puzzles, and sees the world in his own unique, beautiful way. Like one in 31 children in the US, Jake has autism. His parents are told that early intervention is crucial for him to develop the skills and behaviors he’ll need to thrive. He just needs a little help with things many of us take for granted: pointing to make a request, speaking up, asking for things, making friends.

7 API Tasks Modern Teams Automate with DreamFactory

Automate the boilerplate so you can focus on what actually matters. Developers spend somewhere between 30-50% of their time on repetitive tasks that add little value to the final product. In API development, this overhead is particularly painful: writing nearly identical CRUD endpoints over and over, manually updating documentation that immediately drifts out of sync, copying data between environments, and handling routine maintenance that should happen automatically.

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.

Why You Should Run AI-Generated Code in a Sandbox

At their best, code generation LLMs reduce cognitive load, accelerate iteration, and serve as a great pair programmer for well-scoped tasks. That said, they also introduce a level of risk. Whether it’s using a variable that was never declared, making up functions that aren’t part of a class, using code from outdated packages, or misdiagnosing an issue, code generation models can create problems.

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.

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.

Operationalizing Agentic AI with Hitachi iQ Studio and NVIDIA Nemotron 3

NVIDIA just announced NVIDIA Nemotron 3, a new family of open models, datasets, and libraries designed to support long-context reasoning and multi-step AI workflows. With the ability to work across enterprise ecosystems, this family of models empowers enterprises to build and deploy reliable multi-agent systems at scale, offering an important set of technologies at a pivotal moment in AI evolution.