Systems | Development | Analytics | API | Testing

Why Your CFO Can't Afford to Ignore AI Auditability (And How to Get It Right)

Picture this: You’re a CFO presenting quarterly results to the board. A sharp-eyed member questions a major variance in your forecasting model. You’re ready, you explain that your AI system caught the anomaly early. But then comes the kicker: “How exactly did the AI reach that conclusion?” Suddenly, your confidence wavers. If your best answer is, “I’m not sure, but the algorithm is sophisticated,” you’re not alone, but you’re on thin ice.

SeaLights MCP: Enabling AI-augmented testing at scale

As modern software delivery processes accelerate, QA teams inevitably feel pressure to maintain quality at scale. SeaLights addresses this challenge by providing deep visibility into test coverage across every stage of the software development lifecycle. It helps teams identify untested code changes, optimize execution, and deliver confidence at release time.

Ai Model Testing: Building Trust In Intelligent Systems

Artificial intelligence (AI) is widely used today, from voice assistants to Netflix recommendations, but AI models do not always behave as intended. Testing an app before it is released is standard practice, and similarly, AI models should be thoroughly tested. Testing an AI model can verify that the model’s decisions are accurate, fair, and safe.

Cursor Vs Github Copilot: Which Ai Coding Tool Should You Use?

AI coding tools are everywhere; they have changed the way we used to code. These days, people are doing vibe coding with the help of these tools. From suggesting code snippets to explaining errors in plain English, these assistants are becoming as common as Stack Overflow tabs. There are only two names that keep popping up in everyone’s conversation when it comes to AI coding tools: Cursor and GitHub Copilot. But here’s the real question: Cursor vs.

3 Ways to Master MS Copilot: Your Ultimate Learning Guide

Microsoft Copilot is transforming productivity, offering AI-powered assistance across Microsoft 365 applications. But how do you efficiently learn to leverage this powerful tool? This guide explores three popular learning methods, detailing their pros and cons to help you choose the best path for your Copilot training.

Introducing Vibe Deployment with Choreo

With vibe coding, you can build complex applications using powerful AI tools that offer a conversational experience, letting AI handle the heavy lifting. But what happens after you've built your app? You might have a three-tier web application connected to a database running locally, but taking it live—ensuring it’s connected, secure, and production-ready—can be a complex process that disrupts your flow. What if deploying your app was just as easy as building it?

Follow Along: Joe Reis Reviews Keboola MCP Server

Joe Reis, author of Fundamentals of Data Engineering, known for practical education and his YouTube content — formerly CEO/co-founder of Ternary Data — is reviewing our Keboola MCP (Model Context Protocol) Server with Claude to list Shopify his tables, run exploratory analysis, export data to BigQuery, and generate a star schema. And you can do the same in minutes! We will go through everything here from one-click setup to best propmts to use MCP with.

At the Edge: Smarter Data Flows for Industrial and IoT AI

Industries like manufacturing and smart cities rely on connected devices to generate data streams for predictive maintenance, automation, and efficiency. But moving this data between systems can be slow, insecure, and inefficient. Here's the solution: smart data flows powered by edge computing and automated APIs.

Unlock the ROI of AI by Embedding It In Your Core Processes

A new MIT study reveals 95% of gen AI pilots fail. But that’s not an AI problem. It’s an implementation problem. The real issue is the messy, fragmented way AI is used. Too many organizations treat AI as a helper on the sidelines—chatbots, copilots, and assistants that wait to be called upon. While helpful, this approach barely scratches the surface of what’s possible. Real transformation happens when AI is embedded directly into the core operations of your enterprise.

What is AI Data Cleaning?

Before jumping into AI data cleaning directly, let’s first understand data cleaning itself. Data cleaning, also known as data scrubbing, is a critical data preparation step where organizations remove inconsistencies, errors, and anomalies to make datasets ready for analysis. The cleaning process may involve actions like removing null values, correcting formatting, fixing syntax errors, eliminating duplicate data, or merging related fields like City and Postal Code.