Systems | Development | Analytics | API | Testing

Debugging Slow Ecto Queries with AppSignal

A sports car can only be driven as fast as the road it's driven on. If you're stuck behind a tractor on a single-lane road, you're not going anywhere fast. The same idea applies to web performance: your application's throughput is only as fast as it's slowest bottleneck. For Phoenix applications, that bottleneck is almost always the database.

5 Best Practices for Securing Microservices at Scale

The microservices revolution promised agility and scalability. Teams could deploy faster, scale independently, and innovate without monolithic constraints. You gain speed and flexibility, but you also multiply trust boundaries, identities, network paths, and policy decisions. Then came AI, and everything changed. In 2025, the security reality for AI-integrated microservices is stark.

AI Infused Development of Intelligent & Smart Traffic Management System

The traffic visuals you see in movies shot in the USA, UAE, or even the UK, for that matter, you know how managed and clean that looks. But do you still think that it’s all fiction? Well, if you are, then you’ve got it totally wrong. The way the UAE, the USA, and even Japan manage their traffic is just phenomenal, and it’s all thanks to a smart traffic management system you didn’t know about.

QA Tool Sprawl: The Hidden Cost of Fragmented Testing (And How to Fix It)

TestRail for test cases. Selenium for automation. BrowserStack for cloud execution. SauceLabs for mobile. A Confluence page that passes for reporting. Slack threading together everything in between. You have not built a QA practice. You have built a filing system with five different login screens, five separate billing cycles, and five data silos that refuse to speak to each other.

Why AI-Generated Code Needs AI-Powered Testing: The Validation Gap Developers Are Missing

You have an AI coding assistant open. You describe a function in plain language, it generates 40 lines of clean, well-structured code in under ten seconds, you review it briefly, it looks right, and you ship it. That workflow is now routine for millions of developers. The speed is real. The output looks authoritative. The problem is that looking right and being right are not the same thing.

The Agent Era Has a Data Problem. Qlik Solves It.

It’s clear that we are in the early innings of an unparalleled shift in how knowledge work gets done across the board. If you pull forward the changes we’ve already seen from teams who have adopted agents in software development and apply them to broader categories of knowledge work, you can see how these patterns will lead to a fundamental rethinking of the relationship and responsibilities between humans, software, and data.

Anthropic Accidentally Leaked Claude Code's Entire Source - Here's What Was Inside

On March 31, 2026, security researcher Chaofan Shou noticed something odd: the complete source code of Claude Code — Anthropic's flagship AI coding CLI — was sitting in plain sight on the public npm registry. 512,000 lines of TypeScript. 59.8 MB of source maps. Everything. The irony? The code contains an "Undercover Mode" specifically built to prevent internal Anthropic secrets from leaking into public commits. They built a secrecy subsystem, then accidentally published everything.

From Executors to Strategic Partners: The Evolution of Software Vendors in the AI Era

Artificial intelligence is transforming the global software industry. Some analysts refer to this shift as a “SaaS apocalypse,” with traditional software companies losing over a trillion dollars in market value. Historically, software vendors executed client visions by writing code. Now, as clients articulate their needs and AI generates code, the industry faces a critical question: What role remains for software vendors? This requires a fundamental shift.