What's new Based on early user feedback, Permi can now save your vulnerability scan results in three distinct formats to fit your workflow: --export results.txt – Human-readable plain text for quick reviews. --export results.json – Structured data designed for scripts and CI/CD automation. --export results.md – Clean Markdown, perfect for GitHub documentation or internal wikis. To try out the ne
GitHub Copilot is more than just an AI coding assistant; it's a productivity superpower for many developers, promising to streamline workflows and accelerate delivery. Yet, as a recent GitHub Community discussion vividly illustrates, the path to actually subscribing to this powerful tool can sometimes be a frustrating maze of unexpected billing hurdles and unresponsive support. At devActivity, we
Introduction I wouldn't call myself a historian, as I switched careers a long time ago, and my skills and knowledge have faded away. However, when I look at the current AI revolution changing for better or worse the software industry, I am wondering how historical studies will be impacted. When working with LLMs, one of the crucial parts is to provide them with the relevant context. Frontier mo
The Problem AI agents are moving from answering questions to taking actions — calling APIs, querying databases, executing code, managing memory. The security surface has shifted from "what the model says" to "what the agent does." Most guardrail solutions address the first problem. They filter content. They detect prompt injection. They moderate output. These are necessary but insufficient. The
Mistral Large 3 launched in December 2025 as Mistral's flagship open-weight model. Six months later it remains the largest model Mistral has publicly released under a permissive license. This guide covers the architecture, benchmarks, pricing, and practical considerations for developers deciding whether to use it in 2026. Mistral Large 3 (model ID mistral-large-2512, the 2512 indicating December 2
What is Mycelium? (2 para) The problem we're solving (2 para) Discovery benchmark Dataset (1k agents, 1k queries) Results table Keyword vs Semantic graph (ASCII) Load benchmark Cache architecture Results table What changed (before/after cache) How to reproduce pip install code snippet What's next (roadmap) GitHub link -> / mycelium 🍄 Mycelium Agents Watch 3 AI agents c
A few months ago I started with a simple goal: have a solid, reusable base for my PHP projects without pulling in a full framework every time. What I ended up with is something I'm genuinely proud of, and today I'm making it public. php-template is a PHP 8.2 MVC starter template with serious tooling, full testing stack, and something I haven't seen in other PHP templates: native support for AI age
Metric Value Django Average Response Time 287ms Node.js Average Response Time 193ms Django Memory Usage (1000 users) 1.8GB We tested Django 4.2 and Node.js 18.16 under identical conditions to measure their performance for reporting dashboard workloads. The test environment consisted of AWS EC2 m5.2xlarge instances (8 vCPUs, 32GB RAM) running Ubuntu 22.04. Both frameworks connected to th