The Frontend Verification Gap in AI-Assisted Development
AI-assisted development has made frontend work feel much faster. A developer can ask for a form, a dashboard card, a table, a modal, or a responsive layout and
Agent-native applications are apps built so humans and AI agents can operate the same product, with the same underlying actions, data, and permissions.
Stop Getting Good at Protocols. Get Good at Agent Experience.
In 2025, if you weren't building with MCP, you weren't serious about agents. The Model Context Protocol dominated the agent conversation for the better part of
How to Dynamically Create MCP Servers with FastMCP
MCP has gained a huge amount of popularity. And for good reason, it's easy to use and can allow you to really harness the benefits of LLMs. So here's a quick MCP tip!
Dynamically create MCP servers with FastMCP by passing a REST API's OpenAPI schema to
Chain-of-Thought Spoofing Targets Reasoning AI Models
Researchers [Charles Ye], [Jasmine Cui], and [Dylan Hadfield-Menell] have shown that AI Large Language Models (LLMs) can fail to correctly distinguish between different instruction sources because …
LoopTroop — LLM Councils Plan It. Ralph Loops Perfect It. OpenCode Worktrees Ship It.
From a raw idea to merged code — multi-model LLM councils plan, Ralph loops perfect, and OpenCode worktrees ship every change. Free, open source, runs locally.
The following article originally appeared on Angie Jones’s LinkedIn page and is being republished here with the author’s permission.I'm fascinated by the
Learn how GitHub built Qubot, our internal Copilot-powered analytics agent, to allow any GitHub employee to ask questions about our data in plain language.
Qodo just shipped cross-repo review. Here's why it matters for AI-flooded teams.
AI is flooding teams with pull requests that are too large for humans to review. Qodo's new tools learn your code standards and catch cross-repo bugs before merge.
Researchers grow a hypothesis tree for AI coding agents
A new framework, Arbor, they claim, preserves hypotheses, experiments, and lessons learned across long-running research tasks, delivering 2.5x better performance than other models under the same budget.