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LerianStudio/ring

Mandatory workflow system enforcing software engineering best practices and quality gates for AI agents.

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What it does

Ring is a rules-and-workflow system that acts like a strict coach for AI coding assistants, forcing them to follow proven software development habits — like writing tests before code and double-checking their own work — instead of cutting corners. It comes with over 80 pre-built playbooks and 35 specialized AI roles covering everything from security checks to financial compliance, all designed to make AI-generated software more reliable and production-ready.

Why it matters

As companies increasingly rely on AI tools to write software faster, Ring addresses a growing boardroom concern: AI can ship code quickly but often sloppily, creating hidden risks in quality, security, and compliance that surface later as costly problems. For founders and investors, this represents a bet on 'AI governance for engineering' — a category that will matter more as AI-written code becomes a larger share of every company's software.

14Active

On the radar — signal detected

Stars
199
Forks
23
Contributors
17
Language
Go

Score updated Feb 28, 2026

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