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elder-plinius/CL4R1T4S

LEAKED SYSTEM PROMPTS FOR CHATGPT, CLAUDE, GEMINI, GROK, PERPLEXITY, CURSOR, LOVABLE, REPLIT, AND MORE! - AI SYSTEMS TRANSPARENCY FOR ALL! 👐

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What it does

CL4R1T4S is a public collection of leaked and reverse-engineered system prompts — the hidden instructions that major AI companies use to shape how their chatbots and AI tools behave — from providers like OpenAI, Google, Anthropic, and others. It acts as a transparency archive, letting anyone see the behind-the-scenes rules and guidelines that govern AI products most people use every day.

Why it matters

For builders and product teams shipping AI-powered products, this repository reveals how industry leaders are structuring AI behavior, setting guardrails, and defining product personality — offering a rare competitive intelligence window into design decisions that are normally kept secret. It also signals growing public pressure for AI transparency, which is increasingly becoming a regulatory and trust consideration that founders and investors should factor into product strategy.

Why it's trending

People want to know what's really running inside the AI tools they use every day, and this repo gives them exactly that — a growing archive of leaked and reverse-engineered system prompts from OpenAI, Anthropic, Google, and others. It pulled in over 5,500 stars this week alone, though that's actually a slowdown from last week's 8,200+, suggesting the initial viral spike may be cooling as the novelty fades. Worth noting that a manipulation penalty was applied to its score, so builders should treat the momentum with some skepticism — this looks more like a curiosity-driven crowd than a signal of deep technical adoption, especially with just one contributor and only 6 commits in the past month.

17Active

On the radar — signal detected

Stars
44.0k
Forks
8.9k
Contributors
1

Score updated May 17, 2026

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