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BlockRunAI/ClawRouter

The agent-native LLM router for OpenClaw. 41+ models, <1ms routing, USDC payments on Base & Solana via x402.

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What it does

ClawRouter is a smart traffic director for AI models that automatically picks the best and most cost-effective AI (like ChatGPT, Gemini, or Claude) for each request, without requiring separate accounts or API keys for each service. It works with a single digital wallet and evaluates each request across 15 different factors to decide which of 41+ AI models should handle it, paying for usage automatically using digital dollars (USDC stablecoin).

Why it matters

As AI costs become a major line item for product teams, a router that dynamically optimizes which model handles which task could dramatically reduce spend while maintaining quality — a compelling lever for any AI-powered product's unit economics. The built-in crypto payment layer also signals a bet on autonomous AI agents that pay for their own compute, a model that could reshape how AI infrastructure is priced and consumed at scale.

51Hot

Gaining traction — heating up

Stars
6.6k
Forks
614
Contributors
13
Language
TypeScript

Score updated Mar 25, 2026

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