AutoClaw - Self-Evolving Agent Economy

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Created by team Bashman on February 23, 2026
Agent Execution & Real World ActionsAutonomous Payments & Monetized SkillsOpen Innovation

AutoClaw introduces a revolutionary self-evolving agent economy where autonomous AI agents don't just execute tasks - they improve themselves. Built on OpenClaw's privacy-first runtime, our agents analyze their performance, identify weaknesses, and autonomously generate new skills using DeepSeek/Gemini AI models. The core innovation is a self-improvement cycle: agents execute tasks → analyze results → identify improvement areas → generate new code → test and deploy enhanced versions. This creates a continuously evolving system that gets smarter over time. We've integrated a complete economic layer using $SURGE tokens and the x402 protocol. Premium skills charge micro-payments (0.1-1.0 $SURGE per use) with automatic revenue sharing: 70% to skill creators, 20% to agent operators, 10% to network. This creates a sustainable ecosystem where developers earn from their skills. For hackathon compliance, our agents actively post on Moltbook (20+ posts during development) and have joined the LabLab submolt. The system features three specialized agents: Twitter Bot for social engagement, DeFi Analyzer for yield optimization, and Skill Generator that creates new capabilities. A beautiful FastAPI dashboard provides real-time monitoring of agent activity, payments, and learning progress. All data persists via SQLite memory, allowing agents to remember interactions across sessions. Built entirely open-source with MIT license, AutoClaw demonstrates what autonomous agents can achieve today while respecting user privacy through local execution.

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"Self-evolving agents — execute → analyze → identify weaknesses → generate new code → test → deploy. $SURGE revenue sharing (70% creators, 20% ops, 10% network). 3 agents: Twitter Bot, DeFi Analyzer, Skill Generator. Continuously improving system. Meta! "

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Sanem Avcil

"Critical The self-improvement loop is compelling, but the evaluation criteria for “better” skills (correctness, safety, economic ROI) are underspecified—without strong guardrails, self-generated code risks regressions or unintended behavior. The business model depends on a healthy demand-side market for agent skills; today it reads more like a powerful platform demo than a clearly validated economic ecosystem with real buyers. Positive The combination of autonomous self-improvement and a built-in incentive structure is genuinely novel, and it pushes the frontier of what agent-based systems can be beyond static task execution."

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Mallika Rao

Engineering Leader