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zhaoxinyi02/ClawPanel

🐾 ClawPanel — OpenClaw AI 助手可视化管理面板。Go 单二进制部署,支持 20+ 通道统一管理,跨平台,实时日志监控。

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What it does

ClawPanel is a visual management dashboard for OpenClaw AI assistants, letting users control AI chatbots across 20+ messaging platforms — including QQ, WeChat, Telegram, Discord, and WhatsApp — from a single interface. It deploys as one file with no complex setup, offering real-time monitoring, workflow automation, and multi-agent management through a clean web-based control panel.

Why it matters

As businesses race to deploy AI assistants across multiple chat platforms simultaneously, tools that unify that management into one dashboard reduce operational complexity and speed up go-to-market — this is exactly the kind of infrastructure layer that sits between AI models and end users at scale. The strong early traction (279 stars, 44 forks) signals real demand for multi-channel AI bot orchestration, particularly in Asian markets where QQ and WeChat dominate alongside global platforms.

51Hot

Gaining traction — heating up

Stars
853
Forks
144
Contributors
11
Language
Go

Score updated Mar 13, 2026

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