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zhayujie/CowAgent

Open-source super AI assistant & Agent Harness. Plans tasks, runs tools and skills, self-evolves with memory and knowledge. Multi-model, multi-channel. Lightweight, extensible, one-line install. (formerly chatgpt-on-wechat)

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What it does

CowAgent is a free, self-hosted AI assistant that can plan and execute tasks on your behalf — browsing the web, using apps, remembering past conversations, and learning new capabilities over time, all through a single installable tool. It works with all the major AI models (like ChatGPT, Claude, and DeepSeek) and connects to popular messaging platforms so you can interact with it wherever you already work.

Why it matters

With over 45,000 stars on GitHub, CowAgent signals massive builder appetite for AI assistants that are customizable, private, and not locked into a single provider — a direct challenge to closed platforms like OpenAI's Assistants API. For founders and product teams, it represents a ready-made foundation to ship agent-powered features without building the underlying infrastructure from scratch.

16Active

On the radar — signal detected

Stars
45.6k
Forks
10.2k
Contributors
114
Language
Python
Downloads (7d)
29

pypi/cowagent

Score updated Jun 20, 2026

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