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# GenericAgent — 3,300 Lines to Full OS Autonomy
<div align="center">
<img src="assets/images/bar.png" width="880"/>
</div>
[English](#english) | [中文](#chinese)
<p align="center">
<a href="#english">English</a> | <a href="#chinese">中文</a>
</p>
---
<a name="english"></a>
## 🌟 Overview
A minimalist autonomous agent framework that gives any LLM physical-level control over your PC — browser, terminal, file system, keyboard, mouse, screen vision, and mobile devices — in ~3,300 lines of Python.
**GenericAgent** is a minimal, self-evolving autonomous agent framework. Its core is just **~3,300 lines of code**. Through **7 atomic tools + a 92-line Agent Loop**, it grants any LLM system-level control over a local computer — covering browser, terminal, filesystem, keyboard/mouse input, screen vision, and mobile devices (ADB).
No Electron. No Docker. No Mac Mini. No 500K-line codebase. No paid installation service.
Its design philosophy: **don't preload skills — evolve them.**
## See It in Action
Every time GenericAgent solves a new task, it automatically crystallizes the execution path into an SOP for direct reuse later. The longer you use it, the more skills accumulate — forming a skill tree that belongs entirely to you, grown from 3,300 lines of seed code.
<table>
<tr>
<td width="45%" align="center"><img src="assets/demo/order_tea.gif" width="100%"><br><em>"Order me a milk tea" — navigates a delivery app, picks items, and checks out.</em></td>
<td width="55%" align="center"><img src="assets/demo/selectstock.gif" width="100%"><br><em>"Find GEM stocks with EXPMA golden cross, turnover > 5%" — quantitative screening via mootdx.</em></td>
</tr>
</table>
> **🤖 Self-Bootstrap Proof** — Everything in this repository, from installing Git and running `git init` to every commit message, was completed autonomously by GenericAgent. The author never opened a terminal once.
<table>
<tr>
<td width="33%"><img src="assets/demo/autonomous_explore.png" width="100%"><br><em>Autonomous web exploration — browses and summarizes on its own schedule.</em></td>
<td width="34%"><img src="assets/demo/alipay_expense.png" width="100%"><br><em>"Find expenses over ¥2K in the past 3 months" — drives Alipay on a phone via ADB.</em></td>
<td width="33%"><img src="assets/demo/wechat_batch.png" width="100%"><br><em>WeChat batch messaging — yes, it can drive WeChat too.</em></td>
</tr>
</table>
---
## What Happens When You Use It
## 📋 Core Features
- **Self-Evolving**: Automatically crystallizes each task into an SOP. Capabilities grow with every use, forming your personal skill tree.
- **Minimal Architecture**: ~3,300 lines of core code. Agent Loop is just 92 lines. No complex dependencies, zero deployment overhead.
- **Strong Execution**: Injects into a real browser (preserving login sessions). 7 atomic tools take direct control of the system.
- **High Compatibility**: Supports Claude / Gemini / Kimi and other major models. Cross-platform.
---
## 🧬 Self-Evolution Mechanism
This is what fundamentally distinguishes GenericAgent from every other agent framework.
```
You: "Read my WeChat messages"
Agent: installs dependencies → reverse-engineers DB → writes reader script → saves as SOP
Next time: instant recall, zero setup.
You: "Monitor stock prices and alert me"
Agent: installs mootdx → builds screening workflow → sets up scheduled task → saves as SOP
Next time: one sentence to run.
You: "Send this file via Gmail"
Agent: configures OAuth → writes send script → saves as SOP
Next time: just works.
[New Task] --> [Autonomous Exploration] (install deps, write scripts, debug & verify) -->
[Crystallize Execution Path into SOP] --> [Write to Memory Layer] --> [Direct Recall on Next Similar Task]
```
**Dogfooding**: This repository — from installing Git to `git init`, writing this README, to every commit message — was built entirely by GenericAgent without the author opening a terminal once.
| What you say | What the agent does the first time | Every time after |
|---|---|---|
| *"Read my WeChat messages"* | Install deps → reverse DB → write read script → save SOP | **one-line invoke** |
| *"Monitor stocks and alert me"* | Install mootdx → build selection flow → configure cron → save SOP | **one-line start** |
| *"Send this file via Gmail"* | Configure OAuth → write send script → save SOP | **ready to use** |
Every task the agent solves becomes a permanent skill. After a few weeks, your instance has a unique skill tree — grown entirely from 3,300 lines of seed code.
After a few weeks, your agent instance will have a skill tree no one else in the world has — all grown from 3,300 lines of seed code.
## The Seed Philosophy
Most agent frameworks ship as finished products. GenericAgent ships as a **seed**.
##### 🎯 Demo Showcase
The 5 core SOPs define how the agent thinks, remembers, and operates. From there, every new capability is discovered and recorded by the agent itself:
| 🧋 Food Delivery Order | 📈 Quantitative Stock Screening |
|:---:|:---:|
| <img src="assets/demo/order_tea.gif" width="100%" alt="Order Tea"> | <img src="assets/demo/selectstock.gif" width="100%" alt="Stock Selection"> |
| *"Order me a milk tea"* — Navigates the delivery app, selects items, and completes checkout automatically. | *"Find GEM stocks with EXPMA golden cross, turnover > 5%"* — Screens stocks with quantitative conditions. |
| 🌐 Autonomous Web Exploration | 💰 Expense Tracking | 💬 Batch Messaging |
| <img src="assets/demo/autonomous_explore.png" width="100%" alt="Web Exploration"> | <img src="assets/demo/alipay_expense.png" width="100%" alt="Alipay Expense"> | <img src="assets/demo/wechat_batch.png" width="100%" alt="WeChat Batch"> |
| Autonomously browses and periodically summarizes web content. | *"Find expenses over ¥2K in the last 3 months"* — Drives Alipay via ADB. | Sends bulk WeChat messages, fully driving the WeChat client. |
1. You ask it to do something new
2. It figures out how (install dependencies, write scripts, test)
3. It saves the procedure as a new SOP in its memory
4. Next time, it recalls and executes directly
---
The agent doesn't just execute — it **learns and remembers**.
## 📅 Latest News
## Quick Start
- **2026-03-10:** [Released million-scale Skill Library](https://mp.weixin.qq.com/s/q2gQ7YvWoiAcwxzaiwpuiQ?scene=1&click_id=7)
- **2026-03-08:** [Released "Dintal Claw" — a GenericAgent-powered government affairs bot](https://mp.weixin.qq.com/s/eiEhwo-j6S-WpLxgBnNxBg)
- **2026-03-01:** [GenericAgent featured by Jiqizhixin (机器之心)](https://mp.weixin.qq.com/s/uVWpTTF5I1yzAENV_qm7yg)
- **2026-01-11:** GenericAgent V1.0 public release
> 💡 **Windows零基础用户**不知道Python是什么[下载便携版](http://kw.fudan.edu.cn/resources/PC-Agent-Portable.zip)19MB解压即用
---
## 🚀 Quick Start
#### Method 1: Standard Installation
```bash
# 1. Clone
# 1. Clone the repo
git clone https://github.com/lsdefine/GenericAgent.git
cd GenericAgent
# 2. Install minimal deps
# 2. Install minimal dependencies
pip install streamlit pywebview
# 3. Configure API key
# 3. Configure API Key
cp mykey_template.py mykey.py
# Edit mykey.py with your LLM API key
# Edit mykey.py and fill in your LLM API Key
# 4. Launch
python launch.pyw
```
## QQ Bot (Optional)
#### Method 2: Windows Portable Version (Recommended for beginners)
QQ support uses `qq-botpy` over WebSocket, so no public webhook is required.
[Download portable version](http://kw.fudan.edu.cn/resources/PC-Agent-Portable.zip) (19MB, unzip and run)
Full guide: [WELCOME_NEW_USER.md](WELCOME_NEW_USER.md)
#### Method 3: Android (Termux)
```bash
cd /sdcard/ga
python agentmain.py
```
---
## 🤖 Bot Interfaces (Optional)
### QQ Bot
Uses `qq-botpy` WebSocket long connection — **no public webhook required**:
```bash
pip install qq-botpy
```
Then add these fields to `mykey.py` or `mykey.json`:
Add to `mykey.py`:
```python
qq_app_id = "YOUR_APP_ID"
@@ -94,216 +120,232 @@ qq_app_secret = "YOUR_APP_SECRET"
qq_allowed_users = ["YOUR_USER_OPENID"] # or ['*'] for public access
```
Run QQ directly:
```bash
python qqapp.py
```
Or start it together with the desktop window:
```bash
# or launch together with the desktop floating window
python launch.pyw --qq
```
Notes:
- Create the bot at [QQ Open Platform](https://q.qq.com)
- In sandbox mode, add your own QQ account to the message list first
- After the first inbound message, the user's openid will be written to `temp/qqapp.log`
> Create a bot at the [QQ Open Platform](https://q.qq.com) to get AppID / AppSecret. After the first message, user openid is logged in `temp/qqapp.log`.
## Feishu / WeCom / DingTalk (Optional)
---
Feishu:
### Lark (Feishu)
```bash
pip install lark-oapi
python fsapp.py
# or
python launch.pyw --feishu
python fsapp.py # or python launch.pyw --feishu
```
Config keys in `mykey.py` / `mykey.json`:
```python
fs_app_id = "cli_xxx"
fs_app_secret = "xxx"
fs_allowed_users = ["ou_xxx"] # or ['*']
```
Current Feishu support in this repo:
- inbound: text, post rich text, image, file, audio, media, interactive/share cards
- images are sent to multimodal-capable OpenAI-compatible backends as true image inputs on the first turn
- outbound: interactive progress cards, uploaded image replies, uploaded file/media replies
**Inbound support**: text, rich text post, images, files, audio, media, interactive cards / share cards
**Outbound support**: streaming progress cards, image replies, file / media replies
**Vision model**: Images are sent as true multimodal input to OpenAI Vision-compatible backends on the first turn
Detailed setup guide: `assets/SETUP_FEISHU.md`
Full setup: [assets/SETUP_FEISHU.md](assets/SETUP_FEISHU.md)
WeCom:
---
### WeCom (Enterprise WeChat)
```bash
pip install wecom_aibot_sdk
python wecomapp.py
# or
python launch.pyw --wecom
python wecomapp.py # or python launch.pyw --wecom
```
Config keys:
```python
wecom_bot_id = "your_bot_id"
wecom_secret = "your_bot_secret"
wecom_allowed_users = ["your_user_id"] # or ['*']
wecom_welcome_message = "Hello"
wecom_allowed_users = ["your_user_id"]
wecom_welcome_message = "Hello, I'm online."
```
DingTalk:
---
### DingTalk
```bash
pip install dingtalk-stream
python dingtalkapp.py
# or
python launch.pyw --dingtalk
python dingtalkapp.py # or python launch.pyw --dingtalk
```
Config keys:
```python
dingtalk_client_id = "your_app_key"
dingtalk_client_secret = "your_app_secret"
dingtalk_allowed_users = ["your_staff_id"] # or ['*']
```
**Also runs on Android** — tested successfully on Termux with `python agentmain.py` (CLI frontend):
---
### Telegram Bot
```python
# mykey.py
tg_bot_token = 'YOUR_BOT_TOKEN'
tg_allowed_users = [YOUR_USER_ID]
```
```bash
# In Termux
cd /sdcard/ga
python agentmain.py
python tgapp.py
```
Once running, tell the agent: *"Execute web setup SOP to unlock browser tools"* — it handles the rest. See [WELCOME_NEW_USER.md](WELCOME_NEW_USER.md) for the full bootstrap sequence.
## vs. Alternatives
| | GenericAgent | OpenClaw | Claude Code |
|---|---|---|---|
| Codebase | ~3,300 lines | ~530,000 lines | Open-source (large) |
| Deploy | `pip install` + API key | Multi-service orchestration | CLI + subscription |
| Browser | Injects into real browser (keeps login state) | Sandboxed/headless | Via MCP plugins |
| OS Control | Keyboard, mouse, vision, ADB | Multi-agent delegation | File + terminal |
| Self-evolution | Grows SOPs & tools autonomously | Plugin ecosystem | Stateless per session |
| Core shipped | 10 .py + 5 SOPs | Hundreds of modules | Rich CLI toolkit |
## How It Works
```
User instruction
┌─────────────────────┐
│ agent_loop.py (92L) │ ← Sense-Think-Act cycle
│ "What do I know? │
│ What should I do?" │
└────────┬────────────┘
┌─────────────────────┐
│ 7 Atomic Tools │ ← All capabilities derive from these
│ code_run │ Execute any Python/PowerShell
│ file_read/write │ Direct disk access
│ file_patch │ Surgical code edits
│ web_scan │ Read live web pages
│ web_execute_js │ Control browser DOM
│ ask_user │ Human-in-the-loop
└────────┬────────────┘
┌─────────────────────┐
│ Memory System │ ← Persistent across sessions
│ L0: Meta-SOP │ How to manage memory itself
│ L2: Global Facts │ Environment, credentials, paths
│ L3: Task SOPs │ Learned procedures (self-growing)
└─────────────────────┘
```
The agent starts with 7 primitive tools. Through `code_run`, it can install packages, write scripts, and interface with any hardware or API — effectively manufacturing new tools at runtime.
<details>
<summary>What Ships in the Box</summary>
**Core engine** (runs the agent):
- `agent_loop.py` — Sense-Think-Act loop (92 lines)
- `ga.py` — Tool definitions and execution
- `llmcore.py` — LLM communication (multi-backend)
- `agentmain.py` — Session orchestration
**Interface** (talk to the agent):
- `stapp.py` — Streamlit web UI
- `tgapp.py` — Telegram bot interface
- `fsapp.py` — Feishu bot interface
- `qqapp.py` — QQ bot interface
- `wecomapp.py` — WeCom bot interface
- `dingtalkapp.py` — DingTalk bot interface
- `launch.pyw` — One-click launcher with floating window
**Infrastructure**:
- `TMWebDriver.py` — Browser injection bridge (not Selenium — injects JS into your real browser via Tampermonkey)
- `simphtml.py` — HTML→text cleaner for web perception
**5 Core SOPs** (shipped, version-controlled):
1. `memory_management_sop` — L0 constitution: how the agent manages its own memory
2. `autonomous_operation_sop` — Self-directed task execution
3. `scheduled_task_sop` — Cron-like recurring tasks
4. `web_setup_sop` — Browser environment bootstrap
5. `ljqCtrl_sop` — Desktop physical control (keyboard, mouse, DPI-aware)
Everything else — Gmail integration, WeChat automation, vision APIs, game downloaders, stock analysis workflows — the agent builds and memorizes on its own through use.
</details>
---
## 📊 Comparison with Similar Tools
| Feature | GenericAgent | OpenClaw | Claude Code |
|------|:---:|:---:|:---:|
| **Codebase** | ~3,300 lines | ~530,000 lines | Open-sourced (large) |
| **Deployment** | `pip install` + API Key | Multi-service orchestration | CLI + subscription |
| **Browser Control** | Real browser (session preserved) | Sandbox / headless browser | Via MCP plugin |
| **OS Control** | Mouse/kbd, vision, ADB | Multi-agent delegation | File + terminal |
| **Self-Evolution** | Autonomous SOP growth | Plugin ecosystem | Stateless between sessions |
| **Out of the Box** | 10 .py files + 5 SOPs | Hundreds of modules | Rich CLI toolset |
---
## 🧠 How It Works
GenericAgent accomplishes complex tasks through **Layered Memory × Minimal Toolset × Autonomous Execution Loop**, continuously accumulating experience during execution.
1**Layered Memory System**
> _Memory crystallizes throughout task execution, letting the agent build stable, efficient working patterns over time._
- **L0 — Meta Rules**: Core behavioral rules and system constraints of the agent
- **L2 — Global Facts**: Stable knowledge accumulated over long-term operation
- **L3 — Task SOPs**: Workflows for completing specific task types
2**Autonomous Execution Loop**
> _Perceive environment state → Task reasoning → Execute tools → Write experience to memory → Loop_
The entire core loop is just **92 lines of code** (`agent_loop.py`).
3**Minimal Toolset**
> _GenericAgent provides only **7 atomic tools**, forming the foundational capabilities for interacting with the outside world._
| Tool | Function |
|------|------|
| `code_run` | Execute arbitrary code |
| `file_read` | Read files |
| `file_write` | Write files |
| `file_patch` | Patch / modify files |
| `web_scan` | Perceive web content |
| `web_execute_js` | Control browser behavior |
| `ask_user` | Human-in-the-loop confirmation |
4**Capability Extension Mechanism**
> _Capable of dynamically creating new tools._
Via `code_run`, GenericAgent can dynamically install Python packages, write new scripts, call external APIs, or control hardware at runtime — crystallizing temporary abilities into permanent tools.
<div align="center">
<img src="assets/images/workflow.jpg" alt="GenericAgent Workflow" width="400"/>
<br><em>GenericAgent Workflow Diagram</em>
</div>
---
## ⭐ Support
If this project helped you, please consider leaving a **Star!** 🙏
You're also welcome to join our **GenericAgent Community Group** for discussion, feedback, and co-building 👏
<div align="center">
<img src="assets/images/wechat_group.jpg" width="280"/>
</div>
---
## 📄 License
MIT License — see [LICENSE](LICENSE)
<div align="center">
<img src="assets/images/bar.png" width="880"/>
</div>
---
<a name="chinese"></a>
## 🌟 项目简介
# GenericAgent — 3,300 行代码,完整 OS 级自主控制
**GenericAgent** 是一个极简、可自我进化的自主 Agent 框架。核心仅 **~3,300 行代码**,通过 **7 个原子工具 + 92 行 Agent Loop**,赋予任意 LLM 对本地计算机的系统级控制能力覆盖浏览器、终端、文件系统、键鼠输入、屏幕视觉及移动设备ADB
一个极简自主 Agent 框架。用约 3,300 行 Python让任意 LLM 获得对你 PC 的物理级控制能力——浏览器、终端、文件系统、键鼠、屏幕视觉、移动设备。
它的设计哲学是:**不预设技能,靠进化获得能力。**
不需要 Electron不需要 Docker不需要 Mac Mini不需要 53 万行代码,不需要付费安装服务
每解决一个新任务GenericAgent 就将执行路径自动固化为 SOP供后续直接调用。使用时间越长沉淀的技能越多形成一棵完全属于你、从 3,300 行种子代码生长出来的专属技能树
## 用起来是什么样的
> **🤖 自举实证** — 本仓库的一切,从安装 Git、`git init` 到每一条 commit message均由 GenericAgent 自主完成。作者全程未打开过一次终端。
---
## 📋 核心特性
- **自我进化**: 每次任务自动沉淀 SOP能力随使用持续增长形成专属技能树
- **极简架构**: ~3,300 行核心代码Agent Loop 仅 92 行,无复杂依赖,部署零负担
- **强执行力**: 注入真实浏览器保留登录态7 个原子工具直接接管系统
- **高兼容性**: 支持 Claude / Gemini / Kimi 等主流模型,跨平台运行
---
## 🧬 自我进化机制
这是 GenericAgent 区别于其他 Agent 框架的根本所在。
```
你:"帮我读取微信消息"
Agent安装依赖 → 逆向数据库 → 写读取脚本 → 保存为 SOP
下次:一句话直接调用,零配置。
你:"帮我监控股票并提醒"
Agent安装 mootdx → 构建选股工作流 → 设置定时任务 → 保存为 SOP
下次:一句话启动。
你:"用 Gmail 发这个文件"
Agent配置 OAuth → 写发送脚本 → 保存为 SOP
下次:直接能用。
[遇到新任务]-->[自主摸索](安装依赖、编写脚本、调试验证)-->
[将执行路径固化为 SOP]-->[写入记忆层]-->[下次同类任务直接调用]
```
**自举实证**:本仓库从安装 Git、`git init`、编写 README 到每一条 commit message全程由 GenericAgent 完成——作者没有打开过一次终端。
| 你说的一句话 | Agent 第一次做了什么 | 之后每次 |
|---|---|---|
| *"帮我读取微信消息"* | 安装依赖 → 逆向数据库 → 写读取脚本 → 保存 SOP | **一句话调用** |
| *"监控股票并提醒我"* | 安装 mootdx → 构建选股流程 → 配置定时任务 → 保存 SOP | **一句话启动** |
| *"用 Gmail 发这个文件"* | 配置 OAuth → 编写发送脚本 → 保存 SOP | **直接可用** |
每个解决过的任务都会变成永久技能。用几周后,你的 Agent 实例拥有一套独特的技能树——全部从 3,300 行种子代码中生长来。
用几周后,你的 Agent 实例拥有一套任何人都没有的专属技能树全部从 3,300 行种子代码中生长来。
## 自举哲学
多数 Agent 框架以成品形态发布。GenericAgent 以**种子**形态发布。
##### 🎯 实例展示
5 个核心 SOP 定义了 Agent 如何思考、记忆和行动。之后的一切能力,由 Agent 在使用中自主发现并记录:
| 🧋 外卖下单 | 📈 量化选股 |
|:---:|:---:|
| <img src="assets/demo/order_tea.gif" width="100%" alt="Order Tea"> | <img src="assets/demo/selectstock.gif" width="100%" alt="Stock Selection"> |
| *"Order me a milk tea"* — 自动导航外卖 App选品并完成结账 | *"Find GEM stocks with EXPMA golden cross, turnover > 5%"* — 量化条件筛股 |
1. 你让它做一件新事
2. 它自己摸索方法(安装依赖、写脚本、测试)
3. 把流程保存为新 SOP
4. 下次直接调用
&nbsp;
Agent 不只是执行——它**学习并记忆**。
| 🌐 自主网页探索 | 💰 支出追踪 | 💬 批量消息 |
|:---:|:---:|:---:|
| <img src="assets/demo/autonomous_explore.png" width="100%" alt="Web Exploration"> | <img src="assets/demo/alipay_expense.png" width="100%" alt="Alipay Expense"> | <img src="assets/demo/wechat_batch.png" width="100%" alt="WeChat Batch"> |
| 自主浏览并定时汇总网页信息 | *"查找近 3 个月超 ¥2K 的支出"* — 通过 ADB 驱动支付宝 | 批量发送微信消息,完整驱动微信客户端 |
## 快速开始
---
## 📅 最新动态
- **2026-03-:** [发布百万级 Skill 库](https://mp.weixin.qq.com/s/q2gQ7YvWoiAcwxzaiwpuiQ?scene=1&click_id=7)
- **2026-03-08:** [发布以 GenericAgent 为核心的"政务龙虾" Dintal Claw](https://mp.weixin.qq.com/s/eiEhwo-j6S-WpLxgBnNxBg)
- **2026-03-01:** [GenericAgent 被机器之心报道](https://mp.weixin.qq.com/s/uVWpTTF5I1yzAENV_qm7yg)
- **2026-01-11:** GenericAgent V1.0 公开版本发布
---
## 🚀 快速开始
#### 方法一:标准安装
```bash
# 1. 克隆
# 1. 克隆仓库
git clone https://github.com/lsdefine/GenericAgent.git
cd GenericAgent
@@ -312,168 +354,189 @@ pip install streamlit pywebview
# 3. 配置 API Key
cp mykey_template.py mykey.py
# 编辑 mykey.py 填入你的 LLM API Key
# 编辑 mykey.py填入你的 LLM API Key
# 4. 启动
python launch.pyw
```
**同样可在 Android 上运行** — 已在 Termux 上测试通过,通过 `python agentmain.py`CLI 前端)启动:
#### 方法二Windows 便携版(推荐新手)
[下载便携版](http://kw.fudan.edu.cn/resources/PC-Agent-Portable.zip)19MB解压即用
完整引导流程见 [WELCOME_NEW_USER.md](WELCOME_NEW_USER.md)。
#### 方法三AndroidTermux
```bash
# 在 Termux 中
cd /sdcard/ga
python agentmain.py
```
启动后告诉 Agent"执行 web setup SOP 解锁浏览器工具"——剩下的它自己搞定。完整引导流程见 [WELCOME_NEW_USER.md](WELCOME_NEW_USER.md)。
---
## QQ Bot可选
## 🤖 Bot 接口(可选)
QQ 适配使用 `qq-botpy` 的 WebSocket 长连接,不需要公网 webhook。
### QQ Bot
使用 `qq-botpy` WebSocket 长连接,**无需公网 webhook**
```bash
pip install qq-botpy
```
然后`mykey.py``mykey.json` 中补充:
`mykey.py` 中补充:
```python
qq_app_id = "YOUR_APP_ID"
qq_app_secret = "YOUR_APP_SECRET"
qq_allowed_users = ["YOUR_USER_OPENID"] # 或 ['*'] 表示公开访问
qq_allowed_users = ["YOUR_USER_OPENID"] # 或 ['*'] 公开访问
```
启动方式:
```bash
python qqapp.py
```
或和桌面悬浮窗一起启动:
```bash
# 或与桌面悬浮窗一起启动
python launch.pyw --qq
```
补充说明:
- 在 [QQ 开放平台](https://q.qq.com) 创建机器人并拿到 `AppID` / `AppSecret`
- 沙箱调试时,先把自己的 QQ 号加入消息列表
- 首次给机器人发消息后,用户 openid 会记录在 `temp/qqapp.log` 中,便于填入 `qq_allowed_users`
> 在 [QQ 开放平台](https://q.qq.com) 创建机器人获取 AppID / AppSecret。首次消息后用户 openid 记录于 `temp/qqapp.log`。
## Feishu / WeCom / DingTalk可选
---
Feishu
### 飞书Lark
```bash
pip install lark-oapi
python fsapp.py
# 或
python launch.pyw --feishu
python fsapp.py # 或 python launch.pyw --feishu
```
配置项:
```python
fs_app_id = "cli_xxx"
fs_app_secret = "xxx"
fs_allowed_users = ["ou_xxx"] # 或 ['*']
```
当前仓库里的飞书能力:
- 入站:文本、富文本 post、图片、文件、音频、media、交互卡片/分享卡片
- 图片首轮以真正的多模态图片输入发送给支持 OpenAI 兼容视觉的模型后端
- 出站:流式进度卡片、图片回传、文件或 media 回传
**入站支持**:文本、富文本 post、图片、文件、音频、media、交互卡片 / 分享卡片
**出站支持**:流式进度卡片、图片回传、文件 / media 回传
**视觉模型**图片首轮以真正的多模态输入发送给兼容 OpenAI Vision 的后端
详细配置流程见 `assets/SETUP_FEISHU.md`
详细配置见 [assets/SETUP_FEISHU.md](assets/SETUP_FEISHU.md)
WeCom(企业微信)
---
### 企业微信WeCom
```bash
pip install wecom_aibot_sdk
python wecomapp.py
# 或
python launch.pyw --wecom
python wecomapp.py # 或 python launch.pyw --wecom
```
配置项:
```python
wecom_bot_id = "your_bot_id"
wecom_secret = "your_bot_secret"
wecom_allowed_users = ["your_user_id"] # 或 ['*']
wecom_allowed_users = ["your_user_id"]
wecom_welcome_message = "你好,我在线上。"
```
DingTalk(钉钉)
---
### 钉钉DingTalk
```bash
pip install dingtalk-stream
python dingtalkapp.py
# 或
python launch.pyw --dingtalk
python dingtalkapp.py # 或 python launch.pyw --dingtalk
```
配置项:
```python
dingtalk_client_id = "your_app_key"
dingtalk_client_secret = "your_app_secret"
dingtalk_allowed_users = ["your_staff_id"] # 或 ['*']
```
## 对比
---
| | GenericAgent | OpenClaw | Claude Code |
|---|---|---|---|
| 代码量 | ~3,300 行 | ~530,000 行 | 已开源(体量大) |
| 部署 | `pip install` + API key | 多服务编排 | CLI + 订阅 |
| 浏览器 | 注入真实浏览器(保留登录态) | 沙箱/无头浏览器 | 通过 MCP 插件 |
| OS 控制 | 键鼠、视觉、ADB | 多 Agent 委派 | 文件 + 终端 |
| 自我进化 | 自主生长 SOP 和工具 | 插件生态 | 会话间无状态 |
| 出厂配置 | 10 个 .py + 5 个 SOP | 数百模块 | 丰富 CLI 工具集 |
### Telegram Bot
## 工作原理
```python
# mykey.py
tg_bot_token = 'YOUR_BOT_TOKEN'
tg_allowed_users = [YOUR_USER_ID]
```
Agent 拥有 7 个原子工具:`code_run`(执行任意代码)、`file_read/write/patch`(文件操作)、`web_scan`(网页感知)、`web_execute_js`(浏览器控制)、`ask_user`(人机协作)。
```bash
python tgapp.py
```
通过 `code_run`,它可以安装任何包、编写任何脚本、对接任何硬件——相当于在运行时制造新工具。学到的流程保存为 SOP下次直接调用。
---
核心循环只有 92 行(`agent_loop.py`):感知 → 思考 → 行动 → 记忆。
## 📊 与同类产品的对比
<details>
<summary>出厂清单</summary>
| 特性 | GenericAgent | OpenClaw | Claude Code |
|------|:---:|:---:|:---:|
| **代码量** | ~3,300 行 | ~530,000 行 | 已开源(体量大) |
| **部署方式** | `pip install` + API Key | 多服务编排 | CLI + 订阅 |
| **浏览器控制** | 注入真实浏览器(保留登录态) | 沙箱 / 无头浏览器 | 通过 MCP 插件 |
| **OS 控制** | 键鼠、视觉、ADB | 多 Agent 委派 | 文件 + 终端 |
| **自我进化** | 自主生长 SOP 和工具 | 插件生态 | 会话间无状态 |
| **出厂配置** | 10 个 .py + 5 个 SOP | 数百模块 | 丰富 CLI 工具集 |
**核心引擎**
- `agent_loop.py` — 感知-思考-行动循环92 行)
- `ga.py` — 工具定义与执行
- `llmcore.py` — LLM 通信(多后端)
- `agentmain.py` — 会话编排
---
**交互界面**
- `stapp.py` — Streamlit Web UI
- `tgapp.py` — Telegram 机器人
- `fsapp.py` — 飞书机器人
- `qqapp.py` — QQ 机器人
- `wecomapp.py` — 企业微信机器人
- `dingtalkapp.py` — 钉钉机器人
- `launch.pyw` — 一键启动 + 悬浮窗
## 🧠 工作机制
**基础设施**
- `TMWebDriver.py` — 浏览器注入桥接(非 Selenium通过 Tampermonkey 注入真实浏览器)
- `simphtml.py` — HTML→文本清洗
GenericAgent 通过**分层记忆 × 最小工具集 × 自主执行循环**完成复杂任务,并在执行过程中持续积累经验。
**5 个核心 SOP**(出厂自带,版本控制):
1. `memory_management_sop` — L0 宪法Agent 如何管理自身记忆
2. `autonomous_operation_sop` — 自主任务执行
3. `scheduled_task_sop` — 定时任务
4. `web_setup_sop` — 浏览器环境引导
5. `ljqCtrl_sop` — 桌面物理控制键鼠、DPI 感知)
1**分层记忆系统**
> 记忆在任务执行过程中持续沉淀,使 Agent 逐步形成稳定且高效的工作方式
其余一切——Gmail、微信自动化、视觉 API、游戏下载、股票分析——都是 Agent 在使用中自主构建并记忆的。
</details>
- **L0 — 元规则Meta Rules**Agent 的基础行为规则和系统约束
- **L2 — 全局事实Global Facts**:在长期运行过程中积累的稳定知识
- **L3 — 任务 SOPStandard Operating Procedure**:完成特定任务的操作流程
## 许可
2**自主执行循环**
MIT
> 感知环境状态 → 任务推理 → 调用工具执行 → 经验写入记忆 → 循环
整个核心循环仅 **92 行代码**`agent_loop.py`)。
3**最小工具集**
>GenericAgent 仅提供 **7 个原子工具**,构成与外部世界交互的基础能力
| 工具 | 功能 |
|------|------|
| `code_run` | 执行任意代码 |
| `file_read` | 读取文件 |
| `file_write` | 写入文件 |
| `file_patch` | 修改文件 |
| `web_scan` | 感知网页内容 |
| `web_execute_js` | 控制浏览器行为 |
| `ask_user` | 人机协作确认 |
4**能力扩展机制**
> 具备动态创建新的工具能力
>
通过 `code_run`GenericAgent 可在运行时动态安装 Python 包、编写新脚本、调用外部 API 或控制硬件,将临时能力固化为永久工具。
<div align="center">
<img src="assets/images/workflow.jpg" alt="GenericAgent 工作流程" width="400"/>
<br><em>GenericAgent 工作流程图</em>
</div>
---
## ⭐ 支持
如果这个项目对你有帮助,欢迎点一个 **Star!** 🙏
同时也欢迎加入我们的**GenericAgent体验交流群**,一起交流、反馈和共建 👏
<div align="center">
<img src="assets/images/wechat_group.jpg" width="280"/>
</div>
---
## 📄 许可
MIT License — 详见 [LICENSE](LICENSE)

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