Overview
- Skill Key
- cerbug45/agentmesh
- Author
- cerbug45
- Source Repo
- openclaw/skills
- Version
- -
- Source Path
- skills/cerbug45/agentmesh
- Latest Commit SHA
- f358cca3f4bfa4b375f502e942378bd4893eae8f
Stars
0
Installs
0
Status
ACTIVE
Visibility
PUBLIC
直接复制以下提示词,发送给你的 AI 助手即可完成安装。
请先检查是否已安装 SkillHub 商店,若未安装,请根据 https://skillhub-1388575217.cos.ap-guangzhou.myqcloud.com/install/skillhub.md 安装 SkillHub 商店,然后安装 Agentmesh 技能。 若已安装,则直接安装 Agentmesh 技能。
# AgentMesh SKILL.md
> **WhatsApp-style end-to-end encrypted messaging for AI agents.**
> GitHub: https://github.com/cerbug45/AgentMesh | Author: cerbug45
---
## What Is AgentMesh?
AgentMesh gives every AI agent a **cryptographic identity** and lets agents
exchange messages that are:
| Property | Mechanism |
|---|---|
| **Encrypted** | AES-256-GCM authenticated encryption |
| **Authenticated** | Ed25519 digital signatures (per message) |
| **Forward-secret** | X25519 ECDH ephemeral session keys |
| **Tamper-proof** | AEAD authentication tag |
| **Replay-proof** | Nonce + counter deduplication |
| **Private** | The Hub (broker) never sees message contents |
No TLS certificates. No servers required for local use. One `pip install`.
---
## Installation
### Requirements
- Python **3.10 or newer**
- `pip`
### Option 1 – Install from GitHub (recommended)
```bash
pip install git+https://github.com/cerbug45/AgentMesh.git
```
### Option 2 – Clone and install locally
```bash
git clone https://github.com/cerbug45/AgentMesh.git
cd AgentMesh
pip install .
```
### Option 3 – Development install (editable, with tests)
```bash
git clone https://github.com/cerbug45/AgentMesh.git
cd AgentMesh
pip install -e ".[dev]"
pytest # run all tests
```
### Verify installation
```python
python -c "import agentmesh; print(agentmesh.__version__)"
# → 1.0.0
```
---
## Quick Start (5 minutes)
```python
from agentmesh import Agent, LocalHub
hub = LocalHub() # in-process broker
alice = Agent("alice", hub=hub) # keys generated automatically
bob = Agent("bob", hub=hub)
@bob.on_message
def handle(msg):
print(f"[{msg.recipient}] ← {msg.sender}: {msg.text}")
alice.send("bob", text="Hello, Bob! This is end-to-end encrypted.")
```
Output:
```
[bob] ← alice: Hello, Bob! This is end-to-end encrypted.
```
---
## Core Concepts
### Agent
An `Agent` is an AI agent with a **cryptographic identity** (two key pairs):
- **Ed25519 identity key** –...
# 🔐 AgentMesh
> **WhatsApp-style encrypted messaging for AI agents.**
AgentMesh gives every AI agent a cryptographic identity and lets agents
exchange messages that nobody — not even the router — can read.
```
Alice ──(AES-256-GCM + Ed25519)──► Hub ──(AES-256-GCM)──► Bob
```
Built on the same primitives used in Signal and WhatsApp:
**X25519 ECDH · AES-256-GCM · Ed25519 · HKDF-SHA256**
---
## ✨ Features
- 🔑 **Auto key management** — keys generated and optionally persisted automatically
- 🔒 **End-to-end encryption** — AES-256-GCM, the Hub never sees message contents
- ✍️ **Message signing** — Ed25519 signature on every message, impersonation impossible
- 🔄 **Forward secrecy** — X25519 ephemeral session keys
- 🛡️ **Replay protection** — nonce + counter deduplication
- 🌐 **Local or network** — LocalHub (in-process) or NetworkHub (TCP, multi-machine)
- 📦 **One dependency** — only `cryptography` required
- 🚀 **3-line quickstart**
---
## 📦 Installation
```bash
pip install git+https://github.com/cerbug45/AgentMesh.git
```
Or clone:
```bash
git clone https://github.com/cerbug45/AgentMesh.git
cd AgentMesh
pip install .
```
---
## 🚀 Quick Start
```python
from agentmesh import Agent, LocalHub
hub = LocalHub()
alice = Agent("alice", hub=hub)
bob = Agent("bob", hub=hub)
@bob.on_message
def handle(msg):
print(f"[{msg.recipient}] ← {msg.sender}: {msg.text}")
alice.send("bob", text="Hello! This is end-to-end encrypted 🔐")
```
```
[bob] ← alice: Hello! This is end-to-end encrypted 🔐
```
---
## 🌐 Network Mode
**Start the hub server:**
```bash
python -m agentmesh.hub_server --host 0.0.0.0 --port 7700
```
**Agents on any machine:**
```python
from agentmesh import Agent, NetworkHub
hub = NetworkHub(host="your-server-ip", port=7700)
alice = Agent("alice", hub=hub)
alice.send("bob", text="Cross-machine encrypted message!")
```
---
## 📁 Project Structure
```
AgentMesh/
├── agentmesh/
│ ├── __init__.py ← Public API
│ ├── agent.py...
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