Skip to main content

An SDK that enables agents to connect with each other, allowing them to perform identity authentication, end-to-end encrypted communication, automatic protocol negotiation based on LLMs, and efficient data exchange.

Project description

AgentConnect

What is AgentConnect

AgentConnect is an open-source SDK implementation of the Agent Network Protocol (ANP).

The goal of Agent Network Protocol (ANP) is to become the HTTP of the Intelligent Agent Internet Era, building an open, secure, and efficient collaborative network for billions of intelligent agents.

Agentic Web

🚀 Quick Start - Build an ANP Agent in 30 Seconds

OpenANP is the simplest way to build ANP agents. Here's a complete server in just a few lines:

Server (3 Steps)

from fastapi import FastAPI
from anp.openanp import AgentConfig, anp_agent, interface

@anp_agent(AgentConfig(
    name="My Agent",
    did="did:wba:example.com:agent",
    prefix="/agent",
))
class MyAgent:
    @interface
    async def hello(self, name: str) -> str:
        return f"Hello, {name}!"

app = FastAPI()
app.include_router(MyAgent.router())

Run: uvicorn app:app --port 8000

Client (3 Lines)

from anp.openanp import RemoteAgent

agent = await RemoteAgent.discover("http://localhost:8000/agent/ad.json", auth)
result = await agent.hello(name="World")  # "Hello, World!"

Generated Endpoints

Endpoint Description
GET /agent/ad.json Agent Description document
GET /agent/interface.json OpenRPC interface document
POST /agent/rpc JSON-RPC 2.0 endpoint

📖 Full examples: OpenANP Examples


Two Ways to Use ANP SDK

🔧 Option 1: OpenANP (Recommended - Building Agents)

The most elegant and minimal SDK for building ANP agents:

from anp.openanp import anp_agent, interface, RemoteAgent

# Server: Build your agent
@anp_agent(AgentConfig(name="Hotel", did="did:wba:...", prefix="/hotel"))
class HotelAgent:
    @interface
    async def search(self, query: str) -> dict:
        return {"results": [...]}

# Client: Call remote agents
agent = await RemoteAgent.discover("https://hotel.example.com/ad.json", auth)
result = await agent.search(query="Tokyo")

Features:

  • Decorator-based: @anp_agent + @interface = complete agent
  • Auto-generated: ad.json, interface.json, JSON-RPC endpoint
  • Context Injection: Automatic session and DID management
  • LLM Integration: Built-in OpenAI Tools format export

📖 Full Documentation: OpenANP README


🔍 Option 2: ANP Crawler (Document Fetching)

Crawler-style SDK for fetching and parsing ANP documents (like a web crawler for ANP):

from anp.anp_crawler import ANPCrawler

# Initialize crawler with DID authentication
crawler = ANPCrawler(
    did_document_path="path/to/did.json",
    private_key_path="path/to/key.pem"
)

# Crawl agent description and get OpenAI Tools format
content, tools = await crawler.fetch_text("https://example.com/ad.json")

# Execute discovered tools
result = await crawler.execute_tool_call("search_poi", {"query": "Beijing"})

# Or call JSON-RPC directly
result = await crawler.execute_json_rpc(
    endpoint="https://example.com/rpc",
    method="search",
    params={"query": "hotel"}
)

Features:

  • Crawler Style: Fetch and parse ANP documents like a web crawler
  • OpenAI Tools Format: Converts interfaces for LLM integration
  • Direct JSON-RPC: Call methods without interface discovery
  • No LLM Required: Deterministic data collection

📖 Full Documentation: ANP Crawler README


RemoteAgent vs ANPCrawler

Feature RemoteAgent ANPCrawler
Style Proxy object (like local methods) Crawler (fetch documents)
Usage agent.search(query="Tokyo") crawler.execute_tool_call("search", {...})
Type Safety Full type hints, exceptions Dict-based returns
Best For Agent-to-agent calls in code LLM tool integration, data collection
# RemoteAgent: Methods feel like local calls
agent = await RemoteAgent.discover(url, auth)
result = await agent.search(query="Tokyo")  # Like calling a local method

# ANPCrawler: Crawler-style document fetching
crawler = ANPCrawler(did_path, key_path)
content, tools = await crawler.fetch_text(url)  # Fetch and parse documents
result = await crawler.execute_tool_call("search", {"query": "Tokyo"})

Installation

Option 1: Install via pip

pip install anp

Option 2: Source Installation (Recommended for Developers)

# Clone the repository
git clone https://github.com/agent-network-protocol/AgentConnect.git
cd AgentConnect

# Setup environment with UV
uv sync

# Install with optional dependencies
uv sync --extra api      # FastAPI/OpenAI integration
uv sync --extra dev      # Development tools

# Run examples
uv run python examples/python/did_wba_examples/create_did_document.py

All Core Modules

Module Description Documentation
OpenANP Decorator-driven agent development (recommended) README
ANP Crawler Lightweight discovery & interaction SDK README
FastANP FastAPI plugin framework README
AP2 Agent Payment Protocol v2 README
Authentication DID-WBA identity authentication Examples

Examples by Module

OpenANP Examples (Recommended Starting Point)

Location: examples/python/openanp_examples/

File Description Complexity
minimal_server.py Minimal server (~30 lines)
minimal_client.py Minimal client (~25 lines)
advanced_server.py Full features (Context, Session, Information) ⭐⭐⭐
advanced_client.py Full client (discovery, LLM integration) ⭐⭐⭐
# Terminal 1: Start server
uvicorn examples.python.openanp_examples.minimal_server:app --port 8000

# Terminal 2: Run client
uv run python examples/python/openanp_examples/minimal_client.py

ANP Crawler Examples

Location: examples/python/anp_crawler_examples/

# Quick start
uv run python examples/python/anp_crawler_examples/simple_amap_example.py

# Complete demonstration
uv run python examples/python/anp_crawler_examples/amap_crawler_example.py

DID-WBA Authentication Examples

Location: examples/python/did_wba_examples/

# Create DID document
uv run python examples/python/did_wba_examples/create_did_document.py

# Authentication demonstration
uv run python examples/python/did_wba_examples/authenticate_and_verify.py

FastANP Examples

Location: examples/python/fastanp_examples/

# Simple agent
uv run python examples/python/fastanp_examples/simple_agent.py

# Hotel booking agent (full example)
uv run python examples/python/fastanp_examples/hotel_booking_agent.py

AP2 Payment Protocol Examples

Location: examples/python/ap2_examples/

# Complete AP2 flow (merchant + shopper)
uv run python examples/python/ap2_examples/ap2_complete_flow.py

Tools

ANP Network Explorer

Explore the agent network using natural language: ANP Network Explorer

DID Document Generator

uv run python tools/did_generater/generate_did_doc.py <did> [--agent-description-url URL]

Contact Us

License

This project is open-sourced under the MIT License. See LICENSE file for details.


Copyright (c) 2024 GaoWei Chang

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distributions

No source distribution files available for this release.See tutorial on generating distribution archives.

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

anp-0.5.8-py3-none-any.whl (302.6 kB view details)

Uploaded Python 3

File details

Details for the file anp-0.5.8-py3-none-any.whl.

File metadata

  • Download URL: anp-0.5.8-py3-none-any.whl
  • Upload date:
  • Size: 302.6 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: uv/0.5.11

File hashes

Hashes for anp-0.5.8-py3-none-any.whl
Algorithm Hash digest
SHA256 d8d8881aa8086d37e90a8521af3fe24eb73eb200705558a8f5433c0dd85ff083
MD5 9368b70a06501b849e3315d38fc10349
BLAKE2b-256 7a8c53972ecb72f75ad6bcef8f8eb93d9039017afb066ebb53854f87cd9e07c2

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page