Aser is a minimalist, modular, and versatile AI agent framework. You can assemble an agent with just a few lines of code.
Website | Documentation | Get Support | 中文
Install from pypi:
pip install aser
Or clone the repository:
git clone https://github.com/AmeNetwork/aser.git
cd aser
pip install -r requirements.txt
Please refer to .env.example
file, and create a .env
file with your own settings. You don't need to configure all environment variables, just select the ones you use.
.env file example:
#MODEL
MODEL_BASE_URL=<your model base url>
MODEL_KEY=<your model key>
#Basic
from aser.agent import Agent
agent=Agent(name="aser agent",model="gpt-4.1-mini")
response=agent.chat("what's bitcoin?")
print(response)
# Full configuration
aser = Agent(
name="aser",
model="gpt-4o-mini",
tools=[web3bio, exa],
knowledge=knowledge,
memory=memory,
chat2web3=[connector],
mcp=[price],
trace=trace
)
If you clone the project source code, before running the examples, please run pip install -e .
in the root directory, which allows Python to find and import the aser module from the local source code. If you install it via pip install aser
, you can run the examples directly.
- Aser Agent: Your First AI Agent
- Model Config: Customize the LLM configuration
- Memory: Build an agent with memory storage
- RAG: Build an agent with knowledge retrieval
- Tools: Build an agent with tools
- Toolkits: Use built-in toolkits
- Trace: Build an agent with tracing
- API: Build an agent with API server
- CLI: Interact with the agent using the CLI
- Discord: Build an agent with Discord client
- Telegram: Build an agent with Telegram client
- Farcaster: Build an agent with Farcaster client
- CoT: Chain of Thought
- MCP: Model Context Protocol
- Workflow: Custom Agent Workflows
- Evaluation: Evaluate an AI Agent
- Router Multi-Agent: Multiple agents distribute tasks based on routing
- Sequential Multi-Agent: Multiple agents work sequentially
- Parallel Multi-Agent: Multiple agents work simultaneously
- Reactive Multi-Agent: Multiple agents respond to changes
- Hierarchical Multi-Agent: Multiple agents work at different levels
- Agent UI: Interact with the agent through the UI
- MSCP: Model Smart Contract Protocol
- A2Aser: Integrate Google Agent2Agent (A2A) Protocol
- A2A Client: Agent to Agent Client