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δΈ­ζ–‡δΈ»ι‘΅ | Tutorial | Roadmap | FAQ

AgentScope Logo

AgentScope: Agent-Oriented Programming for Building LLM Applications

arxiv pypi pypi docs workstation license

modelscope%2Fagentscope | Trendshift

✨ Why AgentScope?

Easy for beginners, powerful for experts.

AgentScope Framework

  • Transparent to Developers: Transparent is our FIRST principle. Prompt engineering, API invocation, agent building, workflow orchestration, all are visible and controllable for developers. No deep encapsulation or implicit magic.
  • Realtime Steering: Native support for realtime interruption and customized handling.
  • More Agentic: Support agentic tools management, agentic long-term memory control and agentic RAG, etc.
  • Model Agnostic: Programming once, run with all models.
  • LEGO-style Agent Building: All components are modular and independent.
  • Multi-Agent Oriented: Designed for multi-agent, explicit message passing and workflow orchestration, NO deep encapsulation.
  • Highly Customizable: Tools, prompt, agent, workflow, third-party libs & visualization, customization is encouraged everywhere.

Quick overview of important features in AgentScope 1.0:

Module Feature Tutorial
model Support async invocation Model
Support reasoning model
Support streaming/non-streaming returns
tool Support async/sync tool functions Tool
Support streaming/non-streaming returns
Support user interruption
Support post-processing
Support group-wise tools management
Support agentic tools management by meta tool
MCP Support streamable HTTP/SSE/StdIO transport MCP
Support both stateful and stateless mode MCP Client
Support client- & function-level fine-grained control
agent Support async execution
Support parallel tool calls
Support realtime steering interruption and customized handling
Support automatic state management
Support agent-controlled long-term memory
Support agent hooks
tracing Support OpenTelemetry-based tracing in LLM, tools, agent and formatter Tracing
Support connecting to third-party tracing platforms (e.g. Arize-Phoenix, Langfuse)
memory Support long-term memory Memory
session Provide session/application-level automatic state management Session
evaluation Provide distributed and parallel evaluation Evaluation
formatter Support multi-agent prompt formatting with tools API Prompt Formatter
Support truncation-based formatter strategy
...

πŸ“’ News

  • [2025-09] AgentScope Runtime is open-sourced now! Enabling effective agent deployment with sandboxed tool execution for production-ready AI applications. Check out the GitHub repo.
  • [2025-09] AgentScope Studio is open-sourced now! Check out the GitHub repo.
  • [2025-08] The new tutorial of v1 is online now! Check out the tutorial for more details.
  • [2025-08] πŸŽ‰πŸŽ‰ AgentScope v1 is released now! This version fully embraces the asynchronous execution, providing many new features and improvements. Check out changelog for detailed changes.

πŸ’¬ Contact

Welcome to join our community on

Discord DingTalk

πŸ“‘ Table of Contents

πŸš€ Quickstart

πŸ’» Installation

AgentScope requires Python 3.10 or higher.

πŸ› οΈ From source

# Pull the source code from GitHub
git clone -b main https://github.com/agentscope-ai/agentscope.git

# Install the package in editable mode
cd agentscope
pip install -e .

πŸ“¦ From PyPi

pip install agentscope

πŸ“ Example

πŸ‘‹ Hello AgentScope!

Start with a conversation between user and a ReAct agent πŸ€– named "Friday"!

from agentscope.agent import ReActAgent, UserAgent
from agentscope.model import DashScopeChatModel
from agentscope.formatter import DashScopeChatFormatter
from agentscope.memory import InMemoryMemory
from agentscope.tool import Toolkit, execute_python_code, execute_shell_command
import os, asyncio


async def main():
    toolkit = Toolkit()
    toolkit.register_tool_function(execute_python_code)
    toolkit.register_tool_function(execute_shell_command)

    agent = ReActAgent(
        name="Friday",
        sys_prompt="You're a helpful assistant named Friday.",
        model=DashScopeChatModel(
            model_name="qwen-max",
            api_key=os.environ["DASHSCOPE_API_KEY"],
            stream=True,
        ),
        memory=InMemoryMemory(),
        formatter=DashScopeChatFormatter(),
        toolkit=toolkit,
    )

    user = UserAgent(name="user")

    msg = None
    while True:
        msg = await agent(msg)
        msg = await user(msg)
        if msg.get_text_content() == "exit":
            break

asyncio.run(main())

🎯 Realtime Steering

Natively support realtime interruption in ReActAgent with robust memory preservation, and convert interruption into an observable event for agent to seamlessly resume conversations.

Realtime Steering Realtime Steering

πŸ› οΈ Fine-Grained MCP Control

Developers can obtain the MCP tool as a local callable function, and use it anywhere (e.g. call directly, pass to agent, wrap into a more complex tool, etc.)

from agentscope.mcp import HttpStatelessClient
from agentscope.tool import Toolkit
import os

async def fine_grained_mcp_control():
    # Initialize the MCP client
    client = HttpStatelessClient(
        name="gaode_mcp",
        transport="streamable_http",
        url=f"https://mcp.amap.com/mcp?key={os.environ['GAODE_API_KEY']}",
    )

    # Obtain the MCP tool as a **local callable function**, and use it anywhere
    func = await client.get_callable_function(func_name="maps_geo")

    # Option 1: Call directly
    await func(address="Tiananmen Square", city="Beijing")

    # Option 2: Pass to agent as a tool
    toolkit = Toolkit()
    toolkit.register_tool_function(func)
    # ...

    # Option 3: Wrap into a more complex tool
    # ...

πŸ§‘β€πŸ€β€πŸ§‘ Multi-Agent Conversation

AgentScope provides MsgHub and pipelines to streamline multi-agent conversations, offering efficient message routing and seamless information sharing

from agentscope.pipeline import MsgHub, sequential_pipeline
from agentscope.message import Msg
import asyncio

async def multi_agent_conversation():
    # Create agents
    agent1 = ...
    agent2 = ...
    agent3 = ...
    agent4 = ...

    # Create a message hub to manage multi-agent conversation
    async with MsgHub(
        participants=[agent1, agent2, agent3],
        announcement=Msg("Host", "Introduce yourselves.", "assistant")
    ) as hub:
        # Speak in a sequential manner
        await sequential_pipeline([agent1, agent2, agent3])
        # Dynamic manage the participants
        hub.add(agent4)
        hub.delete(agent3)
        await hub.broadcast(Msg("Host", "Goodbye!", "assistant"))

asyncio.run(multi_agent_conversation())

πŸ’» AgentScope Studio

Use the following command to install and start AgentScope Studio, to trace and visualize your agent application.

npm install -g @agentscope/studio

as_studio

home projects runtime friday

πŸ“– Documentation

βš–οΈ License

AgentScope is released under Apache License 2.0.

πŸ“š Publications

If you find our work helpful for your research or application, please cite our papers.

@article{agentscope_v1,
    author  = {
        Dawei Gao,
        Zitao Li,
        Yuexiang Xie,
        Weirui Kuang,
        Liuyi Yao,
        Bingchen Qian,
        Zhijian Ma,
        Yue Cui,
        Haohao Luo,
        Shen Li,
        Lu Yi,
        Yi Yu,
        Shiqi He,
        Zhiling Luo,
        Wenmeng Zhou,
        Zhicheng Zhang,
        Xuguang He,
        Ziqian Chen,
        Weikai Liao,
        Farruh Isakulovich Kushnazarov,
        Yaliang Li,
        Bolin Ding,
        Jingren Zhou}
    title   = {AgentScope 1.0: A Developer-Centric Framework for Building Agentic Applications},
    journal = {CoRR},
    volume  = {abs/2508.16279},
    year    = {2025},
}

@article{agentscope,
    author  = {
        Dawei Gao,
        Zitao Li,
        Xuchen Pan,
        Weirui Kuang,
        Zhijian Ma,
        Bingchen Qian,
        Fei Wei,
        Wenhao Zhang,
        Yuexiang Xie,
        Daoyuan Chen,
        Liuyi Yao,
        Hongyi Peng,
        Zeyu Zhang,
        Lin Zhu,
        Chen Cheng,
        Hongzhu Shi,
        Yaliang Li,
        Bolin Ding,
        Jingren Zhou}
    title   = {AgentScope: A Flexible yet Robust Multi-Agent Platform},
    journal = {CoRR},
    volume  = {abs/2402.14034},
    year    = {2024},
}

✨ Contributors

All thanks to our contributors: