| name | agentscope-skill |
| description | This guide covers the design philosophy, core concepts, and practical usage of the AgentScope framework. Use this skill whenever the user wants to do anything with the AgentScope (Python) library. This includes building agent applications using AgentScope, answering questions about AgentScope, looking for guidance on how to use AgentScope, searching for examples or specific information (functions/classes/modules). |
| version | 0.1.0 |
Understanding AgentScope
What is AgentScope?
AgentScope is a production-ready, enterprise-grade open-source framework for building multi-agent applications with large language models. Its functionalities cover:
- Development: ReAct agent, context compression, short/long-term memory, tool use, human-in-the-loop, multi-agent orchestration, agent hooks, structured output, planning, integration with MCP, agent skill, LLMs API, voice interaction (TTS/Realtime), RAG
- Evaluation: Evaluate multistep agentic applications with statistical analysis
- Training: Agentic reinforcement learning
- Deployment: Session/state management, sandbox, local/serverless/Kubernetes deployment
Installation
pip install agentscope
uv pip install agentscope
Core Concepts
- Message: The core abstraction for information exchange between agents. Supports heterogeneous content blocks (text, images, tool calls, tool results).
from agentscope.message import Msg, TextBlock, ImageBlock, URLSource
msg = Msg(
name="user",
content=[TextBlock("Hello world"), ImageBlock(type="image", source=URLSource(type="url", url="..."))],
role="user"
)
- Agent: LLM-empowered agent that can reason, use tools, and generate responses through iterative thinking and action loops.
- Toolkit: Register and manage tools (Python functions, MCP, agent skills) that agents can call.
- Memory: Store
Msg objects as conversation history/context with a marking mechanism for advanced memory management (compression, retrieval).
- ChatModel: Unified interface across different providers (OpenAI, Anthropic, DashScope, Ollama, etc.) with support for tool use and streaming.
- Formatter: Convert
Msg objects to LLM API-specific formats. Must be used with the corresponding ChatModel. Supports multi-agent conversations with different agent identifiers.
Basic Usage Examples
Example 1: Simple Chatbot
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.getenv("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())
Example 2: Multi-Agent Conversation
AgentScope adopts explicit message passing for multi-agent conversations (PyTorch-like dynamic graph), allowing flexible information flow control.
alice, bob, carol, david = ReActAgent(...), ReActAgent(...), ReActAgent(...), ReActAgent(...)
msg_alice = await alice()
msg_bob = await bob(msg_alice)
msg_carol = await carol(msg_alice)
from agentscope.pipeline import MsgHub
async with MsgHub(
participants=[alice, bob, carol],
announcement=Msg("Host", "Let's discuss", "user")
) as hub:
await alice()
await bob()
await hub.broadcast(Msg("Host", "New topic", "user"))
hub.add(david)
hub.delete(bob)
Example 3: Master-Worker Pattern
Wrap worker agents as tools for the master agent.
from agentscope.tool import ToolResponse, Toolkit
async def create_worker(task: str) -> ToolResponse:
"""Create a worker agent for the given task.
Args:
task (`str`): The given task, which should be specific and concise.
"""
task_msg = Msg(name="master", content=task, role="user")
worker = ReActAgent(...)
res = await worker(task_msg)
return ToolResponse(content=res.content)
toolkit = Toolkit()
toolkit.register_tool_function(create_worker)
Working with AgentScope
This section provides guidance on how to effectively answer questions about AgentScope or coding with the framework.
Step 1: Clone the Repository First
CRITICAL: Before doing anything else, clone or update the AgentScope repository. The repository contains essential examples and references.
cd /path/to/this/skill/directory
git clone -b main https://github.com/agentscope-ai/agentscope.git
cd /path/to/this/skill/directory/agentscope
git pull
Why this matters: The repository contains working examples, complete API documentation in source code, and implementation patterns that are more reliable than guessing.
Step 2: Understand the Repository Structure
The cloned repository is organized as follows. Note this may be outdated as the project evolves, you should always check the actual structure after cloning.
agentscope/
├── src/agentscope/ # Main library source code
│ ├── agent/ # Agent implementations (ReActAgent, etc.)
│ ├── model/ # LLM API wrappers (OpenAI, Anthropic, DashScope, etc.)
│ ├── formatter/ # Message formatters for different models
│ ├── memory/ # Memory implementations
│ ├── tool/ # Tool management and built-in tools
│ ├── message/ # Msg class and content blocks
│ ├── pipeline/ # Multi-agent orchestration (MsgHub, etc.)
│ ├── session/ # Session/state management
│ ├── mcp/ # MCP integration
│ ├── rag/ # RAG functionality
│ ├── realtime/ # Realtime voice interaction
│ ├── tts/ # Text-to-speech
│ ├── evaluate/ # Evaluation tools
│ └── ... # Other modules
│
├── examples/ # Working examples organized by category
│ ├── agent/ # Different agent types
│ │ └── ...
│ ├── workflows/ # Multi-agent workflows
│ │ └── ...
│ ├── functionality/ # Specific features
│ │ └── ...
│ ├── deployment/ # Deployment patterns
│ ├── integration/ # Third-party integrations
│ ├── evaluation/ # Evaluation examples
│ └── game/ # Game examples (e.g., werewolves)
│
├── docs/ # Documentation
│ ├── tutorial/ # Tutorial markdown files
│ ├── changelog.md # Version history
│ └── roadmap.md # Development roadmap
│
└── tests/ # Test files
Step 3: Browse Examples by Category
When looking for similar implementations, browse the examples directory by category rather than searching by keywords alone:
- Start with the category that matches your use case:
- Building a specific agent type? →
examples/agent/
- Multi-agent system? →
examples/workflows/
- Need a specific feature (MCP, RAG, session)? →
examples/functionality/
- Deployment patterns? →
examples/deployment/
- List the subdirectories to see what's available:
- Use file listing tools to explore directory structure
- Read directory names to understand what each example covers
- Read example files to understand implementation patterns:
- Most examples contain a main script and supporting files
- Look for README files in subdirectories for explanations
- Combine with text search when needed:
- After identifying relevant directories, search within them for specific patterns
- Search for class names, method calls, or specific functionality
Example workflow:
User asks: "Build a FastAPI app with AgentScope"
→ Browse: List files in examples/deployment/
→ Check: Are there any web service examples?
→ Search: Look for "fastapi", "flask", "api", "server" in examples/
→ Read: Found examples and adapt to user's needs
Step 4: Verify Functionality Exists
Before implementing custom solutions, verify if AgentScope already provides the functionality:
- List required functionalities (e.g., session management, MCP integration, RAG)
- Check if provided:
- Browse
examples for examples
- Search tutorial documentation in
docs/tutorial/
- Use the provided scripts (see Part 3) to explore API structure
- Read source code in
src/agentscope/ for implementation details
- If not provided: Check how to customize by reading base classes and inheritance patterns in source code
Step 5: Make a Plan
Always create a plan before coding:
- Identify what AgentScope components you'll use
- Determine what needs custom implementation
- Outline the architecture and data flow
- Consider edge cases and error handling
Step 6: Code with API Reference
When writing code:
- Check docstrings and arguments before using any class/method
- Read source code files to see signatures and documentation, or
- Use the provided scripts to view module/class structures
- NEVER make up classes, methods, or arguments
- Check parent classes - A class's functionality includes inherited methods
- Manage lifecycle - Clean up resources when needed (close connections, release memory)
Common Pitfalls to Avoid
- ❌ Guessing API signatures without checking documentation
- ❌ Implementing features that already exist in AgentScope
- ❌ Mixing incompatible Model and Formatter (e.g., OpenAI model with DashScope formatter)
- ❌ Forgetting to await async agent calls
- ❌ Not checking parent class methods when searching for functionality
- ❌ Searching by keywords only without browsing the organized examples directory structure
Resources
This section lists all available resources for working with AgentScope.
Official Documentation
- Tutorial: Comprehensive step-by-step guide covering most functionalities in detail. This is the primary resource for learning AgentScope.
GitHub Resources
Repository Structure
When the repository is cloned locally, the following structure is available for reference:
src/agentscope/: Main library source code
- Read this for API implementation details
- Check docstrings for parameter descriptions
- Understand inheritance hierarchies
examples/: Working examples demonstrating features
- Start here when building similar applications
- Examples cover: basic agents, multi-agent systems, tool usage, deployment patterns
docs/tutorial/: Tutorial documentation source files
- Markdown files explaining concepts and usage
- More detailed than README files
Scripts
Located in scripts/ directory of this skill.
view_pypi_latest_version.sh: View the latest version of AgentScope on PyPI.
cd /path/to/this/skill/directory/scripts/
bash view_pypi_latest_version.sh
view_module_signature.py: Explore the structure of AgentScope modules, classes, and methods.
Search strategy: Use deep-first search - start broad, then narrow down:
agentscope → see all submodules
agentscope.agent → see agent-related classes
agentscope.agent.ReActAgent → see specific class methods
cd /path/to/this/skill/directory/scripts/
python view_module_signature.py --module agentscope
python view_module_signature.py --module agentscope.agent
python view_module_signature.py --module agentscope.agent.ReActAgent
Reference
Located in references/ directory of this skill.
multi_agent_orchestration.md: Multi-agent orchestration concepts and implementation
deployment_guide.md: Deployment patterns and best practices