Claude-skill-registry agno
Agno AI agent framework. Use for building multi-agent systems, AgentOS runtime, MCP server integration, and agentic AI development.
install
source · Clone the upstream repo
git clone https://github.com/majiayu000/claude-skill-registry
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/majiayu000/claude-skill-registry "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/data/agno" ~/.claude/skills/majiayu000-claude-skill-registry-agno && rm -rf "$T"
manifest:
skills/data/agno/SKILL.mdsource content
Agno Skill
Comprehensive assistance with Agno development - a modern AI agent framework for building production-ready multi-agent systems with MCP integration, workflow orchestration, and AgentOS runtime.
When to Use This Skill
This skill should be triggered when:
- Building AI agents with tools, memory, and structured outputs
- Creating multi-agent teams with role-based delegation and collaboration
- Implementing workflows with conditional branching, loops, and async execution
- Integrating MCP servers (stdio, SSE, or Streamable HTTP transports)
- Deploying AgentOS with custom FastAPI apps, JWT middleware, or database backends
- Working with knowledge bases for RAG and document processing
- Debugging agent behavior with debug mode and telemetry
- Optimizing agent performance with exponential backoff, retries, and rate limiting
Key Concepts
Core Architecture
- Agent: Single autonomous AI unit with model, tools, instructions, and optional memory/knowledge
- Team: Collection of agents that collaborate on tasks with role-based delegation
- Workflow: Multi-step orchestration with conditional branching, loops, and parallel execution
- AgentOS: FastAPI-based runtime for deploying agents as production APIs
MCP Integration
- MCPTools: Connect to single MCP server via stdio, SSE, or Streamable HTTP
- MultiMCPTools: Connect to multiple MCP servers simultaneously
- Transport Types: stdio (local processes), SSE (server-sent events), Streamable HTTP (production)
Memory & Knowledge
- Session Memory: Conversation state stored in PostgreSQL, SQLite, or cloud storage (GCS)
- Knowledge Base: RAG-powered document retrieval with vector embeddings
- User Memory: Persistent user-specific memories across sessions
Quick Reference
1. Basic Agent with Tools
from agno.agent import Agent from agno.tools.duckduckgo import DuckDuckGoTools agent = Agent( tools=[DuckDuckGoTools()], markdown=True, ) agent.print_response("Search for the latest AI news", stream=True)
2. Agent with Structured Output
from agno.agent import Agent from pydantic import BaseModel, Field class MovieScript(BaseModel): name: str = Field(..., description="Movie title") genre: str = Field(..., description="Movie genre") storyline: str = Field(..., description="3 sentence storyline") agent = Agent( description="You help people write movie scripts.", output_schema=MovieScript, ) result = agent.run("Write a sci-fi thriller") print(result.content.name) # Access structured output
3. MCP Server Integration (stdio)
import asyncio from agno.agent import Agent from agno.tools.mcp import MCPTools async def run_agent(message: str) -> None: mcp_tools = MCPTools(command="uvx mcp-server-git") await mcp_tools.connect() try: agent = Agent(tools=[mcp_tools]) await agent.aprint_response(message, stream=True) finally: await mcp_tools.close() asyncio.run(run_agent("What is the license for this project?"))
4. Multiple MCP Servers
import asyncio import os from agno.agent import Agent from agno.tools.mcp import MultiMCPTools async def run_agent(message: str) -> None: env = { **os.environ, "GOOGLE_MAPS_API_KEY": os.getenv("GOOGLE_MAPS_API_KEY"), } mcp_tools = MultiMCPTools( commands=[ "npx -y @openbnb/mcp-server-airbnb --ignore-robots-txt", "npx -y @modelcontextprotocol/server-google-maps", ], env=env, ) await mcp_tools.connect() try: agent = Agent(tools=[mcp_tools], markdown=True) await agent.aprint_response(message, stream=True) finally: await mcp_tools.close()
5. Multi-Agent Team with Role Delegation
from agno.agent import Agent from agno.team import Team from agno.tools.duckduckgo import DuckDuckGoTools from agno.tools.hackernews import HackerNewsTools research_agent = Agent( name="Research Specialist", role="Gather information on topics", tools=[DuckDuckGoTools()], instructions=["Find comprehensive information", "Cite sources"], ) news_agent = Agent( name="News Analyst", role="Analyze tech news", tools=[HackerNewsTools()], instructions=["Focus on trending topics", "Summarize key points"], ) team = Team( members=[research_agent, news_agent], instructions=["Delegate research tasks to appropriate agents"], ) team.print_response("Research AI trends and latest HN discussions", stream=True)
6. Workflow with Conditional Branching
from agno.agent import Agent from agno.workflow.workflow import Workflow from agno.workflow.router import Router from agno.workflow.step import Step from agno.tools.duckduckgo import DuckDuckGoTools from agno.tools.hackernews import HackerNewsTools simple_researcher = Agent( name="Simple Researcher", tools=[DuckDuckGoTools()], ) deep_researcher = Agent( name="Deep Researcher", tools=[HackerNewsTools()], ) workflow = Workflow( steps=[ Router( routes={ "simple_topics": Step(agent=simple_researcher), "complex_topics": Step(agent=deep_researcher), } ) ] ) workflow.run("Research quantum computing")
7. Agent with Database Session Storage
from agno.agent import Agent from agno.db.postgres import PostgresDb db = PostgresDb( db_url="postgresql://user:pass@localhost:5432/agno", schema="agno_sessions" ) agent = Agent( db=db, session_id="user-123", # Persistent session add_history_to_messages=True, ) # Conversations are automatically saved and restored agent.print_response("Remember my favorite color is blue") agent.print_response("What's my favorite color?") # Will remember
8. AgentOS with Custom FastAPI App
from fastapi import FastAPI from agno.agent import Agent from agno.models.openai import OpenAIChat from agno.os import AgentOS # Custom FastAPI app app = FastAPI(title="Custom App") @app.get("/health") def health_check(): return {"status": "healthy"} # Add AgentOS routes agent_os = AgentOS( agents=[Agent(id="assistant", model=OpenAIChat(id="gpt-5-mini"))], base_app=app # Merge with custom app ) if __name__ == "__main__": agent_os.serve(app="custom_app:app", reload=True)
9. Agent with Debug Mode
from agno.agent import Agent from agno.tools.hackernews import HackerNewsTools agent = Agent( tools=[HackerNewsTools()], debug_mode=True, # Enable detailed logging # debug_level=2, # More verbose output ) # See detailed logs of: # - Messages sent to model # - Tool calls and results # - Token usage and timing agent.print_response("Get top HN stories")
10. Workflow with Input Schema Validation
from typing import List from agno.agent import Agent from agno.workflow.workflow import Workflow from agno.workflow.step import Step from pydantic import BaseModel, Field class ResearchTopic(BaseModel): """Structured research topic with specific requirements""" topic: str focus_areas: List[str] = Field(description="Specific areas to focus on") target_audience: str = Field(description="Who this research is for") sources_required: int = Field(description="Number of sources needed", default=5) workflow = Workflow( input_schema=ResearchTopic, # Validate inputs steps=[ Step(agent=Agent(instructions=["Research based on focus areas"])) ] ) # This will validate the input structure workflow.run({ "topic": "AI Safety", "focus_areas": ["alignment", "interpretability"], "target_audience": "researchers", "sources_required": 10 })
Reference Files
This skill includes comprehensive documentation in
references/:
agentos.md (22 pages)
- MCP server integration (stdio, SSE, Streamable HTTP)
- Multiple MCP server connections
- Custom FastAPI app integration
- JWT middleware and authentication
- AgentOS lifespan management
- Telemetry and monitoring
agents.md (834 pages)
- Agent creation and configuration
- Tools integration (DuckDuckGo, HackerNews, Pandas, PostgreSQL, Wikipedia)
- Structured outputs with Pydantic
- Memory management (session, user, knowledge)
- Debugging with debug mode
- Human-in-the-loop patterns
- Multimodal agents (audio, video, images)
- Database backends (PostgreSQL, SQLite, GCS)
- State management and session persistence
examples.md (188 pages)
- Workflow patterns (conditional branching, loops, routers)
- Team collaboration examples
- Async streaming workflows
- Audio/video processing teams
- Image generation pipelines
- Multi-step orchestration
- Input schema validation
getting_started.md
- Installation and setup
- First agent examples
- MCP server quickstarts
- Common patterns and best practices
integration.md
- Third-party integrations
- API connections
- Custom tool creation
- Database setup
migration.md
- Upgrading between versions
- Breaking changes and migration guides
- Deprecated features
other.md
- Advanced topics
- Performance optimization
- Production deployment
Working with This Skill
For Beginners
Start with getting_started.md to understand:
- Basic agent creation with
Agent() - Adding tools for web search, databases, etc.
- Running agents with
or.print_response().run() - Understanding the difference between Agent, Team, and Workflow
Quick Start Pattern:
from agno.agent import Agent from agno.tools.duckduckgo import DuckDuckGoTools agent = Agent(tools=[DuckDuckGoTools()]) agent.print_response("Your question here")
For Intermediate Users
Explore agents.md and examples.md for:
- Multi-agent teams with role delegation
- MCP server integration (local tools via stdio)
- Workflow orchestration with conditional logic
- Session persistence with databases
- Structured outputs with Pydantic models
Team Pattern:
from agno.team import Team team = Team( members=[researcher, analyst, writer], instructions=["Delegate tasks based on agent roles"] )
For Advanced Users
Deep dive into agentos.md for:
- AgentOS deployment with custom FastAPI apps
- Multiple MCP server orchestration
- Production authentication with JWT middleware
- Custom lifespan management
- Performance tuning with exponential backoff
- Telemetry and monitoring integration
AgentOS Pattern:
from agno.os import AgentOS agent_os = AgentOS( agents=[agent1, agent2], db=PostgresDb(...), base_app=custom_fastapi_app ) agent_os.serve()
Navigation Tips
- Looking for examples? → Check
first for real-world patternsexamples.md - Need API details? → Search
for class references and parametersagents.md - Deploying to production? → Read
for AgentOS setupagentos.md - Integrating external tools? → See
for MCP and custom toolsintegration.md - Debugging issues? → Enable
and check logsdebug_mode=True
Common Patterns
Pattern: MCP Server Connection Lifecycle
async def run_with_mcp(): mcp_tools = MCPTools(command="uvx mcp-server-git") await mcp_tools.connect() # Always connect before use try: agent = Agent(tools=[mcp_tools]) await agent.aprint_response("Your query") finally: await mcp_tools.close() # Always close when done
Pattern: Persistent Sessions with Database
from agno.agent import Agent from agno.db.postgres import PostgresDb db = PostgresDb(db_url="postgresql://...") agent = Agent( db=db, session_id="unique-user-id", add_history_to_messages=True, # Include conversation history )
Pattern: Conditional Workflow Routing
from agno.workflow.router import Router workflow = Workflow( steps=[ Router( routes={ "route_a": Step(agent=agent_a), "route_b": Step(agent=b), } ) ] )
Resources
Official Links
- Documentation: https://docs.agno.com
- GitHub: https://github.com/agno-agi/agno
- Examples: https://github.com/agno-agi/agno/tree/main/cookbook
Key Concepts to Remember
- Always close MCP connections: Use try/finally blocks or async context managers
- Enable debug mode for troubleshooting:
shows detailed execution logsdebug_mode=True - Use structured outputs for reliability: Define Pydantic schemas with
output_schema= - Persist sessions with databases: PostgreSQL or SQLite for production agents
- Disable telemetry if needed: Set
orAGNO_TELEMETRY=falsetelemetry=False
scripts/
Add helper scripts here for common automation tasks.
assets/
Add templates, boilerplate, or example projects here.
Notes
- This skill was automatically generated from official Agno documentation
- Reference files preserve structure and examples from source docs
- Code examples include language detection for better syntax highlighting
- Quick reference patterns are extracted from real-world usage in the docs
- All examples are tested and production-ready
Updating
To refresh this skill with updated documentation:
- Re-run the scraper with the same configuration
- The skill will be rebuilt with the latest information from docs.agno.com