Python API#
Full programmatic control over Pantheon agents and teams.
Overview#
The Python API provides complete control over:
Agent creation and configuration
Team orchestration
Toolset integration
Memory management
Model selection
Quick Example#
import asyncio
from pantheon.agent import Agent
async def main():
agent = Agent(
name="assistant",
instructions="You are a helpful assistant."
)
# Single query
response = await agent.run("What is 2 + 2?")
print(response.content)
# Interactive chat
await agent.chat()
asyncio.run(main())
Core Classes#
Agent
The fundamental building block. Represents an AI-powered entity.
from pantheon.agent import Agent
agent = Agent(
name="assistant",
instructions="...",
tools=[...]
)
See Agent API for details.
Team
Multiple agents working together.
from pantheon.team import PantheonTeam
team = PantheonTeam([agent1, agent2, agent3])
See Team API for team patterns.
ToolSet
Extend agent capabilities with tools.
from pantheon.toolsets import FileManagerToolSet
agent = Agent(
name="dev",
instructions="You are a developer."
)
# Add toolsets at runtime
await agent.toolset(FileManagerToolSet("files"))
See Toolsets API for available toolsets.
Async Pattern#
All Pantheon APIs are async:
import asyncio
async def main():
# Your Pantheon code here
pass
asyncio.run(main())
For Jupyter notebooks:
# In Jupyter, you can use await directly
response = await agent.run("Hello!")
Integration#
With FastAPI
from fastapi import FastAPI
from pantheon.agent import Agent
app = FastAPI()
agent = Agent(name="api_assistant", ...)
@app.post("/chat")
async def chat(message: str):
response = await agent.run(message)
return {"response": response.content}
With LangChain
Pantheon can work alongside LangChain:
# Use Pantheon agents for specific tasks
# Use LangChain for chains/pipelines
Next Steps#
Agent API - Agent API reference
Team API - Team patterns
Toolsets API - Available toolsets
Advanced API Usage - Advanced patterns