skills/pydantic-ai/SKILL.md
Build production-ready AI agents with PydanticAI — type-safe tool use, structured outputs, dependency injection, and multi-model support.
npx skillsauth add ranbot-ai/awesome-skills pydantic-aiInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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PydanticAI is a Python agent framework from the Pydantic team that brings the same type-safety and validation guarantees as Pydantic to LLM-based applications. It supports structured outputs (validated with Pydantic models), dependency injection for testability, streamed responses, multi-turn conversations, and tool use — across OpenAI, Anthropic, Google Gemini, Groq, Mistral, and Ollama. Use this skill when building production AI agents, chatbots, or LLM pipelines where correctness and testability matter.
Agent, @agent.tool, RunContext, ModelRetry, or result_typepip install pydantic-ai
# Install extras for specific providers
pip install 'pydantic-ai[openai]' # OpenAI / Azure OpenAI
pip install 'pydantic-ai[anthropic]' # Anthropic Claude
pip install 'pydantic-ai[gemini]' # Google Gemini
pip install 'pydantic-ai[groq]' # Groq
pip install 'pydantic-ai[vertexai]' # Google Vertex AI
from pydantic_ai import Agent
# Simple agent — returns a plain string
agent = Agent(
'anthropic:claude-sonnet-4-6',
system_prompt='You are a helpful assistant. Be concise.',
)
result = agent.run_sync('What is the capital of Japan?')
print(result.data) # "Tokyo"
print(result.usage()) # Usage(requests=1, request_tokens=..., response_tokens=...)
from pydantic import BaseModel
from pydantic_ai import Agent
class MovieReview(BaseModel):
title: str
year: int
rating: float # 0.0 to 10.0
summary: str
recommended: bool
agent = Agent(
'openai:gpt-4o',
result_type=MovieReview,
system_prompt='You are a film critic. Return structured reviews.',
)
result = agent.run_sync('Review Inception (2010)')
review = result.data # Fully typed MovieReview instance
print(f"{review.title} ({review.year}): {review.rating}/10")
print(f"Recommended: {review.recommended}")
Register tools with @agent.tool — the LLM can call them during a run:
from pydantic_ai import Agent, RunContext
from pydantic import BaseModel
import httpx
class WeatherReport(BaseModel):
city: str
temperature_c: float
condition: str
weather_agent = Agent(
'anthropic:claude-sonnet-4-6',
result_type=WeatherReport,
system_prompt='Get current weather for the requested city.',
)
@weather_agent.tool
async def get_temperature(ctx: RunContext, city: str) -> dict:
"""Fetch the current temperature for a city from the weather API."""
async with httpx.AsyncClient() as client:
r = await client.get(f'https://wttr.in/{city}?format=j1')
data = r.json()
return {
'temp_c': float(data['current_condition'][0]['temp_C']),
'description': data['current_condition'][0]['weatherDesc'][0]['value'],
}
import asyncio
result = asyncio.run(weather_agent.run('What is the weather in Tokyo?'))
print(result.data)
Inject services (database, HTTP clients, config) into agents for testability:
from dataclasses import dataclass
from pydantic_ai import Agent, RunContext
from pydantic import BaseModel
@dataclass
class Deps:
db: Database
user_id: str
class SupportResponse(BaseModel):
message: str
escalate: bool
support_agent = Agent(
'openai:gpt-4o-mini',
deps_type=Deps,
result_type=SupportResponse,
system_prompt='You are a support agent. Use the tools to help customers.',
)
@support_agent.tool
async def get_order_history(ctx: RunContext[Deps]) -> list[dict]:
"""Fetch recent orders for the current user."""
return await ctx.deps.db.get_orders(ctx.deps.user_id, limit=5)
@support_agent.tool
async def create_refund(ctx: RunContext[Deps], order_id: str, reason: str) -> dict:
"""Initiate a refund for a specific order."""
return await ctx.deps.db.create_refund(order_id, reason, ctx.deps.user_id)
# Usage
async def handle_support(user_id: str, message: str):
deps = Deps(db=get_db(), user_id=user_id)
result = await support_agent.run(message, deps=deps)
return result.data
Write unit tests without real LLM calls:
from pydantic_ai.models.test import TestModel
def test_support_agent_escalates():
with support_agent.override(model=TestModel()):
# TestModel returns a minimal valid response matching result_type
result = support_agent.run_sync(
'I want to cancel my account'
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