| name | pydantic-ai |
| description | Build production-ready AI agents with PydanticAI — type-safe tool use, structured outputs, dependency injection, and multi-model support. |
| category | ai-agents |
| risk | safe |
| source | community |
| date_added | 2026-03-18 |
| author | suhaibjanjua |
| tags | ["pydantic-ai","ai-agents","llm","openai","anthropic","gemini","tool-use","structured-output","python"] |
| tools | ["claude","cursor","gemini"] |
PydanticAI — Typed AI Agents in Python
Overview
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.
When to Use This Skill
- Use when building Python AI agents that call tools and return structured data
- Use when you need validated, typed LLM outputs (not raw strings)
- Use when you want to write unit tests for agent logic without hitting a real LLM
- Use when switching between LLM providers without rewriting agent code
- Use when the user asks about
Agent, @agent.tool, RunContext, ModelRetry, or result_type
How It Works
Step 1: Installation
pip install pydantic-ai
pip install 'pydantic-ai[openai]'
pip install 'pydantic-ai[anthropic]'
pip install 'pydantic-ai[gemini]'
pip install 'pydantic-ai[groq]'
pip install 'pydantic-ai[vertexai]'
Step 2: A Minimal Agent
from pydantic_ai import Agent
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)
print(result.usage())
Step 3: Structured Output with Pydantic Models
from pydantic import BaseModel
from pydantic_ai import Agent
class MovieReview(BaseModel):
title: str
year: int
rating: float
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
print(f"{review.title} ({review.year}): {review.rating}/10")
print(f"Recommended: {review.recommended}")
Step 4: Tool Use
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)
Step 5: Dependency Injection
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)
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
Step 6: Testing with TestModel
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()):
result = support_agent.run_sync(
'I want to cancel my account',
deps=Deps(db=FakeDb(), user_id='user-123'),
)
assert isinstance(result.data, SupportResponse)
assert isinstance(result.data.escalate, bool)
FunctionModel for deterministic test responses:
from pydantic_ai.models.function import FunctionModel, ModelContext
def my_model(messages, info):
return ModelResponse(parts=[TextPart('Always this response')])
with agent.override(model=FunctionModel(my_model)):
result = agent.run_sync('anything')
Step 7: Streaming Responses
import asyncio
from pydantic_ai import Agent
agent = Agent('anthropic:claude-sonnet-4-6')
async def stream_response():
async with agent.run_stream('Write a haiku about Python') as result:
async for chunk in result.stream_text():
print(chunk, end='', flush=True)
print()
print(f"Total tokens: {result.usage()}")
asyncio.run(stream_response())
Step 8: Multi-Turn Conversations
from pydantic_ai import Agent
from pydantic_ai.messages import ModelMessagesTypeAdapter
agent = Agent('openai:gpt-4o', system_prompt='You are a helpful assistant.')
result1 = agent.run_sync('My name is Alice.')
history = result1.all_messages()
result2 = agent.run_sync('What is my name?', message_history=history)
print(result2.data)
Examples
Example 1: Code Review Agent
from pydantic import BaseModel, Field
from pydantic_ai import Agent
from typing import Literal
class CodeReview(BaseModel):
quality: Literal['excellent', 'good', 'needs_work', 'poor']
issues: list[str] = Field(default_factory=list)
suggestions: list[str] = Field(default_factory=list)
approved: bool
code_review_agent = Agent(
'anthropic:claude-sonnet-4-6',
result_type=CodeReview,
system_prompt="""
You are a senior engineer performing code review.
Evaluate code quality, identify issues, and provide actionable suggestions.
Set approved=True only for good or excellent quality code with no security issues.
""",
)
def review_code(diff: str) -> CodeReview:
result = code_review_agent.run_sync(f"Review this code:\n\n{diff}")
return result.data
Example 2: Agent with Retry Logic
from pydantic_ai import Agent, ModelRetry
from pydantic import BaseModel, field_validator
class StrictJson(BaseModel):
value: int
@field_validator('value')
def must_be_positive(cls, v):
if v <= 0:
raise ValueError('value must be positive')
return v
agent = Agent('openai:gpt-4o-mini', result_type=StrictJson)
@agent.result_validator
async def validate_result(ctx, result: StrictJson) -> StrictJson:
if result.value > 1000:
raise ModelRetry('Value must be under 1000. Try again with a smaller number.')
return result
Example 3: Multi-Agent Pipeline
from pydantic_ai import Agent
from pydantic import BaseModel
class ResearchSummary(BaseModel):
key_points: list[str]
conclusion: str
class BlogPost(BaseModel):
title: str
body: str
meta_description: str
researcher = Agent('openai:gpt-4o', result_type=ResearchSummary)
writer = Agent('anthropic:claude-sonnet-4-6', result_type=BlogPost)
async def research_and_write(topic: str) -> BlogPost:
research = await researcher.run(f'Research the topic: {topic}')
post = await writer.run(
f'Write a blog post about: {topic}\n\nResearch:\n' +
'\n'.join(f'- {p}' for p in research.data.key_points) +
f'\n\nConclusion: {research.data.conclusion}'
)
return post.data
Best Practices
- ✅ Always define
result_type with a Pydantic model — avoid returning raw strings in production
- ✅ Use
deps_type with a dataclass for dependency injection — makes agents testable
- ✅ Use
TestModel in unit tests — never hit a real LLM in CI
- ✅ Add
@agent.result_validator for business-logic checks beyond Pydantic validation
- ✅ Use
run_stream for long outputs in user-facing applications to show progressive results
- ❌ Don't put secrets (API keys) in
Agent() arguments — use environment variables
- ❌ Don't share a single
Agent instance across async tasks if deps differ — create per-request instances or use agent.run() with per-call deps
- ❌ Don't catch
ValidationError broadly — let PydanticAI retry with ModelRetry for recoverable LLM output errors
Security & Safety Notes
- Set API keys via environment variables (
OPENAI_API_KEY, ANTHROPIC_API_KEY, etc.) — never hardcode them.
- Validate all tool inputs before passing to external systems — use Pydantic models or manual checks.
- Tools that mutate data (write to DB, send emails, call payment APIs) should require explicit user confirmation before the agent invokes them in production.
- Log
result.all_messages() for audit trails when agents perform consequential actions.
- Set
retries= limits on Agent() to prevent runaway loops on persistent validation failures.
Common Pitfalls
-
Problem: ValidationError on every LLM response — structured output never validates
Solution: Simplify result_type fields. Use Optional and default where appropriate. The model may struggle with overly strict schemas.
-
Problem: Tool is never called by the LLM
Solution: Write a clear, specific docstring for the tool function — PydanticAI sends the docstring as the tool description to the LLM.
-
Problem: RunContext dependency is None inside a tool
Solution: Pass deps= when calling agent.run() or agent.run_sync(). Dependencies are not set globally.
-
Problem: asyncio.run() error when calling agent.run() inside FastAPI
Solution: Use await agent.run() directly in async FastAPI route handlers — don't wrap in asyncio.run().
Related Skills
@langchain-architecture — Alternative Python AI framework (more flexible, less type-safe)
@llm-application-dev-ai-assistant — General LLM application development patterns
@fastapi-templates — Serving PydanticAI agents via FastAPI endpoints
@agent-orchestration-multi-agent-optimize — Orchestrating multiple PydanticAI agents
Limitations
- Use this skill only when the task clearly matches the scope described above.
- Do not treat the output as a substitute for environment-specific validation, testing, or expert review.
- Stop and ask for clarification if required inputs, permissions, safety boundaries, or success criteria are missing.