Skills pydantic-ai-dependency-injection
Implement dependency injection in PydanticAI agents using RunContext and deps_type. Use when agents need database connections, API clients, user context, or any external resources.
install
source · Clone the upstream repo
git clone https://github.com/openclaw/skills
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/openclaw/skills "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/anderskev/pydantic-ai-dependency-injection" ~/.claude/skills/clawdbot-skills-pydantic-ai-dependency-injection && rm -rf "$T"
manifest:
skills/anderskev/pydantic-ai-dependency-injection/SKILL.mdsource content
PydanticAI Dependency Injection
Core Pattern
Dependencies flow through
RunContext:
from dataclasses import dataclass from pydantic_ai import Agent, RunContext @dataclass class Deps: db: DatabaseConn api_client: HttpClient user_id: int agent = Agent( 'openai:gpt-4o', deps_type=Deps, # Type for static analysis ) @agent.tool async def get_user_balance(ctx: RunContext[Deps]) -> float: """Get the current user's account balance.""" return await ctx.deps.db.get_balance(ctx.deps.user_id) # At runtime, provide deps result = await agent.run( 'What is my balance?', deps=Deps(db=db_conn, api_client=client, user_id=123) )
Defining Dependencies
Use dataclasses or Pydantic models:
from dataclasses import dataclass from pydantic import BaseModel # Dataclass (recommended for simplicity) @dataclass class Deps: db: DatabaseConnection cache: CacheClient user_context: UserContext # Pydantic model (if you need validation) class Deps(BaseModel): api_key: str endpoint: str timeout: int = 30
Accessing Dependencies
In tools and instructions:
@agent.tool async def query_database(ctx: RunContext[Deps], query: str) -> list[dict]: """Run a database query.""" return await ctx.deps.db.execute(query) @agent.instructions async def add_user_context(ctx: RunContext[Deps]) -> str: user = await ctx.deps.db.get_user(ctx.deps.user_id) return f"User name: {user.name}, Role: {user.role}" @agent.system_prompt def add_permissions(ctx: RunContext[Deps]) -> str: return f"User has permissions: {ctx.deps.permissions}"
Type Safety
Full type checking with generics:
# Explicit agent type annotation agent: Agent[Deps, OutputModel] = Agent( 'openai:gpt-4o', deps_type=Deps, output_type=OutputModel, ) # Now these are type-checked: # - ctx.deps in tools is typed as Deps # - result.output is typed as OutputModel # - agent.run() requires deps: Deps
No Dependencies Pattern
When you don't need dependencies:
# Option 1: No deps_type (defaults to NoneType) agent = Agent('openai:gpt-4o') result = agent.run_sync('Hello') # No deps needed # Option 2: Explicit None for type checker agent: Agent[None, str] = Agent('openai:gpt-4o') result = agent.run_sync('Hello', deps=None) # In tool_plain, no context access @agent.tool_plain def simple_calc(a: int, b: int) -> int: return a + b
Complete Example
from dataclasses import dataclass from httpx import AsyncClient from pydantic import BaseModel from pydantic_ai import Agent, RunContext @dataclass class WeatherDeps: client: AsyncClient api_key: str class WeatherReport(BaseModel): location: str temperature: float conditions: str agent: Agent[WeatherDeps, WeatherReport] = Agent( 'openai:gpt-4o', deps_type=WeatherDeps, output_type=WeatherReport, instructions='You are a weather assistant.', ) @agent.tool async def get_weather( ctx: RunContext[WeatherDeps], city: str ) -> dict: """Fetch weather data for a city.""" response = await ctx.deps.client.get( f'https://api.weather.com/{city}', headers={'Authorization': ctx.deps.api_key} ) return response.json() async def main(): async with AsyncClient() as client: deps = WeatherDeps(client=client, api_key='secret') result = await agent.run('Weather in London?', deps=deps) print(result.output.temperature)
Override for Testing
from pydantic_ai.models.test import TestModel # Create mock dependencies mock_deps = Deps( db=MockDatabase(), api_client=MockClient(), user_id=999 ) # Override model and deps for testing with agent.override(model=TestModel(), deps=mock_deps): result = agent.run_sync('Test prompt')
Best Practices
- Keep deps immutable: Use frozen dataclasses or Pydantic models
- Pass connections, not credentials: Deps should hold initialized clients
- Type your agents: Use
for full type safetyAgent[DepsType, OutputType] - Scope deps appropriately: Create deps at the start of a request, close after