Marketplace pydantic
Data validation and settings management using Python type annotations with Pydantic v2
install
source · Clone the upstream repo
git clone https://github.com/aiskillstore/marketplace
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/aiskillstore/marketplace "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/bossjones/pydantic" ~/.claude/skills/aiskillstore-marketplace-pydantic && rm -rf "$T"
manifest:
skills/bossjones/pydantic/SKILL.mdsource content
Pydantic v2 Framework Skill
Pydantic is a data validation library that uses Python type annotations to define data schemas, offering fast and extensible validation with automatic type coercion.
Quick Start
Basic Model Definition
from pydantic import BaseModel from datetime import datetime from typing import Optional class User(BaseModel): id: int name: str email: str signup_ts: Optional[datetime] = None is_active: bool = True # Automatic type coercion user = User( id='123', # String → int name='John Doe', email='john@example.com', signup_ts='2017-06-01 12:22' # String → datetime )
Validation from Data Sources
# From dict user = User.model_validate({'id': 1, 'name': 'Alice', 'email': 'alice@test.com'}) # From JSON user = User.model_validate_json('{"id": 1, "name": "Alice", "email": "alice@test.com"}') # Serialization print(user.model_dump()) # Python dict print(user.model_dump_json()) # JSON string
Common Patterns
Field Configuration
from pydantic import BaseModel, Field, EmailStr, HttpUrl from typing import Annotated class Product(BaseModel): product_id: int = Field(alias='id', ge=1, description='Unique product identifier') name: str = Field(min_length=1, max_length=200) price: float = Field(gt=0, le=1000000) email: EmailStr website: HttpUrl tags: list[str] = Field(default_factory=list, max_length=10) internal_code: str = Field(exclude=True, default='N/A') class User(BaseModel): username: Annotated[str, Field(min_length=3, pattern=r'^[a-zA-Z0-9_]+$')] age: int = Field(ge=0, le=150)
Model Configuration
from pydantic import BaseModel, ConfigDict class StrictModel(BaseModel): model_config = ConfigDict( strict=True, # No type coercion frozen=True, # Immutable instances validate_assignment=True, # Validate on attribute assignment extra='forbid', # Reject extra fields str_strip_whitespace=True, populate_by_name=True, # Accept both alias and field name use_enum_values=True, # Serialize enums as values ) id: int name: str
Custom Validation
from pydantic import BaseModel, model_validator, field_validator, ValidationError from typing import Any class DateRange(BaseModel): start_date: str end_date: str @field_validator('start_date', 'end_date') @classmethod def validate_date_format(cls, v: str) -> str: # Custom validation logic if not v: raise ValueError('Date cannot be empty') return v @model_validator(mode='after') def check_dates_order(self) -> 'DateRange': # Cross-field validation if self.start_date > self.end_date: raise ValueError('start_date must be before end_date') return self # Using the model try: date_range = DateRange(start_date='2024-01-01', end_date='2024-01-31') except ValidationError as e: for error in e.errors(): print(f"{error['loc']}: {error['msg']}")
Serialization Control
from pydantic import BaseModel, Field, SecretStr from datetime import datetime class User(BaseModel): id: int username: str password: SecretStr created_at: datetime internal_data: dict = Field(exclude=True, default_factory=dict) # Serialization options user = User( id=1, username='john', password='secret', created_at=datetime.now() ) # Basic serialization print(user.model_dump()) # Python dict print(user.model_dump_json()) # JSON string # Excluding fields print(user.model_dump(exclude={'password'})) print(user.model_dump(exclude={'username', 'created_at'})) # Include only specific fields print(user.model_dump(include={'id', 'username'})) # JSON-compatible serialization print(user.model_dump(mode='json')) # datetime → string print(user.model_dump(by_alias=True)) # Use field aliases
Custom Serialization
from typing import Annotated, Any from pydantic import BaseModel, field_serializer, PlainSerializer class Model(BaseModel): number: int created_at: datetime @field_serializer('number') def serialize_number(self, value: int) -> str: return f"{value:,}" # Format with commas # Using Annotated with PlainSerializer custom_field: Annotated[ float, PlainSerializer(lambda x: round(x, 2), return_type=float) ]
Nested Models and Relationships
from pydantic import BaseModel from typing import Optional, List class Address(BaseModel): street: str city: str country: str = 'USA' zip_code: str class User(BaseModel): id: int name: str addresses: List[Address] primary_address: Optional[Address] = None # Usage user = User( id=1, name='John Doe', addresses=[ {'street': '123 Main St', 'city': 'New York', 'zip_code': '10001'}, {'street': '456 Oak Ave', 'city': 'Boston', 'zip_code': '02101'} ], primary_address={'street': '123 Main St', 'city': 'New York', 'zip_code': '10001'} )
Enum Integration
from enum import Enum, IntEnum from pydantic import BaseModel class Status(str, Enum): PENDING = 'pending' ACTIVE = 'active' COMPLETED = 'completed' class Priority(IntEnum): LOW = 1 MEDIUM = 2 HIGH = 3 class Task(BaseModel): title: str status: Status = Status.PENDING priority: Priority = Priority.MEDIUM model_config = ConfigDict(use_enum_values=True) # Can use enum values or names task1 = Task(title='Task 1', status='active', priority=3) task2 = Task(title='Task 2', status=Status.ACTIVE, priority=Priority.HIGH)
TypeAdapter for Standalone Validation
from pydantic import TypeAdapter from typing import List, Optional # Validate individual types without full models int_adapter = TypeAdapter(int) print(int_adapter.validate_python('123')) # 123 list_adapter = TypeAdapter(List[int]) print(list_adapter.validate_python(['1', '2', '3'])) # [1, 2, 3] # Generate JSON schemas print(int_adapter.json_schema()) print(list_adapter.json_schema())
Data Validation Patterns
from pydantic import BaseModel, ValidationError from typing import Union class EmailValidator(BaseModel): email: str @field_validator('email') @classmethod def validate_email(cls, v: str) -> str: if '@' not in v: raise ValueError('Invalid email format') return v.lower() # Validation error handling try: user = User(id='invalid', name='', email='test') except ValidationError as e: print(f"Errors: {e.error_count()}") for error in e.errors(): print(f" {error['loc']}: {error['msg']} ({error['type']})")
Requirements
- Python 3.8+
- Pydantic v2.x:
uv add pydantic - Optional dependencies for enhanced types:
for EmailStruv add pydantic[email]
for HttpUrluv add pydantic[url]
for extended type supportuv add pydantic[typing-extensions]
Best Practices
- Use specific types: Prefer
overconint(gt=0)
for positive numbersint - Configure models: Use
to set global model behaviorConfigDict - Handle validation errors: Always wrap model creation in try/catch blocks
- Use field validators: Implement custom validation logic with
@field_validator - Control serialization: Use
parameters to control output formatmodel_dump() - Leverage type coercion: Pydantic automatically converts compatible types
- Use nested models: Break complex data into smaller, reusable models