| name | python-typing-patterns |
| description | Comprehensive guide for Python type annotations, type checking, and modern typing patterns. Use when: (1) Adding type hints to Python code, (2) Configuring mypy/pyright/ty type checkers, (3) Understanding generics, protocols, and advanced type patterns, (4) Migrating to modern Python typing, (5) Setting up strict type checking in CI/CD, (6) Building type-safe APIs and libraries. Covers Python 3.10+ modern syntax, type narrowing, structural typing, and best practices.
|
Python Typing Patterns
Master Python's type system to catch errors at static analysis time. Type annotations serve as enforced documentation that tooling validates automatically, improving code quality, enabling safer refactors, and enhancing IDE intelligence.
When to Use This Skill
- Adding type hints to existing code or new projects
- Configuring mypy, pyright, or ty for strict type checking
- Understanding generics, protocols, and advanced type patterns
- Migrating from older typing syntax to modern Python 3.10+ patterns
- Setting up type checking in CI/CD pipelines
- Building type-safe APIs, libraries, and frameworks
- Understanding type narrowing, guards, and type-safe control flow
- Implementing structural typing with protocols
Quick Start
def get_user(user_id: str) -> User | None:
"""Return type makes 'might not exist' explicit."""
...
user = get_user("123")
if user is None:
raise UserNotFoundError("123")
print(user.name)
Core Concepts
1. Type Annotations
Declare expected types for function parameters, return values, and variables. Types are enforced documentation.
2. Generics
Write reusable code that preserves type information across different concrete types.
3. Protocols
Define structural interfaces without inheritance (duck typing with type safety).
4. Type Narrowing
Use guards and conditionals to narrow types within code blocks, helping the type checker understand your logic.
Modern Syntax (Python 3.10+)
Union Types with |
def find_user(user_id: str) -> User | None:
...
def parse_value(v: str) -> int | float | str:
...
from typing import Optional, Union
def find_user(user_id: str) -> Optional[User]:
...
Built-in Generic Types
from collections.abc import Callable, Iterator, Mapping
def process_items(items: list[str]) -> dict[str, int]:
...
def transform(data: tuple[int, ...]) -> set[str]:
...
from typing import List, Dict, Tuple, Set
def process_items(items: List[str]) -> Dict[str, int]:
...
Type Aliases with type Statement
type UserId = str
type UserDict = dict[str, Any]
type Handler[T] = Callable[[Request], T]
type AsyncHandler[T] = Callable[[Request], Awaitable[T]]
from typing import TypeAlias
UserId: TypeAlias = str
Handler: TypeAlias = Callable[[Request], Response]
Fundamental Patterns
Pattern 1: Annotate All Public Signatures
Every public function, method, and class should have type annotations.
def get_user(user_id: str) -> User:
"""Retrieve user by ID."""
...
def process_batch(
items: list[Item],
max_workers: int = 4,
) -> BatchResult[ProcessedItem]:
"""Process items concurrently."""
...
class UserRepository:
def __init__(self, db: Database) -> None:
self._db = db
async def find_by_id(self, user_id: str) -> User | None:
"""Return User if found, None otherwise."""
...
async def find_by_email(self, email: str) -> User | None:
...
async def save(self, user: User) -> User:
"""Save and return user with generated ID."""
...
Best Practice: Use mypy --strict or pyright in CI to catch type errors early. For existing projects, enable strict mode incrementally using per-module overrides.
Pattern 2: Type Narrowing with Guards
Use conditionals to narrow types for the type checker.
def process_user(user_id: str) -> UserData:
user = find_user(user_id)
if user is None:
raise UserNotFoundError(f"User {user_id} not found")
return UserData(
name=user.name,
email=user.email,
)
def process_items(items: list[Item | None]) -> list[ProcessedItem]:
valid_items = [item for item in items if item is not None]
return [process(item) for item in valid_items]
Pattern 3: Type Guards with isinstance()
def handle_event(event: ClickEvent | KeyEvent) -> None:
if isinstance(event, ClickEvent):
process_click(event.x, event.y)
else:
process_key(event.key_code)
Pattern 4: TypedDict for Structured Data
Use TypedDict for external schemas like API responses.
from typing import TypedDict, NotRequired
class UserResponse(TypedDict):
id: int
name: str
email: str
age: NotRequired[int]
def process_api_response(data: UserResponse) -> User:
return User(
id=data["id"],
name=data["name"],
email=data["email"],
)
Generic Patterns
Pattern 5: Generic Classes
Create type-safe reusable containers.
from typing import TypeVar, Generic
T = TypeVar("T")
E = TypeVar("E", bound=Exception)
class Result(Generic[T, E]):
"""Represents either a success value or an error."""
def __init__(
self,
value: T | None = None,
error: E | None = None,
) -> None:
if (value is None) == (error is None):
raise ValueError("Exactly one of value or error must be set")
self._value = value
self._error = error
@property
def is_success(self) -> bool:
return self._error is None
@property
def is_failure(self) -> bool:
return self._error is not None
def unwrap(self) -> T:
"""Get value or raise the error."""
if self._error is not None:
raise self._error
return self._value
def unwrap_or(self, default: T) -> T:
"""Get value or return default."""
if self._error is not None:
return default
return self._value
def parse_config(path: str) -> Result[Config, ConfigError]:
try:
return Result(value=Config.from_file(path))
except ConfigError as e:
return Result(error=e)
result = parse_config("config.yaml")
if result.is_success:
config = result.unwrap()
Pattern 6: Generic Repository Pattern
Create type-safe data access patterns.
from typing import TypeVar, Generic
from abc import ABC, abstractmethod
T = TypeVar("T")
ID = TypeVar("ID")
class Repository(ABC, Generic[T, ID]):
"""Generic repository interface."""
@abstractmethod
async def get(self, id: ID) -> T | None:
"""Get entity by ID."""
...
@abstractmethod
async def save(self, entity: T) -> T:
"""Save and return entity."""
...
@abstractmethod
async def delete(self, id: ID) -> bool:
"""Delete entity, return True if existed."""
...
class UserRepository(Repository[User, str]):
"""Concrete repository for Users with string IDs."""
async def get(self, id: str) -> User | None:
row = await self._db.fetchrow(
"SELECT * FROM users WHERE id = $1", id
)
return User(**row) if row else None
async def save(self, entity: User) -> User:
...
async def delete(self, id: str) -> bool:
...
Pattern 7: TypeVar with Bounds
Restrict generic parameters to specific types.
from typing import TypeVar
from pydantic import BaseModel
ModelT = TypeVar("ModelT", bound=BaseModel)
def validate_and_create(model_cls: type[ModelT], data: dict) -> ModelT:
"""Create a validated Pydantic model from dict."""
return model_cls.model_validate(data)
class User(BaseModel):
name: str
email: str
user = validate_and_create(User, {"name": "Alice", "email": "a@b.com"})
result = validate_and_create(str, {"name": "Alice"})
Pattern 8: Self Type (Python 3.11+)
Use Self for methods that return instances of the same class.
from typing import Self
class Builder:
def __init__(self) -> None:
self._parts: list[str] = []
def add_part(self, part: str) -> Self:
self._parts.append(part)
return self
def build(self) -> str:
return "".join(self._parts)
class AdvancedBuilder(Builder):
def add_advanced(self, part: str) -> Self:
self._parts.append(f"[{part}]")
return self
builder = AdvancedBuilder()
result = builder.add_part("a").add_advanced("b").build()
Protocol Patterns
Pattern 9: Protocols for Structural Typing
Define interfaces without requiring inheritance.
from typing import Protocol, runtime_checkable
@runtime_checkable
class Serializable(Protocol):
"""Any class that can be serialized to/from dict."""
def to_dict(self) -> dict:
...
@classmethod
def from_dict(cls, data: dict) -> "Serializable":
...
class User:
def __init__(self, id: str, name: str) -> None:
self.id = id
self.name = name
def to_dict(self) -> dict:
return {"id": self.id, "name": self.name}
@classmethod
def from_dict(cls, data: dict) -> "User":
return cls(id=data["id"], name=data["name"])
def serialize(obj: Serializable) -> str:
"""Works with any Serializable object."""
return json.dumps(obj.to_dict())
serialize(User("1", "Alice"))
isinstance(User("1", "Alice"), Serializable)
Pattern 10: Common Protocol Patterns
Define reusable structural interfaces.
from typing import Protocol
class Closeable(Protocol):
"""Resource that can be closed."""
def close(self) -> None: ...
class AsyncCloseable(Protocol):
"""Async resource that can be closed."""
async def close(self) -> None: ...
class Readable(Protocol):
"""Object that can be read from."""
def read(self, n: int = -1) -> bytes: ...
class HasId(Protocol):
"""Object with an ID property."""
@property
def id(self) -> str: ...
class Comparable(Protocol):
"""Object that supports comparison."""
def __lt__(self, other: "Comparable") -> bool: ...
def __le__(self, other: "Comparable") -> bool: ...
Callable Types
Pattern 11: Function Callbacks
Type function parameters and callbacks.
from collections.abc import Callable, Awaitable
ProgressCallback = Callable[[int, int], None]
AsyncHandler = Callable[[Request], Awaitable[Response]]
class OnProgress(Protocol):
def __call__(
self,
current: int,
total: int,
*,
message: str = "",
) -> None: ...
def process_items(
items: list[Item],
on_progress: ProgressCallback | None = None,
) -> list[Result]:
for i, item in enumerate(items):
if on_progress:
on_progress(i, len(items))
...
Type Checker Configuration
Mypy Configuration
[tool.mypy]
python_version = "3.12"
strict = true
warn_return_any = true
warn_unused_ignores = true
disallow_untyped_defs = true
disallow_incomplete_defs = true
no_implicit_optional = true
show_error_codes = true
[[tool.mypy.overrides]]
module = "tests.*"
disallow_untyped_defs = false
Pyright Configuration
[tool.pyright]
pythonVersion = "3.12"
pythonPlatform = "Linux"
strict = ["src"]
include = ["src"]
exclude = ["**/node_modules", "**/__pycache__"]
typeCheckingMode = "strict"
Ty Configuration (Astral)
[tool.ty.environment]
python-version = "3.12"
python = "./.venv"
python-platform = "linux"
root = ["./src"]
[tool.ty.rules]
possibly-unresolved-reference = "error"
invalid-argument-type = "error"
division-by-zero = "warn"
unused-ignore-comment = "warn"
Advanced Patterns
Pattern 12: @override Decorator (Python 3.12+)
Explicitly mark method overrides to catch signature mismatches.
from typing import override
class Base:
def process(self, data: str) -> str:
return data.upper()
class Derived(Base):
@override
def process(self, data: str) -> str:
return data.lower()
class Wrong(Base):
@override
def process(self, data: int) -> str:
return str(data)
Pattern 13: TypeVar with Constraints
Restrict TypeVar to specific types.
from typing import TypeVar
StringOrNumber = TypeVar("StringOrNumber", int, str, bytes)
def concat(a: StringOrNumber, b: StringOrNumber) -> StringOrNumber:
return a + b
concat(1, 2)
concat("a", "b")
concat(1, "a")
Pattern 14: Type Narrowing with TypeIs (Python 3.13+)
from typing import TypeIs
def is_str_list(val: list[str] | list[int]) -> TypeIs[list[str]]:
return len(val) > 0 and isinstance(val[0], str)
def process(val: list[str] | list[int]) -> None:
if is_str_list(val):
print("Strings:", ", ".join(val))
else:
print("Sum:", sum(val))
Pattern 15: Intersection Types (Ty Exclusive)
ty has first-class intersection type support:
def output_as_json(obj: Serializable) -> str:
if isinstance(obj, Versioned):
reveal_type(obj)
return str({
"data": obj.serialize_json(),
"version": obj.version
})
return obj.serialize_json()
Best Practices Summary
- Annotate all public APIs - Functions, methods, class attributes
- Use
T | None - Modern union syntax over Optional[T]
- Run strict type checking -
mypy --strict or pyright in CI
- Use generics - Preserve type info in reusable code
- Define protocols - Structural typing for interfaces
- Narrow types - Use guards to help the type checker
- Bound type vars - Restrict generics to meaningful types
- Create type aliases - Meaningful names for complex types
- Minimize
Any - Use specific types or generics. Any is acceptable for truly dynamic data or when interfacing with untyped third-party code
- Document with types - Types are enforceable documentation
- Use
@override - Explicitly mark method overrides (Python 3.12+)
- Prefer
Self - For fluent interfaces and builder patterns (Python 3.11+)
Type Checking Commands
mypy src/
mypy --strict src/
mypy --show-error-codes src/
pyright src/
pyright --strict src/
ty check
ty check --output-format full
ruff check src/
Incremental Adoption
For existing codebases, enable strict mode incrementally:
[tool.mypy]
python_version = "3.12"
disallow_untyped_defs = true
warn_return_any = true
[[tool.mypy.overrides]]
module = "src.core.*"
strict = true
[[tool.mypy.overrides]]
module = "src.legacy.*"
disallow_untyped_defs = false
ignore_errors = true
Resources
Sources
Built from best parts of:
- python-type-safety by wshobson (core patterns, generics, protocols)
- ty-skills by jiatastic (ty configuration, intersection types)
- python-backend-expert by hieutrtr (Pydantic v2, SQLAlchemy 2.0 patterns)
- Modern Python typing best practices from 2025 resources