Type hints

Type hints are a modern feature of Python available since 3.5 whose existence is heavily influenced by the features of type-safe languages such as Rust. To learn more about type hints in Python, see Real Python’s Type hinting walkthrough.

When using Strawberry to build graphQL APIs, as was shown in Schema basics, type hints are required within classes decorated by @strawberry.type & @strawberry.input and functions decorated by @strawberry.field & strawberry.mutation. These type hints are sourced as the keywords str, int, float, and from packages imported directly from the Python standard libraries typing, that has been available since Python 3.5, datetime, and decimal.

Mapping to graphQL types

The complete mapping of the required type hints for the relevant graphQL types is as follows:

GraphQLPython
IDstrawberry.ID
Stringstr
Integerint
Floatfloat
Decimaldecimal.Decimal
Array, []typing.List or list
Uniontyping.Union or |
Nullabletyping.Optional or None |
Datedatetime.date
Datetimedatetime.datetime
Timedatetime.time

where typing, datetime, and decimal are all part of the Python standard library. There is also typing.Dict that possesses no mapping since it is the entire structure of the graphQL query itself that is a dictionary.

There are a few different ways in which these Python type hints can be used to express the required Strawberry graphQL type annotation.

  • For versions of Python >= 3.10, it is possible to annotate an array of types with list[Type]. However, for all previous versions, typing.List[Type] must be used instead.
  • The annotation | is shorthand for typing.Union[], allowing either of typing.Union[TypeA, TypeB] or TypeA | TypeB interchangably.
  • The annotation typing.Optional[Type] is shorthand for typing.Union[None, Type], which is itself equivalent to None | Type.

Example

A complete example of this, extending upon Schema basics, might be the following:

import datetime
import decimal
from typing import List, Optional
import strawberry
BOOKS_LOOKUP = {
"Frank Herbert": [
{
"title": "Dune",
"date_published": "1965-08-01",
"price": "5.99",
"isbn": 9780801950773,
}
],
}
@strawberry.type
class Book:
title: str
author: "Author"
date_published: datetime.date
price: decimal.Decimal
isbn: str
def get_books_by_author(root: "Author") -> List["Book"]:
stored_books = BOOKS_LOOKUP[root.name]
return [
Book(
title=book.get("title"),
author=root,
date_published=book.get("date_published"),
price=book.get("price"),
isbn=book.get("isbn"),
)
for book in stored_books
]
@strawberry.type
class Author:
name: str
books: List[Book] = strawberry.field(resolver=get_books_by_author)
@strawberry.type
class Group:
name: Optional[str] # groups of authors don't necessarily have names
authors: List[Author]
@strawberry.field
def books(self) -> List[Book]:
books = []
for author in self.authors:
books += get_books_by_author(author)
return books
  • self within a resolver's definition, whether decorated as @strawberry.field or @strawberry.mutation, never needs a type hint because it can be inferred.
  • Optional is the way to tell Strawberry that a field is nullable. Without it, every field is assumed to be non-null. This is in contrast to graphene wherein every field is assumed nullable unless required=True is supplied.
  • Type hinting doesn't stop at being a requirement for Strawberry to function, it is also immensely helpful for collaborating developers. By specifying the type of stored_books in get_books_by_author, an IDE equipped with PyLance will be able to infer that book within the list comprehension is a dictionary and so will understand that .get() is a method function of the dict class. This helps the readability and maintainability of written code.

Motivation

Python, much like Javascript and Ruby, is a dynamically typed language that allows for high-level programming where the fundamental types of variables, e.g. integers, arrays, hash-maps, etc., are understood by the machine at runtime through Just-in-Time compilation.

Yet, much like the low-level languages of C, Java, and Rust, the graphQL query language is statically typed since the data types defined by the schema must be known prior to compiling the API code in order to define a definite schema to query against.

In the low-level statically typed languages mentioned above, every function must have the types of both their arguments and returns explicitly declared so that the compiler can interpret their behaviours correctly and ensure type safety and consistency.

Strawberry takes inspiration from these languages by requiring that all of its types, fields, resolvers, and mutations declare the types of their arguments and returns. Through this, the schema is generated in a standard and efficient way that aligns with the style-direction of Python and programming as a whole.

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