Patito combines pydantic and polars in order to write modern, type-annotated data frame logic.
Patito offers a simple way to declare pydantic data models which double as schema for your polars data frames. These schema can be used for:
๐ฎ Simple and performant data frame validation.
๐งช Easy generation of valid mock data frames for tests.
๐ Retrieve and represent singular rows in an object-oriented manner.
๐ง Provide a single source of truth for the core data models in your code base.
๐ฆ Integration with DuckDB for running flexible SQL queries.
Patito has first-class support for polars, a "blazingly fast DataFrames library written in Rust".
pip install patito
Patito can also integrate with DuckDB. In order to enable this integration you must explicitly specify it during installation:
pip install 'patito[duckdb]'
The full documentation of Patio can be found here.
Patito allows you to specify the type of each column in your dataframe by creating a type-annotated subclass of patito.Model
:
# models.py
from typing import Literal, Optional
import patito as pt
class Product(pt.Model):
product_id: int = pt.Field(unique=True)
temperature_zone: Literal["dry", "cold", "frozen"]
is_for_sale: bool
The class Product
represents the schema of the data frame, while instances of Product
represent single rows of the dataframe.
Patito can efficiently validate the content of arbitrary data frames and provide human-readable error messages:
import polars as pl
df = pl.DataFrame(
{
"product_id": [1, 1, 3],
"temperature_zone": ["dry", "dry", "oven"],
}
)
try:
Product.validate(df)
except pt.ValidationError as exc:
print(exc)
# 3 validation errors for Product
# is_for_sale
# Missing column (type=type_error.missingcolumns)
# product_id
# 2 rows with duplicated values. (type=value_error.rowvalue)
# temperature_zone
# Rows with invalid values: {'oven'}. (type=value_error.rowvalue)
Click to see a summary of dataframe-compatible type annotations.
- Regular python data types such as
int
,float
,bool
,str
,date
, which are validated against compatible polars data types. - Wrapping your type with
typing.Optional
indicates that the given column accepts missing values. - Model fields annotated with
typing.Literal[...]
check if only a restricted set of values are taken, either as the native dtype (e.g.pl.Utf8
) orpl.Categorical
.
Additonally, you can assign patito.Field
to your class variables in order to specify additional checks:
Field(dtype=...)
ensures that a specific dtype is used in those cases where several data types are compliant with the annotated python type, for exampleproduct_id: int = Field(dtype=pl.UInt32)
.Field(unique=True)
checks if every row has a unique value.Field(gt=..., ge=..., le=..., lt=...)
allows you to specify bound checks for any combination of> gt
,>= ge
,<= le
< lt
, respectively.Field(multiple_of=divisor)
in order to check if a given column only contains values as multiples of the given value.Field(default=default_value, const=True)
indicates that the given column is required and must take the given default value.- String fields annotated with
Field(regex=r"<regex-pattern>")
,Field(max_length=bound)
, and/orField(min_length)
will be validated with polars' efficient string processing capabilities. - Custom constraints can be specified with with
Field(constraints=...)
, either as a single polars expression or a list of expressions. All the rows of the dataframe must satisfy the given constraint(s) in order to be considered valid. Example:even_field: int = pt.Field(constraints=pl.col("even_field") % 2 == 0)
.
Although Patito supports pandas, it is highly recommemended to be used in combination with polars. For a much more feature-complete, pandas-first library, take a look at pandera.
Patito encourages you to strictly validate dataframe inputs, thus ensuring correctness at runtime. But with forced correctness comes friction, especially during testing. Take the following function as an example:
import polars as pl
def num_products_for_sale(products: pl.DataFrame) -> int:
Product.validate(products)
return products.filter(pl.col("is_for_sale")).height
The following test would fail with a patito.ValidationError
:
def test_num_products_for_sale():
products = pl.DataFrame({"is_for_sale": [True, True, False]})
assert num_products_for_sale(products) == 2
In order to make the test pass we would have to add valid dummy data for the temperature_zone
and product_id
columns.
This will quickly introduce a lot of boilerplate to all tests involving data frames, obscuring what is actually being tested in each test.
For this reason Patito provides the examples
constructor for generating test data that is fully compliant with the given model schema.
Product.examples({"is_for_sale": [True, True, False]})
# shape: (3, 3)
# โโโโโโโโโโโโโโโฌโโโโโโโโโโโโโโโโโโโฌโโโโโโโโโโโโโ
# โ is_for_sale โ temperature_zone โ product_id โ
# โ --- โ --- โ --- โ
# โ bool โ str โ i64 โ
# โโโโโโโโโโโโโโโชโโโโโโโโโโโโโโโโโโโชโโโโโโโโโโโโโก
# โ true โ dry โ 0 โ
# โโโโโโโโโโโโโโโผโโโโโโโโโโโโโโโโโโโผโโโโโโโโโโโโโค
# โ true โ dry โ 1 โ
# โโโโโโโโโโโโโโโผโโโโโโโโโโโโโโโโโโโผโโโโโโโโโโโโโค
# โ false โ dry โ 2 โ
# โโโโโโโโโโโโโโโดโโโโโโโโโโโโโโโโโโโดโโโโโโโโโโโโโ
The examples()
method accepts the same arguments as a regular data frame constructor, the main difference being that it fills in valid dummy data for any unspecified columns.
The test can therefore be rewritten as:
def test_num_products_for_sale():
products = Product.examples({"is_for_sale": [True, True, False]})
assert num_products_for_sale(products) == 2
Patito offers patito.DataFrame
, a class that extends polars.DataFrame
in order to provide utility methods related to patito.Model
.
The schema of a data frame can be specified at runtime by invoking patito.DataFrame.set_model(model)
, after which a set of contextualized methods become available:
DataFrame.validate()
- Validate the given data frame and return itself.DataFrame.drop()
- Drop all superfluous columns not specified as fields in the model.DataFrame.cast()
- Cast any columns which are not compatible with the given type annotations. WhenField(dtype=...)
is specified, the given dtype will always be forced, even in compatible cases.DataFrame.get(predicate)
- Retrieve a single row from the data frame as an instance of the model. An exception is raised if not exactly one row is yielded from the filter predicate.DataFrame.fill_null(strategy="defaults")
- Fill inn missing values according to the default values set on the model schema.DataFrame.derive()
- A model field annotated withField(derived_from=...)
indicates that a column should be defined by some arbitrary polars expression. Ifderived_from
is specified as a string, then the given value will be interpreted as a column name withpolars.col()
. These columns are created and populated with data according to thederived_from
expressions when you invokeDataFrame.derive()
.
These methods are best illustrated with an example:
from typing import Literal
import patito as pt
import polars as pl
class Product(pt.Model):
product_id: int = pt.Field(unique=True)
# Specify a specific dtype to be used
popularity_rank: int = pt.Field(dtype=pl.UInt16)
# Field with default value "for-sale"
status: Literal["draft", "for-sale", "discontinued"] = "for-sale"
# The eurocent cost is extracted from the Euro cost string "โฌX.Y EUR"
eurocent_cost: int = pt.Field(
derived_from=100 * pl.col("cost").str.extract(r"โฌ(\d+\.+\d+)").cast(float).round(2)
)
products = pt.DataFrame(
{
"product_id": [1, 2],
"popularity_rank": [2, 1],
"status": [None, "discontinued"],
"cost": ["โฌ2.30 EUR", "โฌ1.19 EUR"],
}
)
product = (
products
# Specify the schema of the given data frame
.set_model(Product)
# Derive the `eurocent_cost` int column from the `cost` string column using regex
.derive()
# Drop the `cost` column as it is not part of the model
.drop()
# Cast the popularity rank column to an unsigned 16-bit integer and cents to an integer
.cast()
# Fill missing values with the default values specified in the schema
.fill_null(strategy="defaults")
# Assert that the data frame now complies with the schema
.validate()
# Retrieve a single row and cast it to the model class
.get(pl.col("product_id") == 1)
)
print(repr(product))
# Product(product_id=1, popularity_rank=2, status='for-sale', eurocent_cost=230)
Every Patito model automatically gets a .DataFrame
attribute, a custom data frame subclass where .set_model()
is invoked at instantiation. With other words, pt.DataFrame(...).set_model(Product)
is equivalent to Product.DataFrame(...)
.
Data frames are tailor-made for performing vectorized operations over a set of objects. But when the time comes to retrieving a single row and operate upon it, the data frame construct naturally falls short. Patito allows you to embed row-level logic in methods defined on the model.
# models.py
import patito as pt
class Product(pt.Model):
product_id: int = pt.Field(unique=True)
name: str
@property
def url(self) -> str:
return (
"https://example.com/no/products/"
f"{self.product_id}-"
f"{self.name.lower().replace(' ', '-')}"
)
The class can be instantiated from a single row of a data frame by using the from_row()
method:
products = pl.DataFrame(
{
"product_id": [1, 2],
"name": ["Skimmed milk", "Eggs"],
}
)
milk_row = products.filter(pl.col("product_id" == 1))
milk = Product.from_row(milk_row)
print(milk.url)
# https://example.com/no/products/1-skimmed-milk
If you "connect" the Product
model with the DataFrame
by the use of patito.DataFrame.set_model()
, or alternatively by using Product.DataFrame
directly, you can use the .get()
method in order to filter the data frame down to a single row and cast it to the respective model class:
products = Product.DataFrame(
{
"product_id": [1, 2],
"name": ["Skimmed milk", "Eggs"],
}
)
milk = products.get(pl.col("product_id") == 1)
print(milk.url)
# https://example.com/no/products/1-skimmed-milk