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Function decorators for Pandas Dataframe column name and data type validation

Project description

DAFFY DataFrame Column Validator

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Description

In projects using Pandas, it's very common to have functions that take Pandas DataFrames as input or produce them as output. It's hard to figure out quickly what these DataFrames contain. This library offers simple decorators to annotate your functions so that they document themselves and that documentation is kept up-to-date by validating the input and output on runtime.

For example,

@df_in(columns=["Brand", "Price"])     # the function expects a DataFrame as input parameter with columns Brand and Price
@df_out(columns=["Brand", "Price"])    # the function will return a DataFrame with columns Brand and Price
def filter_cars(car_df):
    # before this code is executed, the input DataFrame is validated according to the above decorator
    # filter some cars..
    return filtered_cars_df

Table of Contents

Installation

Install with your favorite Python dependency manager like

pip install daffy

Usage

Start by importing the needed decorators:

from daffy import df_in, df_out

To check a DataFrame input to a function, annotate the function with @df_in. For example the following function expects to get a DataFrame with columns Brand and Price:

@df_in(columns=["Brand", "Price"])
def process_cars(car_df):
    # do stuff with cars

If your function takes multiple arguments, specify the field to be checked with it's name:

@df_in(name="car_df", columns=["Brand", "Price"])
def process_cars(year, style, car_df):
    # do stuff with cars

You can also check columns of multiple arguments if you specify the names

@df_in(name="car_df", columns=["Brand", "Price"])
@df_in(name="brand_df", columns=["Brand", "BrandName"])
def process_cars(car_df, brand_df):
    # do stuff with cars

To check that a function returns a DataFrame with specific columns, use @df_out decorator:

@df_out(columns=["Brand", "Price"])
def get_all_cars():
    # get those cars
    return all_cars_df

In case one of the listed columns is missing from the DataFrame, a helpful assertion error is thrown:

AssertionError("Column Price missing from DataFrame. Got columns: ['Brand']")

To check both input and output, just use both annotations on the same function:

@df_in(columns=["Brand", "Price"])
@df_out(columns=["Brand", "Price"])
def filter_cars(car_df):
    # filter some cars
    return filtered_cars_df

If you want to also check the data types of each column, you can replace the column array:

columns=["Brand", "Price"]

with a dict:

columns={"Brand": "object", "Price": "int64"}

This will not only check that the specified columns are found from the DataFrame but also that their dtype is the expected. In case of a wrong dtype, an error message similar to following will explain the mismatch:

AssertionError("Column Price has wrong dtype. Was int64, expected float64")

You can enable strict-mode for both @df_in and @df_out. This will raise an error if the DataFrame contains columns not defined in the annotation:

@df_in(columns=["Brand"], strict=True)
def process_cars(car_df):
    # do stuff with cars

will, when car_df contains columns ["Brand", "Price"] raise an error:

AssertionError: DataFrame contained unexpected column(s): Price

To quickly check what the incoming and outgoing dataframes contain, you can add a @df_log annotation to the function. For example adding @df_log to the above filter_cars function will product log lines:

Function filter_cars parameters contained a DataFrame: columns: ['Brand', 'Price']
Function filter_cars returned a DataFrame: columns: ['Brand', 'Price']

or with @df_log(include_dtypes=True) you get:

Function filter_cars parameters contained a DataFrame: columns: ['Brand', 'Price'] with dtypes ['object', 'int64']
Function filter_cars returned a DataFrame: columns: ['Brand', 'Price'] with dtypes ['object', 'int64']

Contributing

Contributions are accepted. Include tests in PR's.

Development

To run the tests, clone the repository, install dependencies with Poetry and run tests with PyTest:

poetry install
poetry shell
pytest

To enable linting on each commit, run pre-commit install. After that, your every commit will be checked with isort, black and flake8.

License

MIT

Changelog

0.7.0

  • Support Pandas 2.x
  • Drop support for Python 3.7 and 3.8
  • Build and test with Python 3.12 also

0.6.0

  • Make checking columns of multiple function parameters work also with positional arguments (thanks @latvanii)

0.5.0

  • Added strict parameter for @df_in and @df_out

0.4.2

  • Added docstrings for the decorators
  • Fix import of @df_log

0.4.1

  • Add include_dtypes parameter for @df_log.
  • Fix handling of empty signature with @df_in.

0.4.0

  • Added @df_log for logging.
  • Improved assertion messages.

0.3.0

  • Added type hints.

0.2.1

  • Added Pypi classifiers.

0.2.0

  • Fixed decorator usage.
  • Added functools wraps.

0.1.0

  • Initial release.

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