Skip to main content

A light-weight and flexible data validation and testing tool for statistical data objects.

Project description



A Statistical Data Testing Toolkit

A data validation library for scientists, engineers, and analysts seeking correctness.


CI Build Documentation Status PyPI version shields.io PyPI license pyOpenSci Project Status: Active – The project has reached a stable, usable state and is being actively developed. Documentation Status codecov PyPI pyversions DOI asv Downloads Downloads Conda Downloads Discord

pandera provides a flexible and expressive API for performing data validation on dataframe-like objects to make data processing pipelines more readable and robust.

Dataframes contain information that pandera explicitly validates at runtime. This is useful in production-critical or reproducible research settings. With pandera, you can:

  1. Define a schema once and use it to validate different dataframe types including pandas, dask, modin, and pyspark.
  2. Check the types and properties of columns in a DataFrame or values in a Series.
  3. Perform more complex statistical validation like hypothesis testing.
  4. Seamlessly integrate with existing data analysis/processing pipelines via function decorators.
  5. Define schema models with the class-based API with pydantic-style syntax and validate dataframes using the typing syntax.
  6. Synthesize data from schema objects for property-based testing with pandas data structures.
  7. Lazily Validate dataframes so that all validation checks are executed before raising an error.
  8. Integrate with a rich ecosystem of python tools like pydantic, fastapi, and mypy.

Documentation

The official documentation is hosted on ReadTheDocs: https://pandera.readthedocs.io

Install

Using pip:

pip install pandera

Using conda:

conda install -c conda-forge pandera

Extras

Installing additional functionality:

pip
pip install pandera[hypotheses]  # hypothesis checks
pip install pandera[io]          # yaml/script schema io utilities
pip install pandera[strategies]  # data synthesis strategies
pip install pandera[mypy]        # enable static type-linting of pandas
pip install pandera[fastapi]     # fastapi integration
pip install pandera[dask]        # validate dask dataframes
pip install pandera[pyspark]     # validate pyspark dataframes
pip install pandera[modin]       # validate modin dataframes
pip install pandera[modin-ray]   # validate modin dataframes with ray
pip install pandera[modin-dask]  # validate modin dataframes with dask
pip install pandera[geopandas]   # validate geopandas geodataframes
conda
conda install -c conda-forge pandera-hypotheses  # hypothesis checks
conda install -c conda-forge pandera-io          # yaml/script schema io utilities
conda install -c conda-forge pandera-strategies  # data synthesis strategies
conda install -c conda-forge pandera-mypy        # enable static type-linting of pandas
conda install -c conda-forge pandera-fastapi     # fastapi integration
conda install -c conda-forge pandera-dask        # validate dask dataframes
conda install -c conda-forge pandera-pyspark     # validate pyspark dataframes
conda install -c conda-forge pandera-modin       # validate modin dataframes
conda install -c conda-forge pandera-modin-ray   # validate modin dataframes with ray
conda install -c conda-forge pandera-modin-dask  # validate modin dataframes with dask
conda install -c conda-forge pandera-geopandas   # validate geopandas geodataframes

Quick Start

import pandas as pd
import pandera as pa


# data to validate
df = pd.DataFrame({
    "column1": [1, 4, 0, 10, 9],
    "column2": [-1.3, -1.4, -2.9, -10.1, -20.4],
    "column3": ["value_1", "value_2", "value_3", "value_2", "value_1"]
})

# define schema
schema = pa.DataFrameSchema({
    "column1": pa.Column(int, checks=pa.Check.le(10)),
    "column2": pa.Column(float, checks=pa.Check.lt(-1.2)),
    "column3": pa.Column(str, checks=[
        pa.Check.str_startswith("value_"),
        # define custom checks as functions that take a series as input and
        # outputs a boolean or boolean Series
        pa.Check(lambda s: s.str.split("_", expand=True).shape[1] == 2)
    ]),
})

validated_df = schema(df)
print(validated_df)

#     column1  column2  column3
#  0        1     -1.3  value_1
#  1        4     -1.4  value_2
#  2        0     -2.9  value_3
#  3       10    -10.1  value_2
#  4        9    -20.4  value_1

Schema Model

pandera also provides an alternative API for expressing schemas inspired by dataclasses and pydantic. The equivalent SchemaModel for the above DataFrameSchema would be:

from pandera.typing import Series

class Schema(pa.SchemaModel):

    column1: Series[int] = pa.Field(le=10)
    column2: Series[float] = pa.Field(lt=-1.2)
    column3: Series[str] = pa.Field(str_startswith="value_")

    @pa.check("column3")
    def column_3_check(cls, series: Series[str]) -> Series[bool]:
        """Check that values have two elements after being split with '_'"""
        return series.str.split("_", expand=True).shape[1] == 2

Schema.validate(df)

Development Installation

git clone https://github.com/pandera-dev/pandera.git
cd pandera
pip install -r requirements-dev.txt
pip install -e .

Tests

pip install pytest
pytest tests

Contributing to pandera GitHub contributors

All contributions, bug reports, bug fixes, documentation improvements, enhancements and ideas are welcome.

A detailed overview on how to contribute can be found in the contributing guide on GitHub.

Issues

Go here to submit feature requests or bugfixes.

Need Help?

There are many ways of getting help with your questions. You can ask a question on Github Discussions page or reach out to the maintainers and pandera community on Discord

Why pandera?

Alternative Data Validation Libraries

Here are a few other alternatives for validating Python data structures.

Generic Python object data validation

pandas-specific data validation

Other tools for data validation

How to Cite

If you use pandera in the context of academic or industry research, please consider citing the paper and/or software package.

Paper

@InProceedings{ niels_bantilan-proc-scipy-2020,
  author    = { {N}iels {B}antilan },
  title     = { pandera: {S}tatistical {D}ata {V}alidation of {P}andas {D}ataframes },
  booktitle = { {P}roceedings of the 19th {P}ython in {S}cience {C}onference },
  pages     = { 116 - 124 },
  year      = { 2020 },
  editor    = { {M}eghann {A}garwal and {C}hris {C}alloway and {D}illon {N}iederhut and {D}avid {S}hupe },
  doi       = { 10.25080/Majora-342d178e-010 }
}

Software Package

DOI

License and Credits

pandera is licensed under the MIT license and is written and maintained by Niels Bantilan (niels@pandera.ci)

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

pandera-0.13.0b1.tar.gz (105.8 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

pandera-0.13.0b1-py3-none-any.whl (120.4 kB view details)

Uploaded Python 3

File details

Details for the file pandera-0.13.0b1.tar.gz.

File metadata

  • Download URL: pandera-0.13.0b1.tar.gz
  • Upload date:
  • Size: 105.8 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.1 CPython/3.10.7

File hashes

Hashes for pandera-0.13.0b1.tar.gz
Algorithm Hash digest
SHA256 0148102a91b8e822636adeea3c11a6b0df7773d690bf452e624d94df4787c685
MD5 afdddbc0294aa99146c36e5a8fefe4a6
BLAKE2b-256 b84f3e8a64a20f0b424f87f105b225a7257f759a20ebc6f3278b3b21e1904355

See more details on using hashes here.

File details

Details for the file pandera-0.13.0b1-py3-none-any.whl.

File metadata

  • Download URL: pandera-0.13.0b1-py3-none-any.whl
  • Upload date:
  • Size: 120.4 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.1 CPython/3.10.7

File hashes

Hashes for pandera-0.13.0b1-py3-none-any.whl
Algorithm Hash digest
SHA256 0a239cf9bdd6a1c1389cb80ba8c4860db9f8288c99fc05f1bf58072bdffb4989
MD5 035291a3e2414f0b5e22a33e85675c1a
BLAKE2b-256 a75d54f5f0f3164176a4fd178ab8d535203304a77b8662c9374187f6482972a2

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page