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pandas data creation made easy by dataclass

Project description

pandas-dataclasses

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pandas data creation made easy by dataclass

Overview

pandas-dataclass makes it easy to create pandas data (Series and DataFrame) by Python's dataclass that enables to specify their data types, attributes, and names:

Click to see all imports
from dataclasses import dataclass
from pandas_dataclasses import AsDataFrame, Data, Index
@dataclass
class Weather(AsDataFrame):
    """Weather information."""

    year: Index[int]
    month: Index[int]
    temp: Data[float]
    wind: Data[float]


df = Weather.new(
    [2020, 2020, 2021, 2021, 2022],
    [1, 7, 1, 7, 1],
    [7.1, 24.3, 5.4, 25.9, 4.9],
    [2.4, 3.1, 2.3, 2.4, 2.6],
)

where df will become a DataFrame object like:

            temp  wind
year month
2020 1       7.1   2.4
     7      24.3   3.1
2021 1       5.4   2.3
     7      25.9   2.4
2022 1       4.9   2.6

Features

  • Type specification of pandas indexes and data
  • Metadata storing in pandas data attributes
  • Support for hierarchical index and columns
  • Support for full dataclass features
  • Support for static type check by Pyright (Pylance)

Installation

pip install pandas-dataclasses

How it works

pandas-dataclasses provides you the following features:

  • Type hints for dataclass fields (Attr, Data, Index) to specify index(es), data, and attributes of pandas data
  • Mix-in classes for dataclasses (As, AsDataFrame, AsSeries) to create pandas data by a classmethod (new) that takes the same arguments as dataclass initialization

When you call new, it will first create a dataclass object and then create a Series or DataFrame object from the dataclass object according the type hints and values in it. In the example above, df = Weather.new(...) is thus equivalent to:

obj = Weather([2020, ...], [1, ...], [7.1, ...], [2.4, ...])
df = asdataframe(obj)

where asdataframe is a conversion function. pandas-dataclasses does not touch the dataclass object creation itself; this allows you to fully customize your dataclass before conversion by the dataclass features (field, __post_init__, ...).

Basic usage

DataFrame creation

As shown in the example above, a dataclass that has the AsDataFrame mix-in will create DataFrame objects:

Click to see all imports
from dataclasses import dataclass
from pandas_dataclasses import AsDataFrame, Data, Index
@dataclass
class Weather(AsDataFrame):
    """Weather information."""

    year: Index[int]
    month: Index[int]
    temp: Data[float]
    wind: Data[float]


df = Weather.new(...)

where fields typed by Index are "index fields", each value of which will become an index or a part of a hierarchical index of a DataFrame object. Fields typed by Data are "data fields", each value of which will become a data column of a DataFrame object. Fields typed by other types are just ignored in the DataFrame creation.

Each data or index will be cast to the data type specified in a type hint like Index[int]. Use Any or None (like Index[Any]) if you do not want type casting. See also data typing rules for more examples.

By default, a field name (i.e. an argument name) is used for the name of corresponding data or index. See also custom naming and naming rules if you want customization.

Series creation

A dataclass that has the AsSeries mix-in will create Series objects:

Click to see all imports
from dataclasses import dataclass
from pandas_dataclasses import AsSeries, Data, Index
@dataclass
class Weather(AsSeries):
    """Weather information."""

    year: Index[int]
    month: Index[int]
    temp: Data[float]


ser = Weather.new(...)

Unlike AsDataFrame, the second and subsequent data fields are ignored in the Series creation even if they exist. Other rules are the same as for the DataFrame creation.

Advanced usage

Metadata storing

Fields typed by Attr are "attribute fields", each value of which will become an item of attributes of a DataFrame or a Series object:

Click to see all imports
from dataclasses import dataclass
from pandas_dataclasses import AsDataFrame, Attr, Data, Index
@dataclass
class Weather(AsDataFrame):
    """Weather information."""

    year: Index[int]
    month: Index[int]
    temp: Data[float]
    wind: Data[float]
    loc: Attr[str] = "Tokyo"
    lon: Attr[float] = 139.69167
    lat: Attr[float] = 35.68944


df = Weather.new(...)

where df.attrs will become like:

{"loc": "Tokyo", "lon": 139.69167, "lat": 35.68944}

Custom naming

The name of data, index, or attribute can be explicitly specified by adding a hashable annotation to the corresponding type:

Click to see all imports
from dataclasses import dataclass
from typing import Annotated as Ann
from pandas_dataclasses import AsDataFrame, Attr, Data, Index
@dataclass
class Weather(AsDataFrame):
    """Weather information."""

    year: Ann[Index[int], "Year"]
    month: Ann[Index[int], "Month"]
    temp: Ann[Data[float], "Temperature (deg C)"]
    wind: Ann[Data[float], "Wind speed (m/s)"]
    loc: Ann[Attr[str], "Location"] = "Tokyo"
    lon: Ann[Attr[float], "Longitude (deg)"] = 139.69167
    lat: Ann[Attr[float], "Latitude (deg)"] = 35.68944


df = Weather.new(...)

where df and df.attrs will become like:

            Temperature (deg C)  Wind speed (m/s)
Year Month
2020 1                      7.1               2.4
     7                     24.3               3.1
2021 1                      5.4               2.3
     7                     25.9               2.4
2022 1                      4.9               2.6
{"Location": "Tokyo", "Longitude (deg)": 139.69167, "Latitude (deg)": 35.68944}

Adding dictionary annotations to data fields will create DataFrame objects with hierarchical columns, where dictionary keys will become the names of column levels and dictionary values will become the names of columns:

Click to see all imports
from dataclasses import dataclass
from typing import Annotated as Ann
from pandas_dataclasses import AsDataFrame, Data, Index
def name(stat: str, cat: str) -> dict[str, str]:
    return {"Statistic": stat, "Category": cat}


@dataclass
class Weather(AsDataFrame):
    """Weather information."""

    year: Ann[Index[int], "Year"]
    month: Ann[Index[int], "Month"]
    temp_avg: Ann[Data[float], name("Temperature (deg C)", "Average")]
    temp_max: Ann[Data[float], name("Temperature (deg C)", "Maximum")]
    wind_avg: Ann[Data[float], name("Wind speed (m/s)", "Average")]
    wind_max: Ann[Data[float], name("Wind speed (m/s)", "Maximum")]


df = Weather.new(...)

where df will become like:

Statistic  Temperature (deg C)        Wind speed (m/s)
Category              Average Maximum          Average Maximum
Year Month
2020 1                    7.1    11.1              2.4     8.8
     7                   24.3    27.7              3.1    10.2
2021 1                    5.4    10.3              2.3    10.7
     7                   25.9    30.3              2.4     9.0
2022 1                    4.9     9.4              2.6     8.8

If an annotation is a format string or a dictionary that has format strings as keys and/or values, it will be formatted by a dataclass object before the data creation:

Click to see all imports
from dataclasses import dataclass
from typing import Annotated as Ann
from pandas_dataclasses import AsDataFrame, Data, Index
@dataclass
class Weather(AsDataFrame):
    """Weather information."""

    year: Ann[Index[int], "Year"]
    month: Ann[Index[int], "Month"]
    temp: Ann[Data[float], "Temperature ({.temp_unit})"]
    wind: Ann[Data[float], "Wind speed ({.wind_unit})"]
    temp_unit: str = "deg C"
    wind_unit: str = "m/s"

where units of the temperature and the wind speed can be dynamically updated like Weather.new(..., temp_unit="deg F", wind_unit="km/h").

Custom pandas factory

A custom class can be specified as a factory for the Series or DataFrame creation by As, the generic version of AsDataFrame and AsSeries. Note that the custom class must be a subclass of either pandas.Series or pandas.DataFrame:

Click to see all imports
import pandas as pd
from dataclasses import dataclass
from pandas_dataclasses import As, Data, Index
class CustomSeries(pd.Series):
    """Custom pandas Series."""

    pass


@dataclass
class Temperature(As[CustomSeries]):
    """Temperature information."""

    year: Index[int]
    month: Index[int]
    temp: Data[float]


ser = Temperature.new(...)

where ser will be a CustomSeries object.

Appendix

Data typing rules

The data type (dtype) of data/index is determined from the first Data/Index type of the corresponding field. The following table shows how the data type is inferred:

Click to see all imports
from typing import Any, Annotated as Ann, Literal as L
from pandas_dataclasses import Data
Type hint Inferred data type
Data[Any] None (no type casting)
Data[None] None (no type casting)
Data[int] numpy.int64
Data[numpy.int32] numpy.int32
Data[L["datetime64[ns]"]] numpy.dtype("<M8[ns]")
Data[L["category"]] pandas.CategoricalDtype()
Data[int] | str numpy.int64
Data[int] | Data[float] numpy.int64
Ann[Data[int], "spam"] numpy.int64
Data[Ann[int, "spam"]] numpy.int64

Naming rules

The name of data/index/attribute is determined from the first annotation of the first Data/Index/Attr type of the corresponding field. If the annotation is a format string or a dictionary that has format strings as keys and/or values, it will be formatted by a dataclass object before the data creation. Otherwise, the field name (i.e. argument name) will be used. The following table shows how the name is inferred:

Click to see all imports
from typing import Any, Annotated as Ann
from pandas_dataclasses import Data
Type hint Inferred name
Data[Any] (field name)
Ann[Data[Any], "spam"] "spam"
Ann[Data[Any], "spam", "ham"] "spam"
Ann[Data[Any], "spam"] | Ann[str, "ham"] "spam"
Ann[Data[Any], "spam"] | Ann[Data[float], "ham"] "spam"
Ann[Data[Any], "{.name}" "{.name}".format(obj)
Ann[Data[Any], {"0": "spam", "1": "ham"}] ("spam", "ham")
Ann[Data[Any], {"0": "{.name}", "1": "ham"}] ("{.name}".format(obj), "ham")

where obj is a dataclass object that is expected to have obj.name.

Development roadmap

Release version Features
v0.4.0 Support for hierarchical column
v0.5.0 Support for dynamic naming
v1.0.0 Initial major release (freezing public features until v2.0.0)

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