Let's take a simple function that takes a str and returns a dataframe:

import pandas as pd
def csv_to_df(path):
    return pd.read_csv(path, skiprows=1, sep='\t', comment='#')

What is the recommended pythonic way of adding type hints to this function?

If I ask python for the type of a DataFrame it returns pandas.core.frame.DataFrame. The following won't work though, as it'll tell me that pandas is not defined.

 def csv_to_df(path: str) -> pandas.core.frame.DataFrame:
     return pd.read_csv(path, skiprows=1, sep='\t', comment='#')
  • 1
    But you're using the pd alias, and you can probably define custom types. May 10 '17 at 11:15
  • @MosesKoledoye if I try pd.core.frame.DataFrame I'll get an AttributeError instead of a NameError.
    – dangom
    May 10 '17 at 11:16
  • I am not an authority on "pythonicity" but I would recommend doc-strings (using ''' this function takes a inputType and returns an outputType ''') this is also what will be shown if someone calls help(yourFunction) function on your function.
    – Chris
    May 10 '17 at 11:22
  • 3
    the library dataenforce allows to check for data types inside the data frame github.com/CedricFR/dataenforce Apr 21 '20 at 13:49

Why not just use pd.DataFrame?

import pandas as pd
def csv_to_df(path: str) -> pd.DataFrame:
    return pd.read_csv(path, skiprows=1, sep='\t', comment='#')

Result is the same:

> help(csv_to_df)
Help on function csv_to_df in module __main__:
csv_to_df(path:str) -> pandas.core.frame.DataFrame

I'm currently doing the following:

from typing import TypeVar
PandasDataFrame = TypeVar('pandas.core.frame.DataFrame')
def csv_to_df(path: str) -> PandasDataFrame:
    return pd.read_csv(path, skiprows=1, sep='\t', comment='#')

Which gives:

> help(csv_to_df)
Help on function csv_to_df in module __main__:

csv_to_df(path:str) -> ~pandas.core.frame.DataFrame

Don't know how pythonic that is, but it's understandable enough as a type hint, I find.

  • 29
    @Azat Ibrakov would you mind elaborating on your comment? Sometimes I'm not sure what is and isn't 'pythonic'.
    – Tom Roth
    Apr 19 '18 at 5:34
  • 5
    I see people downvoting this answer. For context, this was the solution I found for my own question, and for all intents and purposes it works just fine. The more pythonic solution above, which I accepted as correct answer (but does have its own perks, see comments), was only provided 8 months afterwards.
    – dangom
    Nov 12 '19 at 17:47
  • 5
    It's not pythonic since it is less clear and harder to maintain than the accepted answer for this question. Since the type path here is not verified by the compiler it won't raise errors if it's wrong. This could happen from a typo in your TypeVar arg or change to the module itself.
    – AlexG
    Apr 17 '20 at 16:27
  • I receive a warning when I use this: The argument to 'TypeVar()' must be a string equal to the variable name to which it is assigned Feb 4 at 10:35
  • @Azat Ibrakov These "pythonic" and "not pythonic" arguments are like a mantra for many "Pythonists". I think we should stop arguments in this style. A had never heard this type of argumentation from e.g. Java developer. In my opinion, there is nothing wrong with this solution.
    – uetoyo
    Aug 16 at 7:18

Now there is a pip package that can help with this. https://github.com/CedricFR/dataenforce

You can install it with pip install dataenforce and use very pythonic type hints like:

def preprocess(dataset: Dataset["id", "name", "location"]) -> Dataset["location", "count"]:

This is straying from the original question but building off of @dangom's answer using TypeVar and @Georgy's comment that there is no way to specify datatypes for DataFrame columns in type hints, you could use a simple work-around like this to specify datatypes in a DataFrame:

from typing import TypeVar
DataFrameStr = TypeVar("pandas.core.frame.DataFrame(str)")
def csv_to_df(path: str) -> DataFrameStr:
    return pd.read_csv(path, skiprows=1, sep='\t', comment='#')

Check out the answer given here which explains the usage of the package data-science-types.

pip install data-science-types


# program.py

import pandas as pd

df: pd.DataFrame = pd.DataFrame({'col1': [1,2,3], 'col2': [4,5,6]}) # OK
df1: pd.DataFrame = pd.Series([1,2,3]) # error: Incompatible types in assignment

Run using mypy the same way:

$ mypy program.py

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