Is there a pythonic way to chain together sklearn's StandardScaler instances to independently scale data with groups? I.e., if I wanted to find independently scale the features of the iris dataset; I could use the following code:

from sklearn.datasets import load_iris
data = load_iris()
df = pd.DataFrame(data['data'], columns=data['feature_names'])
df['class'] = data['target']

means = df.groupby('class').mean()
stds = df.groupby('class').std()

df_rescaled = (
    (df.drop(['class'], 1) - means.reindex(df['class']).values) / 

Here, I'm subtracting by the mean and dividing by the stdev of each group independently. But Its somewhat hard to carry around these means and stdev's, and essentially, replicate the behavior of StandardScaler when I have a categorical variable I'd like to control for.

Is there a more pythonic / sklearn-friendly way to implement this type of scaling?


Sure, you can use any sklearn operation and apply it to a groupby object.

First, a little convenience wrapper:

import typing
import pandas as pd

class SklearnWrapper:
    def __init__(self, transform: typing.Callable):
        self.transform = transform

    def __call__(self, df):
        transformed = self.transform.fit_transform(df.values)
        return pd.DataFrame(transformed, columns=df.columns, index=df.index)

This one will apply any sklearn transform you pass into it to a group.

And finally simple usage:

from sklearn.datasets import load_iris
from sklearn.preprocessing import StandardScaler

data = load_iris()
df = pd.DataFrame(data["data"], columns=data["feature_names"])
df["class"] = data["target"]

df_rescaled = (
    .drop("class", axis="columns")

EDIT: You can pretty much do anything with SklearnWrapper. Here is an example of transforming and reversing this operation for each group (e.g. do not overwrite the transformation object) - just fit the object anew each time a new group is seen (and add it to list).

I have kinda replicated a bit of sklearn's functionality for easier usage (you can extend it with any function you want by passing appropriate string to _call_with_function internal method):

class SklearnWrapper:
    def __init__(self, transformation: typing.Callable):
        self.transformation = transformation
        self._group_transforms = []
        # Start with -1 and for each group up the pointer by one
        self._pointer = -1

    def _call_with_function(self, df: pd.DataFrame, function: str):
        # If pointer >= len we are making a new apply, reset _pointer
        if self._pointer >= len(self._group_transforms):
            self._pointer = -1
        self._pointer += 1
        return pd.DataFrame(
            getattr(self._group_transforms[self._pointer], function)(df.values),

    def fit(self, df):
        return self

    def transform(self, df):
        return self._call_with_function(df, "transform")

    def fit_transform(self, df):
        return self.transform(df)

    def inverse_transform(self, df):
        return self._call_with_function(df, "inverse_transform")

Usage (group transform, inverse operation and apply it again):

data = load_iris()
df = pd.DataFrame(data["data"], columns=data["feature_names"])
df["class"] = data["target"]

# Create scaler outside the class
scaler = SklearnWrapper(StandardScaler())

# Fit and transform data (holding state)
df_rescaled = df.groupby("class").apply(scaler.fit_transform)

# Inverse the operation
df_inverted = df_rescaled.groupby("class").apply(scaler.inverse_transform)

# Apply transformation once again
df_transformed = (
    .drop("class", axis="columns")
  • Cool solution! So that works, but unfortunately you lose the ability to transform new data. (or inverse_transform the old data) Apologies for not putting that in the original question. This seems to overwrite the SklearnWrapper.transform class for each group. – pstjohn Apr 10 at 2:41
  • Is that what you wanted? You can do other stuff with it (pretty extensible) depending on your end goal. – Szymon Maszke Apr 10 at 10:49
  • So this is great, thanks so much for the help! I was hoping I'd get away with less code, but this is definitely more re-usable. I'll also just caution that this could cause problems up if groups were missing from a test dataset (or if new groups were added) without raising an error, but I don't see a way around that using the groupby / apply syntax. – pstjohn Apr 10 at 13:03
  • I think you could extend it with filter, implementation of partial_fit-like function but it would clutter the image. IMO no need if you don't need it right now (or you can create a new issue if you do). – Szymon Maszke Apr 10 at 13:32

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