13

In R I can apply a logarithmic (or square root, etc.) transformation to all numeric columns of a data frame, by using:

logdf <- log10(df)

Is there something equivalent in Python/Pandas? I see that there is a "transform" and an (R-like) "apply" function, but could not figure out how to use them in this case.

Thanks for any hints or suggestions.

1
  • 1
    Same thing can be done with pandas dataframe too. Its datatype allows scalar matrix operations like df * 2= (multiply all values by 2), or numpy.log10(df) = log10df. Commented Jan 27, 2019 at 15:52

4 Answers 4

17

Supposed you have a dataframe named df

You can first make a list of possible numeric types, then just do a loop

numerics = ['int16', 'int32', 'int64', 'float16', 'float32', 'float64']
for c in [c for c in df.columns if df[c].dtype in numerics]:
    df[c] = np.log10(df[c])

Or, a one-liner solution with lambda operator and np.dtype.kind

numeric_df = df.apply(lambda x: np.log10(x) if np.issubdtype(x.dtype, np.number) else x)
4
  • 1
    I accepted your answer as it provides this elegant one-line solution! Since I know in advance that all my columns are numeric, I can use simply numeric_df = df.apply(lambda x: np.log10(x)), without the need to test the column type.
    – maurobio
    Commented Jan 27, 2019 at 17:38
  • 1
    @maurobio You don't need to use lambda if all your columns are numeric. df.apply(np.log10) will suffice. Commented Jan 28, 2019 at 6:37
  • @MohitMotwani That is true but in my experiences if you’re dealing with a huge data frame it’s safer to do type checking
    – Rex Low
    Commented Jan 28, 2019 at 6:39
  • 2
    @RexLow That's right. I was just responding to the OP's comment because he suggested he didn't need type checking. Commented Jan 28, 2019 at 6:41
7

If most columns are numeric it might make sense to just try it and skip the column if it does not work:

for column in df.columns:
    try:
        df[column] = np.log10(df[column])
    except (ValueError, AttributeError):
        pass

If you want to you could wrap it in a function, of course.

If all columns are numeric, you can even simply do

df_log10 = np.log10(df)
3

You can use select_dtypes and numpy.log10:

import numpy as np
for c in df.select_dtype(include = [np.number]).columns:
    df[c] = np.log10(df[c])

The select_dtypes selects columns of the the data types that are passed to it's include parameter. np.number includes all numeric data types.

numpy.log10 returns the base 10 logarithm of the input, element wise

2

If you care for speed:

df = pd.DataFrame({'A': list('abc')*1000000, 'B': [10, 20,200]*1000000,
                  'C': [0.1,0.2,0.3]*1000000})
df.head()

%timeit df.apply(lambda x: np.log10(x) if np.issubdtype(x.dtype, np.number) else x)
#1 loop, best of 3: 539 ms per loop

%%timeit
log10_df = pd.concat([df.select_dtypes(exclude=np.number),
                      df.select_dtypes(include=np.number).apply(np.log10)],
                      axis=1)
#loop, best of 3: 315 ms per loop

%%timeit
for c in df.select_dtypes(include = [np.number]).columns:
    df[c] = np.log10(df[c].values)
#1 loop, best of 3: 113 ms per loop
1
  • Thanks, although in principle I'm not worried about speed, you raised a real concern, because the lambda function had a poor performance (although in the version I am using I don't need to test the column types because I know in advance they are all numeric).
    – maurobio
    Commented Jan 27, 2019 at 21:53

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