5

Please, can anybody tell me, how I can take logarithm from every value in SFrame, graphlab (or DataFrame, pandas) column, without to iterate through the whole length of the SFrame column? I specially interest on similar functionality, like by Groupby Aggregators for the log-function. Couldn't find it someself...

Important: Please, I don't interest for the for-loop iteration for the whole length of the column. I only interest for specific function, which transform all values to the log-values for the whole column.

I'm also very sorry, if this function is in the manual. Please, just give me a link...

2

3 Answers 3

5

numpy provides implementations for a wide number of basic mathematical transformations. You can use those on all data structures that build on numpy's ndarray.

import pandas as pd
import numpy as np
data = pd.Series([np.exp(1), np.exp(2), np.exp(3)])
np.log(data)

Outputs:

0    1
1    2
2    3
dtype: float64

This example is for pandas data types, but it works for all data structures that are based on numpy arrays.

5

The same "apply" pattern works for SFrames as well. You could do:

import graphlab
import math

sf = graphlab.SFrame({'a': [1, 2, 3]})
sf['b'] = sf['a'].apply(lambda x: math.log(x))
-1

@cel

I think, in my case it could be possible also to use next pattern.

import numpy
import pandas
import graphlab


df
    a b c 
    1 1 1 
    1 2 3
    2 1 3
    ....

df['log c'] = df.groupby('a')['c'].apply(lambda x: numpy.log(x))

for SFrame (sf instead df object) it could look little be different

logvals = numpy.log(sf['c'])
log_sf = graphlab.SFrame(logvals)
sf = sf.join(log_sf, how = 'outer')

Probably with numpy the code fragment is a little bit to long, but it works...

The main problem is of course time perfomance. I did hope, I can fnd some specific function to minimise my time....

1
  • 1
    The groupby you do (df.groupby('a')['c'].apply(lambda x: numpy.log(x))) seems superfluous. You are not doing anything different to the different groups, so this will just be equivalent to df['log c'] = np.log(df['c']) (the answer of @cel). And I don't think you will find something faster with pandas.
    – joris
    Nov 19, 2014 at 10:28

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.