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Hi I would like to know the best way to do operations on columns in python using pandas.

I have a classical database which I have loaded as a dataframe, and I often have to do operations such as for each row, if value in column labeled 'A' is greater than x then replace this value by column'C' minus column 'D'

for now I do something like

for i in len(df.index):
    if df.ix[i,'A'] > x :
        df.ix[i,'A'] = df.ix[i,'C'] - df.ix[i, 'D']

I would like to know if there is a simpler way of doing these kind of operations and more importantly the most effective one as I have large databases

I had tried without the for i loop, like in R or Stata, I was advised to use "a.any" or "a.all" but I did non find anything either here or in the pandas docs.

Thanks by advance.

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3 Answers 3

You can just use a boolean mask with either the .loc or .ix attributes of the DataFrame.

mask = df['A'] > 2
df.ix[mask, 'A'] = df.ix[mask, 'C'] - df.ix[mask, 'D']

If you have a lot of branching things then you can do:

def func(row):
    if row['A'] > 0:
        return row['B'] + row['C']
    elif row['B'] < 0:
        return row['D'] + row['A']
        return row['A']

df['A'] = df.apply(func, axis=1)

apply should generally be much faster than a for loop.

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Actually I have several conditions : if df.['A'] == 999 ; if df['A'] < 999 and df['B'] == 999 and so on... I am not sure how this boolean extends –  Anthony Martin Aug 12 '13 at 8:52
This example you provided is: (df['A'] == 999) & (df['B'] == 999), But if you have a branches with else statement also you should use apply along the asix. –  Viktor Kerkez Aug 12 '13 at 9:00
Updated the example. –  Viktor Kerkez Aug 12 '13 at 9:07
That indeed works for some of my cases, thanks for that ; but in others I have to consider actual different values, for instance for categorical variables : row['A'] == 1 then A1, row['A'] ==2 then A2, row['A'] == 3 then A3 and so on. –  Anthony Martin Aug 12 '13 at 9:16
I added an example to the answer that covers that case (using apply). –  Viktor Kerkez Aug 12 '13 at 9:19

simplest according to me.

    from random import randint, randrange, uniform
    import pandas as pd
    import numpy as np

    df =       pd.DataFrame({'a':randrange(0,10),'b':randrange(10,20),'c':np.random.randn(10)})

   #If colC > 0,5, then ColC = ColB - Cola 
   df['c'][df['c'] > 0.5] = df['b'] - df['a']

Tested, it works.

   a   b   c
   2  11 -0.576309
   2  11 -0.578449
   2  11 -1.085822
   2  11  9.000000
   2  11  9.000000
   2  11 -1.081405
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There's lots of ways of doing this, but here's the pattern I find easiest to read.

#Assume df is a Panda's dataframe object
idx = df.loc[:, 'A'] > x
df.loc[idx, 'A'] = df.loc[idx, 'C'] - df.loc[idx, 'D']

Setting the elements less than x is as easy as df.loc[~idx, 'A'] = 0

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