31

I'm trying to add a column to my DataFrame which is the product of division of two other columns, like so:

df['$/hour'] = df['$']/df['hours']

This works fine, but if the value in ['hours'] is less than 1, then the ['$/hour'] value is greater than the value in ['$'], which is not what I want.

Is there a way of controlling the operation so that if ['hours'] < 1 then df['$/hour'] = df['$']?

4 Answers 4

16

You can use numpy.where:

print df
    hours  $
0       0  8
1       0  9
2       0  9
3       3  6
4       6  4
5       3  7
6       5  5
7      10  1
8       9  3
9       3  6
10      5  4
11      5  7

df['$/hour'] = np.where(df['hours'] < 1, df['hours'], df['$']/df['hours'])
print df
    hours  $    $/hour
0       0  8  0.000000
1       0  9  0.000000
2       0  9  0.000000
3       3  6  2.000000
4       6  4  0.666667
5       3  7  2.333333
6       5  5  1.000000
7      10  1  0.100000
8       9  3  0.333333
9       3  6  2.000000
10      5  4  0.800000
11      5  7  1.400000
0
8
df['$/hour'] = df.apply(lambda x: x['$'] if x['$'] < 1 else x['$']/x['hours'], axis=1)
6

You can also filter and select the indexes to set with DataFrame.loc:

df['$/hour'].loc[df['hours']>=1] = df['$']/df['hours']
df['$/hour'].loc[df['hours']<1] = df['$']
1
  • This will raise a KeyError if the column $/hour does not exist beforehand. I would suggest using df.loc[df['hours']>=1, '$/hour'] = df['$']/df['hours'] and df.loc[df['hours']<1, '$/hour'] = df['$'].
    – rachwa
    Jul 16, 2022 at 17:23
0

You can also use mask:

df['$/hour'] = (df['$'] / df['hours']).mask(df['hours'] < 1, df['$'])

If the condition df['hours'] < 1 is met the values from column $ are taken, otherwise $ is divided by hours.

Your Answer

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

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