I'm giving a toy example but it will help me understand what's going on for something else I'm trying to do. Let's say I want a new column in a dataframe 'optimal_fruit' that is apples * orange - bananas.

I can do something like this to get it.

df2['optimal_fruit'] = df2['apples'] * df2['oranges'] - df2['bananas'] 

apples  oranges bananas optimal_fruit
1       6       11      -5
2       7       12      2
3       8       13      11
4       9       14      22
5       10      15      35

What is happening if I try to do something like this? And how could I do this in a list comprehension?

df2['optimal_fruit'] = [x * y - z for x in df2['apples'] for y in df2['oranges'] for z in df2['bananas']]

I get an error of:

ValueError: Length of values does not match length of index

As always, thank you all so much for your help!


Essentially your list comprehension statement is a set of 3 nested loops. In code:

l = []
for x in df2['apples']:
    for y in df2['oranges']:
        for z in df2['bananas']:
            l.extend([x * y - z])

The length of your resultant list will be 3 times the length of your DataFrame. Hence the error. To fix, you need the equivalent of:

for x, y, z in zip(df2['apples'], df2['oranges'], df2['bananas']):
    l.extend([x * y - z])

In terms of list comprehension:

[x * y - z for x, y, z in zip(df2['apples'], df2['oranges'], df2['bananas'])]
| improve this answer | |

The reason why your new method doesn't work is because the list comprehension produces data that is longer than the number of indices in your dataframe. A quick fix for that would be something like:

[x * y - z for x,y,z in zip(df2['apples'], df2['oranges'], df2['bananas'])]
| improve this answer | |

If you do not want to repeat df2 for each column:

[row[0][0]*row[0][1]-row[0][2] for row in zip(df2[['apples', 'oranges', 'bananas']].to_numpy())]


def func(row):

[func(*row) for row in zip(df2[['apples', 'oranges', 'bananas']].to_numpy())]

See also:


Please use df.iloc and df.loc instead of df[[...]], see Selecting multiple columns in a pandas dataframe

| improve this answer | |

You can get all the values of the row as a list using the np.array() function inside your list of comprehension.

The following code solves your problem:

df2['optimal_fruit'] = [x[0] * x[1] - x[2] for x in np.array(df2)]

It is going to avoid the need of typing each column name in your list of comprehension.

| improve this answer | |

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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