2

I have a DataFrame:

COL1 COL2
   1    1
   3    1
   1    3

I need to sort by COL1 + COL2.

key=lambda col: f(col) argument-function of sort_values(...) lets you sort by a changed column but in the described case I need to sort on the basis of 2 columns. So, it would be nice if there were an opportunity to provide a key argument-function for 2 or more columns but I don't know whether such a one exists.

So, how can I sort its rows by sum COL1 + COL2?

Thank you for your time!

2 Answers 2

7

Assuming a unique index, you can also conveniently use the key parameter of sort_values to pass a callable to apply to the by column. Here we can add the other column:

df.sort_values(by='COL1', key=df['COL2'].add)

We can even generalize to any number of columns using sort_index:

df.sort_index(key=df.sum(1).get)

Output:

   COL1  COL2
0     1     1
2     1     3
1     3     2

Used input:

data = {"COL1": [1, 3, 1], "COL2": [1, 2, 3]}
df = pd.DataFrame(data)
1
  • Thank you! The .set_index(...) with .sum(1) is just what is needed!
    – Daniil
    Apr 7, 2022 at 10:38
5

This does the trick:

data = {"Column 1": [1, 3, 1], "Column 2": [1, 2, 3]}
df = pd.DataFrame(data)

sorted_indices = (df["Column 1"] + df["Column 2"]).sort_values().index

df.loc[sorted_indices, :]

I just created a series that has the sum of both the columns, sorted it, got the sorted indices, and printed those indices out for the dataframe.

(I changed the data a little so you can see the sorting in action. Using the data you provided, you wouldn't have been able to see the sorted data as it would have been the same as the original one.)

0

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.