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I have a data frame similar to this, my idea is to arrange the rows according to the vector my_order, as shown below.

R Code:

df = data.frame(A = c("apple","cherry","orange","banana"), B = c(25,37,15,28))
df
       A  B
1  apple 25
2 cherry 37
3 orange 15
4 banana 28

my_order = c(2,3,4,1)
dplyr::arrange(df,my_order)
       A  B
1 banana 28
2  apple 25
3 cherry 37
4 orange 15

My question is how can I do this in python, is there any function in pandas, equivalent dplyr::arrange()?

Python Code:

import pandas as pd

df = pd.DataFrame({'A': ["apple","cherry","orange","banana"], 'B': [25,37,15,28]})
print(df)
        A   B
0   apple  25
1  cherry  37
2  orange  15
3  banana  28

my_order = [1,2,3,0]
df.iloc[my_order]
        A   B
1  cherry  37
2  orange  15
3  banana  28
0   apple  25
  • That ordering output of arrange seems incorrect to me... how does it work? – coldspeed Jan 22 at 21:29
  • check out the docs – Chris Jan 22 at 21:29
1

Okay, I figured it out. You are passing argsorted indices to arrange. You can do the same thing with iloc, but you will have to argsort your indices to get its inverse.

my_order = [2,3,4,1]
df.iloc[pd.np.argsort(my_order)]

        A   B
3  banana  28
0   apple  25
1  cherry  37
2  orange  15
1

I am not sure about the right function.

work around:

import pandas as pd

df = pd.DataFrame({'A': ["apple","cherry","orange","banana"], 'B': [25,37,15,28]})

print(df)

df['index']=[2,3,4,1]
df.set_index('index',inplace=True)
df.sort_index(inplace=True)

print(df)

1

Check with

df.loc[pd.Series(my_order,index=df.index).sort_values().index]
Out[42]: 
        A   B
3  banana  28
0   apple  25
1  cherry  37
2  orange  15

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