10

My Pandas data frame contains the following data:

product,values
 a1,     10
 a5,     20
 a10,    15
 a2,     45
 a3,     12
 a6,     67

I have to sort this data frame based on the product column. Thus, I would like to get the following output:

product,values
 a10,     15
 a6,      67
 a5,      20
 a3,      12
 a2,      45
 a1,      10

Unfortunately, I'm facing the following error:

ErrorDuringImport(path, sys.exc_info())

ErrorDuringImport: problem in views - type 'exceptions.Indentation

2 Answers 2

17

You can first extract digits and cast to int by astype. Then sort_values of column sort and last drop this column:

df['sort'] = df['product'].str.extract('(\d+)', expand=False).astype(int)
df.sort_values('sort',inplace=True, ascending=False)
df = df.drop('sort', axis=1)
print (df)
  product  values
2     a10      15
5      a6      67
1      a5      20
4      a3      12
3      a2      45
0      a1      10

It is necessary, because if use only sort_values:

df.sort_values('product',inplace=True, ascending=False)
print (df)
  product  values
5      a6      67
1      a5      20
4      a3      12
3      a2      45
2     a10      15
0      a1      10

Another idea is use natsort library:

from natsort import index_natsorted, order_by_index

df = df.reindex(index=order_by_index(df.index, index_natsorted(df['product'], reverse=True)))
print (df)
  product  values
2     a10      15
5      a6      67
1      a5      20
4      a3      12
3      a2      45
0      a1      10
22
  • i m using python 2.7 version
    – Sai Rajesh
    Jun 8, 2016 at 5:18
  • I think copy text of error, under tags in question give edit and paste text under text of question. Thanks.
    – jezrael
    Jun 8, 2016 at 5:32
  • k now i will add that
    – Sai Rajesh
    Jun 8, 2016 at 5:36
  • It looks like your pandas is broken - see link.
    – jezrael
    Jun 8, 2016 at 5:51
  • 1
    @Toonia - so use stackoverflow.com/questions/29580978/…
    – jezrael
    Dec 18, 2023 at 11:43
0
import pandas as pd
df = pd.DataFrame({
   "product": ['a1,', 'a5,', 'a10,', 'a2,','a3,','a6,'],
   "value": [10, 20, 15, 45, 12, 67]
})
df
==>
  product   value
0   a1,      10
1   a5,      20
2   a10,     15
3   a2,      45
4   a3,      12
5   a6,      67


df.sort_values(by='product', key=lambda col: col.str[1:-1].astype(int), ascending=False)
==>
  product   value
2   a10,     15
5   a6,      67
1   a5,      20
4   a3,      12
3   a2,      45
0   a1,      10

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.