0

This is a column with data and non ascii characters

Summary 1

United Kingdom - ��Global Consumer Technology - ��American Express 
United Kingdom - ��VP Technology - Founder - ��Hogarth Worldwide
Aberdeen - ��SeniorCore Analysis Specialist - ��COREX Group
London, - ��ED, Equit Technology, London - ��Morgan Stanley
United Kingdom - ��Chief Officer, Group Technology - ��BP

How split them and save in different column

The code i used is:

import io
import pandas as pd

df = pd.read_csv("/home/vipul/Desktop/dataminer.csv", sep='\s*\+.*?-\s*')
df = df.reset_index()
df.columns = ["First Name", "Last Name", "Email", "Profile URL", "Summary 1", "Summary 2"]

df.to_csv("/home/vipul/Desktop/new.csv")
  • Your CSV and the code that loads it don't have much in common... – cs95 Feb 20 '18 at 10:18
  • huge data in csv i have only given a column ! – Vipul Rao Feb 20 '18 at 10:19
2

Say, you have a column in a series like this:

s

0    United Kingdom - ��Global Consumer Technolog...
1    United Kingdom - ��VP Technology - Founder -...
2    Aberdeen - ��SeniorCore Analysis Specialist ...
3    London, - ��ED, Equit Technology, London - �...
4    United Kingdom - ��Chief Officer, Group Tech...
Name: Summary 1, dtype: object

Option 1
Expanding on this answer, you can split on non-ascii characters using str.split:

s.str.split(r'-\s*[^\x00-\x7f]+', expand=True)

                 0                                 1                  2
0  United Kingdom        Global Consumer Technology    American Express
1  United Kingdom           VP Technology - Founder   Hogarth Worldwide
2        Aberdeen    SeniorCore Analysis Specialist         COREX Group
3         London,      ED, Equit Technology, London      Morgan Stanley
4  United Kingdom   Chief Officer, Group Technology                  BP

Option 2
str.extractall + unstack:

s.str.extractall('([\x00-\x7f]+)')[0].str.rstrip(r'- ').unstack()

match               0                                1                  2
0      United Kingdom       Global Consumer Technology   American Express
1      United Kingdom          VP Technology - Founder  Hogarth Worldwide
2            Aberdeen   SeniorCore Analysis Specialist        COREX Group
3             London,     ED, Equit Technology, London     Morgan Stanley
4      United Kingdom  Chief Officer, Group Technology                 BP
  • @COLDSPEED split does not work on my system is there any other way. – Vipul Rao Feb 20 '18 at 10:29
  • @VipulRao Can you see my edit? Why is it that my answers don't work on only your machine? :/ – cs95 Feb 20 '18 at 10:33
  • 1
    @VipulRao Both of them work for me – Graipher Feb 20 '18 at 10:35
  • @coldspeed yeah i saw the edit but it does not work on my pc pandas is up to date and python3 is also installed can someone help me with this. – Vipul Rao Feb 20 '18 at 10:36
  • 1
    @VipulRao How am I supposed to help you? Can I sudo into your machine and write your code for you? Cmon, please try and at least figure out why it doesn't work. You did the same thing with your last question. – cs95 Feb 20 '18 at 10:39
0

Another approach :

a
0   United Kingdom - ��Global Consumer Technolog...
1   United Kingdom - ��VP Technology - Founder -...
2   Aberdeen - ��SeniorCore Analysis Specialist ...
3   London, - ��ED, Equit Technology, London - �...
4   United Kingdom - ��Chief Officer, Group Tech...

Use this function to extract assci char (where Unicode code point is superior to 128 ) using ord build-in function

def extract_ascii(x):
    string_list = filter(lambda y : ord(y) < 128, x)
    return ''.join(string_list)

and apply it to columns.

df1.a.apply(extract_ascii).str.split('-', expand=True)

here is the results :

             0          1                              2           3
0   United Kingdom  Global Consumer Technology  American Express    None
1   United Kingdom  VP Technology   Founder Hogarth Worldwide
2   Aberdeen    SeniorCore Analysis Specialist  COREX Group None
3   London, ED, Equit Technology, London    Morgan Stanley  None
4   United Kingdom  Chief Officer, Group Technology BP  None

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